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Review

Health-Related Telemonitoring Parameters/Signals of Older Adults: An Umbrella Review

1
Department of Physics, School of Health, Polytechnic Institute of Porto, Rua Dr. António Bernardino de Almeida, 400, 4200-072 Porto, Portugal
2
Center for Rehabilitation Research (CIR), ESS, Polytechnic of Porto, rua Dr. António Bernardino de Almeida, 4200-072 Porto, Portugal
3
Department of Medical Sciences, University of Aveiro, Agras do Crasto, Campus Universitário de Santiago, 3810-193 Aveiro, Portugal
4
Department of Physiotherapy, ESS, Polytechnic of Porto, rua Dr. António Bernardino de Almeida, 4200-072 Porto, Portugal
5
Faculty of Engineering and Business, Turku University of Applied Sciences, Joukahaisenkatu 3, 20520 Turku, Finland
6
School of Health Sciences (ESSUA), University of Aveiro, Agras do Crasto, Campus Universitário de Santiago, 3810-193 Aveiro, Portugal
7
Institute of Biomedicine (iBiMED), University of Aveiro, Agras do Crasto, Campus Universitário de Santiago, 3810-193 Aveiro, Portugal
*
Author to whom correspondence should be addressed.
Sensors 2023, 23(2), 796; https://doi.org/10.3390/s23020796
Submission received: 5 December 2022 / Revised: 6 January 2023 / Accepted: 7 January 2023 / Published: 10 January 2023
(This article belongs to the Special Issue Sensors in Neurophysiology and Neurorehabilitation)

Abstract

:
Aging is one of the greatest challenges in modern society. The development of wearable solutions for telemonitoring biological signals has been viewed as a strategy to enhance older adults’ healthcare sustainability. This study aims to review the biological signals remotely monitored by technologies in older adults. PubMed, the Cochrane Database of Systematic Reviews, the Web of Science, and the Joanna Briggs Institute Database of Systematic Reviews and Implementation Reports were systematically searched in December 2021. Only systematic reviews and meta-analyses of remote health-related biological and environmental monitoring signals in older adults were considered, with publication dates between 2016 and 2022, written in English, Portuguese, or Spanish. Studies referring to conference proceedings or articles with abstract access only were excluded. The data were extracted independently by two reviewers, using a predefined table form, consulting a third reviewer in case of doubts or concerns. Eighteen studies were included, fourteen systematic reviews and four meta-analyses. Nine of the reviews included older adults from the community, whereas the others also included institutionalized participants. Heart and respiratory rate, physical activity, electrocardiography, body temperature, blood pressure, glucose, and heart rate were the most frequently measured biological variables, with physical activity and heart rate foremost. These were obtained through wearables, with the waist, wrist, and ankle being the most mentioned body regions for the device’s placement. Six of the reviews presented the psychometric properties of the systems, most of which were valid and accurate. In relation to environmental signals, only two articles presented data on this topic. Luminosity, temperature, and movement were the most mentioned variables. The need for large-scale long-term health-related telemonitoring implementation of studies with larger sample sizes was pointed out by several reviews in order to define the feasibility levels of wearable devices.

1. Introduction

Digital technologies, such as smart wearable healthcare devices, are increasingly being used to support wellbeing, to encourage the independence of older adults, and to monitor health [1]. Telemonitoring, defined as the use of technologies for patient monitoring geographically separate from the health professional, at home, in healthcare units, and/or in hospitals [2], is currently viewed as a promising solution for older adults’ healthcare. The data obtained by this kind of system not only inform caregivers and healthcare professionals about abnormal changes, helping therefore in the early detection and management of a health condition, but they can also be used in the self-management of older adults, promoting appropriate changes to their daily routines or behavior [3].
Several technologies, operating under different technical specifications and algorithms, have been developed in recent years, with different properties and levels of validity and reliability [4]. Depending on each system, devices can be placed in different body regions, for example, the wrist, the chest, the fingers, and the ankle, allowing the measurement and monitoring of several biological signals, such BT, HR, RR, BP, StO2, and BG [5]. Considering the role of the environment in biological signals as well as on older adults’ health, the combination of biological signals’ monitoring together with environment monitoring would better characterize health conditions or even the risk for older adults. It is known that environmental conditions have a significant impact on older adults, such as the house design, the sources of temperature and the temperature itself, gas density, air saturation, and luminosity. In this sense, the development of solutions as central stations that allow the daily analysis of the environment has also increased in recent years [6,7,8,9].
There have been several systematic reviews of health-related biological and environmental signals, measured in different age groups of healthy people or those with pathological conditions. These reviews identified vital signals such as HR, BP, BT, gas density, and humidity but have not always identified their normative values, information about the participants’ related health status, the equipment and measurement method, or the validity or reliability values [10,11,12,13]. Technological advances have enabled the monitoring of several health-related biological signals in older adults, ranging from cardiovascular to movement-related signals. The specifications of the systems used vary in terms of size, portability, and normative values’ characterization, dependent on health and environment conditions. Therefore, it is important to systematically gather information about the health-related biological signals measured in older adults, their measurement method, equipment and psychometric properties, the normative values of the health-related biological signals, as well as information about the health status of the elderly. These data are useful for the decision-making process, based on the biological signals, the significance of health-related parameters extracted, the system usability, and the psychometric properties.
Hence, an umbrella review of the type and usage of telemonitoring technologies in older adults is needed. Accordingly, this study developed an umbrella review to gather the health-related biological and environmental signals and instruments from the most recent telemonitoring technologies used in older adults.
Abbreviations part contains a table with all the notations in this article.

2. Materials and Methods

This umbrella review was conducted in accordance with the guidelines of PRISMA and the guidelines for developing and summarizing umbrella reviews [14,15]. No ethical approval was needed as we used data from published studies. This umbrella review was registered in PROSPERO under the number CRD42021282273. The search was carried out in December 2021, and the screening process occurred between January and May 2022.

2.1. Eligibility Criteria

Systematic reviews and meta-analyses, published between 2016 and 2022, written in English, Portuguese, or Spanish, aiming to review telemonitoring health-related biological and environmental signals in older adults, were included. Studies referring to conference proceedings, ineligible articles, or articles with abstract access only were excluded.

2.2. Search Strategy

A protocol with the search strings for each scientific database, namely PubMed, the Cochrane Database of Systematic Reviews, the Web of Science, and the Joanna Brigs Institute Database of Systematic Reviews and Implementation Reports, was properly designed by the researchers prior to the search. The search included MeSH terms. The search string for each database is shown in the supplemental data, Appendix A. References of the systematic reviews were also analyzed to identify further possibly relevant articles.

2.3. Data Collection and Analysis

2.3.1. Selection Process and Data Extraction

The articles’ selection process involved two sequential phases, in which studies were independently reviewed by two reviewers (JF and JM). In case of doubt, another independent reviewer (ASP) was consulted; we excluded all studies that did not fit the criteria. In phase one, the selection was based on the analysis of the title and the abstract. In phase two, a full-text analysis was conducted.
Next, the data were extracted independently by two reviewers (JF and JM), using a predefined table form, consulting a third reviewer in case of doubts or concerns (ASP). The information extracted was organized into two domains. The first included the city and country of the review, as well as, when available, the city and country of the original studies; the number of the included studies; the number of participants included and their mean/range age; and the population (healthy or pathological condition) and the population context (community-dwelling/controlled lab/institutionalized). The second domain included information regarding the monitoring technology including the wearable type, sensor type, wearable/sensor location; the health-related biological signals; the health-related environmental signals; the psychometric properties of the outcome measures by body regions (validity and reliability); the cutoff of the biological and environmental signals; and the health status information of the measures of the biological signals and the environmental signals and the usability information.

2.3.2. Methodological Quality Assessment

The methodological quality assessment of the included reviews was performed independently by two reviewers (JF and JM). In case of disagreement, a third reviewer was consulted (ASP).
AMSTAR 2.0 was used [16]. This tool contains 16 items, which can be answered with “yes”, “partially yes”, and “no”. Depending on the score and how many critical and non-critical flaws an article had, it could be classified as “high quality”, “moderate quality”, “low quality”, and “critically low quality”. The critical domains of AMSTAR 2.0 are: “protocol registered before commencement of the review”; “adequacy of the literature search”; “justification for excluding individual studies”; “risk of bias from individual studies being included in the review”; “appropriateness of meta-analytical methods”; “consideration of risk of bias when interpreting the results of the review”; and “assessment of presence and likely impact of publication bias” [16].

3. Results

The database search retrieved 644 records, seven of them were duplicates, which were eliminated. After the analysis of titles and abstracts, 487 studies were excluded because they were not systematic reviews (n = 157) or they exclusively analyzed groups other than older adults (n = 330). Accordingly, 18 systematic reviews were included in this umbrella review (Figure 1). Nine of the reviews were developed in European countries [17,18,19,20,21,22,23,24,25], four in North American countries [26,27,28,29], three in Australia [30,31,32], one in Pakistan [33], and one in India [34]. The number of studies included in each review varied between 7 and 73, with an average of 32 studies, and a median of 25 studies. A detailed description of the studies is shown in Table 1.

3.1. Searched Databases by the Studies

The databases most commonly searched by the studies included MEDLINE (ten studies [17,19,21,22,23,26,28,30,31,33]), PubMed by nine [18,20,24,25,27,29,31,32,33]), EMBASE by eight [17,20,21,22,26,28,29,32], CINAHL by six [17,20,23,29,30,31], SCOPUS by five [19,23,24,25,34], COCHRANE by four [18,26,30,33], Web of Science by three [19,22,25], Science Direct [19,23], Google Scholar [29,33], ACM digital [19,24], IEE Xplorer [19,24], and Ovid by two [22,28], and APA PsycINFO [20], EBSCOhost [32], Academic Search Elite [19], Sport Discus [29], and AMED [30] by one. A survey report by the WHO on telecommunication and information technology was also referred to by one study [34]. A characterization of each study is shown in Table 1.

3.2. General Characterization of the Studies: Country Origin, Included Types of Study, and Their Methodological Quality

Some reviews indicated the countries of the included studies, whereas others indicated only the continent; seven reviews did not report the origin of the included articles (Table 1).
Different types of studies were included in each review, varying between observational [19,21,22,23,24,26,28,30,32], CC [19], CSS [18,19,25], CO [19], RCT [17,21,22,28,32,33], nRCT [17], CS [28], PRO [27], and the development of a monitoring system [18].
The methodological quality of each systematic review is shown in Table 2. Only four reviews were considered high quality [21,22,29,32], five presented moderate quality [17,23,25,26,30], eight presented low quality [18,19,20,24,27,28,31,33], and one showed critically low quality [34].

3.3. Characteristics of the Studies’ Participants

The reviews included samples ranging from 290 to 17131 participants [17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34].
Nine of the reviews included older adults from the community as a sample, and the other studies also included older adults who were institutionalized in healthcare units and in a controlled environment. The participants were over 16 years old, and the oldest reported participant was 94. The reviews included studies involving healthy participants [19,20,22,23,24,26,29] and participants with different pathologic conditions, such as cardiovascular [19,20,21,24,26,27,28,30,31], neurologic [17,19,20,24,25,27,28], metabolic [19,20,22,24,26,27,28], respiratory [19,28,30,31], and other conditions [19,28,29,33]. A more detailed description of each study’s participants is shown in Table 3.

3.4. Health-Related Biological Signals and Body Regions

The most measured health-related biological signal was PA (steps, daily activity time, calories, PA level, energy expenditure, and movement), presented in 13 reviews [17,18,19,20,23,25,27,29,30,31,32,33,34], followed by other biological signals, namely HR [19,21,26,27,28,31,34], RR [19,28,31], ECG [19,28,31], BP [19,21,34], glucose levels [22,28], sleep [19,29,34], and fall risk [20,27].
The health information status and cutoffs for steps [17,19,20,23,27,29,30,31,34], PA level [17,18,19,20,23,30,31,33], movement [18,23,25,27,32], cardiac rhythm [21,26,31], and fall risk [20,27] were identified, while for energy expenditure [23,25,29,30,31], RR [19,28,31], and HR [19,21,26,27,28,31,34], the cutoff values could be extracted. A detailed characterization of the health-related biological signals is shown in Table 4.
The systems were placed in several body locations, including the wrist [20,23,25,26,29,30,31,33], waist [17,18,20,23,25,26,29,30,31], ankle [17,18,20,29,30,31,33], chest [17,25,26,28,31,33], arm [18,21,28], hip [23,29,33], thigh [17,25], pocket, bra, elbow, neck, and torso [20,23,29].
The number of steps was the variable assessed on more body locations (lumbar spine, upper arm, bra, torso, chest, sternum, tight, wrist, waist, and ankle), while the fall risk was assessed only on the torso, the BP on the arm, and the ECG on the chest.
It is important to note that a movement category considered all free-living activities.

3.5. Sensor Types for Biological Signals Measurement

As described in Table 5, the systems used to monitor health-related biological signals in older adults included accelerometers most frequently [17,18,23,25,27,32,33,34], then ECG sensors [24,26,27,30], photoplethysmography sensors [26,34], BP devices [19,21,24,26,34], and others. The data transmission occurred through Bluetooth, wireless, and/or by using cables [17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34].

3.6. Psychometric Properties

Only seven reviews indicated the psychometric properties of the systems, as shown in Table 6 [17,18,26,29,30,32,33]. Among the reviews, only steps, daily activity time, PA level, posture, sleep, energy expenditure, cardiac rhythm, and movement in free-living activities were assessed. Some of the presented variables were measured in different places, although their psychometric properties were only available for some body regions. Because different types of studies were included in different reviews, comparing the results was difficult [17,18,26,29,30,32,33].
The criterion validity was established for: steps (ranging from r = 0.76 (ankle) to r = 0.96 (wrist)) [17,18,31]; PA (ranging from r = 0.78 (waist) to r = 0.978 (hip)); posture (error = 40.31% (thigh)) [17,33]; sleep (error = 8.6% (wrist)) [17,33]; and energy expenditure (r = 0.74 (wrist), error < 8.6% (torso)) [29,30].
The reliability was established for: steps (ranging between an ICC of 0.15 (wrist) and 0.99 (ankle) [17,18,31], movement (ICC = 0.74 (hip) and ICC = 0.95 (waist)) [32], and cardiac rhythm accuracy ranging from 94% to 97% and specificity ranging from 87% to 100% for fingertips [26].

3.7. Environmental Signals

Only two reviews [24,34] reported unobtrusive in-home monitoring, allowing participants’ quality of life to be assessed using environmental signals and a home base station.
Passive infrared motion, contact, pressure and electrical current sensors were the most frequently used to monitor the participants’ behavior, measuring the presence in specific places or furniture or the time spent on activities [24].
Older adults’ health-related biological signals were measured through equipment placed in the environment, such as temperature, ECG and HR; however, other signals were also identified such as presence, activity, gas concentration, and sound. A more detailed description of the results of the environmental signals is presented in Table 7.

3.7.1. Sensor Types Used to Measure the Environmental Signals

Several different types of sensors were identified in the review. The sensors included a contact sensor, a motion sensor, an electrical current sensor, a thermometer, a flowmeter, a camera, an infrared camera, a pressure sensor, a humidity sensor, a gas sensor (air quality and smoke), and other sensors, measuring the presence at home, the activity of daily living, the time on activity, the activity level, and several environmental data (temperature, humidity, gas, light, rain, and flame) [24,34]. A more detailed description of the results of the environmental signals is presented in Table 7.

3.7.2. Location of the Measurement of the Environmental Signals

In the analyzed studies, different locations were identified for the placement of the sensors. The locations ranged from household appliances, such as kitchen equipment, to audiovisual equipment. Infrastructures such as walls and floors or even furniture were also mentioned. Finally, divisions in general were also mentioned, such as the kitchen, living room, or bedroom [24,34]. A more detailed description of the results of the environmental signals are present in Table 7.

3.7.3. Psychometric Properties of Sensors Used to Measure the Environmental Signals

The psychometric properties were not reported.

4. Discussion

Aging and increased longevity are two of the greatest developmental difficulties in modern society. In the next 40 years, in Europe, it is projected that people over 65 years will be the fastest growing age group, leading to a doubling of the older adult population compared to the younger population [35,36]. This growth will imply an increase in care to maintain the quality of life of this population, considering the three strongest aspects of aging, namely the loss of autonomy, the increase in loneliness, and the management of acute or chronic health conditions [37]. Altogether, this represents an increase in total cost expenditures, as well as an intensification of healthcare or social care. The development of efficient methods and strategies to collaborate in the monitoring of the older adult population has been stated as essential to reduce accidents and traumatic events, manage chronic conditions, and increase older adults’ control over their health and quality of life, thus meeting the third objective of the 2030 agenda developed by the United Nations, which aims for good health and wellbeing [38,39,40]. This challenge motivated the development of the present review to understand the progress in monitoring older adults, namely which health-related biological and environmental signals are being used, as well as which instruments are being used to access them.
Most of the reviews were performed in developed countries. This is in line with what is known in the scientific community; developed countries conduct more research for the maturation and development of scientific knowledge and are at the forefront of technological innovations and their applications [41]. However, it is relevant to note that two reviews were conducted in developing countries, and those countries have a strong presence in the release of scientific material to the international community [24,34]. The same trend was observed in the countries of the original studies included in each of the reviews, where European countries and North America were the most reported. Again, in these developed countries, the economic factor and the gross domestic product available for research are important.
All reviews indicated the databases searched varied between MEDLINE, PubMed, and EMBASE. These were the most inclusive databases that could assist in finding all available articles [42]. However, some recent articles have shown that it is advisable to conduct a review at least in EMBASE, MEDLINE, Web of Science, and Google Scholar to be inclusive, a fact that was not always fulfilled by the included reviews [42].
As would be expected, the health-related biological signals that appeared to be the most frequently measured in older adults corresponded to the vital signals [43,44,45]. However, other signals related to movement variables were frequently considered, the steps being most the frequent, followed by energy expenditure. Body temperature, peripheral oxygen saturation, fall risk detection, glucose levels, and weight were also assessed. The signals monitored were used to assess the daily activity time, PA level, posture, sleep, stress, energy expenditure, fall risk, and movement quality. Naturally, movement is one of the most studied biological signals due to its ease of acquisition through a wide range of accelerometers and movement sensors, thus making it the most frequent variable measured in older adults. On the other hand, its measurement is extremely important, since a sedentary lifestyle increases the risk of heart and metabolic diseases, which already have a high incidence rate in this population. In this way, the measurement of this variable is extremely important, since the diagnosis of movement and activity allows an early intervention in the sense of promoting health in older adults [19,23,30,31,46,47].
Biological signals related to the cardiac and respiratory systems, such as HR, RR, and oxygen saturation, also presented a high frequency of measurement indication in the age group under study. This factor is again due to the need to monitor the health status of older adults, assessing vital signals, which are essential for understanding the proper functioning of the cardiorespiratory system. In this population, the cardiovascular system and respiratory system are more fragile and probably experiencing pathological changes; better monitoring of older adults allows early diagnosis and intervention [21,26,27,28,31,48,49].
Other variables, which are not new, but appeared less often, such as sleep, glucose levels, and fall risk, are also extremely important for the population under study. All variables report the health status of older adults; so, their monitoring is also relevant and gives health professionals information about the health status of the older adult [22,28,29,50,51].
Different biological and environmental signals were measured through different types of wearable/sensors. Through this review, we saw that a wearable group included different types of sensors, making it possible to measure several signals with a single device. For example, a waist-worn device can be used to monitor the HR, ECG, RR, and PA, measuring the state of the cardiac, respiratory, and movement systems.
In relation to body areas for the wearables, most of the studies pointed to the thigh, wrist, and waist as the most suitable places to measure biological signals. Evidently, the systems tend to be increasingly simple, user-friendly, and less intrusive; so the individual can carry out their normal tasks throughout the day, without the system interfering. In this sense, the places identified through different devices, allowed the user to quickly forget their use, enabling monitoring and evaluation in a real context without feeling the pressure of being evaluated, avoiding the modification of values [21,26,27,28,31,48,49,52].
Reliability and validity are considered two of the main measurement properties of instruments [53]. In this review, the steps variable was the only one with values presented for reliability and validity, and the values found agreed with Evenson et al. (2015) [54]. In relation to the other variables, such as posture, daily activity time, and sleep, in which it was possible to identify the reliability and validity values, these appeared to be acceptable [53,54,55]. The PA level and cardiac rhythm also seemed to have acceptable validity values. These are the oldest variables in terms of health investigation, which has meant more development time and thus better psychometric characteristics, due to their development and continuous improvement.
Only two reviews [24,34] assessed environmental signals. These reviews demonstrated a lack of information in scientific data about how environmental signals modify biological signals or the quality of life/health status of the users. The most common measures used were related to physiological monitoring, functional monitoring, emergency detection, and safety/security monitoring. These are very important measures to improve the quality of life/health status of the user, especially in cases where safety is very important to guarantee their health status [56].
Understand the methodological quality of the studies is important. In umbrella reviews, the quality of the original studies included in the reviews, as well as the quality of the reviews themselves, should be assessed. The risk of bias and the quality of the studies were not always defined, which means that there was no knowledge about the relevance/quality of the studies included in the reviews, which made interpretation of the results difficult; however, in relation to the reviews’ methodological quality, they were average to good quality. The quality of the studies was dispersed, ranging from very low to high quality, making comparisons difficult. In line with these limitations, some factors should be considered in the interpretation of the results of the present study. Although wearables are for everyone, some studies did not mention, did not characterize, or included different populations (different ages, different health conditions, and community-dwelling or institutionalized older adults). These factors can cause variations in the health-related biological signals. Moreover, different health conditions and different environments cause variations in the functioning and performance of the different wearables, making the comparation between studies very difficult [4,57,58,59,60,61,62,63,64]. Differences between the studies in terms of the aims and sample sizes (number of studies included in the original reviews) made it difficult to compare them. For example, checking the reliability and validity of different systems versus finding the usability of system and studies with a large sample (73) versus a small sample (7) indicated high heterogeneity between the studies and between their methodologies. Future studies comparing various uses of wearables, their advantages, and disadvantages in different age groups, living conditions, and specific pathologies are required. Moreover, more studies assessing the systems’ effectiveness for older adults’ health are required.

5. Conclusions

The results of the present review demonstrated that the most frequent body regions used to assess older adults’ biological signals were the wrist, waist, and chest. The signals collected at these regions were mostly used to assess PA (through various variables such as energy expenditure, posture, and METs) and cardiovascular variables (through signals such as HR and cardiac rhythm). The environmental systems were used to assess environmental features; however, the health-related biological signals of older adults were also measured. This monitoring strategy had the advantage of monitoring the elderly person in the place/house, where the older adult was. Among all biological signals, the most frequent were ECG, temperature, HR, and body mass. These systems used a wide variety of sensors (mechanical, acoustic, optical, and air-related), and among the most frequent environment signals assessed, we highlight gas (density and saturation) and sound.
Despite providing a global overview of the monitoring of older adults’ biological signals, the divergence observed between the studies included in the present review limited the comparison between different systems. Therefore, future studies with more specific criteria regarding study methodology are required. Moreover, while the psychometric properties of some systems were presented, the study of these properties needs to be extended to the other systems. This information will help the decision-making process regarding the selection of the system to be used.

Author Contributions

Conceptualization, J.F., J.M. and A.S.P.S.; methodology J.F., J.M. and A.S.P.S.; formal analysis, J.F., J.M., R.S., E.K., A.R.P. and A.S.P.S.; resources, J.F., J.M., A.R.P. and A.S.P.S.; writing—original draft preparation, J.F.; writing—review and editing, J.F., J.M., R.S., E.K., A.R.P. and A.S.P.S.; supervision J.F., J.M., R.S., E.K., A.R.P. and A.S.P.S.; project administration, J.F. and A.S.P.S.; funding acquisition, R.S. and A.S.P.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Centro de Investigação em Reabilitação-Fundação para a Ciência e Tecnologia (FCT) through R&D Units funding [UIDB/05210/2020] and European Union [PORTIC/SAFHE/BI/2022/01].

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Correction Statement

This article has been republished with a minor correction to the existing affiliations 2 and 4. This change does not affect the scientific content of the article.

Abbreviations

BTbody temperature
HRheart rate
RRrespiratory rate
BPblood pressure
StO2pulse oxygenation
BGblood glucose
PRISMAPreferred Reporting Items for Systematic Reviews and Meta-Analyses
JF and JMreviewers
ASPreviewer consulted in case of doubt
AMSTARAssessing the Methodological Quality of Systematic Reviews 2.0
OBSobservational
USAUnited States of America
UKUnited Kingdom
RCTrandomized control trial
nRCTnon-randomized control trial
CSScross-sectional
CCcase control
COcross over
PROprospective
CScase series
*development of a monitoring system
nnumber of studies
-not reported
PAphysical activity
ECGechocardiography
ITinformation technology
AFatrial fibrillation
CGMcontinuous glucose monitoring
RPMremote patient monitoring
Ffree-living
Ccontrolled
Hhospitalized
CHDcoronary heart disease
COPDchronic obstructive pulmonary disease
SDstandard deviation
SBsedentary behavior
METsmetabolic equivalent of task
cpmcounts per minute
VAvertical axis
VMvertical magnitude
bpmbeats per minute
GPSglobal positioning system
IMUsinertial motion units
FEV1first second of forced expiration
ICCintraclass coefficient correlation
rcoefficient correlation
Phyphysiological monitoring
Fxfunctional monitoring
Ememergency detection
SaSesafety/security monitoring
TVtelevision

Appendix A. Search String by Database

Pubmed
OLDER ADULTS
(“aged”[MeSH Terms] OR “aged”[Title/Abstract] OR “elder*”[Title/Abstract] OR “aged, 80 and over”[MeSH Terms] OR “older adult*”[Title/Abstract] OR “older person*”[Title/Abstract] OR “centenarian*”[Title/Abstract] OR “nonagenarian*”[Title/Abstract] OR “octogenarian*”[Title/Abstract])
BIOLOGICAL AND ENVIRONMENTAL SIGNALS
(“Vital Signals”[MeSH Terms] OR vital[Title/Abstract] OR “vital sign*”[Title/Abstract] OR “vital function*”[Title/Abstract] OR “vital parameter*”[Title/Abstract] OR “biological sign*” [Title/Abstract] OR “physical activity”[Title/Abstract] OR “sedentary behavior”[MeSH Terms] OR “sedentary behavior”[Title/Abstract] OR “cardiorespiratory fitness”[MeSH Terms] OR “cardiorespiratory fitness”[Title/Abstract] OR “electrocardiography”[MeSH Terms] OR “electrocardiography”[Title/Abstract] OR “blood glucose”[MeSH Terms] OR “blood glucose”[Title/Abstract] OR “galvanic skin response”[MeSH Terms] OR “galvanic skin response”[Title/Abstract] OR “oximetry”[MeSH Terms] OR “oximetry”[Title/Abstract] OR “Humidity”[MeSH Terms] OR “humidity”[Title/Abstract] OR “Temperature”[MeSH Terms] OR “temperature”[Title/Abstract] OR “lighting”[MeSH Terms] OR “lighting”[Title/Abstract])
TELEMONITORING
(“wearable electronic devices”[MeSH Terms] OR “wearable electronic devices” [Title/Abstract] OR “wearable devices”[Title/Abstract] OR “wearable technology”[Title/Abstract] OR “sensor”[Title/Abstract] OR “device*”[Title/Abstract] OR “wearable”[Title/Abstract] OR Internet of Things[MeSH Terms] OR “Internet of Things”[Title/Abstract] OR “Remote continuous monitoring”[Title/Abstract] OR “wireless device”[Title/Abstract] OR “patch”[Title/Abstract] OR “appliance”[Title/Abstract] OR “portable”[Title/Abstract] OR “Monitoring, Physiologic”[MeSH Terms] OR “Monitoring, Physiologic”[Title/Abstract] OR “tracker*”[Title/Abstract] OR “Environmental Monitoring”[MeSH Terms] OR “Environmental Monitoring” [Title/Abstract] OR “Environmental Quality” [Title/Abstract])
STUDY DESIGN
“Review”[Publication Type] OR “Review” [Title/Abstract] OR “review literature as topic”[MeSH Terms] OR “Systematic review”[Publication Type] OR “Systematic reviews as topic”[MeSH Terms] OR “systematic review”[Title/Abstract] OR “Meta-Analysis”[Publication Type] OR “Meta analysis as Topic”[MeSH Terms] OR “Meta analysis”[Title/Abstract] OR “Meta-analysis as Topic”[MeSH Terms]
COCHRANE DATABASE OF SYSTEMATIC REVIEWS
Search Hits
#1MeSH descriptor: [Aged] explode all trees  215061
#2”elder*”:ti,ab,kw 60362
#3MeSH descriptor: [Aged, 80 and over] explode all trees 54685
#4”older adult*”:ti,ab,kw 983
#5”older person*”:ti,ab,kw 142
#6”centenarian*”:ti,ab,kw 6
#7”nonagenarian*”:ti,ab,kw 5
#8”octogenarian*”:ti,ab,kw 31
#9#1 OR #2 OR #3 OR #4 OR #5 OR #6 OR #7 OR #8 259899
#10MeSH descriptor: [Vital Signals] explode all trees 37510
#11”vital”:ti,ab,kw 28486
#12”vital sign*”:ti,ab,kw 4493
#13”vital function*”:ti,ab,kw 9
#14”vital parameter*”:ti,ab,kw 11
#15”biological sign*”:ti,ab,kw 1
#16”physical activity”:ti,ab,kw 34481
#17”sedentary behavior”:ti,ab,kw 2372
#18”cardiorespiratory fitness”:ti,ab,kw 2297
#19MeSH descriptor: [Sedentary Behavior] explode all trees 1240
#20MeSH descriptor: [Cardiorespiratory Fitness] explode all trees 345
#21MeSH descriptor: [Electrocardiography] explode all trees 8928
#22”Electrocardiography”:ti,ab,kw 12256
#23MeSH descriptor: [Blood Glucose] explode all trees 16796
#24”blood glucose”:ti,ab,kw 32059
#25”galvanic skin response”:ti,ab,kw 782
#26MeSH descriptor: [Galvanic Skin Response] explode all trees 659
#27MeSH descriptor: [Oximetry] explode all trees 1049
#28”oximetry”:ti,ab,kw 4106
#29MeSH descriptor: [Humidity] explode all trees 549
#30humidity:ti,ab,kw 1753
#31MeSH descriptor: [Temperature] explode all trees 4530
#32”temperature”:ti,ab,kw 22891
#33MeSH descriptor: [Lighting] explode all trees 240
#34”lighting”:ti,ab,kw 820
#35#10 OR #11 OR #12 OR #13 OR #14 OR #15 OR #16 OR #17 OR #18 OR #19 #20 OR #21 OR #22 OR #23 OR #24 OR #25 OR #26 OR #27 OR #28 OR #29 OR #30 OR #31 OR #32 OR #33 OR #34 158303
#36MeSH descriptor: [Wearable Electronic Devices] explode all trees 521
#37”wearable electronic devices”:ti,ab,kw 109
#38”wearable technology”:ti,ab,kw 102
#39”sensor”:ti,ab,kw 3640
#40”device*”:ti,ab,kw 47770
#41”wearable”:ti,ab,kw 1430
#42MeSH descriptor: [Internet of Things] explode all trees 1
#43”Internet of Things”:ti,ab,kw 46
#44”Remote continuous monitoring”:ti,ab,kw 3
#45”wireless device”:ti,ab,kw 27
#46”patch”:ti,ab,kw 6815
#47”appliance”:ti,ab,kw 2083
#48”portable”:ti,ab,kw 3418
#49”sensor”:ti,ab,kw 3640
#50MeSH descriptor: [Monitoring, Physiologic] explode all trees 12705
#51”Monitoring, Physiologic”:ti,ab,kw 2321
#52”tracker*”:ti,ab,kw 872
#53MeSH descriptor: [Environmental Monitoring] explode all trees 280
#54”Environmental Monitoring”:ti,ab,kw 230
#55Environmental Quality:ti,ab,kw 2862
#56#36 OR #37 OR #38 OR #39 OR #40 OR #41 OR #42 OR #43 OR #44 OR #45 OR #46 OR #47 OR #48 OR #49 OR #50 OR #51 OR #52 OR #53 OR #54 OR #55 76944
#57 #9 AND #35 AND #56 with Cochrane Library publication date from Jan 2016 to present, in Cochrane Reviews 19
WEB OF SCIENCE
TS=Topic
Searches for topic terms in the following fields within a record.
Title
Abstract
Author Keywords
Keywords Plus®
OLDER ADULTS
TS=(“aged” OR “elder*” OR “older adult*” OR “older person*” OR “centenarian*” OR “nonagenarian*” OR “octogenarian*”)
BIOLOGICAL AND ENVIRONMENTAL SIGNALS
TS=(“vital” OR “vital sign*” OR “vital function*” OR “vital parameter*” OR “biological sign*” OR “physical activity” OR “sedentary behavior” OR “cardiorespiratory fitness” OR “electrocardiography” OR “blood glucose” OR “galvanic skin response” OR “oximetry” OR “humidity” OR “temperature” OR “lighting”)
TELEMONITORING
TS=(“wearable electronic devices” OR “wearable devices” OR “wearable technology” OR “sensor” OR “device*” OR “wearable” OR “Internet of Things” OR “Remote continuous monitoring” OR “wireless device” OR “patch” OR “appliance” OR “portable” OR “sensor” OR “Monitoring, Physiologic” OR “tracker*” OR “Environmental Monitoring” OR “Environmental Quality”)
STUDY DESIGN
TS=(“Review” OR “systematic review”[Title/Abstract] OR “Meta analysis”
String Final
(((TS=((“aged” OR “elder*” OR “older adult*” OR “older person*” OR “centenarian*” OR “nonagenarian*” OR “octogenarian*”))) AND TS=((“vital” OR “vital sign*” OR “vital function*” OR “vital parameter*” OR “biological sign*” OR “physical activity” OR “sedentary behavior” OR “cardiorespiratory fitness” OR “electrocardiography” OR “blood glucose” OR “galvanic skin response” OR “oximetry” OR “humidity” OR “temperature” OR “lighting”))) AND TS=((“wearable electronic devices” OR “wearable devices” OR “wearable technology” OR “sensor” OR “device*” OR “wearable” OR “Internet of Things” OR “Remote continuous monitoring” OR “wireless device” OR “patch” OR “appliance” OR “portable” OR “sensor” OR “Monitoring, Physiologic” OR “tracker*” OR “Environmental Monitoring” OR “Environmental Quality”))) AND TS=((“Review” OR “systematic review”[Title/Abstract] OR “Meta analysis”))
JBI DATABASE OF SYSTEMATIC REVIEWS AND IMPLEMENTATION REPORTS
Population
aged.sh. or aged.ab. or elder*.ab. or (aged, 80 and over).sh. or older adult*.ab. or older person*.ab. or centenarian*.ab. or nonagenarian*.ab. or octogenerian*.ab. or aged.ti. or elder*.ti. or older adult*.ti. or older person*.ti. or centenarian*.ti. or nonagenerian*.ti. or octagenerian*.ti.
Signals
“Vital signals”.sh. or Vital.ti. or Vital.ab. or “Vital sign*”.ti. or “Vital sign*”.ab. or Vital function*.ti. or Vital funciton*.ab. or Vital parameter*.ti. or Vital parameter*.ti. or Biological sign*.ti. or Biological sign*.ab. or Physical activity.ti. or Physical activity.ab. or Sedentary Behavior.sh. or Sedentary Behavior.ti. or Cardiorespiratory fitness.sh. or Cardiorespiratory fitness.ti. or blood glucose.sh. or blood glucose.ti. or galvanic skin response.sh. or galvanic skin response.ti. or oximetry.sh. or humidity.sh. or temperature.sh. or temperature.ti. or lighting.sh. or lighting.ti. or Sedentary Behavior.ab. or eletrocardiography.sh. or eletrocardiography.ti. or eletrocardiography.ab. or oximetry.ti. or oximetry.ab. or Cardiorespiratory fitness.ab. or blood glucose.ab. or galvanic skin response.ab. or humidity.ti. or humidity.ab. or temperature.ab. or lighting.ab
Telemonitoring
wearable electronic devices.sh. or wearable electronic devices.ti. or wearable electronic devices.ab. or wearable devices.ti. or wearable devices.ab. or wearable technology.ti. or wearable technology.ab. or sensor.ti. or sensor.ab. or device*.ti. or device*.ab. or wearable.ti. or wearable.ab. or internet of things.sh. or internet of things.ti. or internet of things.ab. or remote continuous monitoring.ti. or remote continuous monitoring.ab. or wireless device.ti. or wireless device.ab. or patch.ti. or patch.ab. or appliance.ti. or appliance.ab. or portable.ti. or portable.ab. or Monitoring, physiologic.sh. or Monitoring, physiologic.ab. or Monitoring, physiologic.ti. or tracker*.ti. or tracker*.ab. or environmental monitoring.sh. or environmental monitoring.ab. or environmental monitoring.ab. or environmental quality.ab. or environmental quality.ti.
Publication type
review.pt. or review.ti. or review.ab. or review literature as topic.sh. or systematic review.pt. or systematic reviews as topic.sh. or systematic review.ab. or systematic review.ti. or meta-analysis.pt. or meta-analysis as topic.ab. or meta-analysis as topic.sh. or meta-analysis as topic.ti
(aged.sh. or aged.ab. or elder*.ab. or (aged, 80 and over).sh. or older adult*.ab. or older person*.ab. or centenarian*.ab. or nonagenarian*.ab. or octogenerian*.ab. or aged.ti. or elder*.ti. or older adult*.ti. or older person*.ti. or centenarian*.ti. or nonagenerian*.ti. or octagenerian*.ti.) AND (“Vital signals”.sh. or Vital.ti. or Vital.ab. or “Vital sign*”.ti. or “Vital sign*”.ab. or Vital function*.ti. or Vital funciton*.ab. or Vital parameter*.ti. or Vital parameter*.ti. or Biological sign*.ti. or Biological sign*.ab. or Physical activity.ti. or Physical activity.ab. or Sedentary Behavior.sh. or Sedentary Behavior.ti. or Cardiorespiratory fitness.sh. or Cardiorespiratory fitness.ti. or blood glucose.sh. or blood glucose.ti. or galvanic skin response.sh. or galvanic skin response.ti. or oximetry.sh. or humidity.sh. or temperature.sh. or temperature.ti. or lighting.sh. or lighting.ti. or Sedentary Behavior.ab. or eletrocardiography.sh. or eletrocardiography.ti. or eletrocardiography.ab. or oximetry.ti. or oximetry.ab. or Cardiorespiratory fitness.ab. or blood glucose.ab. or galvanic skin response.ab. or humidity.ti. or humidity.ab. or temperature.ab. or lighting.ab.) AND (wearable electronic devices.sh. or wearable electronic devices.ti. or wearable electronic devices.ab. or wearable devices.ti. or wearable devices.ab. or wearable technology.ti. or wearable technology.ab. or sensor.ti. or sensor.ab. or device*.ti. or device*.ab. or wearable.ti. or wearable.ab. or internet of things.sh. or internet of things.ti. or internet of things.ab. or remote continuous monitoring.ti. or remote continuous monitoring.ab. or wireless device.ti. or wireless device.ab. or patch.ti. or patch.ab. or appliance.ti. or appliance.ab. or portable.ti. or portable.ab. or Monitoring, physiologic.sh. or Monitoring, physiologic.ab. or Monitoring, physiologic.ti. or tracker*.ti. or tracker*.ab. or environmental monitoring.sh. or environmental monitoring.ab. or environmental monitoring.ab. or environmental quality.ab. or environmental quality.ti.

References

  1. Chandrasekaran, R.; Katthula, V.; Moustakas, E. Too Old for Technology? Use of Wearable Healthcare Devices by Older Adults and Their Willingness to Share Health Data with Providers. Health Inform. J. 2021, 27, 14604582211058073. [Google Scholar] [CrossRef] [PubMed]
  2. Maric, B.; Kaan, A.; Ignaszewski, A.; Lear, S.A. A Systematic Review of Telemonitoring Technologies in Heart Failure. Eur. J. Heart Fail. 2009, 11, 506–517. [Google Scholar] [CrossRef]
  3. Takahashi, P.Y.; Pecina, J.L.; Upatising, B.; Chaudhry, R.; Shah, N.D.; Van Houten, H.; Cha, S.; Croghan, I.; Naessens, J.M.; Hanson, G.J. A Randomized Controlled Trial of Telemonitoring in Older Adults with Multiple Health Issues to Prevent Hospitalizations and Emergency Department Visits. Arch. Intern. Med. 2012, 172, 773–779. [Google Scholar] [CrossRef] [PubMed]
  4. Ometov, A.; Shubina, V.; Klus, L.; Skibińska, J.; Saafi, S.; Pascacio, P.; Flueratoru, L.; Gaibor, D.Q.; Chukhno, N.; Chukhno, O.; et al. A Survey on Wearable Technology: History, State-of-the-Art and Current Challenges. Comput. Netw. 2021, 193, 108074. [Google Scholar] [CrossRef]
  5. Mansouri, S. The Development of the Vital Signs Tele-Monitoring System for the Elderly by Using ‘UML’ Language and the Interoperability Standard ‘Continua’. Open Bioinform. J. 2020, 13, 92–105. [Google Scholar] [CrossRef]
  6. Loureiro, A.; Ferreira, A.; Figueiredo, J.; Simões, H. Qualidade Do Ar Interior Em Lares de Idosos e Seus Efeitos Na Saúde Dos Trabalhadores. Rev. Port. Saúde Ocup. 2017, 3, 82–100. [Google Scholar] [CrossRef]
  7. Kivimäki, T.; Stolt, M.; Charalambous, A.; Suhonen, R. Safety of Older People at Home: An Integrative Literature Review. Int. J. Older People Nurs. 2020, 15, e12285. [Google Scholar] [CrossRef]
  8. Szanton, S.L.; Roth, J.; Nkimbeng, M.; Savage, J.; Klimmek, R. Improving Unsafe Environments to Support Aging Independence with Limited Resources. Nurs. Clin. N. Am. 2014, 49, 133–145. [Google Scholar] [CrossRef]
  9. Kerr, J.; Rosenberg, D.; Frank, L. The Role of the Built Environment in Healthy Aging: Community Design, Physical Activity, and Health among Older Adults. J. Plan. Lit. 2012, 27, 43–60. [Google Scholar] [CrossRef]
  10. van den Berg, N.; Schumann, M.; Kraft, K.; Hoffmann, W. Telemedicine and Telecare for Older Patients—A Systematic Review. Maturitas 2012, 73, 94–114. [Google Scholar] [CrossRef]
  11. Leenen, J.P.L.; Leerentveld, C.; van Dijk, J.D.; van Westreenen, H.L.; Schoonhoven, L.; Patijn, G.A. Current Evidence for Continuous Vital Signs Monitoring by Wearable Wireless Devices in Hospitalized Adults: Systematic Review. J. Med Internet Res. 2020, 22, e18636. [Google Scholar] [CrossRef] [PubMed]
  12. Chester, J.G.; Rudolph, J.L. Vital Signs in Older Patients: Age-Related Changes. J. Am. Med. Dir. Assoc. 2011, 12, 337–343. [Google Scholar] [CrossRef] [PubMed]
  13. Wang, Z.; Yang, Z.; Dong, T. A Review of Wearable Technologies for Elderly Care That Can Accurately Track Indoor Position, Recognize Physical Activities and Monitor Vital Signs in Real Time. Sensors 2017, 17, 341. [Google Scholar] [CrossRef]
  14. Page, M.J.; McKenzie, J.E.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. The PRISMA 2020 Statement: An Updated Guideline for Reporting Systematic Reviews. BMJ 2021, 372, n71. [Google Scholar] [CrossRef] [PubMed]
  15. Aromataris, E.; Fernandez, R.; Godfrey, C.M.; Holly, C.; Khalil, H.; Tungpunkom, P. Summarizing Systematic Reviews: Methodological Development, Conduct and Reporting of an Umbrella Review Approach. Int. J. Evid.-Based Healthc. 2015, 13, 132–140. [Google Scholar] [CrossRef] [PubMed]
  16. Shea, B.J.; Reeves, B.C.; Wells, G.; Thuku, M.; Hamel, C.; Moran, J.; Moher, D.; Tugwell, P.; Welch, V.; Kristjansson, E.; et al. AMSTAR 2: A Critical Appraisal Tool for Systematic Reviews That Include Randomised or Non-Randomised Studies of Healthcare Interventions, or Both. BMJ 2017, 358, j4008. [Google Scholar] [CrossRef]
  17. Lim, S.E.R.; Ibrahim, K.; Sayer, A.A.; Roberts, H.C. Assessment of Physical Activity of Hospitalised Older Adults: A Systematic Review. J. Nutr. Health Aging 2018, 22, 377–386. [Google Scholar] [CrossRef]
  18. Dasenbrock, L.; Heinks, A.; Schwenk, M.; Bauer, J.M. Technology-Based Measurements for Screening, Monitoring and Preventing Frailty. Z. Gerontol. Geriatr. 2016, 49, 581–595. [Google Scholar] [CrossRef]
  19. Kristoffersson, A.; Lindén, M. A Systematic Review on the Use of Wearable Body Sensors for Health Monitoring: A Qualitative Synthesis. Sensors 2020, 20, 1502. [Google Scholar] [CrossRef]
  20. Moore, K.; O’Shea, E.; Kenny, L.; Barton, J.; Tedesco, S.; Sica, M.; Crowe, C.; Alamäki, A.; Condell, J.; Nordström, A.; et al. Older Adults’ Experiences with Using Wearable Devices: Qualitative Systematic Review and Meta-Synthesis. JMIR mHealth uHealth 2021, 9, e23832. [Google Scholar] [CrossRef]
  21. Clark, C.E.; McDonagh, S.T.J.; McManus, R.J. Accuracy of Automated Blood Pressure Measurements in the Presence of Atrial Fibrillation: Systematic Review and Meta-Analysis. J. Hum. Hypertens. 2019, 33, 352–364. [Google Scholar] [CrossRef]
  22. Mattishent, K.; Loke, Y.K. Detection of Asymptomatic Drug-Induced Hypoglycemia Using Continuous Glucose Monitoring in Older People—Systematic Review. J. Diabetes Complicat. 2018, 32, 805–812. [Google Scholar] [CrossRef] [PubMed]
  23. Vavasour, G.; Giggins, O.M.; Doyle, J.; Kelly, D. How Wearable Sensors Have Been Utilised to Evaluate Frailty in Older Adults: A Systematic Review. J. Neuroeng. Rehabil. 2021, 18, 112. [Google Scholar] [CrossRef]
  24. Wang, J.; Spicher, N.; Warnecke, J.M.; Haghi, M.; Schwartze, J.; Deserno, T.M. Unobtrusive Health Monitoring in Private Spaces: The Smart Home. Sensors 2021, 21, 864. [Google Scholar] [CrossRef] [PubMed]
  25. Bezold, J.; Krell-Roesch, J.; Eckert, T.; Jekauc, D.; Woll, A. Sensor-Based Fall Risk Assessment in Older Adults with or without Cognitive Impairment: A Systematic Review. Eur. Rev. Aging Phys. Act. 2021, 18, 15. [Google Scholar] [CrossRef] [PubMed]
  26. Prasitlumkum, N.; Cheungpasitporn, W.; Chokesuwattanaskul, A.; Thangjui, S.; Thongprayoon, C.; Bathini, T.; Vallabhajosyula, S.; Kanitsoraphan, C.; Leesutipornchai, T.; Chokesuwattanaskul, R. Diagnostic Accuracy of Smart Gadgets/Wearable Devices in Detecting Atrial Fibrillation: A Systematic Review and Meta-Analysis. Arch. Cardiovasc. Dis. 2021, 114, 4–16. [Google Scholar] [CrossRef]
  27. Olson, M.; Lockhart, T. Predicting Fall Risk Through Automatic Wearable Monitoring. Int. J. Progn. Health Manag. 2021, 12, 1–15. [Google Scholar] [CrossRef]
  28. Vegesna, A.; Tran, M.; Angelaccio, M.; Arcona, S. Remote Patient Monitoring via Non-Invasive Digital Technologies: A Systematic Review. Telemed. e-Health 2017, 23, 3–17. [Google Scholar] [CrossRef]
  29. Feehan, L.M.; Geldman, J.; Sayre, E.C.; Park, C.; Ezzat, A.M.; Yoo, Y.; Hamilton, C.B.; Li, L.C. Accuracy of Fitbit Devices: Systematic Review and Narrative Syntheses of Quantitative Data. JMIR mHealth uHealth 2018, 6, e10527. [Google Scholar] [CrossRef]
  30. Straiton, N.; Alharbi, M.; Bauman, A.; Neubeck, L.; Gullick, J.; Bhindi, R.; Gallagher, R. The Validity and Reliability of Consumer-Grade Activity Trackers in Older, Community-Dwelling Adults: A Systematic Review. Maturitas 2018, 112, 85–93. [Google Scholar] [CrossRef]
  31. Alharbi, M.; Straiton, N.; Smith, S.; Neubeck, L.; Gallagher, R. Data Management and Wearables in Older Adults: A Systematic Review. Maturitas 2019, 124, 100–110. [Google Scholar] [CrossRef]
  32. Heesch, K.C.; Hill, R.L.; Aguilar-Farias, N.; van Uffelen, J.G.Z.; Pavey, T. Validity of Objective Methods for Measuring Sedentary Behaviour in Older Adults: A Systematic Review. Int. J. Behav. Nutr. Phys. Act. 2018, 15, 119. [Google Scholar] [CrossRef]
  33. Khan, A.; Raza, Q.; Ansari, B.; Farhad, A. Impact of Activity Monitors on Quantification of Physical Activity-A Systematic Review & Meta-Analysis. Indo Am. J. Pharm. Sci. 2019, 6, 3400–3411. [Google Scholar]
  34. Revathi, K.; Samydurai, A.; Saravana Kumar, N.; Keerthana, K. Health Trackers in Current Market: A Systematic Review, Trends and Challenges; Health Trackers in Current Market: A Systematic Review, Trends and Challenges. In Proceedings of the 2019 5th International Conference on Advanced Computing & Communication Systems (ICACCS), Coimbatore, India, 15–16 March 2019. [Google Scholar]
  35. Creighton, H. Europe’s Ageing Demography; International Longevity Centre: London, UK, 2014. [Google Scholar]
  36. Eurostat. Ageing Europe—Looking at the Lives of Older People in the EU; Eurostat: Luxembourg, 2020; ISBN 978-92-76-21520-2. [Google Scholar]
  37. Courtin, E.; Knapp, M. Social Isolation, Loneliness and Health in Old Age: A Scoping Review. Health Soc. Care Community 2017, 25, 799–812. [Google Scholar] [CrossRef] [PubMed]
  38. United Nations. Agenda 2030 Para o Desenvolvimento Sustentável; United Nations: New York, NY, USA, 2015. [Google Scholar]
  39. Nossa, P.N. Aging, Financing, and Innovation in the Health Care System: A Necessary Discussion to Maintain the Right to Health. Saude E Soc. 2020, 29, 1–14. [Google Scholar] [CrossRef]
  40. Carvalho, I.A.; Epping-Jordan, J.A.; Pot, A.M.; Kelley, E.; Toro, N.; Thiyagarajan, J.A.; Beard, J.R. Organizing Integrated Health-Care Services to Meet Older People’s Needs. Bull. World Health Organ. 2017, 95, 756–763. [Google Scholar] [CrossRef] [PubMed]
  41. Nações Unidas-Brasil. Quatro Em Cada Cinco Países Investem Menos de 1% Do PIB Em Pesquisa Científica; UNESCO: Paris, France, 2021. [Google Scholar]
  42. Bramer, W.M.; Rethlefsen, M.L.; Kleijnen, J.; Franco, O.H. Optimal Database Combinations for Literature Searches in Systematic Reviews: A Prospective Exploratory Study. Syst. Rev. 2017, 6, 245. [Google Scholar] [CrossRef] [PubMed]
  43. Santana, C.; Raymundo, T.; Santana, M.; Silva, D.; Elui, V.; Marques, P. The Use of Health-Monitoring Devices by Elderly in the Household. Rev. Bras. Geriatr. Gerontol. 2014, 17, 383–393. [Google Scholar] [CrossRef]
  44. Teixeira, C.C.; Boaventura, R.P.; Souza, A.C.S.; Paranaguá, T.T.d.B.; Bezerra, A.L.Q.; Bachion, M.M.; Brasil, V.V. Vital Signs Measurement: An Indicator of Safe Care Delivered to Elderly Patients. Texto E Contexto Enferm. 2015, 24, 1071–1078. [Google Scholar] [CrossRef]
  45. Wolf, L. How Normal Are “Normal Vital Signs”? Effective Triage of the Older Patient. J. Emerg. Nurs. 2007, 33, 587–589. [Google Scholar] [CrossRef]
  46. Batla, A.; Stamelou, M.; Edwards, M.J.; Pareés, I.; Saifee, T.A.; Fox, Z.; Bhatia, K.P. Functional Movement Disorders Are Not Uncommon in the Elderly. Mov. Disord. 2013, 28, 540–543. [Google Scholar] [CrossRef] [PubMed]
  47. Lins-Filho, O.d.L.; Braga, M.M.; de Lima, T.M.; Ferreira, D.K.d.S. Low Level of Physical Activity and Sedentary Behaviour in Elderly: A Systematic Review of the Parameters. Rev. Bras. Cineantropometria Desempenho Hum. 2020, 22, 1–12. [Google Scholar] [CrossRef]
  48. Soares-Miranda, L.; Sattelmair, J.; Chaves, P.; Duncan, G.E.; Siscovick, D.S.; Stein, P.K.; Mozaffarian, D. Physical Activity and Heart Rate Variability in Older Adults: The Cardiovascular Health Study. Circulation 2014, 129, 2100–2110. [Google Scholar] [CrossRef] [PubMed]
  49. Takayama, A.; Nagamine, T.; Kotani, K. Aging Is Independently Associated with an Increasing Normal Respiratory Rate among an Older Adult Population in a Clinical Setting: A Cross-Sectional Study. Geriatr. Gerontol. Int. 2019, 19, 1179–1183. [Google Scholar] [CrossRef]
  50. Phillips, B.; Ancoli-Israel, S. Sleep Disorders in the Elderly. Sleep Med. 2001, 2, 99–114. [Google Scholar] [CrossRef] [PubMed]
  51. Korol, D.; Gold, P. Glucose, Memory, and Aging. Am. J. Clin. Nutr. 1998, 67, 764S–771S. [Google Scholar] [CrossRef] [PubMed]
  52. Keogh, A.; Argent, R.; Anderson, A.; Caulfield, B.; Johnston, W. Assessing the Usability of Wearable Devices to Measure Gait and Physical Activity in Chronic Conditions: A Systematic Review. J. Neuroeng. Rehabil. 2021, 18, 138. [Google Scholar] [CrossRef]
  53. Souza, A.C.d.; Alexandre, N.M.C.; de Guirardello, E.B. Psychometric Properties in Instruments Evaluation of Reliability and Validity. Epidemiol. Serv. Saúde 2017, 26, 649–659. [Google Scholar] [CrossRef]
  54. Evenson, K.R.; Goto, M.M.; Furberg, R.D. Systematic Review of the Validity and Reliability of Consumer-Wearable Activity Trackers. Int. J. Behav. Nutr. Phys. Act. 2015, 12, 159. [Google Scholar] [CrossRef]
  55. Mahloko, L.; Adebesin, F. A Systematic Literature Review of the Factors That Influence the Accuracy of Consumer Wearable Health Device Data. In Proceedings of the e-Business, e-Services and e-Society, Skukuza, South Africa, 6–8 April 2020; Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics). Springer: Berlin/Heidelberg, Germany, 2020; Volume 12067 LNCS, pp. 96–107. [Google Scholar]
  56. Lockwood, C.; Conroy-Hiller, T.; Bn, R.N.; Gradcertunivteachlearn, D.; Page, T. Vital Signs. JBI Rep. 2004, 2, 207–230. [Google Scholar] [CrossRef]
  57. Iqbal, S.M.A.; Mahgoub, I.; Du, E.; Leavitt, M.A.; Asghar, W. Advances in Healthcare Wearable Devices. NPJ Flex. Electron. 2021, 5, 9. [Google Scholar] [CrossRef]
  58. Vallati, C.; Virdis, A.; Gesi, M.; Carbonaro, N.; Tognetti, A. EPhysio: A Wearables-Enabled Platform for the Remote Management of Musculoskeletal Diseases. Sensors 2019, 19, 2. [Google Scholar] [CrossRef]
  59. Johansson, D.; Malmgren, K.; Alt Murphy, M. Wearable Sensors for Clinical Applications in Epilepsy, Parkinson’s Disease, and Stroke: A Mixed-Methods Systematic Review. J. Neurol. 2018, 265, 1740–1752. [Google Scholar] [CrossRef]
  60. Pevnick, J.M.; Birkeland, K.; Zimmer, R.; Elad, Y.; Kedan, I. Wearable Technology for Cardiology: An Update and Framework for the Future. Trends Cardiovasc. Med. 2018, 28, 144–150. [Google Scholar] [CrossRef] [PubMed]
  61. Farivar, S.; Abouzahra, M.; Ghasemaghaei, M. Wearable Device Adoption among Older Adults: A Mixed-Methods Study. Int. J. Inf. Manag. 2020, 55, 102209. [Google Scholar] [CrossRef] [PubMed]
  62. Olmedo-Aguirre, J.O.; Reyes-Campos, J.; Alor-Hernández, G.; Machorro-Cano, I.; Rodríguez-Mazahua, L.; Sánchez-Cervantes, J.L. Remote Healthcare for Elderly People Using Wearables: A Review. Biosensors 2022, 12, 73. [Google Scholar] [CrossRef] [PubMed]
  63. Brodie, M.A.D.; Coppens, M.J.M.; Lord, S.R.; Lovell, N.H.; Gschwind, Y.J.; Redmond, S.J.; del Rosario, M.B.; Wang, K.; Sturnieks, D.L.; Persiani, M.; et al. Wearable Pendant Device Monitoring Using New Wavelet-Based Methods Shows Daily Life and Laboratory Gaits Are Different. Med. Biol. Eng. Comput. 2016, 54, 663–674. [Google Scholar] [CrossRef]
  64. Domingos, C.; Picó-Pérez, M.; Magalhães, R.; Moreira, M.; Sousa, N.; Pêgo, J.M.; Santos, N.C. Free-Living Physical Activity Measured with a Wearable Device Is Associated With Larger Hippocampus Volume and Greater Functional Connectivity in Healthy Older Adults: An Observational, Cross-Sectional Study in Northern Portugal. Front. Aging Neurosci. 2021, 13, 729060. [Google Scholar] [CrossRef] [PubMed]
Figure 1. PRISMA Flowchart.
Figure 1. PRISMA Flowchart.
Sensors 23 00796 g001
Table 1. Characteristics of each review included in this umbrella review, with the authors and year published, the city and country in which the review was conducted, the aim, the number of included studies (n) and respective countries, and the databases searched.
Table 1. Characteristics of each review included in this umbrella review, with the authors and year published, the city and country in which the review was conducted, the aim, the number of included studies (n) and respective countries, and the databases searched.
Authors and Year PublishedCity, CountryAim: To Review the:Studies Included in the ReviewDatabases Searched
nTypeContinent/Countries
Straiton et al. (2018) [30]Sidney, AustraliaValidity and reliability of consumer-grade activity trackers in community-dwelling older adults.7OBSEurope, Australia, USA, CanadaMEDLINE, CINAHL, COCHRANE, Central Register of Controlled Clinical Trials
Lim et al. (2018) [17]Wessex, UKMeasures of hospitalized older adults’ physical activity.18RCT, nRCTUSA, Norway, Australia, Denmark, France, IsraelMEDLINE, EMBASE, CINAHL, AMED
Feehan et al. (2018) [29]Richmond, CanadaAccuracy of Fitbit activity trackers in controlled and free-living settings.67-North America, Western Europe, South Asia, and AustraliaPubMed, EMBASE, CINAHL, SPORTDiscus, Google Scholar
Khan et al. (2020) [33]Ziauddin, PakistanPA monitors among the sedentary population.16RCT-PubMed, Google Scholar, Google, MEDLINE, Cochrane Library
Prasitlumkum et al. (2021) [26]California, USAAccuracy of an atrial fibrillation diagnosis by smart gadgets/wearable devices.21OBSNorway, Netherlands, Finland, UK, USA, Hong Kong, Belgium, Germany, ItalyMEDLINE, EMBASE, Cochrane
Alharbi et al. (2019) [31]Sydney, AustraliaPA, ECG, and vital signals from wearable sensors among older adults.20-Italy, USA, Canada, Australia, Germany, Denmark, Japan, NetherlandsCINAHL, MEDLINE, PubMed,
Dasenbrock et al. (2016) [18]Oldenburg, GermanyPotential of IT and sensor technology to assess the functionality and mobility of pre-frail and frail older adults.28CSS *-PubMed, Cochrane Library
Kristoffersson and Lindén (2020) [19]Västerås, SwedenUse of wearable body sensors for health monitoring.73OBS, CSS, CC, COAfrica, Australia, Austria, Belgium, Brazil, Canada, China, Colombia, Estonia, France, Germany, Greece, India, Ireland, Italy, Japan, Jordan, Korea, Macedonia, Portugal, Saudi Arabia, Slovenia, South Africa, Spain, Sweden, Switzerland, Taiwan, Netherlands, Tunisia, UK, United Arab Emirates, USAWeb of Science Core Collection, MEDLINE, Scopus, ScienceDirect, Academic Search Elite, ACM Digital Library, IEEE Xplore
Moore et al. (2021) [20]Cork, IrelandUser experience and acceptance after a multi-day trial with a wearable device.20-Western countriesCINAHL, APA PsycINFO, PubMed, EMBASE
Clark et al. (2019) [21]Devon, UKAccuracy of automated devices for measuring BP, with or without AF detection.13RCT, OBSPacific Northwest, Slovakia, Padua, Canada, England, Poland, Norway, Lithuania, Greece, Scotland, Western General, SpainMEDLINE, EMBASE
Mattishent and Loke (2018) [22]Norwich, UKUse of CGM in older patients.9RCT, OBSUSA, Japan, Germany, Canada, NetherlandsSCI Web of Science, Ovid SP, MEDLINE, EMBASE
Vavasour et al. (2021) [23]Dundalk, IrelandMethods of using wearable sensors to assess frailty in older adults.29OBS-Medline, Science Direct, Scopus, CINAHL
Wang et al. (2021) [24]GermanyCurrent sensor technology for unobtrusive in-home monitoring55OBS-ACM Digital Lib, IEEE Xplore, PubMed, Scopus
Olson and Lockhart (2021) [27]Arizona, USAUse of wearable sensors to predict fall risk.54PRO-PubMed
Heesch et al. (2018) [32]Brisbane, AustraliaValidity and reliability of accelerometers for the assessment of sedentary behavior in older adults.15RCT, OBSUSA, Switzerland, Canada, Australia, Norway, Germany, UKEMBASE, PubMed, EBSCOhost
Bezold et al. (2021) [25]Karlsruhe, GermanyCurrent research on wearable sensors for fall risk assessment in older adults with or without cognitive impairment.28CSS mixed design-PubMed, Scopus, Web of Science
Vegesn et al. (2017) [28]Philadelphia, USAKey trends associated with RPM via noninvasive digital technologies.62RCT, OBS, CSFrance, USA, Italy, China, Australia, Spain, Denmark, Canada, Taiwan, Germany, Korea, Switzerland, AustraliaEMBASE, Ovid, MEDLINE
Revathi et al. (2019) [34]Chennai, IndiaMedical equipment widely used in the hospital.39--Scopus journals and a survey report by WHO on telecommunication and information technology
* development of a monitoring system.
Table 2. Methodological Quality Assessment using AMSTAR 2.0.
Table 2. Methodological Quality Assessment using AMSTAR 2.0.
Authors of the Review (Year)12345678910111213141516Overall Quality
Straiton et al. (2018) [30]YesPartial YesNoYesYes-NoYesYesYesNot ApplicableNot ApplicableYesYesNoYesModerate
Lim et al. (2018) [17]YesYesNoYesYesYesNoYesYesYesNot ApplicableNot ApplicableYesYesYesYesModerate
Feehan et al. (2018) [29]YesYesYesYesYesYesNoYesYesYesNot ApplicableNot ApplicableYesYesYesYesHigh
Khan et al. (2020) [33]NoPartial YesNoNoYesNoNoNoYesNoNoNot ApplicableNoYesYesNoLow
Prasitlumkum et al. (2021) [26]YesYesNoYesYesNoYesYesYesYesYesYesYesYesYesYesModerate
Alharbi et al. (2019) [31]YesYesNoYesYesNoNoYesNoYesNot ApplicableNot ApplicableNoYesNoYesLow
Dasenbrock et al. (2016) [18]YesYesNoYesYesNoYesYesNoNoNot ApplicableNot ApplicableNoYesNoYesLow
Kristoffersson and Lindén (2020) [19]YesYesNoYesNoNoYesYesNoNoNot ApplicableNot ApplicableNoNoNoYesLow
Moore et al. (2021) [20]YesYesYesYesYesYesYesNoNoYesNot ApplicableNot ApplicableNoYesNoYesLow
Clark et al. (2019) [21]YesYesYesYesYesYesYesNoYesYesYesYesYesYesNoYesHigh
Mattishent and Loke (2018) [22]YesYesYesYesYesYesYesNoYesYesNot ApplicableNot ApplicableYesYesYesYesHigh
Vavasour et al. (2021) [23]YesYesYesYesNoNoYesYesYesYesNot ApplicableNot ApplicableNoYesNoYesModerate
Wang et al. (2021) [24]YesYesYesYesYesYesNoYesNoYesNot ApplicableNot ApplicableNoNoNoYesLow
Olson and Lockhart (2021) [27]NoYesYesYesNoNoYesNoNoNoNot ApplicableNot ApplicableNoNoNoNoLow
Heesch et al. (2018) [32]YesYesYesYesYesYesYesYesNoYesNot ApplicableNot ApplicableNoYesNoYesHigh
Bezold et al. (2021) [25]YesYesYesYesYesYesYesYesNoYesNot ApplicableNot ApplicableNoNoNoYesModerate
Vegesna et al. (2017) [28]YesYesYesYesYesNoNoYesYesYesNot ApplicableNot ApplicableNoNoNoYesLow
Revathi et al. (2019) [34]NoYesNoYesNoNoNoNoNoYesNot ApplicableNot ApplicableNoNoNoYesCritically Low
Table 3. Characteristics of the studies’ participants.
Table 3. Characteristics of the studies’ participants.
Authors of the Review (Year)nNumber of Older Adults Age (Years)
(Mean ± Standard Deviation or Range)
Health Condition (Healthy/Pathology)Community-Dwelling/Institutionalized Older Adults
Straiton et al. (2018) [30]729070.2 ± 4.8CHD, COPD, Absence of Specific Disease-Based CriteriaF, C, H
Lim et al. (2018) [17]18--Neurologic DiseasesF, C, H
Feehan et al. (2018) [29]67244121–84Healthy, Chronic Diseases, Mobility LimitationsF, C
Khan et al. (2020) [33]162542>18SedentaryF
Prasitlumkum et al. (2021) [26]2117,13173.7 ± 9.1Healthy, Cardiovascular Diseases, Metabolic DiseasesF, C, H
Alharbi et al. (2019) [31]20374169 ± not revealedHigh Risk of Cardiovascular Disease, Chronic Obstructive Pulmonary Disease, Cardiac Patients, Postoperative Surgical PatientsF, C
Dasenbrock et al. (2016) [18]28191721–90Frail, Pre-Frail, or RobustF, H
Kristoffersson and Lindén (2020) [19]731628>16Healthy, Respiratory Diseases, Cardiovascular Diseases, Metabolic Diseases, Neurological DiseasesF, C
Moore et al. (2021) [20]2034951–94Healthy, Previous Breast Cancer, Obesity, Resolving Heart Failure, Parkinson’s Disease, Alzheimer and Dementia, Walking AidsF, H
Clark et al. (2019) [21]13-68–83Atrial Fibrillation, Hypertension and NormotensionF, C, H
Mattishent and Loke (2018) [22]998970DiabetesF
Vavasour et al. (2021) [23]29749118–90-F, C, H
Wang et al. (2021) [24]55>843>20Heart Disease, Healthy, Hearing Impairment, Walking, Abnormalities, Alzheimer’s Disease, Mild Cognitive, Impairment, Cognitive Problem/Difficulties, Parkinson’s Disease, Risk of Cognitive Difficulties, Type II Diabetes, Stroke SurvivorsF
Olson and Lockhart (2021) [27]545–300-Non-Frail/Non-Fallers, Parkinson’s Disease Fallers, Dementia Fallers, Stroke Fallers, Diabetes Fallers, Cardiac Patients FrailF, C
Heesch et al. (2018) [32]15>11,17361–78HealthyF, C
Bezold et al. (2021) [25]28289668–86
Control: 21–35
Dementia, Fallers and Non-FallersF, H
Vegesna et al. (2017) [28]628348Over 20Respiratory Diseases, Weight Management, Metabolic Diseases, Cardiovascular Diseases, Cancer, Neurological, Psychological, Sleep Disorders, Substance AbuseF
Revathi et al. (2019) [34]39----
Table 4. Biological Signals.
Table 4. Biological Signals.
CategoryBiological SignalHealth Status Information of the Biological Signal (Clinical Meaning)CutoffsDevice PlacementAuthor (Year)
Movement related variablesMETs by stepsLevel of PA and SB of participantsPA:
Light = 1.1–2.9 METs
Moderate = 3.0–5.9 METs
Vigorous ≥ 6.0 METs
AnkleLim (2018) [17]
Straiton (2018) [30]
Feehan (2018) [29]
Alharbi (2019) [31]
Moore (2021) [20]
WaistStraiton (2018) [30]
Feehan (2018) [29]
Alharbi (2019) [31]
Moore (2021) [20]
WristStraiton (2018) [30]
Feehan (2018) [29]
Alharbi (2019) [31]
Vavasour (2021) [23]
ThighLim (2018) [17]
Feehan (2018) [29]
Alharbi (2019) [31]
SternumFeehan (2018) [29]
Vavasour (2021) [23]
Chest
Torso
Bra
Upper arm
Lumbar SpineVavasour (2021) [23]
Not reported by the authorsKristoffersson (2020) [19]
Olson (2021) [27]
Revathi (2019) [34]
Movement variablesMETs by cpmLevel of PA and/or SB of participantsSB:
<1.5 METs, <100 cpm
PA:
Light:
1.5–3.0 METs, 100–1040 cpm Moderate:
≥3.0 METs, 1041–1951 cpm
Vigorous:
>1052 cpm
WaistLim (2018) [17], Alharbi (2019) [31], Dasenbrock (2016) [18], Vavasour (2021) [23]
WristKhan (2020) [33]
Alharbi (2019) [31]
Moore (2021) [20]
FootDasenbrock (2016) [18]
Khan (2020) [33]
HipKhan (2020) [33]
Vavasour (2021) [23]
ThighKhan (2020) [33]
Lower Back
Chest
-Kristoffersson (2020) [19]
PostureBody organization-ThighLim (2018) [17]
Chest
Energy expenditure (kcal/kg/day)Level of PA and/or SB of participantsLight PA:
<6.2 kcal/kg/day for men
<7.13 kcal/kg/day for women
HipFeehan (2018) [29]
Vavasour (2021) [23]
WaistFeehan (2018) [29]
Bezold (2021) [25]
WristFeehan (2018) [29]
Alharbi (2019) [31]
Bezold (2021) [25]
Straiton (2018) [30]
TorsoFeehan (2018) [29]
Lower BackBezold (2021) [25]
Upper Legs, Chest, Foot
Movement
Variables
METs by cpm
ECG intervals
Level of PA and/or SB of participants
Fall risk
Frailty
SB:
VA < 100 cpm
VM < 200 cpm.
Sedentary activities
1-s (<1 to <10 in increments of 1 count/s)
15-s (<1 to <100 in increments of 5 counts/15 s)
60-s (<1 to <400 in increments of 25 cpm)
Sedentary time:
<1.5 METs
<100 cpm
<270 kcal/week for women
<383 kcal/week for men
PA
Light: 1.5–3.0 METs, 100–1040 cpm
Moderate: ≥3.0 METs, 1041–1951 cpm
Vigorous: >1052 cpm
A cutoff value of 1.58 m/s gait speed discriminates between HIGH RISK OF FALL and LOW RISK OF FALL.
Fallers had lower average R-R intervals (time between R waves of the ECG), lower variability in R-R duration, and increased power in the low frequency component of the heart wave during continuous monitoring.
“Frail: longer transition duration, decreased smoothness of transition pattern and dynamic of trunk movement
Frail: acceleration and balance parameters in the 10 m extended timed get up and go test”
-Vavasour (2021) [23]
Olson (2021) [27]
Bezold (2021) [25]
Dasenbrock (2016) [18]
Heesch (2018) [32]
Cardiovascular VariablesCardiac RhythmEarly detection of AFIncidence of newly diagnosed AF defined as ≥30 s of AF or flutter detected by tracker.
Each AF episode defined as presence of ≥30 s of continuous AF during monitoring.
FingertipPrasitlumkum (2021) [26]
WristPrasitlumkum (2021) [26]
ChestPrasitlumkum (2021) [26]
Alharbi (2019) [31]
FacialPrasitlumkum (2021) [26]
FingertipPrasitlumkum (2021) [26]
ArmClark (2019) [21]
HR/Pulse/Heart Rate Variability-Bradycardia (HR < 50 bpm)
Tachycardia (HR > 100 bpm)
WristAlharbi (2019) [31]
Chest/ ThoraxAlharbi (2019) [31]
Vegesna (2017) [28]
ArmVegesna (2017) [28]
-Olson (2021) [27]
Revathi (2019) [34]
Kristoffersson (2020) [19]
ECG--ChestAlharbi (2019) [31]
-Kristoffersson (2020) [19]
RR-Bradypnea (RR < 12 bpm)
Tachypnea (RR > 20 bpm)
ChestAlharbi (2019) [31]
-Kristoffersson (2020) [19]
ChestVegesna (2017) [28]
BP---Kristoffersson (2020) [19]
ArmClark (2019) [21]
-Revathi (2019) [34]
Other biological signal variablesEMG--Waist, Arm, and LegDasenbrock (2016) [18]
GPS--WaistDasenbrock (2016) [18]
Foot
BT---Kristoffersson (2020) [19]
ArmVegesna (2017) [28]
Chest
-Revathi (2019) [34]
SpO2---Kristoffersson (2020) [19]
ArmVegesna (2017) [28]
Chest
-Revathi (2019) [34]
AccelerometryFall risk detectionA faller was defined as a person having at least one fall over a certain period of time, usually the past or prospective 12 months.TorsoMoore (2021) [20]
-Olson (2021) [27]
Sleep-WristFeehan (2018) [29]
-Kristoffersson (2020) [19]
-Revathi (2019) [34]
Stress--Kristoffersson (2020) [19]
Glucose levels-- Mattishent (2018) [22]
ArmVegesna (2017) [28]
Chest
Revathi (2019) [34]
Weight---Vegesna (2017) [28]
Table 5. Sensor Type.
Table 5. Sensor Type.
Authors (year)Sensor Type
Straiton et al. (2018) [30]Consumer-grade activity trackers
Lim et al. (2018) [17]Accelerometer
Feehan et al. (2018) [29]Accelerometer
Khan et al. (2020) [33]Accelerometer
Prasitlumkum et al. (2021) [26]ECG sensor
Alharbi et al. (2019) [31]Accelerometer, consumer-grade activity tracker, pedometer
Dasenbrock et al. (2016) [18]Cameras, force platforms and foot switch, triaxial accelerometers, gyroscope, pressure sensors, pedometers, grip ball, motion sensors, bed sensors, stove sensors
Kristoffersson and Lindén (2020) [19]Accelerometer, electrocardiography sensor, pressure sensor
Moore et al. (2021) [20]Accelerometer, pedometer, motion sensor
Clark et al. (2019) [21]Sphygmomanometer, oximeter
Mattishent and Loke (2018) [22]Continuous glucose monitor
Vavasour et al. (2021) [23]IMUs
Wang et al. (2021) [24]Accelerometer, pressure sensor, contact sensor, ECG sensor, gas/dust sensor, camera, ultrasonic sensor, water flow sensor
Olson and Lockhart (2021) [27]IMUs, barometer, pressure insoles, ECG sensor, respiratory monitor
Heesch et al. (2018) [32]Accelerometer, temperature sensor, ambient light sensor
Bezold et al. (2021) [25]Sensor-based balance, IMUs
Vegesna et al. (2017) [28]Spirometry, optical sensor, ECG sensor, oximeter, sphygmomanometer and FEV1 monitors, IMUs, pedometer
Revathi et al. (2019) [34]IMUs, optical, photoConductive, piezo-electric based, pressure, radar, radiofrequency, sonar, surface, electromyography, thermistor, thermoelectric effects, ultrasonic, photoplethysmography
Table 6. Psychometric properties of the health-related biological signals—device—sensor—device placement.
Table 6. Psychometric properties of the health-related biological signals—device—sensor—device placement.
Biological SignalLocalPsychometric PropertiesSensor TypeAuthor (Year)
ValidityReliability
StepsAnkler = 0.76ICC = 0.99AccelerometerLim (2018) [17]
-Percentage error < 10% at 0.4–0.9 m/sConsumer-grade activity trackersStraiton (2018) [30]
Waistr = 0.90ICC = 0.60–0.96Consumer-grade activity trackers
Triaxial accelerometers
Straiton (2018) [30]
Dasenbrok (2016) [18]
Percentage error < 10% at 0.8–0.9 m/s
Wristr = 0.96ICC = 0.15Consumer-grade activity trackersStraiton (2018) [30]
Thigh-Limits of agreement = −2.01 to 16.54
Absolute percent error = 40.31
AccelerometerLim (2018) [17]
TorsoPercentage error < −10.6%AccelerometerFeehan (2018) [29]
Daily activity timeWristr = 0.25Percentage error < −8.6%Consumer-grade activity trackersStraiton (2018) [30] Feehan (2018) [29]
Ankle-Percentage error < 2.9%AccelerometerFeehan (2018) [29]
PA levelWaistr = 0.780Percentage error = 10%AccelerometerLim (2018) [17]
Wristr = 0.965-AccelerometerKhan (2020) [33]
Footr = 0.955
Hipr = 0.978
Thighr = 0.971
Lower Backr = 0.968
Chestr = 0.969
PostureThigh-Limits of agreement = −2.01 to 16.54
Absolute percent error = 40.31
AccelerometerLim (2018) [17]
SleepWrist-Percentage error < −8.6%AccelerometerFeehan (2018) [29]
Energy expenditureWrist-Percentage error < −8.6%AccelerometerFeehan (2018) [29]
r = 0.74-Consumer-grade activity trackersStraiton (2018) [30]
Torso-Percentage error < −10.6%AccelerometerFeehan (2018) [29]
Cardiac RhythmFingertip-Accuracy—94.0–97.4
Sensitivity—87.0–100.0
Specificity—84.9–98.8
ECG sensorPrasitlumkum (2021) [26]
Wrist-Accuracy—89.2–99.2
Sensitivity—75.0–93.7
Specificity—84.0–98.2
Chest-Accuracy—95.7
Sensitivity—95.3
Specificity—96.0
Facial-Accuracy—95.4
Sensitivity—94.7
Specificity—95.8
Fingertip-Accuracy—92.0–96.1
Sensitivity—93.1–95.6
Specificity—90.9–96.6
Movement (free-living activitiesWaist-ICC: 0.80–5 days
ICC: 0.95–21 days
AccelerometerHeesch (2018) [32]
Hip-ICC: 0.74 (0.65, 0.80)
Sensitivity: 61–92%
Specificity: 43–91%
Wrist-Sensitivity: 78–82%
Specificity: 70–78%
Thigh-Sensitivity: 99.3–99.9%
Specificity: 99.2–99.7%
Table 7. Environmental Signals, retrieved from: Wang et al. 2021 [24,34].
Table 7. Environmental Signals, retrieved from: Wang et al. 2021 [24,34].
Functions
Phy
Fx
Em
SaSe
Data
Physiology
Body temperature, BP, Body mass, ECG, HR, RR
Behavior
Activity level, Computer usage, Gait parameters, Phone usage, Presence, Time spent on activities, Out of home, Walking speed
Environment
Gas concentration, Humidity, Temperature, Sound
Locations
Electrical appliances
Coffee machine, Computer, Fridge, Stove/oven, Lamp, Microwave oven, Television (TV), Phone, Radio, Water kettle
Static facilities
Floor (specific area), Wall (specific), Window, Sink, Toilet, Chair/sofa/couch, Bed, Door, Shelf/cabinet/drawer
Rooms
Living room, Kitchen, Bedroom, Bathroom, Hallway, Study room
Unobtrusive Sensors
Acoustic
Microphone
Ultrasonic sensor
Air-related
Gas/dust sensor
Humidity sensor
Thermometer
Mechanical
Accelerometer
Bed sensor
Scale
Pressure sensor
Vibration sensor
Electromagnetic
Contact sensor
Electrocardiography sensor
Power meter
Radar
Optical
PIR motion sensor
Infrared camera
Video camera
Depth camera
Unclassified
Water flow sensor
Computer monitoring (software)
Phone monitor
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Félix, J.; Moreira, J.; Santos, R.; Kontio, E.; Pinheiro, A.R.; Sousa, A.S.P. Health-Related Telemonitoring Parameters/Signals of Older Adults: An Umbrella Review. Sensors 2023, 23, 796. https://doi.org/10.3390/s23020796

AMA Style

Félix J, Moreira J, Santos R, Kontio E, Pinheiro AR, Sousa ASP. Health-Related Telemonitoring Parameters/Signals of Older Adults: An Umbrella Review. Sensors. 2023; 23(2):796. https://doi.org/10.3390/s23020796

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Félix, José, Juliana Moreira, Rubim Santos, Elina Kontio, Ana Rita Pinheiro, and Andreia S. P. Sousa. 2023. "Health-Related Telemonitoring Parameters/Signals of Older Adults: An Umbrella Review" Sensors 23, no. 2: 796. https://doi.org/10.3390/s23020796

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