Next Article in Journal
The Influence of Physical Activity during Pregnancy on Maternal Pain and Discomfort: A Meta-Analysis
Previous Article in Journal
Breaking Barriers—The Intersection of AI and Assistive Technology in Autism Care: A Narrative Review
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Comorbidity Patterns and Management in Inpatients with Endocrine Diseases by Age Groups in South Korea: Nationwide Data

1
Department of Healthcare Management, Cheongju University, Cheongju 28503, Republic of Korea
2
Department of Medical Informatics, College of Medicine, The Catholic University of Korea, Seoul 06591, Republic of Korea
3
Division of Endocrinology and Metabolism, Department of Internal Medicine, Seoul St. Mary’s Hospital, College of Medicine, The Catholic University of Korea, Seoul 06591, Republic of Korea
*
Author to whom correspondence should be addressed.
J. Pers. Med. 2024, 14(1), 42; https://doi.org/10.3390/jpm14010042
Submission received: 9 December 2023 / Revised: 25 December 2023 / Accepted: 27 December 2023 / Published: 28 December 2023

Abstract

:
This study aimed to examine comorbidity associations across age groups of inpatients with endocrine diseases as the primary diagnosis throughout the life cycle to develop an effective management strategy. Data were obtained from the Korean National Hospital Discharge In-depth Injury Survey (KNHDS) from 2006 to 2021, involving 68,515 discharged patients aged ≥ 19 years with a principal diagnosis of endocrine disease. A database was constructed for analysis, extracting general characteristics and comorbidities. Employing R version 4.2.3, the Chi-squared test and the Apriori algorithm of ARM (association rule mining) were used for analyzing general characteristics and comorbidity associations. There were more women (53.1%) than men (46.9%) (p < 0.001, with women (61.2 ± 17.2) having a higher average age than men (58.6 ± 58.6) (p < 0.001). Common comorbidities include unspecified diabetes mellitus; essential (primary) hypertension; unspecified diabetes mellitus; and other disorders of fluid, electrolyte, and acid-base balance. Notably, type 2 diabetes mellitus, disorders of lipoprotein metabolism and other lipidemia, polyneuropathy in diseases classified elsewhere, retinal disorders in diseases classified elsewhere, and essential (primary) hypertension prevail across all age groups. Association rules further highlight specific comorbidities appearing selectively in certain age groups. In conclusion, establishing a management strategy for comorbidities in patients with a primary diagnosis of an endocrine disorder is necessary.

1. Introduction

Endocrinology is a medical field that deals with various metabolic diseases caused by changes in hormones or various substances secreted in the body [1], such as the hypothalamus, pancreas, thyroid gland, parathyroid gland, and adrenal gland. Except for surgical cases, most endocrine diseases require lifelong medication and control [2]. Among them, diabetes mellitus (DM), hypertension, and dyslipidemia are representative metabolic diseases [3] that appear together in the form of various diseases rather than one disease because they increase with age [4].
When hospitalized in the endocrinology department, patients may require surgery in some cases; however, in most cases, the reason for admission is diagnosis, confirmation, and differential diagnosis of endocrine disease through hormone testing [5]. Its purpose is to maintain a normal hormonal state by controlling it with medications [6,7]. Taking DM as an example of a representative endocrine disease, the main purpose of hospitalization is blood glucose control, but screening tests for various diabetic complications are also performed to prevent the occurrence of early diabetic complications [8]. This is not only because comorbidities increase with age but also because diabetes itself causes chronic complications [8]. The American Diabetes Association (ADA) and Korean Diabetes Association (KDA) recommend assessing comorbidities before prescribing DM drugs [9,10]. Therefore, in patients hospitalized for endocrine diseases, including diabetes, various concomitant diseases must be managed simultaneously in addition to the main disease for which hospitalization is intended.
We predict that patients hospitalized for endocrine diseases will have differences in comorbidity patterns by age group. Identifying this provides the basis for effective patient management. This study aimed to classify the relationships between comorbidities by age and to lay the foundation for deriving efficient management strategies for concomitant diseases by screening for concomitant diseases in addition to the principal diagnosis of hospitalization.

2. Materials and Methods

2.1. Materials and Study Population

We used data from the Korea National Hospital Discharge In-Depth Injury Survey (KNHDIS). The KNHDIS is an annual sampling of the medical records of patients discharged from hospitals with more than 100 beds conducted by the Korea Disease Control and Prevention Agency [11]. The sampling method was two-stage stratified cluster sampling, with primary sampling of medical institutions as the sample frame and secondary sampling of patients in the sampled hospitals.
Data consisted of patient sociodemographic information, including sex and age; hospital visit information, including admission and discharge dates; diagnosis codes; surgery codes; and injury-related information. To conduct this study, we enrolled 3,678,866 discharged patients whose data were collected from the KNHDIS database between 2006 and 2021. Among adult males and females aged 19 years and older, 68,515 patients with a primary diagnosis of endocrine system diseases (E00–E90, International Classification of Diseases, 10th Revision [ICD–10]) were selected as the final study population.

2.2. Variables and Measures

The variables included patient characteristics, principal diagnoses, and other diagnoses. Patient characteristics included sex, age, insurance type, admission route, treatment outcome, resource days, death, surgery, comorbidities, and hospital bed size. Age was categorized into 19–44, 45–64, 65–74, and ≥75 years using the life cycle characteristics [12]. The insurance type was categorized into health insurance, medicaid type 1, medicaid type 2, and others according to the Korean National Health Insurance System [13]. Hospitalization was classified as outpatient, emergency, or other. Treatment outcomes were categorized as improved, unimproved, death, or other. The length of stay was calculated as the number of days between the date of admission and the date of discharge using the single-entry method. Surgery codes were used to classify whether surgery was performed, and comorbidities were classified by checking whether comorbidities were diagnosed. Hospital size was categorized into 100–200, 300–499, 500–999, and ≥1000 beds. Primary diagnoses and comorbidities are standardized ICD–10 (International Classification of Diseases, 10th Revision) code data. Disease groups for the association analysis were classified by a three-digit intermediate classification.

2.3. Data Analysis

We used MySQL software (Version 8.0) to efficiently manage over 3 million cases of research data. MySQL is a database management tool widely used for data management in the healthcare field [14]. The final extracted data were analyzed using R version 4.2.3. The general characteristics of the study participants according to sex were compared using the Chi-squared test. The distribution of comorbidities was graphically visualized using the “itemFrequencyPlot” command. Finally, the Apriori algorithm for ARM (association rule mining) was used to identify the association between comorbidities. The Apriori algorithm is widely used to analyze frequent item sets and association rules, as well as in the fields of finance, marketing, and healthcare [15,16,17,18,19].
The key metrics for identifying the association rules were support, confidence, and lift [20]. Support refers to the frequency at which a particular item occurs in the entire dataset. In this study, support (A → B) refers to the proportion of all participants with diseases A and B. Confidence is the frequency of items A and B occurring simultaneously with item A. In this study, confidence (A → B) means the proportion of patients with disease A who have both disease A and disease B. Lift is a metric used to determine how effective an association rule is in practice. This is the ratio of the probability of two items occurring simultaneously to the probability that they occur independently. In this study, lift (A → B) is the ratio of the probability of disease A and disease B occurring together to the probability of disease A and disease B occurring independently. If the lift value is 2, the probability of the two diseases occurring together is twice as high as if they occurred independently. Therefore, a rule must have a lift value of at least 1 to be meaningful. Lift is used to measure the strength of association rules; however, this study analyzed interest support (IS), which considers both support and lift. IS (A → B) is the square root of the product of support (A → B) and lift (A → B). The formula is as follows:
S u p p o r t   A B = N u m b e r   o f   p a t i e n t s   w i t h   d i s e a s e   A   a n d   d i s e a s e   B T o t a l   n u m b e r   o f   p a t i e n t s
C o n f i d e n c e   A B = N u m b e r   o f   p a t i e n t s   w i t h   d i s e a s e   A   a n d   d i s e a s e   B N u m b e r   o f   p a t i e n t s   w i t h   d i s e a s e   A
L i f t   A B = P d i s e a s e   A ,   d i s e a s e   B P d i s e a s e   A · P d i s e a s e   B
I S   A B = S u p p o r t   A B   ×   L i f t   A B
To extract useful association rules, minimum criteria for support and reliability were iteratively fitted. If the minimum criteria are too large, no useful association rules can be found; if they are too low, many unhelpful association rules occur. Considering the characteristics of previous studies and the data of this study, final support > 0.02 and reliability > 0.1 were applied. To check the pattern of comorbidities by age group, we visualized each as a network graph using the arulesViz library in R. The arulesViz helps users explore and understand rule-based models [21,22]. Finally, the major comorbidities shown in the network graph by age group are summarized in for management.

3. Results

3.1. Characteristics of Study Subjects and Distribution of Comorbidities

The characteristics of the participants according to sex are shown in Table 1. Of the 68,515 study participants, 46.9% were male and 53.1% were female. The average age of women was 61.2 years, compared to 58.6 years for men. By age group, 45–64-year-olds were the most represented, with 45.2% men and 32.5% women. Men were least represented in the 75+ age group (16.0%), while women were least represented in the 19–44 age group (18.1%). The insurance type was national health for more than 80% of men and women. The admission route was 70% outpatient for both men and women, and the rest were admitted through an emergency department; therefore, there was no significant difference in the distribution by sex. The treatment outcome was better than 95%, but 3.4% of males and 2.8% of females did not improve. The mortality rate was 1.4% in men and 1.0% in women—slightly higher in men. The length of stay was 12.0 days for men, and 9.6 days for women—2.4 days longer for men. Overall, 17.2% of men and 17.9% of women underwent surgery during their stay. A total of 82.5% of men had comorbidities, while 80.2 percent of women were diagnosed with comorbidities. In terms of hospital bed size, 42.9% of men and 44.8% of women were admitted to hospitals with 500–999 beds. Next, 29.2% of men and 27.0% of women were admitted to hospitals with 100–299 beds. The frequency of comorbidities among the study participants is shown in Figure 1. Type 2 is the most common type of diabetes mellitus. This was followed by essential (primary) hypertension, unspecified diabetes mellitus, lipoprotein metabolism disorders, other lipidemias, and glomerular disorders in diseases classified elsewhere.

3.2. Overall Association Rule Mining

The results of the comorbidity association analysis of the study participants are shown in Table 2. There were 61 association rules with a lift greater than one, and they were sorted in descending order by IS, which is an indicator of the strength of the association considering support and lift. The most relevant rule was “N08 → N18” (lift = 5.239, IS = 0.519). This means that “glomerular disorders in diseases classified elsewhere” and “chronic kidney disease” were 5.239 times more likely to occur together than independently. The reverse path “N18 → N08” shows the same association. The second highest association rule is “E11, N18 → N08” (lift = 6.017, IS = 0.485). This has a higher lift than the first association rule but a slightly lower support of 0.039; thus, the association strength metric IS is linked to the second. This means that “type 2 diabetes mellitus, chronic kidney disease”, and “glomerular disorders in diseases classified elsewhere” were 6.017 times more likely to occur together than independently. Next, the association rule “I10 → E11” between “essential (primary) hypertension” and “type 2 diabetes mellitus” had the third highest strength of association (lift = 1.217, IS = 0.467). Patients with endocrine disorders are 1.217 times more likely to have “essential (primary) hypertension” and “type 2 diabetes mellitus” together than independently. With a support value of 0.179, the number of patients with these two diseases together was very high (17.9%), making it the third highest lift rule, although its lift value was lower than those of the first two association rules. Subsequent association rules can be interpreted in the same manner. Of the 61 association rules involved with type 2 diabetes mellitus (E11) and essential (primary) hypertension (I10), two of the other association rules were described earlier, and the remaining two are association rules 32 and 33, “H36 → N08” and “N08 → H36” (lift = 2.275, IS = 0.243). This means that “glomerular disorders in diseases classified elsewhere” and “retinal disorders in diseases classified elsewhere” are 2.275 times more likely to be diagnosed together than independently. Overall, 63.9% of the 61 association rules included type 2 diabetes mellitus (E11), 60.7% included essential (primary) hypertension (I10), and 34.4% included both. The association rules for all subjects aged 19 years are visualized in a network graph, as shown in Figure 2. Type 2 diabetes mellitus (E11) and essential (primary) hypertension (I10) showed the most common associations, with the remaining conditions forming an association pathway.

3.3. Comorbidities Association Rule Mining by Age Group

To identify the association rules of comorbidities by age group and examine management strategies, network graphs were created for each age group (Figure 3, Figure 4, Figure 5 and Figure 6). Based on the network graph, we summarized the distribution of major comorbidities (Table 3). Overall, type 2 diabetes mellitus (E11), disorders of lipoprotein metabolism and other lipidemias (E78), polyneuropathy in diseases classified elsewhere (G63), retinal disorders in diseases classified elsewhere (H36), essential (primary) hypertension (I10), gastritis and duodenitis (K29), glomerular disorders in diseases classified elsewhere (N08), and chronic kidney disease (N18) were association rules in all age groups. However, other disorders of fluid, electrolyte, and acid-base balance (E87), sequelae of cerebrovascular disease (I69), and osteoporosis without pathological fracture (M81) were only present in the ≥65 years age group, and chronic ischemic heart disease (I25) and other disorders of the urinary system (N39) formed association pathways only in the 75+ age group. In contrast, type 1 diabetes mellitus (E10) was only observed in the 19–44 years age group, gastro-esophageal reflux disease (K21) in the 45–64 age group, and other liver diseases (K76) in the <65 years age group. Unspecified diabetes mellitus (E14) was intermittently distributed among 45–64-year-olds and ≥75-year-olds.

4. Discussion

Except for some endocrine diseases that require confirmation/differentiation of specific diseases, most endocrine diseases are controlled with medication in outpatient settings rather than hospitalization [2]. Hospitalization for endocrine diseases involves the prompt treatment of patients with severe hormonal imbalance or hyperglycemia [23]. In most cases, endocrine diseases occur together with other diseases as people age [4]. Therefore, most patients admitted to the endocrinology department often have other diseases, and the management of these concomitant diseases has a profound impact on the treatment effect, course, and follow-up of the disease, which is the reason for hospitalization.
DM is the most common disease among hospitalized endocrinology patients [3]. When a patient with DM is admitted to the endocrinology department, it is used for blood glucose control because the blood glucose level is either very high or very low. In these cases, the main purpose is to control blood glucose levels during hospitalization. If a patient with DM is hospitalized to control blood glucose levels, a DM complication test is also performed. Retinopathy, nephropathy, and neuropathy are well known as the three major complications associated with DM [24]. These three well-known complications are consistent with the results of this study. In fact, the coexistence rate between DM and retinopathy was 1.46 times, kidney disease 1.277–1.451 times, and neuropathy 1.522 times, which was very high compared to other diseases. In addition, the possibility of accompanying hypertension or dyslipidemia was high.
DM is already well known as the most common cause of CKD [25]. In this study, CKD was the most common comorbidity in patients compared to other diseases. Although this is already well known and clinically considered, the results of this study are consistent with actual clinical results. The relative risk of developing CKD in patients with DM is approximately 1.3–4.6 times higher [26,27]. In addition, DM accounts for the largest proportion of diseases requiring dialysis therapy [25]. Therefore, medical staff should focus on the early diagnosis of nephropathy, which is frequently accompanied by DM. Early detection and treatment of diabetic nephropathy are known to reduce the rate of disease worsening in CKD [28].
Diabetic retinopathy is a complication in approximately 25% of DM cases [29,30]. DM and retinopathy had a high coexistence rate in this study. In DM, the active control of blood glucose levels and blood pressure can prevent or delay the development of retinopathy [31,32]. Patients with DM usually undergo annual examinations if retinopathy is not found during the initial ophthalmological examination [33]. However, considering cost-effectiveness, it is controversial whether the examination cycle can be extended to low-risk groups of diabetic retinopathies [34]. However, based on the results of this study, it is better to proceed more actively than extend the screening cycle for diabetic retinopathy [35].
This study also found a high incidence of diabetic neuropathy. The prevalence of diabetic neuropathy in Korea is widely known to be 25–53% [36,37,38]. Diabetic neuropathy also appears relatively early and has a high incidence, but it is easily ignored, and its detection is often delayed. This is because a diagnosis is possible only after ruling out neuropathy caused by other diseases [39]. Early diagnosis and treatment are important to improve symptoms, reduce hospitalization mortality, reduce sequelae, and improve the quality of life [40]. Therefore, more attention should be paid to diabetic neuropathy, which is likely to be a comorbidity of DM.
This study emphasizes that nephropathy, retinopathy, neuropathy, and hypertension are all interrelated owing to the nature of chronic endocrine diseases. Those with DM and hypertension were 1.451 and 1.581 times more likely to develop CKD, respectively. However, patients with diabetes and high blood pressure were 1.928 times more likely to have CKD than kidney disease. Other diseases also showed the same trend, showing that comorbidities were higher in patients with two diseases than in those with one disease. Ultimately, most chronic endocrinological diseases are interconnected, and it is important to manage the overall comprehensive disease rather than managing only one disease.
Rather than these known comorbidities, we needed to analyze relatively lesser-known comorbidities. In this study, electrolyte and acid-base imbalances were present in many cases of hypertension. Various clinical inferences can be drawn from this issue. For example, hyperkalemia that occurs when taking blood pressure medications ACEI/AEB [41], electrolyte imbalance caused by CKD [42], and, less commonly, hypertension and hypokalemia caused by aldosteronism [43] can be inferred. This study focused on elderly people aged over 65 years. In many elderly people, DM or hypertension has already progressed significantly; therefore, it can be inferred that electrolyte imbalance occurs owing to various causes [44]. Importantly, although we do not know the cause of electrolyte and acid-base imbalances, it is recommended to periodically measure electrolyte and acid-base levels in patients hospitalized in the endocrinology department and in those over 65 years of age with hypertension. This appears reasonable. What we would like to emphasize in this study is the need for active testing and follow-up for specific diseases and accompanying diseases, although larger-scale prospective studies are needed.
In this study, GERD, which is concentrated in patients with DM aged 45–64 years, and gastritis and duodenitis, which occur in all age groups, were also noteworthy. Damage to autonomic nerve cells reduces gastrointestinal motor function [45]. Diabetic gastroparesis causes symptoms of gastroparesis and affects nutritional intake in patients with diabetes; therefore, it can have a significant adverse effect on blood glucose level control during hospitalization due to repeated hyperglycemia and hypoglycemia. However, clinically, it is less well known than the other complications mentioned above; therefore, patients’ symptoms can be easily overlooked. However, according to the results of this study, DM exists as a high comorbidity, and doctors should accurately recognize this situation and approach patients accordingly.
The greatest advantage of this study is that it used national big data accumulated over a period of more than 10 years. The second advantage is that it targeted hospitalized patients. Hospitalized patients are more severely ill and have many comorbidities. Therefore, inpatients are much more important than outpatients in terms of early identification and management of comorbidities. It would be more effective if early management is initiated by screening, diagnosing, and differentiating comorbidities in patients with severe endocrine diseases. Testing is easier for hospitalized patients than for outpatients, and immediate feedback based on the test results is possible. Based on the results of this study, hospitalized patients will have a good prognosis if additional diseases are found after additional tests for concomitant diseases and appropriate responses are obtained.
This study has several limitations due to its retrospective cohort design [46,47]. First, the causal relationship between the two diseases cannot be identified; only the accompanying correlation can be identified because various confounding variables can affect it. However, as this study was conducted in patients whose principal diagnosis was endocrine disease, it is expected that various clinicians will apply it in clinical practice for various reasons and discussions. Additional large-scale prospective studies are needed to confirm these findings. Second, because most patients admitted to the endocrinology department had DM, most of the comorbidities were associated with DM, and relatively few other endocrinological diseases were included. Finally, when differentiating diseases using ICD–10 diagnostic codes, there were cases in which similar types of diseases were grouped together (e.g., ICD–10 N08 and N18). However, because this case is subject to interpretation by clinicians, it does not have a significant impact on the conclusions of the study.

5. Conclusions

Endocrine diseases, including DM, are complex conditions accompanied by multiple diseases, rather than a single disease. Understanding the characteristics of these endocrinological diseases is crucial for effective patient management. Network graphs are useful for visually representing interrelationships and connections between comorbidities. Lifelong treatment and comprehensive disease management prove pivotal in reducing complications and enhancing the quality of life. This serves as the ultimate objective for medical professionals managing patients admitted to the endocrinology department. While conducting comprehensive tests is routine for these patients, acknowledging age-specific comorbidity patterns and tailoring treatments accordingly is advisable. Future approaches must consider individual patient characteristics, various test results, and prescribed medications for personalized comorbidity assessments, requiring comprehensive lifestyle management and individualized treatment strategies.

Author Contributions

Conceptualization, S.-S.K. and H.-S.K.; methodology, S.-S.K. and H.-S.K.; software, S.-S.K.; formal analysis, S.-S.K.; resources, S.-S.K.; data curation, S.-S.K. and H.-S.K.; writing—original draft preparation, S.-S.K. and H.-S.K.; writing—review and editing, S.-S.K. and H.-S.K. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

This study was approved by the institutional review board of the Catholic University of Korea. (No. KC23ZISI0729).

Informed Consent Statement

Not applicable because of secondary data usage.

Data Availability Statement

Restrictions apply to the availability of these data. Data were obtained from KCDC and are available from https://www.cdc.go.kr/contents.es?mid=a20303010502 (accessed on 17 May 2023).

Acknowledgments

This research was supported by the Bio and Medical Technology Development Program of the National Research Foundation (NRF) funded by the Korean government (MSIT) (No. 2019M3E5D3073104).

Conflicts of Interest

The authors declare no conflicts of interest.

References

  1. Radovick, S. Editorial: Endocrinology and metabolism. Curr. Opin. Pediatr. 2021, 33, 423. [Google Scholar] [CrossRef] [PubMed]
  2. Tan, S.Y.; Wong, J.L.M.; Sim, Y.J.; Wong, S.S.; Elhassan, S.A.M.; Tan, S.H.; Lim, G.P.L.; Tay, N.W.R.; Annan, N.C.; Bhattamisra, S.K.; et al. Type 1 and 2 diabetes mellitus: A review on current treatment approach and gene therapy as potential intervention. Diabetes Metab. Syndr. 2019, 13, 364–372. [Google Scholar] [CrossRef]
  3. Goldberg, R.B. Dyslipidemia in Diabetes: When and How to Treat? Endocrinol. Metab. Clin. N. Am. 2022, 51, 603–624. [Google Scholar] [CrossRef] [PubMed]
  4. Shih, Y.-L.; Lin, Y.; Chen, J.-Y. The Association between High-Sensitivity C-Reactive Protein and Metabolic Syndrome in an Elderly Population Aged 50 and Older in a Community Receiving Primary Health Care in Taiwan. Int. J. Environ. Res. Public Health 2022, 19, 13111. [Google Scholar] [CrossRef] [PubMed]
  5. American Diabetes Association. 2. Classification and Diagnosis of Diabetes: Standards of Medical Care in Diabetes—2020. Diabetes Care 2020, 43, S14–S31. [Google Scholar] [CrossRef] [PubMed]
  6. Jayasena, C.N.; Anderson, R.A.; Llahana, S.; Barth, J.H.; MacKenzie, F.; Wilkes, S.; Smith, N.; Sooriakumaran, P.; Minhas, S.; Wu, F.C.W.; et al. Society for Endocrinology guidelines for testosterone replacement therapy in male hypogonadism. Clin. Endocrinol. 2022, 96, 200–219. [Google Scholar] [CrossRef] [PubMed]
  7. Armeni, E.; Paschou, S.A.; Goulis, D.G.; Lambrinoudaki, I. Hormone therapy regimens for managing the menopause and premature ovarian insufficiency. Best. Pr. Res. Clin. Endocrinol. Metab. 2021, 35, 101561. [Google Scholar] [CrossRef]
  8. Malik, A.; Ananthakrishnan, S. Diabetes Physical Examination. Med. Clin. N. Am. 2022, 106, 483–494. [Google Scholar] [CrossRef]
  9. Samson, S.L.; Vellanki, P.; Blonde, L.; Christofides, E.A.; Galindo, R.J.; Hirsch, I.B.; Isaacs, S.D.; Izuora, K.E.; Wang, C.C.L.; Twining, C.L.; et al. American Association of Clinical Endocrinology Consensus Statement: Comprehensive Type 2 Diabetes Management Algorithm—2023 Update. Endocr. Pr. 2023, 29, 305–340. [Google Scholar] [CrossRef]
  10. Choi, J.H.; Lee, K.A.; Moon, J.H.; Chon, S.; Kim, D.J.; Kim, N.H.; A Seo, J.; Kim, M.K.; Lim, J.H.; Song, Y.; et al. 2023 Clinical Practice Guidelines for Diabetes Mellitus of the Korean Diabetes Association. Diabetes Metab. J. 2023, 47, 575–594. [Google Scholar] [CrossRef]
  11. Lee, Y.-K.; Hong, S.O.; Park, S.-J.; Park, M.; Wang, K.; Jo, M.; Oh, J.; Lee, S.A.; Lee, H.J.; Oh, J.; et al. Data resource profile: The Korea National Hospital Discharge In-depth Injury Survey. Epidemiol. Health 2021, 43, e2021052. [Google Scholar] [CrossRef] [PubMed]
  12. Vestergaard, L.S.; Nielsen, J.; Richter, L.; Schmid, D.; Bustos, N.; Braeye, T.; Denissov, G.; Veideman, T.; Luomala, O.; Möttönen, T.; et al. Excess all-cause mortality during the COVID-19 pandemic in Europe—Preliminary pooled estimates from the EuroMOMO network, March to April 2020. Eurosurveillance 2020, 25, 2001214. [Google Scholar] [CrossRef] [PubMed]
  13. Lee, D.W.; Jang, J.; Choi, D.-W.; Jang, S.-I.; Park, E.-C. The effect of shifting medical coverage from National Health Insurance to Medical Aid type I and type II on health care utilization and out-of-pocket spending in South Korea. BMC Health Serv. Res. 2020, 20, 979. [Google Scholar] [CrossRef]
  14. Das, S.K.; Rahman, M.Z. A Simplified Architecture to Integrate and Interoperate Heterogeneous and Distributed Healthcare Data. In Proceedings of the 2020 23rd International Conference on Computer and Information Technology (ICCIT), Dhaka, Bangladesh, 19–21 December 2020; pp. 1–6. [Google Scholar]
  15. Sani, A.; Samuel, N.N.P.; Waseso, B.; Gunadi, G.; Haryanto, T. Data Mining on Sales Transaction Data Using the Association Method with Apriori Algorithm. In Proceedings of the 2022 10th International Conference on Cyber and IT Service Management (CITSM), Yogyakarta, Indonesia, 20–21 September 2022; pp. 1–5. [Google Scholar]
  16. Alcan, D.; Ozdemir, K.; Ozkan, B.; Mucan, A.Y.; Ozcan, T. A Comparative Analysis of Apriori and FP-Growth Algorithms for Market Basket Analysis Using Multi-level Association Rule Mining. In Proceedings of the Industrial Engineering in the COVID-19 Era, Cham, Switzerland, 6 February 2023; pp. 128–137. [Google Scholar]
  17. Shen, M.; Liu, J.; Wang, K. Effect of Traditional Chinese Medicine on Allergic Rhinitis in Children under Data Mining. Comput. Math. Methods Med. 2022, 2022, 700737. [Google Scholar] [CrossRef] [PubMed]
  18. Wang, Y.-F.; Chen, W.-Y.; Lee, C.-T.; Shen, Y.-Y.; Lan, C.-C.; Liu, G.-T.; Kuo, C.-Y.; Chen, M.-L.; Hsieh, P.-C. Combinations of scalp acupuncture location for the treatment of post-stroke hemiparesis: A systematic review and Apriori algorithm-based association rule analysis. Front. Neurosci. 2022, 16, 956854. [Google Scholar] [CrossRef] [PubMed]
  19. Zemedikun, D.; Gray, L.J.; Khunti, K.; Davies, M.J.; Dhalwani, N.N. Patterns of Multimorbidity in Middle-Aged and Older Adults: An Analysis of the UK Biobank Data. Mayo Clin. Proc. 2018, 93, 857–866. [Google Scholar] [CrossRef]
  20. Sipahutar, S.Y.K.; Panjaitan, A.A.; Sitanggang, D.P.; Fitriyaningsih, I. Implementation of Association Rules with Apriori Algorithm in Determining Customer Purchase Patterns. In Proceedings of the 2022 IEEE International Conference of Computer Science and Information Technology (ICOSNIKOM), North Sumatra, Indonesia, 19–21 October 2022; pp. 1–6. [Google Scholar]
  21. Feng, J.; Mu, X.-M.; Ma, L.-L.; Wang, W. Comorbidity Patterns of Older Lung Cancer Patients in Northeast China: An Association Rules Analysis Based on Electronic Medical Records. Int. J. Environ. Res. Public Health 2020, 17, 9119. [Google Scholar] [CrossRef]
  22. Hahsler, M.; Chelluboina, S.; Hornik, K.; Buchta, C. The arules R-Package Ecosystem: Analyzing Interesting Patterns from Large Transaction Data Sets. J. Mach. Learn. Res. 2011, 12, 2021–2025. [Google Scholar]
  23. Pasquel, F.J.; Lansang, M.C.; Dhatariya, K.; Umpierrez, G.E. Management of diabetes and hyperglycaemia in the hospital. Lancet Diabetes Endocrinol. 2021, 9, 174–188. [Google Scholar] [CrossRef]
  24. Kochar, A.; Saini, D.; Poonia, R. Clinical correlation of diabetic retinopathy with nephropathy and neuropathy. Indian. J. Ophthalmol. 2021, 69, 3364–3368. [Google Scholar] [CrossRef]
  25. Alalawi, F.; Bashier, A. Management of diabetes mellitus in dialysis patients: Obstacles and challenges. Diabetes Metab. Syndr. 2021, 15, 1025–1036. [Google Scholar] [CrossRef] [PubMed]
  26. Georgianos, P.I.; Vaios, V.; Eleftheriadis, T.; Papachristou, E.; Liakopoulos, V. Therapeutic Advances in Diabetic Kidney Disease. Int. J. Mol. Sci. 2023, 24, 2803. [Google Scholar] [CrossRef] [PubMed]
  27. Koye, D.N.; Magliano, D.J.; Nelson, R.G.; Pavkov, M.E. The Global Epidemiology of Diabetes and Kidney Disease. Adv. Chronic Kidney Dis. 2018, 25, 121–132. [Google Scholar] [CrossRef]
  28. Navaneethan, S.D.; Zoungas, S.; Caramori, M.L.; Chan, J.C.; Heerspink, H.J.; Hurst, C.; Liew, A.; Michos, E.D.; Olowu, W.A.; Sadusky, T.; et al. Diabetes Management in Chronic Kidney Disease: Synopsis of the KDIGO 2022 Clinical Practice Guideline Update. Ann. Intern. Med. 2023, 176, 381–387. [Google Scholar] [CrossRef] [PubMed]
  29. Lundeen, E.A.; Burke-Conte, Z.; Rein, D.B.; Wittenborn, J.S.; Saaddine, J.; Lee, A.Y.; Flaxman, A.D. Prevalence of Diabetic Retinopathy in the US in 2021. JAMA Ophthalmol 2023, 141, 747–754. [Google Scholar] [CrossRef] [PubMed]
  30. Tan, T.-E.; Wong, T.Y. Diabetic retinopathy: Looking forward to 2030. Front. Endocrinol. 2022, 13, 1077669. [Google Scholar] [CrossRef]
  31. Perais, J.; Agarwal, R.; Evans, J.R.; Loveman, E.; Colquitt, J.L.; Owens, D.; Hogg, R.E.; Lawrenson, J.G.; Takwoingi, Y.; Lois, N. Prognostic factors for the development and progression of proliferative diabetic retinopathy in people with diabetic retinopathy. Cochrane Database Syst. Rev. 2023, 2023, CD013775. [Google Scholar] [CrossRef]
  32. Do, D.V.; Han, G.; Abariga, S.A.; Sleilati, G.; Vedula, S.S.; Hawkins, B.S. Blood pressure control for diabetic retinopathy. Emergencias 2023, 2023, CD006127. [Google Scholar] [CrossRef]
  33. Flaxel, C.J.; Adelman, R.A.; Bailey, S.T.; Fawzi, A.; Lim, J.I.; Vemulakonda, G.A.; Ying, G.-S. Diabetic Retinopathy Preferred Practice Pattern®. Ophthalmology 2020, 127, P66–P145. [Google Scholar] [CrossRef]
  34. Estil, S.; Steinarsson, A.; Einarsson, S.; Aspelund, T.; Stefánsson, E. Diabetic eye screening with variable screening intervals based on individual risk factors is safe and effective in ophthalmic practice. Acta Ophthalmol. 2020, 98, 343–346. [Google Scholar] [CrossRef]
  35. Wong, T.Y.; Sun, J.; Kawasaki, R.; Ruamviboonsuk, P.; Gupta, N.; Lansingh, V.C.; Maia, M.; Mathenge, W.; Moreker, S.; Muqit, M.M.; et al. Guidelines on Diabetic Eye Care: The International Council of Ophthalmology Recommendations for Screening, Follow-up, Referral, and Treatment Based on Resource Settings. Ophthalmology 2018, 125, 1608–1622. [Google Scholar] [CrossRef]
  36. Kim, S.S.; Won, J.C.; Kwon, H.S.; Kim, C.H.; Lee, J.H.; Park, T.S.; Ko, K.S.; Cha, B.Y. Prevalence and clinical implications of painful diabetic peripheral neuropathy in type 2 diabetes: Results from a nationwide hospital-based study of diabetic neuropathy in Korea. Diabetes Res. Clin. Pr. 2014, 103, 522–529. [Google Scholar] [CrossRef] [PubMed]
  37. Oh, J. Clinical spectrum and diagnosis of diabetic neuropathies. Korean J. Intern. Med. 2020, 35, 1059–1069. [Google Scholar] [CrossRef]
  38. Moon, S.-S.; Kim, C.H.; Kang, S.M.; Kim, E.S.; Oh, T.J.; Yun, J.-S.; Cho, H.C.; Kim, D.J.; Park, T.S. Status of Diabetic Neuropathy in Korea: A National Health Insurance Service-National Sample Cohort Analysis (2006 to 2015). Diabetes Metab. J. 2021, 45, 459–460. [Google Scholar] [CrossRef] [PubMed]
  39. Pop-Busui, R.; Ang, L.; Boulton, A.J.M.; Feldman, E.L.; Marcus, R.L.; Mizokami-Stout, K.; Singleton, J.R.; Ziegler, D. Diagnosis and Treatment of Painful Diabetic Peripheral Neuropathy. In Diagnosis and Treatment of Painful Diabetic Peripheral Neuropathy; American Diabetes Association: Arlington, VA, USA, 2022. [Google Scholar]
  40. Agathos, E.; Tentolouris, A.; Eleftheriadou, I.; Katsaouni, P.; Nemtzas, I.; Petrou, A.; Papanikolaou, C.; Tentolouris, N. Effect of α-lipoic acid on symptoms and quality of life in patients with painful diabetic neuropathy. J. Int. Med. Res. 2018, 46, 1779–1790. [Google Scholar] [CrossRef] [PubMed]
  41. Fukushima, S.; Oishi, M.; Aso, H.; Arai, K.; Sasaki, Y.; Tochikura, N.; Ootsuka, S.; Fukuoka, N.; Ooba, N.; Kikuchi, N. Effects of angiotensin II receptor blockers on serum potassium level and hyperkalemia risk: Retrospective single-centre analysis. Eur. J. Hosp. Pharm. Sci. Pract. 2021, 30, 208–213. [Google Scholar] [CrossRef]
  42. Whitlock, R.; Leon, S.J.; Manacsa, H.; Askin, N.; Rigatto, C.; Fatoba, S.T.; Farag, Y.M.K.; Tangri, N. The association between dual RAAS inhibition and risk of acute kidney injury and hyperkalemia in patients with diabetic kidney disease: A systematic review and meta-analysis. Nephrol. Dial. Transplant. 2023, 38, 2503–2516. [Google Scholar] [CrossRef]
  43. Araujo-Castro, M.; Parra-Ramírez, P. Diagnosis of primary hyperaldosteronism. Med. Clin. 2022, 158, 424–430. [Google Scholar] [CrossRef]
  44. Shrimanker, I.; Bhattarai, S. Electrolytes. In StatPearls; StatPearls Publishing: Treasure Island, FL, USA, 2023. [Google Scholar]
  45. Duan, H.; Cai, X.; Luan, Y.; Yang, S.; Yang, J.; Dong, H.; Zeng, H.; Shao, L. Regulation of the Autonomic Nervous System on Intestine. Front. Physiol. 2021, 12, 700129. [Google Scholar] [CrossRef]
  46. Kim, H.-S.; Kim, J.H. Proceed with Caution When Using Real World Data and Real World Evidence. J. Korean Med. Sci. 2019, 34, e28. [Google Scholar] [CrossRef]
  47. Kim, H.-S.; Kim, D.-J.; Yoon, K.-H. Medical Big Data Is Not Yet Available: Why We Need Realism Rather than Exaggeration. Endocrinol. Metab. 2019, 34, 349–354. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Plot of comorbidity frequency. D64, Other anemias; E03, Other hypothyroidism; E04, Other nontoxic goiter; E05, Thyrotoxicosis [hyperthyroidism]; E10, Type 1 diabetes mellitus; E11, Type 2 diabetes mellitus; E14, Unspecified diabetes mellitus; E16, Other disorders of pancreatic internal secretion; E27, Other disorders of adrenal gland; E78, Disorders of lipoprotein metabolism and other lipidemias; E87, Other disorders of fluid, electrolyte, and acid-base balance; G63, Polyneuropathy in diseases classified elsewhere; H36, Retinal disorders in diseases classified elsewhere; I10, Essential (primary) hypertension; I20, Angina pectoris; I25, Chronic ischemic heart disease; I69, Sequelae of cerebrovascular disease; K21, Gastro-esophageal reflux disease; K29, Gastritis and duodenitis; K70, Alcoholic liver disease; K76, Other diseases of liver; M81, Osteoporosis without pathological fracture; N08, Glomerular disorders in diseases classified elsewhere; N17, Acute renal failure; N18, Chronic kidney disease; N39, Other disorders of urinary system.
Figure 1. Plot of comorbidity frequency. D64, Other anemias; E03, Other hypothyroidism; E04, Other nontoxic goiter; E05, Thyrotoxicosis [hyperthyroidism]; E10, Type 1 diabetes mellitus; E11, Type 2 diabetes mellitus; E14, Unspecified diabetes mellitus; E16, Other disorders of pancreatic internal secretion; E27, Other disorders of adrenal gland; E78, Disorders of lipoprotein metabolism and other lipidemias; E87, Other disorders of fluid, electrolyte, and acid-base balance; G63, Polyneuropathy in diseases classified elsewhere; H36, Retinal disorders in diseases classified elsewhere; I10, Essential (primary) hypertension; I20, Angina pectoris; I25, Chronic ischemic heart disease; I69, Sequelae of cerebrovascular disease; K21, Gastro-esophageal reflux disease; K29, Gastritis and duodenitis; K70, Alcoholic liver disease; K76, Other diseases of liver; M81, Osteoporosis without pathological fracture; N08, Glomerular disorders in diseases classified elsewhere; N17, Acute renal failure; N18, Chronic kidney disease; N39, Other disorders of urinary system.
Jpm 14 00042 g001
Figure 2. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: >19 years).
Figure 2. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: >19 years).
Jpm 14 00042 g002
Figure 3. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: 19–44 years old).
Figure 3. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: 19–44 years old).
Jpm 14 00042 g003
Figure 4. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: 45–64 years old).
Figure 4. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: 45–64 years old).
Jpm 14 00042 g004
Figure 5. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: 65–74 years old).
Figure 5. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: 65–74 years old).
Jpm 14 00042 g005
Figure 6. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: >75 years old).
Figure 6. Network graph of the association of comorbidities in patients whose principal diagnosis is endocrine, nutritional, and metabolic diseases (age: >75 years old).
Jpm 14 00042 g006
Table 1. Baseline characteristics of study population.
Table 1. Baseline characteristics of study population.
VariablesMaleFemalep
N (%) or Mean ± SDN (%) or Mean ± SD
N32,14036,375
Age (year)58.6 ± 15.061.2 ± 17.2<0.001
Age group <0.001
19–445653 (17.6%)6575 (18.1%)
45–6414,523 (45.2%)11,813 (32.5%)
65–746815 (21.2%)8552 (23.5%)
≥755149 (16.0%)9435 (25.9%)
Insurance type <0.001
National health26,216 (81.6%)30,728 (84.5%)
Medicaid type 14759 (14.8%)4803 (13.2%)
Medicaid type 2663 (2.1%)600 (1.6%)
Others502 (1.6%)244 (0.7%)
Admission route 0.862
Emergency9799 (30.5%)11,048 (30.4%)
Outpatient22,310 (69.4%)25,288 (69.5%)
Others31 (0.1%)39 (0.1%)
Treatment outcome <0.001
Improved30,566 (95.1%)34,958 (96.1%)
Not improved1085 (3.4%)1032 (2.8%)
Death453 (1.4%)350 (1.0%)
Others36 (0.1%)35 (0.1%)
Length of stay (day)12.0 ± 19.09.6 ± 16.5<0.001
Death Y/N <0.001
Yes453 (1.4%)350 (1.0%)
No31,687 (98.6%)36,025 (99.0%)
Operation Y/N 0.010
Yes5520 (17.2%)6521 (17.9%)
No26,620 (82.8%)29,854 (82.1%)
Comorbidity Y/N <0.001
Yes26,522 (82.5%)29,162 (80.2%)
No5618 (17.5%)7213 (19.8%)
Bed size <0.001
100–2999400 (29.2%)9812 (27.0%)
300–4994453 (13.9%)5153 (14.2%)
500–99913,784 (42.9%)16,306 (44.8%)
≥10004503 (14.0%)5104 (14.0%)
Abbreviations: SD, standard deviation.
Table 2. Association rule mining between comorbidity of the study population.
Table 2. Association rule mining between comorbidity of the study population.
NoRulesNSupportConfidenceLiftIS
1N08 → N1835230.0510.4575.2390.519
2N18 → N0835230.0510.5895.2390.519
3E11, N18 → N0826830.0390.6776.0170.485
4I10 → E1112,2590.1790.6321.2170.467
5E11 → I1012,2590.1790.3441.2170.467
6E11, N08 → N1826830.0390.4625.2940.455
7I10, N08 → N1818110.0260.5256.0180.399
8I10, N18 → N0818110.0260.6265.5610.383
9E11, I10, N08 → N1814290.0210.5376.1590.358
10E11, I10, N18 → N0814290.0210.6896.1280.358
11E11 → N0858080.0850.1631.4510.351
12N08 → E1158080.0850.7541.4510.351
13H36 → E1152560.0770.7571.4570.334
14E11 → H3652560.0770.1481.4570.334
15G63 → E1139730.0580.7911.5220.297
16E11 → G6339730.0580.1121.5220.297
17E78 → E1144060.0640.6831.3140.291
18E11 → E7844060.0640.1241.3140.291
19N08 → I1034490.0500.4481.5810.282
20I10 → N0834490.0500.1781.5810.282
21E11, I10 → N0826590.0390.2171.9280.274
22N18 → E1139640.0580.6631.2770.272
23E11 → N1839640.0580.1111.2770.272
24E78 → I1030080.0440.4661.6470.269
25I10 → E7830080.0440.1551.6470.269
26I10 → N1828950.0420.1491.7110.269
27N18 → I1028950.0420.4841.7110.269
28E14 → I1040790.0600.3091.0930.255
29I10 → E1440790.0600.2101.0930.255
30E11, N08 → I1026590.0390.4581.6170.251
31E11, I10 → E7822260.0320.1821.9280.250
32H36 → N0817780.0260.2562.2750.243
33N08 → H3617780.0260.2312.2750.243
34E11, I10 → N1820730.0300.1691.9380.242
35E11, E78 → I1022260.0320.5051.7850.241
36I10, N08 → E1126590.0390.7711.4840.240
37N08, N18 → E1126830.0390.7621.4660.240
38E11, N18 → I1020730.0300.5231.8470.236
39E11, N08 → H3614670.0210.2532.4910.231
40E11, H36 → N0814670.0210.2792.4810.230
41N08, N18 → I1018110.0260.5141.8160.219
42E78, I10 → E1122260.0320.7401.4250.215
43E87 → I1026140.0380.3331.1780.212
44I10 → E8726140.0380.1351.1780.212
45I10, N18 → E1120730.0300.7161.3790.204
46H36, I10 → E1117890.0260.8251.5890.204
47E11, N08, N18 → I1014290.0210.5331.8820.198
48E11, I10 → H3617890.0260.1461.4390.194
49E11, I10 → G6314830.0220.1211.6500.189
50H36 → I1021680.0320.3121.1020.187
51I10 → H3621680.0320.1121.1020.187
52G63, I10 → E1114830.0220.8291.5960.186
53H36, N08 → E1114670.0210.8251.5880.184
54G63 → I1017890.0260.3561.2580.181
55I10, N08, N18 → E1114290.0210.7891.5190.178
56K29 → E1120520.0300.5491.0560.178
57E11, H36 → I1017890.0260.3401.2020.177
58E11, G63 → I1014830.0220.3731.3190.169
59N08 → E1415600.0230.2021.0520.155
60E14 → N0815600.0230.1181.0520.155
61K21 → E1115330.0220.5531.0640.154
Abbreviations: IS, Interest Support; E11, Type 2 diabetes mellitus; E14, Unspecified diabetes mellitus; E78, Disorders of lipoprotein metabolism and other lipidemias; E87, Other disorders of fluid, electrolyte, and acid-base balance; G63, Polyneuropathy in diseases classified elsewhere; H36, Retinal disorders in diseases classified elsewhere; I10, Essential (primary) hypertension; K21, Gastro-esophageal reflux disease; K29, Gastritis and duodenitis; N08, Glomerular disorders in diseases classified elsewhere; N18, Chronic kidney disease.
Table 3. Distribution of major comorbidities by age group because of association rule mining.
Table 3. Distribution of major comorbidities by age group because of association rule mining.
ICD-10Code DescriptionAge Group
19~4445~6465~7475+All Age
E10Type 1 diabetes mellitusO
E11Type 2 diabetes mellitusOOOOO
E14Unspecified diabetes mellitus O OO
E78Disorders of lipoprotein metabolism and other lipidemiasOOOOO
E87Other disorders of fluid, electrolyte, and acid-base balance OOO
G63Polyneuropathy in diseases classified elsewhereOOOOO
H36Retinal disorders in diseases classified elsewhereOOOOO
H43Disorders of vitreous body O
I10Essential (primary) hypertensionOOOOO
I20Angina pectoris O
I25Chronic ischemic heart disease OO
I48Atrial fibrillation and flutter
I69Sequelae of cerebrovascular disease OO
K21Gastro-esophageal reflux disease O O
K29Gastritis and duodenitisOOOOO
K76Other diseases of liverOO
M81Osteoporosis without pathological fracture OO
N08Glomerular disorders in diseases classified elsewhereOOOOO
N17Acute renal failure
N18Chronic kidney diseaseOOOOO
N39Other disorders of urinary system O
Z95Presence of cardiac and vascular implants and grafts O
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Kim, S.-S.; Kim, H.-S. Comorbidity Patterns and Management in Inpatients with Endocrine Diseases by Age Groups in South Korea: Nationwide Data. J. Pers. Med. 2024, 14, 42. https://doi.org/10.3390/jpm14010042

AMA Style

Kim S-S, Kim H-S. Comorbidity Patterns and Management in Inpatients with Endocrine Diseases by Age Groups in South Korea: Nationwide Data. Journal of Personalized Medicine. 2024; 14(1):42. https://doi.org/10.3390/jpm14010042

Chicago/Turabian Style

Kim, Sung-Soo, and Hun-Sung Kim. 2024. "Comorbidity Patterns and Management in Inpatients with Endocrine Diseases by Age Groups in South Korea: Nationwide Data" Journal of Personalized Medicine 14, no. 1: 42. https://doi.org/10.3390/jpm14010042

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop