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Article

Non-Invasive Cardiac Output Determination Using Magnetic Resonance Imaging and Thermodilution in Pulmonary Hypertension

by
Lindsey A. Crowe
1,2,†,
Léon Genecand
2,3,4,*,†,
Anne-Lise Hachulla
1,2,3,
Stéphane Noble
2,3,5,
Maurice Beghetti
2,3,6,7,
Jean-Paul Vallée
1,2,3,‡ and
Frédéric Lador
2,3,4,‡
1
Division of Radiology, Diagnostic Department, Geneva University Hospitals, 1205 Geneva, Switzerland
2
Faculty of Medicine, University of Geneva, 1205 Geneva, Switzerland
3
Pulmonary Hypertension Program, Geneva University Hospitals, 1205 Geneva, Switzerland
4
Division of Pulmonary Medicine, Department of Medicine, Geneva University Hospitals, 1205 Geneva, Switzerland
5
Division of Cardiology, Department of Medicine, Geneva University Hospitals, 1205 Geneva, Switzerland
6
Paediatric Cardiology Unit, Geneva University Hospitals, 1205 Geneva, Switzerland
7
Centre Universitaire Romand de Cardiologie et Chirurgie Cardiaque Pédiatrique, University of Geneva and Lausanne, 1205 Geneva, Switzerland
*
Author to whom correspondence should be addressed.
These authors contributed equally to this work.
These authors contributed equally to this work.
J. Clin. Med. 2022, 11(10), 2717; https://doi.org/10.3390/jcm11102717
Submission received: 19 April 2022 / Revised: 30 April 2022 / Accepted: 9 May 2022 / Published: 11 May 2022

Abstract

:
Magnetic resonance imaging (MRI) can be used to measure cardiac output (CO) non-invasively, which is a paramount parameter in pulmonary hypertension (PH) patients. We retrospectively compared stroke volume (SV) obtained with MRI (SVMRI) in six localisations against SV measured with thermodilution (TD) (SVTD) and against each other in 24 patients evaluated in our PH centre using Bland and Altman (BA) agreement analyses, linear correlation, and intraclass correlation (ICC). None of the six tested localisations for SVMRI reached the predetermined criteria for interchangeability with SVTD, with two standard deviations (2SD) of bias between 24.1 mL/beat and 31.1 mL/beat. The SVMRI methods yielded better agreement when compared against each other than the comparison between SVMRI and SVTD, with the best 2SD of bias being 13.8 mL/beat. The inter-observer and intra-observer ICCs for COMRI were excellent (inter-observer ICC between 0.889 and 0.983 and intra-observer ICC between 0.991 and 0.999). We could not confirm the interchangeability of SVMRI with SVTD based on the predetermined interchangeability criteria. The lack of agreement between MRI and TD might be explained because TD is less precise than previously thought. We evaluated a new method to estimate CO through the pulmonary circulation (COp) in PH patients that may be more precise than the previously tested methods.

1. Introduction

Pulmonary hypertension (PH) is defined as a resting mean pulmonary artery pressure (mPAP) ≥ 25 mmHg measured by right heart catheterisation (RHC) [1]. Five groups with different aetiologies can be differentiated. Pulmonary arterial hypertension (PAH) is a rare pulmonary vasculopathy diagnosed after exclusion of other class of PH (groups 2, 3, 4, and 5) and confirmed with RHC showing a precapillary PH (PcPH) that is characterised by an mPAP ≥ 25 mmHg and a pulmonary artery wedge pressure (PAWP) ≤ 15 mmHg [1]. Group 4 is defined as an obstruction of the pulmonary arteries leading to PH. The main entity of this group is called chronic thrombo-embolic pulmonary hypertension (CTEPH).
Cardiac output (CO) measurement is important for the prognosis of patients with PAH via risk class stratification. It is also essential for diagnoses using the calculation of pulmonary vascular resistance (PVR). A proposal suggested redefining PH with a lower mPAP threshold of >20 mmHg and the inclusion of PVR > 3 WU as an obligatory criterion for PcPH [2]. In this context, a reliable non-invasive method to measure CO could be valuable for the patients and the clinician in order to avoid some invasive procedures.
Invasive methods are acknowledged to be the methods of choice to measure CO [1]. Direct Fick (DF) is the historical gold standard [1]. However, CO measurement using DF is cumbersome due to the measurement of oxygen consumption. Thermodilution (TD) has been accepted as the reference method in the current international guidelines [1]. This proposal was based on one study showing a good agreement between TD and DF [3]. TD is nowadays the most used method for the determination of CO for PH patients. Indirect Fick (IF) lacks reliability, and poor agreement with DF or TD was shown both retrospectively and prospectively in large mixed PH population [4,5,6].
Many different non-invasive methods to measure CO have been studied in precapillary PH patients including bioimpedance, bioreactance, inert gas rebreathing, and pulse wave analysis [3,6,7,8,9,10,11,12]. None of the studied non-invasive method reached predetermined criteria for interchangeability with an invasive method (DF or TD) in a recent systematic review [13]. CO determined with transthoracic echocardiography (TTE) also showed poor performance in comparison to TD in a meta-analysis [14].
MRI is acknowledged as an important emerging tool in PH management. It allows anatomical evaluation of the right ventricle (RV) and the pulmonary artery (PA), offers some new prognostic variables, and can be helpful for the diagnosis and classification of PH in specific cases [15,16,17,18]. Its role in the determination of CO remains under investigation. SV determination using flow measurement in the ascending aorta (AAO) (SVAAO) and volumetric assessment of the left ventricle (LV) (SVLV) agreed closely with the SV derived from the DF (SVDF) in 32 PAH patients with a 2SD of bias of +/−7.5 mL/beat and +/−9.6 mL/beat, respectively, with no significant bias [19]. However SV derived with flow measurement in the pulmonary artery (SVPA) and volume assessment of the right ventricle (SVRV) showed poor agreement with SVDF [19]. To the best of our knowledge, no methods have shown the ability to precisely calculate CO through the pulmonary circulation (COp) in precapillary PH.
Our aims were to determine (1) the agreement between SVMRI and SVTD in a population evaluated in our PH centre; (2) the inter- and intra-observer reproducibility, and the agreement between the different SVMRI methods in the same population. We hypothesised that a new strategy for COp estimation based on the sum of the right pulmonary artery (RPA) and the left pulmonary artery (LPA) SV (SV (RPA+LPA)) would be more precise than the localisations tested thus far in PH patients (SVPA and SVRV).

2. Materials and Methods

2.1. Study Population and Setting

We retrospectively included patients in our PH centre evaluated with both RHC and MRI imaging. We included all patients from variable settings, including (1) diagnosis evaluation of suspected PH, (2) follow-up of PH, and (3) follow-up of PH patients after treatment. Patients were excluded if (1) the delay between RHC and MRI was more than 3 weeks, (2) their age was <18 years, (3) a clinical deterioration occurred between RHC and MRI, and (4) in the case of concomitant pregnancy. The local ethical committee approved our study (2017-00716).

2.2. Right Heart Catheterisation

The RHC exam was performed in a supine position with continuous monitoring of the electrocardiogram and arterial oxygen saturation using pulse oximetry (SpO2). The mean systemic arterial pressure was measured at the brachial artery with an automatic inflating cuff. The modified Seldinger technique was used for venous catheterisation of the femoral, basilic, or cephalic vein with a 7F Terumo Glidesheath Slender radial introducer sheath (Terumo, Tokio, Japan), which has an outer diameter of a 6F sheath. The Swan Ganz catheter (7F) allowed the resting haemodynamic evaluation and included mPAP, PAWP, and COTD. The mid-thoracic line was used for the zero-level reference.
PVR, cardiac index (CI), and stroke volume (SV) were calculated with the respective formulae: PVR = (mPAP − PAWP)/COTD; CI = CO/(body surface area); and SV = CO/(heart rate).

CO Determined by TD

TD was performed with 10 mL of iced, cold, sterile isotonic glucosaline solution injected in the proximal catheter’s lumen. The temperature change was recorded at the distal end of the probe with a thermistor. Measurements were performed in triplicate, and the mean value was recorded if the difference between the highest and lowest value was ≤10%. Otherwise, two more measurements were performed with the deletion of the highest and lowest values. The mean of three remaining values was then calculated.

2.3. CO Determined by MRI

The MRI was acquired on a clinical Siemens 1.5 T AERA and 3 T PRISMA FIT (Siemens, Erlangen, Germany) and analysed using SyngoVia software from Siemens (Siemens, Erlangen, Germany). The COMRI measurements were made with flow velocity analysis in (1) AAO, (2) PA, (3) RPA + LPA, and (4) descending aorta (DAO) + superior vena cava (SVC), and the volumetric measurements were performed during the systole and diastole of (5) RV and (6) LV. The SV was then derived from the CO measurement (SV = CO/heart rate). The averaged heart rate was measured from the electrocardiogram (Siemens, Erlangen, Germany) used for the synchronisation of the MRI acquisitions. In the absence of a shunt or valvular leak, all of the 6 SVMRI estimations should reflect the same value. The images were acquired for the flow analysis using phase-contrast 2D FLASH with the image plane perpendicular to the flow direction, a slice thickness of 6 mm, and a 1.5–2 mm in-plane resolution according to the patient size, with a typical velocity encoding 250 cm/s for the aorta, 150 cm/s for the pulmonary arteries, and 120 cm/s for the superior vena cava (which was increased in the case of aliasing). The TR/TE was 28–37/2.5 ms; the flip angle was 20; the bandwidth was 450 Hz; and there were 2–3 signal averages according to the breathing pattern. For the volumetric analysis, a 2D true-FISP cine sequence was used with the following typical parameters: retrospective ECG gating, a resolution of 1.5 mm × 1.5 mm, a slice thickness of 8 mm, GRAPPA acceleration factor 3, TE of 1.3 ms, TR of 24 ms, flip angle of 30, with the left and right 2-chamber, 4-chamber, and contiguous short axes covering the whole heart.
Two different experienced investigators estimated COMRI. They were unaware of the COTD measurements when analysing the MRI data.

2.4. Statistics

The statistical analysis was conducted with SPSS (version 21, IBM, Armonk, New York). The data are given in mean +/− standard deviation (SD) unless otherwise stated. Statistical significance was defined as p < 0.05. Linear correlations were determined using linear regression with slope and intercept (y = ax + b), and the coefficient of correlation (r) was calculated. Bland and Altman (BA) analysis was used to determine bias (mean difference of SV), limits of agreement (LoA), and percentage error (PE) when comparing SVMRI against SVTD and the 6 SVMRI against each other. The LoA were calculated as bias +/−2SD of bias. PE for SV was calculated as (2SD of bias/mean SV) × 100. We used the predetermined 2SD of bias of 17.9 mL/beat and a PE of 30% to accept interchangeability between the two methods of SV determination [20]. The cut-off of 17.9 mL/beat was calculated from the proposed predetermined CO 2SD of bias of 1.25 L/min (1250 mL/min) and a mean heart rate in the cohort of 70 beats/min [20].
The 6 estimations of SVMRI were compared to SVTD and against each other. The SVMRI agreement between the methods comprised 15 pairs of measurements (the 6 methods compared against one another). SV was used for the comparison between different methods because SV is more stable than CO when two methods are not performed exactly at the same time due to possible variation of the HR [19]. Indeed, while HR variations will influence CO, SV is more stable in PAH even with exercise [21].
The results of the heart rate of the different tests (RHC and MRI) were compared using Student’s t test.
Inter- and intra-observer reproducibility was assessed using intraclass correlation (ICC) for the MRI CO measurements using flow assessment (AAO, DAO + SVC, RPA + LPA, and PA) in 10 randomly selected patients. For inter-observer ICC, the measurements were made independently by two different investigators (L.C. and A-L.H.). For intra-observer ICC, the same investigator (L.C.) made the measurements separated by a period of two months.

3. Results

3.1. Patients

A total of 41 patients met the inclusion criteria. A total of 17 patients were excluded, mainly due to excessive delays between RHC and MRI (n = 12). The flow chart is given in Figure 1. A total of 24 patients were included for the analysis, including 9 males and 15 females aged 60 ± 14 years at time of MRI (range 20–79 years). A total of 12 patients had PH during RHC (group 1, n = 4; group 4 (CTEPH), n = 7; group 2, n = 1). A total of 12 patients had no PH during RHC (no PH, n = 3; treated CTEPH, n = 5, including four patients after pulmonary endarterectomy and one patient after balloon pulmonary angioplasty; chronic thrombo-embolic pulmonary disease (CTEPD), n = 2; and treated group 1 PAH, n = 2). The time between RHC and MRI was 6 ± 6 days (range 0–21). The patients’ details are given in Table 1.
Flow chart of the patients. Patients who were followed up in our PH centre who benefited from both right heart catheterisation and cardiac magnetic resonance were screened for inclusion. After exclusion of patients not fulfilling the predetermined criteria, we included 24 patients in the final analysis. MRI = magnetic resonance imaging.

3.2. CO Measurement Using MRI

Figure 2 shows the placement of images for the major vessels and the resulting phase-contrast flow image, followed by the calculated flow curve.
Inter- and intra-observer reproducibility (single-measure ICC) for all MRI flow quantification ranged from 0.826 to 0.983 and 0.866 to 0.999, respectively, as shown in Table 2.

3.3. Comparison between MRI and TD

The mean heart rate did not differ between the RHC and MRI as confirmed by the paired t-test with p = 0.4.
Table 3 summarizes the mean and SD values for all the parameters. Overall, the mean SV was 70 mL (SD = 20).
Figure 3 shows the BA analyses of the six SVMRI methods against SVTD. Table 4 summarises the BA analyses of the six SVMRI against SVTD as well as the coefficient of correlation and linear regression. The 2SD of bias ranged from 24.1 to 31.1 mL/beat, and the bias ranged from −2.9 to −11.3 mL/beat. PE ranged from 34.9% to 42.8%.

3.4. Comparison between Different MRI Methods

Figure 4 shows the Bland and Altman analysis of SV(RPA+LPA) compared with (1) SVAAO and (2) SV(DAO+SVC) showing narrow LoA and a small bias. SV(RPA+LPA) compared with SV(DAO+SVC) yielded the best agreement, with a bias of 4.1 mL/beat, a 2SD of bias of 13.8 mL/beat, and a PE of 19.7%. The agreement between SV(RPA+LPA) compared with SVAAO was also very good, with a bias of −2.1 mL/beat, a 2SD of bias of 17.9 mL/beat, and a PE of 25.5%. Table 5 summarises the Bland and Altman analysis of the comparisons between the six different MRI methods, as well as the coefficient of correlation and linear regression. The bias ranged from −6.8 to +8.6 mL/beat; the 2SD of bias ranged from 13.8 to 29.1 mL/beat; and the PE ranged from 19.7% to 39.4%.

4. Discussion

In this study, we showed that (1) SVMRI was not interchangeable with SVTD using predetermined criteria; (2) SV(RPA+LPA) yielded the best agreement with the other SVMRI methods including the already validated SVAAO method; and (3) the agreement between the different SVMRI methods was globally better than when SVMRI was compared against SVTD.

4.1. Regarding the Statistical Analysis

BA graphs are the analysis of choice when two methods measuring the same variable are compared. They provide information on the degree of agreement between the compared methods [22]. For proper BA analysis, a specific cut-off for the acceptance of the interchangeability of two methods is mandatory, otherwise this choice is left to the subjectivity of the authors [22]. In the field of anaesthesiology and intensive care medicine, a 2SD of bias of 1 L/min or a PE of 20% when comparing a new CO estimation method to the gold standard (DF), or an LoA of 1.25 L/min or PE of 30% when comparing a new method to a reference method (TD) that is not the gold standard, have been suggested [20,23]. The use of a wider LoA and PE when comparing a new method to a reference method (TD) are suggested because the LoA and PE are the results of the intrinsic imprecision of both methods with a reference method that is supposed to be less precise than the gold standard [20]. By precision, we refer to how close the values of repeated measurements are [20]. The predetermined cut-off should be determined based on the clinical purpose of CO measurement, which will influence the degree of precision needed. In the field of PH, a cut-off has never been proposed [13]. In this context, we admitted it was reasonable to rely on an existing cut-off (1.25 L/min, with a derived cut-off for SV of 17.9 mL/beat) even though it might not be the ideal cut-off for the clinical context studied.

4.2. Regarding Interchangeability between MRI and TD

None of the six SVMRI reached the predetermined interchangeability criteria when compared against SVTD. Therefore, in our population, SVMRI cannot be considered interchangeable with the reference SVTD method. This is concordant with previous results in the field showing a wide range of the 2SD of bias (ranging from 1.9 L/min to 2.4 L/min) and PE when comparing MRI with TD [24,25,26,27]. As aforementioned, the LoA and PE are the results of the imprecision of the two studied methods. The LoA and PE were globally smaller when compared between different MRI measurement methods than when we compared MRI with TD. This raises the question of whether the actual reference method (TD) could be the cause of the observed lack of agreement. TD is a reference method based on an analysis of 35 PcPH patients in 1999, which showed good agreement between TD and DF with a 2SD of bias of 1.1 L/min [3]. However, recent published data have shown that the agreement between DF and TD is probably lower than previously thought, with a wide range of PE (42% and 44.6%) and LoA (2SD of bias of 2.48 L/min), leading to misclassification in the prognosis assessment of patients with PAH and misclassification of exercise PH [28,29,30]. In this context, it is likely that TD might be the cause of the lack of agreement when we compared TD with MRI. This would also explain the constant lack of agreement between COMRI and COTD in other studies in this field, while a good agreement between SVAAO and SVRV was demonstrated against the gold standard SVDF [19,24,25,26,27]. In our study, the delay between MRI and TD could also contribute to lower the observed agreement between MRI and TD due to change in the haemodynamic condition of the patients. The exclusion of patients with conditions that could lead to rapid change in haemodynamic (e.g., pregnancy and clinical deterioration between RHC and MRI) probably lowered this potential effect. Since we obtained similar results to those of previous studies in the field, we do not think that the delay made a significant change in the observed agreement.

4.3. Regarding the Comparison between Different MRI Methods

We provided an assessment of six different types of SVMRI data, including measurements of flow in localisations such as (LPA + RPA) and (SVC + DOA) that have never been tested in this population thus far. COs and COp were both measured in three localisations i.e., (AAO, DAO + SVC, and LV) and (RV, PA, and RPA + LPA). All of these CO estimates and SV derivates should be equal in the absence of a significant shunt.
One issue related to MRI in the evaluation of PH is the lack of a method to evaluate the COp. Indeed, SVRV and SVPA lacked agreement with the gold standard DF [19]. SVRV could be less precise in PH patients due to (1) tricuspid insufficiency, (2) large trabeculations in the RV, and (3) the complicated anatomy of the RV with difficult delimitation of the inner border of the cavity. SVPA imprecision could be due to (1) the presence of a vortex and non-laminar flow in dilated PA with an irregular border and (2) pulmonary regurgitation.
COp could be a valuable measurement, especially for PH populations, because it could allow the measurement of shunts between the pulmonary and systemic circulation. Congenital heart disease, including shunts, are one of the most common causes of PAH in the adult population [1]. The measurement of COp in patients with shunts could also allow the calculation of the correct PVR, which is necessary for diagnosis and treatment decisions in some of these patients, including discussion about the shunt’s closure. For PVR calculation, mPAP and PAWP measurements are necessary. MRI can provide an estimation of mPAP and PAWP, even though the methods used require further validation [31]. Furthermore, a new method to determine COp is greatly needed because the TD and Fick methods are known to lack precision, especially in the case of shunts and extreme CO [32].
In our study, we found that SVPA yielded poor results, which is consistent with previous publications and is probably caused by the reasons explained above [19]. SVRV yielded results similar to those of other methods of SV determination and was not worse than SVAAO or SVLV for SV estimation, as had been previously shown [19]. This could be explained by the mildly elevated mPAP in our cohort that is associated with a low degree of tricuspid regurgitation. Anatomical determination of the RV’s contour is also becoming easier with the improvements in MRI techniques and analysis software. Tricuspid regurgitation might be the main mechanism leading the lack of agreement of the method. Indeed, the volume moving forward through the pulmonary valve or returning back through the tricuspid valve cannot be differentiated. This is of interest as SVRV could be a method used to calculate the severity of tricuspid regurgitation by comparing the SV calculated with SVRV and the true SV (i.e., through the pulmonary artery) estimated with another method such as SV(RPA+LPA).
As shown in Table 5 and Figure 4, SV(RPA+LPA) was the only surrogate of COp that reached the two prespecified interchangeability criteria with two SV surrogates of COs (SVAAO and SV(DOA+SVC)). The agreement between SV(RPA+LPA) and SV(DOA+SVC) even reached the more restrictive agreement necessary for the acceptance of a new method with a gold standard method (2SD of bias for SV ≤ 14.3 and PE ≤ 20%). In this context, SV(RPA+LPA) may be the most promising method for SV determination in patients with PH. In comparison to SVPA, it might be less influenced by (1) vortexes, which mainly appear in the main PA; (2) main PA dilatation with possible issues in contour determination; and (3) pulmonary regurgitation. Indeed, the main PA acts as a blood reservoir during the diastolic time, and the pulmonary regurgitation would probably be of lesser impact if the measurement is made distally to the main PA. Even though this seems the most promising method for SV measurement, this needs to be prospectively validated against the gold standard DF and in patients with significant haemodynamic PH severity.
The main limitations of our study include the small number of subjects, the mildly elevated mean mPAP, the retrospective analysis, the delay between MRI and RHC, and the absence of a direct comparison to a gold standard DF. However, TD is widely used, and thus our data may be considered a comparison with a real-life setting. The strengths of our study are related to the rigorous methodology with a predetermined cut-off for the 2SD of bias, which is unfortunately rarely used in this field, and the use of new localisations for flow determination in PH, with the measurement in RPA + LPA for the pulmonary circulation and DAO + SVC for the systemic circulation.

5. Conclusions

We could not demonstrate the interchangeability of SVMRI and SVTD, but this is probably due to an overestimation of TD precision in PH. Estimation of COp with SV(RPA+LPA) was shown to agree more closely to methods of COs estimation than the previously described methods for COp determination in this population (SVRV and SVPA). SV(RPA+LPA) may be the best non-invasive MRI method to determine COp in precapillary PH.

Author Contributions

L.A.C. extracted the data, participated in the COMRI measurements, performed the statistical analysis, and participated in the writing of the manuscript. L.G. analysed the data and drafted the manuscript. A.-L.H. participated in the COMRI measurements. S.N. participated in the COTD measurements. M.B. participated in the analysis of the data and reviewed the manuscript. J.-P.V. and F.L. supervised the plan of the study and the analysis of the data, and participated in the writing of the manuscript. All the authors read and brought significant intellectual contributions to the final manuscript and fulfilled the ICMJE criteria for authorship. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The study complies with the guidelines for human studies and was conducted ethically in accordance with the World Medical Association’s Declaration of Helsinki. The local ethical committee (Swiss ethics) approved our study (2017-00716).

Informed Consent Statement

A specific written consent was waived due to the retrospective design of the study. Patients were informed of the study according to our institutional policy.

Data Availability Statement

Data can be shared upon reasonable request.

Conflicts of Interest

L.A.C. has nothing to disclose. L.G. has nothing to disclose. A.-L.H. has nothing to disclose. S.N. has nothing to disclose. M.B. reports grants and personal fees from Actelion/Janssen, grants and personal fees from Bayer, personal fees from Acceleron, personal fees from Altavant, personal fees from Orpha, personal fees from Gossamer, and personal fees from GSK outside the submitted work. J.-P.V. has nothing to disclose. F.L. reports personal fees from Actelion/janssen, personal fees from OrphaSwiss, and personal fees from MSD outside the submitted work.

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Figure 1. Flow chart.
Figure 1. Flow chart.
Jcm 11 02717 g001
Figure 2. Placement of images for the major vessels, the resulting phase-contrast flow image, and the calculated flow curve. The green circle is placed in the AAO in this figure. Flow quantification using Syngovia was semi-automated. AAO: ascending aorta, DAO: descending aorta, LPA: left pulmonary artery, PA: pulmonary artery, RPA: right pulmonary artery, SVC: superior vena cava.
Figure 2. Placement of images for the major vessels, the resulting phase-contrast flow image, and the calculated flow curve. The green circle is placed in the AAO in this figure. Flow quantification using Syngovia was semi-automated. AAO: ascending aorta, DAO: descending aorta, LPA: left pulmonary artery, PA: pulmonary artery, RPA: right pulmonary artery, SVC: superior vena cava.
Jcm 11 02717 g002aJcm 11 02717 g002b
Figure 3. Bland and Altman analyses of SVMRI against SVTD. LoA are in grey and black. Bias is in orange. Results are in stroke volume (mL/beat). AAO: ascending aorta, DAO: descending aorta, LV: left ventricle, LPA: left pulmonary artery, PA: pulmonary artery, RV: right ventricle, RPA: right pulmonary artery, TD: thermodilution, SVC: superior vena cava.
Figure 3. Bland and Altman analyses of SVMRI against SVTD. LoA are in grey and black. Bias is in orange. Results are in stroke volume (mL/beat). AAO: ascending aorta, DAO: descending aorta, LV: left ventricle, LPA: left pulmonary artery, PA: pulmonary artery, RV: right ventricle, RPA: right pulmonary artery, TD: thermodilution, SVC: superior vena cava.
Jcm 11 02717 g003
Figure 4. Bland and Altman analyses of SV(RPA+LPA) against SV(DOA+VCS) and SVAAO. LoA are in grey and black. Bias is in orange. Results are in stroke volume (mL/beat). AAO: ascending aorta, DAO: descending aorta, LPA: left pulmonary artery, RPA: right pulmonary artery, SVC: superior vena cava.
Figure 4. Bland and Altman analyses of SV(RPA+LPA) against SV(DOA+VCS) and SVAAO. LoA are in grey and black. Bias is in orange. Results are in stroke volume (mL/beat). AAO: ascending aorta, DAO: descending aorta, LPA: left pulmonary artery, RPA: right pulmonary artery, SVC: superior vena cava.
Jcm 11 02717 g004
Table 1. Patient characteristics.
Table 1. Patient characteristics.
ParameterValue
Total patientsn = 24
Male:Female9:15
Age at MRI60 ± 14
Interval between MRI and RHC5.8 ± 5.6
mPAP (mmHg)29 ± 15
mPAP < 25 mmHg (no PH)n = 12
mPAP ≥ 25 mmHg (with PH)n = 12
CI (TD) (L min−1 m−2)2.5 ± 0.7
PVR (WU)5.3 ± 4.1
TAPSE (mm)19 ± 4
HR (MRI) (beats/min)73 ± 13
HR (RHC) (beats/min)70 ± 9
PH group 1 n = 4
PH group 4 n = 7
Other n = 1
Data are in mean ± SD unless otherwise stated. CI: cardiac index; HR: heart rate; mPAP: mean pulmonary arterial pressure; PH: pulmonary hypertension; PVR: pulmonary vascular resistance; TAPSE: tricuspid annular plan systolic excursion.
Table 2. Inter- and intra-observer ICC.
Table 2. Inter- and intra-observer ICC.
ICCAAODAOSVCPALPARPA
Inter0.9810.9830.8260.9260.8890.901
Intra0.9950.9910.9950.9980.9960.999
AAO: ascending aorta, DAO: descending aorta, ICC: intraclass correlation; inter: inter-observer; intra: intra-observer LPA: left pulmonary artery, PA: pulmonary artery, RPA: right pulmonary artery, SVC: superior vena cava.
Table 3. Mean and standard deviation values for CO and SV.
Table 3. Mean and standard deviation values for CO and SV.
CO L/minSV mL/Beat
TD4.7 ± 1.067 ± 16
LV5.1 ± 1.171 ± 19
RV5.1 ± 1.273 ± 21
AAO4.9 ± 1.270 ± 20
PA5.5 ± 1.476 ± 23
RPA + LPA5.1 ± 1.171 ± 20
DAO + SVC4.8 ± 1.269 ± 21
Data are in mean ± SD. AAO: ascending aorta, CO: cardiac output, DAO: descending aorta, LV: left ventricle, LPA: left pulmonary artery, PA: pulmonary artery, RV: right ventricle, TD: thermodilution; RPA: right pulmonary artery, SV: stroke volume, SVC: superior vena cava.
Table 4. Comparison between the six different SVMRI methods against SVTD.
Table 4. Comparison between the six different SVMRI methods against SVTD.
Bland and Altman AnalysisLinear Regression with Coefficient of Correlation (r), Slope (a), and Intercept (b) with SVMRI on the y-Axis and Axis SVTD on the x-Axis
Compared SVMRI MethodBias, mL/Beat2SD of Bias, mL/BeatPE (%)ra b mL/Beat
LV −5.6±26.938.50.800.9311.8
RV −5.5±26.237.50.870.919.7
AAO−4.3±24.134.90.650.9117.3
PA−11.3±31.142.80.650.8216.9
RPA + LPA−6.2±25.436.30.660.3318.3
DAO + SVC−2.9±26.338.20.610.8514.3
AAO: ascending aorta, CO: cardiac output, DAO: descending aorta, LV: left ventricle, LPA: left pulmonary artery, MRI: magnetic resonance imaging, PA: pulmonary artery, PE: percentage error, RV: right ventricle, RPA: right pulmonary artery, SD: standard deviation, SV: stroke volume, SVC: superior vena cava, thermodilution: TD.
Table 5. Fifteen paired comparisons of the six different MRI methods.
Table 5. Fifteen paired comparisons of the six different MRI methods.
Bland and Altman AnalysisLinear Regression with Coefficient of Correlation (r), Slope (a), and Intercept (b) with the First Method on the y-Axis and the Second Method on the x-Axis
Compared SVMRI (First Method/Second Method)Bias, mL/Beat2SD of Bias, mL/BeatPE (%)rab, mL/Beat
RV/PA−6.4±23.731.30.890.837.8
RV/(RPA + LPA)−3.1±18.325.20.910.914.9
RV/AAO0.5±21.629.90.880.917.7
LV/PA−5.1±29.139.40.850.7812.8
LV/(RPA + LPA)−0.9±24.834.90.880.8610.1
LV/AAO1.7±21.831.00.900.8810.9
AAO/(DAO + SVC)1.7±19.427.90.940.8610.3
PA/(DAO + VCS)8.6±18.325.10.930.9113.6
(RPA + LPA)/(DAO + VCS)4.1±13.819.70.970.8911.0
PA/(RPA + LPA)5.0± 19.826.80.930.994.8
PA/AAO−6.8±18.725.60.930.996.9
(RPA + LPA) /AAO−2.1±17.925.50.940.946.3
LV/RV−0.5±17.123.70.910.991.5
LV/(DAO + VCS)3.5±23.833.90.830.894.3
RV/(DAO + VCS)2.0±18.425.10.900.923.6
Bold values meet the predetermined interchangeability criteria either for PE or for 2 SD of bias. Methods in bold are meeting both interchangeability criteria. AAO: ascending aorta, DAO: descending aorta, LV: left ventricle, LPA: left pulmonary artery, MRI: magnetic resonance imaging, PA: pulmonary artery, PE: percentage error, RV: right ventricle, RPA: right pulmonary artery, SD: standard deviation, stroke volume: SV, SVC: superior vena cava.
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Crowe, L.A.; Genecand, L.; Hachulla, A.-L.; Noble, S.; Beghetti, M.; Vallée, J.-P.; Lador, F. Non-Invasive Cardiac Output Determination Using Magnetic Resonance Imaging and Thermodilution in Pulmonary Hypertension. J. Clin. Med. 2022, 11, 2717. https://doi.org/10.3390/jcm11102717

AMA Style

Crowe LA, Genecand L, Hachulla A-L, Noble S, Beghetti M, Vallée J-P, Lador F. Non-Invasive Cardiac Output Determination Using Magnetic Resonance Imaging and Thermodilution in Pulmonary Hypertension. Journal of Clinical Medicine. 2022; 11(10):2717. https://doi.org/10.3390/jcm11102717

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Crowe, Lindsey A., Léon Genecand, Anne-Lise Hachulla, Stéphane Noble, Maurice Beghetti, Jean-Paul Vallée, and Frédéric Lador. 2022. "Non-Invasive Cardiac Output Determination Using Magnetic Resonance Imaging and Thermodilution in Pulmonary Hypertension" Journal of Clinical Medicine 11, no. 10: 2717. https://doi.org/10.3390/jcm11102717

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