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Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses

Background: Hindered by its unspecific clinical and phenotypical presentation, cardiac sarcoidosis (CS) remains a challenging diagnosis. Objective: Utilizing cardiac magnetic resonance imaging (CMR), we acquired multi-chamber volumetrics and strain feature tracking for a support vector machine learn...

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Autores principales: Eckstein, Jan, Moghadasi, Negin, Körperich, Hermann, Akkuzu, Rehsan, Sciacca, Vanessa, Sohns, Christian, Sommer, Philipp, Berg, Julian, Paluszkiewicz, Jerzy, Burchert, Wolfgang, Piran, Misagh
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10377893/
https://www.ncbi.nlm.nih.gov/pubmed/37510168
http://dx.doi.org/10.3390/diagnostics13142426
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author Eckstein, Jan
Moghadasi, Negin
Körperich, Hermann
Akkuzu, Rehsan
Sciacca, Vanessa
Sohns, Christian
Sommer, Philipp
Berg, Julian
Paluszkiewicz, Jerzy
Burchert, Wolfgang
Piran, Misagh
author_facet Eckstein, Jan
Moghadasi, Negin
Körperich, Hermann
Akkuzu, Rehsan
Sciacca, Vanessa
Sohns, Christian
Sommer, Philipp
Berg, Julian
Paluszkiewicz, Jerzy
Burchert, Wolfgang
Piran, Misagh
author_sort Eckstein, Jan
collection PubMed
description Background: Hindered by its unspecific clinical and phenotypical presentation, cardiac sarcoidosis (CS) remains a challenging diagnosis. Objective: Utilizing cardiac magnetic resonance imaging (CMR), we acquired multi-chamber volumetrics and strain feature tracking for a support vector machine learning (SVM)-based diagnostic approach to CS. Method: Forty-five CMR-negative (CMR(−), 56.5(53.0;63.0)years), eighteen CMR-positive (CMR(+), 64.0(57.8;67.0)years) sarcoidosis patients and forty-four controls (CTRL, 56.5(53.0;63.0)years)) underwent CMR examination. Cardiac parameters were processed using the classifiers of logistic regression, KNN(K-nearest-neighbor), DT (decision tree), RF (random forest), SVM, GBoost, XGBoost, Voting and feature selection. Results: In a three-cluster analysis of CTRL versus vs. CMR(+) vs. CMR(−), RF and Voting classifier yielded the highest prediction rates (81.82%). The two-cluster analysis of CTRL vs. all sarcoidosis (All Sarc.) yielded high prediction rates with the classifiers logistic regression, RF and SVM (96.97%), and low prediction rates for the analysis of CMR(+) vs. CMR(−), which were augmented using feature selection with logistic regression (89.47%). Conclusion: Multi-chamber cardiac function and strain-based supervised machine learning provides a non-contrast approach to accurately differentiate between healthy individuals and sarcoidosis patients. Feature selection overcomes the algorithmically challenging discrimination between CMR(+) and CMR(−) patients, yielding high accuracy predictions. The study findings imply higher prevalence of cardiac involvement than previously anticipated, which may impact clinical disease management.
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spelling pubmed-103778932023-07-29 Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses Eckstein, Jan Moghadasi, Negin Körperich, Hermann Akkuzu, Rehsan Sciacca, Vanessa Sohns, Christian Sommer, Philipp Berg, Julian Paluszkiewicz, Jerzy Burchert, Wolfgang Piran, Misagh Diagnostics (Basel) Article Background: Hindered by its unspecific clinical and phenotypical presentation, cardiac sarcoidosis (CS) remains a challenging diagnosis. Objective: Utilizing cardiac magnetic resonance imaging (CMR), we acquired multi-chamber volumetrics and strain feature tracking for a support vector machine learning (SVM)-based diagnostic approach to CS. Method: Forty-five CMR-negative (CMR(−), 56.5(53.0;63.0)years), eighteen CMR-positive (CMR(+), 64.0(57.8;67.0)years) sarcoidosis patients and forty-four controls (CTRL, 56.5(53.0;63.0)years)) underwent CMR examination. Cardiac parameters were processed using the classifiers of logistic regression, KNN(K-nearest-neighbor), DT (decision tree), RF (random forest), SVM, GBoost, XGBoost, Voting and feature selection. Results: In a three-cluster analysis of CTRL versus vs. CMR(+) vs. CMR(−), RF and Voting classifier yielded the highest prediction rates (81.82%). The two-cluster analysis of CTRL vs. all sarcoidosis (All Sarc.) yielded high prediction rates with the classifiers logistic regression, RF and SVM (96.97%), and low prediction rates for the analysis of CMR(+) vs. CMR(−), which were augmented using feature selection with logistic regression (89.47%). Conclusion: Multi-chamber cardiac function and strain-based supervised machine learning provides a non-contrast approach to accurately differentiate between healthy individuals and sarcoidosis patients. Feature selection overcomes the algorithmically challenging discrimination between CMR(+) and CMR(−) patients, yielding high accuracy predictions. The study findings imply higher prevalence of cardiac involvement than previously anticipated, which may impact clinical disease management. MDPI 2023-07-20 /pmc/articles/PMC10377893/ /pubmed/37510168 http://dx.doi.org/10.3390/diagnostics13142426 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Eckstein, Jan
Moghadasi, Negin
Körperich, Hermann
Akkuzu, Rehsan
Sciacca, Vanessa
Sohns, Christian
Sommer, Philipp
Berg, Julian
Paluszkiewicz, Jerzy
Burchert, Wolfgang
Piran, Misagh
Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses
title Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses
title_full Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses
title_fullStr Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses
title_full_unstemmed Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses
title_short Machine-Learning-Based Diagnostics of Cardiac Sarcoidosis Using Multi-Chamber Wall Motion Analyses
title_sort machine-learning-based diagnostics of cardiac sarcoidosis using multi-chamber wall motion analyses
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10377893/
https://www.ncbi.nlm.nih.gov/pubmed/37510168
http://dx.doi.org/10.3390/diagnostics13142426
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