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Название: Combination of personalized computational modeling and machine learning for optimization of left ventricular pacing site in cardiac resynchronization therapy
Авторы: Dokuchaev, A.
Chumarnaya, T.
Bazhutina, A.
Khamzin, S.
Lebedeva, V.
Lyubimtseva, T.
Zubarev, S.
Lebedev, D.
Solovyova, O.
Дата публикации: 2023
Издатель: Frontiers Media SA
Библиографическое описание: Dokuchaev, A, Chumarnaya, T, Bazhutina, A, Khamzin, S, Lebedeva, V, Lyubimtseva, T, Zubarev, S, Lebedev, D & Solovyova, O 2023, 'Combination of personalized computational modeling and machine learning for optimization of left ventricular pacing site in cardiac resynchronization therapy', Frontiers in Physiology, Том. 14, 1162520. https://doi.org/10.3389/fphys.2023.1162520
Dokuchaev, A., Chumarnaya, T., Bazhutina, A., Khamzin, S., Lebedeva, V., Lyubimtseva, T., Zubarev, S., Lebedev, D., & Solovyova, O. (2023). Combination of personalized computational modeling and machine learning for optimization of left ventricular pacing site in cardiac resynchronization therapy. Frontiers in Physiology, 14, [1162520]. https://doi.org/10.3389/fphys.2023.1162520
Аннотация: Introduction: The 30–50% non-response rate to cardiac resynchronization therapy (CRT) calls for improved patient selection and optimized pacing lead placement. The study aimed to develop a novel technique using patient-specific cardiac models and machine learning (ML) to predict an optimal left ventricular (LV) pacing site (ML-PS) that maximizes the likelihood of LV ejection fraction (LVEF) improvement in a given CRT candidate. To validate the approach, we evaluated whether the distance DPS between the clinical LV pacing site (ref-PS) and ML-PS is associated with improved response rate and magnitude. Materials and methods: We reviewed retrospective data for 57 CRT recipients. A positive response was defined as a more than 10% LVEF improvement. Personalized models of ventricular activation and ECG were created from MRI and CT images. The characteristics of ventricular activation during intrinsic rhythm and biventricular (BiV) pacing with ref-PS were derived from the models and used in combination with clinical data to train supervised ML classifiers. The best logistic regression model classified CRT responders with a high accuracy of 0.77 (ROC AUC = 0.84). The LR classifier, model simulations and Bayesian optimization with Gaussian process regression were combined to identify an optimal ML-PS that maximizes the ML-score of CRT response over the LV surface in each patient. Results: The optimal ML-PS improved the ML-score by 17 ± 14% over the ref-PS. Twenty percent of the non-responders were reclassified as positive at ML-PS. Selection of positive patients with a max ML-score >0.5 demonstrated an improved clinical response rate. The distance DPS was shorter in the responders. The max ML-score and DPS were found to be strong predictors of CRT response (ROC AUC = 0.85). In the group with max ML-score > 0.5 and DPS< 30 mm, the response rate was 83% compared to 14% in the rest of the cohort. LVEF improvement in this group was higher than in the other patients (16 ± 8% vs. 7 ± 8%). Conclusion: A new technique combining clinical data, personalized heart modelling and supervised ML demonstrates the potential for use in clinical practice to assist in optimizing patient selection and predicting optimal LV pacing lead position in HF candidates for CRT. Copyright © 2023 Dokuchaev, Chumarnaya, Bazhutina, Khamzin, Lebedeva, Lyubimtseva, Zubarev, Lebedev and Solovyova.
Ключевые слова: CARDIAC MODELING
CARDIAC RESYNCHRONIZATION THERAPY
ELECTROPHYSIOLOGY
HEART FAILURE
HYBRID APPROACH
MACHINE LEARNING
OPTIMAL DESIGN FOR PACING LEAD POSITION
PREDICTION
ARTICLE
BAYES THEOREM
CARDIAC RESYNCHRONIZATION THERAPY
CLASSIFIER
COHORT ANALYSIS
COMPUTER ASSISTED TOMOGRAPHY
COMPUTER MODEL
ELECTROCARDIOGRAM
EVALUATION STUDY
HEART ELECTROPHYSIOLOGY
HEART FAILURE
HEART LEFT VENTRICLE
HEART LEFT VENTRICLE EJECTION FRACTION
HEART LEFT VENTRICLE PACING SITE
HEART RHYTHM
HEART VENTRICLE CONTRACTION
HEART VENTRICLE PACING
HUMAN
LOGISTIC REGRESSION ANALYSIS
MACHINE LEARNING
MAJOR CLINICAL STUDY
NUCLEAR MAGNETIC RESONANCE IMAGING
PATIENT SELECTION
PERSONALIZED MEDICINE
PREDICTION
PREDICTOR VARIABLE
PROOF OF CONCEPT
RECEIVER OPERATING CHARACTERISTIC
RETROSPECTIVE STUDY
SIMULATION
SUPERVISED MACHINE LEARNING
TREATMENT RESPONSE
VALIDATION STUDY
URI: http://elar.urfu.ru/handle/10995/130665
Условия доступа: info:eu-repo/semantics/openAccess
cc-by
Текст лицензии: https://creativecommons.org/licenses/by/4.0/
Идентификатор SCOPUS: 85165659555
Идентификатор WOS: 001033654000001
Идентификатор PURE: 43271747
ISSN: 1664-042X
DOI: 10.3389/fphys.2023.1162520
Сведения о поддержке: Russian Science Foundation, RSF: 19-14-00134
This work was supported by Russian Science Foundation Grant No. 19-14-00134.
Карточка проекта РНФ: 19-14-00134
Располагается в коллекциях:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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