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Detection of Patients with Congenital and Often Concealed Long-QT Syndrome by Novel Deep Learning Models.

Authors :
Doldi F
Plagwitz L
Hoffmann LP
Rath B
Frommeyer G
Reinke F
Leitz P
Büscher A
Güner F
Brix T
Wegner FK
Willy K
Hanel Y
Dittmann S
Haverkamp W
Schulze-Bahr E
Varghese J
Eckardt L
Source :
Journal of personalized medicine [J Pers Med] 2022 Jul 13; Vol. 12 (7). Date of Electronic Publication: 2022 Jul 13.
Publication Year :
2022

Abstract

Introduction: The long-QT syndrome (LQTS) is the most common ion channelopathy, typically presenting with a prolonged QT interval and clinical symptoms such as syncope or sudden cardiac death. Patients may present with a concealed phenotype making the diagnosis challenging. Correctly diagnosing at-risk patients is pivotal to starting early preventive treatment.<br />Objective: Identification of congenital and often concealed LQTS by utilizing novel deep learning network architectures, which are specifically designed for multichannel time series and therefore particularly suitable for ECG data.<br />Design and Results: A retrospective artificial intelligence (AI)-based analysis was performed using a 12-lead ECG of genetically confirmed LQTS ( n = 124), including 41 patients with a concealed LQTS (33%), and validated against a control cohort ( n = 161 of patients) without known LQTS or without QT-prolonging drug treatment but any other cardiovascular disease. The performance of a fully convolutional network (FCN) used in prior studies was compared with a different, novel convolutional neural network model (XceptionTime). We found that the XceptionTime model was able to achieve a higher balanced accuracy score (91.8%) than the associated FCN metric (83.6%), indicating improved prediction possibilities of novel AI architectures. The predictive accuracy prevailed independently of age and QT <subscript>c</subscript> parameters.<br />Conclusions: In this study, the XceptionTime model outperformed the FCN model for LQTS patients with even better results than in prior studies. Even when a patient cohort with cardiovascular comorbidities is used. AI-based ECG analysis is a promising step for correct LQTS patient identification, especially if common diagnostic measures might be misleading.

Details

Language :
English
ISSN :
2075-4426
Volume :
12
Issue :
7
Database :
MEDLINE
Journal :
Journal of personalized medicine
Publication Type :
Academic Journal
Accession number :
35887632
Full Text :
https://doi.org/10.3390/jpm12071135