Artificial Intelligence ECG Analysis in Patients with Short QT Syndrome to Predict Life-Threatening Arrhythmic Events

被引:6
作者
Pasero, Eros [1 ]
Gaita, Fiorenzo [2 ,3 ]
Randazzo, Vincenzo [1 ]
Meynet, Pierre [3 ,4 ]
Cannata, Sergio [1 ]
Maury, Philippe [5 ]
Giustetto, Carla [3 ,4 ]
机构
[1] Politecn Torino, Dept Elect & Telecommun, I-10129 Turin, Italy
[2] J Med, Cardiol Unit, Turin, Italy
[3] Univ Turin, Dept Med Sci, I-10124 Turin, Italy
[4] Citta Salute & Sci Hosp, Div Cardiol, I-10126 Turin, Italy
[5] Univ Hosp Rangueil, Dept Cardiol, F-31400 Toulouse, France
关键词
artificial intelligence; shallow learning; deep learning; short QT syndrome; electrocardiogram; sudden cardiac death; risk stratification; vision transformers; LOGISTIC-REGRESSION; CLASSIFICATION; MUTATION; INTERVAL; DEATH;
D O I
10.3390/s23218900
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Short QT syndrome (SQTS) is an inherited cardiac ion-channel disease related to an increased risk of sudden cardiac death (SCD) in young and otherwise healthy individuals. SCD is often the first clinical presentation in patients with SQTS. However, arrhythmia risk stratification is presently unsatisfactory in asymptomatic patients. In this context, artificial intelligence-based electrocardiogram (ECG) analysis has never been applied to refine risk stratification in patients with SQTS. The purpose of this study was to analyze ECGs from SQTS patients with the aid of different AI algorithms to evaluate their ability to discriminate between subjects with and without documented life-threatening arrhythmic events. The study group included 104 SQTS patients, 37 of whom had a documented major arrhythmic event at presentation and/or during follow-up. Thirteen ECG features were measured independently by three expert cardiologists; then, the dataset was randomly divided into three subsets (training, validation, and testing). Five shallow neural networks were trained, validated, and tested to predict subject-specific class (non-event/event) using different subsets of ECG features. Additionally, several deep learning and machine learning algorithms, such as Vision Transformer, Swin Transformer, MobileNetV3, EfficientNetV2, ConvNextTiny, Capsule Networks, and logistic regression were trained, validated, and tested directly on the scanned ECG images, without any manual feature extraction. Furthermore, a shallow neural network, a 1-D transformer classifier, and a 1-D CNN were trained, validated, and tested on ECG signals extracted from the aforementioned scanned images. Classification metrics were evaluated by means of sensitivity, specificity, positive and negative predictive values, accuracy, and area under the curve. Results prove that artificial intelligence can help clinicians in better stratifying risk of arrhythmia in patients with SQTS. In particular, shallow neural networks' processing features showed the best performance in identifying patients that will not suffer from a potentially lethal event. This could pave the way for refined ECG-based risk stratification in this group of patients, potentially helping in saving the lives of young and otherwise healthy individuals.
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页数:16
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