European Journal of Medical Research (Dec 2022)

An artificial intelligence-enabled ECG algorithm for identifying ventricular premature contraction during sinus rhythm

  • Sheng-Nan Chang,
  • Yu-Heng Tseng,
  • Jien-Jiun Chen,
  • Fu-Chun Chiu,
  • Chin-Feng Tsai,
  • Juey-Jen Hwang,
  • Yi-Chih Wang,
  • Chia-Ti Tsai

DOI
https://doi.org/10.1186/s40001-022-00929-z
Journal volume & issue
Vol. 27, no. 1
pp. 1 – 9

Abstract

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Abstract Background Ventricular premature complex (VPC) is a common arrhythmia in clinical practice. VPC could trigger ventricular tachycardia/fibrillation or VPC-induced cardiomyopathy in susceptible patients. Existing screening methods require prolonged monitoring and are limited by cost and low yield when the frequency of VPC is low. Twelve-lead electrocardiogram (ECG) is low cost and widely used. We aimed to identify patients with VPC during normal sinus rhythm (NSR) using artificial intelligence (AI) and machine learning-based ECG reading. Methods We developed AI-enabled ECG algorithm using a convolutional neural network (CNN) to detect the ECG signature of VPC presented during NSR using standard 12-lead ECGs. A total of 2515 ECG records from 398 patients with VPC were collected. Among them, only ECG records of NSR without VPC (1617 ECG records) were parsed. Results A total of 753 normal ECG records from 387 patients under NSR were used for comparison. Both image and time-series datasets were parsed for the training process by the CNN models. The computer architectures were optimized to select the best model for the training process. Both the single-input image model (InceptionV3, accuracy: 0.895, 95% confidence interval [CI] 0.683–0.937) and multi-input time-series model (ResNet50V2, accuracy: 0.880, 95% CI 0.646–0.943) yielded satisfactory results for VPC prediction, both of which were better than the single-input time-series model (ResNet50V2, accuracy: 0.840, 95% CI 0.629–0.952). Conclusions AI-enabled ECG acquired during NSR permits rapid identification at point of care of individuals with VPC and has the potential to predict VPC episodes automatically rather than traditional long-time monitoring.

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