Intelligent Detection of Arrhythmia Episodes in Dialysis Patients

Sergio Pinto Gomes Junior, J. Souza Filho, F. Henriques, M. Tcheou
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Abstract

This work discusses the design of an automatic detector of arrhythmia episodes in patients submitted to dialysis. The system aims to operate on portable devices in real-time, allowing a faster response of healthcare workers to possible intercurrence episodes. The detection is based on processing short windows of samples extracted from the electrocardiogram signal around the R-wave peak in raw format. A comprehensive study evaluating several classification techniques and class-imbalance strategies is conducted based on the MIT-BIH Arrhythmia Database. Besides, a new procedure for tuning the sample window length based on an experimental feature importance cumulative distribution is proposed. Results show that a Random Forest classifier, trained with minority class oversampling, is cost-effective regarding complexity and computational cost, achieving an accuracy of 98.7% for windows sizes as small as 105 samples.
透析患者心律失常发作的智能检测
本文讨论了透析患者心律失常发作自动检测器的设计。该系统的目标是在便携式设备上实时操作,使卫生保健工作者能够更快地对可能的交互事件作出反应。检测是基于处理短窗口的样本提取的心电图信号周围的r波峰值在原始格式。基于MIT-BIH心律失常数据库,对几种分类技术和分类失衡策略进行了综合评估。此外,提出了一种基于实验特征重要性累积分布的样本窗长度调整方法。结果表明,使用少数类过采样训练的随机森林分类器在复杂度和计算成本方面具有成本效益,对于小至105个样本的窗口大小,准确率达到98.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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