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基于大规模12导联心电图数据集的心房颤动检测中多种机器学习方法的优化应用:横断面研究

Optimization of Using Multiple Machine Learning Approaches in Atrial Fibrillation Detection Based on a Large-Scale Data Set of 12-Lead Electrocardiograms: Cross-Sectional Study.

作者信息

Chuang Beau Bo-Sheng, Yang Albert C

机构信息

School of Medicine, National Yang Ming Chiao Tung University, Taipei, Taiwan.

Digital Medicine and Smart Healthcare Research Center, National Yang Ming Chiao Tung University, Taipei, Taiwan.

出版信息

JMIR Form Res. 2024 Mar 11;8:e47803. doi: 10.2196/47803.

Abstract

BACKGROUND

Atrial fibrillation (AF) represents a hazardous cardiac arrhythmia that significantly elevates the risk of stroke and heart failure. Despite its severity, its diagnosis largely relies on the proficiency of health care professionals. At present, the real-time identification of paroxysmal AF is hindered by the lack of automated techniques. Consequently, a highly effective machine learning algorithm specifically designed for AF detection could offer substantial clinical benefits. We hypothesized that machine learning algorithms have the potential to identify and extract features of AF with a high degree of accuracy, given the intricate and distinctive patterns present in electrocardiogram (ECG) recordings of AF.

OBJECTIVE

This study aims to develop a clinically valuable machine learning algorithm that can accurately detect AF and compare different leads' performances of AF detection.

METHODS

We used 12-lead ECG recordings sourced from the 2020 PhysioNet Challenge data sets. The Welch method was used to extract power spectral features of the 12-lead ECGs within a frequency range of 0.083 to 24.92 Hz. Subsequently, various machine learning techniques were evaluated and optimized to classify sinus rhythm (SR) and AF based on these power spectral features. Furthermore, we compared the effects of different frequency subbands and different lead selections on machine learning performances.

RESULTS

The light gradient boosting machine (LightGBM) was found to be the most effective in classifying AF and SR, achieving an average F-score of 0.988 across all ECG leads. Among the frequency subbands, the 0.083 to 4.92 Hz range yielded the highest F-score of 0.985. In interlead comparisons, aVR had the highest performance (F=0.993), with minimal differences observed between leads.

CONCLUSIONS

In conclusion, this study successfully used machine learning methodologies, particularly the LightGBM model, to differentiate SR and AF based on power spectral features derived from 12-lead ECGs. The performance marked by an average F-score of 0.988 and minimal interlead variation underscores the potential of machine learning algorithms to bolster real-time AF detection. This advancement could significantly improve patient care in intensive care units as well as facilitate remote monitoring through wearable devices, ultimately enhancing clinical outcomes.

摘要

背景

心房颤动(AF)是一种危险的心律失常,会显著增加中风和心力衰竭的风险。尽管其严重性,但它的诊断很大程度上依赖于医护人员的专业水平。目前,由于缺乏自动化技术,阵发性房颤的实时识别受到阻碍。因此,一种专门为房颤检测设计的高效机器学习算法可能会带来巨大的临床益处。我们假设,鉴于房颤心电图(ECG)记录中存在的复杂且独特的模式,机器学习算法有潜力以高度准确性识别和提取房颤的特征。

目的

本研究旨在开发一种具有临床价值的机器学习算法,该算法能够准确检测房颤,并比较不同导联在房颤检测中的性能。

方法

我们使用了来自2020年生理信号挑战赛数据集的12导联心电图记录。采用韦尔奇方法在0.083至24.92Hz频率范围内提取12导联心电图的功率谱特征。随后,评估并优化了各种机器学习技术,以基于这些功率谱特征对窦性心律(SR)和房颤进行分类。此外,我们比较了不同频率子带和不同导联选择对机器学习性能的影响。

结果

发现轻梯度提升机(LightGBM)在分类房颤和窦性心律方面最为有效,在所有心电图导联上的平均F分数达到0.988。在频率子带中,0.083至4.92Hz范围产生了最高的F分数0.985。在导联间比较中,aVR表现最佳(F = 0.993),导联之间观察到的差异最小。

结论

总之,本研究成功地使用机器学习方法,特别是LightGBM模型,基于从12导联心电图得出的功率谱特征来区分窦性心律和房颤。平均F分数为0.988且导联间变化最小的性能突出了机器学习算法在加强房颤实时检测方面的潜力。这一进展可以显著改善重症监护病房的患者护理,并通过可穿戴设备促进远程监测,最终改善临床结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ebed/10964144/c2d27c1034d0/formative_v8i1e47803_fig1.jpg

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