长期心电监测潜在空间的主动学习:形态学和节律分析

IF 4.9 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Roberto Holgado–Cuadrado , Carmen Plaza–Seco , Francisco Manuel Melgarejo-Meseguer , José Luis Rojo-Álvarez , Manuel Blanco–Velasco
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引用次数: 0

摘要

基于深度学习的心电图(ECG)处理系统为高级心脏分析提供了潜力。然而,这些系统经常遇到重大挑战,例如标记数据的稀缺性,这影响了它们的性能、可靠性和与临床实践的整合。本研究旨在通过提出一种主动学习(AL)方法来优化数据标记,减少标注工作量,同时提高模型性能,从而解决这些挑战。我们在三个不同的应用中评估人工智能方法:(1)使用合成数据进行窦性心律分类;(2)利用真实条件下获得的长期心电监测库进行临床噪声严重程度分类;(3)使用金标准数据集和专家注释进行心波描绘,这些数据集来自公开可用的PhysioNet QT数据库(QTDB)和Lobachevsky大学ECG数据库(LUDB)。在每个分类任务中,我们提出的人工智能框架集成了一个基于自编码器的神经网络,该自编码器为决策过程的可解释性生成了一个可视化的潜在空间。系统在潜在空间中使用边际采样策略迭代选择信息量最大的实例,并将其纳入训练过程以改进性能。结果表明,人工智能方法在准确率、召回率和f1得分方面始终优于随机样本选择。此外,ECG在线分析表明,即使在较小的实验数据集子集上训练,使用人工智能策略训练的模型也优于以前的研究。这种方法可以减少临床医生的标记工作量,帮助有效地增加标记数据,提高模型性能,培养对决策支持系统的信心,并推进心电图分析应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active learning in latent spaces for long-term ECG monitoring: Morphology and rhythm analysis
Electrocardiogram (ECG) processing systems based on deep learning offer potential for advanced cardiac analysis. However, these systems often encounter significant challenges, such as the scarcity of labeled data, which affects their performance, reliability, and integration into clinical practice. This study aims to address these challenges by proposing an Active Learning (AL) methodology to optimize data labeling, reducing annotation effort while improving model performance. We evaluate the AL approach across three distinct applications: (1) sinus rhythm beat classification using synthetic data; (2) clinical severity of noise classification with a long-term ECG monitoring repository acquired under real conditions; and (3) cardiac wave delineation using a gold-standard dataset with expert annotations from the publicly available PhysioNet QT Database (QTDB) and the Lobachevsky University ECG Database (LUDB). In each classification task, our proposed AL framework integrates a neural network based on an autoencoder that generates a visualizable latent space for explainability into the decision-making process. The system iteratively selects the most informative instances using a margin sampling strategy in the latent space and incorporates them into the training process to refine performance. Results demonstrate that the AL approach consistently outperforms random sample selection in precision, recall, and F1-score. Additionally, ECG in-line analysis shows that models trained with the AL strategy outperform those from previous studies, even when trained on smaller subsets of the experimental datasets. This approach can reduce the labeling workload of clinicians, helping to efficiently increase labeled data, improve model performance, foster confidence in decision support systems, and advance ECG analysis applications.
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来源期刊
Biomedical Signal Processing and Control
Biomedical Signal Processing and Control 工程技术-工程:生物医学
CiteScore
9.80
自引率
13.70%
发文量
822
审稿时长
4 months
期刊介绍: Biomedical Signal Processing and Control aims to provide a cross-disciplinary international forum for the interchange of information on research in the measurement and analysis of signals and images in clinical medicine and the biological sciences. Emphasis is placed on contributions dealing with the practical, applications-led research on the use of methods and devices in clinical diagnosis, patient monitoring and management. Biomedical Signal Processing and Control reflects the main areas in which these methods are being used and developed at the interface of both engineering and clinical science. The scope of the journal is defined to include relevant review papers, technical notes, short communications and letters. Tutorial papers and special issues will also be published.
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