用于长期心电图临床噪音分类的深度可解释学习方法。

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Roberto HolgadoCuadrado, Carmen PlazaSeco, Lisandro Lovisolo, Manuel BlancoVelasco
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引用次数: 0

摘要

目的:在长期监测(LTM)中,噪声会严重影响心电图(ECG)的质量,给准确诊断和耗时的分析带来挑战。噪声的临床严重程度是指解读心电图临床内容的难度,这与传统的基于定量严重程度的方法不同。在之前的研究中,我们使用根据临床严重程度标记的数据存储库训练了机器学习(ML)算法。在这项工作中,我们在同一数据库中探索深度学习(DL)模型,以设计出能为决策过程提供可解释性的架构:我们开发了两套卷积神经网络(CNN):从零开始设计的一维 CNN 模型,以及通过迁移学习进行微调的预训练二维 CNN。此外,我们还设计了两种自动编码器(AE)架构,通过利用潜在空间中的数据区域化来提供模型的可解释性:结果:DL 系统的分类性能优于之前的 ML 方法,在测试集中的 F1 分数高达 0.84,同时考虑到了患者分离以避免患者内部的过度拟合。可解释架构表现出相似的性能,但具有定性解释的优势:事实证明,DL 与可解释系统的整合在对 LTM 心电图记录中的临床噪音进行分类时非常有效。这种方法可以增强临床医生对基于学习方法的临床决策支持系统的信心,这也是技术转让的关键点:建议的系统可帮助医护人员分辨心电图中包含有诊断价值信息的部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep and Interpretable Learning Approach for Long-Term ECG Clinical Noise Classification.

Objective: In Long-Term Monitoring (LTM), noise significantly impacts the quality of the electrocardiogram (ECG), posing challenges for accurate diagnosis and time-consuming analysis. The clinical severity of noise refers to the difficulty in interpreting the clinical content of the ECG, in contrast to the traditional approach based on quantitative severity. In a previous study, we trained Machine Learning (ML) algorithms using a data repository labeled according to the clinical severity. In this work, we explore Deep Learning (DL) models in the same database to design architectures that provide explainability of the decision making process.

Methods: We have developed two sets of Convolutional Neural Networks (CNNs): a 1-D CNN model designed from scratch, and pre-trained 2-D CNNs fine-tuned through transfer learning. Additionally, we have designed two Autoencoder (AE) architectures to provide model interpretability by exploiting the data regionalization in the latent spaces.

Results: The DL systems yield superior classification performance than the previous ML approaches, achieving an F1-score up to 0.84 in the test set considering patient separation to avoid intra-patient overfitting. The interpretable architectures have shown similar performance with the advantage of qualitative explanations.

Conclusions: The integration of DL and interpretable systems has proven to be highly effective in classifying clinical noise in LTM ECG recordings. This approach can enhance clinicians' confidence in clinical decision support systems based on learning methods, a key point for this technology transfer.

Significance: The proposed systems can help healthcare professionals to discriminate the parts of the ECG that contain valuable information to provide a diagnosis.

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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
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