结合散射变换和深度神经网络的多标签心电图信号分类

Maximilian P. Oppelt, Maximilian Riehl, Felix P. Kemeth, Jan Steffan
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引用次数: 10

摘要

对心电图信号进行准确分类的关键是提取信息丰富而又具有普遍性的特征,以鉴别疾病。心血管异常表现为不同时间尺度的特征:小尺度的形态学特征,如缺失p波,以及心率尺度上明显的节律特征。出于这个原因,我们在深度残差神经网络(ResNet)中加入了复小波变换的一种变体,称为散射变换。前者的优点是由理论推导而来,使其在输入的某些变换下表现良好。后者已被证明在ECG分类中很有用,允许以端到端方式学习特征提取和分类。通过在散点变换之间加入可训练层,该模型获得了结合不同通道信息的能力,为分类任务提供更多信息特征,并使其适应特定的领域。为了进行评估,我们在2020年物理网络/心脏病学计算挑战赛的官方阶段提交了我们的模型。我们的(Team Triage)方法获得了0.640的挑战验证分数和0.485的完整测试分数,在41个官方排名中排名第4。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Scatter Transform and Deep Neural Networks for Multilabel Electrocardiogram Signal Classification
An essential part for the accurate classification of electrocardiogram (ECG) signals is the extraction of informative yet general features, which are able to discriminate diseases. Cardiovascular abnormalities manifest themselves in features on different time scales: small scale morphological features, such as missing P-waves, as well as rhythmical features apparent on heart rate scales. For this reason we incorporate a variant of the complex wavelet transform, called a scatter transform, in a deep residual neural network (ResNet). The former has the advantage of being derived from theory, making it well behaved under certain transformations of the input. The latter has proven useful in ECG classification, allowing feature extraction and classification to be learned in an end-to-end manner. Through the incorporation of trainable layers in between scatter transforms, the model gains the ability to combine information from different channels, yielding more informative features for the classification task and adapting them to the specific domain. For evaluation, we submitted our model in the official phase in the PhysioNet/Computing in Cardiology Challenge 2020. Our (Team Triage) approach achieved a challenge validation score of 0.640, and full test score of 0.485, placing us 4th out of 41 in the official ranking.
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