Generalization Studies of Neural Network Models for Cardiac Disease Detection Using Limited Channel ECG

Deepta Rajan, D. Beymer, Girish Narayan
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引用次数: 9

Abstract

Acceleration of machine learning research in healthcare is challenged by lack of large annotated and balanced datasets. Furthermore, dealing with measurement inaccuracies and exploiting unsupervised data are considered to be central to improving existing solutions. In particular, a primary objective in predictive modeling is to generalize well to both unseen variations within the observed classes, and unseen classes. In this work, we consider such a challenging problem in machine learning driven diagnosis detecting a gamut of cardiovascular conditions (e.g. infarction, dysrhythmia etc.) from limited channel ECG measurements. Though deep neural networks have achieved unprecedented success in predictive modeling, they rely solely on discriminative models that can generalize poorly to unseen classes. We argue that unsupervised learning can be utilized to construct effective latent spaces that facilitate better generalization. This work extensively compares the generalization of our proposed approach against a state-of-the-art deep learning solution. Our results show significant improvements in F1-scores.
有限通道心电检测心脏病的神经网络模型泛化研究
医疗保健领域机器学习研究的加速受到缺乏大型注释和平衡数据集的挑战。此外,处理测量误差和利用无监督数据被认为是改进现有解决方案的核心。特别是,预测建模的一个主要目标是很好地推广到观察类和未见类中不可见的变化。在这项工作中,我们在机器学习驱动的诊断中考虑了这样一个具有挑战性的问题,即从有限通道ECG测量中检测一系列心血管疾病(例如梗死、心律失常等)。尽管深度神经网络在预测建模方面取得了前所未有的成功,但它们完全依赖于判别模型,在未见过的类别中泛化效果很差。我们认为,无监督学习可以用来构建有效的潜在空间,促进更好的泛化。这项工作广泛地比较了我们提出的方法与最先进的深度学习解决方案的泛化。我们的结果显示f1分数有显著提高。
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