Learning EKG Diagnostic Models with Hierarchical Class Label Dependencies.

Junheng Wang, Milos Hauskrecht
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Abstract

Electrocardiogram (EKG/ECG) is a key diagnostic tool to assess patient's cardiac condition and is widely used in clinical applications such as patient monitoring, surgery support, and heart medicine research. With recent advances in machine learning (ML) technology there has been a growing interest in the development of models supporting automatic EKG interpretation and diagnosis based on past EKG data. The problem can be modeled as multi-label classification (MLC), where the objective is to learn a function that maps each EKG reading to a vector of diagnostic class labels reflecting the underlying patient condition at different levels of abstraction. In this paper, we propose and investigate an ML model that considers class-label dependency embedded in the hierarchical organization of EKG diagnoses to improve the EKG classification performance. Our model first transforms the EKG signals into a low-dimensional vector, and after that uses the vector to predict different class labels with the help of the conditional tree structured Bayesian network (CTBN) that is able to capture hierarchical dependencies among class variables. We evaluate our model on the publicly available PTB-XL dataset. Our experiments demonstrate that modeling of hierarchical dependencies among class variables improves the diagnostic model performance under multiple classification performance metrics as compared to classification models that predict each class label independently.

学习具有分层类标签依赖关系的心电图诊断模型。
心电图(EKG/ECG)是评估患者心脏状况的重要诊断工具,在患者监护、手术支持、心脏医学研究等临床应用中有着广泛的应用。随着机器学习(ML)技术的最新进展,人们对基于过去的心电图数据开发支持自动心电图解释和诊断的模型越来越感兴趣。该问题可以建模为多标签分类(MLC),其目标是学习一个函数,该函数将每个心电图读数映射到反映不同抽象级别的潜在患者状况的诊断类标签向量。在本文中,我们提出并研究了一种ML模型,该模型考虑了嵌入在EKG诊断层次组织中的类标签依赖关系,以提高EKG分类性能。我们的模型首先将心电图信号转换为低维向量,然后在能够捕获类变量之间的层次依赖关系的条件树结构贝叶斯网络(CTBN)的帮助下,使用该向量来预测不同的类标签。我们在公开可用的PTB-XL数据集上评估我们的模型。我们的实验表明,与独立预测每个类标签的分类模型相比,在多个分类性能指标下,类变量之间的分层依赖关系建模提高了诊断模型的性能。
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