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Heart Rate Topic Models

机译:心率主题模型

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摘要

A key challenge in reducing the burden of cardiovascular disease is matching patients to treatments that are most appropriate for them. Different cardiac assessment tools have been developed to address this goal. Recent research has focused on heart rate motifs, i.e., short-term heart rate sequences that are over-or under-represented in long-term electrocardiogram (ECG) recordings of patients experiencing cardiovascular outcomes, which provide novel and valuable information for risk stratification. However, this approach can leverage only a small number of motifs for prediction and results in difficult to interpret models. We address these limitations by identifying latent structure in the large numbers of motifs found in long-term ECG recordings. In particular, we explore the application of topic models to heart rate time series to identify functional sets of heart rate sequences and to concisely describe patients using task-independent features for various cardiovascular outcomes. We evaluate the approach on a large collection of real-world ECG data, and investigate the performance of topic mixture features for the prediction of cardiovascular mortality. The topics provided an interpretable representation of the recordings and maintained valuable information for clinical assessment when compared with motif frequencies, even after accounting for commonly used clinical risk scores.
机译:降低心血管疾病负担的关键挑战与患者匹配,治疗最适合他们的治疗。已经制定了不同的心脏评估工具来解决这一目标。最近的研究专注于心率图案,即短期心率序列,这些短期心率序列在经历心血管结果的患者的长期心电图(ECG)记录中,为风险分层提供了新颖和有价值的信息。然而,这种方法可以仅利用少量的图案进行预测,并导致难以解释模型。我们通过在长期ECG录制中发现的大量主题中识别潜在结构来解决这些限制。特别是,我们探讨了主题模型的应用于心率时间序列,以识别心率序列功能集,并简明地描述使用独立性功能的患者进行各种心血管结果。我们评估了大量现实世界ECG数据的方法,并调查主题混合功能的性能,以预测心血管死亡率。该主题提供了录音的可解释表示,并在与主题频率相比时保持临床评估的宝贵信息,即使在核算常用的临床风险评分后也是如此。

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