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Classification of TCM Pulse Diagnoses Based on Pulse and Periodic Features from Personal Health Data

机译:基于个人健康数据的脉搏和周期性特征的中医脉诊分类

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Pulse diagnosis is one of the diagnostic methods in traditional Chinese medicine (TCM). Such diagnoses are made subjectively by a TCM doctor, who requires expert knowledge. If pulse diagnosis could be automated, it would be beneficial for health management. In our previous study, we showed that pulse diagnosis might be related to personal health data, such as step count and sleep score. In this study, we propose a new approach to classifying pulse diagnoses based on a combination of features from pulse and health data. Pulse characteristics are extracted from electronically recorded pulse shapes, and health data feature analysis is augmented by considering the periodicity of daily health metrics. Using these features, we perform both single- and multi-label classifications, and investigate the possibility to improve classification accuracy. We further adopt two classification methods for multi-label classification: random forests and deep learning. Our results show that our approach improves classification accuracy for pulse diagnoses.
机译:脉冲诊断是中医(TCM)的一种诊断方法。此类诊断由需要专业知识的中医主观进行。如果可以自动进行脉搏诊断,那么对健康管理将是有益的。在我们以前的研究中,我们表明脉搏诊断可能与个人健康数据有关,例如步数和睡眠评分。在这项研究中,我们提出了一种基于脉搏和健康数据特征组合的脉搏诊断分类的新方法。从电子记录的脉冲形状中提取脉搏特征,并通过考虑每日健康指标的周期性来增强健康数据特征分析。使用这些功能,我们可以执行单标签和多标签分类,并研究提高分类准确性的可能性。对于多标签分类,我们进一步采用了两种分类方法:随机森林和深度学习。我们的结果表明,我们的方法提高了脉冲诊断的分类准确性。

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