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Advances in Patient Classification for Traditional Chinese Medicine: A Machine Learning Perspective

机译:机器学习视角的中医患者分类研究进展

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摘要

As a complementary and alternative medicine in medical field, traditional Chinese medicine (TCM) has drawn great attention in the domestic field and overseas. In practice, TCM provides a quite distinct methodology to patient diagnosis and treatment compared to western medicine (WM). Syndrome (ZHENG or pattern) is differentiated by a set of symptoms and signs examined from an individual by four main diagnostic methods: inspection, auscultation and olfaction, interrogation, and palpation which reflects the pathological and physiological changes of disease occurrence and development. Patient classification is to divide patients into several classes based on different criteria. In this paper, from the machine learning perspective, a survey on patient classification issue will be summarized on three major aspects of TCM: sign classification, syndrome differentiation, and disease classification. With the consideration of different diagnostic data analyzed by different computational methods, we present the overview for four subfields of TCM diagnosis, respectively. For each subfield, we design a rectangular reference list with applications in the horizontal direction and machine learning algorithms in the longitudinal direction. According to the current development of objective TCM diagnosis for patient classification, a discussion of the research issues around machine learning techniques with applications to TCM diagnosis is given to facilitate the further research for TCM patient classification.
机译:作为医学领域的补充和替代医学,中药在国内和国外引起了极大的关注。在实践中,与西医(WM)相比,中医为患者的诊断和治疗提供了一种截然不同的方法。综合征(ZHENG或模式)的特征是通过四种主要的诊断方法从个体身上检查出一系列症状和体征:检查,听诊和嗅觉,审问和触诊,这些反应反映了疾病发生和发展的病理和生理变化。患者分类是根据不同的标准将患者分为几类。本文从机器学习的角度,对患者分类问题进行了调查,总结了中医的三个主要方面:体征分类,综合征辨别和疾病分类。考虑到通过不同计算方法分析的不同诊断数据,我们分别概述了中医诊断的四个子领域。对于每个子字段,我们设计一个矩形参考列表,其中包含水平方向的应用程序和纵向方向的机器学习算法。根据针对患者分类的客观中医诊断的最新发展,围绕机器学习技术及其在中医诊断中的应用进行了研究,以促进对中医患者分类的进一步研究。

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