中医经络不完整数据的可视化分析

Jiamin Yuan, Jiachang Chen, Li Huang, Fuping Xu, Mary Yang, Shixing Yan, Guozheng Li, Zhimin Yang
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引用次数: 3

摘要

为了寻找人体经络的变化规律,并证明其与中医理论的一致性,我们收集了10名志愿者2年72个穴位的电导系列数据。本文采用可视化分析的方法来寻找规律,因为它是在确定研究对象之前发现变化规律的好方法。由于收集两年的数据是一项艰巨的工作,因此该数据不完整且存在缺失值。传统上,研究必须去除不完整的样本。本文提出了一种利用贝叶斯主成分分析(BPCA)算法估计子午线数据缺失值并将缺失值可视化的新方法。利用该方法,发现了经络电导数据的一些有用的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualized analysis of incomplete TCM meridian conductance data
In order to find the change laws of human meridian and to prove the laws' consistency with Traditional Chinese Medicine theory, conductance series data of 72 acupoints from 10 volunteers was collected for 2 years. Visualized analysis method is used in this paper to find the laws, as it a good way to find change laws before there's a definite research target. As it is a tough job to collect data form two years, this data is incomplete and has missing values. Traditionally, researches have to remove the incomplete samples. In this article, we put forward a novel method which estimates missing values in meridian dataset with Bayesian principal component analysis (BPCA) algorithm first and then visualize these values. With the proposed method, some useful characteristics of meridian conductance data were found.
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