变应性鼻炎穴位电学特性的研究

M. Yeh, Hao-Feng Luo, Nai-Wei Lin, Zen Chen, C. Yeh
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引用次数: 3

摘要

过敏性鼻炎是一种世界性的常见病。皮肤电筛查装置(EDSD)是一种可以测量穴位电特性的装置。本文通过一系列基于机器学习算法的实验,研究利用EDSD诊断变应性鼻炎的可行性。实验结果表明,对于是否存在变应性鼻炎,使用k近邻分类算法,准确率可达到93.26%,使用支持向量机分类算法,平均准确率可达到97.78%。实验结果还表明,分别使用k-means聚类算法和Ward分层聚类算法将数据聚为3类,87%的数据聚类一致。这三组的平均总症状得分也非常一致。基于87%一致聚类的数据,使用支持向量机算法评估变应性鼻炎的严重程度(轻度和中度/重度),平均准确率可达到99.57%。特别是,实验结果还表明,脾经和肝经穴位的紊乱EDSD值与标准中医的临床经验相吻合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study on electrical properties of acupuncture points in allergic rhinitis
Allergic rhinitis is a prevalent disease throughout the world. Electrodermal screening devices (EDSD) are devices that can measure the electrical properties of acupuncture points. This paper performs a series of experiments based on machine learning algorithms to study the feasibility of utilizing EDSD to diagnose allergic rhinitis. The experimental result shows that, to assess the presence of allergic rhinitis, using the k-nearest neighbor classification algorithm, the accuracy can achieve 93.26%, and using the support vector machine classification algorithm, the average accuracy can achieve 97.78%. The experimental result also shows that using, respectively, the k-means clustering algorithm and the Ward's hierarchical clustering algorithm to cluster the data into three clusters, 87% of the data are consistently clustered. The average total symptom scores in these three clusters are also very consistent. Based on the 87% consistently clustered data, using the support vector machine algorithm to assess the severity (mild and moderate/severe) of allergic rhinitis, the average accuracy can achieve 99.57%. In particular, the experimental result also shows that the disordered EDSD values at acupuncture points of spleen meridian and liver meridian coincides with the clinic experiences of standard traditional Chinese medicine.
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