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Summarizing Professor Chen Ruquan's Therapeutic Experience of Thyroid Disease Based on Machine Learning

机译:陈如泉教授基于机器学习的甲状腺疾病治疗经验总结

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Objectives: To summarize the clinical experience of Professor Chen Ruquan in the treatment of thyroid disease. Technology or Method: All published literatures about Professor Chen Ruquan in the treatment of thyroid disease were searched and collected through computer retrieval; a comprehensive literature search was conducted from four databases including CNKI, VIP, Wan-Fang Database, and China Biological Database. The clinical cases were extracted by applying NLP technology from the included literatures. The machine learning algorithms such as Association rules and Hierarchical Cluster analysis were applied through R software 3.6. Results: A total of 71 clinical cases for thyroid disease related with Professor Chen were included in the final analysis, involving 144 prescriptions with 190 herbs. The top three high-frequency drugs were Chi Shao (Radix Paeoniae Rubra), Gan Cao (Radix Glycyrrhizae) and Zhe Beimu (Bulbus Fritillariae Thunbergii). Nine pairs of couplet herbs and twenty four groups of 3-herb combinations were respectively obtained. The cluster analysis showed that 8 groups of combinational herbs were obtained, 3 new prescriptions were acquired. Conclusions: Professor Chen's ideology of syndrome differentiation and treatment was flexible and diverse, and innovated on the basis of syndrome differentiation of etiology combination with zang-fu viscera. He treated thyroid diseases with many medicinal forms and took dispersing stagnated liver qi and removing blood stasis as treatment method and has received the good effect. Clinical or Biological Impact: This paper would help related scholars to uphold and deepen the research of inheriting the academic experience based on machine learning, and the effective clinical experience would be provided for young clinicians and even patients on the treatment of thyroid disease.
机译:目的:总结陈如泉教授治疗甲状腺疾病的临床经验。技术或方法:通过计算机检索检索和收集有关陈如泉教授治疗甲状腺疾病的所有文献;从包括CNKI,VIP,万方数据库和中国生物数据库在内的四个数据库中进行了全面的文献检索。通过应用NLP技术从所包括的文献中提取临床病例。通过R软件3.6应用了诸如关联规则和层次聚类分析之类的机器学习算法。结果:最终分析共纳入与陈教授相关的71例甲状腺疾病临床病例,涉及144种处方和190种草药。排名前三位的高频药物是赤少(Paeoniae Rubra),甘草(甘草)和浙贝母(Bulbus Fritillariae Thunbergii)。分别获得九对对联草药和二十四组三草药组合。聚类分析表明,共获得了8组中草药组合,获得了3个新处方。结论:陈教授的辨证论治思想灵活多样,在病因辨证结合脏z内脏的基础上进行了创新。他以多种药物治疗甲状腺疾病,以散瘀止血,祛瘀为治法,取得了良好的疗效。临床或生物学影响:本文将帮助相关学者坚持和深化基于机器学习的继承学术经验的研究,并将为年轻的临床医生甚至甲状腺疾病的患者提供有效的临床经验。

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