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基于关联规则结合贝叶斯网络的症状与证型贡献度相关性研究:新型冠状病毒肺炎肺湿热蕴结证

[Correlation between symptoms and their contribution to syndrome based on association rule combined with Bayesian network: syndrome of lung damp-heat accumulation in coronavirus disease 2019].

作者信息

Li Jiansheng, Chun Liu, Feng Zhenzhen, Zhao Hulei, Xie Yang, Sun Boqian, Liu Wenrui

机构信息

Co-construction Collaborative Innovation Center for Chinese Medicine and Respiratory Diseases by Henan and Education Ministry of China, Henan Key Laboratory of Chinese Medicine for Respiratory Disease, Zhengzhou 450046, Henan, China.

Department of Respiratory, the First Affiliated Hospital of Henan University of Chinese Medicine, Zhengzhou 450000, Henan, China. Corresponding author: Li Jiansheng, Email:

出版信息

Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2020 Sep;32(9):1045-1050. doi: 10.3760/cma.j.cn121430-20200619-00923.

Abstract

OBJECTIVE

To explore the correlation between symptoms and their contribution to syndrome based on syndrome of lung damp-heat accumulation in coronavirus disease 2019 (COVID-19), thus to provide methodological basis for the syndrome diagnosis.

METHODS

Based on 654 clinical investigation questionnaires data of COVID-19 patients, a model based on syndrome of lung damp-heat accumulation was set. Using SPSS Modeler 14.1 software, association rules and Bayesian network were applied to explore the correlation between symptoms and their contribution to syndrome.

RESULTS

There were 121 questionnaires referring to syndrome of lung damp-heat accumulation in total 654 questionnaires. The symptoms with frequency > 40% were fever (53.72%), cough (47.93%), red tongue (45.45%), rapid pulse (43.80%), greasy fur (42.15%), yellow tongue (41.32%), fatigue (40.50%) and anorexia (40.50%). Association rule analysis showed that the symptom groups with strong binomial correlation included fever, thirst, chest tightness, shortness of breath, cough, yellow phlegm, etc. The symptom groups with strong trinomial correlation included cough, yellow phlegm, phlegm sticky, anorexia, vomiting, heavy head and body, fever, thirst, fatigue, etc. Based on SPSS Modeler 14.1 software, with syndrome of lung damp-heat accumulation (yes = 1, no = 0) as target variable, and the selected symptoms with frequency > 15.0% as input variables, the Bayesian network model was established to obtain the probability distribution table of symptoms (groups), in which there was only one parent node (the upper node of each input variable) of fever, and the conditional probability was 0.54. The parent node of cough had yellow phlegm and syndrome of lung damp-heat accumulation, indicating that there was a direct causal relationship between cough and yellow phlegm in syndrome of lung damp-heat accumulation, and the conditional probability of cough was 0.99 under the condition of yellow phlegm. The common symptom groups and their contribution to syndrome were as follows: fever and thirsty (0.47), cough and yellow phlegm (0.49), chest tightness and polypnea (0.46), anorexia and heavy cumbersome head and body (0.61), yellow greasy fur and slippery rapid pulse (0.95).

CONCLUSIONS

It is feasible and objective to analyze the correlation between symptoms and their contribution to syndromes by association rules combined with Bayesian network. It could provide methodological basis for the syndrome diagnosis.

摘要

目的

基于新型冠状病毒肺炎(COVID-19)肺湿热蕴结证探讨症状及其对证型的贡献度之间的相关性,从而为证型诊断提供方法学依据。

方法

基于654例COVID-19患者的临床调查问卷数据,构建肺湿热蕴结证模型。运用SPSS Modeler 14.1软件,采用关联规则和贝叶斯网络探索症状及其对证型的贡献度之间的相关性。

结果

654份调查问卷中,共121份提及肺湿热蕴结证。出现频率>40%的症状有发热(53.72%)、咳嗽(47.93%)、舌红(45.45%)、脉数(43.80%)、苔腻(42.15%)、苔黄(41.32%)、乏力(40.50%)和纳差(40.50%)。关联规则分析显示,二元强关联症状组包括发热、口渴、胸闷、气短、咳嗽、黄痰等。三元强关联症状组包括咳嗽、黄痰、痰黏、纳差、呕吐、头身困重、发热、口渴、乏力等。基于SPSS Modeler 14.1软件,以肺湿热蕴结证(是=1,否=0)为目标变量,将出现频率>15.0%的所选症状作为输入变量,建立贝叶斯网络模型,得到症状(组)的概率分布表,其中发热仅有1个父节点(各输入变量的上级节点),条件概率为0.54。咳嗽的父节点有黄痰和肺湿热蕴结证,表明肺湿热蕴结证中咳嗽与黄痰之间存在直接因果关系,黄痰条件下咳嗽的条件概率为0.99。常见症状组及其对证型的贡献度如下:发热口渴(0.47)、咳嗽黄痰(0.49)、胸闷气短(0.46)、纳差头身困重(0.61)、黄腻苔滑数脉(0.95)。

结论

采用关联规则结合贝叶斯网络分析症状及其对证型的贡献度具有可行性和客观性,可为证型诊断提供方法学依据。

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