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基于组合数据驱动方法和机器学习算法的中药抗菌活性预测模型:构建与验证

Antibacterial Activity Prediction Model of Traditional Chinese Medicine Based on Combined Data-Driven Approach and Machine Learning Algorithm: Constructed and Validated.

作者信息

Li Jin-Tong, Wei Ya-Wen, Wang Meng-Yu, Yan Chun-Xiao, Ren Xia, Fu Xian-Jun

机构信息

Institute of Traditional Chinese Medicine Literature and Culture, Shandong University of Traditional Chinese Medicine, Jinan, China.

Marine Traditional Chinese Medicine Research Center, Shandong University of Traditional Chinese Medicine, Qingdao Academy of Traditional Chinese Medical Science, Qingdao, China.

出版信息

Front Microbiol. 2021 Nov 22;12:763498. doi: 10.3389/fmicb.2021.763498. eCollection 2021.

DOI:10.3389/fmicb.2021.763498
PMID:34880839
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8645695/
Abstract

Traditional Chinese medicines (TCMs), as a unique natural medicine resource, were used to prevent and treat bacterial diseases in China with a long history. To provide a prediction model of screening antibacterial TCMs for the design and discovery of novel antibacterial agents, the literature about antibacterial TCMs in the China National Knowledge Infrastructure (CNKI) and Web of Science database was retrieved. The data were extracted and standardized. A total of 28,786 pieces of data from 904 antibacterial TCMs were collected. The data of plant medicine were the most numerous. The result of association rules mining showed a high correlation between antibacterial activity with cold nature, bitter and sour tastes, hemostatic, and purging fire efficacies. Moreover, TCMs with antibacterial activity showed a specific aggregation in the phylogenetic tree; 92% of them came from Tracheophyta, of which 74% were mainly concentrated in rosids, asterids, Liliopsida, and Ranunculales. The prediction models of anti- and anti- activity, with AUC values (the area under the ROC curve) of 77.5 and 80.0%, respectively, were constructed by the Neural Networks (NN) algorithm after Bagged Classification and Regression Tree (Bagged CART) and Linear Discriminant Analysis (LDA) selection. The experimental results showed the prediction accuracy of these two models was 75 and 60%, respectively. Four TCMs (Cirsii Japonici Herba Carbonisata, Changii Radix, Swertiae Herba, Callicarpae Formosanae Folium) were proposed for the first time to show antibacterial activity against and/or . The results implied that the prediction model of antibacterial activity of TCMs based on properties and families showed certain prediction ability, which was of great significance to the screening of antibacterial TCMs and can be used to discover novel antibacterial agents.

摘要

中药作为一种独特的天然药物资源,在中国用于预防和治疗细菌性疾病已有悠久历史。为了提供一种筛选抗菌中药的预测模型,以用于新型抗菌剂的设计和发现,检索了中国知网(CNKI)和科学网数据库中有关抗菌中药的文献。对数据进行提取和标准化处理。共收集了来自904种抗菌中药的28786条数据。其中植物药的数据最多。关联规则挖掘结果表明,抗菌活性与寒性、苦味和酸味、止血及泻火功效之间存在高度相关性。此外,具有抗菌活性的中药在系统发育树中呈现出特定的聚集性;其中92%来自维管植物,其中74%主要集中在蔷薇类、菊类、百合纲和毛茛目。在经过装袋分类回归树(Bagged CART)和线性判别分析(LDA)选择后,采用神经网络(NN)算法构建了抗[具体细菌1]和抗[具体细菌2]活性的预测模型,其AUC值(ROC曲线下面积)分别为77.5%和80.0%。实验结果表明,这两个模型的预测准确率分别为75%和60%。首次提出四种中药(炒大蓟、长梗扁桃、当药、台湾紫珠叶)对[具体细菌1]和/或[具体细菌2]具有抗菌活性。结果表明,基于特性和科属的中药抗菌活性预测模型具有一定的预测能力,这对于抗菌中药的筛选具有重要意义,可用于发现新型抗菌剂。

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