基于因果推理-概率矩阵分解的复杂疾病药物-疾病关联和药物重新定位预测

IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL
Jihong Yang, Zheng Li*, Xiaohui Fan, Yiyu Cheng*
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引用次数: 81

摘要

复杂疾病的高发已成为威胁人类健康的世界性问题。在复杂疾病的病理过程中,多个靶点和通路受到干扰。系统地研究药物与疾病之间的复杂关系,是发现新的关联和重新利用药物的必要条件。为此,本文分别构建了心血管疾病、糖尿病和肿瘤的三个因果网络。提出了一种因果推理-概率矩阵分解(CI-PMF)方法来预测和分类药物-疾病关联,并进一步用于药物重新定位预测。首先,从异构数据库中整合药物与疾病的多层次系统关系,构建药物-靶点-途径-基因-疾病的因果网络。然后,通过评估药物对多个靶点和途径的作用来评估药物与疾病之间的关联评分。此外,PMF模型是基于已知的相互作用来学习的,然后通过训练的模型将关联分为三种类型。最后,根据关联评分排序和预测关联类型预测治疗相关性。在药物-疾病关联预测方面,CI-PMF中包含的修正因果推断优于现有因果推断,具有更高的AUC(受试者工作特征曲线下面积)得分和更高的精度。此外,CI-PMF在预测治疗性药物-疾病关联方面优于单一修正的因果推断。在预测相关性的前30%中,58.6%(136/232)、50.8%(31/61)和39.8%(140/352)达到了已知的治疗相关性,而后者的准确率仅为10.2%(231/2264)、8.8%(36/411)和9.7%(189/1948)。进一步对新预测的前100个治疗关联进行临床验证。因此,研究了21、12和32种相关性,并分别对心血管疾病、糖尿病和肿瘤的药物治疗效果进行了研究。我们从这65个经临床验证的关联中提取了因果网络中的相关链,并通过推断链进一步说明了依托度酸在乳腺癌中的治疗作用。总之,CI-PMF是一种将药物与复杂疾病联系起来的有用方法,并为药物重新定位提供了潜在的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Drug–Disease Association and Drug-Repositioning Predictions in Complex Diseases Using Causal Inference–Probabilistic Matrix Factorization

Drug–Disease Association and Drug-Repositioning Predictions in Complex Diseases Using Causal Inference–Probabilistic Matrix Factorization

The high incidence of complex diseases has become a worldwide threat to human health. Multiple targets and pathways are perturbed during the pathological process of complex diseases. Systematic investigation of complex relationship between drugs and diseases is necessary for new association discovery and drug repurposing. For this purpose, three causal networks were constructed herein for cardiovascular diseases, diabetes mellitus, and neoplasms, respectively. A causal inference-probabilistic matrix factorization (CI-PMF) approach was proposed to predict and classify drug–disease associations, and further used for drug-repositioning predictions. First, multilevel systematic relations between drugs and diseases were integrated from heterogeneous databases to construct causal networks connecting drug–target–pathway–gene–disease. Then, the association scores between drugs and diseases were assessed by evaluating a drug’s effects on multiple targets and pathways. Furthermore, PMF models were learned based on known interactions, and associations were then classified into three types by trained models. Finally, therapeutic associations were predicted based upon the ranking of association scores and predicted association types. In terms of drug–disease association prediction, modified causal inference included in CI-PMF outperformed existing causal inference with a higher AUC (area under receiver operating characteristic curve) score and greater precision. Moreover, CI-PMF performed better than single modified causal inference in predicting therapeutic drug–disease associations. In the top 30% of predicted associations, 58.6% (136/232), 50.8% (31/61), and 39.8% (140/352) hit known therapeutic associations, while precisions obtained by the latter were only 10.2% (231/2264), 8.8% (36/411), and 9.7% (189/1948). Clinical verifications were further conducted for the top 100 newly predicted therapeutic associations. As a result, 21, 12, and 32 associations have been studied and many treatment effects of drugs on diseases were investigated for cardiovascular diseases, diabetes mellitus, and neoplasms, respectively. Related chains in causal networks were extracted for these 65 clinical-verified associations, and we further illustrated the therapeutic role of etodolac in breast cancer by inferred chains. Overall, CI-PMF is a useful approach for associating drugs with complex diseases and provides potential values for drug repositioning.

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来源期刊
CiteScore
9.80
自引率
10.70%
发文量
529
审稿时长
1.4 months
期刊介绍: The Journal of Chemical Information and Modeling publishes papers reporting new methodology and/or important applications in the fields of chemical informatics and molecular modeling. Specific topics include the representation and computer-based searching of chemical databases, molecular modeling, computer-aided molecular design of new materials, catalysts, or ligands, development of new computational methods or efficient algorithms for chemical software, and biopharmaceutical chemistry including analyses of biological activity and other issues related to drug discovery. Astute chemists, computer scientists, and information specialists look to this monthly’s insightful research studies, programming innovations, and software reviews to keep current with advances in this integral, multidisciplinary field. As a subscriber you’ll stay abreast of database search systems, use of graph theory in chemical problems, substructure search systems, pattern recognition and clustering, analysis of chemical and physical data, molecular modeling, graphics and natural language interfaces, bibliometric and citation analysis, and synthesis design and reactions databases.
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