Analysis of physicochemical properties of drugs included in anticholinergic rating scales

IF 0.4 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Junko Nagai, H. Kagaya, Y. Uesawa
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引用次数: 1

Abstract

Adverse effects induced by the duplication of drugs with anticholinergic effects are a problem among elderly people who take many drugs. Various anticholinergic rating scales have been published and are applied clinically to evaluate a patient’s anticholinergic burden; however, there are some problems with these scales, such as drugs that are assessed differently between scales. We aimed to construct a method to more correctly distinguish between drugs with and without anticholinergic effects and to understand the properties of drugs that have anticholinergic effects. We constructed a model for identifying anticholinergic effects via a decision tree, using descriptors indicating the physicochemical properties of the drugs. The best split yielded a decision tree with 46 branches (area under the receiver operating characteristic curve = 0.99). However, only seven branches, defined by six descriptors: ASA_P, GCUT_PEOE_0, opr_brigid, PEOE_VSA+1, GCUT_SLOGP_0, vsa_pol (related to van der Waals surface areas, partial charges, and molecule structures), were required to identify drugs with anticholinergic effects. This result suggests a relationship between the hydrophobic interactions of drugs and the muscarinic receptor. In this study, we constructed a model to predict whether drugs have anticholinergic effects, and obtained essential physicochemical information on the drugs to distinguish their anticholinergic effects. It is our hope that these findings provide useful information for predicting anticholinergic effects of drugs in clinical
抗胆碱能评定量表所含药物理化性质分析
具有抗胆碱能作用的药物的重复引起的不良反应是服用多种药物的老年人的一个问题。各种抗胆碱能评分量表已经出版,并应用于临床评估患者的抗胆碱能负担;然而,这些量表存在一些问题,比如不同量表对药物的评估不同。我们旨在建立一种更准确地区分具有和不具有抗胆碱能作用的药物的方法,并了解具有抗胆碱能作用的药物的性质。我们构建了一个模型,通过决策树识别抗胆碱能作用,使用描述符表明药物的物理化学性质。最佳分割产生了一个有46个分支的决策树(接收者工作特征曲线下面积= 0.99)。然而,仅需要由6个描述符定义的7个分支:ASA_P、GCUT_PEOE_0、opr_brigid、PEOE_VSA+1、GCUT_SLOGP_0、vsa_pol(与范德华表面积、部分电荷和分子结构有关)来识别具有抗胆碱能作用的药物。这一结果提示了药物的疏水相互作用与毒蕈碱受体之间的关系。在本研究中,我们构建了一个模型来预测药物是否具有抗胆碱能作用,并获得了药物的基本理化信息来区分其抗胆碱能作用。我们希望这些发现能为临床预测药物的抗胆碱能作用提供有用的信息
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chem-Bio Informatics Journal
Chem-Bio Informatics Journal BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
0.60
自引率
0.00%
发文量
8
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