生物制药药物配置分类系统(BDDCS)中预测药物溶解度和代谢类别的神经网络模型。

IF 1.9 4区 医学 Q3 PHARMACOLOGY & PHARMACY European Journal of Drug Metabolism and Pharmacokinetics Pub Date : 2024-01-01 Epub Date: 2023-10-21 DOI:10.1007/s13318-023-00861-5
Aryan Ashrafi, Kiarash Teimouri, Farnaz Aghazadeh, Ali Shayanfar
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引用次数: 0

摘要

背景和目的:生物制药药物处置分类系统(BDDCS)根据药物的溶解度和代谢将其分为四类。该框架允许研究生物药物中转运蛋白的药代动力学和酶代谢,以及体内药物相互作用。本研究的目的是通过神经网络模型、结构参数和物理化学性质开发计算模型,以估计BDDCS系统中药物的类别。方法:在本研究中,利用深度学习方法探索人工和卷积神经网络(ANNs和CNNs)在预测721种BDDCS物质类别方面的潜力。用各种软件计算结构参数和物理化学性质[亚伯拉罕溶剂化参数、辛醇-水分配(log P)和pH范围1-7.5(log D)、可旋转键的数量、氢键受体数量以及氢键供体数量]。然后将这些化合物分成由602个分子组成的训练集和由119个化合物组成的测试集,以验证模型。结果:本研究的结果表明,使用药物的应用参数,即log D和Abraham溶剂化参数的神经网络模型能够准确预测BDDCS系统中的溶解度和代谢类别。结论:神经网络模型能够很好地处理药物结构参数和理化性质与BDDCS类别之间的关系。此外,与log P相比,log D是预测BDDCS更合适的参数。
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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Neural Network Models for Predicting Solubility and Metabolism Class of Drugs in the Biopharmaceutics Drug Disposition Classification System (BDDCS).

Background and objective: The biopharmaceutics drug disposition classification system (BDDCS) categorizes drugs into four classes on the basis of their solubility and metabolism. This framework allows for the study of the pharmacokinetics of transporters and enzymatic metabolization on biopharmaceuticals, as well as drug-drug interactions in the body. The objective of the present study was to develop computational models by neural network models and structural parameters and physicochemical properties to estimate the class of a drug in the BDDCS system.

Methods: In this study, deep learning methods were utilized to explore the potential of artificial and convolutional neural networks (ANNs and CNNs) in predicting the BDDCS class of 721 substances. The structural parameters and physicochemical properties [Abraham solvation parameters, octanol-water partition (log P) and over the pH range 1-7.5 (log D), number of rotatable bonds, hydrogen bond acceptor numbers, as well as hydrogen bond donor count] are calculated with various software. These compounds were then split into a training set consisting of 602 molecules and a test set of 119 compounds to validate the models.

Results: The results of this study showed that neural network models using applied parameters of the drug, i.e., log D and Abraham solvation parameters, are able to predict the class of solubility and metabolism in the BDDCS system with good accuracy.

Conclusions: Neural network models are well equipped to deal with the relations between the structural parameters and physicochemical properties of drugs and BDDCS classes. In addition, log D is a more suitable parameter compared with log P in predicting BDDCS.

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来源期刊
CiteScore
3.70
自引率
0.00%
发文量
64
审稿时长
>12 weeks
期刊介绍: Hepatology International is a peer-reviewed journal featuring articles written by clinicians, clinical researchers and basic scientists is dedicated to research and patient care issues in hepatology. This journal focuses mainly on new and emerging diagnostic and treatment options, protocols and molecular and cellular basis of disease pathogenesis, new technologies, in liver and biliary sciences. Hepatology International publishes original research articles related to clinical care and basic research; review articles; consensus guidelines for diagnosis and treatment; invited editorials, and controversies in contemporary issues. The journal does not publish case reports.
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