结合工业吸收、分布、代谢和排泄数据集的多任务深度学习模型以提高泛化。

IF 4.5 2区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Molecular Pharmaceutics Pub Date : 2025-04-07 Epub Date: 2025-03-07 DOI:10.1021/acs.molpharmaceut.4c01086
Joseph A Napoli, Michael Reutlinger, Patricia Brandl, Wenyi Wang, Jérôme Hert, Prashant Desai
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引用次数: 0

摘要

化合物的吸收、分布、代谢和排泄(ADME)谱的优化对药物发现过程至关重要。因此,ADME的机器学习(ML)模型被广泛用于优先设计和合成化合物。ADME的ML模型的有效性取决于药物发现团队正在探索的与新兴化学空间相关的各种化合物的高质量实验数据的可用性。为此,将来自Genentech和Roche的ADME数据集结合起来,评估扩展化学空间对ML模型性能的影响,这是此类大规模历史ADME数据集的首次实验。合并后的ADME数据集由分布在11个分析终点的超过100万个个体测量数据组成。我们利用多任务(MT)神经网络架构,可以同时对多个端点进行建模,从而利用相互连接的ADME端点之间的信息传输。对单站点和跨站点的MT模型进行训练,并与单站点、单任务基线模型进行比较。考虑到两个位点测定方案的差异,不同位点对应终点的数据被建模为单独的任务。模型根据代表不同程度外推难度的测试集进行评估,包括基于聚类的、时间的和外部的测试集。我们发现,与单站点模型相比,跨站点的MT模型似乎提供了更大的泛化能力。对于相对“遥远”的外部和时间测试集,跨站点机器翻译模型的性能改进更为明显,表明其适用范围扩大。这里描述的数据交换练习展示了从多个来源的ADME数据中扩展学习的价值,而不需要在实验方法不同时聚合这些数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multitask Deep Learning Models of Combined Industrial Absorption, Distribution, Metabolism, and Excretion Datasets to Improve Generalization.

The optimization of absorption, distribution, metabolism, and excretion (ADME) profiles of compounds is critical to the drug discovery process. As such, machine learning (ML) models for ADME are widely used for prioritizing the design and synthesis of compounds. The effectiveness of ML models for ADME depends on the availability of high-quality experimental data for a diverse set of compounds that is relevant to the emerging chemical space being explored by the drug discovery teams. To that end, ADME data sets from Genentech and Roche were combined to evaluate the impact of expanding the chemical space on the performance of ML models, a first experiment of its kind for large-scale, historical ADME data sets. The combined ADME data set consisted of over 1 million individual measurements distributed across 11 assay end points. We utilized a multitask (MT) neural network architecture that enables the modeling of multiple end points simultaneously and thereby exploits information transfer between interconnected ADME end points. Both single- and cross-site MT models were trained and compared against single-site, single-task baseline models. Given the differences in assay protocols across the two sites, the data for corresponding end points across sites were modeled as separate tasks. Models were evaluated against test sets representing varying degrees of extrapolation difficulty, including cluster-based, temporal, and external test sets. We found that cross-site MT models appeared to provide a greater generalization capacity compared to single-site models. The performance improvement of the cross-site MT models was more pronounced for the relatively "distant" external and temporal test sets, suggesting an expanded applicability domain. The data exchange exercise described here demonstrates the value of expanding the learning from ADME data from multiple sources without the need to aggregate such data when the experimental methods are disparate.

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来源期刊
Molecular Pharmaceutics
Molecular Pharmaceutics 医学-药学
CiteScore
8.00
自引率
6.10%
发文量
391
审稿时长
2 months
期刊介绍: Molecular Pharmaceutics publishes the results of original research that contributes significantly to the molecular mechanistic understanding of drug delivery and drug delivery systems. The journal encourages contributions describing research at the interface of drug discovery and drug development. Scientific areas within the scope of the journal include physical and pharmaceutical chemistry, biochemistry and biophysics, molecular and cellular biology, and polymer and materials science as they relate to drug and drug delivery system efficacy. Mechanistic Drug Delivery and Drug Targeting research on modulating activity and efficacy of a drug or drug product is within the scope of Molecular Pharmaceutics. Theoretical and experimental peer-reviewed research articles, communications, reviews, and perspectives are welcomed.
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