DeepCt: Predicting Pharmacokinetic Concentration-Time Curves and Compartmental Models from Chemical Structure Using Deep Learning.

IF 4.5 2区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL Molecular Pharmaceutics Pub Date : 2024-11-06 DOI:10.1021/acs.molpharmaceut.4c00562
Maximilian Beckers, Dimitar Yonchev, Sandrine Desrayaud, Grégori Gerebtzoff, Raquel Rodríguez-Pérez
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Abstract

After initial triaging using in vitro absorption, distribution, metabolism, and excretion (ADME) assays, pharmacokinetic (PK) studies are the first application of promising drug candidates in living mammals. Preclinical PK studies characterize the evolution of the compound's concentration over time, typically in rodents' blood or plasma. From this concentration-time (C-t) profiles, PK parameters such as total exposure or maximum concentration can be subsequently derived. An early estimation of compounds' PK offers the promise of reducing animal studies and cycle times by selecting and designing molecules with increased chances of success at the PK stage. Even though C-t curves are the major readout from a PK study, most machine learning-based prediction efforts have focused on the derived PK parameters instead of C-t profiles, likely due to the lack of approaches to model the underlying ADME mechanisms. Herein, a novel deep learning approach termed DeepCt is proposed for the prediction of C-t curves from the compound structure. Our methodology is based on the prediction of an underlying mechanistic compartmental PK model, which enables further simulations, and predictions of single- and multiple-dose C-t profiles.

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DeepCt:利用深度学习从化学结构预测药代动力学浓度-时间曲线和区室模型。
在使用体外吸收、分布、代谢和排泄(ADME)测定法进行初步筛选之后,药代动力学(PK)研究是有前途的候选药物在活体哺乳动物体内的首次应用。临床前 PK 研究描述了化合物浓度随时间的变化,通常是在啮齿动物的血液或血浆中。根据这种浓度-时间(C-t)曲线,可以得出总暴露量或最大浓度等 PK 参数。通过在 PK 阶段选择和设计成功几率更大的分子,对化合物 PK 的早期估计有望减少动物实验和周期时间。尽管C-t曲线是PK研究的主要读数,但大多数基于机器学习的预测工作都集中在得出的PK参数上,而不是C-t曲线上,这可能是由于缺乏对潜在ADME机制进行建模的方法。在此,我们提出了一种称为 DeepCt 的新型深度学习方法,用于根据化合物结构预测 C-t 曲线。我们的方法基于对底层机理分区 PK 模型的预测,从而能够进一步模拟和预测单剂量和多剂量 C-t 曲线。
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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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