机器学习和高通量筛选的集成方法以确定针对醛脱氢酶的化学探针候选物

IF 3.7 Q1 CHEMISTRY, MEDICINAL
Adam Yasgar, , , Sankalp Jain, , , Marissa Davies, , , Carina Danchik, , , Taylor Niehoff, , , Jing Ran, , , Ganesha Rai, , , Shyh-Ming Yang, , , Anton Simeonov*, , , Alexey V. Zakharov*, , and , Natalia J. Martinez*, 
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引用次数: 0

摘要

选择性化学探针是解剖生物学途径和推进药物发现所必需的,但开发高质量的靶标探针,如醛脱氢酶(ALDH)家族仍然具有挑战性。在这里,我们提出了一种新的综合方法,将实验定量高通量筛选(qHTS)与先进的机器学习(ML)和药效团(PH4)建模相结合,以快速识别多种ALDH亚型的选择性抑制剂。我们对生化和细胞分析筛选了约13,000种注释化合物。然后,我们利用该数据集构建ML和PH4模型,以虚拟筛选更大的174,000种化合物,以增强命中的化学多样性。这种方法导致了化学多样性的异构体选择性抑制剂的扩展,这些抑制剂在生化和基于细胞的分析中都是有效的。通过细胞靶标结合实验的验证进一步证实了这些化合物的选择性活性,从而发现了ALDH1A2、ALDH1A3、ALDH2和ALDH3A1候选化学探针。值得注意的是,这是通过使用定量构效关系(QSAR)和PH4建模进行虚拟筛选的单次迭代实现的。这种体外和芯片结合的策略不仅增强了生物学相关化学探针候选物的发现,而且显著扩大了可用于探针开发的化学多样性,为针对ALDH酶家族的化学探针的快速和资源高效鉴定建立了新的平台。生成的数据集包括数百种化合物,经过一系列分析,可以公开获得,可以作为未来研究计划和探针开发工作的高质量训练集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integrated Approach of Machine Learning and High-Throughput Screening to Identify Chemical Probe Candidates Targeting Aldehyde Dehydrogenases

Integrated Approach of Machine Learning and High-Throughput Screening to Identify Chemical Probe Candidates Targeting Aldehyde Dehydrogenases

Selective chemical probes are essential for dissecting biological pathways and advancing drug discovery, yet developing high-quality probes for targets such as the aldehyde dehydrogenase (ALDH) family remains challenging. Here, we present a novel integrated approach combining experimental quantitative high-throughput screening (qHTS) with advanced machine learning (ML) and pharmacophore (PH4) modeling to rapidly identify selective inhibitors across multiple ALDH isoforms. We screened ∼13,000 annotated compounds against biochemical and cellular assays. We then utilized the data set to build ML and PH4 models to virtually screen a larger set of 174,000 compounds to enhance the chemical diversity of hits. This approach led to the expansion of chemically diverse isoform-selective inhibitors that are potent in both biochemical and cell-based assays. Validation through cellular target engagement assays further confirmed the selective activity of these compounds, leading to the discovery of ALDH1A2, ALDH1A3, ALDH2, and ALDH3A1 chemical probe candidates. Remarkably, this was achieved by employing just a single iteration of quantitative structure–activity relationship (QSAR) and PH4 modeling for virtual screening. This combined in vitro and in silico strategy not only enhances the discovery of biologically relevant chemical probe candidates but also significantly expands the chemical diversity accessible for probe development, establishing a new platform for the rapid and resource-efficient identification of chemical probes against the ALDH enzyme family. The data set generated, including hundreds of compounds thoroughly characterized across a spectrum of assays, is publicly available and can serve as a high-quality training set for future research initiatives and probe development efforts.

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来源期刊
ACS Pharmacology and Translational Science
ACS Pharmacology and Translational Science Medicine-Pharmacology (medical)
CiteScore
10.00
自引率
3.30%
发文量
133
期刊介绍: ACS Pharmacology & Translational Science publishes high quality, innovative, and impactful research across the broad spectrum of biological sciences, covering basic and molecular sciences through to translational preclinical studies. Clinical studies that address novel mechanisms of action, and methodological papers that provide innovation, and advance translation, will also be considered. We give priority to studies that fully integrate basic pharmacological and/or biochemical findings into physiological processes that have translational potential in a broad range of biomedical disciplines. Therefore, studies that employ a complementary blend of in vitro and in vivo systems are of particular interest to the journal. Nonetheless, all innovative and impactful research that has an articulated translational relevance will be considered. ACS Pharmacology & Translational Science does not publish research on biological extracts that have unknown concentration or unknown chemical composition. Authors are encouraged to use the pre-submission inquiry mechanism to ensure relevance and appropriateness of research.
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