Leveraging bounded datapoints to classify molecular potency improvements†

IF 3.597 Q2 Pharmacology, Toxicology and Pharmaceutics MedChemComm Pub Date : 2024-05-31 DOI:10.1039/D4MD00325J
Zachary Fralish, Paul Skaluba and Daniel Reker
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Abstract

Molecular machine learning algorithms are becoming increasingly powerful at predicting the potency of potential drug candidates to guide molecular discovery, lead series prioritization, and structural optimization. However, a substantial amount of inhibition data is bounded and inaccessible to traditional regression algorithms. Here, we develop a novel molecular pairing approach to process this data. This creates a new classification task of predicting which one of two paired molecules is more potent. This novel classification task can be accurately solved by various, established molecular machine learning algorithms, including XGBoost and Chemprop. Across 230 ChEMBL IC50 datasets, both tree-based and neural network-based “DeltaClassifiers” show improvements over traditional regression approaches in correctly classifying molecular potency improvements. The Chemprop-based deep DeltaClassifier outperformed all here evaluated regression approaches for paired molecules with shared and with distinct scaffolds, highlighting the promise of this approach for molecular optimization and scaffold-hopping.

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利用有界数据点对分子效力改进进行分类
分子机器学习算法在预测潜在候选药物的药效以指导分子发现、先导系列优先排序和结构优化方面正变得越来越强大。然而,大量的抑制数据是有边界的,传统回归算法无法获取。在此,我们开发了一种新的分子配对方法来处理这些数据。这就产生了一个新的分类任务,即预测两个配对分子中哪一个更有效。包括 XGBoost 和 Chemprop 在内的各种成熟的分子机器学习算法都能准确地解决这项新的分类任务。在 230 个 ChEMBL IC50 数据集中,基于树的 "DeltaClassifiers "和基于神经网络的 "DeltaClassifiers "在正确分类分子效价改进方面都比传统回归方法有所提高。对于具有共享支架和不同支架的配对分子,基于 Chemprop 的深度 DeltaClassifier 的表现优于所有在此评估的回归方法,这凸显了这种方法在分子优化和支架跳转方面的前景。
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来源期刊
MedChemComm
MedChemComm BIOCHEMISTRY & MOLECULAR BIOLOGY-CHEMISTRY, MEDICINAL
CiteScore
4.70
自引率
0.00%
发文量
0
审稿时长
2.2 months
期刊介绍: Research and review articles in medicinal chemistry and related drug discovery science; the official journal of the European Federation for Medicinal Chemistry. In 2020, MedChemComm will change its name to RSC Medicinal Chemistry. Issue 12, 2019 will be the last issue as MedChemComm.
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