Multi-channel learning for integrating structural hierarchies into context-dependent molecular representation

IF 15.7 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Nature Communications Pub Date : 2025-01-06 DOI:10.1038/s41467-024-55082-4
Yue Wan, Jialu Wu, Tingjun Hou, Chang-Yu Hsieh, Xiaowei Jia
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Abstract

Reliable molecular property prediction is essential for various scientific endeavors and industrial applications, such as drug discovery. However, the data scarcity, combined with the highly non-linear causal relationships between physicochemical and biological properties and conventional molecular featurization schemes, complicates the development of robust molecular machine learning models. Self-supervised learning (SSL) has emerged as a popular solution, utilizing large-scale, unannotated molecular data to learn a foundational representation of chemical space that might be advantageous for downstream tasks. Yet, existing molecular SSL methods largely overlook chemical knowledge, including molecular structure similarity, scaffold composition, and the context-dependent aspects of molecular properties when operating over the chemical space. They also struggle to learn the subtle variations in structure-activity relationship. This paper introduces a multi-channel pre-training framework that learns robust and generalizable chemical knowledge. It leverages the structural hierarchy within the molecule, embeds them through distinct pre-training tasks across channels, and aggregates channel information in a task-specific manner during fine-tuning. Our approach demonstrates competitive performance across various molecular property benchmarks and offers strong advantages in particularly challenging yet ubiquitous scenarios like activity cliffs.

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将结构层次整合到上下文相关分子表示中的多通道学习
可靠的分子性质预测对于各种科学努力和工业应用(如药物发现)至关重要。然而,数据稀缺,加上物理化学和生物特性与传统分子特征方案之间的高度非线性因果关系,使鲁棒分子机器学习模型的开发变得复杂。自监督学习(SSL)已经成为一种流行的解决方案,它利用大规模、无注释的分子数据来学习化学空间的基本表示,这可能对下游任务有利。然而,现有的分子SSL方法在很大程度上忽略了化学知识,包括分子结构相似性、支架组成以及在化学空间上操作时分子性质的上下文依赖方面。他们也在努力学习结构-活动关系的微妙变化。本文介绍了一种多通道预训练框架,该框架学习鲁棒和可推广的化学知识。它利用分子内部的结构层次,通过不同的跨通道预训练任务嵌入它们,并在微调期间以特定于任务的方式聚合通道信息。我们的方法在各种分子特性基准测试中具有竞争力,并在活动悬崖等特别具有挑战性但普遍存在的场景中提供了强大的优势。
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来源期刊
Nature Communications
Nature Communications Biological Science Disciplines-
CiteScore
24.90
自引率
2.40%
发文量
6928
审稿时长
3.7 months
期刊介绍: Nature Communications, an open-access journal, publishes high-quality research spanning all areas of the natural sciences. Papers featured in the journal showcase significant advances relevant to specialists in each respective field. With a 2-year impact factor of 16.6 (2022) and a median time of 8 days from submission to the first editorial decision, Nature Communications is committed to rapid dissemination of research findings. As a multidisciplinary journal, it welcomes contributions from biological, health, physical, chemical, Earth, social, mathematical, applied, and engineering sciences, aiming to highlight important breakthroughs within each domain.
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