化学空间
计算机科学
背景(考古学)
代表(政治)
等级制度
任务(项目管理)
财产(哲学)
频道(广播)
药物发现
相似性(几何)
人工智能
机器学习
数据科学
生物
生物信息学
古生物学
哲学
计算机网络
管理
认识论
政治
政治学
经济
法学
市场经济
图像(数学)
作者
Yue Wan,Jialu Wu,Tingjun Hou,Chang‐Yu Hsieh,Yue Wan
标识
DOI:10.1038/s41467-024-55082-4
摘要
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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