基于对比元学习的药物-靶点结合亲和力预测

Mei Li, Sihan Xu, Xiangrui Cai, Zhong Zhang, Hua Ji
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引用次数: 2

摘要

有效的药物-靶标结合亲和力(DTA)预测是药物发现和开发的关键。机器学习技术的发展极大地推动了它的发展。然而,DTA预测中的冷启动问题仍未得到充分的研究,这严重降低了对新药和新靶点的预测性能。在本文中,我们提出了一个对比元学习(CML)框架来解决这些问题。我们定义了药物锚定任务(drug-anchor task)和目标锚定任务(target-anchor task),使元学习能够从各种任务中积累共同知识,从而更快更好地适应新任务。此外,我们利用任务不平等损失来衡量任务差异,提高模型对新任务的敏感性。我们还提出了一个对比学习块(CLB)来探索跨任务的药物目标对之间的相关性,从而促进DTA预测性能的提高。我们在两个基准上比较了CML和各种基线,比较结果表明CML优于或达到了竞争对手的竞争结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contrastive Meta-Learning for Drug-Target Binding Affinity Prediction
Effective drug-target binding affinity (DTA) prediction is essential for drug discovery and development. The development of machine learning techniques considerably advances it. However, the cold-start problems in DTA prediction are still under-explored, which significantly degrades prediction performances on novel drugs and novel targets. In this paper, we propose a contrastive meta-learning (CML) framework to address these issues. We define drug-anchored tasks and target-anchored tasks, which enables the employment of meta-learning to accumulate common knowledge from various tasks so as to adapt to new tasks faster and better. Besides, we utilize a task inequality loss to measure task disparities and enhance model sensitivities to new tasks. We also propose a contrastive learning block (CLB) to explore correlations among drug-target pairs across tasks, which facilitates DTA prediction performance improvements. We compare CML with various baselines on two benchmarks and comparison results show that CML outperforms or achieves competitive results to its competitors.
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