Drug Discovery under Covariate Shift with Domain-Informed Prior Distributions over Functions

Leo Klarner, Tim G. J. Rudner, M. Reutlinger, Torsten Schindler, G. Morris, C. Deane, Y. Teh
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引用次数: 1

Abstract

Accelerating the discovery of novel and more effective therapeutics is an important pharmaceutical problem in which deep learning is playing an increasingly significant role. However, real-world drug discovery tasks are often characterized by a scarcity of labeled data and significant covariate shift$\unicode{x2013}\unicode{x2013}$a setting that poses a challenge to standard deep learning methods. In this paper, we present Q-SAVI, a probabilistic model able to address these challenges by encoding explicit prior knowledge of the data-generating process into a prior distribution over functions, presenting researchers with a transparent and probabilistically principled way to encode data-driven modeling preferences. Building on a novel, gold-standard bioactivity dataset that facilitates a meaningful comparison of models in an extrapolative regime, we explore different approaches to induce data shift and construct a challenging evaluation setup. We then demonstrate that using Q-SAVI to integrate contextualized prior knowledge of drug-like chemical space into the modeling process affords substantial gains in predictive accuracy and calibration, outperforming a broad range of state-of-the-art self-supervised pre-training and domain adaptation techniques.
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协变量移位下的药物发现与域知情先验分布
加速发现新的和更有效的治疗方法是一个重要的制药问题,深度学习在其中发挥着越来越重要的作用。然而,现实世界的药物发现任务通常以标记数据的稀缺性和显著的协变量移位$\unicode{x2013} $为特征,这对标准的深度学习方法提出了挑战。在本文中,我们提出了Q-SAVI,一种概率模型,能够通过将数据生成过程的显式先验知识编码为函数上的先验分布来解决这些挑战,为研究人员提供了一种透明和概率原则的方法来编码数据驱动的建模偏好。建立在一个新的、金标准的生物活性数据集上,促进了外推机制中模型的有意义的比较,我们探索了不同的方法来诱导数据转移,并构建了一个具有挑战性的评估设置。然后,我们证明,使用Q-SAVI将药物样化学空间的上下文先验知识集成到建模过程中,在预测准确性和校准方面取得了重大进展,优于广泛的最先进的自监督预训练和领域自适应技术。
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