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Few-Shot Drug Synergy Prediction With a Prior-Guided Hypernetwork Architecture

Qingqing Zhang, Shao‐Wu Zhang, Yue-Hua Feng, Jian‐Yu Shi

2023IEEE Transactions on Pattern Analysis and Machine Intelligence17 citationsDOI

Abstract

Predicting drug synergy is critical to tailoring feasible drug combination treatment regimens for cancer patients. However, most of the existing computational methods only focus on data-rich cell lines, and hardly work on data-poor cell lines. To this end, here we proposed a novel few-shot drug synergy prediction method (called HyperSynergy) for data-poor cell lines by designing a prior-guided Hypernetwork architecture, in which the meta-generative network based on the task embedding of each cell line generates cell line dependent parameters for the drug synergy prediction network. In HyperSynergy model, we designed a deep Bayesian variational inference model to infer the prior distribution over the task embedding to quickly update the task embedding with a few labeled drug synergy samples, and presented a three-stage learning strategy to train HyperSynergy for quickly updating the prior distribution by a few labeled drug synergy samples of each data-poor cell line. Moreover, we proved theoretically that HyperSynergy aims to maximize the lower bound of log-likelihood of the marginal distribution over each data-poor cell line. The experimental results show that our HyperSynergy outperforms other state-of-the-art methods not only on data-poor cell lines with a few samples (e.g., 10, 5, 0), but also on data-rich cell lines.

Topics & Concepts

Computer scienceArtificial intelligenceEmbeddingInferenceMachine learningTask (project management)Bayesian networkMargin (machine learning)Synthetic dataDeep learningLine (geometry)Pattern recognition (psychology)MathematicsEconomicsGeometryManagementComputational Drug Discovery MethodsCell Image Analysis TechniquesMachine Learning in Materials Science
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