学习细胞中的分子表征

ArXiv Pub Date : 2024-10-02
Gang Liu, Srijit Seal, John Arevalo, Zhenwen Liang, Anne E Carpenter, Meng Jiang, Shantanu Singh
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引用次数: 0

摘要

预测药物在体内的疗效和安全性需要了解小分子扰动的生物反应(如细胞形态和基因表达)。然而,目前的分子表征学习方法无法提供这些扰动下细胞状态的全面视图,而且难以去除噪声,阻碍了模型的泛化。我们引入了信息对齐(InfoAlign)方法,通过细胞中的信息瓶颈法来学习分子表征。我们将分子和细胞反应数据作为节点整合到上下文图中,并根据化学、生物和计算标准用加权边将它们连接起来。对于训练批次中的每个分子,InfoAlign 都会以最小化为目标优化编码器的潜在表征,以摒弃多余的结构信息。充分性目标对表征进行解码,以便与上下文图中分子邻域的不同特征空间对齐。我们证明,所提出的对齐充分性目标比现有的基于编码器的对比方法更严密。根据经验,我们在两个下游任务中验证了来自 InfoAlign 的表征:在四个数据集上与多达 19 种基线方法进行分子性质预测,以及零点分子形态匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Molecular Representation in a Cell.

Predicting drug efficacy and safety in vivo requires information on biological responses (e.g., cell morphology and gene expression) to small molecule perturbations. However, current molecular representation learning methods do not provide a comprehensive view of cell states under these perturbations and struggle to remove noise, hindering model generalization. We introduce the Information Alignment (InfoAlign) approach to learn molecular representations through the information bottleneck method in cells. We integrate molecules and cellular response data as nodes into a context graph, connecting them with weighted edges based on chemical, biological, and computational criteria. For each molecule in a training batch, InfoAlign optimizes the encoder's latent representation with a minimality objective to discard redundant structural information. A sufficiency objective decodes the representation to align with different feature spaces from the molecule's neighborhood in the context graph. We demonstrate that the proposed sufficiency objective for alignment is tighter than existing encoder-based contrastive methods. Empirically, we validate representations from InfoAlign in two downstream applications: molecular property prediction against up to 27 baseline methods across four datasets, plus zero-shot molecule-morphology matching.

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