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Transfer Learning with Graph Neural Networks for Improved Molecular Property Prediction in the Multi-Fidelity Setting

NATURE COMMUNICATIONS(2024)

Department of Computer Science and Technology

Cited 1|Views0
Abstract
We investigate the potential of graph neural networks for transfer learning and improving molecular property prediction on sparse and expensive to acquire high-fidelity data by leveraging low-fidelity measurements as an inexpensive proxy for a targeted property of interest. This problem arises in discovery processes that rely on screening funnels for trading off the overall costs against throughput and accuracy. Typically, individual stages in these processes are loosely connected and each one generates data at different scale and fidelity. We consider this setup holistically and demonstrate empirically that existing transfer learning techniques for graph neural networks are generally unable to harness the information from multi-fidelity cascades. Here, we propose several effective transfer learning strategies and study them in transductive and inductive settings. Our analysis involves a collection of more than 28 million unique experimental protein-ligand interactions across 37 targets from drug discovery by high-throughput screening and 12 quantum properties from the dataset QMugs. The results indicate that transfer learning can improve the performance on sparse tasks by up to eight times while using an order of magnitude less high-fidelity training data. Moreover, the proposed methods consistently outperform existing transfer learning strategies for graph-structured data on drug discovery and quantum mechanics datasets.
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Network Pharmacology
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要点】:本文提出了一种利用图神经网络进行迁移学习的方法,通过利用低保真度数据作为目标属性的廉价代理,以提高在稀疏且昂贵的高保真度数据上的分子属性预测性能。

方法】:作者提出并研究了多种有效的迁移学习策略,以利用多保真度数据改善图神经网络的分子属性预测。

实验】:作者在包含超过2800万独特的实验蛋白质-配体相互作用数据(来自药物发现的高通量筛选)和12种量子属性数据集QMugs上进行了实验,结果表明提出的迁移学习方法能够在使用数量级更少的高保真度训练数据的情况下,将稀疏任务的性能提高多达八倍,且在这些数据集上始终优于现有的图结构数据迁移学习策略。