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Molecular Set Representation Learning

Nat Mac Intell(2024)

EPFL

Cited 0|Views4
Abstract
Computational representation of molecules can take many forms, including graphs, string-encodings of graphs, binary vectors, or learned embeddings in the form of real-valued vectors. These representations are then used in downstream classification and regression tasks using a wide range of machine-learning models. However, existing models come with limitations, such as the requirement for clearly defined chemical bonds, which often do not represent the true underlying nature of a molecule. Here, we propose a framework for molecular machine learning tasks based on set representation learning. We show that learning on sets of atomic invariants alone reaches the performance of state-of-the-art graph-based models on the most-used chemical benchmark data sets and that introducing a set representation layer into graph neural networks can surpass the performance of established methods in the domains of chemistry, biology, and material science. We introduce specialised set representation-based neural network architectures for reaction yield and protein-ligand binding affinity prediction. Overall, we show that the technique we denote molecular set representation learning is both an alternative and an extension to graph neural network architectures for machine learning tasks on molecules, molecule complexes, and chemical reactions.
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Computational Chemistry,Molecular Docking,Molecular Dynamics
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要点】:本文提出了一种基于集合表示学习的分子机器学习框架,该框架在不依赖明确化学键的情况下,实现了与现有图基模型相当甚至更优的性能。

方法】:作者采用了一种新的学习方法,即分子集合表示学习,通过学习原子不变量的集合来表示分子,进而用于机器学习模型。

实验】:研究在多个化学基准数据集上进行了实验,包括蛋白质-配体结合亲和力预测和反应产率预测,结果表明,所提出的集合表示学习模型性能优于或等同于现有图神经网络方法。