探索三维从头分子生成的离散流匹配。

ArXiv Pub Date : 2024-11-25
Ian Dunn, David Ryan Koes
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引用次数: 0

摘要

产生新分子结构的深层生成模型有可能促进化学发现。流匹配是最近提出的一种生成建模框架,在包括生物分子结构在内的各种任务中取得了令人印象深刻的表现。种子流量匹配框架仅针对连续数据开发。然而,从头开始的分子设计任务需要生成离散的数据,如原子元素或氨基酸残基序列。最近提出了几种离散流匹配方法来解决这一差距。在这项工作中,我们对现有的3D从头小分子生成离散流匹配方法的性能进行了基准测试,并提供了它们不同行为的解释。因此,我们提出了FlowMol-CTMC,这是一个开源模型,可以实现3D从头设计的最先进性能,比现有方法具有更少的可学习参数。此外,我们建议使用超越局部化学价约束和更高阶结构基序的指标来捕获分子质量。这些度量表明,即使基本约束得到满足,这些模型也倾向于在训练数据分布之外产生不寻常的和潜在的有问题的功能组。用于复制此工作的代码和经过训练的模型可在\url{https://github.com/dunni3/FlowMol}上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Exploring Discrete Flow Matching for 3D De Novo Molecule Generation.

Deep generative models that produce novel molecular structures have the potential to facilitate chemical discovery. Flow matching is a recently proposed generative modeling framework that has achieved impressive performance on a variety of tasks including those on biomolecular structures. The seminal flow matching framework was developed only for continuous data. However, de novo molecular design tasks require generating discrete data such as atomic elements or sequences of amino acid residues. Several discrete flow matching methods have been proposed recently to address this gap. In this work we benchmark the performance of existing discrete flow matching methods for 3D de novo small molecule generation and provide explanations of their differing behavior. As a result we present FlowMol-CTMC, an open-source model that achieves state of the art performance for 3D de novo design with fewer learnable parameters than existing methods. Additionally, we propose the use of metrics that capture molecule quality beyond local chemical valency constraints and towards higher-order structural motifs. These metrics show that even though basic constraints are satisfied, the models tend to produce unusual and potentially problematic functional groups outside of the training data distribution. Code and trained models for reproducing this work are available at https://github.com/dunni3/FlowMol.

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