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Learning continuous and data-driven molecular descriptors by translating equivalent chemical representations

机译:通过翻译等效的化学表示来学习连续的和数据驱动的分子描述符

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摘要

There has been a recent surge of interest in using machine learning across chemical space in order to predict properties of molecules or design molecules and materials with the desired properties. Most of this work relies on defining clever feature representations, in which the chemical graph structure is encoded in a uniform way such that predictions across chemical space can be made. In this work, we propose to exploit the powerful ability of deep neural networks to learn a feature representation from low-level encodings of a huge corpus of chemical structures. Our model borrows ideas from neural machine translation: it translates between two semantically equivalent but syntactically different representations of molecular structures, compressing the meaningful information both representations have in common in a low-dimensional representation vector. Once the model is trained, this representation can be extracted for any new molecule and utilized as a descriptor. In fair benchmarks with respect to various human-engineered molecular fingerprints and graph-convolution models, our method shows competitive performance in modelling quantitative structure–activity relationships in all analysed datasets. Additionally, we show that our descriptor significantly outperforms all baseline molecular fingerprints in two ligand-based virtual screening tasks. Overall, our descriptors show the most consistent performances in all experiments. The continuity of the descriptor space and the existence of the decoder that permits deducing a chemical structure from an embedding vector allow for exploration of the space and open up new opportunities for compound optimization and idea generation.
机译:最近,人们对跨化学空间使用机器学习来预测分子的特性或设计具有所需特性的分子和材料的兴趣激增。大部分工作都依赖于定义巧妙的特征表示,其中化学图结构以统一的方式编码,从而可以跨化学空间做出预测。在这项工作中,我们建议利用深层神经网络的强大功能,从庞大的化学结构语料库的低级编码中学习特征表示。我们的模型借鉴了神经机器翻译的思想:它在分子结构的两个语义上等效但在语法上不同的表示形式之间进行转换,压缩这两个表示形式在低维表示向量中共有的有意义的信息。训练好模型后,就可以提取任何新分子的表示形式并用作描述子。在关于各种人工分子指纹和图卷积模型的公平基准中,我们的方法在建模所有分析数据集中的定量构效关系方面显示出竞争性。此外,我们表明,在两个基于配体的虚拟筛选任务中,我们的描述符明显优于所有基线分子指纹。总体而言,我们的描述符显示了所有实验中最一致的表现。描述符空间的连续性和允许从嵌入矢量推导化学结构的解码器的存在,允许对该空间进行探索,并为化合物优化和构思的产生开辟了新的机会。

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