带有形状说明的药物设计生成方案

IF 1.7 4区 化学 Q3 CHEMISTRY, MULTIDISCIPLINARY
Shikhar Shasya, Shubham Sharma, Prabhakar Bhimalapuram
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引用次数: 0

摘要

我们提出了基于种子分子生成新分子的三种相关方案;所有的方法都使用种子分子的体素化表示作为输入来生成新分子的SMILES表示。这些方法的核心是两个网络(a)一个变分自动编码器,它使用黎曼度量来编码潜在空间(因此称为RHVAE),并可以使用药效要求作为解码器的额外输入;(b)一个关注字幕网络(一种循环神经网络),它可以有效地聚焦、捕获和使用输入的“内容”来生成新分子的SMILES输出。我们分析了这三种方法的性能。我们展示了有意义的新分子的生成,通过自动编码器网络生成形状,然后可以传递到我们的关注字幕网络,同时需要更小的数据集来训练并保持与现有最先进方法相似的性能。摘要:synopsis研究展示了使用机器学习生成有意义的配体;具体来说,是一种使用雷曼几何表示其潜在空间的自编码器,其输出网格可以传递给一个关注的字幕网络。我们证明建议的方案需要更小的数据集进行训练,同时保持与最先进的方法相似的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Generative schemes for drug design with shape captioning

Generative schemes for drug design with shape captioning

We present three related schemes to generate novel molecules based on seed molecule; all the methods use as input the voxelized representation of the seed molecule to generate the SMILES representation of the novel molecule. At heart of these methods are two networks (a) a variational auto encoder that uses a Riemannian metric to encode the latent space of (hence named RHVAE) and can use pharmacophoric requirements as additional input for decoder and (b) attentive captioning network (a type of recurring neural network) that can efficiently focus, capture and use the ‘content’ of input to generate the SMILES output of novel molecules. We analyze the performance of the three proposed methods. We demonstrate the generation of meaningful new molecules, by generating shapes through an auto encoder network which can then be passed to our attentive captioning network, while requiring smaller datasets for training and retaining similar performance to existing state-of-art methods.

Graphical abstract

SYNOPSIS Study demonstrates the generation of meaningful ligands using machine learning; specifically, an autoencoder that uses Remannian geometry represenation for its latent space whose output grid can be passed to a attentive captioning network. We demonstrate suggested schemes require smaller data sets for training while retaining similar performance as to state-of-art methods.. The VAE model employed

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来源期刊
Journal of Chemical Sciences
Journal of Chemical Sciences CHEMISTRY, MULTIDISCIPLINARY-
CiteScore
3.10
自引率
5.90%
发文量
107
审稿时长
1 months
期刊介绍: Journal of Chemical Sciences is a monthly journal published by the Indian Academy of Sciences. It formed part of the original Proceedings of the Indian Academy of Sciences – Part A, started by the Nobel Laureate Prof C V Raman in 1934, that was split in 1978 into three separate journals. It was renamed as Journal of Chemical Sciences in 2004. The journal publishes original research articles and rapid communications, covering all areas of chemical sciences. A significant feature of the journal is its special issues, brought out from time to time, devoted to conference symposia/proceedings in frontier areas of the subject, held not only in India but also in other countries.
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