共 40 条
Toward efficient generation, correction, and properties control of unique drug-like structures
被引:9
|作者:
Druchok, Maksym
[1
,2
]
Yarish, Dzvenymyra
[1
]
Gurbych, Oleksandr
[1
]
Maksymenko, Mykola
[1
]
机构:
[1] SoftServe Inc, 2d Sadova Str, UA-79021 Lvov, Ukraine
[2] Inst Condensed Matter Phys, Lvov, Ukraine
关键词:
molecular design;
machine learning;
deep neural networks;
autoencoder;
MOLECULAR-DYNAMICS SIMULATIONS;
DE-NOVO GENERATION;
AQUEOUS SOLUBILITY;
PREDICTION;
DISCOVERY;
CHEMOINFORMATICS;
CHALLENGE;
CHEMISTRY;
LIBRARIES;
NETWORKS;
D O I:
10.1002/jcc.26494
中图分类号:
O6 [化学];
学科分类号:
0703 ;
摘要:
Efficient design and screening of the novel molecules is a major challenge in drug and material design. This paper focuses on a multi-stage pipeline, in which several deep neural network models are combined to map discrete molecular representations into continuous vector space to later generate from it new molecular structures with desired properties. Here, the Attention-based Sequence-to-Sequence model is added to "spellcheck" and correct generated structures, while the oversampling in the continuous space allows generating candidate structures with desired distribution for properties and molecular descriptors, even for a small reference datasets. We further use computer simulation to validate the desired properties in the numerical experiment. With the focus on the drug design, such a pipeline allows generating novel structures with a control of Synthetic Accessibility Score and a series of metrics that assess the drug-likeliness. Our code is available at .
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页码:746 / 760
页数:15
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