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Improving the Virtual Screening Ability of Target-Specific Scoring Functions Using Deep Learning Methods.


ABSTRACT: Scoring functions play an important role in structure-based virtual screening. It has been widely accepted that target-specific scoring functions (TSSFs) may achieve better performance compared with universal scoring functions in actual drug research and development processes. A method that can effectively construct TSSFs will be of great value to drug design and discovery. In this work, we proposed a deep learning-based model named DeepScore to achieve this goal. DeepScore adopted the form of PMF scoring function to calculate protein-ligand binding affinity. However, different from PMF scoring function, in DeepScore, the score for each protein-ligand atom pair was calculated using a feedforward neural network. Our model significantly outperformed Glide Gscore on validation data set DUD-E. The average ROC-AUC on 102 targets was 0.98. We also combined Gscore and DeepScore together using a consensus method and put forward a consensus model named DeepScoreCS. The comparison results showed that DeepScore outperformed other machine learning-based TSSFs building methods. Furthermore, we presented a strategy to visualize the prediction of DeepScore. All of these results clearly demonstrated that DeepScore would be a useful model in constructing TSSFs and represented a novel way incorporating deep learning and drug design.

SUBMITTER: Wang D 

PROVIDER: S-EPMC6713720 | biostudies-literature | 2019

REPOSITORIES: biostudies-literature

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Improving the Virtual Screening Ability of Target-Specific Scoring Functions Using Deep Learning Methods.

Wang Dingyan D   Cui Chen C   Ding Xiaoyu X   Xiong Zhaoping Z   Zheng Mingyue M   Luo Xiaomin X   Jiang Hualiang H   Chen Kaixian K  

Frontiers in pharmacology 20190822


Scoring functions play an important role in structure-based virtual screening. It has been widely accepted that target-specific scoring functions (TSSFs) may achieve better performance compared with universal scoring functions in actual drug research and development processes. A method that can effectively construct TSSFs will be of great value to drug design and discovery. In this work, we proposed a deep learning-based model named DeepScore to achieve this goal. DeepScore adopted the form of P  ...[more]

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