Comprehensive assessment of nine target prediction web services: which should we choose for target fishing?

Author:

Ji Kai-Yue1,Liu Chong1,Liu Zhao-Qian1,Deng Ya-Feng2,Hou Ting-Jun3ORCID,Cao Dong-Sheng1ORCID

Affiliation:

1. Central South University Xiangya School of Pharmaceutical Sciences, , Changsha 410013, Hunan, P. R . China

2. CarbonSilicon AI Technology Co., Ltd , Hangzhou, Zhejiang 310018 , China

3. Zhejiang University College of Pharmaceutical Sciences, , Hangzhou, Zhejiang 310058 , China

Abstract

AbstractIdentification of potential targets for known bioactive compounds and novel synthetic analogs is of considerable significance. In silico target fishing (TF) has become an alternative strategy because of the expensive and laborious wet-lab experiments, explosive growth of bioactivity data and rapid development of high-throughput technologies. However, these TF methods are based on different algorithms, molecular representations and training datasets, which may lead to different results when predicting the same query molecules. This can be confusing for practitioners in practical applications. Therefore, this study systematically evaluated nine popular ligand-based TF methods based on target and ligand–target pair statistical strategies, which will help practitioners make choices among multiple TF methods. The evaluation results showed that SwissTargetPrediction was the best method to produce the most reliable predictions while enriching more targets. High-recall similarity ensemble approach (SEA) was able to find real targets for more compounds compared with other TF methods. Therefore, SwissTargetPrediction and SEA can be considered as primary selection methods in future studies. In addition, the results showed that k = 5 was the optimal number of experimental candidate targets. Finally, a novel ensemble TF method based on consensus voting is proposed to improve the prediction performance. The precision of the ensemble TF method outperforms the individual TF method, indicating that the ensemble TF method can more effectively identify real targets within a given top-k threshold. The results of this study can be used as a reference to guide practitioners in selecting the most effective methods in computational drug discovery.

Funder

The 2020 Guangdong Provincial Science and Technology Innovation Strategy Special Fund

Changsha Science and Technology Bureau project

Natural Science Foundation of Jilin Province

Hunan Provincial Science Fund for Distinguished Young Scholars

National Natural Science Foundation of China

National Key Research and Development Program of China

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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