4.6 Article

Machine intelligence-driven framework for optimized hit selection in virtual screening

Journal

JOURNAL OF CHEMINFORMATICS
Volume 14, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s13321-022-00630-7

Keywords

Virtual screening protocol; Machine-learning; Deep learning; Instance-based learning; Lead optimization

Funding

  1. Council of Scientific and Industrial research (CSIR), India
  2. Department of Biotechnology, India

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This article presents an advanced virtual screening framework called A-HIOT, which integrates chemical and protein space to accurately identify and optimize specific hit molecules for desired receptors. The framework demonstrates superior performance in finding optimized hits for the receptors.
Virtual screening (VS) aids in prioritizing unknown bio-interactions between compounds and protein targets for empirical drug discovery. In standard VS exercise, roughly 10% of top-ranked molecules exhibit activity when examined in biochemical assays, which accounts for many false positive hits, making it an arduous task. Attempts for conquering false-hit rates were developed through either ligand-based or structure-based VS separately; however, nonetheless performed remarkably well. Here, we present an advanced VS framework-automated hit identification and optimization tool (A-HIOT)-comprises chemical space-driven stacked ensemble for identification and protein space-driven deep learning architectures for optimization of an array of specific hits for fixed protein receptors. A-HIOT implements numerous open-source algorithms intending to integrate chemical and protein space leading to a high-quality prediction. The optimized hits are the selective molecules which we retrieve after extreme refinement implying chemical space and protein space modules of A-HIOT. Using CXC chemokine receptor 4, we demonstrated the superior performance of A-HIOT for hit molecule identification and optimization with tenfold cross-validation accuracies of 94.8% and 81.9%, respectively. In comparison with other machine learning algorithms, A-HIOT achieved higher accuracies of 96.2% for hit identification and 89.9% for hit optimization on independent benchmark datasets for CXCR4 and 86.8% for hit identification and 90.2% for hit optimization on independent test dataset for androgen receptor (AR), thus, shows its generalizability and robustness. In conclusion, advantageous features impeded in A-HIOT is making a reliable approach for bridging the long-standing gap between ligand-based and structure-based VS in finding the optimized hits for the desired receptor. The complete resource (framework) code is available at https://gitlab.com/neeraj-24/A-HIOT.

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