In Silico Identification of Selective KRAS G12D Inhibitor via Machine Learning‐Based Molecular Docking Combined with Molecular Dynamics Simulation

Author:

Nadee Panik12ORCID,Prompat Napat12,Yamabhai Montarop3,Sangkhathat Surasak4,Benjakul Soottawat5,Tipmanee Varomyalin6,Saetang Jirakrit5ORCID

Affiliation:

1. Faculty of Medical Technology Prince of Songkla University Songkhla 90110 Thailand

2. Medical of Technology Service Center Faculty of Medical Technology Prince of Songkla University Songkhla 90110 Thailand

3. School of Biotechnology Institute of Agricultural Technology Suranaree University of Technology Nakhon Ratchasima 30000 Thailand

4. Department of Surgery and Translational Medicine Research Center Faculty of Medicine Prince of Songkla University Hat Yai Songkhla 90110 Thailand

5. International Center of Excellence in Seafood Science and Innovation Faculty of Agro‐Industry Prince of Songkla University Hat Yai Songkhla 90110 Thailand

6. Department of Biomedical Sciences and Biomedical Engineering Faculty of Medicine Prince of Songkla University Hat Yai Songkhla 90110 Thailand

Abstract

AbstractKRAS G12D mutation is prevalent in various cancers and is associated with poor prognosis. This study aimed to identify potential drug candidates targeting KRAS G12D using combined machine learning, virtual screening, molecular docking, and molecular dynamics (MD) simulations. The training and test sets are constructed based on a selection of inhibitors targeting the KRAS G12D mutant from the ChEMBL library. A random forest machine learning algorithm is developed to predict potential KRAS G12D binders. Molecular docking and the MM/PBSA binding energy are used to identify the lead compounds. The compound NPC489264 is identified as the top candidate, exhibiting favorable docking energy for the KRAS G12D mutant (−13.16 kcal mol−1). A hydrogen bond between the mutated Asp12 residue in the KRAS G12D mutant and NPC489264 is found to be a key interaction between these 2 molecules. MD simulations and MM/PBSA analysis revealed the strong binding affinity of NPC489264 to the G12D mutant (−5.49 kcal mol−1) compared to the wild type (10.17 kcal mol−1). These findings suggest that NPC489264 is a promising lead compound for further development of KRAS G12D‐targeted cancer therapies.

Funder

National Research Council of Thailand

Publisher

Wiley

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