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Deciphering the importance of MD descriptors in designing Vitamin D Receptor agonists and antagonists using machine learning.
Nagamani, Selvaraman; Jaiswal, Lavi; Sastry, G Narahari.
Afiliación
  • Nagamani S; Advanced Computation and Data Sciences Division, CSIR - North East Institute of Science and Technology, Jorhat, Assam, 785 006, India; Academy of Scientific and Innovative Research (AcSIR), Ghaziabad, 201002, India. Electronic address: nagamani@neist.res.in.
  • Jaiswal L; Advanced Computation and Data Sciences Division, CSIR - North East Institute of Science and Technology, Jorhat, Assam, 785 006, India; Academy of Scientific and Innovative Research (AcSIR), Ghaziabad, 201002, India.
  • Sastry GN; Advanced Computation and Data Sciences Division, CSIR - North East Institute of Science and Technology, Jorhat, Assam, 785 006, India; Academy of Scientific and Innovative Research (AcSIR), Ghaziabad, 201002, India. Electronic address: gnsastry@gmail.com.
J Mol Graph Model ; 118: 108346, 2023 01.
Article en En | MEDLINE | ID: mdl-36208593
The Vitamin D Receptor (VDR) ligand-binding domain undergoes conformation change upon the binding of VDR agonists/antagonists. Helix 12 ((H)12) is one of the important helices at VDR ligand binding and its conformational changes are controlled by the binding of agonists and antagonists molecules. Various molecular modeling studies are available to explain the agonistic and antagonistic activity of vitamin D analogs. In this work, for the first time, we attempted to generate a machine learning model with fingerprints, 2D, 3D and MD descriptors that are specific to Vitamin D analogs and VDR. Initially, 2D and 3D descriptors and fingerprints of 1003 vitamin D analogs were calculated using CDK and RDKit. The machine learning model was generated using descriptors and fingerprints. Further, 80 Vitamin D analogs (40 VDR agonists + 40 VDR antagonists) were docked in the VDR active site. 50ns MD simulation was performed for each protein-ligand complex. Different MD descriptors such as Solvent Accessible Surface Area (SASA), radius of gyration, PC1 and PC2 were calculated and considered along with CDK and RDKit descriptors as features for machine learning calculations. A few other descriptors that are related to VDR conformational changes such as conformation of the (H)12, the angle at kink were considered for machine learning model generation. It was observed that the descriptors calculated from VDR conformational changes i) were able to distinguish between agonists and antagonists ii) provide key and comprehensive information about the unique binding characteristics of agonists and antagonists iii) provide a strong basis for the machine learning model generation. Overall, this study attempts the utilization of descriptors that are specific to a protein conformation will be helpful for the generation of an efficient machine learning model.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Vitamina D / Receptores de Calcitriol Idioma: En Revista: J Mol Graph Model Asunto de la revista: BIOLOGIA MOLECULAR Año: 2023 Tipo del documento: Article Pais de publicación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Vitamina D / Receptores de Calcitriol Idioma: En Revista: J Mol Graph Model Asunto de la revista: BIOLOGIA MOLECULAR Año: 2023 Tipo del documento: Article Pais de publicación: Estados Unidos