Identifying Potent Fat Mass and Obesity-Associated Protein Inhibitors Using Deep Learning-Based Hybrid Procedures

The fat mass and obesity-associated (FTO) protein catalyzes metal-dependent modifications of nucleic acids, namely the demethylation of methyl adenosine inside mRNA molecules. The FTO protein has been identified as a potential target for developing anticancer therapies. Identifying a suitable ligand...

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Bibliographic Details
Published inBioMedInformatics Vol. 4; no. 1; pp. 347 - 359
Main Authors Mayuri, Kannan, Varalakshmi, Durairaj, Tharaheswari, Mayakrishnan, Somala, Chaitanya Sree, Priya, Selvaraj Sathya, Bharathkumar, Nagaraj, Senthil, Renganathan, Kushwah, Raja Babu Singh, Vickram, Sundaram, Anand, Thirunavukarasou, Saravanan, Konda Mani
Format Journal Article
LanguageEnglish
Published MDPI AG 01.02.2024
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ISSN2673-7426
2673-7426
DOI10.3390/biomedinformatics4010020

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Summary:The fat mass and obesity-associated (FTO) protein catalyzes metal-dependent modifications of nucleic acids, namely the demethylation of methyl adenosine inside mRNA molecules. The FTO protein has been identified as a potential target for developing anticancer therapies. Identifying a suitable ligand-targeting FTO protein is crucial to developing chemotherapeutic medicines to combat obesity and cancer. Scientists worldwide have employed many methodologies to discover a potent inhibitor for the FTO protein. This study uses deep learning-based methods and molecular docking techniques to investigate the FTO protein as a target. Our strategy involves systematically screening a database of small chemical compounds. By utilizing the crystal structures of the FTO complexed with ligands, we successfully identified three small-molecule chemical compounds (ZINC000003643476, ZINC000000517415, and ZINC000001562130) as inhibitors of the FTO protein. The identification process was accomplished by employing a combination of screening techniques, specifically deep learning (DeepBindGCN) and Autodock vina, on the ZINC database. These compounds were subjected to comprehensive analysis using 100 nanoseconds of molecular dynamics and binding free energy calculations. The findings of our study indicate the identification of three candidate inhibitors that might effectively target the human fat mass and obesity protein. The results of this study have the potential to facilitate the exploration of other chemicals that can interact with FTO. Conducting biochemical studies to evaluate these compounds’ effectiveness may contribute to improving fat mass and obesity treatment strategies.
ISSN:2673-7426
2673-7426
DOI:10.3390/biomedinformatics4010020