利用基于深度学习的混合程序识别有效的脂肪量和肥胖相关蛋白抑制剂

Kannan Mayuri, Durairaj Varalakshmi, Mayakrishnan Tharaheswari, C. S. Somala, Selvaraj Sathya Priya, N. Bharathkumar, Renganthan Senthil, Raja Babu Singh Kushwah, Sundaram Vickram, Thirunavukarasou Anand, K. Saravanan
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引用次数: 0

摘要

脂肪量和肥胖相关(FTO)蛋白催化核酸的金属依赖性修饰,即 mRNA 分子内甲基腺苷的去甲基化。FTO 蛋白已被确定为开发抗癌疗法的潜在靶点。找到针对 FTO 蛋白的合适配体对于开发抗肥胖症和癌症的化疗药物至关重要。世界各地的科学家采用了许多方法来发现 FTO 蛋白的强效抑制剂。本研究采用基于深度学习的方法和分子对接技术来研究作为靶标的 FTO 蛋白。我们的策略包括系统地筛选小型化学化合物数据库。通过利用 FTO 与配体复合物的晶体结构,我们成功鉴定出三种小分子化合物(ZINC000003643476、ZINC000000517415 和 ZINC000001562130)作为 FTO 蛋白的抑制剂。鉴定过程是在 ZINC 数据库上结合使用了多种筛选技术,特别是深度学习(DeepBindGCN)和 Autodock vina。利用 100 纳秒的分子动力学和结合自由能计算对这些化合物进行了综合分析。我们的研究结果表明,我们发现了三种候选抑制剂,它们可能有效地针对人类脂肪量和肥胖症蛋白。这项研究的结果有可能促进对能与 FTO 发生相互作用的其他化学物质的探索。开展生化研究以评估这些化合物的有效性可能有助于改善脂肪量和肥胖症的治疗策略。
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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-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.
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