新型PTP1B抑制剂筛选的综合方法:结合机器学习模型、分子对接、分子和动力学模拟。

IF 3.8 2区 化学 Q2 CHEMISTRY, APPLIED
Yihuan Zhao, Yujuan Chen, Xiaoli Tao, You Wang, Fushan Tang
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引用次数: 0

摘要

糖尿病,特别是2型糖尿病(T2DM),是一个主要的全球健康挑战,其特征是胰岛素抵抗导致的持续高血糖。蛋白酪氨酸磷酸酶1B (PTP1B)已成为参与调节胰岛素信号的关键酶,使其成为旨在改善胰岛素敏感性的治疗干预的有希望的靶点。然而,有效的PTP1B抑制剂的开发一直受到诸如生物利用度差和脱靶效应等问题的阻碍。本研究提出了一种结合机器学习(ML)、分子对接和分子动力学(MD)模拟的综合方法来鉴定新的PTP1B抑制剂。利用超过2183个已知PTP1B抑制剂的数据集,建立了基于ml的预测模型,以指导选择具有高抑制潜力的化合物。对160万个分子的化合物数据库进行分子对接,确定了1057个有希望的候选化合物,然后使用ML模型对候选化合物进行细化,选择前5个化合物。此外,将相同的策略应用于包含160,000个分子的天然产物衍生化合物数据库,从而鉴定出另外两种PTP1B抑制剂。这种综合方法将ML与计算预测相结合,加速了药物发现过程,提高了结果的可靠性,为开发T2DM及相关代谢疾病的新疗法提供了一条有希望的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated approach for novel PTP1B inhibitor screening: combining machine learning models, molecular docking, molecular and dynamics simulations.

Diabetes mellitus, particularly type 2 diabetes (T2DM), is a major global health challenge characterized by persistent hyperglycemia resulting from insulin resistance. Protein tyrosine phosphatase 1B (PTP1B) has emerged as a key enzyme involved in regulating insulin signaling, making it a promising target for therapeutic interventions aimed at improving insulin sensitivity. However, the development of effective PTP1B inhibitors has been hindered by issues such as poor bioavailability and off-target effects. This study presents an integrated approach combining machine learning (ML), molecular docking, and molecular dynamics (MD) simulations to identify novel PTP1B inhibitors. An ML-based predictive model was developed using a dataset of over 2183 known PTP1B inhibitors to guide the selection of compounds with high inhibitory potential. Molecular docking was applied to a compound database of 1.6 million molecules, identifying 1057 promising candidates, which were then refined using the ML model to select the top five compounds. Additionally, the same strategy was applied to a natural product-derived compound database containing 160,000 molecules, leading to the identification of two additional PTP1B inhibitors. This comprehensive approach, combining ML with computational predictions, accelerates the drug discovery process and enhances the reliability of the findings, offering a promising pathway for the development of novel treatments for T2DM and related metabolic disorders.

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来源期刊
Molecular Diversity
Molecular Diversity 化学-化学综合
CiteScore
7.30
自引率
7.90%
发文量
219
审稿时长
2.7 months
期刊介绍: Molecular Diversity is a new publication forum for the rapid publication of refereed papers dedicated to describing the development, application and theory of molecular diversity and combinatorial chemistry in basic and applied research and drug discovery. The journal publishes both short and full papers, perspectives, news and reviews dealing with all aspects of the generation of molecular diversity, application of diversity for screening against alternative targets of all types (biological, biophysical, technological), analysis of results obtained and their application in various scientific disciplines/approaches including: combinatorial chemistry and parallel synthesis; small molecule libraries; microwave synthesis; flow synthesis; fluorous synthesis; diversity oriented synthesis (DOS); nanoreactors; click chemistry; multiplex technologies; fragment- and ligand-based design; structure/function/SAR; computational chemistry and molecular design; chemoinformatics; screening techniques and screening interfaces; analytical and purification methods; robotics, automation and miniaturization; targeted libraries; display libraries; peptides and peptoids; proteins; oligonucleotides; carbohydrates; natural diversity; new methods of library formulation and deconvolution; directed evolution, origin of life and recombination; search techniques, landscapes, random chemistry and more;
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