靶向DNA旋切酶A和丝氨酸/苏氨酸蛋白激酶PknB的抗结核药物的鉴定:一种机器学习辅助药物再利用方法。

IF 2.8 4区 医学 Q2 INFECTIOUS DISEASES
Dongwoo Lee, Md Ataul Islam, Sathishkumar Natarajan, Dawood Babu Dudekula, Hoyong Chung, Junhyung Park, Bermseok Oh
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引用次数: 0

摘要

结核病是一项全球性的健康挑战,与世界范围内相当高的发病率和死亡率有关。开发创新的治疗策略对于遏制耐药结核菌株的增加至关重要。DNA回转酶A (GyrA)和丝氨酸/苏氨酸蛋白激酶(PknB)是结核病新药的有希望的靶点。本研究采用相似性搜索、分子对接分析、机器学习(ML)驱动的绝对无结合能计算和分子动力学(MD)模拟等技术来寻找潜在的候选药物。将基于配体和结构的方法与ML原理和MD模拟相结合,提出了一种新的小分子识别策略。通过各种对接方法和基于ml的预测,评估了与现有结核病治疗药物结构相似的药物与GyrA和PknB的结合亲和力。通过详细分析,确定了针对GyrA的6种有前景的化合物,如DB00199、DB01220、DB06827、DB11753、DB14631和DB14703;DB00547、DB00615、DB06827、DB14644、DB11753和DB14703用于PknB。值得注意的是,DB11753和DB14703显示出两种目标的显著潜力。此外,MD模拟的统计指标证实了药物靶标复合物的稳定性,MM-GBSA分析强调了它们强大的结合亲和力,表明它们有望用于结核病治疗,尽管它们最初不是针对这种疾病设计的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Anti-Tuberculosis Drugs Targeting DNA Gyrase A and Serine/Threonine Protein Kinase PknB: A Machine Learning-Assisted Drug-Repurposing Approach.

Tuberculosis (TB) is a global health challenge associated with considerable levels of illness and mortality worldwide. The development of innovative therapeutic strategies is crucial to combat the rise of drug-resistant TB strains. DNA Gyrase A (GyrA) and serine/threonine protein kinase (PknB) are promising targets for new TB medications. This study employed techniques such as similarity searches, molecular docking analyses, machine learning (ML)-driven absolute binding-free energy calculations, and molecular dynamics (MD) simulations to find potential drug candidates. By combining ligand- and structure-based methods with ML principles and MD simulations, a novel strategy was proposed for identifying small molecules. Drugs with structural similarities to existing TB therapies were assessed for their binding affinity to GyrA and PknB through various docking approaches and ML-based predictions. A detailed analysis identified six promising compounds for each target, such as DB00199, DB01220, DB06827, DB11753, DB14631, and DB14703 for GyrA; and DB00547, DB00615, DB06827, DB14644, DB11753, and DB14703 for PknB. Notably, DB11753 and DB14703 show significant potential for both targets. Furthermore, MD simulations' statistical metrics confirm the drug-target complexes' stability, with MM-GBSA analyses underscoring their strong binding affinity, indicating their promise for TB treatment even though they were not initially designed for this disease.

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来源期刊
Tropical Medicine and Infectious Disease
Tropical Medicine and Infectious Disease Medicine-Public Health, Environmental and Occupational Health
CiteScore
3.90
自引率
10.30%
发文量
353
审稿时长
11 weeks
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