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基于深度卷积神经网络的单胺氧化酶B抑制剂的识别与生物学评价

Deep convolutional neural network-based identification and biological evaluation of MAO-B inhibitors.

作者信息

Kashyap Kushagra, Bhati Girdhar, Ahmed Shakil, Siddiqi Mohammad Imran

机构信息

Biochemistry and Structural Biology Division, CSIR-Central Drug Research Institute, Sector 10, Jankipuram Extension, Sitapur Road, Lucknow 226031, India; Academy of Scientific and Innovative Research (AcSIR), Ghaziabad 201002, India.

Biochemistry and Structural Biology Division, CSIR-Central Drug Research Institute, Sector 10, Jankipuram Extension, Sitapur Road, Lucknow 226031, India; Academy of Scientific and Innovative Research (AcSIR), Ghaziabad 201002, India.

出版信息

Int J Biol Macromol. 2024 Nov;281(Pt 3):136438. doi: 10.1016/j.ijbiomac.2024.136438. Epub 2024 Oct 9.

Abstract

Parkinson's disease (PD) is one of the most prominent motor disorder of adult-onset dementia connected to memory and other cognitive abilities. Individuals with this vicious neurodegenerative condition tend to have an elevated expression of Monoamine Oxidase-B (MAO-B) that catalyzes the oxidative deamination of aryalkylamines neurotransmitters with concomitant reduction of oxygen to hydrogen peroxide. This oxidative stress damages mitochondrial DNA and contributes to the progression of PD. To address this, we have developed a deep learning (DL)-based virtual screening protocol for the identification of promising MAO-B inhibitors using Convolutional neural network (ConvNet) based image classification technique by dealing with two unique kinds of image datasets associated with MACCS fingerprints. Following model building and prediction on the Maybridge library, our approach shortlisted the top 11 compounds at the end of molecular docking protocol. Further, the biological validation of the hits identified 4 compounds as promising MAO-B inhibitors. Among these, the compound RF02426 was found to have >50 % inhibition at 10 μM. Additionally, the study also underscored the utility of scaffold analysis as an effective way for evaluating the significance of structurally diverse compounds in data-driven investigations. We believe that our models are able to pick up diverse chemotype and this can be a starting scaffold for further structural optimization with medicinal chemistry efforts in order to improve their inhibition efficacy and be established as novel MAO-B inhibitors in the furture.

摘要

帕金森病(PD)是与记忆及其他认知能力相关的最突出的成年起病性痴呆运动障碍之一。患有这种恶性神经退行性疾病的个体往往单胺氧化酶B(MAO-B)表达升高,MAO-B催化芳烷基胺神经递质的氧化脱氨反应,同时将氧气还原为过氧化氢。这种氧化应激会损害线粒体DNA,并促使帕金森病的进展。为了解决这个问题,我们开发了一种基于深度学习(DL)的虚拟筛选方案,通过基于卷积神经网络(ConvNet)的图像分类技术,利用与MACCS指纹相关的两种独特图像数据集,来识别有前景的MAO-B抑制剂。在对Maybridge库进行模型构建和预测后,我们的方法在分子对接方案结束时筛选出了前11种化合物。此外,对命中化合物的生物学验证确定了4种化合物为有前景的MAO-B抑制剂。其中,化合物RF02426在10μM时的抑制率>50%。此外,该研究还强调了支架分析作为一种有效方法在数据驱动研究中评估结构多样化合物重要性的实用性。我们相信,我们的模型能够挑选出不同的化学类型,这可以作为一个起始支架,通过药物化学努力进行进一步的结构优化,以提高它们的抑制效果,并在未来成为新型MAO-B抑制剂。

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