基于 ANN 的深腔外配体结合位点预测,促进药物设计

IF 2.7 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Current Research in Structural Biology Pub Date : 2024-01-01 DOI:10.1016/j.crstbi.2024.100144
Kalpana Singh, Yashpal Singh Malik
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引用次数: 0

摘要

不断变化的环境条件和污染是导致多种新发和复发疾病的主要原因。这就要求更快地设计新药,以遏制致命疾病,缩短治疗动物和人类的等待时间。药物分子只与蛋白质表面的特定位置相互作用,这些位置被称为配体结合位点(LBS)。因此,合理的药物设计需要配体结合位点的知识。现有的几何配体结合位点预测方法依赖于空腔搜索,因为 83% 的配体结合位点位于深腔中,但当配体结合位点位于深腔之外时,这些方法通常会失败。为了克服这一难题,本研究提供了一种基于人工神经网络(ANN)的方法,用于预测包括人类在内的动物蛋白质深腔外的 LBS,以促进药物设计。在本研究中,我们利用提取的蛋白质表面最粗糙区域中 LBS 和非 LBS 残基的 38 个结构、原子、物理化学和进化判别特征,训练了一个前馈反向传播神经网络。在空腔子空间(由 MetaPocket 2.0 提取,这是一种共识方法)因 LBS 位于深空腔之外而无法预测 LBS 的蛋白质中,这种基于 ANN 的预测方法的性能提高了 76%。由于几何 LBS 预测方法依赖于深腔的提取,因此在缺乏 LBS 信息的蛋白质中,预测深腔外的 LBS 将有助于药物设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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ANN based prediction of ligand binding sites outside deep cavities to facilitate drug designing

The ever-changing environmental conditions and pollution are the prime reasons for the onset of several emerging and re-merging diseases. This demands the faster designing of new drugs to curb the deadly diseases in less waiting time to cure the animals and humans. Drug molecules interact with only protein surface on specific locations termed as ligand binding sites (LBS). Therefore, the knowledge of LBS is required for rational drug designing. Existing geometrical LBS prediction methods rely on search of cavities based on the fact that 83% of the LBS found in deep cavities, however, these methods usually fail where LBS localize outside deep cavities. To overcome this challenge, the present work provides an artificial neural network (ANN) based method to predict LBS outside deep cavities in animal proteins including human to facilitate drug designing. In the present work a feed-forward backpropagation neural network was trained by utilizing 38 structural, atomic, physiochemical, and evolutionary discriminant features of LBS and non-LBS residues localized in the extracted roughest patch on protein surface. The performance of this ANN based prediction method was found 76% better for those proteins where cavity subspace (extracted by MetaPocket 2.0, a consensus method) failed to predict LBS due to their localization outside the deep cavities. The prediction of LBS outside deep cavities will facilitate in drug designing for the proteins where it is not possible due to lack of LBS information as the geometrical LBS prediction methods rely on extraction of deep cavities.

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来源期刊
CiteScore
4.60
自引率
0.00%
发文量
33
审稿时长
104 days
期刊最新文献
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