Prediction of Ca2+ Binding Site in Proteins With a Fast and Accurate Method Based on Statistical Mechanics and Analysis of Crystal Structures

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Abdul Basit, Devapriya Choudhury, Pradipta Bandyopadhyay
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Abstract

Predicting the precise locations of metal binding sites within metalloproteins is a crucial challenge in biophysics. A fast, accurate, and interpretable computational prediction method can complement the experimental studies. In the current work, we have developed a method to predict the location of Ca2+ ions in calcium‐binding proteins using a physics‐based method with an all‐atom description of the proteins, which is substantially faster than the molecular dynamics simulation‐based methods with accuracy as good as data‐driven approaches. Our methodology uses the three‐dimensional reference interaction site model (3D‐RISM), a statistical mechanical theory, to calculate Ca2+ ion density around protein structures, and the locations of the Ca2+ ions are obtained from the density. We have taken previously used datasets to assess the efficacy of our method as compared to previous works. Our accuracy is 88%, comparable with the FEATURE program, one of the well‐known data‐driven methods. Moreover, our method is physical, and the reasons for failures can be ascertained in most cases. We have thoroughly examined the failed cases using different structural and crystallographic measures, such as B‐factor, R‐factor, electron density map, and geometry at the binding site. It has been found that x‐ray structures have issues in many of the failed cases, such as geometric irregularities and dubious assignment of ion positions. Our algorithm, along with the checks for structural accuracy, is a major step in predicting calcium ion positions in metalloproteins.
基于统计力学和晶体结构分析的快速准确方法预测蛋白质中的 Ca2+ 结合位点
预测金属蛋白中金属结合位点的精确位置是生物物理学的一项重要挑战。快速、准确、可解释的计算预测方法可以补充实验研究。在目前的工作中,我们开发了一种预测钙结合蛋白中 Ca2+ 离子位置的方法,该方法采用基于物理学的方法,对蛋白进行全原子描述,其速度大大快于基于分子动力学模拟的方法,准确性不亚于数据驱动的方法。我们的方法使用三维参考相互作用位点模型(3D-RISM)(一种统计力学理论)来计算蛋白质结构周围的 Ca2+ 离子密度,并从密度中获得 Ca2+ 离子的位置。我们利用以前使用过的数据集来评估我们的方法与以前的工作相比的效果。我们的准确率为 88%,与著名的数据驱动方法之一 FEATURE 程序不相上下。此外,我们的方法是物理性的,在大多数情况下都能确定失败的原因。我们使用不同的结构和晶体学测量方法,如 B 因子、R 因子、电子密度图和结合位点的几何形状,对失败的案例进行了彻底检查。我们发现,在许多失败的案例中,X 射线结构都存在问题,如几何形状不规则和离子位置分配可疑。我们的算法以及结构准确性检查是预测金属蛋白中钙离子位置的重要一步。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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