Calcium Binding Affinity in the Mutational Landscape of Troponin-C: Free Energy Calculation, Co-evolution modeling and Machine Learning

Pooja, Pradipta Bandyopadhyay
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Abstract

Computational protein science has made substantial headway, but accurately predicting the functional effects of mutation in Calcium-binding proteins (CBPs) on Ca2+ binding affinity proves obscure. The complexity lies in the fact that only sequence features or structural information individually offer an incomplete picture on their own. To triumph over this adversity, we introduce a pioneering framework that effortlessly integrates protein sequence evolution information, structural characteristics, and Ca2+ binding interaction properties into a machine learning algorithm. This synthesis has been carried out poised to significantly enhance accuracy and precision in the prediction of the Ca2+ binding affinity towards CBP variants. In our study, we have developed a Ca2+ binding affinity prediction model for various mutants of cardiac Troponin-C protein, to uncover the molecular determinants that contribute binding affinity across protein variants. Our method combines state-of-the-art practices, including a physics-based approach that uses relative binding free-energy (BFE) calculations to assess mutations with implicit polarization. Additionally, it incorporates the impact of evolutionary factors on protein mutations through a theoretical deep mutational scan using a statistical probability model. Support Vector Regression (SVR) algorithms have been used to predict Ca2+ binding affinity based on sequence information, structural properties, and interactions of water molecules with Ca2+ in the EF-hand loop. Our model demonstrates high accuracy and can potentially be generalized for other calcium-binding proteins to predict the effects of point mutations on Ca2+ binding affinity for CBPs.
肌钙蛋白-C 突变图谱中的钙结合亲和力:自由能计算、协同进化建模和机器学习
计算蛋白质科学已经取得了长足的进步,但要准确预测钙结合蛋白(CBPs)突变对 Ca2+ 结合亲和力的功能性影响却很困难。其复杂性在于,仅凭序列特征或结构信息本身并不能完整地描述问题。为了克服这一困难,我们引入了一个开创性的框架,将蛋白质序列进化信息、结构特征和 Ca2+ 结合相互作用特性毫不费力地整合到机器学习算法中。这种综合方法可显著提高预测 CBP 变体 Ca2+ 结合亲和力的准确性和精确度。在我们的研究中,我们为心脏肌钙蛋白-C 蛋白的各种突变体开发了一个 Ca2+ 结合亲和力预测模型,以揭示促进不同蛋白变体结合亲和力的分子决定因素。我们的方法结合了最先进的实践,包括基于物理学的方法,使用相对结合自由能(BFE)计算来评估具有隐含极化的突变。此外,它还通过使用统计概率模型进行理论深度突变扫描,纳入了进化因素对蛋白质突变的影响。支持向量回归(SVR)算法被用于根据序列信息、结构特性以及 EF 手环中水分子与 Ca2+ 的相互作用来预测 Ca2+ 的结合亲和力。我们的模型具有很高的准确性,有可能推广到其他钙结合蛋白,以预测点突变对 CBPs Ca2+ 结合亲和力的影响。
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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