Chemistry-informed Machine Learning Explains Calcium-binding Proteins Fuzzy Shape for Communicating Changes in the Atomic States of Calcium Ions
Pengzhi Zhang, Jules Nde, Yossi Eliaz, Nathaniel Jennings, Piotr, Cieplak, Margaret. S. Cheung

TL;DR
This paper introduces a chemistry-informed, explainable machine learning framework that predicts atomic charges of calcium ions in binding proteins, effectively utilizing limited data and integrating chemical principles and network theory.
Contribution
The study presents a novel game-theoretic, chemistry-informed machine learning approach that explains atomic charge predictions without requiring large datasets.
Findings
Successfully predicted calcium ion charges in proteins.
Utilized ab initio data and network topology for model training.
Provided a framework for explainable charge annotation in calcium-binding proteins.
Abstract
Proteins' fuzziness are features for communicating changes in cell signaling instigated by binding with secondary messengers, such as calcium ions, associated with the coordination of muscle contraction, neurotransmitter release, and gene expression. Binding with the disordered parts of a protein, calcium ions must balance their charge states with the shape of calcium-binding proteins and their versatile pool of partners depending on the circumstances they transmit, but it is unclear whether the limited experimental data available can be used to train models to accurately predict the charges of calcium-binding protein variants. Here, we developed a chemistry-informed, machine-learning algorithm that implements a game theoretic approach to explain the output of a machine-learning model without the prerequisite of an excessively large database for high-performance prediction of atomic…
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