Machine learning to estimate the local quality of protein crystal structures

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Abstract

Low-resolution electron density maps can pose a major obstacle in the determination and use of protein structures. Herein, we describe a novel method, called quality assessment based on an electron density map (QAEmap), which evaluates local protein structures determined by X-ray crystallography and could be applied to correct structural errors using low-resolution maps. QAEmap uses a three-dimensional deep convolutional neural network with electron density maps and their corresponding coordinates as input and predicts the correlation between the local structure and putative high-resolution experimental electron density map. This correlation could be used as a metric to modify the structure. Further, we propose that this method may be applied to evaluate ligand binding, which can be difficult to determine at low resolution.

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Miyaguchi, I., Sato, M., Kashima, A., Nakagawa, H., Kokabu, Y., Ma, B., … Ikeguchi, M. (2021). Machine learning to estimate the local quality of protein crystal structures. Scientific Reports, 11(1). https://doi.org/10.1038/s41598-021-02948-y

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