Hunting down zinc(II)-binding sites in proteins with distance matrices

Author:

Laveglia Vincenzo1,Bazayeva Milana12,Andreini Claudia123,Rosato Antonio123ORCID

Affiliation:

1. Department of Chemistry, University of Florence , Sesto Fiorentino 50019, Italy

2. Magnetic Resonance Center (CERM), University of Florence , Sesto Fiorentino 50019, Italy

3. Consorzio Interuniversitario di Risonanze Magnetiche di Metallo Proteine , Sesto Fiorentino 50019, Italy

Abstract

Abstract Motivation In recent years, high-throughput sequencing technologies have made available the genome sequences of a huge variety of organisms. However, the functional annotation of the encoded proteins often still relies on low-throughput and costly experimental studies. Bioinformatics approaches offer a promising alternative to accelerate this process. In this work, we focus on the binding of zinc(II) ions, which is needed for 5%–10% of any organism’s proteins to achieve their physiologically relevant form. Results To implement a predictor of zinc(II)-binding sites in the 3D structures of proteins, we used a neural network, followed by a filter of the network output against the local structure of all known sites. The latter was implemented as a function comparing the distance matrices of the Cα and Cβ atoms of the sites. We called the resulting tool Master of Metals (MOM). The structural models for the entire proteome of an organism generated by AlphaFold can be used as input to our tool in order to achieve annotation at the whole organism level within a few hours. To demonstrate this, we applied MOM to the yeast proteome, obtaining a precision of about 76%, based on data for homologous proteins. Availability and implementation Master of Metals has been implemented in Python and is available at https://github.com/cerm-cirmmp/Master-of-metals.

Funder

Italian Capacity for Structural Biology Services in Instruct-ERIC

European Union—NextGenerationEU and EOSC-Life

European Commission

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

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