Litcius/Paper detail

<i>findMySequence</i> : a neural-network-based approach for identification of unknown proteins in X-ray crystallography and cryo-EM

Grzegorz Chojnowski, Adam J. Simpkin, Diego A. Leonardo, Wolfram Seifert-Davila, Dan E. Vivas-Ruiz, Ronan M. Keegan, Daniel J. Rigden

2021IUCrJ69 citationsDOIOpen Access PDF

Abstract

Although experimental protein-structure determination usually targets known proteins, chains of unknown sequence are often encountered. They can be purified from natural sources, appear as an unexpected fragment of a well characterized protein or appear as a contaminant. Regardless of the source of the problem, the unknown protein always requires characterization. Here, an automated pipeline is presented for the identification of protein sequences from cryo-EM reconstructions and crystallographic data. The method's application to characterize the crystal structure of an unknown protein purified from a snake venom is presented. It is also shown that the approach can be successfully applied to the identification of protein sequences and validation of sequence assignments in cryo-EM protein structures.

Topics & Concepts

Identification (biology)Computational biologySequence (biology)Protein crystallizationProtein sequencingPipeline (software)Fragment (logic)ChemistryPeptide sequenceProtein structureComputer scienceCrystallographySequence alignmentBiologyBioinformaticsData miningPlasma protein bindingX-ray crystallographyCrystal structureProtein Data Bank (RCSB PDB)Protein engineeringSequence analysisBiological systemProtein foldingProtein designBiochemistryProtein structure predictionAdvanced Electron Microscopy Techniques and ApplicationsEnzyme Structure and FunctionProtein Structure and Dynamics