Machine Learnable Fold Space Representation based on Residue Cluster Classes
- 1. Department of Biochemistry and Structural Biology, Instituto de Fisiologa Celular, Universidad Nacional Autónoma de México, México D. F., México
- 2. Centro de Investigación Científica y de Educación Superior de Ensenada, México
Description
Abstract
Motivation
Protein fold space is a conceptual framework where all possible protein folds exist and ideas about protein structure, function and evolution may be analyzed. Classification of protein folds in this space is commonly achieved by using similarity indexes and/or machine learning approaches, each with different limitations.
Results
We propose a method for constructing a compact vector space model of protein fold space by representing each protein structure by its residues local contacts. We developed an efficient method to statistically test for the separability of points in a space and showed that our protein fold space representation is learnable by any machine-learning algorithm.
Availability
An API is freely available at https://code.google.com/p/pyrcc/.
Files
MachineLearnableFoldSpaceRepresentationbasedonRCC_.pdf
Files
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Additional details
Related works
- Is supplemented by
- 10.5281/zendoo.50193 (DOI)