Affiliation:
1. Key Laboratory of Intelligent Computing and Information Processing of Ministry of Education and Hunan Key Laboratory for Computation and Simulation in Science and Engineering, Xiangtan University, Hunan 411105, China
Abstract
Background:
The subcellular localization of a protein is closely related with its functions
and interactions. More and more evidences show that proteins may simultaneously exist at, or move
between, two or more different subcellular localizations. Therefore, predicting protein subcellular localization
is an important but challenging problem.
Observation:
Most of the existing methods for predicting protein subcellular localization assume that a
protein locates at a single site. Although a few methods have been proposed to deal with proteins with
multiple sites, correlations between subcellular localization are not efficiently taken into account. In
this paper, we propose an integrated method for predicting protein subcellular localizations with both
single site and multiple sites.
Methods:
Firstly, we extend the Multi-Label Radial Basis Function (ML-RBF) method to the regularized
version, and augment the first layer of ML-RBF to take local correlations between subcellular localization
into account. Secondly, we embed the modified ML-RBF into a multi-label Error-Correcting
Output Codes (ECOC) method in order to further consider the subcellular localization dependency. We
name our method ML-rRBF-ECOC. Finally, the performance of ML-rRBF-ECOC is evaluated on
three benchmark datasets.
Results:
The results demonstrate that ML-rRBF-ECOC has highly competitive performance to the related
multi-label learning method and some state-of-the-art methods for predicting protein subcellular
localizations with multiple sites. Considering dependency between subcellular localizations can contribute
to the improvement of prediction performance.
Conclusion:
This also indicates that correlations between different subcellular localizations really exist.
Our method at least plays a complementary role to existing methods for predicting protein subcellular
localizations with multiple sites.
Funder
Outstanding Youth Foundation of Hunan Educational Committee
Natural Science Foundation of Hunan Province of China
Chinese Program for Changjiang Scholars and Innovative Research Team in University
Natural Science Foundation of China
Publisher
Bentham Science Publishers Ltd.
Subject
Molecular Biology,Biochemistry
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