MU-LOC: A Machine-Learning Method for Predicting Mitochondrially Localized Proteins in Plants

Ning Zhang, R Shyama Prasad Rao, Fernanda Salvato, Jesper Foged Havelund, Ian Max Møller, Jay J. Thelen, Dong Xu

Research output: Contribution to journalJournal articleResearchpeer-review

Abstract

Targeting and translocation of proteins to the appropriate subcellular compartments are crucial for cell organization and function. Newly synthesized proteins are transported to mitochondria with the assistance of complex targeting sequences containing either an N-terminal pre-sequence or a multitude of internal signals. Compared with experimental approaches, computational predictions provide an efficient way to infer subcellular localization of a protein. However, it is still challenging to predict plant mitochondrially localized proteins accurately due to various limitations. Consequently, the performance of current tools can be improved with new data and new machine-learning methods. We present MU-LOC, a novel computational approach for large-scale prediction of plant mitochondrial proteins. We collected a comprehensive dataset of plant subcellular localization, extracted features including amino acid composition, protein position weight matrix, and gene co-expression information, and trained predictors using deep neural network and support vector machine. Benchmarked on two independent datasets, MU-LOC achieved substantial improvements over six state-of-the-art tools for plant mitochondrial targeting prediction. In addition, MU-LOC has the advantage of predicting plant mitochondrial proteins either possessing or lacking N-terminal pre-sequences. We applied MU-LOC to predict candidate mitochondrial proteins for the whole proteome of Arabidopsis and potato. MU-LOC is publicly available at http://mu-loc.org.
Original languageEnglish
Article number634
JournalFrontiers in Plant Science
Volume9
Number of pages14
ISSN1664-462X
DOIs
Publication statusPublished - 23. May 2018
Externally publishedYes

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