iMLP, a predictor for internal matrix targeting-like sequences in mitochondrial proteins

Biol Chem. 2021 Jul 5;402(8):937-943. doi: 10.1515/hsz-2021-0185. Print 2021 Jul 27.

Abstract

Matrix targeting sequences (MTSs) direct proteins from the cytosol into mitochondria. Efficient targeting often relies on internal matrix targeting-like sequences (iMTS-Ls) which share structural features with MTSs. Predicting iMTS-Ls was tedious and required multiple tools and webservices. We present iMLP, a deep learning approach for the prediction of iMTS-Ls in protein sequences. A recurrent neural network has been trained to predict iMTS-L propensity profiles for protein sequences of interest. The iMLP predictor considerably exceeds the speed of existing approaches. Expanding on our previous work on iMTS-L prediction, we now serve an intuitive iMLP webservice available at http://iMLP.bio.uni-kl.de and a stand-alone command line tool for power user in addition.

Keywords: deep learning; mitochondria; protein targeting; recurrent neural network; sequence analysis; webservice.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Amino Acid Sequence
  • Computational Biology*
  • Mitochondrial Proteins
  • Neural Networks, Computer*
  • Software

Substances

  • Mitochondrial Proteins