Litcius/Paper detail

Tools for the Recognition of Sorting Signals and the Prediction of Subcellular Localization of Proteins From Their Amino Acid Sequences

Kenichiro Imai, Kenta Nakai

2020Frontiers in Genetics35 citationsDOIOpen Access PDF

Abstract

At the time of translation, nascent proteins are thought to be sorted into their final subcellular localization sites, based on the part of their amino acid sequences (i.e., sorting or targeting signals). Thus, it is interesting to computationally recognize these signals from the amino acid sequences of any given proteins and to predict their final subcellular localization with such information, supplemented with additional information (e.g., k -mer frequency). This field has a long history and many prediction tools have been released. Even in this era of proteomic atlas at the single-cell level, researchers continue to develop new algorithms, aiming at accessing the impact of disease-causing mutations/cell type-specific alternative splicing, for example. In this article, we overview the entire field and discuss its future direction.

Topics & Concepts

Subcellular localizationSortingRNA splicingComputational biologyProtein subcellular localization predictionComputer scienceField (mathematics)Amino acidProtein targetingTranslation (biology)ProteomeAlternative splicingProtein Sorting SignalsArtificial intelligenceBiologyBioinformaticsGenePeptide sequenceBiochemistryAlgorithmSignal peptideRNAMembrane proteinMathematicsMessenger RNAPure mathematicsMembraneMachine Learning in BioinformaticsRNA and protein synthesis mechanismsGenomics and Phylogenetic Studies