DeepKinZero: zero-shot learning for predicting kinase-phosphosite associations involving understudied kinases

Deznabi, Iman and Arabaci, Busra and Koyuturk, Mehmet and Taştan, Öznur (2020) DeepKinZero: zero-shot learning for predicting kinase-phosphosite associations involving understudied kinases. Bioinformatics, 36 (12). pp. 3652-3661. ISSN 1367-4803 (Print) 1460-2059 (Online)

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Abstract

Motivation: Protein phosphorylation is a key regulator of protein function in signal transduction pathways. Kinases are the enzymes that catalyze the phosphorylation of other proteins in a target-specific manner. The dysregulation of phosphorylation is associated with many diseases including cancer. Although the advances in phosphoproteomics enable the identification of phosphosites at the proteome level, most of the phosphoproteome is still in the dark: more than 95% of the reported human phosphosites have no known kinases. Determining which kinase is responsible for phosphorylating a site remains an experimental challenge. Existing computational methods require several examples of known targets of a kinase to make accurate kinase-specific predictions, yet for a large body of kinases, only a few or no target sites are reported. Results: We present DeepKinZero, the first zero-shot learning approach to predict the kinase acting on a phosphosite for kinases with no known phosphosite information. DeepKinZero transfers knowledge from kinases with many known target phosphosites to those kinases with no known sites through a zero-shot learning model. The kinasespecific positional amino acid preferences are learned using a bidirectional recurrent neural network. We show that DeepKinZero achieves significant improvement in accuracy for kinases with no known phosphosites in comparison to the baseline model and other methods available. By expanding our knowledge on understudied kinases, DeepKinZero can help to chart the phosphoproteome atlas.
Item Type: Article
Divisions: Faculty of Engineering and Natural Sciences
Depositing User: Öznur Taştan
Date Deposited: 02 Aug 2023 09:58
Last Modified: 02 Aug 2023 09:58
URI: https://research.sabanciuniv.edu/id/eprint/46775

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