Literature DB >> 35753700

Pf-Phospho: a machine learning-based phosphorylation sites prediction tool for Plasmodium proteins.

Priya Gupta1, Sureshkumar Venkadesan1, Debasisa Mohanty1.   

Abstract

Even though several in silico tools are available for prediction of the phosphorylation sites for mammalian, yeast or plant proteins, currently no software is available for predicting phosphosites for Plasmodium proteins. However, the availability of significant amount of phospho-proteomics data during the last decade and advances in machine learning (ML) algorithms have opened up the opportunities for deciphering phosphorylation patterns of plasmodial system and developing ML-based phosphosite prediction tools for Plasmodium. We have developed Pf-Phospho, an ML-based method for prediction of phosphosites by training Random Forest classifiers using a large data set of 12 096 phosphosites of Plasmodium falciparum and Plasmodium bergei. Of the 12 096 known phosphosites, 75% of sites have been used for training/validation of the classifier, while remaining 25% have been used as completely unseen test data for blind testing. It is encouraging to note that Pf-Phospho can predict the kinase-independent phosphosites with 84% sensitivity, 75% specificity and 78% precision. In addition, it can also predict kinase-specific phosphosites for five plasmodial kinases-PfPKG, Plasmodium falciparum, PfPKA, PfPK7 and PbCDPK4 with high accuracy. Pf-Phospho (http://www.nii.ac.in/pfphospho.html) outperforms other widely used phosphosite prediction tools, which have been trained using mammalian phosphoproteome data. It also has been integrated with other widely used resources such as PlasmoDB, MPMP, Pfam and recently available ML-based predicted structures by AlphaFold2. Currently, Pf-phospho is the only bioinformatics resource available for ML-based prediction of phospho-signaling networks of Plasmodium and is a user-friendly platform for integrative analysis of phospho-signaling along with metabolic and protein-protein interaction networks.
© The Author(s) 2022. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com.

Entities:  

Keywords:  Plasmodium falciparum; Random Forest; machine learning; phosphoproteome; phosphorylation sites

Mesh:

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Year:  2022        PMID: 35753700     DOI: 10.1093/bib/bbac249

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   13.994


  1 in total

1.  Complementary crosstalk between palmitoylation and phosphorylation events in MTIP regulates its role during Plasmodium falciparum invasion.

Authors:  Zille Anam; Geeta Kumari; Soumyadeep Mukherjee; Devasahayam Arokia Balaya Rex; Shreeja Biswas; Preeti Maurya; Susendaran Ravikumar; Nutan Gupta; Akhilesh Kumar Kushawaha; Raj Kumar Sah; Ayushi Chaurasiya; Jhalak Singhal; Niharika Singh; Shikha Kaushik; T S Keshava Prasad; Soumya Pati; Anand Ranganathan; Shailja Singh
Journal:  Front Cell Infect Microbiol       Date:  2022-09-29       Impact factor: 6.073

  1 in total

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