Literature DB >> 31410451

Machine learning empowers phosphoproteome prediction in cancers.

Hongyang Li1, Yuanfang Guan1.   

Abstract

MOTIVATION: Reversible protein phosphorylation is an essential post-translational modification regulating protein functions and signaling pathways in many cellular processes. Aberrant activation of signaling pathways often contributes to cancer development and progression. The mass spectrometry-based phosphoproteomics technique is a powerful tool to investigate the site-level phosphorylation of the proteome in a global fashion, paving the way for understanding the regulatory mechanisms underlying cancers. However, this approach is time-consuming and requires expensive instruments, specialized expertise and a large amount of starting material. An alternative in silico approach is predicting the phosphoproteomic profiles of cancer patients from the available proteomic, transcriptomic and genomic data.
RESULTS: Here, we present a winning algorithm in the 2017 NCI-CPTAC DREAM Proteogenomics Challenge for predicting phosphorylation levels of the proteome across cancer patients. We integrate four components into our algorithm, including (i) baseline correlations between protein and phosphoprotein abundances, (ii) universal protein-protein interactions, (iii) shareable regulatory information across cancer tissues and (iv) associations among multi-phosphorylation sites of the same protein. When tested on a large held-out testing dataset of 108 breast and 62 ovarian cancer samples, our method ranked first in both cancer tissues, demonstrating its robustness and generalization ability.
AVAILABILITY AND IMPLEMENTATION: Our code and reproducible results are freely available on GitHub: https://github.com/GuanLab/phosphoproteome_prediction. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
© The Author(s) 2019. Published by Oxford University Press. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

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Year:  2020        PMID: 31410451     DOI: 10.1093/bioinformatics/btz639

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  5 in total

1.  Joint learning improves protein abundance prediction in cancers.

Authors:  Hongyang Li; Omer Siddiqui; Hongjiu Zhang; Yuanfang Guan
Journal:  BMC Biol       Date:  2019-12-23       Impact factor: 7.431

2.  Evidence of widespread, independent sequence signature for transcription factor cobinding.

Authors:  Manqi Zhou; Hongyang Li; Xueqing Wang; Yuanfang Guan
Journal:  Genome Res       Date:  2020-12-10       Impact factor: 9.043

Review 3.  Unconventional protein post-translational modifications: the helmsmen in breast cancer.

Authors:  Jiena Liu; Qin Wang; Yujuan Kang; Shouping Xu; Da Pang
Journal:  Cell Biosci       Date:  2022-02-25       Impact factor: 7.133

4.  Protein Phosphorylation in Serine Residues Correlates with Progression from Precancerous Lesions to Cervical Cancer in Mexican Patients.

Authors:  Juan Ramón Padilla-Mendoza; Arturo Contis-Montes de Oca; Mario Alberto Rodríguez; Mavil López-Casamichana; Jeni Bolaños; Laura Itzel Quintas-Granados; Octavio Daniel Reyes-Hernández; Fabiola Fragozo-Sandoval; Aldo Arturo Reséndiz-Albor; Claudia Vanessa Arellano-Gutiérrez; Israel López-Reyes
Journal:  Biomed Res Int       Date:  2020-04-02       Impact factor: 3.411

5.  Treatment Stratification of Patients with Metastatic Castration-Resistant Prostate Cancer by Machine Learning.

Authors:  Kaiwen Deng; Hongyang Li; Yuanfang Guan
Journal:  iScience       Date:  2019-12-26
  5 in total

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