ProtFus: A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins

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ProtFus : A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins. / Tagore, Somnath; Gorohovski, Alessandro; Jensen, Lars Juhl; Frenkel-Morgenstern, Milana.

In: PLOS Computational Biology, Vol. 15, No. 8, e1007239, 2019.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Tagore, S, Gorohovski, A, Jensen, LJ & Frenkel-Morgenstern, M 2019, 'ProtFus: A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins', PLOS Computational Biology, vol. 15, no. 8, e1007239. https://doi.org/10.1371/journal.pcbi.1007239

APA

Tagore, S., Gorohovski, A., Jensen, L. J., & Frenkel-Morgenstern, M. (2019). ProtFus: A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins. PLOS Computational Biology, 15(8), [e1007239]. https://doi.org/10.1371/journal.pcbi.1007239

Vancouver

Tagore S, Gorohovski A, Jensen LJ, Frenkel-Morgenstern M. ProtFus: A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins. PLOS Computational Biology. 2019;15(8). e1007239. https://doi.org/10.1371/journal.pcbi.1007239

Author

Tagore, Somnath ; Gorohovski, Alessandro ; Jensen, Lars Juhl ; Frenkel-Morgenstern, Milana. / ProtFus : A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins. In: PLOS Computational Biology. 2019 ; Vol. 15, No. 8.

Bibtex

@article{e949b09e643a46d3970b3eb88301c9cc,
title = "ProtFus: A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins",
abstract = "Tailored therapy aims to cure cancer patients effectively and safely, based on the complex interactions between patients' genomic features, disease pathology and drug metabolism. Thus, the continual increase in scientific literature drives the need for efficient methods of data mining to improve the extraction of useful information from texts based on patients' genomic features. An important application of text mining to tailored therapy in cancer encompasses the use of mutations and cancer fusion genes as moieties that change patients' cellular networks to develop cancer, and also affect drug metabolism. Fusion proteins, which are derived from the slippage of two parental genes, are produced in cancer by chromosomal aberrations and trans-splicing. Given that the two parental proteins for predicted fusion proteins are known, we used our previously developed method for identifying chimeric protein-protein interactions (ChiPPIs) associated with the fusion proteins. Here, we present a validation approach that receives fusion proteins of interest, predicts their cellular network alterations by ChiPPI and validates them by our new method, ProtFus, using an online literature search. This process resulted in a set of 358 fusion proteins and their corresponding protein interactions, as a training set for a Na{\"i}ve Bayes classifier, to identify predicted fusion proteins that have reliable evidence in the literature and that were confirmed experimentally. Next, for a test group of 1817 fusion proteins, we were able to identify from the literature 2908 PPIs in total, across 18 cancer types. The described method, ProtFus, can be used for screening the literature to identify unique cases of fusion proteins and their PPIs, as means of studying alterations of protein networks in cancers. Availability: http://protfus.md.biu.ac.il/.",
author = "Somnath Tagore and Alessandro Gorohovski and Jensen, {Lars Juhl} and Milana Frenkel-Morgenstern",
year = "2019",
doi = "10.1371/journal.pcbi.1007239",
language = "English",
volume = "15",
journal = "P L o S Computational Biology (Online)",
issn = "1553-734X",
publisher = "Public Library of Science",
number = "8",

}

RIS

TY - JOUR

T1 - ProtFus

T2 - A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins

AU - Tagore, Somnath

AU - Gorohovski, Alessandro

AU - Jensen, Lars Juhl

AU - Frenkel-Morgenstern, Milana

PY - 2019

Y1 - 2019

N2 - Tailored therapy aims to cure cancer patients effectively and safely, based on the complex interactions between patients' genomic features, disease pathology and drug metabolism. Thus, the continual increase in scientific literature drives the need for efficient methods of data mining to improve the extraction of useful information from texts based on patients' genomic features. An important application of text mining to tailored therapy in cancer encompasses the use of mutations and cancer fusion genes as moieties that change patients' cellular networks to develop cancer, and also affect drug metabolism. Fusion proteins, which are derived from the slippage of two parental genes, are produced in cancer by chromosomal aberrations and trans-splicing. Given that the two parental proteins for predicted fusion proteins are known, we used our previously developed method for identifying chimeric protein-protein interactions (ChiPPIs) associated with the fusion proteins. Here, we present a validation approach that receives fusion proteins of interest, predicts their cellular network alterations by ChiPPI and validates them by our new method, ProtFus, using an online literature search. This process resulted in a set of 358 fusion proteins and their corresponding protein interactions, as a training set for a Naïve Bayes classifier, to identify predicted fusion proteins that have reliable evidence in the literature and that were confirmed experimentally. Next, for a test group of 1817 fusion proteins, we were able to identify from the literature 2908 PPIs in total, across 18 cancer types. The described method, ProtFus, can be used for screening the literature to identify unique cases of fusion proteins and their PPIs, as means of studying alterations of protein networks in cancers. Availability: http://protfus.md.biu.ac.il/.

AB - Tailored therapy aims to cure cancer patients effectively and safely, based on the complex interactions between patients' genomic features, disease pathology and drug metabolism. Thus, the continual increase in scientific literature drives the need for efficient methods of data mining to improve the extraction of useful information from texts based on patients' genomic features. An important application of text mining to tailored therapy in cancer encompasses the use of mutations and cancer fusion genes as moieties that change patients' cellular networks to develop cancer, and also affect drug metabolism. Fusion proteins, which are derived from the slippage of two parental genes, are produced in cancer by chromosomal aberrations and trans-splicing. Given that the two parental proteins for predicted fusion proteins are known, we used our previously developed method for identifying chimeric protein-protein interactions (ChiPPIs) associated with the fusion proteins. Here, we present a validation approach that receives fusion proteins of interest, predicts their cellular network alterations by ChiPPI and validates them by our new method, ProtFus, using an online literature search. This process resulted in a set of 358 fusion proteins and their corresponding protein interactions, as a training set for a Naïve Bayes classifier, to identify predicted fusion proteins that have reliable evidence in the literature and that were confirmed experimentally. Next, for a test group of 1817 fusion proteins, we were able to identify from the literature 2908 PPIs in total, across 18 cancer types. The described method, ProtFus, can be used for screening the literature to identify unique cases of fusion proteins and their PPIs, as means of studying alterations of protein networks in cancers. Availability: http://protfus.md.biu.ac.il/.

U2 - 10.1371/journal.pcbi.1007239

DO - 10.1371/journal.pcbi.1007239

M3 - Journal article

C2 - 31437145

VL - 15

JO - P L o S Computational Biology (Online)

JF - P L o S Computational Biology (Online)

SN - 1553-734X

IS - 8

M1 - e1007239

ER -

ID: 227087122