Conventional approaches to predict protein involvement in cancer often rely on defining either aberrant mutations at the single-gene level or correlating/anti-correlating transcript levels with patient survival. These approaches are typically conducted independently and focus on one protein at a time, overlooking nucleotide substitutions outside of coding regions or mutational co-occurrences in genes within the same interaction network. Here, we present CancerHubs, a method that integrates unbiased mutational data, clinical outcome predictions and interactomics to define novel cancer-related protein hubs. Through this approach, we identified TGOLN2 as a putative novel broad cancer tumour suppressor and EFTUD2 as a putative novel multiple myeloma oncogene.

CancerHubs: a systematic data mining and elaboration approach for identifying novel cancer-related protein interaction hubs / I. Ferrari, F. DE GROSSI, G. Lai, S. Oliveto, G. Deroma, S. Biffo, N. Manfrini. - In: BRIEFINGS IN BIOINFORMATICS. - ISSN 1477-4054. - 26:1(2025 Jan), pp. bbae635.1-bbae635.15. [10.1093/bib/bbae635]

CancerHubs: a systematic data mining and elaboration approach for identifying novel cancer-related protein interaction hubs

I. Ferrari
Primo
;
F. DE GROSSI
Secondo
;
G. Lai;S. Oliveto;G. Deroma;S. Biffo
Penultimo
;
N. Manfrini
Ultimo
2025

Abstract

Conventional approaches to predict protein involvement in cancer often rely on defining either aberrant mutations at the single-gene level or correlating/anti-correlating transcript levels with patient survival. These approaches are typically conducted independently and focus on one protein at a time, overlooking nucleotide substitutions outside of coding regions or mutational co-occurrences in genes within the same interaction network. Here, we present CancerHubs, a method that integrates unbiased mutational data, clinical outcome predictions and interactomics to define novel cancer-related protein hubs. Through this approach, we identified TGOLN2 as a putative novel broad cancer tumour suppressor and EFTUD2 as a putative novel multiple myeloma oncogene.
cancer; clinical outcome prediction; interactomics; mutational data; oncogene; protein hub; proteomics; tumour suppressor;
Settore BIOS-04/A - Anatomia, biologia cellulare e biologia dello sviluppo comparate
Settore BIOS-08/A - Biologia molecolare
Settore BIOS-10/A - Biologia cellulare e applicata
gen-2025
7-dic-2024
https://academic.oup.com/bib/article/26/1/bbae635/7918695?searchresult=1
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1128415
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