Purpose: Several studies have shown that different tumour types sharing a driver gene mutation do not respond uniformly to the same targeted agent. Our aim was to use an unbiased network-based approach to investigate this fundamental issue using BRAF V600E mutant tumours and the BRAF inhibitor vemurafenib. Methods: We applied SWIM, a software able to identify putative regulatory (switch) genes involved in drastic changes to the cell phenotype, to gene expression profiles of different BRAF V600E mutant cancers and their normal counterparts in order to identify the switch genes that could potentially explain the heterogeneity of these tumours’ responses to vemurafenib. Results: We identified lung adenocarcinoma as the tumour with the highest number of switch genes (298) compared to its normal counterpart. By looking for switch genes encoding for kinases with homology sequences similar to known vemurafenib targets, we found that thyroid cancer and lung adenocarcinoma have a similar number of putative targetable switch gene kinases (5 and 6, respectively) whereas colorectal cancer has just one. Conclusions: We are persuaded that our network analysis may aid in the comprehension of molecular mechanisms underlying the different responses to vemurafenib in BRAF V600E mutant tumours.

BRAF V600E -mutant cancers display a variety of networks by SWIM analysis: prediction of vemurafenib clinical response / Falcone, Rosa; Conte, Federica; Fiscon, Giulia; Pecce, Valeria; Sponziello, Marialuisa; Durante, Cosimo; Farina, Lorenzo; Filetti, Sebastiano; Paci, Paola; Verrienti, Antonella. - In: ENDOCRINE. - ISSN 1355-008X. - 64:2(2019), pp. 406-413. [10.1007/s12020-019-01890-4]

BRAF V600E -mutant cancers display a variety of networks by SWIM analysis: prediction of vemurafenib clinical response

Falcone, Rosa;Conte, Federica;Fiscon, Giulia;Pecce, Valeria;Sponziello, Marialuisa;Durante, Cosimo;Farina, Lorenzo
Methodology
;
Filetti, Sebastiano;Paci, Paola
;
Verrienti, Antonella
2019

Abstract

Purpose: Several studies have shown that different tumour types sharing a driver gene mutation do not respond uniformly to the same targeted agent. Our aim was to use an unbiased network-based approach to investigate this fundamental issue using BRAF V600E mutant tumours and the BRAF inhibitor vemurafenib. Methods: We applied SWIM, a software able to identify putative regulatory (switch) genes involved in drastic changes to the cell phenotype, to gene expression profiles of different BRAF V600E mutant cancers and their normal counterparts in order to identify the switch genes that could potentially explain the heterogeneity of these tumours’ responses to vemurafenib. Results: We identified lung adenocarcinoma as the tumour with the highest number of switch genes (298) compared to its normal counterpart. By looking for switch genes encoding for kinases with homology sequences similar to known vemurafenib targets, we found that thyroid cancer and lung adenocarcinoma have a similar number of putative targetable switch gene kinases (5 and 6, respectively) whereas colorectal cancer has just one. Conclusions: We are persuaded that our network analysis may aid in the comprehension of molecular mechanisms underlying the different responses to vemurafenib in BRAF V600E mutant tumours.
2019
BRAF V600E; Network medicine; Prediction of response; Vemurafenib; Endocrinology, Diabetes and Metabolism; Endocrinology
01 Pubblicazione su rivista::01a Articolo in rivista
BRAF V600E -mutant cancers display a variety of networks by SWIM analysis: prediction of vemurafenib clinical response / Falcone, Rosa; Conte, Federica; Fiscon, Giulia; Pecce, Valeria; Sponziello, Marialuisa; Durante, Cosimo; Farina, Lorenzo; Filetti, Sebastiano; Paci, Paola; Verrienti, Antonella. - In: ENDOCRINE. - ISSN 1355-008X. - 64:2(2019), pp. 406-413. [10.1007/s12020-019-01890-4]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1256896
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