A transcriptomics approach to expand therapeutic options and optimize clinical trials in oncology

Background: The current model of clinical drug development in oncology displays major limitations due to a high attrition rate in patient enrollment in early phase trials and a high failure rate of drugs in phase III studies. Objective: Integrating transcriptomics for selection of patients has the p...

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Veröffentlicht in:Therapeutic advances in medical oncology 2023-01, Vol.15, p.17588359231156382-17588359231156382
Hauptverfasser: Lazar, Vladimir, Zhang, Baolin, Magidi, Shai, Le Tourneau, Christophe, Raymond, Eric, Ducreux, Michel, Bresson, Catherine, Raynaud, Jacques, Wunder, Fanny, Onn, Amir, Felip, Enriqueta, Tabernero, Josep, Batist, Gerald, Kurzrock, Razelle, Rubin, Eitan, Schilsky, Richard L.
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Sprache:eng
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Zusammenfassung:Background: The current model of clinical drug development in oncology displays major limitations due to a high attrition rate in patient enrollment in early phase trials and a high failure rate of drugs in phase III studies. Objective: Integrating transcriptomics for selection of patients has the potential to achieve enhanced speed and efficacy of precision oncology trials for any targeted therapies or immunotherapies. Methods: Relative gene expression level in the metastasis and normal organ-matched tissues from the WINTHER database was used to estimate in silico the potential clinical benefit of specific treatments in a variety of metastatic solid tumors. Results: As example, high mRNA expression in tumor tissue compared to analogous normal tissue of c-MET and its ligand HGF correlated in silico with shorter overall survival (OS; p 
ISSN:1758-8359
1758-8340
1758-8359
DOI:10.1177/17588359231156382