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Clinically oriented prediction of patient response to targeted and immunotherapies from the tumor transcriptome

BACKGROUND: Precision oncology is gradually advancing into mainstream clinical practice, demonstrating significant survival benefits. However, eligibility and response rates remain limited in many cases, calling for better predictive biomarkers. METHODS: We present ENLIGHT, a transcriptomics-based c...

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Detalles Bibliográficos
Autores principales: Dinstag, Gal, Shulman, Eldad D., Elis, Efrat, Ben-Zvi, Doreen S., Tirosh, Omer, Maimon, Eden, Meilijson, Isaac, Elalouf, Emmanuel, Temkin, Boris, Vitkovsky, Philipp, Schiff, Eyal, Hoang, Danh-Tai, Sinha, Sanju, Nair, Nishanth Ulhas, Lee, Joo Sang, Schäffer, Alejandro A., Ronai, Ze’ev, Juric, Dejan, Apolo, Andrea B., Dahut, William L., Lipkowitz, Stanley, Berger, Raanan, Kurzrock, Razelle, Papanicolau-Sengos, Antonios, Karzai, Fatima, Gilbert, Mark R., Aldape, Kenneth, Rajagopal, Padma S., Beker, Tuvik, Ruppin, Eytan, Aharonov, Ranit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10029756/
https://www.ncbi.nlm.nih.gov/pubmed/36513065
http://dx.doi.org/10.1016/j.medj.2022.11.001
Descripción
Sumario:BACKGROUND: Precision oncology is gradually advancing into mainstream clinical practice, demonstrating significant survival benefits. However, eligibility and response rates remain limited in many cases, calling for better predictive biomarkers. METHODS: We present ENLIGHT, a transcriptomics-based computational approach that identifies clinically relevant genetic interactions and uses them to predict a patient’s response to a variety of therapies in multiple cancer types without training on previous treatment response data. We study ENLIGHT in two translationally oriented scenarios: personalized oncology (PO), aimed at prioritizing treatments for a single patient, and clinical trial design (CTD), selecting the most likely responders in a patient cohort. FINDINGS: Evaluating ENLIGHT’s performance on 21 blinded clinical trial datasets in the PO setting, we show that it can effectively predict a patient’s treatment response across multiple therapies and cancer types. Its prediction accuracy is better than previously published transcriptomics-based signatures and is comparable with that of supervised predictors developed for specific indications and drugs. In combination with the interferon-γ signature, ENLIGHT achieves an odds ratio larger than 4 in predicting response to immune checkpoint therapy. In the CTD scenario, ENLIGHT can potentially enhance clinical trial success for immunotherapies and other monoclonal antibodies by excluding non-responders while overall achieving more than 90% of the response rate attainable under an optimal exclusion strategy. CONCLUSIONS: ENLIGHT demonstrably enhances the ability to predict therapeutic response across multiple cancer types from the bulk tumor transcriptome. FUNDING: This research was supported in part by the Intramural Research Program, NIH and by the Israeli Innovation Authority.