Prediction of adjuvant chemotherapy response in triple negative breast cancer with discovery and targeted proteomics

Angelo Gámez‐Pozo(Hospital Universitario La Paz), Lucía Trilla‐Fuertes, Guillermo Prado-Vázquez(Hospital Universitario La Paz), Cristina Chiva(Universitat Pompeu Fabra), Rocío López‐Vacas(Hospital Universitario La Paz), Paolo Nanni(University of Zurich), Julia Berges‐Soria(Hospital Universitario La Paz), Jonas Grossmann(University of Zurich), Mariana Díaz‐Almirón(Hospital Universitario La Paz), Eva Ciruelos(Hospital Universitario 12 De Octubre), Eduard Sabidó(Universitat Pompeu Fabra), Enrique Espinosa(Hospital Universitario La Paz), Juan Ángel Fresno Vara(Hospital Universitario La Paz)
PLoS ONE
June 8, 2017
Cited by 35Open Access
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Abstract

BACKGROUND: Triple-negative breast cancer (TNBC) accounts for 15-20% of all breast cancers and usually requires the administration of adjuvant chemotherapy after surgery but even with this treatment many patients still suffer from a relapse. The main objective of this study was to identify proteomics-based biomarkers that predict the response to standard adjuvant chemotherapy, so that patients at are not going to benefit from it can be offered therapeutic alternatives. METHODS: We analyzed the proteome of a retrospective series of formalin-fixed, paraffin-embedded TNBC tissue applying high-throughput label-free quantitative proteomics. We identified several protein signatures with predictive value, which were validated with quantitative targeted proteomics in an independent cohort of patients and further evaluated in publicly available transcriptomics data. RESULTS: Using univariate Cox analysis, a panel of 18 proteins was significantly associated with distant metastasis-free survival of patients (p<0.01). A reduced 5-protein profile with prognostic value was identified and its prediction performance was assessed in an independent targeted proteomics experiment and a publicly available transcriptomics dataset. Predictor P5 including peptides from proteins RAC2, RAB6A, BIEA and IPYR was the best performance protein combination in predicting relapse after adjuvant chemotherapy in TNBC patients. CONCLUSIONS: This study identified a protein combination signature that complements histopathological prognostic factors in TNBC treated with adjuvant chemotherapy. The protein signature can be used in paraffin-embedded samples, and after a prospective validation in independent series, it could be used as predictive clinical test in order to recommend participation in clinical trials or a more exhaustive follow-up.


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