5 protein-based signature for resectable lung squamous cell carcinoma improves the prognostic performance of the TNM staging

Author:

Martínez-Terroba Elena,Behrens Carmen,Agorreta JackelineORCID,Monsó Eduard,Millares Laura,Felip Enriqueta,Rosell Rafael,Ramirez José Luis,Remirez Ana,Torre Wenceslao,Gil-Bazo Ignacio,Idoate Miguel A,de-Torres Juan PORCID,Pio Ruben,Wistuba Ignacio I,Pajares María J,Montuenga Luis M

Abstract

IntroductionPrognostic biomarkers have been very elusive in the lung squamous cell carcinoma (SCC) and none is currently being used in the clinical setting. We aimed to identify and validate the clinical utility of a protein-based prognostic signature to stratify patients with early lung SCC according to their risk of recurrence or death.MethodsPatients were staged following the new International Association for the Study of Lung Cancer (IASLC) staging criteria (eighth edition, 2018). Three independent retrospective cohorts of 117, 96 and 105 patients with lung SCC were analysed to develop and validate a prognostic signature based on immunohistochemistry for five proteins.ResultsWe identified a five protein-based signature whose prognostic index (PI) was an independent and significant predictor of disease-free survival (DFS) (p<0.001; HR=4.06, 95% CI 2.18 to 7.56) and overall survival (OS) (p=0.004; HR=2.38, 95% CI 1.32 to 4.31). The prognostic capability of PI was confirmed in an external multi-institutional cohort for DFS (p=0.042; HR=2.01, 95% CI 1.03 to 3.94) and for OS (p=0.031; HR=2.29, 95% CI 1.08 to 4.86). Moreover, PI added complementary information to the newly established IASLC TNM 8th edition staging system. A combined prognostic model including both molecular and anatomical (TNM) criteria improved the risk stratification in both cohorts (p<0.05).ConclusionWe have identified and validated a clinically feasible protein-based prognostic model that complements the updated TNM system allowing more accurate risk stratification. This signature may be used as an advantageous tool to improve the clinical management of the patients, allowing the reduction of lung SCC mortality through a more accurate knowledge of the patient’s potential outcome.

Funder

Oncologia Torácica SEPAR y Ciber de Enfermedades Respiratorias-CIBERES–FEDER

RTICC

Spanish Ministry of Economy and Innovation and Fondo de Investigación Sanitaria-Fondo Europeo de Desarrollo Regional

AECC Scientific Foundation

CIBERONC

FIMA

Publisher

BMJ

Subject

Pulmonary and Respiratory Medicine

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