| Literature DB >> 28281552 |
Marianna Grinberg1, Dijana Djureinovic2, Hans Rr Brunnström3, Johanna Sm Mattsson2, Karolina Edlund4, Jan G Hengstler4, Linnea La Fleur2, Simon Ekman2, Hirsh Koyi5,6, Eva Branden5,6, Elisabeth Ståhle7, Karin Jirström3, Derek K Tracy8,9, Fredrik Pontén2, Johan Botling2, Jörg Rahnenführer1, Patrick Micke2.
Abstract
Numerous protein biomarkers have been analyzed to improve prognostication in non-small cell lung cancer, but have not yet demonstrated sufficient value to be introduced into clinical practice. Here, we aimed to develop and validate a prognostic model for surgically resected non-small cell lung cancer. A biomarker panel was selected based on (1) prognostic association in published literature, (2) prognostic association in gene expression data sets, (3) availability of reliable antibodies, and (4) representation of diverse biological processes. The five selected proteins (MKI67, EZH2, SLC2A1, CADM1, and NKX2-1 alias TTF1) were analyzed by immunohistochemistry on tissue microarrays including tissue from 326 non-small cell lung cancer patients. One score was obtained for each tumor and each protein. The scores were combined, with or without the inclusion of clinical parameters, and the best prognostic model was defined according to the corresponding concordance index (C-index). The best-performing model was subsequently validated in an independent cohort consisting of tissue from 345 non-small cell lung cancer patients. The model based only on protein expression did not perform better compared to clinicopathological parameters, whereas combining protein expression with clinicopathological data resulted in a slightly better prognostic performance (C-index: all non-small cell lung cancer 0.63 vs 0.64; adenocarcinoma: 0.66 vs 0.70, squamous cell carcinoma: 0.57 vs 0.56). However, this modest effect did not translate into a significantly improved accuracy of survival prediction. The combination of a prognostic biomarker panel with clinicopathological parameters did not improve survival prediction in non-small cell lung cancer, questioning the potential of immunohistochemistry-based assessment of protein biomarkers for prognostication in clinical practice.Entities:
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Year: 2017 PMID: 28281552 DOI: 10.1038/modpathol.2017.14
Source DB: PubMed Journal: Mod Pathol ISSN: 0893-3952 Impact factor: 7.842