Lung cancer is the most common cancer worldwide and has the highest mortality rate. Carcinomas comprise 95% of all lung malignancies, the vast majority of which are non-small cell lung carcinomas (NSCLC). Increasingly, the diagnosis of lung cancer is established by examination of small tissue specimens obtained by minimally invasive techniques. It is critical to employ these tissues at maximum efficiency in order to render an accurate pathologic diagnosis and to perform theranostic studies, either genomic or by immunohistochemistry, to demonstrate genetic mutations that make patients eligible for molecularly targeted agents. Currently Thyroid Transcription Factor-1 (TTF-1) and Napsin A are the most commonly used immunohistochemical (IHC) stains to identify primary lung adenocarcinoma, and p40 and cytokeratin 5/6 (CK5/6) are used for squamous cell carcinoma. IHC stains for these markers, are performed either individually (IHC brown staining) or in combination as dual immunostains (i.e. TTF-1 + Napsin A and p40 + CK5/6, utilizing brown and red chromogens). Here we present a novel, truly multiplex immunohistochemical approach that combines staining with the above four antibodies on a single tissue section utilizing four different chromogens to accurately diagnose primary lung adenocarcinomas, squamous cell carcinomas, and combined adenosquamous carcinomas of the lung. Each marker is represented by a distinct color that can be read by a pathologist, using standard, bright field microscopy. We evaluated the ability of pathologists to differentiate NSCLCs using the multiplexed assay as compared to standard, single marker per slide diaminobenzidine (DAB)-based IHC. All cases in a cohort of 264 NSCLCs showed concordance of information (including positivity of stain, intensity of stain and coverage) between single IHC stains and the multiplex assay. This new multiplex IHC offers the capability to accurately diagnose and sub-classify primary lung NSCLCs, while conserving precious tissue for additional testing.
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http://dx.doi.org/10.1016/j.anndiagpath.2019.151454 | DOI Listing |
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