International Journal of Molecular Sciences (Mar 2024)

Six-Gene Signature for Differential Diagnosis and Therapeutic Decisions in Non-Small-Cell Lung Cancer—A Validation Study

  • Radoslaw Charkiewicz,
  • Anetta Sulewska,
  • Piotr Karabowicz,
  • Grzegorz Lapuc,
  • Alicja Charkiewicz,
  • Marcin Kraska,
  • Joanna Pancewicz,
  • Malgorzata Lukasik,
  • Miroslaw Kozlowski,
  • Rafal Stec,
  • Dominika Ziembicka,
  • Weronika Piszcz,
  • Wojciech Miltyk,
  • Wieslawa Niklinska

DOI
https://doi.org/10.3390/ijms25073607
Journal volume & issue
Vol. 25, no. 7
p. 3607

Abstract

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Non-small-cell lung cancer (NSCLC) poses a challenge due to its heterogeneity, necessitating precise histopathological subtyping and prognostication for optimal treatment decision-making. Molecular markers emerge as a potential solution, overcoming the limitations of conventional methods and supporting the diagnostic–therapeutic interventions. In this study, we validated the expression of six genes (MIR205HG, KRT5, KRT6A, KRT6C, SERPINB5, and DSG3), previously identified within a 53-gene signature developed by our team, utilizing gene expression microarray technology. Real-time PCR on 140 thoroughly characterized early-stage NSCLC samples revealed substantial upregulation of all six genes in squamous cell carcinoma (SCC) compared to adenocarcinoma (ADC), regardless of clinical factors. The decision boundaries of the logistic regression model demonstrated effective separation of the relative expression levels between SCC and ADC for most genes, excluding KRT6C. Logistic regression and gradient boosting decision tree classifiers, incorporating all six validated genes, exhibited notable performance (AUC: 0.8930 and 0.8909, respectively) in distinguishing NSCLC subtypes. Nevertheless, our investigation revealed that the gene expression profiles failed to yield predictive value regarding the progression of early-stage NSCLC. Our molecular diagnostic models manifest the potential for an exhaustive molecular characterization of NSCLC, subsequently informing personalized treatment decisions and elevating the standards of clinical management and prognosis for patients.

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