Classification of human lung carcinomas by mRNA expression profiling reveals distinct adenocarcinoma subclasses

Arindam Bhattacharjee(Dana-Farber Cancer Institute), William G. Richards(Dana-Farber Cancer Institute), Jane Staunton(Dana-Farber Cancer Institute), Cheng Li(Dana-Farber Cancer Institute), Stefano Monti(Dana-Farber Cancer Institute), Priya Vasa(Dana-Farber Cancer Institute), Christine Ladd(Dana-Farber Cancer Institute), Javad Beheshti(Dana-Farber Cancer Institute), Raphael Bueno(Dana-Farber Cancer Institute), Michael A. Gillette(Dana-Farber Cancer Institute), Massimo Loda(Dana-Farber Cancer Institute), Griffin M. Weber(Dana-Farber Cancer Institute), Eugene J. Mark(Dana-Farber Cancer Institute), Eric S. Lander(Dana-Farber Cancer Institute), Wing Hung Wong(Dana-Farber Cancer Institute), Bruce E. Johnson(Dana-Farber Cancer Institute), Todd R. Golub(Harvard University Press), David J. Sugarbaker(Dana-Farber Cancer Institute), Matthew Meyerson(Dana-Farber Cancer Institute)
Proceedings of the National Academy of Sciences
November 13, 2001
Cited by 2,584Open Access
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Abstract

We have generated a molecular taxonomy of lung carcinoma, the leading cause of cancer death in the United States and worldwide. Using oligonucleotide microarrays, we analyzed mRNA expression levels corresponding to 12,600 transcript sequences in 186 lung tumor samples, including 139 adenocarcinomas resected from the lung. Hierarchical and probabilistic clustering of expression data defined distinct subclasses of lung adenocarcinoma. Among these were tumors with high relative expression of neuroendocrine genes and of type II pneumocyte genes, respectively. Retrospective analysis revealed a less favorable outcome for the adenocarcinomas with neuroendocrine gene expression. The diagnostic potential of expression profiling is emphasized by its ability to discriminate primary lung adenocarcinomas from metastases of extra-pulmonary origin. These results suggest that integration of expression profile data with clinical parameters could aid in diagnosis of lung cancer patients.


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