TCRT June 2010

category image Volume 9
No. 3 (219-316)
June 2010
ISSN 1533-0338
Microarray Technology

Discovering Disease-specific Biomarker Genes for Cancer Diagnosis and Prognosis (219-230)

The large amounts of microarray data provide us a great opportunity to identify gene expression profiles (GEPs) in different tissues or disease states. Disease-specific biomarker genes likely share GEPs that are distinct in disease samples as compared with normal samples. The similarity of the GEPs may be evaluated by Pearson Correlation Coefficient (PCC) and the distinctness of GEPs may be assessed by Kolmogorov-Smirnov distance (KSD). In this study, we used the PCC and KSD metrics for GEPs to identify disease-specific (cancer-specific) biomarkers. We first analyzed and compared GEPs using microarray datasets for smoking and lung cancer. We found that the number of genes with highly different GEPs between comparing groups in smoking dataset was much larger than that in lung cancer dataset; this observation was further verified when we compared GEPs in smoking dataset with prostate cancer datasets. Moreover, our Gene Ontology analysis revealed that the top ranked biomarker candidate genes for prostate cancer were highly enriched in molecular function categories such as ‘cytoskeletal protein binding’ and biological process categories such as ‘muscle contraction’. Finally, we used two genes, ACTC1 (encoding an actin subunit) and HPN (encoding hepsin), to demonstrate the feasibility of diagnosing and monitoring prostate cancer using the expression intensity histograms of marker genes. In summary, our results suggested that this approach might prove promising and powerful for diagnosing and monitoring the patients who come to the clinic for screening or evaluation of a disease state including cancer.

Key words: Gene expression profile; Cancer biomarker; Pearson correlation coefficient; Kolmogorov-Smirnov distance; Cancer diagnosis and prognosis.

Hung-Chung Huang, Ph.D.1,2
Siyuan Zheng, Ph.D.1,2,3
Vincent VanBuren, Ph.D.5
Zhongming Zhao, Ph.D.1,2,3,4,*

1Bioinformatics Resource Center
2Functional Genomics Shared Resource
3Department of Biomedical Informatics
4Department of Cancer Biology, Vanderbilt University Medical Center Nashville, TN 37232, USA
5Department of Systems Biology and Translational Medicine, College of Medicine, Texas A&M Health Science Center, Temple, TX 76504, USA

zhongming.zhao@vanderbilt.edu

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