Sample Type Bias in the Analysis of Cancer Genomes

There is widespread agreement that cancer gene discovery requires high-quality tumor samples. However, whether primary tumors or cultured samples are superior for cancer genomics has been a longstanding subject of debate. This debate has recently become more important because federally funded cancer...

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Veröffentlicht in:Cancer research (Chicago, Ill.) Ill.), 2009-07, Vol.69 (14), p.5630-5633
Hauptverfasser: SOLOMON, David A, KIM, Jung-Sik, RESSOM, Habtom W, SIBENALLER, Zita, RYKEN, Timothy, JEAN, Walter, BIGNER, Darell, HAI YAN, WALDMAN, Todd
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Sprache:eng
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Zusammenfassung:There is widespread agreement that cancer gene discovery requires high-quality tumor samples. However, whether primary tumors or cultured samples are superior for cancer genomics has been a longstanding subject of debate. This debate has recently become more important because federally funded cancer genomics has been centralized under The Cancer Genome Atlas, which has chosen to focus exclusively on primary tumors. Here, we provide a data-driven "perspective" on the effect of sample type selection on cancer genomics research. We show that, in the case of glioblastoma multiforme, primary tumors and xenografts are best for the identification of amplifications, whereas xenografts and cell lines are superior for the identification of homozygous deletions. We also note that many of the most important oncogenes and tumor suppressor genes have been discovered through the use of cell lines and xenografts, and highlight the lack of published evidence supporting the dogma that ex vivo culture generates artifactual genetic lesions. Based on this analysis, we suggest that cancer genomics projects such as The Cancer Genome Atlas should include a variety of sample types such as xenografts and cell lines in their integrated genomic analysis of cancer.
ISSN:0008-5472
1538-7445
DOI:10.1158/0008-5472.CAN-09-1055