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Prediction of osteoporosis candidate genes by computational disease-gene identification strategy

โœ Scribed by Qing-Yang Huang; Gloria H. Y. Li; William M. W. Cheung; You-Qiang Song; Annie W. C. Kung


Publisher
Nature Publishing Group
Year
2008
Tongue
English
Weight
457 KB
Volume
53
Category
Article
ISSN
1435-232X

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## Abstract Tumor suppressor genes (TSGs) are sometimes inactivated by transcriptional silencing through promoter hypermethylation. To identify novel methylated TSGs in melanoma, we carried out global mRNA expression profiling on a panel of 12 melanoma cell lines treated with a combination of 5โ€Aza