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http://dx.doi.org/10.5351/KJAS.2005.18.1.115

Print-tip Normalization for DNA Microarray Data  

Yi Sung-Gon (Department of Statistics, Seoul National University)
Park Taesung (Department of Statistics, Seoul National University)
Kang Sung Hyun (Department of Statistics, Seoul National University)
Lee Seung-Yeaun (Department of Applied Mathematics, Sejong University)
Lee Yang Sung (Department of Biochemistry, Hanyang University)
Publication Information
The Korean Journal of Applied Statistics / v.18, no.1, 2005 , pp. 115-127 More about this Journal
Abstract
DNA microarray experiments allow us to study expression of thousands of genes simultaneously, Normalization is a process for removing noises occurred during the microarray experiment, Print-tip is regarded as one main sources of noises, In this paper, we review normalization methods most commonly used in the microarray experiments, Especially, we investigate the effects of print-tips through simulated data sets.
Keywords
DNA microarray; Print-tip; Normalization;
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