Microarray data quality analysis: lessons from the AFGC project

被引:0
|
作者
David Finkelstein
Rob Ewing
Jeremy Gollub
Fredrik Sterky
J. Michael Cherry
Shauna Somerville
机构
[1] Carnegie Institution of Washington,Department of Plant Biology
[2] Stanford University,Department of Genetics
来源
Plant Molecular Biology | 2002年 / 48卷
关键词
annotation; microarray functional genomics; normalization;
D O I
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中图分类号
学科分类号
摘要
Genome-wide expression profiling with DNA microarrays has and will provide a great deal of data to the plant scientific community. However, reliability concerns have required the development data quality tests for common systematic biases. Fortunately, most large-scale systematic biases are detectable and some are correctable by normalization. Technical replication experiments and statistical surveys indicate that these biases vary widely in severity and appearance. As a result, no single normalization or correction method currently available is able to address all the issues. However, careful sequence selection, array design, experimental design and experimental annotation can substantially improve the quality and biological of microarray data. In this review, we discuss these issues with reference to examples from the Arabidopsis Functional Genomics Consortium (AFGC) microarray project.
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页码:119 / 132
页数:13
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