Key aspects of analyzing microarray gene-expression data
Creators
Description
One major challenge with the use of microarray technology is the analysis of massive amounts of gene-expression data for various applications. This review addresses the key aspects of the microarray gene-expression data analysis for the two most common objectives: class comparison and class prediction. Class comparison mainly aims to select which genes are differentially expressed across experimental conditions. Gene selection is separated into two steps: gene ranking and assigning a significance level. Class prediction uses expression profiling analysis to develop a prediction model for patient selection, diagnostic prediction or prognostic classification. Development of a prediction model involves two components: model building and performance assessment. It also describes two additional data analysis methods: gene-class testing and multiple ordering criteria.
Files
article.pdf
Files
(239.0 kB)
Name | Size | Download all |
---|---|---|
md5:a6314c24185f817cae001ca2d0bbe03d
|
239.0 kB | Preview Download |