规范化(社会学)
微阵列分析技术
转化(遗传学)
微阵列数据库
数据库规范化
基因芯片分析
微阵列
计算机科学
数据转换
计算生物学
标准分
基因表达谱
统计假设检验
数据挖掘
DNA微阵列
生物信息学
基因表达
数学
统计
基因
生物
遗传学
模式识别(心理学)
人工智能
数据仓库
社会学
人类学
作者
Chris Cheadle,Marquis P. Vawter,William J. Freed,Kevin G. Becker
标识
DOI:10.1016/s1525-1578(10)60455-2
摘要
High-throughput cDNA microarray technology allows for the simultaneous analysis of gene expression levels for thousands of genes and as such, rapid, relatively simple methods are needed to store, analyze, and cross-compare basic microarray data. The application of a classical method of data normalization, Z score transformation, provides a way of standardizing data across a wide range of experiments and allows the comparison of microarray data independent of the original hybridization intensities. Data normalized by Z score transformation can be used directly in the calculation of significant changes in gene expression between different samples and conditions. We used Z scores to compare several different methods for predicting significant changes in gene expression including fold changes, Z ratios, Z and t statistical tests. We conclude that the Z score transformation normalization method accompanied by either Z ratios or Z tests for significance estimates offers a useful method for the basic analysis of microarray data. The results provided by these methods can be as rigorous and are no more arbitrary than other test methods, and, in addition, they have the advantage that they can be easily adapted to standard spreadsheet programs.
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