Liang Shuang, Li Yizheng, Be Xiaobing, Howes Steve, Liu Wei
Bioinformatics, Wyeth Research, Cambridge, Massachusetts 02140, USA.
Physiol Genomics. 2006 Jul 12;26(2):158-62. doi: 10.1152/physiolgenomics.00313.2005. Epub 2006 May 9.
The widespread use of DNA microarray technologies has generated large amounts of data from various tissue and/or cell types. These data set the stage to answer the question of tissue specificity of human transcriptome in a comprehensive manner. Our focus is to uncover the tissue-gene relationship by identifying genes that are preferentially expressed in a small number of tissue types. The tissue selectivity would shed light on the potential physiological functions of these genes and provides an indispensable reference to compare against disease pathophysiology and to identify or validate tissue-specific drug targets. Here we describe a systematic computational and statistical approach to profile gene expression data to identify tissue-selective genes with the use of a more extensive data set and a well-established multiple-comparison procedure with error rate control. Expression data of 35,152 probe sets in 97 normal human tissue types were analyzed, and 3,919 genes were identified to be selective to one or a few tissue types. We presented results of these tissue-selective genes and compared them to those identified by other studies.
DNA微阵列技术的广泛应用已从各种组织和/或细胞类型中产生了大量数据。这些数据为全面回答人类转录组的组织特异性问题奠定了基础。我们的重点是通过识别在少数组织类型中优先表达的基因来揭示组织与基因的关系。组织选择性将有助于阐明这些基因的潜在生理功能,并为比较疾病病理生理学以及识别或验证组织特异性药物靶点提供不可或缺的参考。在此,我们描述了一种系统的计算和统计方法,用于分析基因表达数据,以利用更广泛的数据集和成熟的错误率控制多重比较程序来识别组织选择性基因。我们分析了97种正常人体组织类型中35152个探针集的表达数据,确定了3919个对一种或几种组织类型具有选择性的基因。我们展示了这些组织选择性基因的结果,并将其与其他研究确定的结果进行了比较。