Slonim Donna K
Department of Genomics, Wyeth Research, 35 Cambridge Park Drive, Cambridge, Massachusetts 02140, USA.
Nat Genet. 2002 Dec;32 Suppl:502-8. doi: 10.1038/ng1033.
Many different biological questions are routinely studied using transcriptional profiling on microarrays. A wide range of approaches are available for gleaning insights from the data obtained from such experiments. The appropriate choice of data-analysis technique depends both on the data and on the goals of the experiment. This review summarizes some of the common themes in microarray data analysis, including detection of differential expression, clustering, and predicting sample characteristics. Several approaches to each problem, and their relative merits, are discussed and key areas for additional research highlighted.
许多不同的生物学问题通常使用微阵列转录谱分析来进行研究。从这类实验获得的数据中获取见解有多种方法。数据分析技术的恰当选择既取决于数据,也取决于实验目的。本综述总结了微阵列数据分析中的一些常见主题,包括差异表达检测、聚类以及预测样本特征。讨论了针对每个问题的几种方法及其相对优点,并突出了有待进一步研究的关键领域。