作者
Curtis Huttenhower, Avi Flamholz, Jessica Landis, Sauhard Sahi, Chad Myers, Kellen Olszewski, Matthew Hibbs, Nathan Siemers, Olga Troyanskaya, Hilary Coller
发表日期
2007/7/12
期刊
Bmc Bioinformatics
卷号
8
期号
1
页码范围
250
出版商
BioMed Central Ltd
简介
Background
The availability of microarrays measuring thousands of genes simultaneously across hundreds of biological conditions represents an opportunity to understand both individual biological pathways and the integrated workings of the cell. However, translating this amount of data into biological insight remains a daunting task. An important initial step in the analysis of microarray data is clustering of genes with similar behavior. A number of classical techniques are commonly used to perform this task, particularly hierarchical and K-means clustering, and many novel approaches have been suggested recently. While these approaches are useful, they are not without drawbacks; these methods can find clusters in purely random data, and even clusters enriched for biological functions can be skewed towards a small number of processes (e.g. ribosomes …
引用总数
2006200720082009201020112012201320142015201620172018201920202021202220231861191541657541454
学术搜索中的文章