Introduction

In this article, we propose a method for clustering that produces tight and stable clusters without forcing all points into clusters. The methodology is general but was initially motivated from cluster analysis of microarray experiments. Most current algorithms aim to assign all genes into clusters. For many biological studies, however, we are mainly interested in identifying the most informative, tight, and stable clusters of sizes, say, 20-60 genes for further investigation. We want to avoid the contamination of tightly regulated expression patterns of biologically relevant genes due to other genes whose expressions are only loosely compatible with these patterns. "Tight clustering" has been developed specifically to address this problem. It applies K-means clustering as an intermediate clustering engine. Early truncation of a hierarchical clustering tree is used to overcome the local minimum problem in K-means clustering. The tightest and most stable clusters are identified in a sequential manner through an analysis of the tendency of genes to be grouped together under repeated resampling. We validated this method in a simulated example and applied it to analyze a set of expression profiles in the study of embryonic stem cells.

Publications

  1. Tight clustering: a resampling-based approach for identifying stable and tight patterns in data.
    Cite this
    Tseng GC, Wong WH, 2005-03-01 - Biometrics

Credits

  1. George C Tseng
    Developer

  2. Wing H Wong
    Investigator

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Summary
AccessionBT000245
Tool TypeApplication
Category
PlatformsLinux/Unix
TechnologiesC, R
User InterfaceTerminal Command Line
Download Count0
Submitted ByWing H Wong