An introduction to gene expression data clustering algorithims

DNA microarray, also called oligonucleotide array, gene array, DNA chip, gene microarray, or genome chip, is a high-throughput technology that allows detection of expression of thousands of genes simultaneously. Among a variety of its experimental protocols, one is to first fix thousands of DNA pro...

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Main Author: Guo, Ling Qiong
Other Authors: Chen Xin
Format: Theses and Dissertations
Language:English
Published: 2010
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Online Access:http://hdl.handle.net/10356/41849
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-418492023-02-28T23:50:08Z An introduction to gene expression data clustering algorithims Guo, Ling Qiong Chen Xin School of Physical and Mathematical Sciences DRNTU::Science::Mathematics::Applied mathematics DNA microarray, also called oligonucleotide array, gene array, DNA chip, gene microarray, or genome chip, is a high-throughput technology that allows detection of expression of thousands of genes simultaneously. Among a variety of its experimental protocols, one is to first fix thousands of DNA probes on an objective buttress by situ-synthesis or micro-print to produce a two-dimension DNA probe matrix, and then hybridize these DNA probes with a biological (cDNA or cRNA) sample. Microarray expression data is hence collected by measuring the relative abundances of the hybridized probes, to quantify the activities of genes under a biological experiment. Therefore, as commonly believed, the biological signals of genes are hidden in microarray expression data. However, detecting these hidden biological signals presents a big challenge to the microarray research community. Cluster analysis is one of analytical techniques to detect the biological signals hidden in microarray expression data. Given an expression dataset, it aims to find groups of genes whose expression profiles are similar to each other within a group while dissimilar between groups. Clustering often serves as a very preliminary step in gene expression analysis, and allows us to gain valuable insights into the underlying biological mechanism. Clustering is a hard while well-studied problem. There are many algorithms that have been developed in the literature, some of which are intended in particular for gene expression data clustering. The main goal of this thesis is to discuss many popular clustering algorithms which have been extensively applied to microarray expression data for biological discovery, including hierarchical clustering, K-means clustering, SOM-based clustering and model-based clustering. ​Master of Science 2010-08-18T07:33:22Z 2010-08-18T07:33:22Z 2008 2008 Thesis http://hdl.handle.net/10356/41849 en 63 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Science::Mathematics::Applied mathematics
spellingShingle DRNTU::Science::Mathematics::Applied mathematics
Guo, Ling Qiong
An introduction to gene expression data clustering algorithims
description DNA microarray, also called oligonucleotide array, gene array, DNA chip, gene microarray, or genome chip, is a high-throughput technology that allows detection of expression of thousands of genes simultaneously. Among a variety of its experimental protocols, one is to first fix thousands of DNA probes on an objective buttress by situ-synthesis or micro-print to produce a two-dimension DNA probe matrix, and then hybridize these DNA probes with a biological (cDNA or cRNA) sample. Microarray expression data is hence collected by measuring the relative abundances of the hybridized probes, to quantify the activities of genes under a biological experiment. Therefore, as commonly believed, the biological signals of genes are hidden in microarray expression data. However, detecting these hidden biological signals presents a big challenge to the microarray research community. Cluster analysis is one of analytical techniques to detect the biological signals hidden in microarray expression data. Given an expression dataset, it aims to find groups of genes whose expression profiles are similar to each other within a group while dissimilar between groups. Clustering often serves as a very preliminary step in gene expression analysis, and allows us to gain valuable insights into the underlying biological mechanism. Clustering is a hard while well-studied problem. There are many algorithms that have been developed in the literature, some of which are intended in particular for gene expression data clustering. The main goal of this thesis is to discuss many popular clustering algorithms which have been extensively applied to microarray expression data for biological discovery, including hierarchical clustering, K-means clustering, SOM-based clustering and model-based clustering.
author2 Chen Xin
author_facet Chen Xin
Guo, Ling Qiong
format Theses and Dissertations
author Guo, Ling Qiong
author_sort Guo, Ling Qiong
title An introduction to gene expression data clustering algorithims
title_short An introduction to gene expression data clustering algorithims
title_full An introduction to gene expression data clustering algorithims
title_fullStr An introduction to gene expression data clustering algorithims
title_full_unstemmed An introduction to gene expression data clustering algorithims
title_sort introduction to gene expression data clustering algorithims
publishDate 2010
url http://hdl.handle.net/10356/41849
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