On the Role of Clustering and Visualization Techniques in Gene Microarray Data

As of today, bioinformatics is one of the most exciting fields of scientific research. There is a wide-ranging list of challenging problems to face, i.e., pairwise and multiple alignments, motif detection/discrimination/classification, phylogenetic tree reconstruction, protein secondary and tertiary...

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Main Authors: Angelo Ciaramella, Antonino Staiano
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Algorithms
Subjects:
Online Access:https://www.mdpi.com/1999-4893/12/6/123
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spelling doaj-f59172e91b6d4c52ab9edf306fb928ba2020-11-25T00:16:15ZengMDPI AGAlgorithms1999-48932019-06-0112612310.3390/a12060123a12060123On the Role of Clustering and Visualization Techniques in Gene Microarray DataAngelo Ciaramella0Antonino Staiano1Dipartimento di Scienze e Tecnologie, Università di Napoli Parthenope, 80133 Naples, ItalyDipartimento di Scienze e Tecnologie, Università di Napoli Parthenope, 80133 Naples, ItalyAs of today, bioinformatics is one of the most exciting fields of scientific research. There is a wide-ranging list of challenging problems to face, i.e., pairwise and multiple alignments, motif detection/discrimination/classification, phylogenetic tree reconstruction, protein secondary and tertiary structure prediction, protein function prediction, DNA microarray analysis, gene regulation/regulatory networks, just to mention a few, and an army of researchers, coming from several scientific backgrounds, focus their efforts on developing models to properly address these problems. In this paper, we aim to briefly review some of the huge amount of machine learning methods, developed in the last two decades, suited for the analysis of gene microarray data that have a strong impact on molecular biology. In particular, we focus on the wide-ranging list of data clustering and visualization techniques able to find homogeneous data groupings, and also provide the possibility to discover its connections in terms of structure, function and evolution.https://www.mdpi.com/1999-4893/12/6/123clusteringdata visualizationgene expression datadata mining
collection DOAJ
language English
format Article
sources DOAJ
author Angelo Ciaramella
Antonino Staiano
spellingShingle Angelo Ciaramella
Antonino Staiano
On the Role of Clustering and Visualization Techniques in Gene Microarray Data
Algorithms
clustering
data visualization
gene expression data
data mining
author_facet Angelo Ciaramella
Antonino Staiano
author_sort Angelo Ciaramella
title On the Role of Clustering and Visualization Techniques in Gene Microarray Data
title_short On the Role of Clustering and Visualization Techniques in Gene Microarray Data
title_full On the Role of Clustering and Visualization Techniques in Gene Microarray Data
title_fullStr On the Role of Clustering and Visualization Techniques in Gene Microarray Data
title_full_unstemmed On the Role of Clustering and Visualization Techniques in Gene Microarray Data
title_sort on the role of clustering and visualization techniques in gene microarray data
publisher MDPI AG
series Algorithms
issn 1999-4893
publishDate 2019-06-01
description As of today, bioinformatics is one of the most exciting fields of scientific research. There is a wide-ranging list of challenging problems to face, i.e., pairwise and multiple alignments, motif detection/discrimination/classification, phylogenetic tree reconstruction, protein secondary and tertiary structure prediction, protein function prediction, DNA microarray analysis, gene regulation/regulatory networks, just to mention a few, and an army of researchers, coming from several scientific backgrounds, focus their efforts on developing models to properly address these problems. In this paper, we aim to briefly review some of the huge amount of machine learning methods, developed in the last two decades, suited for the analysis of gene microarray data that have a strong impact on molecular biology. In particular, we focus on the wide-ranging list of data clustering and visualization techniques able to find homogeneous data groupings, and also provide the possibility to discover its connections in terms of structure, function and evolution.
topic clustering
data visualization
gene expression data
data mining
url https://www.mdpi.com/1999-4893/12/6/123
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