Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks

The biologists now face with the masses of high dimensional datasets generated from various high-throughput technologies, which are outputs of complex inter-connected biological networks at different levels driven by a number of hidden regulatory signals. So far, many computational and statistical m...

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Main Authors: Alireza Zomorrodi, Bahram Nasernejad, Jahanshah Kabudian
Format: Article
Language:English
Published: Iranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECR 2006-12-01
Series:Iranian Journal of Chemistry & Chemical Engineering
Subjects:
pca
ica
Online Access:http://www.ijcce.ac.ir/article_7624_d75db37e1f1909bda2d69318a40cdbbe.pdf
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spelling doaj-e8c04034d68a4e3eaea5bef481053f412020-11-25T02:42:02ZengIranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECRIranian Journal of Chemistry & Chemical Engineering 1021-99861021-99862006-12-01254177624Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological NetworksAlireza Zomorrodi0Bahram Nasernejad1Jahanshah Kabudian2Department of Chemical Engineering, Amirkabir University of Technology, Tehran, I.R. IRANDepartment of Chemical Engineering, Amirkabir University of Technology, Tehran, I.R. IRANDepartment of Computer Engineering & Information Technology, Amirkabir University of Technology, Tehran, I.R. IRANThe biologists now face with the masses of high dimensional datasets generated from various high-throughput technologies, which are outputs of complex inter-connected biological networks at different levels driven by a number of hidden regulatory signals. So far, many computational and statistical methods such as PCA and ICA have been employed for computing low-dimensional or hidden representations of these datasets, but in most cases the results are inconsistent with underlying real network. In this paper we have employed and compared three linear (PCA and ICA) and non-linear (MLP neural network) dimensionality reduction techniques to uncover these regulatory signals, from outputs of such networks. The three approaches were verified experimentally using the absorbance spectra of a network of seven hemoglobin solutions, and the results revealed the superiority of the MLP NN to PCA and ICA. This study shows the capability of the MLP NN approach to efficiently determine the regulatory components in biological networked systems.http://www.ijcce.ac.ir/article_7624_d75db37e1f1909bda2d69318a40cdbbe.pdfregulatory signalbiological networkpcaicamlp nn
collection DOAJ
language English
format Article
sources DOAJ
author Alireza Zomorrodi
Bahram Nasernejad
Jahanshah Kabudian
spellingShingle Alireza Zomorrodi
Bahram Nasernejad
Jahanshah Kabudian
Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks
Iranian Journal of Chemistry & Chemical Engineering
regulatory signal
biological network
pca
ica
mlp nn
author_facet Alireza Zomorrodi
Bahram Nasernejad
Jahanshah Kabudian
author_sort Alireza Zomorrodi
title Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks
title_short Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks
title_full Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks
title_fullStr Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks
title_full_unstemmed Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks
title_sort comparison of mlp nn approach with pca and ica for extraction of hidden regulatory signals in biological networks
publisher Iranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECR
series Iranian Journal of Chemistry & Chemical Engineering
issn 1021-9986
1021-9986
publishDate 2006-12-01
description The biologists now face with the masses of high dimensional datasets generated from various high-throughput technologies, which are outputs of complex inter-connected biological networks at different levels driven by a number of hidden regulatory signals. So far, many computational and statistical methods such as PCA and ICA have been employed for computing low-dimensional or hidden representations of these datasets, but in most cases the results are inconsistent with underlying real network. In this paper we have employed and compared three linear (PCA and ICA) and non-linear (MLP neural network) dimensionality reduction techniques to uncover these regulatory signals, from outputs of such networks. The three approaches were verified experimentally using the absorbance spectra of a network of seven hemoglobin solutions, and the results revealed the superiority of the MLP NN to PCA and ICA. This study shows the capability of the MLP NN approach to efficiently determine the regulatory components in biological networked systems.
topic regulatory signal
biological network
pca
ica
mlp nn
url http://www.ijcce.ac.ir/article_7624_d75db37e1f1909bda2d69318a40cdbbe.pdf
work_keys_str_mv AT alirezazomorrodi comparisonofmlpnnapproachwithpcaandicaforextractionofhiddenregulatorysignalsinbiologicalnetworks
AT bahramnasernejad comparisonofmlpnnapproachwithpcaandicaforextractionofhiddenregulatorysignalsinbiologicalnetworks
AT jahanshahkabudian comparisonofmlpnnapproachwithpcaandicaforextractionofhiddenregulatorysignalsinbiologicalnetworks
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