Discovering network relations in big time series with application to bioinformatics

Big Data concerns large-volume, complex and growing data sets, with multiple and autonomous sources. It is now rapidly expanding in all science and engineering domains. Time series represent an important class of big data that can be obtained from several applications, such as medicine (electrocardi...

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Detalles Bibliográficos
Autores principales: Rubiolo, Mariano, Milone, Diego H., Stegmayer, Georgina
Formato: Objeto de conferencia
Lenguaje:Inglés
Publicado: 2015
Materias:
Acceso en línea:http://sedici.unlp.edu.ar/handle/10915/51977
http://44jaiio.sadio.org.ar/sites/default/files/agranda41-42.pdf
Aporte de:
id I19-R120-10915-51977
record_format dspace
institution Universidad Nacional de La Plata
institution_str I-19
repository_str R-120
collection SEDICI (UNLP)
language Inglés
topic Ciencias Informáticas
big data
Genes
Neural nets
bioinformatics
spellingShingle Ciencias Informáticas
big data
Genes
Neural nets
bioinformatics
Rubiolo, Mariano
Milone, Diego H.
Stegmayer, Georgina
Discovering network relations in big time series with application to bioinformatics
topic_facet Ciencias Informáticas
big data
Genes
Neural nets
bioinformatics
description Big Data concerns large-volume, complex and growing data sets, with multiple and autonomous sources. It is now rapidly expanding in all science and engineering domains. Time series represent an important class of big data that can be obtained from several applications, such as medicine (electrocardiogram), environmental (daily temperature), financial (weekly sales totals, and prices of mutual funds and stocks), as well as from many areas, such as socialnetworks and biology. Bioinformatics seeks to provide tools and analyses that facilitate understanding of living systems, by analyzing and correlating biological information. In particular, as increasingly large amounts of genes information have become available in the last years, more efficient algorithms for dealing with such big data in genomics are required. There is an increasing interest in this field for the discovery of the network of regulations among a group of genes, named Gene Regulation Networks (GRN), by analyzing the genes expression profiles represented as timeseries. In it has been proposed the GRNNminer method, which allows discovering the subyacent GRN among a group of genes, through the proper modeling of the temporal dynamics of the gene expression profiles with artificial neural networks. However, it implies building and training a pool of neural models for each possible gentogen relationship, which derives in executing a very large set of experiments with O( n 2 ) order, where n is the total of involved genes. This work presents a proposal for dramatically reducing such experiments number to O( (n/k)2 ) when big timeseries is involved for reconstructing a GRN from such data, by previously clustering genes profiles in k groups using selforganizing maps (SOM). This way, the GRNNminer can be applied over smaller sets of timeseries, only those appearing in the same cluster.
format Objeto de conferencia
Objeto de conferencia
author Rubiolo, Mariano
Milone, Diego H.
Stegmayer, Georgina
author_facet Rubiolo, Mariano
Milone, Diego H.
Stegmayer, Georgina
author_sort Rubiolo, Mariano
title Discovering network relations in big time series with application to bioinformatics
title_short Discovering network relations in big time series with application to bioinformatics
title_full Discovering network relations in big time series with application to bioinformatics
title_fullStr Discovering network relations in big time series with application to bioinformatics
title_full_unstemmed Discovering network relations in big time series with application to bioinformatics
title_sort discovering network relations in big time series with application to bioinformatics
publishDate 2015
url http://sedici.unlp.edu.ar/handle/10915/51977
http://44jaiio.sadio.org.ar/sites/default/files/agranda41-42.pdf
work_keys_str_mv AT rubiolomariano discoveringnetworkrelationsinbigtimeserieswithapplicationtobioinformatics
AT milonediegoh discoveringnetworkrelationsinbigtimeserieswithapplicationtobioinformatics
AT stegmayergeorgina discoveringnetworkrelationsinbigtimeserieswithapplicationtobioinformatics
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