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PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning

PosMed (http://omicspace.riken.jp/) prioritizes candidate genes for positional cloning by employing our original database search engine GRASE, which uses an inferential process similar to an artificial neural network comprising documental neurons (or ‘documentrons’) that represent each document cont...

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Autores principales: Yoshida, Yuko, Makita, Yuko, Heida, Naohiko, Asano, Satomi, Matsushima, Akihiro, Ishii, Manabu, Mochizuki, Yoshiki, Masuya, Hiroshi, Wakana, Shigeharu, Kobayashi, Norio, Toyoda, Tetsuro
Formato: Texto
Lenguaje:English
Publicado: Oxford University Press 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2703941/
https://www.ncbi.nlm.nih.gov/pubmed/19468046
http://dx.doi.org/10.1093/nar/gkp384
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author Yoshida, Yuko
Makita, Yuko
Heida, Naohiko
Asano, Satomi
Matsushima, Akihiro
Ishii, Manabu
Mochizuki, Yoshiki
Masuya, Hiroshi
Wakana, Shigeharu
Kobayashi, Norio
Toyoda, Tetsuro
author_facet Yoshida, Yuko
Makita, Yuko
Heida, Naohiko
Asano, Satomi
Matsushima, Akihiro
Ishii, Manabu
Mochizuki, Yoshiki
Masuya, Hiroshi
Wakana, Shigeharu
Kobayashi, Norio
Toyoda, Tetsuro
author_sort Yoshida, Yuko
collection PubMed
description PosMed (http://omicspace.riken.jp/) prioritizes candidate genes for positional cloning by employing our original database search engine GRASE, which uses an inferential process similar to an artificial neural network comprising documental neurons (or ‘documentrons’) that represent each document contained in databases such as MEDLINE and OMIM. Given a user-specified query, PosMed initially performs a full-text search of each documentron in the first-layer artificial neurons and then calculates the statistical significance of the connections between the hit documentrons and the second-layer artificial neurons representing each gene. When a chromosomal interval(s) is specified, PosMed explores the second-layer and third-layer artificial neurons representing genes within the chromosomal interval by evaluating the combined significance of the connections from the hit documentrons to the genes. PosMed is, therefore, a powerful tool that immediately ranks the candidate genes by connecting phenotypic keywords to the genes through connections representing not only gene–gene interactions but also other biological interactions (e.g. metabolite–gene, mutant mouse–gene, drug–gene, disease–gene and protein–protein interactions) and ortholog data. By utilizing orthologous connections, PosMed facilitates the ranking of human genes based on evidence found in other model species such as mouse. Currently, PosMed, an artificial superbrain that has learned a vast amount of biological knowledge ranging from genomes to phenomes (or ‘omic space’), supports the prioritization of positional candidate genes in humans, mouse, rat and Arabidopsis thaliana.
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spelling pubmed-27039412009-07-01 PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning Yoshida, Yuko Makita, Yuko Heida, Naohiko Asano, Satomi Matsushima, Akihiro Ishii, Manabu Mochizuki, Yoshiki Masuya, Hiroshi Wakana, Shigeharu Kobayashi, Norio Toyoda, Tetsuro Nucleic Acids Res Articles PosMed (http://omicspace.riken.jp/) prioritizes candidate genes for positional cloning by employing our original database search engine GRASE, which uses an inferential process similar to an artificial neural network comprising documental neurons (or ‘documentrons’) that represent each document contained in databases such as MEDLINE and OMIM. Given a user-specified query, PosMed initially performs a full-text search of each documentron in the first-layer artificial neurons and then calculates the statistical significance of the connections between the hit documentrons and the second-layer artificial neurons representing each gene. When a chromosomal interval(s) is specified, PosMed explores the second-layer and third-layer artificial neurons representing genes within the chromosomal interval by evaluating the combined significance of the connections from the hit documentrons to the genes. PosMed is, therefore, a powerful tool that immediately ranks the candidate genes by connecting phenotypic keywords to the genes through connections representing not only gene–gene interactions but also other biological interactions (e.g. metabolite–gene, mutant mouse–gene, drug–gene, disease–gene and protein–protein interactions) and ortholog data. By utilizing orthologous connections, PosMed facilitates the ranking of human genes based on evidence found in other model species such as mouse. Currently, PosMed, an artificial superbrain that has learned a vast amount of biological knowledge ranging from genomes to phenomes (or ‘omic space’), supports the prioritization of positional candidate genes in humans, mouse, rat and Arabidopsis thaliana. Oxford University Press 2009-07-01 2009-05-25 /pmc/articles/PMC2703941/ /pubmed/19468046 http://dx.doi.org/10.1093/nar/gkp384 Text en © 2009 The Author(s) http://creativecommons.org/licenses/by-nc/2.0/uk/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/2.0/uk/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Articles
Yoshida, Yuko
Makita, Yuko
Heida, Naohiko
Asano, Satomi
Matsushima, Akihiro
Ishii, Manabu
Mochizuki, Yoshiki
Masuya, Hiroshi
Wakana, Shigeharu
Kobayashi, Norio
Toyoda, Tetsuro
PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
title PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
title_full PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
title_fullStr PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
title_full_unstemmed PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
title_short PosMed (Positional Medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
title_sort posmed (positional medline): prioritizing genes with an artificial neural network comprising medical documents to accelerate positional cloning
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2703941/
https://www.ncbi.nlm.nih.gov/pubmed/19468046
http://dx.doi.org/10.1093/nar/gkp384
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