Cargando…

An approach to predict the risk of glaucoma development by integrating different attribute data

Primary open-angle glaucoma (POAG) is one of the major causes of blindness worldwide and considered to be influenced by inherited and environmental factors. Recently, we demonstrated a genome-wide association study for the susceptibility to POAG by comparing patients and controls. In addition, the s...

Descripción completa

Detalles Bibliográficos
Autores principales: Tokuda, Yuichi, Yagi, Tomohito, Yoshii, Kengo, Ikeda, Yoko, Fuwa, Masahiro, Ueno, Morio, Nakano, Masakazu, Omi, Natsue, Tanaka, Masami, Mori, Kazuhiko, Kageyama, Masaaki, Nagasaki, Ikumitsu, Yagi, Katsumi, Kinoshita, Shigeru, Tashiro, Kei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing AG 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3725912/
https://www.ncbi.nlm.nih.gov/pubmed/23961367
http://dx.doi.org/10.1186/2193-1801-1-41
_version_ 1782278599505608704
author Tokuda, Yuichi
Yagi, Tomohito
Yoshii, Kengo
Ikeda, Yoko
Fuwa, Masahiro
Ueno, Morio
Nakano, Masakazu
Omi, Natsue
Tanaka, Masami
Mori, Kazuhiko
Kageyama, Masaaki
Nagasaki, Ikumitsu
Yagi, Katsumi
Kinoshita, Shigeru
Tashiro, Kei
author_facet Tokuda, Yuichi
Yagi, Tomohito
Yoshii, Kengo
Ikeda, Yoko
Fuwa, Masahiro
Ueno, Morio
Nakano, Masakazu
Omi, Natsue
Tanaka, Masami
Mori, Kazuhiko
Kageyama, Masaaki
Nagasaki, Ikumitsu
Yagi, Katsumi
Kinoshita, Shigeru
Tashiro, Kei
author_sort Tokuda, Yuichi
collection PubMed
description Primary open-angle glaucoma (POAG) is one of the major causes of blindness worldwide and considered to be influenced by inherited and environmental factors. Recently, we demonstrated a genome-wide association study for the susceptibility to POAG by comparing patients and controls. In addition, the serum cytokine levels, which are affected by environmental and postnatal factors, could be also obtained in patients as well as in controls, simultaneously. Here, in order to predict the effective diagnosis of POAG, we developed an “integration approach” using different attribute data which were integrated simply with several machine learning methods and random sampling. Two data sets were prepared for this study. The one is the “training data set”, which consisted of 42 POAG and 42 controls. The other is the “test data set” consisted of 73 POAG and 52 controls. We first examined for genotype and cytokine data using the training data set with general machine learning methods. After the integration approach was applied, we obtained the stable accuracy, using the support vector machine method with the radial basis function. Although our approach was based on well-known machine learning methods and a simple process, we demonstrated that the integration with two kinds of attributes, genotype and cytokines, was effective and helpful in diagnostic prediction of POAG.
format Online
Article
Text
id pubmed-3725912
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher Springer International Publishing AG
record_format MEDLINE/PubMed
spelling pubmed-37259122013-07-30 An approach to predict the risk of glaucoma development by integrating different attribute data Tokuda, Yuichi Yagi, Tomohito Yoshii, Kengo Ikeda, Yoko Fuwa, Masahiro Ueno, Morio Nakano, Masakazu Omi, Natsue Tanaka, Masami Mori, Kazuhiko Kageyama, Masaaki Nagasaki, Ikumitsu Yagi, Katsumi Kinoshita, Shigeru Tashiro, Kei Springerplus Research Primary open-angle glaucoma (POAG) is one of the major causes of blindness worldwide and considered to be influenced by inherited and environmental factors. Recently, we demonstrated a genome-wide association study for the susceptibility to POAG by comparing patients and controls. In addition, the serum cytokine levels, which are affected by environmental and postnatal factors, could be also obtained in patients as well as in controls, simultaneously. Here, in order to predict the effective diagnosis of POAG, we developed an “integration approach” using different attribute data which were integrated simply with several machine learning methods and random sampling. Two data sets were prepared for this study. The one is the “training data set”, which consisted of 42 POAG and 42 controls. The other is the “test data set” consisted of 73 POAG and 52 controls. We first examined for genotype and cytokine data using the training data set with general machine learning methods. After the integration approach was applied, we obtained the stable accuracy, using the support vector machine method with the radial basis function. Although our approach was based on well-known machine learning methods and a simple process, we demonstrated that the integration with two kinds of attributes, genotype and cytokines, was effective and helpful in diagnostic prediction of POAG. Springer International Publishing AG 2012-10-24 /pmc/articles/PMC3725912/ /pubmed/23961367 http://dx.doi.org/10.1186/2193-1801-1-41 Text en © Tokuda et al.; licensee Springer. 2012 This article is published under license to BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Tokuda, Yuichi
Yagi, Tomohito
Yoshii, Kengo
Ikeda, Yoko
Fuwa, Masahiro
Ueno, Morio
Nakano, Masakazu
Omi, Natsue
Tanaka, Masami
Mori, Kazuhiko
Kageyama, Masaaki
Nagasaki, Ikumitsu
Yagi, Katsumi
Kinoshita, Shigeru
Tashiro, Kei
An approach to predict the risk of glaucoma development by integrating different attribute data
title An approach to predict the risk of glaucoma development by integrating different attribute data
title_full An approach to predict the risk of glaucoma development by integrating different attribute data
title_fullStr An approach to predict the risk of glaucoma development by integrating different attribute data
title_full_unstemmed An approach to predict the risk of glaucoma development by integrating different attribute data
title_short An approach to predict the risk of glaucoma development by integrating different attribute data
title_sort approach to predict the risk of glaucoma development by integrating different attribute data
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3725912/
https://www.ncbi.nlm.nih.gov/pubmed/23961367
http://dx.doi.org/10.1186/2193-1801-1-41
work_keys_str_mv AT tokudayuichi anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT yagitomohito anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT yoshiikengo anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT ikedayoko anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT fuwamasahiro anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT uenomorio anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT nakanomasakazu anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT ominatsue anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT tanakamasami anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT morikazuhiko anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT kageyamamasaaki anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT nagasakiikumitsu anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT yagikatsumi anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT kinoshitashigeru anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT tashirokei anapproachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT tokudayuichi approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT yagitomohito approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT yoshiikengo approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT ikedayoko approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT fuwamasahiro approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT uenomorio approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT nakanomasakazu approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT ominatsue approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT tanakamasami approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT morikazuhiko approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT kageyamamasaaki approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT nagasakiikumitsu approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT yagikatsumi approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT kinoshitashigeru approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata
AT tashirokei approachtopredicttheriskofglaucomadevelopmentbyintegratingdifferentattributedata