Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.

PURPOSE: To design a mathematical model that can predict the relationship between the ganglion cell complex (GCC) thickness and visual field sensitivity (VFS) in glaucoma patients. DESIGN: Retrospective cross-sectional case series. METHOD: Within 3 months from VFS measurements by the Humphrey field...

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Main Authors: Daisuke Shiba, Shin Hatou, Takeshi Ono, Shingo Hosoda, Sachiko Tanabe, Naoki Ozeki, Kenya Yuki, Masaru Shimoyama, Kazumi Fukagawa, Shigeto Shimmura, Kazuo Tsubota
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4136731?pdf=render
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spelling doaj-fb32e2eb03674d8484a96901f0518ec42020-11-25T00:12:41ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0198e10412610.1371/journal.pone.0104126Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.Daisuke ShibaShin HatouTakeshi OnoShingo HosodaSachiko TanabeNaoki OzekiKenya YukiMasaru ShimoyamaKazumi FukagawaShigeto ShimmuraKazuo TsubotaPURPOSE: To design a mathematical model that can predict the relationship between the ganglion cell complex (GCC) thickness and visual field sensitivity (VFS) in glaucoma patients. DESIGN: Retrospective cross-sectional case series. METHOD: Within 3 months from VFS measurements by the Humphrey field analyzer 10-2 program, 83 eyes underwent macular GCC thickness measurements by spectral-domain optical coherence tomography (SD-OCT). Data were used to construct a multiple logistic model that depicted the relationship between the explanatory variables (GCC thickness, age, sex, and spherical equivalent of refractive errors) determined by a regression analysis and the mean VFS corresponding to the SD-OCT scanned area. Analyses were performed in half or 8 segmented local areas as well as in whole scanned areas. A simple logistic model that included GCC thickness as the single explanatory variable was also constructed. The ability of the logistic models to depict the real GCC thickness/VFS in SAP distribution was analyzed by the χ2 test of goodness-of-fit. The significance of the model effect was analyzed by analysis of variance (ANOVA). RESULTS: Scatter plots between the GCC thickness and the mean VFS showed sigmoid curves. The χ2 test of goodness-of-fit revealed that the multiple logistic models showed a good fit for the real GCC thickness/VFS distribution in all areas except the nasal-inferior-outer area. ANOVA revealed that all of the multiple logistic models significantly predicted the VFS based on the explanatory variables. Although simple logistic models also exhibited significant VFS predictability based on the GCC thickness, the model effect was less than that observed for the multiple logistic models. CONCLUSIONS: The currently proposed logistic models are useful methods for depicting relationships between the explanatory variables, including the GCC thickness, and the mean VFS in glaucoma patients.http://europepmc.org/articles/PMC4136731?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Daisuke Shiba
Shin Hatou
Takeshi Ono
Shingo Hosoda
Sachiko Tanabe
Naoki Ozeki
Kenya Yuki
Masaru Shimoyama
Kazumi Fukagawa
Shigeto Shimmura
Kazuo Tsubota
spellingShingle Daisuke Shiba
Shin Hatou
Takeshi Ono
Shingo Hosoda
Sachiko Tanabe
Naoki Ozeki
Kenya Yuki
Masaru Shimoyama
Kazumi Fukagawa
Shigeto Shimmura
Kazuo Tsubota
Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
PLoS ONE
author_facet Daisuke Shiba
Shin Hatou
Takeshi Ono
Shingo Hosoda
Sachiko Tanabe
Naoki Ozeki
Kenya Yuki
Masaru Shimoyama
Kazumi Fukagawa
Shigeto Shimmura
Kazuo Tsubota
author_sort Daisuke Shiba
title Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
title_short Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
title_full Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
title_fullStr Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
title_full_unstemmed Multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
title_sort multivariable logistic regression model: a novel mathematical model that predicts visual field sensitivity from macular ganglion cell complex thickness in glaucoma.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description PURPOSE: To design a mathematical model that can predict the relationship between the ganglion cell complex (GCC) thickness and visual field sensitivity (VFS) in glaucoma patients. DESIGN: Retrospective cross-sectional case series. METHOD: Within 3 months from VFS measurements by the Humphrey field analyzer 10-2 program, 83 eyes underwent macular GCC thickness measurements by spectral-domain optical coherence tomography (SD-OCT). Data were used to construct a multiple logistic model that depicted the relationship between the explanatory variables (GCC thickness, age, sex, and spherical equivalent of refractive errors) determined by a regression analysis and the mean VFS corresponding to the SD-OCT scanned area. Analyses were performed in half or 8 segmented local areas as well as in whole scanned areas. A simple logistic model that included GCC thickness as the single explanatory variable was also constructed. The ability of the logistic models to depict the real GCC thickness/VFS in SAP distribution was analyzed by the χ2 test of goodness-of-fit. The significance of the model effect was analyzed by analysis of variance (ANOVA). RESULTS: Scatter plots between the GCC thickness and the mean VFS showed sigmoid curves. The χ2 test of goodness-of-fit revealed that the multiple logistic models showed a good fit for the real GCC thickness/VFS distribution in all areas except the nasal-inferior-outer area. ANOVA revealed that all of the multiple logistic models significantly predicted the VFS based on the explanatory variables. Although simple logistic models also exhibited significant VFS predictability based on the GCC thickness, the model effect was less than that observed for the multiple logistic models. CONCLUSIONS: The currently proposed logistic models are useful methods for depicting relationships between the explanatory variables, including the GCC thickness, and the mean VFS in glaucoma patients.
url http://europepmc.org/articles/PMC4136731?pdf=render
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