Cargando…

Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression

The large number of multicollinear regional features that are provided by resting state (rs) fMRI data requires robust feature selection to uncover consistent networks of functional disconnection in Alzheimer's disease (AD). Here, we compared elastic net regularized and classical stepwise logis...

Descripción completa

Detalles Bibliográficos
Autores principales: Teipel, Stefan J., Grothe, Michel J., Metzger, Coraline D., Grimmer, Timo, Sorg, Christian, Ewers, Michael, Franzmeier, Nicolai, Meisenzahl, Eva, Klöppel, Stefan, Borchardt, Viola, Walter, Martin, Dyrba, Martin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5209379/
https://www.ncbi.nlm.nih.gov/pubmed/28101051
http://dx.doi.org/10.3389/fnagi.2016.00318
_version_ 1782490729627516928
author Teipel, Stefan J.
Grothe, Michel J.
Metzger, Coraline D.
Grimmer, Timo
Sorg, Christian
Ewers, Michael
Franzmeier, Nicolai
Meisenzahl, Eva
Klöppel, Stefan
Borchardt, Viola
Walter, Martin
Dyrba, Martin
author_facet Teipel, Stefan J.
Grothe, Michel J.
Metzger, Coraline D.
Grimmer, Timo
Sorg, Christian
Ewers, Michael
Franzmeier, Nicolai
Meisenzahl, Eva
Klöppel, Stefan
Borchardt, Viola
Walter, Martin
Dyrba, Martin
author_sort Teipel, Stefan J.
collection PubMed
description The large number of multicollinear regional features that are provided by resting state (rs) fMRI data requires robust feature selection to uncover consistent networks of functional disconnection in Alzheimer's disease (AD). Here, we compared elastic net regularized and classical stepwise logistic regression in respect to consistency of feature selection and diagnostic accuracy using rs-fMRI data from four centers of the “German resting-state initiative for diagnostic biomarkers” (psymri.org), comprising 53 AD patients and 118 age and sex matched healthy controls. Using all possible pairs of correlations between the time series of rs-fMRI signal from 84 functionally defined brain regions as the initial set of predictor variables, we calculated accuracy of group discrimination and consistency of feature selection with bootstrap cross-validation. Mean areas under the receiver operating characteristic curves as measure of diagnostic accuracy were 0.70 in unregularized and 0.80 in regularized regression. Elastic net regression was insensitive to scanner effects and recovered a consistent network of functional connectivity decline in AD that encompassed parts of the dorsal default mode as well as brain regions involved in attention, executive control, and language processing. Stepwise logistic regression found no consistent network of AD related functional connectivity decline. Regularized regression has high potential to increase diagnostic accuracy and consistency of feature selection from multicollinear functional neuroimaging data in AD. Our findings suggest an extended network of functional alterations in AD, but the diagnostic accuracy of rs-fMRI in this multicenter setting did not reach the benchmark defined for a useful biomarker of AD.
format Online
Article
Text
id pubmed-5209379
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-52093792017-01-18 Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression Teipel, Stefan J. Grothe, Michel J. Metzger, Coraline D. Grimmer, Timo Sorg, Christian Ewers, Michael Franzmeier, Nicolai Meisenzahl, Eva Klöppel, Stefan Borchardt, Viola Walter, Martin Dyrba, Martin Front Aging Neurosci Neuroscience The large number of multicollinear regional features that are provided by resting state (rs) fMRI data requires robust feature selection to uncover consistent networks of functional disconnection in Alzheimer's disease (AD). Here, we compared elastic net regularized and classical stepwise logistic regression in respect to consistency of feature selection and diagnostic accuracy using rs-fMRI data from four centers of the “German resting-state initiative for diagnostic biomarkers” (psymri.org), comprising 53 AD patients and 118 age and sex matched healthy controls. Using all possible pairs of correlations between the time series of rs-fMRI signal from 84 functionally defined brain regions as the initial set of predictor variables, we calculated accuracy of group discrimination and consistency of feature selection with bootstrap cross-validation. Mean areas under the receiver operating characteristic curves as measure of diagnostic accuracy were 0.70 in unregularized and 0.80 in regularized regression. Elastic net regression was insensitive to scanner effects and recovered a consistent network of functional connectivity decline in AD that encompassed parts of the dorsal default mode as well as brain regions involved in attention, executive control, and language processing. Stepwise logistic regression found no consistent network of AD related functional connectivity decline. Regularized regression has high potential to increase diagnostic accuracy and consistency of feature selection from multicollinear functional neuroimaging data in AD. Our findings suggest an extended network of functional alterations in AD, but the diagnostic accuracy of rs-fMRI in this multicenter setting did not reach the benchmark defined for a useful biomarker of AD. Frontiers Media S.A. 2017-01-04 /pmc/articles/PMC5209379/ /pubmed/28101051 http://dx.doi.org/10.3389/fnagi.2016.00318 Text en Copyright © 2017 Teipel, Grothe, Metzger, Grimmer, Sorg, Ewers, Franzmeier, Meisenzahl, Klöppel, Borchardt, Walter and Dyrba. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Teipel, Stefan J.
Grothe, Michel J.
Metzger, Coraline D.
Grimmer, Timo
Sorg, Christian
Ewers, Michael
Franzmeier, Nicolai
Meisenzahl, Eva
Klöppel, Stefan
Borchardt, Viola
Walter, Martin
Dyrba, Martin
Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression
title Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression
title_full Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression
title_fullStr Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression
title_full_unstemmed Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression
title_short Robust Detection of Impaired Resting State Functional Connectivity Networks in Alzheimer's Disease Using Elastic Net Regularized Regression
title_sort robust detection of impaired resting state functional connectivity networks in alzheimer's disease using elastic net regularized regression
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5209379/
https://www.ncbi.nlm.nih.gov/pubmed/28101051
http://dx.doi.org/10.3389/fnagi.2016.00318
work_keys_str_mv AT teipelstefanj robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT grothemichelj robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT metzgercoralined robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT grimmertimo robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT sorgchristian robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT ewersmichael robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT franzmeiernicolai robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT meisenzahleva robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT kloppelstefan robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT borchardtviola robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT waltermartin robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression
AT dyrbamartin robustdetectionofimpairedrestingstatefunctionalconnectivitynetworksinalzheimersdiseaseusingelasticnetregularizedregression