Cargando…

Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity

BACKGROUND: Brain state classification has been accomplished using features such as voxel intensities, derived from functional magnetic resonance imaging (fMRI) data, as inputs to efficient classifiers such as support vector machines (SVM) and is based on the spatial localization model of brain func...

Descripción completa

Detalles Bibliográficos
Autores principales: Deshpande, Gopikrishna, Li, Zhihao, Santhanam, Priya, Coles, Claire D., Lynch, Mary Ellen, Hamann, Stephan, Hu, Xiaoping
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3000328/
https://www.ncbi.nlm.nih.gov/pubmed/21151556
http://dx.doi.org/10.1371/journal.pone.0014277
_version_ 1782193523330646016
author Deshpande, Gopikrishna
Li, Zhihao
Santhanam, Priya
Coles, Claire D.
Lynch, Mary Ellen
Hamann, Stephan
Hu, Xiaoping
author_facet Deshpande, Gopikrishna
Li, Zhihao
Santhanam, Priya
Coles, Claire D.
Lynch, Mary Ellen
Hamann, Stephan
Hu, Xiaoping
author_sort Deshpande, Gopikrishna
collection PubMed
description BACKGROUND: Brain state classification has been accomplished using features such as voxel intensities, derived from functional magnetic resonance imaging (fMRI) data, as inputs to efficient classifiers such as support vector machines (SVM) and is based on the spatial localization model of brain function. With the advent of the connectionist model of brain function, features from brain networks may provide increased discriminatory power for brain state classification. METHODOLOGY/PRINCIPAL FINDINGS: In this study, we introduce a novel framework where in both functional connectivity (FC) based on instantaneous temporal correlation and effective connectivity (EC) based on causal influence in brain networks are used as features in an SVM classifier. In order to derive those features, we adopt a novel approach recently introduced by us called correlation-purged Granger causality (CPGC) in order to obtain both FC and EC from fMRI data simultaneously without the instantaneous correlation contaminating Granger causality. In addition, statistical learning is accelerated and performance accuracy is enhanced by combining recursive cluster elimination (RCE) algorithm with the SVM classifier. We demonstrate the efficacy of the CPGC-based RCE-SVM approach using a specific instance of brain state classification exemplified by disease state prediction. Accordingly, we show that this approach is capable of predicting with 90.3% accuracy whether any given human subject was prenatally exposed to cocaine or not, even when no significant behavioral differences were found between exposed and healthy subjects. CONCLUSIONS/SIGNIFICANCE: The framework adopted in this work is quite general in nature with prenatal cocaine exposure being only an illustrative example of the power of this approach. In any brain state classification approach using neuroimaging data, including the directional connectivity information may prove to be a performance enhancer. When brain state classification is used for disease state prediction, our approach may aid the clinicians in performing more accurate diagnosis of diseases in situations where in non-neuroimaging biomarkers may be unable to perform differential diagnosis with certainty.
format Text
id pubmed-3000328
institution National Center for Biotechnology Information
language English
publishDate 2010
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-30003282010-12-13 Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity Deshpande, Gopikrishna Li, Zhihao Santhanam, Priya Coles, Claire D. Lynch, Mary Ellen Hamann, Stephan Hu, Xiaoping PLoS One Research Article BACKGROUND: Brain state classification has been accomplished using features such as voxel intensities, derived from functional magnetic resonance imaging (fMRI) data, as inputs to efficient classifiers such as support vector machines (SVM) and is based on the spatial localization model of brain function. With the advent of the connectionist model of brain function, features from brain networks may provide increased discriminatory power for brain state classification. METHODOLOGY/PRINCIPAL FINDINGS: In this study, we introduce a novel framework where in both functional connectivity (FC) based on instantaneous temporal correlation and effective connectivity (EC) based on causal influence in brain networks are used as features in an SVM classifier. In order to derive those features, we adopt a novel approach recently introduced by us called correlation-purged Granger causality (CPGC) in order to obtain both FC and EC from fMRI data simultaneously without the instantaneous correlation contaminating Granger causality. In addition, statistical learning is accelerated and performance accuracy is enhanced by combining recursive cluster elimination (RCE) algorithm with the SVM classifier. We demonstrate the efficacy of the CPGC-based RCE-SVM approach using a specific instance of brain state classification exemplified by disease state prediction. Accordingly, we show that this approach is capable of predicting with 90.3% accuracy whether any given human subject was prenatally exposed to cocaine or not, even when no significant behavioral differences were found between exposed and healthy subjects. CONCLUSIONS/SIGNIFICANCE: The framework adopted in this work is quite general in nature with prenatal cocaine exposure being only an illustrative example of the power of this approach. In any brain state classification approach using neuroimaging data, including the directional connectivity information may prove to be a performance enhancer. When brain state classification is used for disease state prediction, our approach may aid the clinicians in performing more accurate diagnosis of diseases in situations where in non-neuroimaging biomarkers may be unable to perform differential diagnosis with certainty. Public Library of Science 2010-12-09 /pmc/articles/PMC3000328/ /pubmed/21151556 http://dx.doi.org/10.1371/journal.pone.0014277 Text en Deshpande et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Deshpande, Gopikrishna
Li, Zhihao
Santhanam, Priya
Coles, Claire D.
Lynch, Mary Ellen
Hamann, Stephan
Hu, Xiaoping
Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity
title Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity
title_full Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity
title_fullStr Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity
title_full_unstemmed Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity
title_short Recursive Cluster Elimination Based Support Vector Machine for Disease State Prediction Using Resting State Functional and Effective Brain Connectivity
title_sort recursive cluster elimination based support vector machine for disease state prediction using resting state functional and effective brain connectivity
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3000328/
https://www.ncbi.nlm.nih.gov/pubmed/21151556
http://dx.doi.org/10.1371/journal.pone.0014277
work_keys_str_mv AT deshpandegopikrishna recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity
AT lizhihao recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity
AT santhanampriya recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity
AT colesclaired recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity
AT lynchmaryellen recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity
AT hamannstephan recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity
AT huxiaoping recursiveclustereliminationbasedsupportvectormachinefordiseasestatepredictionusingrestingstatefunctionalandeffectivebrainconnectivity