Literature DB >> 20570741

"Relevance vector machine" consciousness classifier applied to cerebral metabolism of vegetative and locked-in patients.

Christophe L Phillips1, Marie-Aurelie Bruno, Pierre Maquet, Mélanie Boly, Quentin Noirhomme, Caroline Schnakers, Audrey Vanhaudenhuyse, Maxime Bonjean, Roland Hustinx, Gustave Moonen, André Luxen, Steven Laureys.   

Abstract

The vegetative state is a devastating condition where patients awaken from their coma (i.e., open their eyes) but fail to show any behavioural sign of conscious awareness. Locked-in syndrome patients also awaken from their coma and are unable to show any motor response to command (except for small eye movements or blinks) but recover full conscious awareness of self and environment. Bedside evaluation of residual cognitive function in coma survivors often is difficult because motor responses may be very limited or inconsistent. We here aimed to disentangle vegetative from "locked-in" patients by an automatic procedure based on machine learning using fluorodeoxyglucose PET data obtained in 37 healthy controls and in 13 patients in a vegetative state. Next, the trained machine was tested on brain scans obtained in 8 patients with locked-in syndrome. We used a sparse probabilistic Bayesian learning framework called "relevance vector machine" (RVM) to classify the scans. The trained RVM classifier, applied on an input scan, returns a probability value (p-value) of being in one class or the other, here being "conscious" or not. Training on the control and vegetative state groups was assessed with a leave-one-out cross-validation procedure, leading to 100% classification accuracy. When applied on the locked-in patients, all scans were classified as "conscious" with a mean p-value of .95 (min .85). In conclusion, even with this relatively limited data set, we could train a classifier distinguishing between normal consciousness (i.e., wakeful conscious awareness) and the vegetative state (i.e., wakeful unawareness). Cross-validation also indicated that the clinical classification and the one predicted by the automatic RVM classifier were in accordance. Moreover, when applied on a third group of "locked-in" consciously aware patients, they all had a strong probability of being similar to the normal controls, as expected. Therefore, RVM classification of cerebral metabolic images obtained in coma survivors could become a useful tool for the automated PET-based diagnosis of altered states of consciousness.
Copyright © 2010 Elsevier Inc. All rights reserved.

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Year:  2010        PMID: 20570741     DOI: 10.1016/j.neuroimage.2010.05.083

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  18 in total

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Authors:  Yousef Hannawi; Martin A Lindquist; Brian S Caffo; Haris I Sair; Robert D Stevens
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2.  PRoNTo: pattern recognition for neuroimaging toolbox.

Authors:  J Schrouff; M J Rosa; J M Rondina; A F Marquand; C Chu; J Ashburner; C Phillips; J Richiardi; J Mourão-Miranda
Journal:  Neuroinformatics       Date:  2013-07

Review 3.  Functional Networks in Disorders of Consciousness.

Authors:  Yelena G Bodien; Camille Chatelle; Brian L Edlow
Journal:  Semin Neurol       Date:  2017-12-05       Impact factor: 3.420

Review 4.  Disorders of consciousness after acquired brain injury: the state of the science.

Authors:  Joseph T Giacino; Joseph J Fins; Steven Laureys; Nicholas D Schiff
Journal:  Nat Rev Neurol       Date:  2014-01-28       Impact factor: 42.937

5.  Individualized Prediction and Clinical Staging of Bipolar Disorders using Neuroanatomical Biomarkers.

Authors:  Benson Mwangi; Mon-Ju Wu; Bo Cao; Ives C Passos; Luca Lavagnino; Zafer Keser; Giovana B Zunta-Soares; Khader M Hasan; Flavio Kapczinski; Jair C Soares
Journal:  Biol Psychiatry Cogn Neurosci Neuroimaging       Date:  2016-03-01

6.  Prognostication of chronic disorders of consciousness using brain functional networks and clinical characteristics.

Authors:  Ming Song; Yi Yang; Jianghong He; Zhengyi Yang; Shan Yu; Qiuyou Xie; Xiaoyu Xia; Yuanyuan Dang; Qiang Zhang; Xinhuai Wu; Yue Cui; Bing Hou; Ronghao Yu; Ruxiang Xu; Tianzi Jiang
Journal:  Elife       Date:  2018-08-14       Impact factor: 8.140

7.  Brain connectivity in pathological and pharmacological coma.

Authors:  Quentin Noirhomme; Andrea Soddu; Rémy Lehembre; Audrey Vanhaudenhuyse; Pierre Boveroux; Mélanie Boly; Steven Laureys
Journal:  Front Syst Neurosci       Date:  2010-12-20

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9.  Mindsight: diagnostics in disorders of consciousness.

Authors:  P Guldenmund; J Stender; L Heine; S Laureys
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Review 10.  The vegetative state--a syndrome in search of a name.

Authors:  K von Wild; S T Laureys; F Gerstenbrand; G Dolce; G Onose
Journal:  J Med Life       Date:  2012-03-05
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