Literature DB >> 23149030

Predicting dementia development in Parkinson's disease using Bayesian network classifiers.

Dinora A Morales1, Yolanda Vives-Gilabert, Beatriz Gómez-Ansón, Endika Bengoetxea, Pedro Larrañaga, Concha Bielza, Javier Pagonabarraga, Jaime Kulisevsky, Idoia Corcuera-Solano, Manuel Delfino.   

Abstract

Parkinson's disease (PD) has broadly been associated with mild cognitive impairment (PDMCI) and dementia (PDD). Researchers have studied surrogate, neuroanatomic biomarkers provided by magnetic resonance imaging (MRI) that may help in the early diagnosis of this condition. In this article, four classification models (naïve Bayes, multivariate filter-based naïve Bayes, filter selective naïve Bayes and support vector machines, SVM) have been applied to evaluate their capacity to discriminate between cognitively intact patients with Parkinson's disease (PDCI), PDMCI and PDD. For this purpose, the MRI studies of 45 subjects (16 PDCI, 15 PDMCI and 14 PDD) were acquired and post-processed with Freesurfer, obtaining 112 variables (volumes of subcortical structures and thickness of cortical parcels) per subject. A multivariate filter-based naïve Bayes model was found to be the best classifier, having the highest cross-validated sensitivity, specificity and accuracy. Additionally, the most relevant variables related to dementia in PD, as predicted by our classifiers, were cerebral white matter, and volumes of the lateral ventricles and hippocampi.
Copyright © 2012 Elsevier Ireland Ltd. All rights reserved.

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Year:  2012        PMID: 23149030     DOI: 10.1016/j.pscychresns.2012.06.001

Source DB:  PubMed          Journal:  Psychiatry Res        ISSN: 0165-1781            Impact factor:   3.222


  20 in total

Review 1.  Bayesian networks in neuroscience: a survey.

Authors:  Concha Bielza; Pedro Larrañaga
Journal:  Front Comput Neurosci       Date:  2014-10-16       Impact factor: 2.380

2.  Classification of pallidal oscillations with increasing parkinsonian severity.

Authors:  Allison T Connolly; Alicia L Jensen; Kenneth B Baker; Jerrold L Vitek; Matthew D Johnson
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3.  Bayesian predictive modeling based on multidimensional connectivity profiling.

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4.  Bayesian network classifiers for categorizing cortical GABAergic interneurons.

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5.  Predictive structural dynamic network analysis.

Authors:  Rong Chen; Edward H Herskovits
Journal:  J Neurosci Methods       Date:  2015-02-20       Impact factor: 2.390

6.  Prediction of mild parkinsonism revealed by neural oscillatory changes and machine learning.

Authors:  Joyce Chelangat Bore; Brett A Campbell; Hanbin Cho; Raghavan Gopalakrishnan; Andre G Machado; Kenneth B Baker
Journal:  J Neurophysiol       Date:  2020-10-14       Impact factor: 2.714

Review 7.  Machine Learning for Predicting Cognitive Diseases: Methods, Data Sources and Risk Factors.

Authors:  Brankica Bratić; Vladimir Kurbalija; Mirjana Ivanović; Iztok Oder; Zoran Bosnić
Journal:  J Med Syst       Date:  2018-10-27       Impact factor: 4.460

8.  Recent imaging advances in neurology.

Authors:  Lorenzo Rocchi; Flavia Niccolini; Marios Politis
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9.  Predictors of mild cognitive impairment in early-stage Parkinson's disease.

Authors:  Brenda Hanna-Pladdy; Katherine Jones; Romeo Cabanban; Rajesh Pahwa; Kelly E Lyons
Journal:  Dement Geriatr Cogn Dis Extra       Date:  2013-05-18

10.  A Deep Neural Network-Based Method for Prediction of Dementia Using Big Data.

Authors:  Jungyoon Kim; Jihye Lim
Journal:  Int J Environ Res Public Health       Date:  2021-05-18       Impact factor: 3.390

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