Literature DB >> 25912090

Combining various types of classifiers and features extracted from magnetic resonance imaging data in schizophrenia recognition.

Eva Janousova1, Daniel Schwarz2, Tomas Kasparek3.   

Abstract

We investigated a combination of three classification algorithms, namely the modified maximum uncertainty linear discriminant analysis (mMLDA), the centroid method, and the average linkage, with three types of features extracted from three-dimensional T1-weighted magnetic resonance (MR) brain images, specifically MR intensities, grey matter densities, and local deformations for distinguishing 49 first episode schizophrenia male patients from 49 healthy male subjects. The feature sets were reduced using intersubject principal component analysis before classification. By combining the classifiers, we were able to obtain slightly improved results when compared with single classifiers. The best classification performance (81.6% accuracy, 75.5% sensitivity, and 87.8% specificity) was significantly better than classification by chance. We also showed that classifiers based on features calculated using more computation-intensive image preprocessing perform better; mMLDA with classification boundary calculated as weighted mean discriminative scores of the groups had improved sensitivity but similar accuracy compared to the original MLDA; reducing a number of eigenvectors during data reduction did not always lead to higher classification accuracy, since noise as well as the signal important for classification were removed. Our findings provide important information for schizophrenia research and may improve accuracy of computer-aided diagnostics of neuropsychiatric diseases.
Copyright © 2015 Elsevier Ireland Ltd. All rights reserved.

Entities:  

Keywords:  Average linkage; Centroid method; Classification; Computational neuroanatomy; Intersubject principal component analysis (isPCA); Modified maximum uncertainty linear discriminant analysis (mMLDA)

Mesh:

Year:  2015        PMID: 25912090     DOI: 10.1016/j.pscychresns.2015.03.004

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


  9 in total

Review 1.  Neuroimaging Applications in Dystonia.

Authors:  Kristina Simonyan
Journal:  Int Rev Neurobiol       Date:  2018-10-23       Impact factor: 3.230

2.  Decomposition-Based Correlation Learning for Multi-Modal MRI-Based Classification of Neuropsychiatric Disorders.

Authors:  Liangliang Liu; Jing Chang; Ying Wang; Gongbo Liang; Yu-Ping Wang; Hui Zhang
Journal:  Front Neurosci       Date:  2022-05-25       Impact factor: 5.152

3.  Structural MRI-Based Schizophrenia Classification Using Autoencoders and 3D Convolutional Neural Networks in Combination with Various Pre-Processing Techniques.

Authors:  Roman Vyškovský; Daniel Schwarz; Vendula Churová; Tomáš Kašpárek
Journal:  Brain Sci       Date:  2022-05-09

4.  Cortical sensorimotor alterations classify clinical phenotype and putative genotype of spasmodic dysphonia.

Authors:  G Battistella; S Fuertinger; L Fleysher; L J Ozelius; K Simonyan
Journal:  Eur J Neurol       Date:  2016-06-27       Impact factor: 6.089

5.  Detecting Neuroimaging Biomarkers for Psychiatric Disorders: Sample Size Matters.

Authors:  Hugo G Schnack; René S Kahn
Journal:  Front Psychiatry       Date:  2016-03-31       Impact factor: 4.157

Review 6.  Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls.

Authors:  Mohammad R Arbabshirani; Sergey Plis; Jing Sui; Vince D Calhoun
Journal:  Neuroimage       Date:  2016-03-21       Impact factor: 6.556

7.  Towards a brain-based predictome of mental illness.

Authors:  Barnaly Rashid; Vince Calhoun
Journal:  Hum Brain Mapp       Date:  2020-05-06       Impact factor: 5.038

8.  Supervised, Multivariate, Whole-Brain Reduction Did Not Help to Achieve High Classification Performance in Schizophrenia Research.

Authors:  Eva Janousova; Giovanni Montana; Tomas Kasparek; Daniel Schwarz
Journal:  Front Neurosci       Date:  2016-08-25       Impact factor: 4.677

9.  Machine-learning classification using neuroimaging data in schizophrenia, autism, ultra-high risk and first-episode psychosis.

Authors:  Hidenori Yamasue; Shinsuke Koike; Walid Yassin; Hironori Nakatani; Yinghan Zhu; Masaki Kojima; Keiho Owada; Hitoshi Kuwabara; Wataru Gonoi; Yuta Aoki; Hidemasa Takao; Tatsunobu Natsubori; Norichika Iwashiro; Kiyoto Kasai; Yukiko Kano; Osamu Abe
Journal:  Transl Psychiatry       Date:  2020-08-17       Impact factor: 6.222

  9 in total

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