Literature DB >> 27613509

Improved individualized prediction of schizophrenia in subjects at familial high risk, based on neuroanatomical data, schizotypal and neurocognitive features.

Eleni Zarogianni1, Amos J Storkey2, Eve C Johnstone3, David G C Owens3, Stephen M Lawrie3.   

Abstract

To date, there are no reliable markers for predicting onset of schizophrenia in individuals at high risk (HR). Substantial promise is, however, shown by a variety of pattern classification approaches to neuroimaging data. Here, we examined the predictive accuracy of support vector machine (SVM) in later diagnosing schizophrenia, at a single-subject level, using a cohort of HR individuals drawn from multiply affected families and a combination of neuroanatomical, schizotypal and neurocognitive variables. Baseline structural magnetic resonance imaging (MRI), schizotypal and neurocognitive data from 17 HR subjects, who subsequently developed schizophrenia and a matched group of 17 HR subjects who did not make the transition, yet had psychotic symptoms, were included in the analysis. We employed recursive feature elimination (RFE), in a nested cross-validation scheme to identify the most significant predictors of disease transition and enhance diagnostic performance. Classification accuracy was 94% when a self-completed measure of schizotypy, a declarative memory test and structural MRI data were combined into a single learning algorithm; higher than when either quantitative measure was used alone. The discriminative neuroanatomical pattern involved gray matter volume differences in frontal, orbito-frontal and occipital lobe regions bilaterally as well as parts of the superior, medial temporal lobe and cerebellar regions. Our findings suggest that an early SVM-based prediction of schizophrenia is possible and can be improved by combining schizotypal and neurocognitive features with neuroanatomical variables. However, our predictive model needs to be tested by classifying a new, independent HR cohort in order to estimate its validity.
Copyright © 2016 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Familial HR; MRI; Machine learning; Prediction; Recursive feature elimination; Schizophrenia; Support vector machine

Mesh:

Year:  2016        PMID: 27613509     DOI: 10.1016/j.schres.2016.08.027

Source DB:  PubMed          Journal:  Schizophr Res        ISSN: 0920-9964            Impact factor:   4.939


  17 in total

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Authors:  Koji Sakai; Kei Yamada
Journal:  Jpn J Radiol       Date:  2018-11-29       Impact factor: 2.374

2.  Perspectives on Machine Learning for Classification of Schizotypy Using fMRI Data.

Authors:  Kristoffer H Madsen; Laerke G Krohne; Xin-Lu Cai; Yi Wang; Raymond C K Chan
Journal:  Schizophr Bull       Date:  2018-10-15       Impact factor: 9.306

3.  The Network Structure of Schizotypal Personality Traits.

Authors:  Eduardo Fonseca-Pedrero; Javier Ortuño; Martin Debbané; Raymond C K Chan; David Cicero; Lisa C Zhang; Colleen Brenner; Emma Barkus; Richard J Linscott; Thomas Kwapil; Neus Barrantes-Vidal; Alex Cohen; Adrian Raine; Michael T Compton; Erin B Tone; Julie Suhr; Felix Inchausti; Julio Bobes; Axit Fumero; Stella Giakoumaki; Ioannis Tsaousis; Antonio Preti; Michael Chmielewski; Julien Laloyaux; Anwar Mechri; Mohamed Aymen Lahmar; Viviana Wuthrich; Frank Larøi; Johanna C Badcock; Assen Jablensky; Adela M Isvoranu; Sacha Epskamp; Eiko I Fried
Journal:  Schizophr Bull       Date:  2018-10-15       Impact factor: 9.306

4.  Three-dimensional texture features from intensity and high-order derivative maps for the discrimination between bladder tumors and wall tissues via MRI.

Authors:  Xiaopan Xu; Xi Zhang; Qiang Tian; Guopeng Zhang; Yang Liu; Guangbin Cui; Jiang Meng; Yuxia Wu; Tianshuai Liu; Zengyue Yang; Hongbing Lu
Journal:  Int J Comput Assist Radiol Surg       Date:  2017-01-21       Impact factor: 2.924

5.  Hybrid brain model accurately predict human procrastination behavior.

Authors:  Zhiyi Chen; Rong Zhang; Jiawei Xie; Peiwei Liu; Chenyan Zhang; Jia Zhao; Justin Paul Laplante; Tingyong Feng
Journal:  Cogn Neurodyn       Date:  2022-01-24       Impact factor: 3.473

6.  Classification of Parkinson's disease using a region-of-interest- and resting-state functional magnetic resonance imaging-based radiomics approach.

Authors:  Dafa Shi; Xiang Yao; Yanfei Li; Haoran Zhang; Guangsong Wang; Siyuan Wang; Ke Ren
Journal:  Brain Imaging Behav       Date:  2022-06-01       Impact factor: 3.224

7.  Recursive Feature Elimination by Sensitivity Testing.

Authors:  Nicholas Sean Escanilla; Lisa Hellerstein; Ross Kleiman; Zhaobin Kuang; James D Shull; David Page
Journal:  Proc Int Conf Mach Learn Appl       Date:  2019-01-17

8.  Predicting major mental illness: ethical and practical considerations.

Authors:  Stephen M Lawrie; Sue Fletcher-Watson; Heather C Whalley; Andrew M McIntosh
Journal:  BJPsych Open       Date:  2019-03

9.  An integrated machine learning framework for a discriminative analysis of schizophrenia using multi-biological data.

Authors:  Peng-Fei Ke; Dong-Sheng Xiong; Jia-Hui Li; Zhi-Lin Pan; Jing Zhou; Shi-Jia Li; Jie Song; Xiao-Yi Chen; Gui-Xiang Li; Jun Chen; Xiao-Bo Li; Yu-Ping Ning; Feng-Chun Wu; Kai Wu
Journal:  Sci Rep       Date:  2021-07-19       Impact factor: 4.379

10.  Longitudinal outcome of attenuated positive symptoms, negative symptoms, functioning and remission in people at clinical high risk for psychosis: a meta-analysis.

Authors:  Gonzalo Salazar de Pablo; Filippo Besana; Vincenzo Arienti; Ana Catalan; Julio Vaquerizo-Serrano; Anna Cabras; Joana Pereira; Livia Soardo; Francesco Coronelli; Simi Kaur; Josette da Silva; Dominic Oliver; Natalia Petros; Carmen Moreno; Ana Gonzalez-Pinto; Covadonga M Díaz-Caneja; Jae Il Shin; Pierluigi Politi; Marco Solmi; Renato Borgatti; Martina Maria Mensi; Celso Arango; Christoph U Correll; Philip McGuire; Paolo Fusar-Poli
Journal:  EClinicalMedicine       Date:  2021-06-16
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