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      Generalizability of machine learning for classification of schizophrenia based on resting‐state functional MRI data

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          Abstract

          Machine learning has increasingly been applied to classification of schizophrenia in neuroimaging research. However, direct replication studies and studies seeking to investigate generalizability are scarce. To address these issues, we assessed within‐site and between‐site generalizability of a machine learning classification framework which achieved excellent performance in a previous study using two independent resting‐state functional magnetic resonance imaging data sets collected from different sites and scanners. We established within‐site generalizability of the classification framework in the main data set using cross‐validation. Then, we trained a model in the main data set and investigated between‐site generalization in the validated data set using external validation. Finally, recognizing the poor between‐site generalization performance, we updated the unsupervised algorithm to investigate if transfer learning using additional unlabeled data were able to improve between‐site classification performance. Cross‐validation showed that the published classification procedure achieved an accuracy of 0.73 using majority voting across all selected components. External validation found a classification accuracy of 0.55 (not significant) and 0.70 (significant) using the direct and transfer learning procedures, respectively. The failure of direct generalization from one site to another demonstrates the limitation of within‐site cross‐validation and points toward the need to incorporate efforts to facilitate application of machine learning across multiple data sets. The improvement in performance with transfer learning highlights the importance of taking into account the properties of data when constructing predictive models across samples and sites. Our findings suggest that machine learning classification result based on a single study should be interpreted cautiously.

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          Most cited references52

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          The positive and negative syndrome scale (PANSS) for schizophrenia.

          The variable results of positive-negative research with schizophrenics underscore the importance of well-characterized, standardized measurement techniques. We report on the development and initial standardization of the Positive and Negative Syndrome Scale (PANSS) for typological and dimensional assessment. Based on two established psychiatric rating systems, the 30-item PANSS was conceived as an operationalized, drug-sensitive instrument that provides balanced representation of positive and negative symptoms and gauges their relationship to one another and to global psychopathology. It thus constitutes four scales measuring positive and negative syndromes, their differential, and general severity of illness. Study of 101 schizophrenics found the four scales to be normally distributed and supported their reliability and stability. Positive and negative scores were inversely correlated once their common association with general psychopathology was extracted, suggesting that they represent mutually exclusive constructs. Review of five studies involving the PANSS provided evidence of its criterion-related validity with antecedent, genealogical, and concurrent measures, its predictive validity, its drug sensitivity, and its utility for both typological and dimensional assessment.
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            Some Studies in Machine Learning Using the Game of Checkers

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              Meta-analysis of diffusion tensor imaging studies in schizophrenia.

              The objective of the study was to identify whether there are consistent regional white matter changes in schizophrenia. A systematic search was conducted for voxel-based diffusion tensor imaging fractional anisotropy studies of patients with schizophrenia (or related disorders) in relation to comparison groups. The authors carried out meta-analysis of the co-ordinates of fractional anisotropy differences. For the meta-analysis they used the Activation Likelihood Estimation (ALE) method hybridized with the rank approach used in Genome Scan Meta-Analysis (GSMA). This system detects three-dimensional conjunctions of co-ordinates from multiple studies and permits the weighting of studies in relation to sample size. Fifteen articles were identified for inclusion in the meta-analysis, including a total of 407 patients with schizophrenia and 383 comparison subjects. The studies reported fractional anisotropy reductions at 112 co-ordinates in schizophrenia and no fractional anisotropy increases. Over all studies, significant reductions were present in two regions: the left frontal deep white matter and the left temporal deep white matter. The first region, in the left frontal lobe, is traversed by white matter tracts interconnecting the frontal lobe, thalamus and cingulate gyrus. The second region, in the temporal lobe, is traversed by white matter tracts interconnecting the frontal lobe, insula, hippocampus-amygdala, temporal and occipital lobe. This suggests that two networks of white matter tracts may be affected in schizophrenia, with the potential for 'disconnection' of the gray matter regions which they link.
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                Author and article information

                Contributors
                rckchan@psych.ac.cn
                Journal
                Hum Brain Mapp
                Hum Brain Mapp
                10.1002/(ISSN)1097-0193
                HBM
                Human Brain Mapping
                John Wiley & Sons, Inc. (Hoboken, USA )
                1065-9471
                1097-0193
                01 October 2019
                January 2020
                : 41
                : 1 ( doiID: 10.1002/hbm.v41.1 )
                : 172-184
                Affiliations
                [ 1 ] Neuropsychology and Applied Cognitive Neuroscience Laboratory, CAS Key Laboratory of Mental Health Institute of Psychology Beijing China
                [ 2 ] Sino‐Danish College, University of Chinese Academy of Sciences Beijing China
                [ 3 ] Sino‐Danish Center for Education and Research Beijing China
                [ 4 ] Hangzhou College of Preschool Teacher Education Zhejiang Normal University Hangzhou China
                [ 5 ] Danish Research Centre for Magnetic Resonance, Centre for Functional and Diagnostic Imaging and Research Copenhagen University Hospital Hvidovre Copenhagen Denmark
                [ 6 ] Department of Applied Mathematics and Computer Science Technical University of Denmark Kongens Lyngby Denmark
                [ 7 ] Castle Peak Hospital, Hong Kong Special Administrative Region China
                [ 8 ] Department of Nuclear Medicine and PET Centre Aarhus University Hospital Aarhus Denmark
                [ 9 ] Department of Psychology University of Chinese Academy of Sciences Beijing China
                Author notes
                [*] [* ] Correspondence

                Raymond C. K. Chan, Institute of Psychology, Chinese Academy of Sciences, 16 Lincui Road, Beijing 100101, China.

                Email: rckchan@ 123456psych.ac.cn

                Author information
                https://orcid.org/0000-0003-2260-4772
                https://orcid.org/0000-0001-8606-7641
                https://orcid.org/0000-0002-3414-450X
                Article
                HBM24797
                10.1002/hbm.24797
                7268030
                31571320
                48119cf8-ddea-4430-a62c-cb0665f837bc
                © 2019 The Authors. Human Brain Mapping published by Wiley Periodicals, Inc.

                This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.

                History
                : 13 July 2019
                : 19 August 2019
                : 04 September 2019
                Page count
                Figures: 3, Tables: 5, Pages: 13, Words: 10264
                Funding
                Funded by: Beijing Municipal Science & Technology Commission Grant
                Award ID: Z161100000216138
                Funded by: National Key Research and Development Programme
                Award ID: 2016YFC0906402
                Funded by: National Natural Science Foundation of China , open-funder-registry 10.13039/501100001809;
                Award ID: 81571317
                Funded by: CAS key Laboratory of Mental Health
                Categories
                Research Article
                Research Articles
                Custom metadata
                2.0
                January 2020
                Converter:WILEY_ML3GV2_TO_JATSPMC version:5.8.3 mode:remove_FC converted:03.06.2020

                Neurology
                generalizability,machine learning,reproducibility,schizophrenia spectrum disorders
                Neurology
                generalizability, machine learning, reproducibility, schizophrenia spectrum disorders

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