File Download

There are no files associated with this item.

  Links for fulltext
     (May Require Subscription)
Supplementary

Article: Generalizability of machine learning for classification of schizophrenia based on resting-state functional MRI data

TitleGeneralizability of machine learning for classification of schizophrenia based on resting-state functional MRI data
Authors
Keywordsgeneralizability
machine learning
reproducibility
schizophrenia spectrum disorders
Issue Date2020
Citation
Human Brain Mapping, 2020, v. 41, n. 1, p. 172-184 How to Cite?
AbstractMachine 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.
Persistent Identifierhttp://hdl.handle.net/10722/367600
ISSN
2023 Impact Factor: 3.5
2023 SCImago Journal Rankings: 1.626

 

DC FieldValueLanguage
dc.contributor.authorCai, Xin Lu-
dc.contributor.authorXie, Dong Jie-
dc.contributor.authorMadsen, Kristoffer H.-
dc.contributor.authorWang, Yong Ming-
dc.contributor.authorBögemann, Sophie Alida-
dc.contributor.authorCheung, Eric F.C.-
dc.contributor.authorMøller, Arne-
dc.contributor.authorChan, Raymond C.K.-
dc.date.accessioned2025-12-19T07:58:01Z-
dc.date.available2025-12-19T07:58:01Z-
dc.date.issued2020-
dc.identifier.citationHuman Brain Mapping, 2020, v. 41, n. 1, p. 172-184-
dc.identifier.issn1065-9471-
dc.identifier.urihttp://hdl.handle.net/10722/367600-
dc.description.abstractMachine 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.-
dc.languageeng-
dc.relation.ispartofHuman Brain Mapping-
dc.subjectgeneralizability-
dc.subjectmachine learning-
dc.subjectreproducibility-
dc.subjectschizophrenia spectrum disorders-
dc.titleGeneralizability of machine learning for classification of schizophrenia based on resting-state functional MRI data-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1002/hbm.24797-
dc.identifier.pmid31571320-
dc.identifier.scopuseid_2-s2.0-85073996466-
dc.identifier.volume41-
dc.identifier.issue1-
dc.identifier.spage172-
dc.identifier.epage184-
dc.identifier.eissn1097-0193-

Export via OAI-PMH Interface in XML Formats


OR


Export to Other Non-XML Formats