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Article: Unveiling the potential of machine learning in schizophrenia diagnosis: A meta-analytic study of task-based neuroimaging data

TitleUnveiling the potential of machine learning in schizophrenia diagnosis: A meta-analytic study of task-based neuroimaging data
Authors
Keywordsattention
machine learning
meta-analysis
schizophrenia
task-based fMRI
Issue Date2024
Citation
Psychiatry and Clinical Neurosciences, 2024, v. 78, n. 3, p. 157-168 How to Cite?
AbstractThe emergence of machine learning (ML) techniques has opened up new avenues for identifying biomarkers associated with schizophrenia (SCZ) using task-related fMRI (t-fMRI) designs. To evaluate the effectiveness of this approach, we conducted a comprehensive meta-analysis of 31 t-fMRI studies using a bivariate model. Our findings revealed a high overall sensitivity of 0.83 and specificity of 0.82 for t-fMRI studies. Notably, neuropsychological domains modulated the classification performance, with selective attention demonstrating a significantly higher specificity than working memory (β = 0.98, z = 2.11, P = 0.04). Studies involving older, chronic patients with SCZ reported higher sensitivity (P <0.015) and specificity (P <0.001) than those involving younger, first-episode patients or high-risk individuals for psychosis. Additionally, we found that the severity of negative symptoms was positively associated with the specificity of the classification model (β = 7.19, z = 2.20, P = 0.03). Taken together, these results support the potential of using task-based fMRI data in combination with machine learning techniques to identify biomarkers related to symptom outcomes in SCZ, providing a promising avenue for improving diagnostic accuracy and treatment efficacy. Future attempts to deploy ML classification should consider the factors of algorithm choice, data quality and quantity, as well as issues related to generalization.
Persistent Identifierhttp://hdl.handle.net/10722/367564
ISSN
2023 Impact Factor: 5.0
2023 SCImago Journal Rankings: 1.250

 

DC FieldValueLanguage
dc.contributor.authorWang, Xuan-
dc.contributor.authorYan, Chao-
dc.contributor.authorYang, Peng yuan-
dc.contributor.authorXia, Zheng-
dc.contributor.authorCai, Xin lu-
dc.contributor.authorWang, Yi-
dc.contributor.authorKwok, Sze Chai-
dc.contributor.authorChan, Raymond C.K.-
dc.date.accessioned2025-12-19T07:57:45Z-
dc.date.available2025-12-19T07:57:45Z-
dc.date.issued2024-
dc.identifier.citationPsychiatry and Clinical Neurosciences, 2024, v. 78, n. 3, p. 157-168-
dc.identifier.issn1323-1316-
dc.identifier.urihttp://hdl.handle.net/10722/367564-
dc.description.abstractThe emergence of machine learning (ML) techniques has opened up new avenues for identifying biomarkers associated with schizophrenia (SCZ) using task-related fMRI (t-fMRI) designs. To evaluate the effectiveness of this approach, we conducted a comprehensive meta-analysis of 31 t-fMRI studies using a bivariate model. Our findings revealed a high overall sensitivity of 0.83 and specificity of 0.82 for t-fMRI studies. Notably, neuropsychological domains modulated the classification performance, with selective attention demonstrating a significantly higher specificity than working memory (β = 0.98, z = 2.11, P = 0.04). Studies involving older, chronic patients with SCZ reported higher sensitivity (P <0.015) and specificity (P <0.001) than those involving younger, first-episode patients or high-risk individuals for psychosis. Additionally, we found that the severity of negative symptoms was positively associated with the specificity of the classification model (β = 7.19, z = 2.20, P = 0.03). Taken together, these results support the potential of using task-based fMRI data in combination with machine learning techniques to identify biomarkers related to symptom outcomes in SCZ, providing a promising avenue for improving diagnostic accuracy and treatment efficacy. Future attempts to deploy ML classification should consider the factors of algorithm choice, data quality and quantity, as well as issues related to generalization.-
dc.languageeng-
dc.relation.ispartofPsychiatry and Clinical Neurosciences-
dc.subjectattention-
dc.subjectmachine learning-
dc.subjectmeta-analysis-
dc.subjectschizophrenia-
dc.subjecttask-based fMRI-
dc.titleUnveiling the potential of machine learning in schizophrenia diagnosis: A meta-analytic study of task-based neuroimaging data-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1111/pcn.13625-
dc.identifier.pmid38013639-
dc.identifier.scopuseid_2-s2.0-85181221965-
dc.identifier.volume78-
dc.identifier.issue3-
dc.identifier.spage157-
dc.identifier.epage168-
dc.identifier.eissn1440-1819-

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