{"created":"2023-06-26T11:00:11.952765+00:00","id":439,"links":{},"metadata":{"_buckets":{"deposit":"bfa4522d-0503-48e9-9029-e5cb7c557c4a"},"_deposit":{"created_by":26,"id":"439","owners":[26],"pid":{"revision_id":0,"type":"depid","value":"439"},"status":"published"},"_oai":{"id":"oai:oist.repo.nii.ac.jp:00000439","sets":["6:26"]},"author_link":["1792","1793","1795","1796","1794","1797","1791","1798"],"item_10001_biblio_info_7":{"attribute_name":"Bibliographic Information","attribute_value_mlt":[{"bibliographicIssueDates":{"bibliographicIssueDate":"2017-07-12","bibliographicIssueDateType":"Issued"},"bibliographicIssueNumber":"7","bibliographicPageStart":"e0179638","bibliographicVolumeNumber":"12","bibliographic_titles":[{},{"bibliographic_title":"PLoS ONE","bibliographic_titleLang":"en"}]}]},"item_10001_creator_3":{"attribute_name":"Author","attribute_type":"creator","attribute_value_mlt":[{"creatorNames":[{"creatorName":"Yoshida, Kosuke"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Shimizu, Yu"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Yoshimoto, Junichiro"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Takamura, Masahiro"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Okada, Go"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Okamoto, Yasumasa"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Yamawaki, Shigeto"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Doya, Kenji"}],"nameIdentifiers":[{}]}]},"item_10001_description_5":{"attribute_name":"Abstract","attribute_value_mlt":[{"subitem_description":"In diagnostic applications of statistical machine learning methods to brain imaging data, common problems include data high-dimensionality and co-linearity, which often cause over-fitting and instability. To overcome these problems, we applied partial least squares (PLS) regression to resting-state functional magnetic resonance imaging (rs-fMRI) data, creating a low-dimensional representation that relates symptoms to brain activity and that predicts clinical measures. Our experimental results, based upon data from clinically depressed patients and healthy controls, demonstrated that PLS and its kernel variants provided significantly better prediction of clinical measures than ordinary linear regression. Subsequent classification using predicted clinical scores distinguished depressed patients from healthy controls with 80% accuracy. Moreover, loading vectors for latent variables enabled us to identify brain regions relevant to depression, including the default mode network, the right superior frontal gyrus, and the superior motor area.","subitem_description_type":"Other"}]},"item_10001_publisher_8":{"attribute_name":"Publisher","attribute_value_mlt":[{"subitem_publisher":"Public Library of Science "}]},"item_10001_relation_13":{"attribute_name":"PubMedNo.","attribute_value_mlt":[{"subitem_relation_type":"isIdenticalTo","subitem_relation_type_id":{"subitem_relation_type_id_text":"info:pmid/28700672","subitem_relation_type_select":"PMID"}}]},"item_10001_relation_14":{"attribute_name":"DOI","attribute_value_mlt":[{"subitem_relation_type":"isIdenticalTo","subitem_relation_type_id":{"subitem_relation_type_id_text":"info:doi/10.1371/journal.pone.0179638","subitem_relation_type_select":"DOI"}}]},"item_10001_relation_17":{"attribute_name":"Related site","attribute_value_mlt":[{"subitem_relation_type_id":{"subitem_relation_type_id_text":"http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0179638","subitem_relation_type_select":"URI"}}]},"item_10001_rights_15":{"attribute_name":"Rights","attribute_value_mlt":[{"subitem_rights":"© 2017 Yoshida et al."}]},"item_10001_source_id_9":{"attribute_name":"ISSN","attribute_value_mlt":[{"subitem_source_identifier":"1932-6203","subitem_source_identifier_type":"ISSN"}]},"item_10001_version_type_20":{"attribute_name":"Author's flag","attribute_value_mlt":[{"subitem_version_resource":"http://purl.org/coar/version/c_970fb48d4fbd8a85","subitem_version_type":"VoR"}]},"item_files":{"attribute_name":"ファイル情報","attribute_type":"file","attribute_value_mlt":[{"accessrole":"open_date","date":[{"dateType":"Available","dateValue":"2018-07-23"}],"displaytype":"detail","filename":"journal.pone.0179638.pdf","filesize":[{"value":"7.8 MB"}],"format":"application/pdf","license_note":"Creative Commons Attribution 4.0 International\n(http://creativecommons.org/licenses/by/4.0/) ","licensetype":"license_note","mimetype":"application/pdf","url":{"label":"journal.pone.0179638","url":"https://oist.repo.nii.ac.jp/record/439/files/journal.pone.0179638.pdf"},"version_id":"34738f79-012a-4add-98fd-10d206022a0a"}]},"item_language":{"attribute_name":"言語","attribute_value_mlt":[{"subitem_language":"eng"}]},"item_resource_type":{"attribute_name":"資源タイプ","attribute_value_mlt":[{"resourcetype":"journal article","resourceuri":"http://purl.org/coar/resource_type/c_6501"}]},"item_title":"Prediction of clinical depression scores and detection of changes in whole-brain using resting-state functional MRI data with partial least squares regression","item_titles":{"attribute_name":"タイトル","attribute_value_mlt":[{"subitem_title":"Prediction of clinical depression scores and detection of changes in whole-brain using resting-state functional MRI data with partial least squares regression","subitem_title_language":"en"}]},"item_type_id":"10001","owner":"26","path":["26"],"pubdate":{"attribute_name":"公開日","attribute_value":"2018-07-23"},"publish_date":"2018-07-23","publish_status":"0","recid":"439","relation_version_is_last":true,"title":["Prediction of clinical depression scores and detection of changes in whole-brain using resting-state functional MRI data with partial least squares regression"],"weko_creator_id":"26","weko_shared_id":26},"updated":"2023-06-26T12:01:52.159770+00:00"}