Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6821954 | Schizophrenia Research | 2018 | 5 Pages |
Abstract
Our objective was to assess the generalizability, across sites and cognitive contexts, of schizophrenia classification based on functional brain connectivity. We tested different training-test scenarios combining fMRI data from 191 schizophrenia patients and 191 matched healthy controls obtained at 6 scanning sites and under different task conditions. Diagnosis classification accuracy generalized well to a novel site and cognitive context provided data from multiple sites were used for classifier training. By contrast, lower classification accuracy was achieved when data from a single distinct site was used for training. These findings indicate that it is beneficial to use multisite data to train fMRI-based classifiers intended for large-scale use in the clinical realm.
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Authors
Pierre Orban, Christian Dansereau, Laurence Desbois, Violaine Mongeau-Pérusse, Charles-Ãdouard Giguère, Hien Nguyen, Adrianna Mendrek, Emmanuel Stip, Pierre Bellec,