4.7 Article

Reproducible grey matter patterns index a multivariate, global alteration of brain structure in schizophrenia and bipolar disorder

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TRANSLATIONAL PSYCHIATRY
卷 9, 期 -, 页码 -

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SPRINGERNATURE
DOI: 10.1038/s41398-018-0225-4

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资金

  1. European Union [602450]
  2. Deutsche Forschungsgemeinschaft (DFG) [SCHW 1768/1-1]
  3. Deutsche Forschungsgemeinschaft (DFG) (Collaborative Research Center) [SFB 636]
  4. German Federal Ministry of Education and Research (BMBF) through the Integrated Network IntegraMent (Integrated Understanding of Causes and Mechanisms in Mental Disorders) under the e: Med Programme (BMBF Grant) [01ZX1314A, 01ZX1314G]
  5. Innovative Medicines Initiative Joint Undertaking (IMI) [115300, 602805]
  6. Netherlands Organisation for Scientific Research (NWO) [433-09-229, 016-130-669]
  7. European College of Neuropsychopharmacology (ECNP) Network 'ADHD across the Lifespan'
  8. National Institutes of Health (NIH) Consortium grant [U54 EB020403]
  9. cross-NIH alliance
  10. Netherlands Organization for Health Research and Development [ZonMw 60-60600-97-193]
  11. Netherlands Organization for Scientific Research (NWO) [1750102007010, 433-09-242, 056-13-015]
  12. European Community [602450, 602805, 278948, 603016, 643051, 642996, 602450 602805 643051 667302]
  13. KG Jebsen Foundation
  14. NIH Grant [R01MH62873]
  15. NWO Large Investment Grant [1750102007010]
  16. NWO Brain & Cognition grant [056-24-011]
  17. European Union 7th Framework program AGGRESSOTYPE [602805]
  18. European Union 7th Framework program MATRICS [603016]
  19. Radboud University Medical Center
  20. University Medical Center Groningen
  21. Accare
  22. Vrije Universiteit Amsterdam
  23. Soderbergs Konigska Stiftelse
  24. Stockholm County Council (ALF, PPG)
  25. Soderbergs Konigska Stiftelse, Centre for Psychiatry Research
  26. Swedish Research Council [523-2014-3467]
  27. Stockholm County Council [20160328]
  28. DFG [KI 576/14-2]
  29. Wellcome Trust
  30. MRC
  31. Swiss National Science Foundation
  32. Fondazione CON IL SUD
  33. Hoffmann-La Roche
  34. Italian Ministry of Health [RF-2011-02352308]
  35. NIH [U54 EB020403]
  36. German Federal Ministry of Education and Research (BMBF) [01ZX1314A/01ZX1614]
  37. Capitale Umano ad Alta Qualificazione grant - Fondazione Con Il Sud
  38. Swedish Research Council
  39. HUBIN project
  40. Research Council of Norway [223273, 213837]

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Schizophrenia is a severe mental disorder characterized by numerous subtle changes in brain structure and function. Machine learning allows exploring the utility of combining structural and functional brain magnetic resonance imaging (MRI) measures for diagnostic application, but this approach has been hampered by sample size limitations and lack of differential diagnostic data. Here, we performed a multi-site machine learning analysis to explore brain structural patterns of T1 MRI data in 2668 individuals with schizophrenia, bipolar disorder or attention-deficit/hyperactivity disorder, and healthy controls. We found reproducible changes of structural parameters in schizophrenia that yielded a classification accuracy of up to 76% and provided discrimination from ADHD, through it lacked specificity against bipolar disorder. The observed changes largely indexed distributed grey matter alterations that could be represented through a combination of several global brain-structural parameters. This multi-site machine learning study identified a brain-structural signature that could reproducibly differentiate schizophrenia patients from controls, but lacked specificity against bipolar disorder. While this currently limits the clinical utility of the identified signature, the present study highlights that the underlying alterations index substantial global grey matter changes in psychotic disorders, reflecting the biological similarity of these conditions, and provide a roadmap for future exploration of brain structural alterations in psychiatric patients.

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