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Data-Driven Approaches to Neuroimaging Analysis to Enhance Psychiatric Diagnosis and Therapy

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ELSEVIER
DOI: 10.1016/j.bpsc.2019.12.015

Keywords

Clinical; Computational psychiatry; Data-driven; Machine learning; Network; Neuroimaging

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Funding

  1. German Research Foundation [BR 5951/1-1, GRK 2350, SFB 1158, TRR 265, TO 539/3-1]
  2. German Federal Ministry of Education and Research [01EF1803A, 01GQ1102]
  3. John D. and Catherine T. MacArthur Foundation
  4. Alfred P. Sloan Foundation
  5. ISI Foundation
  6. Paul Allen Foundation
  7. Army Research Laboratory [W911NF-10-2-0022]
  8. Army Research Office [Bassett-W911NF14-1-0679, Grafton-W911NF-16-1-0474, DCIST-W911NF-17-2-0181]
  9. Office of Naval Research
  10. National Institute of Mental Health [2R01-DC-009209-11, R01 MH112847, R01-MH107235, R21-M MH106799]
  11. National Institute of Child Health and Human Development [1R01HD086888-01]
  12. National Institute of Neurological Disorders and Stroke [R01 NS099348]
  13. National Science Foundation [BCS-1441502, BCS-1430087, NSF PHY-1554488, BCS1631550]

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Combining advanced neuroimaging with novel computational methods in network science and machine learning has led to increasingly meaningful descriptions of structure and function in both the normal and the abnormal brain, thereby contributing significantly to our understanding of psychiatric disorders as circuit dysfunctions. Despite its marked potential for psychiatric care, this approach has not yet extended beyond the research setting to any clinically useful applications. Here we review current developments in the study of neuroimaging data using network models and machine learning methods, with a focus on their promise in offering a framework for clinical translation. We discuss 3 potential contributions of these methods to psychiatric care: 1) a better understanding of psychopathology beyond current diagnostic boundaries; 2) individualized prediction of treatment response and prognosis; and 3) formal theories to guide the development of novel interventions. Finally, we highlight current obstacles and sketch a forward-looking perspective of how the application of machine learning and network modeling methods should proceed to accelerate their potential transformation of clinically useful tools.

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