Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6799498 | Journal of Psychiatric Research | 2018 | 27 Pages |
Abstract
Ninety-four participants (35 DSM-IV BD type I and 59 HC) underwent clinical and functioning assessments, and structural MRI. Functioning was assessed using the Functioning Assessment Short Test (FAST). The machine learning analysis was used to identify possible candidates of regional brain volumes that could predict functioning status, through a support vector regression algorithm. Patients with BD and HC did not differ in age, education and marital status. There were significant differences between groups in gender, BMI, FAST score, and employment status. There was significant correlation between observed and predicted FAST score for patients with BD, but not for controls. According to the model, the brain structures volumes that could predict FAST scores were: left superior frontal cortex, left rostral medial frontal cortex, right white matter total volume and right lateral ventricle volume. The machine learning approach demonstrated that brain volume changes in MRI were predictors of FAST score in patients with BD and could identify specific brain areas related to functioning impairment.
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Authors
Juliana M. Sartori, Ramiro Reckziegel, Ives Cavalcante Passos, Leticia S. Czepielewski, Adam Fijtman, Leonardo A. Sodré, Raffael Massuda, Pedro D. Goi, Miréia Vianna-Sulzbach, Taiane de Azevedo Cardoso, Flávio Kapczinski, Benson Mwangi,