Abstract
Abstract: This article analyzes the application of neurobiological foundations and artificial intelligence (AI) technologies in understanding and assessing mental disorders. The study was based on the data of 32 patients, whose clinical status, neurodiagnostic results, and analyses performed using AI were considered. The obtained results indicate the effectiveness of AI technologies in identifying the neurobiological mechanisms of mental disorders and developing individual treatment strategies.
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