Narrative Review: Analysis of Mental Health Disorders Using Medical Data

Authors

  • Ehsan Kenaraki Author
  • Ali Tabandeh Author

Keywords:

Mental Disorders, Mental Health, Neuroimaging, Electronic Data

Abstract

Mental health disorders represent a significant global health challenge, with complex etiologies involving genetic, biological, psychological, and environmental factors. The advent of medical data analytics, including electronic health records (EHRs), neuroimaging, genomic data, and wearable health technologies, has revolutionized the understanding and management of these disorders. This review provides an overview of how various types of medical data are utilized to analyze mental health disorders, the methodologies employed, and the implications for diagnosis, treatment, and prognosis.

 

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Published

2025-02-09