Abstract:
Depressive disorders are highly prevalent among young adults but often remain undetected in early stages.
Initial symptoms are usually subtle and overlooked, delaying access to care. Early recognition is crucial to
reduce long-term consequences. Recent studies suggest that artificial intelligence (AI) could identify emotional
and behavioral patterns that signal emerging depression, offering new possibilities for early screening.
This narrative review summarizes current evidence on AI-based tools for detecting depressive symptoms in
young adults. Publications from the past five years were searched in PubMed and Scopus using keywords such
as “artificial intelligence,” “machine learning,” and “early detection of depression.” Articles focusing on youth
populations and meeting basic methodological criteria were included.
Available studies show that AI algorithms can detect early depressive patterns using speech, text, facial
expressions, and social media behavior. Reported models demonstrate promising accuracy and could
complement traditional assessments. However, concerns about data privacy, algorithmic bias, and ethical use
of personal data persist. Further research is needed to validate these tools in clinical settings and to develop
ethical frameworks for their implementation. The authors declare no funding support and no conflict of
interest.