Measuring Mental Health Variables in Computational Research: Toward Validated, Dimensional, and Transdiagnostic Approaches
Journal:
arXiv
Published Date:
Apr 4, 2025
Abstract
Computational mental health research develops models to predict and
understand psychological phenomena, but often relies on inappropriate measures
of psychopathology constructs, undermining validity. We identify three key
issues: (1) reliance on unvalidated measures (e.g., self-declared diagnosis)
over validated ones (e.g., diagnosis by clinician); (2) treating mental health
constructs as categorical rather than dimensional; and (3) focusing on
disorder-specific constructs instead of transdiagnostic ones. We outline the
benefits of using validated, dimensional, and transdiagnostic measures and
offer practical recommendations for practitioners. Using valid measures that
reflect the nature and structure of psychopathology is essential for
computational mental health research.