DOI: 10.1177/21677026251379441 ISSN: 2167-7026

Applying Artificial Intelligence to Expand the Measurement Tool Kit in Clinical-Psychological Science: Moving Beyond Self-Reports

Catharine E. Fairbairn, Nigel Bosch

Research exploring correlates of, precursors to, and consequences of psychological disorders has often relied on designs wherein both predictor and outcome are measured by self-reports. In this article, coauthored by a clinical psychologist (C. E. Fairbairn) and a data scientist (N. Bosch), we offer information surrounding an evolving class of machine-learning models as these inform an expanding measurement tool kit in clinical-psychological science. Specifically, we note the development of deep-learning applications for image analysis, language analysis, and the analysis of physiological time-series data, reviewing implications of these advances for measurement in behavioral research. We weigh strengths and limitations of these automated methods in comparison with self-reports, including the specific form of error likely yielded via each (random vs. systematic), with the aim of fostering a replicable, sustainable, and reputationally strong field of clinical-psychological science.

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