4.7 Article

Efficiently identifying individuals at high risk for treatment resistance in major depressive disorder using electronic health records

Journal

JOURNAL OF AFFECTIVE DISORDERS
Volume 306, Issue -, Pages 254-259

Publisher

ELSEVIER
DOI: 10.1016/j.jad.2022.02.046

Keywords

Treatment-resistant; Machine learning; Prediction; Risk stratification; Antidepressant; SSRI

Funding

  1. Oracle Labs
  2. Harvard SEAS
  3. Blyth Family Fund
  4. Harvard Data Science Initiative
  5. NSF GRFP [DGE1745303]
  6. National Institute of Mental Health [1R01MH106577]

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This study developed and validated a model to predict treatment resistance in major depressive disorder using coded clinical data from electronic health records. The model showed good performance in a second health system, demonstrating its potential for real-world clinical applications.
Background: With the emergence of evidence-based treatments for treatment-resistant depression, strategies to identify individuals at greater risk for treatment resistance early in the course of illness could have clinical utility. We sought to develop and validate a model to predict treatment resistance in major depressive disorder using coded clinical data from the electronic health record. Methods: We identified individuals from a large health system with a diagnosis of major depressive disorder receiving an index antidepressant prescription, and used a tree-based machine learning classifier to build a risk stratification model to identify those likely to experience treatment resistance. The resulting model was validated in a second health system.Results: In the second health system, the extra trees model yielded an AUC of 0.652 (95% CI: 0.623-0.682); with sensitivity constrained at 0.80, specificity was 0.358 (95% CI: 0.300-0.413). Lift in the top quintile was 1.99 (95% CI: 1.76-2.22). Including additional data for the 4 weeks following treatment initiation did not meaningfully improve model performance. Limitations: The extent to which these models generalize across additional health systems will require further investigation.Conclusion: Electronic health records facilitated stratification of risk for treatment-resistant depression and demonstrated generalizability to a second health system. Efforts to improve upon such models using additional measures, and to understand their performance in real-world clinical settings, are warranted.

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