Preparing for the bedside—optimizing a postpartum depression risk prediction model for clinical implementation in a health system

Author:

Liu Yifan1ORCID,Joly Rochelle2,Reading Turchioe Meghan3ORCID,Benda Natalie3,Hermann Alison4,Beecy Ashley56,Pathak Jyotishman14,Zhang Yiye16

Affiliation:

1. Department of Population Health Sciences, Weill Cornell Medicine , New York, NY 10065, United States

2. Department of Obstetrics and Gynecology, Weill Cornell Medicine , New York, NY 10065, United States

3. Columbia University School of Nursing , New York, NY, United States

4. Department of Psychiatry, Weill Cornell Medicine , New York, NY 10065, United States

5. Department of Medicine, Weill Cornell Medicine , New York, NY 10065, United States

6. NewYork-Presbyterian Hospital , New York, NY 10065, United States

Abstract

Abstract Objective We developed and externally validated a machine-learning model to predict postpartum depression (PPD) using data from electronic health records (EHRs). Effort is under way to implement the PPD prediction model within the EHR system for clinical decision support. We describe the pre-implementation evaluation process that considered model performance, fairness, and clinical appropriateness. Materials and Methods We used EHR data from an academic medical center (AMC) and a clinical research network database from 2014 to 2020 to evaluate the predictive performance and net benefit of the PPD risk model. We used area under the curve and sensitivity as predictive performance and conducted a decision curve analysis. In assessing model fairness, we employed metrics such as disparate impact, equal opportunity, and predictive parity with the White race being the privileged value. The model was also reviewed by multidisciplinary experts for clinical appropriateness. Lastly, we debiased the model by comparing 5 different debiasing approaches of fairness through blindness and reweighing. Results We determined the classification threshold through a performance evaluation that prioritized sensitivity and decision curve analysis. The baseline PPD model exhibited some unfairness in the AMC data but had a fair performance in the clinical research network data. We revised the model by fairness through blindness, a debiasing approach that yielded the best overall performance and fairness, while considering clinical appropriateness suggested by the expert reviewers. Discussion and Conclusion The findings emphasize the need for a thorough evaluation of intervention-specific models, considering predictive performance, fairness, and appropriateness before clinical implementation.

Funder

Center for Transportation, Environment, and Community Health New Research Initiatives Fund

National Institutes of Health Small Business Technology Transfer Fund

Publisher

Oxford University Press (OUP)

Reference38 articles.

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2. Preventing postpartum depression: review and recommendations;Werner;Arch Womens Ment Health,2015

3. The perinatal depression treatment cascade: baby steps toward improving outcomes;Cox;J Clin Psychiatry,2016

4. Effectiveness of peer support intervention on perinatal depression: A systematic review and meta-analysis;Huang;J Affect Disord,2020

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