Choice of measurement approach for area-level social determinants of health and risk prediction model performance.
Academic Article
Overview
abstract
OBJECTIVE: The objective of this paper is to provide empirical guidance by comparing the performance of six different area-level SDoH measurement approaches in predicting patient referral to a social worker and hospital admission after a primary care visit. METHODS: We compared the performance of six area-level SDoH measurement approaches in predicting patient referral to a social worker and hospital admission after a primary care visit using random forest classification algorithm. Data came from 209,605 patient encounters at a federally qualified health center. Models with each area-based measurement approach were compared against the patient-level data only model using area under the curve, sensitivity, specificity, and precision. RESULTS: Addition of area-level features to patient-level data improved the overall performance of models predicting need for a social worker referral. Entering area-level measures as individual features resulted in highest model performance. CONCLUSION: Researchers seeking to include area-level SDoH measures in risk prediction may be able to forego more complex measurement approaches.