Affiliation:
1. Competence Center for Health Data Science Faculty of Health Sciences and Medicine University of Lucerne Lucerne Switzerland
2. Spital Limmattal Zurich Zurich Switzerland
3. University Hospital Zurich Zurich Switzerland
4. Faculty of Health Sciences and Medicine University of Lucerne Lucerne Switzerland
Abstract
AbstractDiagnosis‐related group (DRG) hospital reimbursement systems differentiate cases into cost‐homogenous groups based on patient characteristics. However, exogenous organizational and regional factors can influence hospital costs beyond case‐mix differences. Therefore, most countries using DRG systems incorporate adjustments for such factors into their reimbursement structure. This study investigates structural hospital attributes that explain differences in average case‐mix adjusted hospital costs in Switzerland. Using rich patient and hospital‐level data containing 4 million cases from 120 hospitals across 3 years, we show that a regression model using only five variables (number of discharges, ratio of emergency/ambulance admissions, rate of DRGs to patients, expected loss potential based on DRG mix, and location in large agglomeration) can explain more than half of the variance in average case‐mix adjusted hospital costs, capture all cost variations across commonly differentiated hospital types (e.g., academic teaching hospitals, children's hospitals, birth centers, etc.), and is robust in cross‐validations across several years (despite differing hospital samples). Based on our findings, we propose a simple practical approach to differentiate legitimate from inefficiency‐related or unexplainable cost differences across hospitals and discuss the potential of such an approach as a transparent way to incorporate structural hospital differences into cost benchmarking and payment schemes.
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