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The impact of integrated care on health care utilization and costs in a socially deprived urban area in Germany: A difference‐in‐differences approach within an event‐study framework

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  • Vanessa Ress
  • Eva‐Maria Wild

Abstract

We investigated the impact of an integrated care initiative in a socially deprived urban area in Germany. Using administrative data, we empirically assessed the causal effect of its two sub‐interventions, which differed by the extent to which their instruments targeted the supply and demand side of healthcare provision. We addressed confounding using propensity score matching via the Super Learner machine learning algorithm. For our baseline model, we used a two‐way fixed‐effects difference‐in‐differences approach to identify causal effects. We then employed difference‐in‐differences analyses within an event‐study framework to explore the heterogeneity of treatment effects over time, allowing us to disentangle the effects of the sub‐interventions and improve causal interpretation and generalizability. The initiative led to a significant increase in hospital and emergency admissions and non‐hospital outpatient visits, as well as inpatient, non‐hospital outpatient, and total costs. Increased utilization may indicate that the intervention improved access to care or identified unmet need.

Suggested Citation

  • Vanessa Ress & Eva‐Maria Wild, 2024. "The impact of integrated care on health care utilization and costs in a socially deprived urban area in Germany: A difference‐in‐differences approach within an event‐study framework," Health Economics, John Wiley & Sons, Ltd., vol. 33(2), pages 229-247, February.
  • Handle: RePEc:wly:hlthec:v:33:y:2024:i:2:p:229-247
    DOI: 10.1002/hec.4771
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