A microsimulation model based on healthcare pathways to estimate the impact of COVID-19 pandemic-induced delays on breast cancer mortality.

Publication date: Jul 04, 2025

To develop a micro-simulation model to estimate the impact of a care disruption during the COVID-19 pandemic on breast cancer mortality using an administrative database. Patient flows and pathways were assessed from the French hospital discharge database for 4 French cancer centers for breast cancer patients from 2018 to 2021. Patients’ return dynamics were compared to time series predictions to determine flow differences. Forecasted and observed patients were matched through healthcare pathways to account for possible delay heterogeneity among breast cancer patients. Healthcare pathways were modeled and analyzed as sequences of states defined based on hospital treatments. Unmatched patients were reconsidered for matching the next month, with incrementing delays. We derived the number of expected additional cancer deaths at 5 years and the associated relative mortality rate using hazard ratios (HRs) associated with delays extracted from the literature. A deterministic sensitivity analysis was performed on HRs. Confidence intervals were computed for each outcome based on 1,000 bootstrap replications. A forecasted population of 8 125 incident breast cancer patients were analyzed. An overall decrease of 20. 8% in flows was estimated during the first lockdown. For the year following the beginning of the lockdown, 24. 8% of patients were expected to receive delayed care, resulting in a 4. 6% excess cancer mortality rate at 5 years among the 8 125 forecasted patients. Using an innovative approach based on patient-level data from an administrative database, our study further strengthens previous estimates of excess breast cancer mortality following the COVID-19 pandemic.

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Concepts Keywords
French breast cancer mortality
Healthcare COVID-19
Month delay
Pandemic healthcare pathways
medico-administrative data
microsimulation model

Semantics

Type Source Name
disease MESH COVID-19 pandemic
disease MESH breast cancer
pathway KEGG Breast cancer
disease MESH cancer
disease IDO production
disease IDO process
disease MESH recurrences
disease MESH treatment delays
disease IDO algorithm
disease MESH uncertainty
disease MESH metastases
disease IDO healthcare facility
disease MESH Emergency
drug DRUGBANK Diethylstilbestrol
drug DRUGBANK Aspartame

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