Author: Degeling, Koen; Baxter, Nancy N.; Emery, Jon; Jenkins, Mark A.; Franchini, Fanny; Gibbs, Peter; Mann, G. Bruce; McArthur, Grant; Solomon, Benjamin J.; IJzerman, Maarten J.
Title: An inverse stageâ€shift model to estimate the excess mortality and health economic impact of delayed access to cancer services due to the COVIDâ€19 pandemic Cord-id: pf2eqks9 Document date: 2021_2_10
ID: pf2eqks9
Snippet: AIM: Decreased cancer incidence and reported changes to clinical management indicate that the COVIDâ€19 pandemic has delayed cancer diagnosis and treatment. This study aimed to develop and apply a flexible model to estimate the impact of delayed diagnosis and treatment on survival outcomes and healthcare costs based on a shift in the disease stage at treatment initiation. METHODS: A model was developed and made publicly available to estimate populationâ€level health economic outcomes by extrap
Document: AIM: Decreased cancer incidence and reported changes to clinical management indicate that the COVIDâ€19 pandemic has delayed cancer diagnosis and treatment. This study aimed to develop and apply a flexible model to estimate the impact of delayed diagnosis and treatment on survival outcomes and healthcare costs based on a shift in the disease stage at treatment initiation. METHODS: A model was developed and made publicly available to estimate populationâ€level health economic outcomes by extrapolating and weighing stageâ€specific outcomes by the distribution of stages at treatment initiation. It was applied to estimate the impact of 3†and 6â€month delays based on Australian data for stage I breast cancer, colorectal cancer, and lung cancer patients, and for T1 melanoma. Two approaches were explored to estimate stage shifts following a delay: (a) based on the relation between time to treatment initiation and overall survival (breast, colorectal, and lung cancer), and (b) based on the tumor growth rate (melanoma). RESULTS: Using a conservative onceâ€off 3â€month delay and considering only shifts from stage I/T1 to stage II/T2, 88 excess deaths and $12 million excess healthcare costs were predicted in Australia over 5 years for all patients diagnosed in 2020. For a 6â€month delay, excess mortality and healthcare costs were 349 deaths and $46 million over 5 years. CONCLUSIONS: The health and economic impacts of delays in treatment initiation cause an imminent policy concern. More accurate individual patient data on shifts in stage of disease during and after the COVIDâ€19 pandemic are critical for further analyses.
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