4.3 Article

Keeping the noise down: common random numbers for disease simulation modeling

Journal

HEALTH CARE MANAGEMENT SCIENCE
Volume 11, Issue 4, Pages 399-406

Publisher

SPRINGER
DOI: 10.1007/s10729-008-9067-6

Keywords

Simulation; Methodology; Variance reduction techniques; Common random numbers; Decision analysis

Funding

  1. AHRQ HHS [F32 HS000083, HS00083, T32 HS000083-12, HS000083, T32 HS000083, HS000083-12] Funding Source: Medline
  2. NCI NIH HHS [U01 CA088211-04S1, R01 CA093435, CA88211, R01 CA093435-05, F32 CA125984-03, F32 CA125984, U01 CA088211-04, U01 CA088211, R01 CA093435-04A1, F32 CA125984-02, F32 CA125984-01] Funding Source: Medline

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Disease simulation models are used to conduct decision analyses of the comparative benefits and risks associated with preventive and treatment strategies. To address increasing model complexity and computational intensity, modelers use variance reduction techniques to reduce stochastic noise and improve computational efficiency. One technique, common random numbers, further allows modelers to conduct counterfactual-like analyses with direct computation of statistics at the individual level. This technique uses synchronized random numbers across model runs to induce correlation in model output thereby making differences easier to distinguish as well as simulating identical individuals across model runs. We provide a tutorial introduction and demonstrate the application of common random numbers in an individual-level simulation model of the epidemiology of breast cancer.

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