Approximate Bayesian computation for the natural history of breast cancer, with application to data from a Milan cohort study

Author:

Bondi Laura1ORCID,Bonetti Marco2,Grigorova Denitsa3,Russo Antonio4

Affiliation:

1. MRC Biostatistics Unit Cambridge University Cambridge UK

2. Department of Social and Political Sciences, Dondena Research Center, and Bocconi Institute for Data Science and Analytics Bocconi University Milan Italy

3. Big Data for Smart Society Institute, and Faculty of Mathematics and Informatics Sofia University “St. Kliment Ohridski” Sofia Bulgaria

4. UOC Osservatorio Epidemiologico ATS Milan Italy

Abstract

SummaryWe explore models for the natural history of breast cancer, where the main events of interest are the start of asymptomatic detectability of the disease (through screening) and the time of symptomatic detection (through symptoms). We develop several parametric specifications based on a cure rate structure, and present the results of the analysis of data collected as part of a motivating study from Milan. Participants in the study were part of a regional breast cancer screening program, and their ten‐year trajectories were obtained from administrative data available from the Italian national health care system. We first present a tractable model for which we develop the likelihood contributions of the observed trajectories and perform maximum likelihood inference on the latent process. Likelihood based inference is not feasible for more flexible models, and we implement approximate Bayesian computation (ABC) for inference. Issues that arise from the use of ABC for model choice and parameter estimation are discussed, including the problem of choosing appropriate summary statistics. The estimated parameters of the underlying disease process allow for the study of the effect of different examination schedules (age range and frequency of screening examinations) on a population of asymptomatic subjects.

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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4. Screening for breast cancer with mammography;Gøtzsche P;Cochrane Database Syst Rev,2013

5. Lead time gained by diagnostic screening for breast cancer;Hutchison G;J Natl Cancer Inst,1968

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