BACKGROUND: The important but complicated research questions regarding the optimization of mammography screening for the detection of breast cancer are unable to be answered through any single trial or a simple meta-analysis of related trials. The Cancer Intervention and Surveillance Network (CISNET) breast groups provide answers using complex statistical models to simulate population dynamics. Among them, the MD Anderson Cancer Center (Model M) takes a unique approach by not making any assumptions on the natural history of breast cancer, such as the distribution of the indolent time before detection, but simulating only the observable part of a woman's disease and life. METHODS: The simulations start with 4 million women in the age distribution found in the year 1975, and follow them over several years. Input parameters are used to describe their breast cancer incidence rates, treatment efficacy, and survival. With these parameters, each woman's history of breast cancer diagnosis, treatment, and survival are generated and recorded each year. Research questions can then be answered by comparing the outcomes of interest, such as mortality rates, quality-adjusted life years, number of false positives, differences between hypothetical scenarios, such as different combinations of screening and treatment strategies. We use our model to estimate the relative contributions of screening and treatments on the mortality reduction in the United States, for both overall and different molecular (ER, HER2) subtypes of breast cancer. RESULTS: We estimate and compare the benefits (life-years gained) and harm (false-positives, over-diagnoses) of mammography screening strategies with different frequencies (annual, biennial, triennial, mixed) and different starting (40 and 50 years) and end ages (70 and 80 years). CONCLUSIONS: We will extend our model in future studies to account for local, regional, and distant disease recurrences.
BACKGROUND: The important but complicated research questions regarding the optimization of mammography screening for the detection of breast cancer are unable to be answered through any single trial or a simple meta-analysis of related trials. The Cancer Intervention and Surveillance Network (CISNET) breast groups provide answers using complex statistical models to simulate population dynamics. Among them, the MD Anderson Cancer Center (Model M) takes a unique approach by not making any assumptions on the natural history of breast cancer, such as the distribution of the indolent time before detection, but simulating only the observable part of a woman's disease and life. METHODS: The simulations start with 4 million women in the age distribution found in the year 1975, and follow them over several years. Input parameters are used to describe their breast cancer incidence rates, treatment efficacy, and survival. With these parameters, each woman's history of breast cancer diagnosis, treatment, and survival are generated and recorded each year. Research questions can then be answered by comparing the outcomes of interest, such as mortality rates, quality-adjusted life years, number of false positives, differences between hypothetical scenarios, such as different combinations of screening and treatment strategies. We use our model to estimate the relative contributions of screening and treatments on the mortality reduction in the United States, for both overall and different molecular (ER, HER2) subtypes of breast cancer. RESULTS: We estimate and compare the benefits (life-years gained) and harm (false-positives, over-diagnoses) of mammography screening strategies with different frequencies (annual, biennial, triennial, mixed) and different starting (40 and 50 years) and end ages (70 and 80 years). CONCLUSIONS: We will extend our model in future studies to account for local, regional, and distant disease recurrences.
Entities:
Keywords:
Bayesian simulation; adjuvant treatments; approximate Bayesian computation; beyond stage-shift; breast cancer; cancer screening; mammography
Authors: Jeanne S Mandelblatt; Natasha K Stout; Clyde B Schechter; Jeroen J van den Broek; Diana L Miglioretti; Martin Krapcho; Amy Trentham-Dietz; Diego Munoz; Sandra J Lee; Donald A Berry; Nicolien T van Ravesteyn; Oguzhan Alagoz; Karla Kerlikowske; Anna N A Tosteson; Aimee M Near; Amanda Hoeffken; Yaojen Chang; Eveline A Heijnsdijk; Gary Chisholm; Xuelin Huang; Hui Huang; Mehmet Ali Ergun; Ronald Gangnon; Brian L Sprague; Sylvia Plevritis; Eric Feuer; Harry J de Koning; Kathleen A Cronin Journal: Ann Intern Med Date: 2016-01-12 Impact factor: 25.391
Authors: Kathleen A Cronin; Binbing Yu; Martin Krapcho; Diana L Miglioretti; Michael P Fay; Grant Izmirlian; Rachel Ballard-Barbash; Berta M Geller; Eric J Feuer Journal: Cancer Causes Control Date: 2005-08 Impact factor: 2.506
Authors: Donald A Berry; Kathleen A Cronin; Sylvia K Plevritis; Dennis G Fryback; Lauren Clarke; Marvin Zelen; Jeanne S Mandelblatt; Andrei Y Yakovlev; J Dik F Habbema; Eric J Feuer Journal: N Engl J Med Date: 2005-10-27 Impact factor: 91.245
Authors: Donald A Berry; Lurdes Inoue; Yu Shen; John Venier; Debbie Cohen; Melissa Bondy; Richard Theriault; Mark F Munsell Journal: J Natl Cancer Inst Monogr Date: 2006
Authors: Sue M Moss; Christopher Wale; Robert Smith; Andrew Evans; Howard Cuckle; Stephen W Duffy Journal: Lancet Oncol Date: 2015-07-20 Impact factor: 41.316
Authors: Yu Shen; Ying Yang; Lurdes Y T Inoue; Mark F Munsell; Anthony B Miller; Donald A Berry Journal: J Natl Cancer Inst Date: 2005-08-17 Impact factor: 13.506
Authors: Sylvia K Plevritis; Diego Munoz; Allison W Kurian; Natasha K Stout; Oguzhan Alagoz; Aimee M Near; Sandra J Lee; Jeroen J van den Broek; Xuelin Huang; Clyde B Schechter; Brian L Sprague; Juhee Song; Harry J de Koning; Amy Trentham-Dietz; Nicolien T van Ravesteyn; Ronald Gangnon; Young Chandler; Yisheng Li; Cong Xu; Mehmet Ali Ergun; Hui Huang; Donald A Berry; Jeanne S Mandelblatt Journal: JAMA Date: 2018-01-09 Impact factor: 56.272
Authors: Oguzhan Alagoz; Donald A Berry; Harry J de Koning; Eric J Feuer; Sandra J Lee; Sylvia K Plevritis; Clyde B Schechter; Natasha K Stout; Amy Trentham-Dietz; Jeanne S Mandelblatt Journal: Med Decis Making Date: 2018-04 Impact factor: 2.583
Authors: Kathy Leung; Joseph T Wu; Irene Oi-Ling Wong; Xiao-Ou Shu; Wei Zheng; Wanqing Wen; Ui-Soon Khoo; Roger Ngan; Ava Kwong; Gabriel M Leung Journal: JNCI Cancer Spectr Date: 2021-06-07
Authors: Amy Trentham-Dietz; Oguzhan Alagoz; Christina Chapman; Xuelin Huang; Jinani Jayasekera; Nicolien T van Ravesteyn; Sandra J Lee; Clyde B Schechter; Jennifer M Yeh; Sylvia K Plevritis; Jeanne S Mandelblatt Journal: PLoS Comput Biol Date: 2021-06-17 Impact factor: 4.475