Comparison of Breast Cancer Risk Predictive Models and Screening Strategies for Chinese Women

Previous studies have shown that organized mammographic screening implementation in China may not be cost-effective. Our aim was to develop a valid predictive mathematical model for selecting high-risk groups eligible for mammography examinations (MAMs) and cost-effective strategies for breast cance...

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Veröffentlicht in:Journal of women's health (Larchmont, N.Y. 2002) N.Y. 2002), 2017-03, Vol.26 (3), p.294-302
Hauptverfasser: Zhao, Ying, Xiong, Ping, McCullough, Lauren E, Miller, Erline E, Li, Hui, Huang, Yuan, Zhao, Min, Wang, Meng-Jie, Kang, Min, Wang, Qiong, Li, Jia-Yuan
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Sprache:eng
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Zusammenfassung:Previous studies have shown that organized mammographic screening implementation in China may not be cost-effective. Our aim was to develop a valid predictive mathematical model for selecting high-risk groups eligible for mammography examinations (MAMs) and cost-effective strategies for breast cancer screening among Chinese women. Between 2009 and 2012, 13,355 eligible women aged 30-65 years were enrolled from the community in Chengdu City. All subjects were administered a valid questionnaire and given MAMs. Using biopsies and 1-year follow up, we compared the accuracy indexes of three predictive models (back-propagation artificial neural network [BP-ANN], logistic regression [LR], and Gail) and four serial screening strategies (BP-ANN→MAM, LR→MAM, Gail→MAM, and MAM alone). We also evaluated the benefits of the four strategies by comparing their incidence-adjusted positive predictive value (PPV). All analyses were conducted with three age-based subgroups: 30-39, 40-49, and 50-65. The BP-ANN , in conjunction with additional continuous risk factor variables, was the best predictive model, with the highest sensitivity (SEN, 76.99%) and specificity (SPE, 54.20%). The BP-ANN →MAM strategy was best for the 40-49 age group, with the highest adjusted PPV (9.80%) and reasonable SEN (81.82%). We found that the BP-ANN model performed the best and was the most accurate for predicting high risk for breast cancer among Chinese women, and the BP-ANN→MAM screening strategy was most effective among the 40-49 age group. However, mammography alone may be a sufficient screening strategy for women aged 50-65.
ISSN:1540-9996
1931-843X
DOI:10.1089/jwh.2015.5692