Departments of Family and Social Medicine and Epidemiology and Population Health, Albert Einstein College of Medicine, Bronx, New York, USA.
Department of Oncology, Georgetown University Medical Center and Cancer Prevention and Control Program, Georgetown-Lombardi Comprehensive Cancer Center, Washington, DC, USA.
Med Decis Making. 2018 Apr;38(1_suppl):66S-77S. doi: 10.1177/0272989X17698685.
The Georgetown University-Albert Einstein College of Medicine breast cancer simulation model (Model GE) has evolved over time in structure and function to reflect advances in knowledge about breast cancer, improvements in early detection and treatment technology, and progress in computing resources. This article describes the model and provides examples of model applications.
The model is a discrete events microsimulation of single-life histories of women from multiple birth cohorts. Events are simulated in the absence of screening and treatment, and interventions are then applied to assess their impact on population breast cancer trends. The model accommodates differences in natural history associated with estrogen receptor (ER) and human epidermal growth factor receptor 2 (HER2) biomarkers, as well as conventional breast cancer risk factors. The approach for simulating breast cancer natural history is phenomenological, relying on dates, stage, and age of clinical and screen detection for a tumor molecular subtype without explicitly modeling tumor growth. The inputs to the model are regularly updated to reflect current practice. Numerous technical modifications, including the use of object-oriented programming (C++), and more efficient algorithms, along with hardware advances, have increased program efficiency permitting simulations of large samples.
The model results consistently match key temporal trends in US breast cancer incidence and mortality.
The model has been used in collaboration with other CISNET models to assess cancer control policies and will be applied to evaluate clinical trial design, recurrence risk, and polygenic risk-based screening.
乔治城大学-爱因斯坦医学院乳腺癌模拟模型(Model GE)在结构和功能上不断发展,以反映乳腺癌知识的进步、早期检测和治疗技术的改进以及计算资源的进步。本文描述了该模型,并提供了模型应用的示例。
该模型是对来自多个出生队列的女性单一生命史的离散事件微观模拟。在没有筛查和治疗的情况下模拟事件,然后应用干预措施来评估它们对人群乳腺癌趋势的影响。该模型适应与雌激素受体 (ER) 和人表皮生长因子受体 2 (HER2) 生物标志物以及常规乳腺癌风险因素相关的自然史差异。模拟乳腺癌自然史的方法是现象学的,依赖于肿瘤分子亚型的临床和筛查检测的日期、阶段和年龄,而无需明确建模肿瘤生长。该模型的输入定期更新以反映当前实践。许多技术改进,包括使用面向对象编程 (C++) 和更有效的算法以及硬件进步,提高了程序效率,从而允许对大型样本进行模拟。
模型结果始终与美国乳腺癌发病率和死亡率的关键时间趋势相匹配。
该模型已与其他 CISNET 模型合作用于评估癌症控制政策,并将应用于评估临床试验设计、复发风险和基于多基因风险的筛查。