Institute for Technology Assessment, Massachusetts General Hospital, Boston, Massachusetts, USA.
Dis Esophagus. 2010 Aug;23(6):451-7. doi: 10.1111/j.1442-2050.2010.01054.x. Epub 2010 Mar 26.
Barrett's esophagus (BE) is the precursor and the biggest risk factor for esophageal adenocarcinoma (EAC), the solid cancer with the fastest rising incidence in the US and western world. Current strategies to decrease morbidity and mortality from EAC have focused on identifying and surveying patients with BE using upper endoscopy. An accurate estimate of the number of patients with BE in the population is important to inform public health policy and to prioritize resources for potential screening and management programs. However, the true prevalence of BE is difficult to ascertain because the condition frequently is symptomatically silent, and the numerous clinical studies that have analyzed BE prevalence have produced a wide range of estimates. The aim of this study was to use a computer simulation disease model of EAC to determine the estimates for BE prevalence that best align with US Surveillance Epidemiology and End Results (SEER) cancer registry data. A previously developed mathematical model of EAC was modified to perform this analysis. The model consists of six health states: normal, gastroesophageal reflux disease (GERD), BE, undetected cancer, detected cancer, and death. Published literature regarding the transition rates between these states were used to provide boundaries. During the one million computer simulations that were performed, these transition rates were systematically varied, producing differing prevalences for the numerous health states. Two filters were sequentially applied to select out superior simulations that were most consistent with clinical data. First, among these million simulations, the 1000 that best reproduced SEER cancer incidence data were selected. Next, of those 1000 best simulations, the 100 with an overall calculated BE to Detected Cancer rates closest to published estimates were selected. Finally, the prevalence of BE in the final set of best 100 simulations was analyzed. We present histogram data depicting BE prevalences for all one million simulations, the 1000 simulations that best approximate SEER data, and the final set of 100 simulations. Using the best 100 simulations, we estimate the prevalence of BE to be 5.6% (5.49-5.70%). Using our model, an estimated prevalence for BE in the general population of 5.6% (5.49-5.70%) accurately predicts incidence rates for EAC reported to the US SEER cancer registry. Future clinical studies are needed to confirm our estimate.
巴雷特食管(BE)是食管腺癌(EAC)的前身和最大危险因素,EAC 是美国和西方国家发病率增长最快的实体癌。目前,降低 EAC 发病率和死亡率的策略侧重于使用上消化道内镜识别和监测 BE 患者。准确估计人群中 BE 患者的数量对于告知公共卫生政策和为潜在的筛查和管理计划分配资源非常重要。然而,由于该病症通常无症状,因此很难确定 BE 的真实患病率,而且分析 BE 患病率的众多临床研究产生了广泛的估计值。本研究旨在使用 EAC 的计算机模拟疾病模型来确定与美国监测、流行病学和最终结果(SEER)癌症登记数据最吻合的 BE 患病率估计值。修改了以前开发的 EAC 数学模型来进行这项分析。该模型由六个健康状态组成:正常、胃食管反流病(GERD)、BE、未检测到的癌症、检测到的癌症和死亡。使用已发表的关于这些状态之间转换率的文献来提供边界。在进行的一百万次计算机模拟中,系统地改变了这些转换率,从而产生了许多健康状态的不同患病率。然后应用两个过滤器来选择与临床数据最一致的优秀模拟。首先,在这百万次模拟中,选择了 1000 次最佳模拟 SEER 癌症发病率数据的模拟。其次,在这 1000 次最佳模拟中,选择了与已发表估计值最接近的总体计算 BE 到检测到的癌症的 100 次模拟。最后,分析了最终的 100 次最佳模拟中 BE 的患病率。我们展示了直方图数据,描绘了所有一百万次模拟、最接近 SEER 数据的 1000 次模拟以及最终的 100 次模拟的 BE 患病率。使用最佳的 100 次模拟,我们估计 BE 的患病率为 5.6%(5.49-5.70%)。使用我们的模型,估计普通人群中 BE 的患病率为 5.6%(5.49-5.70%),可准确预测向美国 SEER 癌症登记报告的 EAC 发病率。需要进一步的临床研究来证实我们的估计。