Department of Epidemiology, Mailman School of Public Health, Columbia University, New York, New York.
Herbert Irving Comprehensive Cancer Center, Columbia University Medical Center, New York, New York.
Stat Med. 2020 Mar 30;39(7):1011-1024. doi: 10.1002/sim.8458. Epub 2020 Feb 5.
Recent studies have reported increases in cancer incidence in adults under 50 years. However, there remains uncertainty about whether these are true increases or a result of incidental findings from increased medical imaging. To evaluate these trends, we propose an alternative method to age-period-cohort analyses based on survival modeling. Simulations show that our method is capable of quantifying cohort effects within various backgrounds including increasing medical imaging. We applied the method to analyze the changes in cancer incidence rates for 44 anatomic sites, stratified by sex, by birth cohort for individuals born from 1945 to 1969 in the US based on incidence data from the Surveillance, Epidemiology, and End Results (SEER) program, and tested the validity of our models using later birth cohorts (1970-1974 and 1975-1979). We found that cancer risks have increased significantly in 15 sites (9 in men and 11 in women) for 25-49 year-olds. These results were consistent with previous findings from age-period-cohort analyses. Furthermore, based on our simulations, these increases were independent of increased medical imaging and support substantial, increased extrinsic risks in the identified cancers. Although our approach has several limitations including the restriction to the younger age range and requirement of complete data for all ages of interest, we demonstrate many advantages of our approach including the ease in implementation and interpretation of cohort effects, robustness to various period backgrounds, and ability to make predictions. Our approach should help epidemiologists evaluate cohort effects using incidence data for cancer or other diseases.
最近的研究报告称,50 岁以下成年人的癌症发病率有所上升。然而,这些是真实的增长还是由于医疗成像增加而偶然发现的,仍存在不确定性。为了评估这些趋势,我们提出了一种基于生存模型的替代年龄-时期-队列分析方法。模拟表明,我们的方法能够在包括医疗成像增加在内的各种背景下量化队列效应。我们应用该方法分析了美国基于监测、流行病学和最终结果(SEER)计划的发病率数据,按性别和出生队列对 1945 年至 1969 年出生的个体的 44 个解剖部位的癌症发病率变化进行分层,对不同出生队列(1970-1974 年和 1975-1979 年)的模型有效性进行了检验。我们发现,25-49 岁人群中有 15 个部位(男性 9 个,女性 11 个)的癌症风险显著增加。这些结果与之前的年龄-时期-队列分析结果一致。此外,基于我们的模拟,这些增加与医疗成像的增加无关,并支持在确定的癌症中存在大量增加的外在风险。尽管我们的方法有几个局限性,包括仅限于年轻年龄范围和需要所有感兴趣年龄的完整数据,但我们展示了该方法的许多优势,包括易于实施和解释队列效应、对各种时期背景的稳健性以及进行预测的能力。我们的方法应该有助于流行病学家使用癌症或其他疾病的发病率数据评估队列效应。