Soper Braden C, Nygård Mari, Abdulla Ghaleb, Meng Rui, Nygård Jan F
Computing Directorate, Lawrence Livermore National Laboratory, Livermore, California, USA.
Research Department, Cancer Registry of Norway, Oslo, Norway.
Stat Med. 2020 Nov 10;39(25):3569-3590. doi: 10.1002/sim.8681. Epub 2020 Aug 27.
The Cancer Registry of Norway has been administrating a national cervical cancer screening program since 1992 by coordinating triennial cytology exam screenings for the female population between 25 and 69 years of age. Up to 80% of cancers are prevented through mass screening, but this comes at the expense of considerable screening activity and leads to overtreatment of clinically asymptomatic precancers. In this article, we present a continuous-time, time-inhomogeneous hidden Markov model which was developed to understand the screening process and cervical cancer carcinogenesis in detail. By leveraging 1.7 million individual's multivariate time-series of medical exams performed over a 25-year period, we simultaneously estimate all model parameters. We show that an age-dependent model reflects the Norwegian screening program by comparing empirical survival curves from observed registry data and data simulated from the proposed model. The model can be generalized to include more detailed individual-level covariates as well as new types of screening exams. By utilizing individual screening histories and covariate data, the proposed model shows potential for improving strategies for cancer screening programs by personalizing recommended screening intervals.
自1992年以来,挪威癌症登记处一直在管理一项全国性宫颈癌筛查计划,通过协调对25至69岁女性人群每三年进行一次的细胞学检查筛查。通过大规模筛查可预防高达80%的癌症,但这是以大量的筛查活动为代价的,并且会导致对临床无症状癌前病变的过度治疗。在本文中,我们提出了一个连续时间、时变的隐马尔可夫模型,该模型旨在详细了解筛查过程和宫颈癌致癌机制。通过利用25年间170万人的多元医学检查时间序列,我们同时估计了所有模型参数。通过比较观察到的登记数据的经验生存曲线和从所提出模型模拟的数据,我们表明年龄依赖性模型反映了挪威的筛查计划。该模型可以推广到包括更详细的个体水平协变量以及新型筛查检查。通过利用个体筛查历史和协变量数据,所提出的模型显示出通过个性化推荐筛查间隔来改进癌症筛查计划策略的潜力。