Simonetto Cristoforo, Azizova Tamara V, Barjaktarovic Zarko, Bauersachs Johann, Jacob Peter, Kaiser Jan Christian, Meckbach Reinhard, Schöllnberger Helmut, Eidemüller Markus
Helmholtz Zentrum München, Department of Radiation Sciences, Neuherberg, Germany.
Southern Urals Biophysics Institute, Ozyorsk, Chelyabinsk Region, Russia.
PLoS One. 2017 Apr 6;12(4):e0175386. doi: 10.1371/journal.pone.0175386. eCollection 2017.
We propose a stochastic model for use in epidemiological analysis, describing the age-dependent development of atherosclerosis with adequate simplification. The model features the uptake of monocytes into the arterial wall, their proliferation and transition into foam cells. The number of foam cells is assumed to determine the health risk for clinically relevant events such as stroke. In a simulation study, the model was checked against the age-dependent prevalence of atherosclerotic lesions. Next, the model was applied to incidence of atherosclerotic stroke in the cohort of male workers from the Mayak nuclear facility in the Southern Urals. It describes the data as well as standard epidemiological models. Based on goodness-of-fit criteria the risk factors smoking, hypertension and radiation exposure were tested for their effect on disease development. Hypertension was identified to affect disease progression mainly in the late stage of atherosclerosis. Fitting mechanistic models to incidence data allows to integrate biological evidence on disease progression into epidemiological studies. The mechanistic approach adds to an understanding of pathogenic processes, whereas standard epidemiological methods mainly explore the statistical association between risk factors and disease outcome. Due to a more comprehensive scientific foundation, risk estimates from mechanistic models can be deemed more reliable. To the best of our knowledge, such models are applied to epidemiological data on cardiovascular diseases for the first time.
我们提出了一种用于流行病学分析的随机模型,该模型通过适当简化描述了动脉粥样硬化随年龄的发展过程。该模型的特点是单核细胞摄取进入动脉壁、它们的增殖以及向泡沫细胞的转变。假定泡沫细胞的数量决定了诸如中风等临床相关事件的健康风险。在一项模拟研究中,根据动脉粥样硬化病变的年龄依赖性患病率对该模型进行了检验。接下来,该模型应用于南乌拉尔地区马亚克核设施男性工人队列中的动脉粥样硬化性中风发病率。它与标准流行病学模型一样能够描述数据。基于拟合优度标准,对吸烟、高血压和辐射暴露等风险因素对疾病发展的影响进行了测试。结果发现高血压主要在动脉粥样硬化的晚期影响疾病进展。将机制模型拟合到发病率数据中,可以将关于疾病进展的生物学证据整合到流行病学研究中。这种机制方法有助于加深对致病过程的理解,而标准流行病学方法主要探索风险因素与疾病结局之间的统计关联。由于有更全面的科学基础,机制模型得出的风险估计可能被认为更可靠。据我们所知,此类模型首次应用于心血管疾病的流行病学数据。