Institute for Computing and Information Sciences, Radboud University Nijmegen, Nijmegen, The Netherlands.
J Clin Epidemiol. 2013 Dec;66(12):1405-16. doi: 10.1016/j.jclinepi.2013.06.018. Epub 2013 Sep 12.
Although the course of single diseases can be studied using traditional epidemiologic techniques, these methods cannot capture the complex joint evolutionary course of multiple disorders. In this study, multilevel temporal Bayesian networks were adopted to study the course of multimorbidity in the expectation that this would yield new clinical insight.
Clinical data of patients were extracted from 90 general practice registries in the Netherlands. One and half million patient-years were used for analysis. The simultaneous progression of six chronic cardiovascular conditions was investigated, correcting for both patient and practice-related variables.
Cumulative incidence rates of one or more new morbidities rapidly increase with the number of morbidities present at baseline, ranging up to 47% and 76% for 3- and 5-year follow-ups, respectively. Hypertension and lipid disorders, as health risk factors, increase the cumulative incidence rates of both individual and multiple disorders. Moreover, in their presence, the observed cumulative incidence rates of combinations of cardiovascular disorders, that is, multimorbidity differs significantly from the expected rates.
There are clear synergies between health risks and chronic diseases when multimorbidity within a patient progresses over time. The method used here supports a more comprehensive analysis of such synergies compared with what can be obtained by traditional statistics.
虽然可以使用传统的流行病学技术来研究单一疾病的病程,但这些方法无法捕捉多种疾病的复杂共同演变过程。本研究采用多层次时间贝叶斯网络来研究多种疾病的病程,希望能提供新的临床见解。
从荷兰 90 个普通实践注册中心提取患者的临床数据。分析中使用了 150 万患者年。研究了六种慢性心血管疾病同时进展的情况,同时校正了患者和实践相关的变量。
随着基线时存在的疾病数量的增加,一种或多种新疾病的累积发病率迅速增加,在 3 年和 5 年的随访中,分别高达 47%和 76%。高血压和血脂紊乱等健康风险因素增加了个体和多种疾病的累积发病率。此外,在这些疾病存在的情况下,观察到的心血管疾病组合(即多种疾病)的累积发病率与预期发病率显著不同。
随着患者的多种疾病在一段时间内的进展,健康风险和慢性疾病之间存在明显的协同作用。与传统统计学相比,这里使用的方法支持对这种协同作用进行更全面的分析。