Moura Lidia Mvr, Westover M Brandon, Kwasnik David, Cole Andrew J, Hsu John
Massachusetts General Hospital, Department of Neurology, Epilepsy Service, Boston, MA, USA; Harvard Medical School, Boston, MA, USA.
Massachusetts General Hospital, Department of Neurology, Epilepsy Service, Boston, MA, USA.
Clin Epidemiol. 2016 Dec 30;9:9-18. doi: 10.2147/CLEP.S121023. eCollection 2017.
The elderly population faces an increasing number of cases of chronic neurological conditions, such as epilepsy and Alzheimer's disease. Because the elderly with epilepsy are commonly excluded from randomized controlled clinical trials, there are few rigorous studies to guide clinical practice. When the elderly are eligible for trials, they either rarely participate or frequently have poor adherence to therapy, thus limiting both generalizability and validity. In contrast, large observational data sets are increasingly available, but are susceptible to bias when using common analytic approaches. Recent developments in causal inference-analytic approaches also introduce the possibility of emulating randomized controlled trials to yield valid estimates. We provide a practical example of the application of the principles of causal inference to a large observational data set of patients with epilepsy. This review also provides a framework for comparative-effectiveness research in chronic neurological conditions.
老年人群面临着越来越多的慢性神经疾病病例,如癫痫和阿尔茨海默病。由于患有癫痫的老年人通常被排除在随机对照临床试验之外,因此几乎没有严格的研究来指导临床实践。当老年人符合试验条件时,他们要么很少参与,要么经常对治疗的依从性很差,从而限制了研究结果的普遍性和有效性。相比之下,大型观察数据集越来越多,但使用常见分析方法时容易产生偏差。因果推断分析方法的最新进展也带来了模拟随机对照试验以获得有效估计值的可能性。我们提供了一个将因果推断原则应用于癫痫患者大型观察数据集的实际例子。本综述还为慢性神经疾病的比较有效性研究提供了一个框架。