医学
可能性
优势比
人口学
逻辑回归
痴呆
北京
流行病学
横断面研究
中国
老年学
流行
内科学
疾病
地理
病理
社会学
考古
作者
Zhenxin Zhang,Gwendolyn E. P. Zahner,Gustavo C. Román,Xie-He Liu,Cheng-Bing Wu,Zhen Hong,Hong Xia,Mao-Ni Tang,Bing Zhou,Qiu-Ming Qu,Xiao-Jun Zhang,Hui Li
出处
期刊:Neuroepidemiology
[Karger Publishers]
日期:2006-01-01
卷期号:27 (4): 177-187
被引量:115
摘要
<i>Objective:</i> To characterize sociodemographic variations in the prevalence of AD and VaD in China. <i>Methods:</i> Data were collected in a 1997–1998, cross-sectional, door-to-door prevalence survey of 34,807 community residents ages ≧55 years in Beijing, Shanghai, Chengdu and Xian. Initial diagnoses of AD and VaD were assessed by clinicians using standardized protocols, according to the NINCDS-ADRDA and NINDS-AIREN criteria; diagnoses were confirmed after 6 months by repeating neuropsychological evaluations. Prevalence odds ratios were estimated in logistic models adjusting for survey design, age, and other sociodemographic factors. <i>Results:</i> We identified 732 prevalent cases of AD and 295 cases of VaD. Adjusting for all sociodemographic factors concurrently, prevalence odds of AD and VaD were higher in northern versus southern China. Age trends for AD appeared different in western and eastern China. AD also showed an age-adjusted elevation among women and, in the fully adjusted model, a gender education interaction indicating a female preponderance in the highest education group. North-south variation for VaD was age-dependent. In the fully adjusted model, for AD, widowed had significantly higher prevalence odds; for VaD, widowed persons and minorities had significantly lower prevalence odds; professionals had statistically significant and borderline lower prevalence odds for both VaD and AD; sales-service occupations had significantly lower odds for AD only. <i>Conclusion:</i> We observed variations in prevalence for AD and VaD in different regions and demographic groups in China that persisted after controlling for potential confounding factors. Sociodemographic factors are probable surrogates for conditions such as lifestyle, environment, comorbidities, and life expectancy.
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