Centre for Global Health Research, Usher Institute of Population Health Sciences and Informatics, University of Edinburgh, UK.
Department of Medicine, School of Medicine & Health Sciences, George Washington University; Washington, District of Columbia, USA.
J Glob Health. 2020 Dec;10(2):020701. doi: 10.7189/jogh.10.020701.
Rapid increase in life expectancy in low- and middle-income countries including the World Health Organization's Southeast Asia Region (SEAR) has resulted in an increase in the global burden of dementia, which is expected to become a leading cause of morbidity. Accurate burden estimates are key for informing policy and planning. Given the paucity of data, estimates were developed using both a Bayesian methodology and as well as a traditional frequentist approach to gain better insights into methodological approaches for disease burden estimates.
Seven databases were searched for studies published between 2010-2018 regarding dementia prevalence in SEAR, generating 8 relevant articles. A random-effects model (REM) and a Bayesian normal-normal hierarchical model (NNHM) were used to obtain the pooled prevalence estimate of dementia for people aged 60 and above in SEAR. The latter model was also developed to estimate age-specific dementia prevalence. Using UN population estimates for SEAR, total and age-specific projections of the burden of dementia in 2015, 2020 and 2030 were calculated.
The prevalence of dementia in SEAR was found to be 3% (95% confidence interval (CI) = 2-6%) in those above age 60 based on REM, and 3.1% (95% credible interval = 1.5-5.0%) based on the NNHM. The estimated prevalence varies with age, increasing from 1.6% (95% credible interval = 0.8-2.5%) in people aged 60-69 to 12.4% (95% credible interval = 5.6-20%) in people above the age of 80. The risk of developing dementia increased exponentially with age. The number of people living with dementia in SEAR in 2015 was estimated at 5.51 million (95% credible interval = 2.66-8.82), with projections of 6.66 million (95% credible interval = 3.21-10.7) in 2020 and 9.6 million (95% credible interval = 4.62-15.36) in 2030.
The burden of dementia in SEAR is substantial and will continue to increase rapidly by 2030. The lack of research focusing on dementia in SEAR points to a significant under-recognition of this disease. The projected rise in dementia cases in the future should prompt urgent governmental response to address this growing public health issue. We also argue that given the overall paucity of data for the region, the Bayesian approach offers a promising methodology for improved estimates of disease prevalence and burden and should continue to be explored.
包括世界卫生组织东南亚区域(SEAR)在内的低收入和中等收入国家的预期寿命快速增长,导致全球痴呆症负担增加,预计痴呆症将成为发病率的主要原因。准确的负担估计是为政策和规划提供信息的关键。鉴于数据匮乏,使用贝叶斯方法和传统的频率方法来进行估计,以便更好地了解疾病负担估计的方法。
对 2010 年至 2018 年间关于 SEAR 地区痴呆症患病率的研究进行了七个数据库的检索,共生成了 8 篇相关文章。使用随机效应模型(REM)和贝叶斯正态-正态分层模型(NNHM)来获得 SEAR 地区 60 岁及以上人群的痴呆症总患病率。后一种模型也用于估计特定年龄的痴呆症患病率。根据 SEAR 的联合国人口估计数,计算了 2015 年、2020 年和 2030 年痴呆症负担的总负担和特定年龄的预测。
基于 REM,SEAR 地区 60 岁以上人群的痴呆症患病率为 3%(95%置信区间(CI)=2-6%),基于 NNHM 的患病率为 3.1%(95%可信区间=1.5-5.0%)。估计的患病率随年龄而变化,从 60-69 岁人群的 1.6%(95%可信区间=0.8-2.5%)增加到 80 岁以上人群的 12.4%(95%可信区间=5.6-20%)。患痴呆症的风险随年龄呈指数增长。2015 年 SEAR 地区痴呆症患者人数估计为 551 万(95%可信区间=266-882 万),2020 年预计为 666 万(95%可信区间=321-1070 万),2030 年预计为 960 万(95%可信区间=462-1536 万)。
SEAR 地区的痴呆症负担很大,到 2030 年将迅速增加。该地区缺乏针对痴呆症的研究,表明对这种疾病的认识严重不足。未来痴呆症病例的预计增加应促使政府紧急应对这一日益严重的公共卫生问题。我们还认为,鉴于该地区整体数据匮乏,贝叶斯方法为改进疾病流行率和负担的估计提供了一种有前途的方法,应继续加以探讨。