School of Geographic Science, Nanjing Normal University, Nanjing, China.
Jiangsu Center for Collaborative Innovation in Geographical Information Resource Development and Application, Nanjing, China.
PLoS One. 2019 Jul 26;14(7):e0219695. doi: 10.1371/journal.pone.0219695. eCollection 2019.
Ageing is becoming a considerable public health burden in China, which produces great societal development challenges. Healthy and active longevity could ease the ageing burden on families and communities. To date, most studies of the oldest-old distribution are focused on a simple scale from spatial perspective, and the multi-scale spatio-temporal clusters trend in the oldest-old population has not yet been determined. Thus, the objective in present study is to use a new method to evaluate the spatio-temporal pattern and detect the risk clusters in the oldest-old population from three scales.
Individuals aged 65 years or older and individuals aged 80 years or older on three scales in China from 2000 to 2010 were used. The exploratory spatial data analysis was performed using Moran's I statistic, and the pattern of the oldest-old clusters among humans was examined by using the spatial scan statistical method. Then, spatial stratified heterogeneity was used to explore the factors affecting the spatial heterogeneity of the oldest-old population.
The oldest-old index in the southeast coastal areas is higher than that in the northwest inland areas in China. A three-ladder terrain distribution of the oldest-old index from west to east is obvious. The overall pattern of the oldest-old index evolves from a "concave" shape to an "east-west uplift, and northern collapse" shape. Space-time analysis revealed that high-risk areas were concentrated in five regions: the Yangtze River Delta, the Pearl River Delta, the Southeast Coast, Sichuan and Chongqing, and the Central Plains. The oldest-old cluster at different scales shows a similar pattern, but local differences exist. The risk at the prefecture scale and county scale is greater than at the interprovincial scale; the sublevel can identify clusters that have not been identified at the previous level, especially the bordering areas of prefectures and counties; and more risk units and greater relative risk are found in urban areas than in rural areas.
The results emphasized that spatial scan statistics can be used to estimate the spatial clusters of the oldest-old people. The detection of these clusters might be highly useful in the surveillance of the ageing phenomenon, thus helping local public health authorities measure the population burden at all locations, identifying geographical areas that require more attention, and evaluating the impacts of intervention programs.
老龄化在中国已成为一个相当大的公共卫生负担,给社会发展带来了巨大挑战。健康和积极的长寿可以减轻家庭和社区的老龄化负担。迄今为止,大多数关于最年长人群分布的研究都集中在从空间角度进行简单的规模划分,而最年长人群的多尺度时空聚类趋势尚未确定。因此,本研究的目的是使用一种新方法从三个尺度评估最年长人群的时空模式并检测其风险聚类。
使用中国 2000 年至 2010 年三个尺度上的 65 岁及以上和 80 岁及以上的个体。使用 Moran's I 统计量进行探索性空间数据分析,使用空间扫描统计方法检查人类中最年长人群的聚类模式。然后,使用空间分层异质性来探索影响最年长人群空间异质性的因素。
中国东南沿海地区的最年长指数高于西北内陆地区。从西向东,最年长指数呈明显的三级地形分布。最年长指数的整体模式从“凹形”演变为“东西隆起,北部塌陷”。时空分析表明,高风险地区集中在五个区域:长三角、珠三角、东南沿海、川渝和中原。不同尺度的最年长人群聚类具有相似的模式,但存在局部差异。县级和乡镇级的风险大于省级;子级可以识别出上一级未识别的聚类,特别是县级和乡镇级的边界地区;与农村地区相比,城市地区的风险单位更多,相对风险更大。
结果强调,空间扫描统计可以用于估计最年长人群的空间聚类。这些聚类的检测对于监测老龄化现象非常有用,可以帮助地方公共卫生当局在所有地点衡量人口负担,识别需要更多关注的地理区域,并评估干预计划的影响。