Humboldt-Universität zu Berlin, Geography Department, Berlin, Germany.
Leibniz Institute of Agricultural Development in Transition Economies (IAMO), Halle (Saale), Germany.
Sci Rep. 2018 Jun 29;8(1):9826. doi: 10.1038/s41598-018-28266-4.
Precision public health approaches are crucial for targeting health policies to regions most affected by disease. We present the first sub-national and spatially explicit burden of disease study in Africa. We used a cross-sectional study design and assessed data from the Kenya population and housing census of 2009 for calculating YLLs (years of life lost) due to premature mortality at the division level (N = 612). We conducted spatial autocorrelation analysis to identify spatial clusters of YLLs and applied boosted regression trees to find statistical associations between locational risk factors and YLLs. We found statistically significant spatial clusters of high numbers of YLLs at the division level in western, northwestern, and northeastern areas of Kenya. Ethnicity and household crowding were the most important and significant risk factors for YLL. Further positive and significantly associated variables were malaria endemicity, northern geographic location, and higher YLL in neighboring divisions. In contrast, higher rates of married people and more precipitation in a division were significantly associated with less YLL. We provide an evidence base and a transferable approach that can guide health policy and intervention in sub-national regions afflicted by disease burden in Kenya and other areas of comparable settings.
精准公共卫生方法对于将卫生政策针对受疾病影响最严重的地区至关重要。我们展示了非洲第一个次国家和空间明确的疾病负担研究。我们使用了横断面研究设计,并评估了 2009 年肯尼亚人口和住房普查的数据,以计算因过早死亡而导致的 YLL(生命损失年),在分区级别(N=612)。我们进行了空间自相关分析,以确定 YLL 的空间聚类,并应用提升回归树来发现位置风险因素与 YLL 之间的统计关联。我们发现肯尼亚西部、西北部和东北部地区的分区水平上 YLL 数量存在统计学意义上显著的空间聚类。族裔和家庭拥挤是 YLL 的最重要和最显著的风险因素。进一步的正相关且显著相关的变量包括疟疾流行、地理位置偏北以及相邻分区的 YLL 更高。相比之下,一个分区中已婚人数较高和降水较多与 YLL 较少显著相关。我们提供了一个证据基础和一种可转移的方法,可以指导肯尼亚和其他类似环境地区的次国家区域的卫生政策和干预措施。