Kenya Medical Research Institute - Wellcome Trust Research Programme, P.O. Box, 43640-00100, Nairobi, Kenya.
Geography and Environmental Science, University of Southampton, SO17 1BJ, Southampton, UK.
Sci Rep. 2020 Jan 28;10(1):1324. doi: 10.1038/s41598-020-58284-0.
Admission records are seldom used in sub-Saharan Africa to delineate hospital catchments for the spatial description of hospitalised disease events. We set out to investigate spatial hospital accessibility for severe malarial anaemia (SMA) and cerebral malaria (CM). Malaria admissions for children between 1 month and 14 years old were identified from prospective clinical surveillance data recorded routinely at four referral hospitals covering two complete years between December 2015 to November 2016 and November 2017 to October 2018. These were linked to census enumeration areas (EAs) with an age-structured population. A novel mathematical-statistical framework that included EAs with zero observations was used to predict hospital catchment for malaria admissions adjusting for spatial distance. From 5766 malaria admissions, 5486 (95.14%) were linked to specific EA address, of which 272 (5%) were classified as cerebral malaria while 1001 (10%) were severe malaria anaemia. Further, results suggest a marked geographic catchment of malaria admission around the four sentinel hospitals although the extent varied. The relative rate-ratio of hospitalisation was highest at <1-hour travel time for SMA and CM although this was lower outside the predicted hospital catchments. Delineation of catchments is important for planning emergency care delivery and in the use of hospital data to define epidemiological disease burdens. Further hospital and community-based studies on treatment-seeking pathways to hospitals for severe disease would improve our understanding of catchments.
在撒哈拉以南非洲,入院记录很少用于划定医院的服务范围,以对医院内发生的疾病事件进行空间描述。我们旨在调查严重疟疾贫血症(SMA)和脑型疟疾(CM)的医院空间可达性。我们从 2015 年 12 月至 2016 年 11 月和 2017 年 11 月至 2018 年 10 月期间,在四家转诊医院的常规前瞻性临床监测数据中,确定了 1 个月至 14 岁儿童的疟疾入院病例。这些病例与普查人口登记区(EAs)相关联,EAs 的人口结构是按年龄分层的。我们使用一种新颖的数学统计框架,将包含零观察值的 EAs 纳入其中,根据空间距离对疟疾入院的医院服务范围进行预测调整。在 5766 例疟疾入院病例中,有 5486 例(95.14%)与特定的 EA 地址相关联,其中 272 例(5%)被归类为脑型疟疾,1001 例(10%)为严重疟疾贫血症。此外,结果表明,尽管范围不同,但疟疾入院的服务范围在四家哨点医院周围有明显的地域特征。SMA 和 CM 的住院相对比率最高的是 1 小时内的旅行时间,尽管在预测的医院服务范围之外,这一比率较低。划定服务范围对于规划紧急医疗服务的提供以及利用医院数据来定义疾病负担具有重要意义。进一步的医院和社区研究,关于严重疾病患者到医院的治疗寻求途径,将有助于我们更好地理解服务范围。