Sukarna Sukarna, Wijayanto Hari, Angraini Yenni, Kurnia Anang
Statistics and Data Science Study Program, School of Data Science, Mathematics, and Informatics, IPB University, Dramaga, Bogor; Faculty of Mathematics and Natural Science, Universitas Negeri Makassar, Makassar.
Statistics and Data Science Study Program, School of Data Science, Mathematics, and Informatics, IPB University, Dramaga, Bogor.
Geospat Health. 2025 Jul 7;20(2). doi: 10.4081/gh.2025.1379. Epub 2025 Jul 18.
In association with cases of Dengue Haemorrhagic Fever (DHF), Indonesia's Breteau Index has consistently fallen below the national standard of 95% over the past 12 years (2007-2019). Currently, the country relies on survey methods to map DHF spread, but these methods are costly and require substantial resource support since monitoring DHF cases necessitates considering both spatial and temporal aspects. As an alternative, we proposed a pilot study utilizing a localized version of the hierarchical Bayesian spatiotemporal conditional autoregressive model (LHBSTCARM) to predict the DHF cases in Makassar City, Indonesia. Using this approach, we examined the relationship between DHF and the normalized difference built-up index (NDBI), the Normalized Difference Vegetation Index (NDVI), and the Normalized Difference Water Index (NDWI) that were downloaded from the Sentinel-2 satellite. Based on these datasets, we identified an optimal LHBSTCARM model that classified areas in Makassar City into distinct spatial risk groups based on the likelihood of dengue occurrence. Specifically, the model identified four districts with low relative risk, one with high relative risk and the remaining districts with moderate relative risk. Incorporating covariates, the model also revealed that NDVI and NDWI were significant predictors for dengue outbreaks, whereas NDBI was not. Both significant covariates showed negative effects, with a one-unit increase in NDVI and NDWI associated with reductions in DHF cases by 84.5% and 81.5%, respectively. Thus, NDVI and NDWI are the environmental variables of choice for the prediction of DHF incidence.
在登革出血热(DHF)病例方面,印度尼西亚的布雷图指数在过去12年(2007 - 2019年)一直低于95%的国家标准。目前,该国依靠调查方法来绘制登革出血热的传播情况,但这些方法成本高昂且需要大量资源支持,因为监测登革出血热病例需要考虑空间和时间两个方面。作为一种替代方法,我们提出了一项试点研究,利用分层贝叶斯时空条件自回归模型(LHBSTCARM)的本地化版本来预测印度尼西亚望加锡市的登革出血热病例。使用这种方法,我们研究了登革出血热与从哨兵 - 2卫星下载的归一化差异建筑指数(NDBI)、归一化差异植被指数(NDVI)和归一化差异水体指数(NDWI)之间的关系。基于这些数据集,我们确定了一个最优的LHBSTCARM模型,该模型根据登革热发生的可能性将望加锡市的区域划分为不同的空间风险组。具体而言,该模型确定了四个相对风险较低的地区,一个相对风险较高的地区,其余地区相对风险中等。纳入协变量后,该模型还显示NDVI和NDWI是登革热爆发的重要预测因子,而NDBI不是。这两个重要的协变量均显示出负面影响,NDVI和NDWI每增加一个单位,登革出血热病例分别减少84.5%和81.5%。因此,NDVI和NDWI是预测登革出血热发病率的首选环境变量。