A Clustering Approach for Mapping Dengue Contingency Plan

Farida Amila Husna, D. Purwitasari, Bayu Adjie Sidharta, Drigo Alexander Sihombing, A. Fahmi, M. Purnomo
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Abstract

Purpose: The dengue epidemic has an increasing number of sufferers and spreading areas along with increased mobility and population density. Therefore, it is necessary to control and prevent Dengue Hemorrhagic Fever (DHF) by mapping a DHF contingency plan. However, mapping a dengue contingency plan is not easy because clinical and managerial issues, vector control, preventive measures, and surveillance must be considered. This work introduces a cluster-based dengue contingency planning method by grouping patient cases according to their environment and demographics, then mapping out a plan and selecting the appropriate plan for each area.Methods: We used clustering with silhouette scoring to select features, the best cluster formation, the best clustering method, and cluster severity. Cluster severity is carried out by levelling the attributes of the average value to low, medium, high, and extreme, which are related to the plans each region sets for village type and season type.Result: In five years of data (2016-2020) ±15K cases from Semarang City, Indonesia, feature selection results show that environmental and demography group features have the biggest silhouette score. With these features, it is found that K-Means has a high silhouette score compared to DBSCAN and agglomerative with three optimum numbers of clusters. K-Means also successfully mapped the cluster severity and assigned the cluster to a suitable contingency policy.Novelty: Most of the research on DHF cases is about predicting DHF cases and measuring the risk of DHF occurrence. There are not many studies that discuss the policy recommendations for dengue control.
登革热应急计划绘图的聚类方法
目的:随着流动性和人口密度的增加,登革热流行病的患者人数和传播地区越来越多。因此,有必要通过制定登革出血热应急计划来控制和预防登革出血热(DHF)。然而,制定登革热应急计划并不容易,因为必须考虑临床和管理问题、病媒控制、预防措施和监测。这项工作引入了一种基于集群的登革热应急规划方法,根据患者的环境和人口统计数据对患者进行分组,然后制定计划并为每个地区选择适当的计划。方法:采用轮廓评分聚类方法选择特征、最佳聚类形式、最佳聚类方法和聚类严重程度。集群严重程度是通过将平均值的属性调平为低、中、高和极端来实现的,这些属性与每个地区为村庄类型和季节类型设置的计划有关。结果:在印度尼西亚三宝垄市5年(2016-2020)±15K例数据中,特征选择结果显示,环境和人口群体特征的剪影得分最大。利用这些特征,发现K-Means与DBSCAN相比具有较高的轮廓分数,并且具有三个最优簇数的聚集性。K-Means还成功地映射了集群的严重性,并为集群分配了合适的应急策略。新颖性:对登革出血热病例的研究大多是预测登革出血热病例和测量登革出血热发生的风险。讨论登革热控制政策建议的研究并不多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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24 weeks
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