Cluster Analysis on Dengue Incidence and Weather Data Using K-Medoids and Fuzzy C-Means Clustering Algorithms (Case Study: Spread of Dengue in the DKI Jakarta Province)

IF 0.5 Q4 MULTIDISCIPLINARY SCIENCES
Cindy Cindy, Cynthia Cynthia, V. Vito, Devvi Sarwinda, B. Handari, G. Hertono
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引用次数: 0

Abstract

In Indonesia, Dengue incidence tends to increase every year but has been fluctuating in recent years. The potential for Dengue outbreaks in DKI Jakarta, the capital city, deserves serious attention. Weather factors are suspected of being associated with the incidence of Dengue in Indonesia. This research used weather and Dengue incidence data for five regions of DKI Jakarta, Indonesia, from December 30, 2008, to January 2, 2017. The study used a clustering approach on time-series and non-time-series data using K-Medoids and Fuzzy C-Means Clustering. The clustering results for the non-time-series data showed a positive correlation between the number of Dengue incidents and both average relative humidity and amount of rainfall. However, Dengue incidence and average temperature were negatively correlated. Moreover, the clustering implementation on the time-series data showed that rainfall patterns most closely resembled those of Dengue incidence. Therefore, rainfall can be used to estimate Dengue incidence. Both results suggest that the government could utilize weather data to predict possible spikes in DHF incidence, especially when entering the rainy season and alert the public to greater probability of a Dengue outbreak.
基于k -介质和模糊c -均值聚类算法的登革热发病率和天气数据聚类分析(以登革热在DKI雅加达省的传播为例)
在印度尼西亚,登革热发病率每年都有增加的趋势,但近年来一直在波动。在首都雅加达DKI暴发登革热的可能性值得认真关注。天气因素被怀疑与印度尼西亚登革热的发病率有关。本研究使用了2008年12月30日至2017年1月2日印度尼西亚雅加达DKI五个地区的天气和登革热发病率数据。本研究采用K-Medoids和模糊C-Means聚类方法对时间序列和非时间序列数据进行聚类。非时间序列数据的聚类结果显示登革热病例数与平均相对湿度和降雨量均呈正相关。登革热发病率与平均气温呈负相关。此外,对时间序列数据的聚类实施表明,降雨模式与登革热发病率最接近。因此,降雨量可用于估计登革热发病率。这两项结果都表明,政府可以利用天气数据预测登革出血热发病率可能出现的高峰,特别是在进入雨季时,并提醒公众登革热爆发的可能性更大。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
24 weeks
期刊介绍: Journal of Mathematical and Fundamental Sciences welcomes full research articles in the area of Mathematics and Natural Sciences from the following subject areas: Astronomy, Chemistry, Earth Sciences (Geodesy, Geology, Geophysics, Oceanography, Meteorology), Life Sciences (Agriculture, Biochemistry, Biology, Health Sciences, Medical Sciences, Pharmacy), Mathematics, Physics, and Statistics. New submissions of mathematics articles starting in January 2020 are required to focus on applied mathematics with real relevance to the field of natural sciences. Authors are invited to submit articles that have not been published previously and are not under consideration elsewhere.
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