ANALYSING THE EFFECT OF CLIMATE VARIABILITY ON DENGUE FEVER INCIDENCE USING A REGRESSION MODEL APPROACH: A CASE STUDY OF BANDUNG CITY

Authors

  • M. Henry Joyodiningrat Institut Teknologi Bandung
  • Yonatan Kurniawan Institut Teknologi Bandung

DOI:

https://doi.org/10.34147/crj.v10i02.344

Keywords:

Dengue Fever (DHF), Temperature, Rainfall, Humidity, Wind Speed

Abstract

Dengue fever (DHF) is a disease transmitted by mosquito vectors that becomes a worldwide problem every year. Bandung City as the capital city of West Java Province is a vulnerable area for DHF as seen from the high number of cases and deaths due to DHF. Climate variability such as temperature, rainfall, humidity and wind speed, has an influence on the incidence of DHF which affects the life cycle of mosquitoes, breeding media, and also the reach of mosquitoes to humans. The high number of cases will affect the sustainability of regional development, one of which has implications for the high burden on the health budget. Based on the regression model, there is a relationship between climate variability and health outcomes. Climate variability simultaneously affects the incidence of dengue fever in Bandung City. With R2 value of 0.737. The proven influence of climate variability on dengue disease rates in Bandung City can be used in developing an early warning system to prevent and reduce the number of cases in the form of more accurate disease prevention activities before the number of cases increases.

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Published

2024-12-13

How to Cite

ANALYSING THE EFFECT OF CLIMATE VARIABILITY ON DENGUE FEVER INCIDENCE USING A REGRESSION MODEL APPROACH: A CASE STUDY OF BANDUNG CITY. (2024). Creative Research Journal, 10(02), 85-96. https://doi.org/10.34147/crj.v10i02.344