Development of Data-driven Machine Learning Models and their Potential Role in Predicting Dengue outbreak.

IF 0.8 4区 医学 Q4 INFECTIOUS DISEASES
Bushra Mazhar, Nazish Mazhar Ali, Farkhanda Manzoor, Muhammad Kamran Khan, Muhammad Nasir, Muhammad Ramzan
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引用次数: 0

Abstract

Abstract: Dengue fever is one of the most widespread vector-borne viral infections in the world, resulting in increased socio-economic burdens. The WHO has reported that 2.5 billion people are infected with dengue fever across the world, resulting in high mortalities in tropical and subtropical regions. The current article endeavors to present an overview of predicting dengue outbreaks through data-based machine-learning models. This artificial intelligence model uses real-world data such as dengue surveillance, climatic variables, and epidemiological data and combines big data with machine learning algorithms to forecast dengue. Monitoring and predicting dengue incidences have been significantly enhanced through innovative approaches. This involves gathering data on various climatic factors, including temperature, rainfall, relative humidity, and wind speed, along with monthly records of dengue cases. The study functions as an efficient warning system, enabling the anticipation of dengue outbreaks. This early warning system not only alerts communities but also aids relevant authorities in implementing crucial preventive measures.

开发数据驱动的机器学习模型及其在预测登革热爆发中的潜在作用。
摘要:登革热是世界上最广泛的病媒传播病毒感染之一,导致社会经济负担加重。世卫组织报告称,全球有 25 亿人感染登革热,导致热带和亚热带地区的高死亡率。本文试图概述通过基于数据的机器学习模型预测登革热爆发的方法。该人工智能模型使用登革热监测、气候变量和流行病学数据等真实世界的数据,并将大数据与机器学习算法相结合来预测登革热。通过创新方法,登革热发病率的监测和预测工作得到了显著加强。这涉及收集各种气候因素的数据,包括温度、降雨量、相对湿度和风速,以及登革热病例的月度记录。这项研究发挥了高效预警系统的作用,能够预测登革热的爆发。这一预警系统不仅能提醒社区,还能帮助相关部门实施重要的预防措施。
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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来源期刊
Journal of Vector Borne Diseases
Journal of Vector Borne Diseases INFECTIOUS DISEASES-PARASITOLOGY
CiteScore
0.90
自引率
0.00%
发文量
89
审稿时长
>12 weeks
期刊介绍: National Institute of Malaria Research on behalf of Indian Council of Medical Research (ICMR) publishes the Journal of Vector Borne Diseases. This Journal was earlier published as the Indian Journal of Malariology, a peer reviewed and open access biomedical journal in the field of vector borne diseases. The Journal publishes review articles, original research articles, short research communications, case reports of prime importance, letters to the editor in the field of vector borne diseases and their control.
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