发展中国家疟疾传播的信息技术辅助预测模型

Emmanuel Tuyishimire, Carine Pierrette Mukamakuza, Aimable Mbituyumuremy, T. Brown, Didier Iradukunda, Ofentse Phuti, Happiness Rose Mary
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引用次数: 1

摘要

疟疾是一种长期存在的疾病,也是最严重的威胁生命的疾病之一,但它的治疗方法并没有改变,而世界已经迎来了第四次工业革命(4IR)。一波对这种致命疾病的数字化监测机制的研究已经浮出水面。自动化疟疾筛查是在研究领域日益普及的检测过程之一。然而,这一进程需要与其他旨在建立国家或区域疟疾监测系统的进程相结合。本文提出了一个非洲国家或地区的数字疟疾监测系统。这种数字系统的一个优点是,它使一种基于不同疟疾类型动态的新型疾病传播预测模型成为可能。描述了诊断系统的体系结构,用SPITR(易感-保护-感染-治疗-恢复)流行病模型对疾病传播模型进行了数学建模,并对SPITR模型进行了进一步分析。对预测模型进行了阐述和分析,并用蒙特卡罗模拟方法进行了实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IT-Aided Forecasting Model for Malaria Spread for the Developing World
Malaria is a long-standing disease and one of the top life-threatening diseases, yet its treatment has not changed, while the world has already embraced the Fourth Industrial Revolution (4IR). A wave of research on digitizing monitoring mechanisms of such a deadly disease has surfaced. Automated malaria screening is one of the detection processes which are gaining popularity in the research domain. However, the process needs to be coupled with other processes aiming a nationally or regionally contextualised malaria monitoring system. This paper proposes a digital malaria monitoring system in the context of an African country or region. One advantage of such a digital system is that is enables a novel disease spread forecasting model based on the dynamics of different malaria types. The architecture of the diagnosis system is described, and the disease spread model is mathematically modelled in terms of a SPITR (Susceptible-Protected-Infected-Treated-Recovered) epidemic model which is further analysed. The forecasting model is expressed and analysed whereas experiments are conducted using a Monte Carlo simulation method.
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