A Stochastic H-U Model for Malaria Transmission via Markov Theory

IF 0.1 Q4 STATISTICS & PROBABILITY
D. Arku, G. Kallah-Dagadu
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Abstract

The purpose of this study is to estimate the mean transitioning probabilities from a Healthy state to malaria positive uncomplicated state or to malaria positive severe state. It also classifies the various transitioning probabilities of moving through the various states based on some baseline characteristics. Malaria test results for 2019 over a 12-month period were collected from the University of Ghana school clinic. An H-U model for the study was developed and the transition rates from the cross-sectional data are indicated. With two states Healthy (H) and Uncomplicated (U) forming a state space, there were four possible transitions. The results show that the probability of transitioning from a Healthy state to a malaria positive state is 0.03% while the probability that an individual will remain at Healthy state (H) after the test is 99.73%. It was found that if an individual is already positive and has taken medication the probability that its second test came out negative is 6.45% while the chances that it will remain positive but uncomplicated is 93.55%. The study also showed that in the long run, about 95.98% of persons who visited the student clinic with malaria symptoms recorded negative tests for malaria parasite while about 4% recorded positive for malaria. In terms of disaggregation by gender, it was realized that the number of reported negative test results were higher for females (97.08%) than for males (96.13%). However, the infection rate is higher for males (3.87%) than females (2.92%). It is recommended that in as much as the University of Ghana has two health centers (a clinic and hospital), there should be a centralized system to track students’ health so research done would not be biased.
基于马尔可夫理论的疟疾传播随机H-U模型
本研究的目的是估计从健康状态到疟疾阳性简单状态或疟疾阳性严重状态的平均过渡概率。它还根据一些基线特征对通过各种状态的各种转换概率进行分类。从加纳大学学校诊所收集了2019年12个月期间的疟疾检测结果。为研究开发了一个H-U模型,并指出了横断面数据的转换速率。两个状态健康(H)和不复杂(U)形成一个状态空间,有四种可能的转换。结果表明,从健康状态过渡到疟疾阳性状态的概率为0.03%,而个体在检测后保持在健康状态(H)的概率为99.73%。结果显示,如果一个人已经呈阳性并接受了药物治疗,第二次检测结果为阴性的可能性为6.45%,而保持阳性但不复杂的可能性为93.55%。研究还表明,从长远来看,约95.98%因疟疾症状到学生诊所就诊的人疟疾寄生虫检测呈阴性,而约4%的人疟疾检测呈阳性。在性别分类方面,女性报告阴性检测结果的数量(97.08%)高于男性(96.13%)。男性感染率(3.87%)高于女性(2.92%)。建议加纳大学有两个健康中心(诊所和医院),应该有一个集中的系统来跟踪学生的健康,这样所做的研究就不会有偏见。
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
JP Journal of Biostatistics
JP Journal of Biostatistics STATISTICS & PROBABILITY-
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