Predicting and Controlling Multiple Transmissions of Rotavirus Using Computational Biomedical Model in Smart Health Infrastructures

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Titus Ifeanyi Chinebu, Kennedy Chinedu Okafor, Omowunmi Mary Longe, Kelvin Anoh, Henrietta Onyinye Uzoeto, Victor Onukwube Apeh, Ijeoma Peace Okafor, Bamidele Adebisi, Chukwunenye Anthony Okoronkwo
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Abstract

Conventional laboratory investigation of rotavirus infection and its antigen in rectal swabs from infected persons uses Electron microscopy (EM) (i.e., non-acute cases), genome, and antigen-detecting assays. A recent update involves sorting, trapping, concentrating, and identifying infectious rotavirus particles in clinical samples leveraging activated magnetic microparticles with monoclonal antibodies. However, the routine detection of rotavirus in many specimens using the EM approach is laborious, costly, and requires highly skilled workers. A sustainable healthcare system should leverage the Internet of Things to operate Smart Health Infrastructures (SHI) for predictive control of contagious diseases such as the rotavirus. This paper proposes a biomedical model for predictive control of the virus spread based on Susceptible, Breastfeeding, Vaccinated, Infected, and Recovered (SBVIR) parameters. We introduce breastfeeding, vaccination, and saturated incidence rate variables to deconstruct the transmission dynamics. An efficiency test is conducted using RI control parameters B and V. Applying Lyapunov function analysis, we prove that the global stability of disease-free and endemic equilibria exists under breastfeeding and vaccination conditions when the primary reproduction number is less than unity. Numerical simulation results show that breastfeeding and vaccination are optimal with SBVIR compared to SVIR, SBIR, and SIR parameters for rotavirus infection control by 99%, 26%, 19%, and 18%, respectively. On top of these, we show that the SBVIR model strongly agrees with real-world data and can be used to forecast the infected population in a production health facility. Finally, we show multiple Internet of Things applications in SHI to control rotavirus transmission effectively.

Abstract Image

基于计算生物医学模型的轮状病毒在智能卫生设施中的多重传播预测与控制
常规实验室调查轮状病毒感染及其抗原的直肠拭子感染者使用电子显微镜(即,非急性病例),基因组和抗原检测测定。最近的更新涉及利用单克隆抗体活化磁微粒在临床样品中分选、捕获、浓缩和鉴定传染性轮状病毒颗粒。然而,在许多标本中使用电磁法常规检测轮状病毒是费力的,昂贵的,并且需要高技能的工人。可持续的医疗保健系统应该利用物联网来运行智能卫生基础设施(SHI),以预测轮状病毒等传染病的控制。本文提出了一种基于易感、母乳喂养、接种疫苗、感染和恢复(SBVIR)参数的预测控制病毒传播的生物医学模型。我们引入母乳喂养、疫苗接种和饱和发病率变量来解构传播动态。采用RI控制参数B和v进行了效率检验。应用Lyapunov函数分析,证明了在母乳喂养和疫苗接种条件下,初生繁殖数小于1时,无病平衡和地方性平衡存在全局稳定性。数值模拟结果表明,与SVIR、SBIR和SIR参数相比,母乳喂养和接种SBVIR对轮状病毒感染的控制效果分别为99%、26%、19%和18%。最重要的是,我们表明SBVIR模型与实际数据非常吻合,可用于预测生产卫生机构中的受感染人群。最后,我们展示了多种物联网在SHI中的应用,以有效控制轮状病毒的传播。
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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CiteScore
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19 weeks
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