空中交通网络中用于理解疾病传播动态的流行病情报模型——一个案例研究

Q2 Computer Science
Anbalagan Bhuvaneswari
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引用次数: 0

摘要

目的/目的:了解航空旅行背景下的疾病传播动态对于有效的疾病检测和流行病情报至关重要。本研究提出的易感-暴露-感染-康复-住院-危重-死亡(SEIR-HCD)模型被认为是捕捉流行病期间疾病传播、医疗需求和死亡率的复杂动态的有价值的工具。背景:病毒性疾病的传播是全世界公共卫生服务面临的一个主要问题。了解疾病的传播方式对于采取正确的措施阻止疾病传播非常重要。在流行病学中,SIS、SIR和SEIR模型已被用于模拟和研究疾病如何在人群中传播。方法:本研究的重点是将空中交通网络数据整合到SEIR-HCD模型中,以增强对航空旅行环境中疾病传播的理解。通过纳入空中交通数据,该模型考虑了旅行模式和连通性在疾病传播中的作用,从而能够确定高风险路线、机场和地区。贡献:本研究通过应用SIS、SIR和SEIR-HCD模型,增强了我们对疾病传播动力学的理解,为流行病学领域做出了贡献。这些发现为了解影响疾病传播的因素提供了见解,从而有助于制定有效的疾病控制和预防战略。研究结果:通过航空旅行实证探讨了当地疫情与全球疾病传播之间的相互作用。该模型可进一步用于评估机场和交通枢纽监测和早期检测措施的有效性。拟议的研究有助于制定主动和循证的疾病预防和控制战略,深入了解航空旅行对疾病传播的影响,并支持空中交通网络中的公共卫生干预措施。对从业人员的建议:在困难时期可以研究政府干预,这是一个调节变量,可以增强或阻碍空中交通网络流行病情报工作的效力。来自包括流行病学、航空、数据科学和公共卫生在内的各个领域的专家合作,采用跨学科方法,可以更全面地了解空中交通网络中的疾病传播动态。对研究人员的建议:研究人员可以与国际卫生组织和当局合作,分享他们的研究成果,促进对空中交通网络中疾病传播的全球理解。对社会的影响:本研究具有重要的社会意义。通过提供对疾病传播动态的更深入了解,它使决策者、公共卫生官员和从业人员能够做出明智的决定,以减轻疾病暴发。从这项研究中得出的建议可以帮助制定有效的战略,控制和预防传染病的传播,最终改善公共卫生成果,减少社会混乱。未来研究:研究人员可以在空中交通网络的背景下更有效地为疾病爆发作出贡献,最终有助于保护公众健康和全球旅行。通过考虑空中交通模式,SEIR-HCD模型有助于更准确地建模和预测疾病爆发,有助于制定主动和基于证据的战略,以管理和减轻航空旅行中传染病的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epidemic Intelligence Models in Air Traffic Networks for Understanding the Dynamics in Disease Spread - A Case Study
Aim/Purpose: The understanding of disease spread dynamics in the context of air travel is crucial for effective disease detection and epidemic intelligence. The Susceptible-Exposed-Infectious-Recovered-Hospitalized-Critical-Deaths (SEIR-HCD) model proposed in this research work is identified as a valuable tool for capturing the complex dynamics of disease transmission, healthcare demands, and mortality rates during epidemics. Background: The spread of viral diseases is a major problem for public health services all over the world. Understanding how diseases spread is important in order to take the right steps to stop them. In epidemiology, the SIS, SIR, and SEIR models have been used to mimic and study how diseases spread in groups of people. Methodology: This research focuses on the integration of air traffic network data into the SEIR-HCD model to enhance the understanding of disease spread in air travel settings. By incorporating air traffic data, the model considers the role of travel patterns and connectivity in disease dissemination, enabling the identification of high-risk routes, airports, and regions. Contribution: This research contributes to the field of epidemiology by enhancing our understanding of disease spread dynamics through the application of the SIS, SIR, and SEIR-HCD models. The findings provide insights into the factors influencing disease transmission, allowing for the development of effective strategies for disease control and prevention. Findings: The interplay between local outbreaks and global disease dissemination through air travel is empirically explored. The model can be further used for the evaluation of the effectiveness of surveillance and early detection measures at airports and transportation hubs. The proposed research contributes to proactive and evidence-based strategies for disease prevention and control, offering insights into the impact of air travel on disease transmission and supporting public health interventions in air traffic networks. Recommendations for Practitioners: Government intervention can be studied during difficult times which plays as a moderating variable that can enhance or hinder the efficacy of epidemic intelligence efforts within air traffic networks. Expert collaboration from various fields, including epidemiology, aviation, data science, and public health with an interdisciplinary approach can provide a more comprehensive understanding of the disease spread dynamics in air traffic networks. Recommendation for Researchers: Researchers can collaborate with international health organizations and authorities to share their research findings and contribute to a global understanding of disease spread in air traffic networks. Impact on Society: This research has significant implications for society. By providing a deeper understanding of disease spread dynamics, it enables policymakers, public health officials, and practitioners to make informed decisions to mitigate disease outbreaks. The recommendations derived from this research can aid in the development of effective strategies to control and prevent the spread of infectious diseases, ultimately leading to improved public health outcomes and reduced societal disruptions. Future Research: Practitioners of the research can contribute more effectively to disease outbreaks within the context of air traffic networks, ultimately helping to protect public health and global travel. By considering air traffic patterns, the SEIR-HCD model contributes to more accurate modeling and prediction of disease outbreaks, aiding in the development of proactive and evidence-based strategies to manage and mitigate the impact of infectious diseases in the context of air travel.
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