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首页> 外文期刊>Frontiers in Public Health >Unknown Disease Outbreaks Detection: A Pilot Study on Feature-Based Knowledge Representation and Reasoning Model
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Unknown Disease Outbreaks Detection: A Pilot Study on Feature-Based Knowledge Representation and Reasoning Model

机译:未知疾病爆发检测:基于特征的知识表示和推理模型的试验研究

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Background: The outbreak of COVID-19 in 2019 has rapidly swept the world, causing irreparable loss to human beings. The pandemic has shown that there is still a delay in the early response to disease outbreaks and needs a method for unknown disease outbreak detection. The study's objective is to establish a new medical knowledge representation and reasoning model, and use the model to explore the feasibility of unknown disease outbreak detection. Methods: The study defined abnormal values with diagnostic significances from clinical data as the Features, and defined the Features as the antecedents of inference rules to match with knowledge bases, achieved in detecting known or emerging infectious disease outbreaks. Meanwhile, the study built a syndromic surveillance base to capture the target cases' Features to improve the reliability and fault-tolerant ability of the system. Results: The study combined the method with Severe Acute Respiratory Syndrome (SARS), Middle East Respiratory Syndrome (MERS), and early COVID-19 outbreaks as empirical studies. The results showed that with suitable surveillance guidelines, the method proposed in this study was capable to detect outbreaks of SARS, MERS, and early COVID-19 pandemics. The quick matching accuracies of confirmed infection cases were 89.1, 26.3–98%, and 82%, and the syndromic surveillance base would capture the Features of the remaining cases to ensure the overall detection accuracies. Based on the early COVID-19 data in Wuhan, this study estimated that the median time of the early COVID-19 cases from illness onset to local authorities' responses could be reduced to 7.0–10.0 days. Conclusions: This study offers a new solution to transfer traditional medical knowledge into structured data and form diagnosis rules, enables the representation of doctors' logistic thinking and the knowledge transmission among different users. The results of empirical studies demonstrate that by constantly inputting medical knowledge into the system, the proposed method will be capable to detect unknown diseases from existing ones and perform an early response to the initial outbreaks.
机译:背景:2019年Covid-19的爆发迅速扫过了世界,对人类造成无法弥补的损失。大流行表明,疾病爆发的早期反应仍然存在延迟,并且需要一种未知疾病爆发检测方法。该研究的目标是建立一个新的医学知识表示和推理模型,并使用该模型探讨未知疾病疫情检测的可行性。方法:该研究定义了从临床数据作为特征的诊断意义的异常值,并将其定义为与知识库相匹配的推断规则的前提,在检测到已知或新兴的传染病爆发中实现。同时,该研究建立了一个综合征监视基础,以捕获目标情况的特征,以提高系统的可靠性和容错能力。结果:该研究将严重急性呼吸综合征(SARS),中东呼吸综合征(MERS)的方法和早期Covid-19爆发作为实证研究。结果表明,通过适当的监测指南,本研究中提出的方法能够检测SARS,MERS和早期Covid-19流行病的爆发。确认的感染病例的快速匹​​配精度为89.1,26.3-98%和82%,综合征监测基地将捕获其余情况的特征,以确保整体检测精度。该研究基于武汉早期Covid-19数据,估计,早期Covid-19患者从疾病发病到地方当局的反应的中位数可以减少到7.0-10.0天。结论:本研究提供了将传统医学知识转移到结构性数据和表单诊断规则的新解决方案,使医生的后勤思维和不同用户之间的知识传输能够表示。实证研究结果表明,通过不断将医学知识转化为系统,该方法将能够能够检测来自现有爆发的未知疾病并对最初的爆发进行早期反应。

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