Regional Infectious Disease Risk Assessment Method
Received Date: May 28, 2024 / Published Date: Jun 27, 2024
Abstract
In the post-pandemic era, people are increasingly aware of the dangers of malignant infectious diseases and the important role of regional healthcare security. At present, the research on the pathology of malignant infectious diseases has become one of the hot spots in the field of medical care. However, research on the assessment of infectious disease risk in regions that are equally important appears to be very scarce. Faced with the risk of sporadic outbreaks of infectious diseases, regional infectious disease risk assessment has important theoretical and practical significance. Especially in the early stages of infectious disease outbreaks, the assessment results play an important role in helping to develop reasonable prevention and control strategies and suppressing further losses caused by infectious diseases. This study proposes a regional infectious disease risk assessment method based on D-S (Dempster Shafer) evidence theory. Firstly, based on existing research results, construct an infectious disease risk model. Then, map the regional risks and the actual situation of infectious diseases into the risk model to obtain the necessary data for risk assessment. Next, the fusion assessment results of regional infectious disease risk are calculated using the D-S theory. The assessment results can demonstrate the level of infectious disease risk in the region and the weaknesses when the region faces different types of infectious diseases. Finally, the study verifies the effectiveness, rationality, and feasibility of the proposed method through case design and analysis.
Keywords: Healthcare; Regional infectious disease risk; Risk assessment; Risk fusion; D-S theory
Citation: Gao T, Jiang R, Xu P, Yang M, Zhang T (2024) Regional Infectious Disease Risk Assessment Method. J Infect Dis Ther 12:596. Doi: 10.4172/2332-0877.1000597
Copyright: © 2024 Gao T, et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
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