| Literature DB >> 35650225 |
Abstract
The work intends to relieve the pressure on the urban medical system and reduce the cross-infection of personnel in major public health emergencies. On the premise of an in-depth analysis of the utility risk entropy algorithm model and prospect theory, the decision-making of major health emergencies is proposed. Firstly, the utility risk entropy algorithm model is optimized, and the main decision-making members are subjected to utility perception according to the perceived utility values of different levels of risk, and the weights of decision-making members are calculated and revised according to the results of utility clustering. Secondly, the prospect theory is optimized. Taking the zero as the reference point to calculate the prospect value, and taking the maximization of the comprehensive prospect value as the objective to optimize the model, the comprehensive prospect value of each scheme is calculated and sorted. Finally, the proposed scheme is tested, and the test results show that in the optimal decision-making time of the scheme, the optimal decision-making time is 0 every day. When the epidemic situation is in the first cycle, the decision-making loss of the optimal scheme is 2.69, and the reduction ratio of the optimal scheme decision-making loss is 63.96%. When the epidemic situation is in the second cycle, the decision-making loss of the optimal scheme is 0.65, and the reduction ratio of the optimal scheme decision-making loss is 94.44%. When the epidemic situation is in the third cycle, the decision-making loss of the optimal scheme is 0.22, and the reduction ratio of the decision-making loss of the optimal scheme is 89.39%. The proposed scheme can improve the processing efficiency of major health emergencies and reduce the risk of accidents.Entities:
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Year: 2022 PMID: 35650225 PMCID: PMC9159650 DOI: 10.1038/s41598-022-12819-9
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996
Figure 1Multi-scenario mixed risk decision-making problem framework.
Figure 2Sequence diagram of public emergency decision-making process.
Figure 3optimization of the prospect theory.
The attribute values and priors of the result scenarios under different schemes.
| Scenario | |||||||
|---|---|---|---|---|---|---|---|
| [5, 10] | [5, 10] | 0.5 | 0.3 | 0.15 | |||
| [11, 20] | [20, 30] | 0.6 | 0.25 | 0.20 | |||
| [21,40] | [40,60] | 0.70 | 0.20 | 0.10 |
Values of the matrixes of normalized schemes.
| Scenario | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| [0.44,0.72] | 0.73 | [0,0.17,0.33] | [0.28,0.44] | 0.42 | [0.17,0.33,0.5] | [0.06,0.21] | 0.17 | [0.67,0.83,1] | |
| [0.71,1] | 0.89 | [0.17,0.33,0.56] | [0.33,0.61] | 0.52 | [0.33,0.5,0.67] | [0.17,0.39] | 0.38 | [0.67,0.83,1] | |
| [0.5,0.83] | 0.83 | [0.0.17,0.33] | [0.17,0.39] | 0.31 | [0.17,0.33,0.5] | [0,0.17] | 0 | [0.33,0.5,1] | |
Figure 4Six observation sample values of infection rate in COVID-19.
Figure 5Mask supply of 3 manufacturers in 3 cities.
Figure 6Statistics of infection rate.
Figure 7Statistical comparison of infection rate (a) the posterior mean of infection rate and the observation value of reagent detection; (b) the comparison of prior standard deviation and posterior standard deviation.
Figure 8Allocation and supply of emergency materials.
Figure 9Decision loss of emergency material allocation scheme.
Figure 10Comparison of decision-making losses in emergency material allocation plans. (a) The proposed algorithm; (b) The algorithm proposed in[33]).