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首页> 外文期刊>Artificial intelligence in medicine >Detection-based prioritisation: Framework of multi-laboratory characteristics for asymptomatic COVID-19 carriers based on integrated Entropy-TOPSIS methods
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Detection-based prioritisation: Framework of multi-laboratory characteristics for asymptomatic COVID-19 carriers based on integrated Entropy-TOPSIS methods

机译:基于检测的优先级:基于集成熵 - TOPSIS方法的无症状COVID-19运营商的多实验室特征框架

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YContext and background: Corona virus (COVID) has rapidly gained a foothold and caused a global pandemic. Particularists try their best to tackle this global crisis. New challenges outlined from various medical perspectives may require a novel design solution. Asymptomatic COVID-19 carriers show different health conditions and no symptoms; hence, a differentiation process is required to avert the risk of chronic virus carriers.Objectives: Laboratory criteria and patient dataset are compulsory in constructing a new framework. Prioritisation is a popular topic and a complex issue for patients with COVID-19, especially for asymptomatic carriers due to multi-laboratory criteria, criterion importance and trade-off amongst these criteria. This study presents new integrated decision-making framework that handles the prioritisation of patients with COVID-19 and can detect the health conditions of asymptomatic carriers.Methods: The methodology includes four phases. Firstly, eight important laboratory criteria are chosen using two feature selection approaches. Real and simulation datasets from various medical perspectives are integrated to produce a new dataset involving 56 patients with different health conditions and can be used to check asymptomatic cases that can be detected within the prioritisation configuration. The first phase aims to develop a new decision matrix depending on the intersection between 'multi-laboratory criteria' and 'COVID-19 patient list'. In the second phase, entropy is utilised to set the objective weight, and TOPSIS is adapted to prioritise patients in the third phase. Finally, objective validation is performed.Results: The patients are prioritised based on the selected criteria in descending order of health situation starting from the worst to the best. The proposed framework can discriminate among mild, serious and critical conditions and put patients in a queue while considering asymptomatic carriers. Validation findings revealed that the patients are classified into four equal groups and showed significant differences in their scores, indicating the validity of ranking.Conclusions: This study implies and discusses the numerous benefits of the suggested framework in detecting/recognising the health condition of patients prior to discharge, supporting the hospitalisation characteristics, managing patient care and optimising clinical prediction rule.
机译:Ycontext和背景:Corona病毒(Covid)迅速获得了立足点并导致了全球大流行。特定主义者尽力解决这一全球危机。各种医学角度概述的新挑战可能需要新颖的设计解决方案。无症状Covid-19载体显示出不同的健康状况,没有症状;因此,需要差异化过程来避免慢性病毒载体的风险。目的:实验室标准和患者数据集是强制构建新框架的强制性。优先级排序是一个流行的主题和Covid-19患者的复杂问题,特别是由于多实验室标准,标准重要性和在这些标准之间的权衡中来说是无症状的载体。本研究提出了新的综合决策框架,处理Covid-19患者的优先级,可以检测无症状载体的健康状况。方法:该方法包括四个阶段。首先,使用两个特征选择方法选择八个重要的实验室标准。来自各种医学观点的真实和仿真数据集是集成的,以生产涉及56例不同健康状况的新数据集,可用于检查可以在优先级配置中检测到的无症状病例。第一阶段旨在根据“多实验室标准”和“CoVID-19患者列表”之间的交叉来发展新的决策矩阵。在第二阶段,利用熵设定客观重量,并且Topsis适于优先考虑第三阶段的患者。最后,进行客观验证。结果:根据从最坏的情况到最坏的情况下,基于所选标准,基于所选择的标准优先考虑。拟议的框架可以在轻度,严重和危重的情况下歧视患者,同时考虑无症状的载体。验证结果表明,患者分为四个相等的群体,表现出分数的显着差异,表明排名的有效性。结论:本研究暗示并讨论了在先前检测/认识到患者健康状况的众多益处放电,支持住院特征,管理患者护理和优化临床预测规则。

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