疫苗接种后COVID-19时代的疫苗犹豫:一项机器学习和统计分析驱动的研究。

IF 2.3 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Evolutionary Intelligence Pub Date : 2023-01-01 DOI:10.1007/s12065-022-00704-3
Himanshu Gupta, Om Prakash Verma
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引用次数: 3

摘要

2019冠状病毒病大流行严重影响了全球所有年龄段的人。因此,它的疫苗已经开发出来,并在前所未有的时期提供给公众使用。然而,由于不同程度的犹豫,它并没有被普遍接受。这项工作的主要目标是通过开发一种预后工具来确定与COVID-19疫苗相关的风险,这将有助于提高疫苗的可接受性,从而降低SARS-CoV-2的致死率。方法:获得的原始VAERS数据集有三个文件,分别包含病史、疫苗接种状态和疫苗接种后症状,样本超过35.4万。经过预处理后,该原始数据集被合并为一个具有85个不同属性的数据集,然而,整个分析被细分为三个场景((i)病史(ii)疫苗接种反应(iii)两者的结合)。此外,机器学习(ML)模型,包括线性回归(LR)、随机森林(RF)、朴素贝叶斯(NB)、光梯度增强算法(LGBM)和多层前馈感知器(MLP),已被用于预测最可能的结果,并根据各种性能参数评估了它们的性能。此外,还利用卡方(统计)、LR、RF和LGBM来估计数据集中导致死亡、住院和COVID-19的最可能属性。结果:对于上述场景,即使在接种疫苗后,所有模型对死亡、住院和COVID-19的不同属性(如心脏骤停、癌症、高脂血症、肾病、糖尿病、心房颤动、痴呆、甲状腺等)都有不同的估计。此外,对于预测,LGBM在大多数情况下优于所有其他开发的模型,而LR, RF, NB和MLP在斑块中表现令人满意。结论:50 ~ 70岁男性人群最易感染该病毒。此外,患有严重疾病的人最容易受到伤害。因此,必须在密切观察下接种疫苗。一般情况下,没有观察到疫苗的严重不良反应,因此,人们必须毫不犹豫地尽早接种疫苗。同时,利用LGBM建立的预测模型在其他预测模型中具有优势。因此,它可以为决策者管理和优先考虑不同的疫苗接种计划的人口提供非常有用的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Vaccine hesitancy in the post-vaccination COVID-19 era: a machine learning and statistical analysis driven study.

Background The COVID-19 pandemic has badly affected people of all ages globally. Therefore, its vaccine has been developed and made available for public use in unprecedented times. However, because of various levels of hesitancy, it did not have general acceptance. The main objective of this work is to identify the risk associated with the COVID-19 vaccines by developing a prognosis tool that will help in enhancing its acceptability and therefore, reducing the lethality of SARS-CoV-2. Methods: The obtained raw VAERS dataset has three files indicating medical history, vaccination status, and post vaccination symptoms respectively with more than 354 thousand samples. After pre-processing, this raw dataset has been merged into one with 85 different attributes however, the whole analysis has been subdivided into three scenarios ((i) medical history (ii) reaction of vaccination (iii) combination of both). Further, Machine Learning (ML) models which includes Linear Regression (LR), Random Forest (RF), Naive Bayes (NB), Light Gradient Boosting Algorithm (LGBM), and Multilayer feed-forward perceptron (MLP) have been employed to predict the most probable outcome and their performance has been evaluated based on various performance parameters. Also, the chi-square (statistical), LR, RF, and LGBM have been utilized to estimate the most probable attribute in the dataset that resulted in death, hospitalization, and COVID-19. Results: For the above mentioned scenarios, all the models estimates different attributes (such as cardiac arrest, Cancer, Hyperlipidemia, Kidney Disease, Diabetes, Atrial Fibrillation, Dementia, Thyroid, etc.) for death, hospitalization, and COVID-19 even after vaccination. Further, for prediction, LGBM outperforms all the other developed models in most of the scenarios whereas, LR, RF, NB, and MLP perform satisfactorily in patches. Conclusion: The male population in the age group of 50-70 has been found most susceptible to this virus. Also, people with existing serious illnesses have been found most vulnerable. Therefore, they must be vaccinated in close observations. Generally, no serious adverse effect of the vaccine has been observed therefore, people must vaccinate themselves without any hesitation at the earliest. Also, the model developed using LGBM establishes its supremacy over all the other prediction models. Therefore, it can be very helpful for the policymakers in administrating and prioritizing the population for the different vaccination programs.

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来源期刊
Evolutionary Intelligence
Evolutionary Intelligence COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
6.80
自引率
0.00%
发文量
108
期刊介绍: This Journal provides an international forum for the timely publication and dissemination of foundational and applied research in the domain of Evolutionary Intelligence. The spectrum of emerging fields in contemporary artificial intelligence, including Big Data, Deep Learning, Computational Neuroscience bridged with evolutionary computing and other population-based search methods constitute the flag of Evolutionary Intelligence Journal.Topics of interest for Evolutionary Intelligence refer to different aspects of evolutionary models of computation empowered with intelligence-based approaches, including but not limited to architectures, model optimization and tuning, machine learning algorithms, life inspired adaptive algorithms, swarm-oriented strategies, high performance computing, massive data processing, with applications to domains like computer vision, image processing, simulation, robotics, computational finance, media, internet of things, medicine, bioinformatics, smart cities, and similar. Surveys outlining the state of art in specific subfields and applications are welcome.
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