EMSIG: Uncovering Factors Influencing COVID-19 Vaccination Across Different Subgroups Characterized by Embedding-Based Spatial Information Gain.

IF 5.2 3区 医学 Q1 IMMUNOLOGY Vaccines Pub Date : 2024-11-04 DOI:10.3390/vaccines12111253
Zongliang Yue, Nicholas P McCormick, Oluchukwu M Ezeala, Spencer H Durham, Salisa C Westrick
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Abstract

Background/Objectives: COVID-19 and its variants continue to pose significant threats to public health, with considerable uncertainty surrounding their impact. As of September 2024, the total number of deaths reached 8.8 million worldwide. Vaccination remains the most effective strategy for preventing COVID-19. However, vaccination rates in the Deep South, U.S., are notably lower than the national average due to various factors. Methods: To address this challenge, we developed the Embedding-based Spatial Information Gain (EMSIG) method, an innovative tool using machine learning techniques for subgroup modeling. EMSIG helps identify subgroups where participants share similar perceptions but exhibit high variance in COVID-19 vaccine doses. It introduces spatial information gain (SIG) to screen regions of interest (ROI) subgroups and reveals their specific concerns. Results: We analyzed survey data from 1020 participants in Alabama. EMSIG identified 16 factors encompassing COVID-19 hesitancy and trust in medical doctors, pharmacists, and public health authorities and revealed four distinct ROI subgroups. The five factors, including COVID-19 perceived detriment, fear, skepticism, side effects related to COVID-19, and communication with pharmacists, were commonly shared across at least three subgroups. A subgroup primarily composed of Democrats with a high flu-shot rate expressed concerns about pharmacist communication, government fairness, and responsibility. Another subgroup, characterized by older, white Republicans with a relatively low flu-shot rate, expressed concerns about doctor trust and the intelligence of public health authorities. Conclusions: EMSIG enhances our understanding of specific concerns across different demographics, characterizes these demographics, and informs targeted interventions to increase vaccination uptake and ensure equitable prevention strategies.

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EMSIG:通过基于嵌入的空间信息增益,发现不同亚群中影响 COVID-19 疫苗接种的因素。
背景/目标:COVID-19 及其变种继续对公众健康构成重大威胁,其影响具有相当大的不确定性。截至 2024 年 9 月,全球死亡总人数达到 880 万。接种疫苗仍然是预防 COVID-19 的最有效策略。然而,由于各种因素,美国深南地区的疫苗接种率明显低于全国平均水平。方法:为了应对这一挑战,我们开发了基于嵌入的空间信息增益(EMSIG)方法,这是一种利用机器学习技术进行亚群建模的创新工具。EMSIG 可帮助识别参与者具有相似认知但 COVID-19 疫苗剂量差异较大的亚组。它引入了空间信息增益(SIG)来筛选感兴趣区域(ROI)亚群,并揭示其具体关注点。结果:我们分析了来自阿拉巴马州 1020 名参与者的调查数据。EMSIG 确定了 16 个因素,包括 COVID-19 的犹豫不决以及对医生、药剂师和公共卫生机构的信任,并揭示了四个不同的 ROI 子群。至少在三个亚组中普遍存在五个因素,包括 COVID-19 感知到的危害、恐惧、怀疑、与 COVID-19 相关的副作用以及与药剂师的沟通。一个主要由流感疫苗注射率较高的民主党人组成的分组对药剂师沟通、政府公平性和责任表示担忧。另一个亚群由年长的白人共和党人组成,流感疫苗接种率相对较低,他们对医生的信任度和公共卫生机构的智商表示担忧。结论:EMSIG 提高了我们对不同人群具体关注问题的理解,描述了这些人群的特征,并为有针对性的干预措施提供了信息,以提高疫苗接种率并确保公平的预防策略。
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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来源期刊
Vaccines
Vaccines Pharmacology, Toxicology and Pharmaceutics-Pharmacology
CiteScore
8.90
自引率
16.70%
发文量
1853
审稿时长
18.06 days
期刊介绍: Vaccines (ISSN 2076-393X) is an international, peer-reviewed open access journal focused on laboratory and clinical vaccine research, utilization and immunization. Vaccines publishes high quality reviews, regular research papers, communications and case reports.
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