{"title":"利用数据科学了解COVID-19大流行","authors":"X. Tian, W. He, Y. Xing","doi":"10.1108/idd-08-2021-161","DOIUrl":null,"url":null,"abstract":"Data science in pandemic The coronavirus disease, a novel severe acute respiratory syndrome (SARS COVID-19), has become a severe global health crisis due to its unpredictable nature and lack of adequate treatment. The COVID-19 pandemic has generated a strong demand for using technologies such as data science to understand or mitigate the adverse effects of the COVID-19 on public health, society and the economy (He et al., 2021). In the current era of big data, data science and data analytics have become increasingly crucial in academia, healthcare, public relationships and business operations. Machine learning (ML) models could be effective in identifying the most critical factors responsible for the overall fatalities caused by the COVID-19. However, the functional capabilities of ML models in conducting epidemiological research, especially for the COVID-19, have not been substantially explored. There are several related research methodologies regarding the COVID-19 data analytics. For instance, adopted ML models and Random Forest (RF) have been used to perform the regression modeling and provide useful information to identify the relevant critical explanatory variables and evaluate interconnections between and among the key explanatory variables and the COVID-19 case and death counts (Gupta et al., 2021). Time-series analyses have been used to examine the rate of incidences of the COVID-19 cases and deaths (Khayyat et al., 2021). Social network analysis (SNA) has been used to track cases and simulations for modeling the COVID-19 outbreaks (Bahja and Safdar, 2020). 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引用次数: 1
摘要
冠状病毒病是一种新型严重急性呼吸系统综合征(SARS - COVID-19),由于其不可预测的性质和缺乏适当的治疗,已成为严重的全球健康危机。COVID-19大流行产生了使用数据科学等技术来了解或减轻COVID-19对公共卫生、社会和经济的不利影响的强烈需求(He et al., 2021)。在当今大数据时代,数据科学和数据分析在学术界、医疗保健、公共关系和商业运营中变得越来越重要。机器学习(ML)模型可以有效地识别导致COVID-19造成的总体死亡人数的最关键因素。然而,机器学习模型在流行病学研究中的功能,特别是在COVID-19研究中的功能,尚未得到实质性的探索。关于COVID-19数据分析,有几种相关的研究方法。例如,采用ML模型和随机森林(RF)来执行回归建模,并提供有用的信息,以识别相关的关键解释变量,并评估关键解释变量与COVID-19病例和死亡计数之间的相互联系(Gupta等人,2021)。已使用时间序列分析来检查COVID-19病例发病率和死亡率(Khayyat等人,2021年)。社会网络分析(SNA)已用于跟踪病例和模拟COVID-19暴发(Bahja和Safdar, 2020年)。研究人员已经建立了模型来解释公众对传播健康相关信息的情绪模式,并评估疫情的政治和经济影响。
Using data science to understand the COVID-19 pandemic
Data science in pandemic The coronavirus disease, a novel severe acute respiratory syndrome (SARS COVID-19), has become a severe global health crisis due to its unpredictable nature and lack of adequate treatment. The COVID-19 pandemic has generated a strong demand for using technologies such as data science to understand or mitigate the adverse effects of the COVID-19 on public health, society and the economy (He et al., 2021). In the current era of big data, data science and data analytics have become increasingly crucial in academia, healthcare, public relationships and business operations. Machine learning (ML) models could be effective in identifying the most critical factors responsible for the overall fatalities caused by the COVID-19. However, the functional capabilities of ML models in conducting epidemiological research, especially for the COVID-19, have not been substantially explored. There are several related research methodologies regarding the COVID-19 data analytics. For instance, adopted ML models and Random Forest (RF) have been used to perform the regression modeling and provide useful information to identify the relevant critical explanatory variables and evaluate interconnections between and among the key explanatory variables and the COVID-19 case and death counts (Gupta et al., 2021). Time-series analyses have been used to examine the rate of incidences of the COVID-19 cases and deaths (Khayyat et al., 2021). Social network analysis (SNA) has been used to track cases and simulations for modeling the COVID-19 outbreaks (Bahja and Safdar, 2020). Researchers have built models to interpret patterns of public sentiment on disseminating health-related information and assess the political and economic influence of the pandemic.
期刊介绍:
Information Discovery and Delivery covers information discovery and access for digital information researchers. This includes educators, knowledge professionals in education and cultural organisations, knowledge managers in media, health care and government, as well as librarians. The journal publishes research and practice which explores the digital information supply chain ie transport, flows, tracking, exchange and sharing, including within and between libraries. It is also interested in digital information capture, packaging and storage by ‘collectors’ of all kinds. Information is widely defined, including but not limited to: Records, Documents, Learning objects, Visual and sound files, Data and metadata and , User-generated content.