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我独自一人,但并不孤独。英国和希腊在新冠疫情期间自我感知孤独的U型模式。

I'm alone but not lonely. U-shaped pattern of self-perceived loneliness during the COVID-19 pandemic in the UK and Greece.

作者信息

Carollo Alessandro, Bizzego Andrea, Gabrieli Giulio, Wong Keri Ka-Yee, Raine Adrian, Esposito Gianluca

机构信息

Department of Psychology and Cognitive Science, University of Trento, Italy.

School of Social Sciences, Nanyang Technological University, Singapore.

出版信息

Public Health Pract (Oxf). 2021 Nov;2:100219. doi: 10.1016/j.puhip.2021.100219. Epub 2021 Nov 27.

Abstract

OBJECTIVES

In the past months, many countries have adopted varying degrees of lockdown restrictions to control the spread of the COVID-19 virus. According to the existing literature, some consequences of lockdown restrictions on people's lives are beginning to emerge yet the evolution of such consequences in relation to the time spent in lockdown is understudied. To inform policies involving lockdown restrictions, this study adopted a data-driven Machine Learning approach to uncover the short-term time-related effects of lockdown on people's physical and mental health.

STUDY DESIGN

An online questionnaire was launched on 17 April 2020, distributed through convenience sampling and was self-completed by 2,276 people from 66 different countries.

METHODS

Focusing on the UK sample (N = 325), 12 aggregated variables representing the participant's living environment, physical and mental health were used to train a RandomForest model to estimate the week of survey completion.

RESULTS

Using an index of importance, Self-Perceived Loneliness was identified as the most influential variable for estimating the time spent in lockdown. A significant U-shaped curve emerged for loneliness levels, with lower scores reported by participants who took part in the study during the 6th lockdown week (p = 0.009). The same pattern was replicated in the Greek sample (N = 137) for week 4 (p = 0.012) and 6 (p = 0.009) of lockdown.

CONCLUSIONS

From the trained Machine Learning model and the subsequent statistical analysis, Self-Perceived Loneliness varied across time in lockdown in the UK and Greek populations, with lower symptoms reported during the 4th and 6th lockdown weeks. This supports the dissociation between social support and loneliness, and suggests that social support strategies could be effective even in times of social isolation.

摘要

目标

在过去几个月里,许多国家采取了不同程度的封锁限制措施来控制新冠病毒的传播。根据现有文献,封锁限制对人们生活产生的一些影响已开始显现,但此类影响与封锁时长之间的演变关系尚未得到充分研究。为了给涉及封锁限制的政策提供信息,本研究采用了数据驱动的机器学习方法来揭示封锁对人们身心健康的短期时间相关影响。

研究设计

2020年4月17日发起了一项在线调查问卷,通过便利抽样进行分发,来自66个不同国家的2276人自行完成了该问卷。

方法

以英国样本(N = 325)为重点,使用12个代表参与者生活环境、身心健康的汇总变量来训练一个随机森林模型,以估计调查完成的周数。

结果

通过重要性指数,自我感知孤独感被确定为估计封锁时长最具影响力的变量。孤独感水平呈现出显著的U形曲线,在第6周封锁期间参与研究的参与者报告的孤独感得分较低(p = 0.009)。希腊样本(N = 137)在封锁第4周(p = 0.012)和第6周(p = 0.009)也出现了相同模式。

结论

从经过训练的机器学习模型及后续统计分析来看,英国和希腊人群在封锁期间自我感知孤独感随时间变化而不同,在第4周和第6周封锁期间报告的症状较轻。这支持了社会支持与孤独感之间的分离,并表明即使在社会隔离时期,社会支持策略也可能有效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8e4a/9461526/895ea5bf2168/gr1.jpg

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