Use of Artificial Intelligence to understand adults' thoughts and behaviours relating to COVID-19

S W Flint, A Piotrkowicz, K Watts, S W Flint, A Piotrkowicz, K Watts

Abstract

Aims: The outbreak of severe acute respiratory syndrome coronavirus 2 (COVID-19) is a global pandemic that has had substantial impact across societies. An attempt to reduce infection and spread of the disease, for most nations, has led to a lockdown period, where people's movement has been restricted resulting in a consequential impact on employment, lifestyle behaviours and wellbeing. As such, this study aimed to explore adults' thoughts and behaviours in response to the outbreak and resulting lockdown measures.

Methods: Using an online survey, 1126 adults responded to invitations to participate in the study. Participants, all aged 18 years or older, were recruited using social media, email distribution lists, website advertisement and word of mouth. Sentiment and personality features extracted from free-text responses using Artificial Intelligence methods were used to cluster participants.

Results: Findings demonstrated that there was varied knowledge of the symptoms of COVID-19 and high concern about infection, severe illness and death, spread to others, the impact on the health service and on the economy. Higher concerns about infection, illness and death were reported by people identified at high risk of severe illness from COVID-19. Behavioural clusters, identified using Artificial Intelligence methods, differed significantly in sentiment and personality traits, as well as concerns about COVID-19, actions, lifestyle behaviours and wellbeing during the COVID-19 lockdown.

Conclusions: This time-sensitive study provides important insights into adults' perceptions and behaviours in response to the COVID-19 pandemic and associated lockdown. The use of Artificial Intelligence has identified that there are two behavioural clusters that can predict people's responses during the COVID-19 pandemic, which goes beyond simple demographic groupings. Considering these insights may improve the effectiveness of communication, actions to reduce the direct and indirect impact of the COVID-19 pandemic and to support community recovery.

Keywords: Artificial Intelligence; COVID-19; attitudes; behaviours; lockdown.

Conflict of interest statement

Conflict of Interest: The author(s) declared the following potential conflicts of interest with respect to the research, authorship, and/or publication of this article: SWF & AP are employed by Scaled Insights.

Figures

Figure 1
Figure 1
Change in diet (panel a), alcohol (panel b), amount of physical activity (panel c), type of physical activity (panel d), and amount and quality of sleep (panel e), compared to pre-COVID-19
Figure 2
Figure 2
Visualisation of clusters using principal component analysis (PCA)

References

    1. World Health Organization. WHO Director-General’s opening remarks at the media briefing on COVID-19 – 11 March 2020. Available online at: (2020, last accessed 7 June 2020).
    1. Docherty AB, Harrison EM, Green CA, et al. Features of 20 133 UK patients in hospital with covid-19 using the ISARIC WHO Clinical Characterisation Protocol: prospective observational cohort study. BMJ 2020;369:m1985.
    1. Public Health England. Guidance on social distancing for everyone in the UK. Available online at: (2020, last accessed 6 June 2020).
    1. Centers for Disease Control and Prevention. Coronavirus disease 2019 (COVID-19): groups at higher risk of severe illness. Available online at: (last accessed 7 June 2020).
    1. Tennant R, Hiller L, Fishwick R, et al. The Warwick-Edinburgh mental well-being scale (WEMWBS): development and UK validation. Health Qual Life Outcomes 2007;5(1):63.
    1. R Core Team. R: a language and environment for statistical computing. Vienna: Foundation for Statistical Computing; 2019.
    1. Wickham H, Averick M, Bryan J, et al. Welcome to the Tidyverse. J Open Source Softw 2019;4(43):1686.
    1. Yee TW, Yee MT. VGAM data S. Package ‘VGAM’. 2020.
    1. UK Government. English indices of deprivation 2019. Available online at: (2019, last accessed 5 June 2020).
    1. Hutto CJ, Gilbert E. Vader: a parsimonious rule-based model for sentiment analysis of social media text. In Eighth International AAAI Conference on Weblogs and Social Media, Ann Arbor, MI, 16 May 2014.
    1. Hirsh JB, Kang SK, Bodenhausen GV. Personalized persuasion: tailoring persuasive appeals to recipients’ personality traits. Psychol Sci 2012;23(6):578–81.

Source: PubMed

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