The impact of precautionary lockdown measures during COVID-19 on eating behaviour and lifestyle

Main Article Content

Madhawi Aldhwayan https://orcid.org/0000-0002-9228-8712
Balsam Alabdulkader https://orcid.org/0000-0002-4804-7866

Keywords

COVID-19, pandemic, lockdown, eating behaviour, lifestyle, digital eye strain

Abstract

Background: Eating behaviour and lifestyle are highly susceptible to changes in the individual's external environment. COVID-19 pandemic resulted in policies that severely impacted individual habits and daily routines. Growing literature highlights the adverse psychological impact of COVID-19 on eating behaviour and lifestyle.


Methods: This study aimed to assess eating behaviour and lifestyle in Saudi Arabia during the strict lockdown. A self-reported online questionnaire was used to assess eating behaviour and lifestyle changes, including physical activity, sleep, and digital device use compared to that pre-lockdown.


Results: A total of 1,860 participants completed the questionnaire. Weight gain was reported by 31%, whereas 41% reported decreased physical activity. The use of digital devices increased by 70%, with 59% of participants reporting symptoms of digital eyestrain. Mostly, 72% reported decreased fast-food delivery, mainly due to fear of contracting the virus. This decrease paralleled a 66% increase in home cooking. On the contrary, 15% reported weight loss, and 21% increased their physical activity.


Conclusion: These findings provide important insight into the effects of COVID-19-related lockdown on eating behaviour and lifestyle.

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