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Article

Assessment of Dietary Habits and Physical Activity Changes during the Full COVID-19 Curfew Period and Its Effect on Weight among Adults in Jeddah, Saudi Arabia

1
Department of Food and Nutrition, Faculty of Human Sciences and Design, King Abdul Aziz University, Jeddah 21551, Saudi Arabia
2
Clinical Nutrition Department, College of Applied Medical Sciences, King Saud bin Abdulaziz University for Health Sciences, Al Ahsa 31982, Saudi Arabia
3
Center for Excellence in Post-Harvest Technologies, North Carolina A&T State University, 500 Laureate Way, Kannapolis, NC 28081, USA
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2021, 18(16), 8580; https://doi.org/10.3390/ijerph18168580
Submission received: 4 July 2021 / Revised: 4 August 2021 / Accepted: 6 August 2021 / Published: 13 August 2021

Abstract

:
The World Health Organization declared coronavirus disease 2019 (COVID-19) a pandemic in March 2020. Global efforts have been made to prevent the disease from spreading through political decisions and personal behaviors, all of which rely on public awareness. The aim of our study was to examine the effect of dietary habits on weight and physical activity (PA) during the COVID-19 stay-at-home order in Jeddah, Saudi Arabia. An online questionnaire was distributed using social media (Facebook, Twitter, Instagram, and WhatsApp) and email communication. A total of 472 adults (age range, 18–59 years), over half of the study population (68.0%) being females, 55.5% being between 19 and 29 years old, 15.0%—between 30 and 39 years old, and 11.2%—older than 50 years old, participated in the study. Our results indicated that the overall body weight was slightly increased among the 50+ age group (47.2%, p > 0.05), but it highly increased among the 30–39-years-old age group (32.4%, p > 0.05) as compared to before the pandemic lockdown period. Therefore, our results show that a significant difference (p < 0.05) was found for all the assessments: weight status, physical activity patterns, hours spent on screen time, homemade meals, and changes in dietary habits before and during the full COVID-19 curfew period. This study demonstrated that changes in eating habits were commonly reported among the participants who represented the full COVID-19 curfew period and that changes in eating habits and decreased physical activity led to weight gain.

1. Introduction

Coronaviruses are a large family of viruses belonging to the subfamily Orthocoronavirinae of the Coronaviridae family. Humans, bats, pigs, cats, dogs, rats, and poultry (domestic and wild animals) provide ideal habitats for virus production and metabolic activity. The disease range caused by coronaviruses in humans is considered to be more severe than that of the common cold, and the virus’s respiratory response syndrome can vary greatly between individuals. Coronaviruses, for example, can infect humans and animals and cause a variety of respiratory, enteral, liver, nephrotic, and neurological diseases [1]. Coronavirus disease 2019 (COVID-19), caused by SARS coronavirus 2 (SARS-CoV-2), is an acute respiratory syndrome considered a global situation. COVID-19 has spread and affected many countries and people. As a result of the COVID-19 outbreak, which spread rapidly to 30 million people worldwide, the World Health Organization (WHO) declared COVID-19 a global pandemic on 11 March 2020 [2]. Coronavirus has an impact on one’s health, psychological well-being, social standing, and financial situation. So far, there is no effective treatment for the COVID-19 infection, and the only way to combat this pandemic is to raise awareness and prevent infection by implementing isolation measures and improving the immune system function [3]. Many countries worldwide have closed all public gathering places, such as restaurants, shopping malls, and entertainment centers, among many others. Therefore, numerous countries have imposed complete restrictions, requiring everyone to stay at home for 24 h in order to prevent and reduce the spread of the COVID-19 disease [4]. On 6 April 2020, Saudi Arabia imposed a full curfew, prohibiting people from leaving their homes during the day and allowing them to leave only if they had an exit permit. [5]. According to the statistics of the Ministry of Health, in 2020, there were 326,930 people infected with the coronavirus only in Saudi Arabia (Figure 1) [6].

Factors Affecting Dietary Habits

The effects of boredom on dietary habits: Boredom is a distinct emotion associated with feeling dissatisfied, restless, and unchallenged when one interprets current actions and situations as meaningless [7,8]. Several studies showed that when people are confronted with a challenge, they may attempt to escape from their sense of self-awareness and thus become completely distracted from such threats. Engaging in unhealthy behaviors that are ultimately harmful is one way to avoid this aversive self-awareness. Food, for example, helps to escape the sense of aversive self-awareness [7,9]. Boredom has been linked to a higher energy intake as well as higher fat, carbohydrate, and protein consumption. Boredom has been linked to gain weight as well as unhealthy eating behavior [10]. Eating behaviors including how much we eat, whether we eat a full meal a few times a day or have short snacks several times a day or a combination of them can be affected by external factors [11]. Therefore, continuously hearing or reading about the pandemic during quarantine can be stressful. As a result of stress, people tend to overeat, especially foods or snacks full of sugar, i.e., “comfort foods”. Studies have shown that normal-weight and overweight people report eating more when they are lonely or bored.
Association of higher screen time and dietary habits: During the current COVID-19 pandemic, the Saudi Arabia government postponed classes in all schools, colleges, and universities and suspended work, except for emergency services, in accordance with international actions and in order to combat the spread of COVID-19. As a result, it is estimated that 30,260,000 people in Saudi Arabia (89% of the population) use the Internet, 96% of the population use smartphones, and the majority of the population now have access to smartphones, laptop computers, desktop computers, and tablets to stay up-to-date with the news [12,13]. Furthermore, during the COVID-19 crisis, distance learning has been supported by technologies such as the Internet, phone, radio, TV, or phone messaging, or email communication [14]. Outcomes of numerous studies have shown less desirable snack preference and consumption and other dietary behaviors associated with extended use of smartphones among elementary school students [15,16]. Therefore, different studies have found a positive association between total screen time and body mass index (BMI) among children and adolescents. Since education and business went online, the full curfew period has led to increased screen time and bad eating habits [17,18].
The relationship between the stress level and dietary habits: In stressful and frightening situations, such as coronavirus disease 2019 (COVID-19), people tend to overeat in response to emotional triggers, which leads to more concerns and self-evaluation of body weight or shape. People are generally sociable, and this period of social isolation may have put them under psychological stress, causing them to eat more in quantity or frequency as a coping mechanism for growing fear and anxiety. Some studies indicated that the COVID-19 lockdown has been considered to influence lifestyle habits by increasing the stay-at-home time, excessive food storage, disruption of one’s routine, and heightened anxiety when hearing about the virus’s progression and spread [19,20].
The dietary habits’ impact on weight changes: Healthy eating and physical activity are key for human health and well-being, especially when the immune system is challenged [21]. Eating behavior is an important aspect of life because it can affect long-term health outcomes. Unhealthy eating habits such as skipping meals and failing to eat on time could cause a variety of health problems and nutritional deficiencies [22].
The relationship between weight, health status, and physical activity (PA): Quarantine carries some long-term effects on cardiovascular diseases, mainly related to an unhealthy lifestyle and anxiety. Following quarantine, a global action supporting healthy diets and physical activities is mandatory to encourage people to return to a healthy lifestyle routine. During quarantine, obesity made patients suffer from immense stress, making them more prone to overeating and an inactive lifestyle; this makes them prone to weight gain. Obesity is a leading risk factor for diabetes, renal disease, and cardiovascular diseases; an inflammatory state including malnutrition leads to an impaired immune response in patients suffering from obesity and susceptibility to all contagious diseases due to viruses [23]. Several studies indicated the association between body weight changes with changes in physical activity and lifestyle during an unusual situation of forced isolation or quarantine. Changes in body weight are inversely associated with changes in steps each day and mild-to-intense activity during quarantine [24,25,26].
Furthermore, the COVID-19 pandemic has affected a wide range of employees and students in terms of work and social life. Due to the lockdown, people have been forced to adapt their daily habits, including food-related behaviors which affected the weight of individuals. It is crucial to investigate how individual behavior changes over time under lockdown conditions and how crises such as the COVID-19 pandemic directly impact the behavior and health status [27]. Therefore, the aim of this study was to assess the changes in the body weight, dietary habits, and physical activity (PA) during the full COVID-19 lockdown in the City of Jeddah, Saudi Arabia.

2. Materials and Methods

2.1. Study Design and Participants

This cross-sectional study was conducted on a sample of the population in Jeddah, Saudi Arabia, during the full COVID-19 curfew period. The survey was designed following the protocol as per Reyes-Olavarría et al. [25] with slight modifications and uploaded to the Google Forms platform. The developed questionnaire (originally written in English) was translated into Arabic and then translated back into English. The survey was tested and validated by experts at the food and nutrition department at King Abdul Aziz University, SA, to ensure that the questions were appropriate and avoided any misunderstanding in order to answer them in the intended way. Online questionnaires were distributed via social media (Facebook, Twitter, Instagram, and WhatsApp) and emails communication. The target population consisted of both men and women aged 18–59 years who had experienced the full COVID-19 curfew period. We received 531 answers; after excluding the answers that met the exclusion criteria, such as living in a different region, incomplete survey, out of the age range, and lack of any data, the final dataset included 472 participants.

2.1.1. Ethical Aspects of This Research

At the start of the survey, study information was briefly presented. The poll was completely anonymous, no sensitive information was collected, and the participants had the option to leave at any point if they felt uncomfortable. The research was carried out in accordance with the Declaration of Helsinki’s criteria. According to S. Gupta (2017), consent is considered knowledgeable when participants understand the purpose of the collection of information about them as well as their right to give, withhold, or withdraw consent at any moment [28].

2.1.2. Demographic Information

The demographic part consisted of such collected personal information as age, gender, education level, socioeconomic status, place of residence, marital status, and professional situation during the pandemic.

2.1.3. Weight Status and Physical Activity Patterns

This section was associated with the participants’ weight status and their physical activity patterns. They were asked for information on body weight before and after the full COVID-19 lockdown, as well as the percentage of body weight change during the full curfew period. We asked about the frequency of physical activity each week and the number of hours and minutes allocated to physical activity. The participants were asked if they had checked social networks to find exercise routines and about the amount of time, they had spent watching television or social media defined as screen time.

2.1.4. Food Habits

For the set of questions associated with the participants’ eating habits, questions on weekly and daily food intake patterns were asked. In addition, questions pertaining to the overall increase, maintenance, or decrease in dietary intake, and whether the participants cooked more, less, or as much as before the full COVID-19 curfew period. The general dietary experience was evaluated and compared to the time before the full COVID-19 curfew period.

2.2. Statistical Analysis

Data analysis was conducted using IBM SPSS (Statistical Package for Social Sciences) (IBM Corp. Released 2017. IBM SPSS Statistics for Windows, Version 25.0. Armonk, NY, USA: IBM Corp.). All the variables were analyzed qualitatively and were expressed as the percentages (%) and numbers (n). Descriptive statistics were presented as frequencies and percentages. The Kruskal–Wallis test and the Wilcoxon rank sum test are rank sum test extended to more than two samples. Weight status, physical activity patterns, and dietary habits were the variables used in the tests to determine whether there was a significant difference for all the seven assessments. The main outcomes were unhealthy dietary and lifestyle changes described as decreased physical activity (vs. the same or increased), increased weight (vs. the same or decreased) and increased food intake (vs. the same or decreased); p < 0.05 was considered statistically significant.

3. Results

Sociodemographic Characteristics

Data on age, gender, education level, place of residence, and professional situation during the pandemic were collected. Table 1 describes the sociodemographic characteristics of the study population. More than a half of the study population (68.0%) were females, 55.5% were between 19 and 29 years old, 15.0%—between 30 and 39 years old, and 11.2% were older than 50 years old. Half of the study population (50.0%) were unmarried, and the largest professional group consisted of undergraduate students (39.6%). Most of the participants (53.2%) were from middle-income families with the monthly family income for the past 6 months of up to SAR 10,000 (US$ 2600). Moreover, about 84.5% of the participants lived in the Western district.
Furthermore, the comparison of the weight status, physical activity patterns, and dietary habits (before and during the full COVID-19 curfew period) is shown in Table 2. The proportion of respondents who were overweight slightly increased from 32.8% before the COVID-19 period to 38.8% during the COVID-19 period (p < 0.05). Our results showed that in 27.3% of the participants, body weight increased by 2–4 kg during the COVID-19 period (p > 0.05). Before the COVID-19 pandemic, 12.5% of the respondents spent more than 6 hours/day using computers/mobile devices, while during the COVID-19 pandemic, the category of the participants spending more than 6 h/day in front of the computer and/or phone and/or TV screen increased significantly to become the most prevalent (36.2%; p < 0.05). In addition to that, the normal daily activity level significantly decreased (p < 0.05) during the COVID-19 period. Furthermore, our results indicate that there were no significant changes (p > 0.05) in the overall habits of eating healthy food before and during the COVID-19 pandemic. More than half of the respondents (56.4%) ate homemade meals during the COVID-19 period, which was significantly higher than before the pandemic. Therefore, takeaway and ordering from restaurants significantly decreased (p < 0.05) from 64.0% to 35.4% during the COVID-19 pandemic. However, daily late-night snacking was significantly (p < 0.05) more frequent during the COVID-19 period, with the increase from 8.7% to 16.5%.
Moreover, the respondents’ body weight status during the full COVID-19 curfew period is presented in Table 3; 41.7% of the participants were males, and their body weight slightly increased during the pandemic. The results showed that there were no significant differences between males and females regarding the body weight status (p > 0.05).
The data in Table 4 show the overall body weight after the pandemic lockdown slightly increased in the 50+ age group (47.2%, p > 0.05) and highly increased in the 30–39-years-old age group (32.4%, p > 0.05) compared to before the pandemic lockdown period. Therefore, there were no significant differences between age groups (p > 0.05). Furthermore, there was a slight increase (57.95%, p > 0.05) in the body weight in the low-income participants and a high increase (25.5%, p > 0.05) in the body weight in the middle-income participants (see Table 5).
The data in Table 6 present the body weight status during the full COVID-19 curfew period and its relation to the participants’ education level. There were no statistically significant differences between the education level and the body weight (p > 0.05). Most of the participants (42.9%, p < 0.05) spent 5–6 h in front of the computer/phone/TV screen; their body weight slightly increased during the full COVID-19 stay-at-home period. Therefore, there are significant differences between the number of hours spent in front of the computer/phone/TV and the changes in the body weight status (p < 0.05) (Table 7).
Most of the participants (39.8%, p < 0.05) did not practice any physical activity when they spent more than 6 h/day using digital media such as desktops, laptops, TV, and phones. The results in Table 8 indicate that there are statistically significant differences between the number of hours spent in front of the computer/phone/TV and physical activity (p < 0.05) during the full COVID-19 curfew period. Additionally, most of the participants (82.4%, p < 0.05) preferred to eat homemade meals during the full COVID-19 curfew period which was significantly more prevalent than ordering from restaurants or takeaway (Table 9).

4. Discussion

Our research sought to identify changes in lifestyle such as food habits and PA patterns in the City of Jeddah, Saudi Arabia, during the COVID-19 confinement period and examine their relationship with changes in body weight. Moreover, eating habits and physical activity during the full COVID-19 curfew period in Jeddah, Saudi Arabia, was impacted by food inaccessibility, availability of goods, and limited market hours. Our results indicated that the COVID-19 pandemic had a negative impact on the participants’ physical activity patterns. For instance, the number of people practicing PA at least 4 h/week before the COVID-19 pandemic decreased from 8.7% to 5.3%, while the number of people who did not do any physical activity increased from 31.6% to 35.2%. As a result, the number of participants with higher body weight increased from 33% to 38.8%, which is consistent with the findings of other authors [17,24,29]. Additionally, our results also agree with the work of Haddad et al. (2020) who found a significant prevalence of lower physical activity among Lebanese adults, whereby 41% reported no physical activity or exercise during lockdown [29]. Other studies have indicated that reducing physical activity leads to the loss of muscle mass in a matter of days [30] and that metabolic consequences of a prolonged sedentary lifestyle such as increased body weight, including fat mass, and impaired glycemic control are observed in healthy adults [31].
Furthermore, our study reports that the overall poor eating habits slightly increased in prevalence from 17.6% to 27.3% during the pandemic. Our results showed that the number of participants spending more than 6 h daily in front of the TV/laptop/phones significantly increased from 12.5% to 36.2%. Our results are consistent with other studies that staying at home for an extended period of time such as the COVID-19 pandemic may result in an increase in screen-based activities (video games, TV watching, use of mobile devices) which increases the body weight [32,33].
In line with previous research, which found an increase in homemade meal consumption and a decrease in fast food consumption [34], our results also showed a significant increase in the consumption of homemade meals (from 26.9% to 56.4%), while the prevalence of ordering from restaurants, takeaway, and deliveries decreased from 64% to 35.4%. However, other studies indicated that limited access to daily grocery shopping resulted in the decrease in consumption of fresh foods in favor of highly processed ones, such as convenience foods, junk foods, snacks, and ready-to-eat cereals, which are high in fats, sugars, and salt [35,36]. Our results showed that during the COVID-19 lockdown, people spent more time watching TV / using a laptop/phone which is associated with snacking frequency, especially late-night snacking, and fast foods.

Limitations of the Study

Although this study provides an insight into how a pandemic-related lockdown can affect dietary patterns and weight, there are some limitations that also need to be underlined. Firstly, the research on our topic needs a longer period and a larger sample size to provide more accurate and better results. Secondly, the survey sample could be distributed over more regions and cities to clarify the differences and points of conflict. Thirdly, adding a comparison between gender and physical activity would clarify the effect of the full COVID-19 curfew period on the physical activity for groups whose physical activity percentage was high, which was the reason for the difference between weight gain for males and females. Fourthly, measuring the fat rate and the BMI in determining the percentage change in weight and the 24-h recall or any of the parameters of a person’s nutritional status would help get better results. Lastly, a question about the food types, portion sizes, food ingredients, and even the cooking process could be included into the future questionnaire and taken into consideration. This may improve the results regarding the overall dietary habits. However, to the best of our knowledge, this is the first study to document preliminary dietary changes in the City of Jeddah, Saudi Arabia, during the COVID-19 epidemic, and therefore it can provide early background information on the topic.

5. Conclusions

This study demonstrated that changes in eating habits were commonly reported among participants who represented the full COVID-19 curfew period and that changes in eating habits and decreased physical activity led to weight gain. Most of the population showed an increase in weight, an increase in food consumption, and a decrease in physical activity. According to our findings, people who gained weight started eating more, especially late-night snacks or meals, spent more time in front of the TV and/or laptop screen, and engaged in less physical exercise. Therefore, the responsible authorities should focus on public awareness initiatives to reduce the long-term effects of the full COVID-19 curfew on people’s eating patterns and general food safety in Saudi Arabia. In addition, encouraging healthy eating habits and attitudes as well as increasing physical activity can help to enhance body health and prevent weight gain.

Author Contributions

Methodology, investigation, data collection, and survey preparation, S.S.A., W.M.A., S.S.B., and A.A.A. (Atheer A. Almarghalani); validation, supervision, and writing—original draft preparation, N.M.A. and N.A.K.; validation, final draft writing—review and editing, A.A.A. (Amira A. Ayad); editing and funding acquisition, L.L.W. All authors have read and agreed to the published version of the manuscript.

Funding

No funding is applicable.

Conflicts of Interest

The authors declare that they have no competing interests.

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Figure 1. Number of confirmed deaths and recovered cases of the COVID-19 infection in Saudi Arabia from 1 March to 30 May 2020. The data are presented by weeks since the report of the first positive case in the country [6].
Figure 1. Number of confirmed deaths and recovered cases of the COVID-19 infection in Saudi Arabia from 1 March to 30 May 2020. The data are presented by weeks since the report of the first positive case in the country [6].
Ijerph 18 08580 g001
Table 1. Sociodemographic characteristics of the participants (n = 472).
Table 1. Sociodemographic characteristics of the participants (n = 472).
MeasureFrequency (n)Percentage (%)
Gender
Female32168.0*
Male15132.0
Age (Years)
18 and under418.7
19–2926255.5*
30–39 7115.0
40–49459.5
50 and over5311.2
Marital status
Married19741.7
Divorced214.4
Separated122.5
Widowed 61.3
Unmarried23650.0*
Level of the total family income for the past 6 months
Low194.0
Middle-low7716.3
Middle25153.2*
Middle-high9419.9
High 316.6
Family income (monthly)
Saudi Riyals (SR)US dollars ($)
Less than 1000 Less than 266.6163.4
1001–5000266–1333.210221.6
5001–10,0001333–266610422.0*
10,001–15,0002666–40007315.5
15,001–20,000Less than 50007916.7
20,001–25,000Less than 70005010.6
25,001 and overOver 7000 4810.2
How many family members live in the same house?
1 person153.2
2–4 persons17236.4*
5–6 persons16635.2
7–9 persons11123.5
10 persons or more81.7
What is your current employment status?
Full-time employment12426.3
Part-time employment439.1
Unemployed153.2
Self-employed132.8
Homemaker6313.3
Student18739.6*
Retired 275.7
What is your highest level of education?
Less than high school163.4
High school10221.6
Some college 8117.2
Bachelor’s degree19942.2*
Master’s degree388.1
Doctoral degree 357.4
Professional degree10.2
Region of the country
Middle region153.2
Northern region245.1
Eastern region102.1
Western region39984.5 *
South region245.1
Do you live in the City of Jeddah currently?
Yes472100.0
No 00.0
* Indicates the most prevalent group.
Table 2. Comparison of the body weight, physical activity (PA), and dietary habits before and during the COVID-19 lockdown period.
Table 2. Comparison of the body weight, physical activity (PA), and dietary habits before and during the COVID-19 lockdown period.
Weight and Physical Activity Patterns
Before the COVID-19 Pandemic
(n = 472)
During the COVID-19 Pandemic
(n = 472)
p-Value
Body weight statusn(%)n(%)0.002 a
Slightly increased15532.818338.8
Highly increased5812.311123.5
Nether increased nor decreased23750.213027.5
Slightly decreased183.8296.1
Highly decreased40.8194.0
Absolute body weight changen(%)n(%)0.345 a
Increased by less than 1 kg15132.09019.1
Increased by 2–4 kg10722.712927.3
Increased by more than 5 kg5511.711424.2
Decreased by less than 1 kg347.2296.1
Decreased by 2–4 kg163.4388.1
Decrease by more than 5 kg51.1214.4
No change10422.05110.8
Hours spent in front of the computer/mobile devices/TVn(%)n(%)0.000 a
Less than one hour a day439.1224.7
1–2 h per day11424.2367.6
3–4 h per day15633.19620.3
5–6 h per day10021.214731.1
More than 6 h per day5912.517136.2
Physical activityn(%)n(%)0.000 a
I do not practice any physical activity14931.616635.2
Less than 1 h per week10221.611424.2
1–2 h per week10021.211123.5
3–4 h per week8016.95611.9
More than 4 h per week418.7255.3
Activity level per dayn(%)n(%)0.000 a
Low8217.413729.0
Very low5511.710522.2
Normal24351.516434.7
High8417.86213.1
Very high81.740.8
Dietary habits
Before the COVID-19 pandemic
(n = 472)
During the COVID-19 pandemic
(n = 472)
p-value
Overall habits of eating healthy foodn(%)n(%)0.865 a
Poor8317.612927.3
Fair21545.614430.5
Good12526.512827.1
Very good398.35411.4
Excellent102.1173.6
Homemade meals per weekn(%)n(%)0.000 a
0 times/week285.9306.4
1–2 times/week11825.06112.9
3–6 times/week 19942.211524.4
Daily12726.926656.4
Ordering from a restaurant, takeaway, and deliveries per weekn(%)n(%)0.000 a
0 times/week6012.720543.4
1–2 times/week30264.016735.4
3–6 times/week 9419.97215.3
Daily163.4285.9
Late-night snack or mealn(%)n(%)0.000 a
Never7315.5459.5
Rarely12927.37616.1
Occasionally16334.514330.3
Usually6614.013027.5
Always418.77816.5
a Wilcoxon signed-rank test.
Table 3. Comparison of the body weight status and gender during the full COVID-19 curfew period.
Table 3. Comparison of the body weight status and gender during the full COVID-19 curfew period.
Body Weight StatusGenderp-Value
MaleFemale
n(%)n(%)
Slightly increased6341.712037.40.074 a
Highly increased3925.87222.4
Nether increased nor decreased4328.58727.1
Slightly decreased53.3247.5
Highly decreased10.7185.6
a Kruskal–Wallis test.
Table 4. Comparison of the body weight status and age during the full COVID-19 curfew period.
Table 4. Comparison of the body weight status and age during the full COVID-19 curfew period.
Body Weight StatusAge (years)p-Value
Under 1819–2930–3940–4950 and Over
n(%)n(%)n(%)n(%)n(%)
Slightly increased1126.810740.82332.41737.82547.20.098 a
Highly increased1229.35019.12332.41124.41528.3
Nether increased nor decreased1126.87428.22129.61328.91120.8
Slightly decreased37.3186.945.624.423.8
Highly decreased49.8135.000.024.400.0
a Kruskal–Wallis test.
Table 5. Comparison of the body weight status and the family income for the past 6 months during the pandemic.
Table 5. Comparison of the body weight status and the family income for the past 6 months during the pandemic.
Body Weight StatusLevel of the Total Family Income for the Past 6 Months
LowMiddle-LowMiddleMiddle-HighHighp-Value
n(%)n(%)n(%)n(%)n(%)
Slightly increased1157.92937.79638.23739.41032.30.225 a
Highly increased210.51114.36425.52526.6929.0
Neither increased nor decreased631.62836.46023.92627.71032.3
Slightly decreased00.067.8208.022.113.2
Highly decreased00.033.9114.444.313.2
a Kruskal–Wallis test.
Table 6. Association of the body weight status and the highest level of education during the full COVID-19 pandemic curfew period.
Table 6. Association of the body weight status and the highest level of education during the full COVID-19 pandemic curfew period.
Body Weight StatusHighest Level of Education
Less Than High SchoolHigh SchoolSome CollegeBachelor’s DegreeMaster’s DegreeDoctoral DegreeProfessional Degreep-Value
n(%)n(%)n(%)n(%)n(%)n(%)n(%)
Slightly increased531.34140.22935.88442.21231.61234.300.00.645 a
Highly increased425.02019.62024.74522.61231.6925.71100
Neither increased nor decreased743.82827.52125.95025.11334.21131.400.0
Slightly decreased00.065.967.4157.512.612.900.0
Highly decreased00.076.956.252.500.025.700.0
a Kruskal–Wallis test.
Table 7. Comparison of the body weight status and the hours spent in front of the computer/mobile devices/TV during the full COVID-19 curfew period.
Table 7. Comparison of the body weight status and the hours spent in front of the computer/mobile devices/TV during the full COVID-19 curfew period.
Body Weight StatusTime Spent in front of the Computer/Mobile Devices/TV (Hours/Day)
Less Than 11–23–45–6More Than 6p-Value
n(%)n(%)n(%)n(%)n(%)
Slightly increased522.71644.44142.76342.95833.90.003 a
Highly increased00.0411.12627.13725.24425.7
Neither increased nor decreased1777.31438.92526.03423.14023.4
Slightly decreased0025.633.196.1158.8
Highly decreased000011.042.7148.2
a Kruskal–Wallis test.
Table 8. Comparison of the physical activity (PA) and the hours spent in front of the computer/mobile devices/TV during the full COVID-19 curfew period.
Table 8. Comparison of the physical activity (PA) and the hours spent in front of the computer/mobile devices/TV during the full COVID-19 curfew period.
Time Spent in front of the Computer/Mobile Devices/TV (Hours/Day)
Less Than 1 1–2 3–4 5–6 More Than 6p-Value
n(%)n(%)n(%)n(%)n(%)
I do not practice any physical activity1568.21027.82728.14631.36839.80.004 a
Less than 1 h per week418.21541.72425.03020.44124.0
1–2 h per week14.51027.82728.14127.93218.7
3–4 h per week29.112.81313.51912.92112.3
More than 4 h per week00.000.055.2117.595.3
a Kruskal–Wallis test.
Table 9. Comparison of the homemade meals per week and ordering from a restaurant, takeaway, and deliveries per week during the full COVID-19 curfew period.
Table 9. Comparison of the homemade meals per week and ordering from a restaurant, takeaway, and deliveries per week during the full COVID-19 curfew period.
Ordering from a Restaurant, Takeaway, and Deliveries per Week (Times/Week)
0 1–2 3–6 Dailyp-Value
Homemade Meals per Weekn(%)n(%)n(%)n(%)0.000 a
0 times/week94.453.0811.1828.6
1–2 times/week73.42615.62230.6621.4
3–6 times/week209.86538.92534.7517.9
Daily16982.47142.51723.6932.1
a Kruskal–Wallis test.
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Abdulsalam, N.M.; Khateeb, N.A.; Aljerbi, S.S.; Alqumayzi, W.M.; Balubaid, S.S.; Almarghlani, A.A.; Ayad, A.A.; Williams, L.L. Assessment of Dietary Habits and Physical Activity Changes during the Full COVID-19 Curfew Period and Its Effect on Weight among Adults in Jeddah, Saudi Arabia. Int. J. Environ. Res. Public Health 2021, 18, 8580. https://doi.org/10.3390/ijerph18168580

AMA Style

Abdulsalam NM, Khateeb NA, Aljerbi SS, Alqumayzi WM, Balubaid SS, Almarghlani AA, Ayad AA, Williams LL. Assessment of Dietary Habits and Physical Activity Changes during the Full COVID-19 Curfew Period and Its Effect on Weight among Adults in Jeddah, Saudi Arabia. International Journal of Environmental Research and Public Health. 2021; 18(16):8580. https://doi.org/10.3390/ijerph18168580

Chicago/Turabian Style

Abdulsalam, Nisreen M., Najla A. Khateeb, Sarah S. Aljerbi, Waad M. Alqumayzi, Shaima S. Balubaid, Atheer A. Almarghlani, Amira A. Ayad, and Leonard L. Williams. 2021. "Assessment of Dietary Habits and Physical Activity Changes during the Full COVID-19 Curfew Period and Its Effect on Weight among Adults in Jeddah, Saudi Arabia" International Journal of Environmental Research and Public Health 18, no. 16: 8580. https://doi.org/10.3390/ijerph18168580

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