Literature DB >> 33203453

Assessing preventive health behaviors from COVID-19: a cross sectional study with health belief model in Golestan Province, Northern of Iran.

Hossein Shahnazi1, Maryam Ahmadi-Livani2, Bagher Pahlavanzadeh3, Abdolhalim Rajabi4, Mohammad Shoaib Hamrah5, Abdurrahman Charkazi6,7.   

Abstract

BACKGROUND: Coronavirus disease 2019 (COVID-19) is a new viral disease that has caused a pandemic in the world. Due to the lack of vaccines and definitive treatment, preventive behaviors are the only way to overcome the disease. Therefore, the present study aimed to determine the preventive behaviors from the disease based on constructs of the health belief model.
METHODS: In the present cross-sectional study during March 11-16, 2020, 750 individuals in Golestan Province of Iran were included in the study using the convenience sampling and they completed the questionnaires through cyberspace. Factor scores were calculated using the confirmatory factor analysis. The effects of different factors were separately investigated using the univariate analyses, including students sample t-test, ANOVA, and simple linear regression. Finally, the effective factors were examined by the multiple regression analysis at a significant level of 0.05 and through Mplus 7 and SPSS 16.
RESULTS: The participants' mean age was 33.9 ± 9.45 years; and 57.1% of them had associate and bachelor's degrees. Multiple regression indicated that the mean score of preventive behavior from COVID-19 was higher in females than males, and greater in urban dwellers than rural dwellers. Furthermore, one unit increase in the standard deviation of factor scores of self-efficacy and perceived benefits increased the scores of preventive behavior from COVID-19 by 0.22 and 0.17 units respectively. On the contrary, one unit increase in the standard deviation of factor score of perceived barriers and fatalistic beliefs decreased the scores of the preventive behavior from COVID-19 by 0.36 and 0.19 units respectively.
CONCLUSIONS: Results of the present study indicated that female gender, perceived barriers, perceived self-efficacy, fatalistic beliefs, perceived interests, and living in city had the greatest preventive behaviors from COVID-19 respectively. Preventive interventions were necessary among males and villagers.

Entities:  

Keywords:  COVID-19; Fatalism; Health belief model; Iran; Preventive behavior

Mesh:

Year:  2020        PMID: 33203453      PMCID: PMC7671178          DOI: 10.1186/s40249-020-00776-2

Source DB:  PubMed          Journal:  Infect Dis Poverty        ISSN: 2049-9957            Impact factor:   4.520


Background

On January 30, 2020, The World Health Organization's Emergency Committee considered it as a global health emergency due to its significant growth, and declared it to be a pandemic in March 2020 [1]. SARS-CoV-2 has a genetic similarity of 96% to corona virus originated from bats [2]. Early symptoms of SARS-CoV-2 are related to coronavirus disease 2019 (COVID-19) that occurs with pneumonia symptoms. Recent reports indicate gastrointestinal symptoms and asymptomatic infections, especially in children [3]. Its incubation period is with mean of 5 days and median of 3 days and a range of 0–24 days [2, 4]. Clinical manifestations of the disease usually occur within less than a week. The symptoms include fever, cough, nasal inflammation, fatigue, and other signs of upper respiratory tract infection [4]. A feature of the SARS-CoV-2 is its high virulence. Results of the recent study on 425 patients indicated that the number of patients doubled per week in the current pandemic; and each patient infected 2.2 individuals on average [5]. Analysis of recent results from the early stages of the outbreak also indicated that the rate ranged from 2.2 to 3.58 individuals [6]. In Iran, the first case was reported in Qom on February 19, 2020, and then it spread to other regions of Iran. Until April 10, 2020, 66 220 individuals had the disease and 4110 died in Iran [7]. The disease has been reported in 197 countries so far; and 1 521 252 cases of coronavirus were reported worldwide until April 10, 2020 according to Johns Hopkins University. 92 798 of the patients died from the disease. Iran ranks sixth after China, Italy, the United States, Spain and Germany [8]. No vaccine or definitive treatment has been found for the disease so far, and the treatments are symptomatic and supportive. Washing hands regularly with soap and water, covering mouth and nose when coughing and sneezing, and not touching the nose, mouth and eyes, wearing face masks, social distancing and good ventilation are the only ways to prevent the spread of COVID-19 [9]. Each person is the most important factor in promoting health; and the right or wrong behaviors are influenced by the individuals' beliefs, values, tendencies, and habits [5]. Sociologists, psychologists, and anthropologists have proposed a range of different theories and models to explain the factors influencing the health behavior, one of which is the health belief model (HBM). This model is introduced by Rosenstock et al. and is a general conceptual framework and theoretical guideline for health behaviors in the public health research, and it consists of constructs, namely the perceived susceptibility, perceived severity, perceived benefits, perceived barriers, cues to action, and preventive health behaviors [10, 11]. The general acceptance and popularity of the health belief model is due to its high predictive power [11]. The model is designed to explain the reasons why people do not participate in the prevention program and is based on the hypothesis that the individuals' preventive behavior is affected by their beliefs in being at risk (perceived susceptibility), the seriousness of risk (perceived severity), existence of a way to reduce the incidence or severity of disease (perceived benefits), and higher costs versus the benefits of action (perceived barriers), and thus they participate in screening and prevention activities based on the evaluation of these factors [12, 13]. During the outbreak of COVID-19 pandemic, large epidemiological study found that high frequency of wearing masks regardless of the presence or absence of symptoms was significantly associated with lower anxiety and depression levels [14]. Better hygiene practices and avoidance of sharing utensils during meals were significantly associated with lower psychological impact, depression, anxiety and stress at outbreak and 4 weeks after the outbreak [15]. Given the pandemic and spread of SARS-CoV-2, the observance of preventive health standards and behaviors in society is essential to better control the disease. Therefore, the present study was conducted to determine the preventive health behaviors from COVID-19 based on the health belief model among people in Golestan Province in March 2019.

Methods

Procedure

The present cross-sectional study was conducted in a population of over 18 years of age in Golestan Province in northern Iran from March 11 to 16, 2019. The participants were selected using the convenience sampling and they completed the electronic questionnaire. Generalities of the research were approved in Research Council of Golestan University of Medical Sciences and the National Ethics Committee in Biomedical Research with a code of IR.GOUMS.REC.1398.384. The questionnaire was forwarded via the virtual networks in Telegram and WhatsApp groups and channels, and the individuals were asked to optionally complete it and forward it to their friends and acquaintances. The approximate time to complete the questionnaire was about ten minutes, and it first started with an explanation of the research objectives.

Measures

The research tool included a questionnaire consisting of five sections, including demographic questions, health belief model construct questions, fatalism questions, clinical symptom recognition questions, and questions on the preventive behaviors from COVID-19. Demographic questions: The section provided questions about age, gender, education, place of residence (city or village) and city of residence. Questions about health belief model constructs, including six sections (questions about perceived susceptibility (three questions), perceived severity (three questions), perceived benefits (three questions), perceived barriers (eight questions), sense of self-efficacy (one question), and cues to action (two questions). The fatalism section included two questions. All construct questions of the health belief model and fatalism were on a 5-point Likert scale (from strongly agree to strongly disagree), and their scores ranged from 1 to 5. Questions about recognizing the clinical symptoms of disease (seven questions) that were answered by yes, no and I don't know. The correct answer was scored 1, the wrong answer and I don't know were scored 0. There were eight questions about the preventive behaviors from COVID-19. Answering the questions was on a 5-point Likert scale from Always to Never; and scoring was from 1 to 5. The opinions of 8 health education and promotion specialists were used to determine the content validity; and the necessary changes and corrections were applied in the text of the questionnaire based on their opinions. Besides, the confirmatory factor analysis indicated that the measures have in acceptable ranges (Table 1).
Table 1

Confirmatory factor analysis values regarding to study measures

RMSEA (95% confidence interval)CFITLISRMR
0.056 (0.046–0.066)0.9160.8930.06Susceptibility
0.047 (0.037–0.058)0.9250.9050.04Severity
0.055 (0.049–0.081)0.9140.9010.04Barriers
0.048 (0.036–0.06)0.940.9210.039Benefits
0.043 (0.031–0.055)0.9480.9310.036Fatalism
0.053 (0.041–0.066)0.9290.9060.042Self-efficacy
0.049 (0.037–0.061)0.9330.9110.039Cues to action
0.05 (0.41–0.077)0.9080.9050.051Clinical symptom

RMSEA root mean square error of approximation, CFI comparative fit index, TLI Tucker Lewis index, SRMR standardized root mean square residual

Confirmatory factor analysis values regarding to study measures RMSEA root mean square error of approximation, CFI comparative fit index, TLI Tucker Lewis index, SRMR standardized root mean square residual

Data analysis

First, the data were included in Mplus Version 7.2. (Los Angeles, CA: Muthén & Muthén). Thereafter, the confirmatory factor analysis was used to investigate the relationship between each variable of the health belief model and fatalistic behaviors with individual behaviors about the prevention of COVID-19 for each variable, and then the desired structural models about relationships of each variable with the performance were inserted in the software. In each of these factor analyses, the factor score was calculated and stored for each variable. In the analyses, the goodness of fit indices, including the Root Mean Square Error of Approximation (RMSEA), Comparative fit index (CFI), Tucker Lewis index (TLI), and Standardized Root Mean Square Residual (SRMR) were used to judge the suitability of model. The Mann–Whitney test and Spearman's correlation analysis were relatively used to investigate the association between gender, residence place, and age with preventive behaviors from COVID-19. The factor scores in the simple linear regression analysis were used to investigate the effect of each construct on the performance of COVID-19 prevention behavior, and finally, effects of all constructs were examined simultaneously on COVID-19 preventive behavior using the multiple linear regression. The analyses were performed at a significance level of 0.05 using the SPSS for Windows, Version 16.0. Chicago, SPSS Inc.).

Results

General findings

Participants (n = 750) were in the age range of 15–77 with an average age of 33.9 ± 9.45 years. 394 individuals (52.5%) were male, 74.9% lived in cities, and 57.1% had associate and bachelor's degrees. The mean scores of preventive behaviors from COVID-19 indicated significant differences with gender and residence place (Table 2).
Table 2

Frequency distribution of demographic variables of the participants

VariableGroupNumber (%)
GenderMale394 (52.5)
Female356 (47.5)
Residence placeRural188 (25.1)
Urban562 (74.9)
EducationUnder high school diploma74 (9.9)
High school diploma109 (14.5)
Associate and bachelor's degree428 (57.1)
Master and higher139 (18.5)
Frequency distribution of demographic variables of the participants The research results indicated that most participants (96.8%) did not go to crowded places due to the prevention of the disease. 54% believed that people follow hygienic standards such as using masks, and hand washing to prevent the disease, while 25.2% believed that people never observe hygiene standards. The results indicated that most respondents had relatively high perceived susceptibility, perceived severity, perceived benefits, and perceived self-efficacy, but lower perceived barriers and fatalistic beliefs (Table 3).
Table 3

Frequency distribution of answers to questions based on the fatalistic beliefs and health belief model constructs

VariableStrongly agreePercent, No.Partially agreePercent, No.No ideaPercent, No.Partially disagreePercent, No.Strongly disagreePercent, No.
Perceived susceptibility
 1. I consider myself to be at risk of coronavirus40.7, 30529.6, 2229.7, 7310.1, 769.9, 74
 2. I am more likely to get the disease24.8, 18631.2, 23415.5, 11617.6, 13210.9, 82
 3. I don't care about this disease and do my daily activities like before4.1, 316.1, 512.9, 2216.7, 12569.5, 521
Perceived severity
 1. This disease has a high mortality rate33.9, 25432.4, 2438.9, 6717.9, 1346.9, 52
 2. This disease is not very dangerous3.5, 2619.1, 1434.9, 3725.9, 19446.7, 350
 3. The transmission power of this disease is high93.7, 7.14.9, 370.9, 70.3, 23, 0.4
Perceived barriers
 1. It is difficult to follow the instructions to prevent this disease13.9, 10431.7, 2382.8, 2123.1, 17328.5, 214
 2. I don't have the patience to follow preventative instructions1.1, 88.5, 644.1, 3122.4, 16863.9, 479
 3. It is difficult to wash hands regularly with soap and water6, 4516.9, 1273.3, 2520.7, 15553.1, 398
 4. The mask is scarce in the market, and thus I do not wear a mask22.8, 17123.1, 17314.5, 10917.7, 13321.9, 164
 5. Disinfectant gels and solutions are scarce and expensive in the market59.3, 44522.1, 1669.6, 724.5, 344.4, 33
 6. Alcohol pads are scarce in the market54.4, 40822.8, 17115.5, 1164.1, 313.2, 24
 7. It is difficult not to touch hands, mouth, nose and eyes20.1, 15137.6, 2824.2, 3218.7, 14019.3, 145
 8. Staying at home to prevent the disease is difficult22.7, 17031.9, 2394.7, 3515.5, 11625.3, 190
Perceived self-efficacy
 I have ability to follow every preventive instructions against the disease43.1, 32340.5, 3045.5, 417.9, 593.1, 23
Perceived benefits
 1. This disease can be easily prevented by washing hands regularly with soap and water45.1, 33841.9, 3144.7, 356.9, 521.5, 11
 2. This disease can be easily prevented by personal protective equipment such as masks and disposable gloves36.4, 27348.7, 3655.5, 417.3, 552.1, 16
Fatalistic beliefs
 1. Having this disease is bad luck and the prevention has no effect1.6, 124.4, 335.3, 4016.5, 12472.1, 541
 2. Catching or not catching the disease is out of my control6.5, 4915.2, 11411.2, 8432.7, 24534.4, 258
Cues to action
 TV and radio information about the disease has been helpful27.2, 20428, 21012.9, 9711.5, 8620.4, 153
Frequency distribution of answers to questions based on the fatalistic beliefs and health belief model constructs The vast majority of samples were aware of three main symptoms of COVID-19, including fever, dry cough, and shortness of breath (Table 4).
Table 4

Frequency distribution of answers to questions of clinical symptoms of COVID-19

QuestionsYesNo., PercentNoNo., PercentI don't knowNo., Percent
1. Is headache a main symptom of this disease?273, 36.4303, 4.4174, 23.2
2. Is runny nose a main symptom of this disease?211, 28.1414, 55.2125, 16.7
3. Is fever a main symptom of this disease?701, 93.523, 3.126, 3.5
4. Is dry cough a main symptom of this disease?717, 95.613, 1.720, 2.7
5. Is shortness of breath a main symptom of this disease?731, 95.56, 0.813, 1.7
6. Are body and muscle pain the main symptoms of this disease?451, 60.1161, 21.5138, 18.4
7. Are digestive problems (diarrhea and nausea) the main symptoms of this disease?292, 38.9277, 36.9181, 24.1
Frequency distribution of answers to questions of clinical symptoms of COVID-19

Preventive behaviors

Regarding preventive behaviors from COVID-19, 82% of participants "always" observed "no handshake and kissing", 73.7% observed "hand washing when entering the house", 64.3% observed "no need to leave the house", and 61.2% observed "the use of tissue paper or bending elbows when coughing and sneezing". 45.7% of samples always observed "washing hands with soap and water" and 39.7% always observed "a distance of one meter". The lowest levels of compliance were related to "touching face by hands" and "non-use of mobile phones outside the house", which were always observed by 33.5% and 22.8% of participants respectively (Table 5).
Table 5

Frequency distribution of conditions for observing preventive behaviors from COVID-19

VariableAlwaysNo., PercentOftenNo., PercentSometimesNo., PercentRarelyNo., PercentNeverNo., Percent
1. I place a tissue paper or bending elbow in front of my mouth and nose when coughing or sneezing459, 61.2245, 32.732, 4.311, 1.53, 0.4
2. I keep a distance of at least one meter from others298, 39.7352, 46.970, 9.325, 3.35, 0.7
3. I don't shake hands with others and don't kiss them615, 82102, 13.612, 1.64, 0.517, 2.3
4. I don't leave the house unless absolutely necessary482, 64.3190, 25.340, 5.323, 3.115, 2
5. I wash my hands regularly with soap and water for at least 20 s every hour343, 45.7270, 3694, 12.531, 4.112, 1.6
6. I do not touch my eyes, nose and mouth by hands251, 33.5381, 50.878, 10.429, 3.911, 1.5
7. I do not take my cell phone out of my pocket171, 22.8264, 35.2165, 22110, 14.740, 5.3
8. I wash my hands with soap and water without touching anything after entering home553, 73.7165, 2224, 3.25, 0.73, 0.4
Frequency distribution of conditions for observing preventive behaviors from COVID-19

HBM constructs

The mean scores (standard deviation) for constructs of the health belief model and fatalistic beliefs presented in Table 6. The measured mean was obtained from dividing the mean score by number of questions in order to make the mean importance of each dimension comparable in participants. As presented, the "fatalistic beliefs" had the highest mean (4.13), followed by "perceived susceptibility" (3.03), "perceived barriers" (2.96), and "cues to action" (2.74). The lowest mean belonged to "perceived benefits" (1.83) and "preventive behaviors" (1.68) (Table 6).
Table 6

Frequency distribution of mean, standard deviation and standardized mean of fatalistic beliefs and health belief model constructs for preventive behaviors from COVID-19 in the participants

Number of questionsRange of scores for questionsMeanSd.Standardized meanMinimumMaximum
Perceived susceptibility31–59.182.573.03315
Perceived severity31–57.341.412.41315
Perceived barriers81–523.76.112.96840
Perceived benefits21–53.681.621.83210
Fatalistic beliefs21–58.231.824.13210
Perceived self-efficacy11–51.871.031.8715
Cues to action21–55.482.052.7429
Recognition of clinical symptoms70–14.41.490.6207
Preventive behaviors81–513.514.171.68834
Frequency distribution of mean, standard deviation and standardized mean of fatalistic beliefs and health belief model constructs for preventive behaviors from COVID-19 in the participants The univariate analysis indicated that the self-efficacy, barriers, benefits, fatalism, cues to action, gender, and place of residence had significant effects on preventive behaviors from COVID-19. Multiple regression also indicated that self-efficacy, barriers, fatalism, gender, and place of residence were associated with preventive behaviors from COVID-19, and only the "cues to action" variable lost its significance. In this regard, the self-efficacy and perceived benefits had positive relationships; in other words, the mean score of performance increased with their increase, but the perceived barriers and fatalistic beliefs had opposite relationships and decreased the mean score of performance. Furthermore, the mean score of preventive behaviors against COVID-19 was higher in women than men and also higher in urban residents than villagers. As shown in the "standardized estimation" column of the table for comparing the effects of variables on performance, the greatest impact belonged to gender. The "perceived barriers" variable had a greater effect on preventive behaviors from COVID-19 than fatalism; and the individual's self-efficacy had a greater effect on the preventive behaviors from COVID-19 than the perceived benefits (Table 7).
Table 7

Effects of constructs of the health belief model, fatalistic beliefs, and demographic variables on preventive behaviors from COVID-19

Univariate analysisMultivariate analysis
EstimationConfidence intervalStandardized estimationP-valueEstimationConfidence intervalStandardized estimationP-value
Perceived self-efficacy0.120.1 to 0.140.37 < 0.0010.0050.03 to 0.060.22 < 0.001
Perceived susceptibility− 0.016− 0.03 to 0.001− 0.060.067− 0.006− 0.02 to 0.01− 0.020.45
Perceived severity− 0.02− 0.02 to 0.060.040.30.03− 0.002 to 0.060.0650.068
Perceived barriers− 0.21− 0.24 to − 0.19− 0.51 < 0.001− 0.14− 0.18 to − 0.11− 0.36 < 0.001
Perceived benefits0.20.17 to 0.230.4 < 0.0010.070.03 to 0.110.140.001
Fatalism− 0.4− 0.44 to − 0.34− 0.46 < 0.001− 0.16− 0.23 to − 0.09− 0.19 < 0.001
Cues to action0.0250.009 to 0.040.110.0020.01− 0.01 to 0.040.040.4
Recognition of clinical symptom of the disease− 0.016− 0.1 to 0.06− 0.010.70.070.00 to 0.130.060.051
Gender = men–women− 0.13− 0.086 to − 0.18− 0.2 < 0.001− 0.06− 0.08 to − 0.04− 0.42 < 0.001
Place of residence = urban–rural− 0.09− 0.15 to 0.034− 0.110.002− 0.060.03 to 0.090.24 < 0.001
Age− 0.01− 0.01 to 0.02− 0.020.550.001− 0.005 to 0.01− 0.0140.76
Effects of constructs of the health belief model, fatalistic beliefs, and demographic variables on preventive behaviors from COVID-19

Discussion

The results of the study indicated that rate of adherence to preventive behaviors from COVID-19 was at a desirable level. Preventive behaviors such as observing the etiquette of coughing and sneezing, washing hands for at least 20 s, not kissing others, observing at least one meter distance from others, not leaving home except when necessary, not touching nose and face by hands, not taking a mobile phone with us out of house, and washing hands with soap and water as soon as arriving home were at proper levels. Results of a study in Hong Kong of China also indicated that more than 77% of participants reported good health performance for COVID-19 [16]. Gender was an important variable affecting the preventive behaviors, so that women showed better observance than men probably since they had greater motivation for health than men. In studies on breast cancer screening behaviors, the health motivation was confirmed as an independent variable [17-19]. In a study by Lau et al. on the pandemic of H1N1 in women and men in Hong Kong of China, women had better performance than men in the prevention of the disease [20]. Moreover, people living in cities showed better performance against the disease than villagers probably due to the difference in their literacy levels. Perceived barriers and fatalistic beliefs were also inversely related to the preventive behaviors from COVID-19. Therefore, the rate of adherence to preventive behaviors increased by reducing perceived barriers and fatalistic beliefs. However, the impact of perceived barriers was greater than fatalistic beliefs. The perceived barriers are important and effective constructs of the health belief model because the individuals should overcome barriers to behaviour despite their inner desire to engage in preventive behavior. Excessive barriers can be deterrents and prevent the creation of desired health behaviors. In the present study, the participants had fewer perceived barriers to preventive individual behaviors, such as hand washing, but they were strongly influenced by environmental barriers such as shortage of masks, alcohol pads, and disinfectants. Shortage of mask has been observed in most regions of world due to the pandemic of COVID-19 [21-24] and the issue was also observed in the present study. Majority of Chinese prefer to wear masks to protect themselves from COVID-19 [15]. The shortage of masks leads to panic buying [25] and caused anxiety and depression among the Chinese [26]. Providing masks and other disinfectants and overcoming the environmental barriers can be effective in increasing the individuals' adherence to these preventive behaviors. The existence of high perceived self-efficacy is an important factor in overcoming the perceived barriers; and it was an effective variable in adopting preventive behaviors from COVID-19 in the present study. Self-efficacy is defined as the level of trust and confidence in overcoming barriers to a healthy behavior. According to the health belief model, individuals should have an appropriate level of self-efficacy to overcome barriers to behavior [27]. Fatalistic beliefs constitute a theory based on which people believe that events are controlled by external forces and humans have no power over them and can no longer influence them; and they are considered greatly as barriers to screening and preventive behaviors for cancers. They are more common in poor people, racial and ethnic minorities, and low-literate people [28-33]. In the present study, the participants' fatalistic beliefs were low due to high levels of education and high urbanization. On the other hand, fatalistic behaviors have been studied and confirmed in diseases such as cancer, but COVID-19 is an infectious disease; and the process of its infection, like cancers, is multifactorial and sometimes unknown; and its cause is known to be a single virus. Perhaps this has also contributed to the lack of fatalistic beliefs in the participants. Perceived benefits were other factors in predicting preventive behaviors from the disease. In other words, the individuals perform better by increasing the perceived benefits. Having perceptions such as effects of regular hand washing, use of personal protective equipment such as masks, and disposable gloves can lead to high perceived benefits, and they are thus strong motivations for taking preventive measures against this disease. In the study, the perceived susceptibility and severity did not show any significant relationship in predicting the preventive behaviors from COVID-19 despite the fact that the significance level of perceived severity was 0.688 and close to the significance level. In general, the perceived threat construct was an important variable in taking preventive measures, so that the individuals should consider themselves susceptible to this disease and consider the severity of this disease to be dangerous. Results of a research by Li et al. also indicated that high perceived severity increased negative emotions, higher cellphone use, and caution in COVID-19 [34]. Furthermore, Kwok et al. investigated the early stages of COVID-19 in Hong Kong of China and found that the individuals had higher perceived susceptibility and severity of COVID-19, so that 89% said that they were at risk for COVID-19 and 97% said that COVID-19 had severe symptoms [16]. In the above studies, other constructs of the health belief model were not included in the study. Considering two options, I completely agree and agree, in the present study, 70.3% of participants considered themselves susceptible to coronavirus; and 72.6% considered the disease dangerous in the case of its perceived severity. In general, the perceived threat to COVID-19 is greater than H7N9 and SARS [35, 36]. Some studies indicate that the individuals, who knew themselves less susceptible to the disease, consider it a severe and dangerous disease [37, 38]. The research had three limitations: first, the data were collected from the digital space due to specific conditions caused by limitations of the disease; hence, it did not allow for random sampling to select individuals. Second, some people such as the elderly or low-income people might not have access to smart phones and not be evaluated. Third, the individuals' performance was based on self-reporting that should be considered in the data generalization. Fourth, this study did not explore the occupation of the participants. The participants might include healthcare professionals that have different preventive health behaviors [39, 40].

Conclusions

The research results indicated that female gender, perceived barriers, perceived self-efficacy, fatalistic beliefs, perceived benefits, and living in the city respectively had the highest predictive power of preventive behaviors from COVID-19. Therefore, it is necessary to perform interventions to increase awareness in men to promote health behaviors. Inducing the benefits of preventative behaviors increases the perceived self-efficacy, and thus overcomes the barriers to preventive behaviors from COVID-19. It is suggested decreasing the fatalistic beliefs and paying more attention to people living in rural areas in order to promote preventive behaviors.
  28 in total

Review 1.  Health beliefs and preventive behavior. A review of research literature.

Authors:  M A Nemcek
Journal:  AAOHN J       Date:  1990-03

2.  Social learning theory and the Health Belief Model.

Authors:  I M Rosenstock; V J Strecher; M H Becker
Journal:  Health Educ Q       Date:  1988

3.  Novel coronavirus: Australian GPs raise concerns about shortage of face masks.

Authors:  Elisabeth Mahase
Journal:  BMJ       Date:  2020-02-05

4.  Instrument refinement for breast cancer screening behaviors.

Authors:  V L Champion
Journal:  Nurs Res       Date:  1993 May-Jun       Impact factor: 2.381

5.  Determining the health beliefs and breast cancer fear levels of women regarding mammography.

Authors:  Fatma Ersin; Fatma Gözükara; Perihan Polat; Gözde Erçetin; Mehmet Ekrem Bozkurt
Journal:  Turk J Med Sci       Date:  2015       Impact factor: 0.973

6.  Monitoring community responses to the SARS epidemic in Hong Kong: from day 10 to day 62.

Authors:  J T F Lau; X Yang; H Tsui; J H Kim
Journal:  J Epidemiol Community Health       Date:  2003-11       Impact factor: 3.710

7.  Do psychiatric patients experience more psychiatric symptoms during COVID-19 pandemic and lockdown? A case-control study with service and research implications for immunopsychiatry.

Authors:  Fengyi Hao; Wanqiu Tan; Li Jiang; Ling Zhang; Xinling Zhao; Yiran Zou; Yirong Hu; Xi Luo; Xiaojiang Jiang; Roger S McIntyre; Bach Tran; Jiaqian Sun; Zhisong Zhang; Roger Ho; Cyrus Ho; Wilson Tam
Journal:  Brain Behav Immun       Date:  2020-04-27       Impact factor: 7.217

8.  The basic reproduction number of novel coronavirus (2019-nCoV) estimation based on exponential growth in the early outbreak in China from 2019 to 2020: A reply to Dhungana.

Authors:  Shi Zhao; Qianying Lin; Jinjun Ran; Salihu S Musa; Guangpu Yang; Weiming Wang; Yijun Lou; Daozhou Gao; Lin Yang; Daihai He; Maggie H Wang
Journal:  Int J Infect Dis       Date:  2020-02-20       Impact factor: 3.623

Review 9.  World Health Organization declares global emergency: A review of the 2019 novel coronavirus (COVID-19).

Authors:  Catrin Sohrabi; Zaid Alsafi; Niamh O'Neill; Mehdi Khan; Ahmed Kerwan; Ahmed Al-Jabir; Christos Iosifidis; Riaz Agha
Journal:  Int J Surg       Date:  2020-02-26       Impact factor: 6.071

Review 10.  Treatment of children with COVID-19: position paper of the Italian Society of Pediatric Infectious Disease.

Authors:  Elisabetta Venturini; Carlotta Montagnani; Silvia Garazzino; Daniele Donà; Luca Pierantoni; Andrea Lo Vecchio; Giangiacomo Nicolini; Sonia Bianchini; Andrzej Krzysztofiak; Luisa Galli; Alberto Villani; Guido Castelli-Gattinara
Journal:  Ital J Pediatr       Date:  2020-09-24       Impact factor: 2.638

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Authors:  Woo In Hyun; Yoon Hee Son; Sun Ok Jung
Journal:  BMC Public Health       Date:  2022-07-19       Impact factor: 4.135

2.  Conservative Media Use and COVID-19 Related Behavior: The Moderating Role of Media Literacy Variables.

Authors:  Porismita Borah; Kyle Lorenzano; Anastasia Vishnevskaya; Erica Austin
Journal:  Int J Environ Res Public Health       Date:  2022-06-21       Impact factor: 4.614

3.  Fatalism, fear, and compliance with preventive measures in COVID-19 pandemic: A structural equation modeling analysis.

Authors:  Kamuran Özdil; Gizem D Bulucu Büyüksoy; Aslıhan Çatıker
Journal:  Public Health Nurs       Date:  2021-04-16       Impact factor: 1.770

4.  Perception of COVID-19 Prevention Methods Efficacy and Intention to Use Among Patients with Chronic Disease in Dessie Town, Northeast Ethiopia: A Multicentered Cross-sectional Study.

Authors:  Abebe Dires; Sisay Gedamu; Yemiamrew Getachew
Journal:  J Multidiscip Healthc       Date:  2021-06-04

5.  Factors associated with preventive behaviors for COVID-19 among adolescents in South Korea.

Authors:  Sunhee Park; Sumi Oh
Journal:  J Pediatr Nurs       Date:  2021-07-10       Impact factor: 2.145

6.  Perceived Vulnerability and Severity Predict Adherence to COVID-19 Protection Measures: The Mediating Role of Instrumental Coping.

Authors:  José Luis González-Castro; Silvia Ubillos-Landa; Alicia Puente-Martínez; Marcela Gracia-Leiva
Journal:  Front Psychol       Date:  2021-07-06

7.  The association between core job components, physical activity, and mental health in African academics in a post-COVID-19 context.

Authors:  Nestor Asiamah; Faith Muhonja; Akinlolu Omisore; Frank Frimpong Opuni; Henry Kofi Mensah; Emelia Danquah; Simon Mawulorm Agyemang; Irene Agyemang; Sylvester Hatsu; Rita Sarkodie Baffoe; Eric Eku; Christiana Afriyie Manu
Journal:  Curr Psychol       Date:  2021-07-08

8.  Reuse of face masks among adults in Hong Kong during the COVID-19 pandemic.

Authors:  Linda Yin-King Lee; Issac Chun-Wing Chan; Owen Pak-Man Wong; Yaki Hoi-Ying Ng; Crystal Kit-Ying Ng; Max Hin-Wa Chan; Joe Ka-Chun Ng; Hailey Hei-Tung Koo; Suk-Ting Lam; Ada Cho-Wai Chu; Rachel Yuen-Shan Wong; Heidi Po-Ying Leung; Angel Lok-Ching Pun
Journal:  BMC Public Health       Date:  2021-06-29       Impact factor: 3.295

9.  What Explains Natives and Sojourners Preventive Health Behavior in a Pandemic: Role of Media and Scientific Self-Efficacy.

Authors:  Fang Keren; Ahmad Nabeel Siddiquei; Muhammad Azfar Anwar; Fahad Asmi; Qing Ye
Journal:  Front Psychol       Date:  2021-06-29

10.  COVID-19-related knowledge, risk perception, information seeking, and adherence to preventive behaviors among undergraduate students, southern Iran.

Authors:  Mohammad Rayani; Saba Rayani; Fatemeh Najafi-Sharjabad
Journal:  Environ Sci Pollut Res Int       Date:  2021-06-20       Impact factor: 4.223

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