Health Belief Model Predicts Likelihood of Eating Nutrient-Rich Foods among U.S. Adults
Highlights
- Persons with a nutrition-related chronic disease had significantly less nutrition-related knowledge, yet a significantly higher likelihood of consuming nutrient-rich foods compared to those without a nutrition-related chronic disease.
- Nutrition knowledge was inversely associated with the likelihood of consuming nutrient-rich foods, while the Health Belief Model constructs of self-efficacy, perceived benefits, and cues to action were the strongest predictors of the likelihood of consuming nutrient-rich foods.
- To increase the consumption of nutrient-rich foods, health professionals should focus on improving consumer self-efficacy, educating people about the perceived benefits of nutrient-rich foods, and giving cues to action through the encouragement of quality food choices.
- Future research should further investigate the association between consumer knowledge and the consumption of nutrient-rich foods.
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Sample Recruitment
2.1.1. Survey Development
2.1.2. Assessment of Knowledge of Nutrient-Rich Foods
2.1.3. Health Belief Model (HBM) Constructs
2.2. Data Analysis and Transformations
3. Results
3.1. Assessment of Knowledge of Nutrient-Rich Foods
3.2. Health Belief Model
4. Discussion
5. Limitations
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Outcome Variable | Mean ± SD |
---|---|
Likelihood of Eating Nutrient-Rich Foods Scale (Range 0–19) | 13.82 ± 2.77 |
Healthfulness as an important driver of food choice | 3.92 ± 0.97 |
I often encourage my family and friends to eat nutrient-rich foods | 3.45 ± 1.08 |
My family and friends often eat nutrient-rich foods when we are together | 3.28 ± 1.01 |
Concern about nutritional content in food | 3.28 ± 0.73 |
Cronbach’s alpha = 0.723 | |
Perceived Benefits: | |
It is beneficial to eat nutrient-rich foods | 4.32 ± 0.79 |
Perceived Barriers Scale (Range 0–25): | 14.42 ± 4.01 |
When it comes to food, I’m a creature of habit | 3.57 ± 1.03 |
Dinner doesn’t seem right without meat | 3.39 ± 1.22 |
It is hard for me to eat nutrient-rich foods because I don’t know what they are | 2.99 ± 1.14 |
I do not like the taste of beans | 2.36 ± 1.31 |
What I eat does not really affect my health | 2.11 ± 1.17 |
Cronbach’s alpha = 0.712 | |
Self-Efficacy (over the next two-week period…) Scale (Range 0–10) | 7.84 ± 1.68 |
If I tried, I am confident that I could maintain a diet high in nutrition most of the time | 3.91 ± 0.89 |
If I wanted to, I feel I would be able to follow a diet high in nutrition most of the time | 3.93 ± 0.89 |
Cronbach’s alpha = 0.887 | |
Perceived Severity (diet-health consequences) Score (0/1); (Range 0–7) | 3.63 ± 1.64 |
Eating less salt protects against heart disease | 0.79 ± 0.41 |
Fiber protects against heart disease | 0.65 ± 0.48 |
Red meat does not protect against heart disease | 0.60 ± 0.49 |
Saturated fat raises cholesterol | 0.46 ± 0.50 |
Not eating fruits and vegetables is a cause of chronic disease | 0.45 ± 0.50 |
Folic acid is linked to neural tube defects | 0.39 ± 0.49 |
Fat has more calories per gram | 0.29 ± 0.45 |
Perceived Susceptibility or Risk to Chronic Disease Scale (Range 0–20) | 11.70 ± 3.50 |
Likelihood of experiencing high blood pressure | 3.03 ± 1.07 |
Likelihood of experiencing heart disease or stroke | 2.93 ± 1.06 |
Likelihood of experiencing diabetes | 2.89 ± 1.14 |
Likelihood of experiencing cancer | 2.85 ± 1.03 |
Cronbach’s alpha = 0.827 | |
Cues to Action to Change Food Choices Scale (Range 0–15) | 10.92 ± 2.24 |
I would pay more attention to the quality of my food choices … … if recommended by a doctor or medical professional | 4.08 ± 0.83 |
… if my friends or family members mentioned it | 3.55 ± 0.92 |
… if I read information in the mass media | 3.30 ± 1.07 |
Cronbach’s alpha = 0.695 |
Total | No Nutrition-Related Disease 45.3% (n = 442) | Has Nutrition-Related Disease 54.7% (n = 534) | p-Value | |
---|---|---|---|---|
Age in years ( ± SD) | 44.8 ± 14.3 | 40.2 ± 13.6 | 48.6 ± 13.8 | p < 0.001 |
% | ||||
Gender Man Woman | 48.3 51.7 | 43.4 a 56.6 a | 52.2 b 47.8 b | p = 0.006 |
Presence of nutrition-related disease (could report more than 1) High blood pressure High cholesterol Type 2 diabetes Gastrointestinal disorder Heart disease | 28.8 25.9 17.3 14.4 6.9 | N/A | 52.6 47.4 31.6 26.4 12.5 | |
Marital Status Single/Divorced/Widowed Married/Living with partner | 29.9 70.1 | 34.2 a 65.8 a | 26.4 b 73.6 b | p = 0.008 |
Children in household No children One child+ in household | 49.7 50.3 | 52.0 48.0 | 47.8 52.2 | n.s. |
Years of Education 9–12th grade and/or GED Some college, no degree Associate degree, Tech school Bachelor degree Masters, Doctoral, Professional degree | 14.1 13.8 13.9 32.1 26.0 | 16.3 a 12.9 a 14.0 a 38.0 a 18.8 a | 12.4 a 14.6 a 13.9 a 27.2 b 32.0 b | p < 0.001 |
Race/Ethnicity White Other | 76.9 23.1 | 74.4 25.6 | 79.0 21.0 | n.s. |
Food Item | Total | No Nutrition-Related Disease 45.3% (n = 442) | Has Nutrition-Related Disease 54.7% (n = 534) | p-Value |
---|---|---|---|---|
% | ||||
Heard of Nutrient-Rich Foods Term Yes No | 84.4 15.6 | 83.9 16.1 | 84.8 15.2 | n.s. |
Not Nutrient-Rich | ||||
1. Doughnuts Correct Incorrect | 86.5 13.5 | 91.6 a 8.4 a | 82.2 b 17.8 b | p < 0.001 |
2. Bacon Correct Incorrect | 85.6 14.4 | 89.6 a 10.4 a | 82.2 b 17.8 b | p = 0.001 |
3. Apple Juice Correct Incorrect | 82.0 18.0 | 89.1 a 10.9 a | 76.0 b 24.0 b | p < 0.001 |
4. Iceberg Lettuce Correct Incorrect | 79.6 20.4 | 80.8 19.2 | 78.7 21.3 | n.s. |
Nutrient-Rich | ||||
5. Black Beans Correct Incorrect | 64.5 35.5 | 64.5 35.5 | 64.6 35.4 | n.s. |
6. Sweet Potato Correct Incorrect | 62.8 37.2 | 62.7 37.3 | 62.9 37.1 | n.s. |
7. Pinto Beans Correct Incorrect | 58.9 41.1 | 59.0 41.0 | 58.8 41.2 | n.s. |
8. Carrots Correct Incorrect | 54.4 45.6 | 55.9 44.1 | 53.2 46.8 | n.s. |
Nutrient-Rich Foods Knowledge Score (sum of items 1–8; ± SD) | 5.74 ± 1.8 | 5.93 ± 1.7 | 5.59 ± 1.9 | p = 0.003 |
Beta (p-Value) | Partial Eta Squared | Observed Power | |
---|---|---|---|
Demographic Variables | |||
Age | 0.011 (0.033) | 0.005 | 0.570 |
Gender (Woman = 1) | 0.263 (0.057) | 0.004 | 0.477 |
Education | 0.260 (0.000) | 0.025 | 0.999 |
Main Shopper (Yes = 1) | 0.704 (<0.001) | 0.019 | 0.992 |
Children in the Household (Yes = 1) | 0.729 (<0.001) | 0.021 | 0.995 |
Nutrient-Rich Foods Knowledge | −0.113 (0.003) | 0.009 | 0.839 |
Nutrition-Related Disease Condition (Yes = 1) | 0.434 (0.004) | 0.009 | 0.828 |
Marital Status (Married = 1) | 0.435 (0.008) | 0.007 | 0.761 |
Health Belief Model Constructs | |||
Perceived Benefits | 0.366 (<0.001) | 0.015 | 0.970 |
Cues to Action | 0.347 (<0.001) | 0.091 | >0.999 |
Self-Efficacy | 0.462 (<0.001) | 0.094 | >0.999 |
Perceived Susceptibility | −0.030 (0.129) | 0.002 | 0.329 |
Model Intercept | 5.419 (<0.001) | 0.074 | >0.999 |
Independent Variable | Dependent Variable | Estimate | S.E. | C.R. | p-Value |
---|---|---|---|---|---|
Age | Perceived Barriers | −0.024 | 0.009 | −2.745 | p = 0.006 |
Age | NRF Knowledge | 0.010 | 0.004 | 2.212 | p = 0.027 |
Nutrition Related Disease | Perceived Barriers | 1.258 | 0.254 | 4.948 | p < 0.001 |
Nutrition Related Disease | Perceived Susceptibility | 1.720 | 0.217 | 7.928 | p < 0.001 |
Nutrition Related Disease | Cues to Action | 0.616 | 0.126 | 4.906 | p < 0.001 |
Nutrition Related Disease | NRF Knowledge | −0.403 | 0.120 | −3.361 | p < 0.001 |
Children in Household | Perceived Barriers | 1.832 | 0.256 | 7.164 | p < 0.001 |
Children in Household | Perceived Susceptibility | 0.582 | 0.217 | 2.684 | p = 0.007 |
Children in Household | Cues to Action | 0.963 | 0.132 | 7.303 | p < 0.001 |
Children in Household | Self-Efficacy | 0.271 | 0.099 | 2.745 | p = 0.006 |
Children in Household | NRF Knowledge | −0.702 | 0.121 | −5.779 | p < 0.001 |
Main Shopper | Cues to Action | 0.457 | 0.146 | 3.128 | p = 0.002 |
Main Shopper | Self-Efficacy | 0.319 | 0.113 | 2.832 | p = 0.005 |
Education | Perceived Benefits | 0.101 | 0.018 | 5.634 | p < 0.001 |
Education | Self-Efficacy | 0.239 | 0.038 | 6.240 | p < 0.001 |
Education | Cues to Action | 0.260 | 0.048 | 5.384 | p < 0.001 |
Education | NRF Knowledge | 0.127 | 0.040 | 3.147 | p = 0.002 |
Self-Efficacy | Likelihood to eat NRFs | 0.605 | 0.046 | 13.156 | p < 0.001 |
Perceived Benefits | Likelihood to eat NRFs | 0.515 | 0.098 | 5.253 | p < 0.001 |
NRF Knowledge | Likelihood to eat NRFs | −0.162 | 0.040 | −4.082 | p < 0.001 |
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Glick, A.A.; Winham, D.M.; Heer, M.M.; Shelley, M.C., II; Hutchins, A.M. Health Belief Model Predicts Likelihood of Eating Nutrient-Rich Foods among U.S. Adults. Nutrients 2024, 16, 2335. https://doi.org/10.3390/nu16142335
Glick AA, Winham DM, Heer MM, Shelley MC II, Hutchins AM. Health Belief Model Predicts Likelihood of Eating Nutrient-Rich Foods among U.S. Adults. Nutrients. 2024; 16(14):2335. https://doi.org/10.3390/nu16142335
Chicago/Turabian StyleGlick, Abigail A., Donna M. Winham, Michelle M. Heer, Mack C. Shelley, II, and Andrea M. Hutchins. 2024. "Health Belief Model Predicts Likelihood of Eating Nutrient-Rich Foods among U.S. Adults" Nutrients 16, no. 14: 2335. https://doi.org/10.3390/nu16142335
APA StyleGlick, A. A., Winham, D. M., Heer, M. M., Shelley, M. C., II, & Hutchins, A. M. (2024). Health Belief Model Predicts Likelihood of Eating Nutrient-Rich Foods among U.S. Adults. Nutrients, 16(14), 2335. https://doi.org/10.3390/nu16142335