Characterizing Dietary Intakes in Rural Australian Adults: A Systematic Literature Review
Abstract
:1. Introduction
2. Materials and Methods
2.1. Protocol and Registration
2.2. Eligibility Criteria
- Study designs including
- ○
- cross-sectional, longitudinal studies; and
- ○
- randomised controlled trials, or before and after studies that included baseline dietary data;
- Dietary intake data including (but not limited to) serves of foods, food groups, and nutrient intake data collected using quantitative dietary assessment methods (e.g., FFQ, 24 h recall);
- All study settings were included (e.g., health care, community, home, or school-based settings) in areas classified as regional or remote based on the Australian Statistical Geographical Standard Remoteness Areas (ASGS-RA) [12] or categorized as MM2 or above [11]. If both rural and urban populations were included, dietary data must be stratified according to rurality;
- published in English due to a lack of translational resources;
- Study designs including case reports, reviews, editorials, letters to the editor, or qualitative research;
- Inclusion of people under 18 years, or if people under 18 years of age were included but the authors did not stratify outcomes according to age;
- Inclusion of populations living in metropolitan areas only (MM2 and above) or if metropolitan and urban populations were included and the authors did not stratify outcomes according to rurality;
- Dietary intake was measured using qualitative methods, apparent consumption data, food supply data, or similar; or
- Reported dietary intake following an intervention or changes only (i.e., no baseline data).
2.3. Literature Search and Study Selection
- Diet*; Nutrition*; Nutrient*; Macronutrient*; Energy; Fib*; Micronutrient*; Vitamin*; trace element*; Mineral*; Intake*
- regional Australia; remote Australia; remote; regional; farming community; community; New South Wales; Northern Territory; South Australia; Tasmania; Western Australia; Queensland; Victoria; Australian Capital Territory.
2.4. Data Extraction, Synthesis, and Quality Assessment
3. Results
3.1. Dietary Outcomes
3.1.1. Food Groups
3.1.2. Nutrients
3.1.3. Dietary Patterns
3.1.4. Multiple Dietary Outcomes
3.2. Comparison with Public Health Nutrition Guidelines
3.3. Dietary Tools
3.4. Quality Assessment
4. Discussion
4.1. Recommendations for Future Research
4.2. Strengths and Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Author and Year | Setting | Rurality (MM) * | Age Group | Diet Questionnaire Type | Form of Data Presented | Diet Data Benchmarked against Dietary Guidelines | Summary of Results and Authors Interpretation |
---|---|---|---|---|---|---|---|
Aoun, S. & Rosenberg, M., 2004 | Rehabilitation/secondary prevention, intervention study | MM2 | Adults over 18 years n = 30 | Short fat dietary score questionnaire | Short fat dietary score as a mean and SD | ✘ | Dietary fat intake (as a score) was high in this rural sample. Authors commented that scores were high at baseline. |
Brimblecombe et al., 2018 | Indigenous remote communities cross-sectional design | MM7 | Adults over 18 years (n = 148) | Culturally appropriate pictorial diet questionnaire | Fruit, vegetable, water, and soft drink intake | ✓ | Only a small number of participants met guidelines for fruit and vegetable consumption. Participants generally had low intake of fruit and vegetables at baseline. |
Burgis-Kasthala et al., 2019 | Community based cross-sectional design | MM3-MM5 | Adults over 18 years (n = 326) | Standardised lifestyle questionnaire | Fruit and vegetable intake (cups) | ✓ | A relatively high proportion of participants reported meeting AGHE recommendations. The proportion of rural people meeting recommendations in this sample was high and sample size was small. |
D’Onise et al., 2012 | Indigenous remote communities cross-sectional design | MM7 | Adults over 18 years (n = 2583) | Questioned intakes from the past 24 h | Mean fruit and vegetable serves | ✘ | A large majority did not meet the fruit and vegetable recommendations. Recommended improved nutrition should continue to be a focus to reduce the life expectancy gap between Aboriginal and Torres Strait Islander people. |
Harrison et al., 2017 | Cross-sectional study | MM3-MM6 | Women 18–50 years (n = 649) | Cancer Council FFQ | Macronutrients stratified by BMI | ✘ | Detailed macronutrient data presented but not interpreted. Recommended future initiatives should aim to improve health-related behaviors, with focus on optimizing social support and community engagement for obesity prevention in rural women. |
Lee et al., 2018 | Cross-sectional study | MM3 | Pregnant Indigenous women (n = 58) | Australian Eating Survey FFQ | Mean serves of each food group, whether or not meeting recommendations and overall dietary score | ✓ | None of the participants met all of the AGHE recommendations. Almost all (93%) exceeded recommendations for discretionary foods. Further, 29.3% met vegetable recommendations and 27.6% met fruit recommendations. A low proportion met the NRV for iron. Only a small proportion of the women met recommendations for the AGHE. |
Lim et al., 2017 | Cross-sectional study | MM5 | Adults over 18 years (n = 1154) | Fruit and vegetable intake- “on a typical day how many serves of fruit and vegetables do you eat?” | Intake of fruit and vegetables serves/day | ✘ | 11% had 0 serves of fruit; 34% reported 2 serves of fruit/day. Vegetable intake 21% report 2 serves/day, 55% reported 3 or more. Higher fruit and vegetable intake were associated with older age, being female, and having private health insurance. |
Lombard et al., 2016 | RCT | MM2-MM6 | Females 18–50 years (n = 649) | Cancer Council Australia Food Frequency Questionnaire (FFQ) | Energy intake (kJ/day), Fruit g/day, Vegetables g/day, Snack food g/day, Takeaway food, g/day; Bread g/day, Breakfast cereal g/day, Alcohol g/day | ✘ | Study showed change as a result of the intervention and did not benchmark with NRVs/RDIs but showed grams of fruit and vegetables that were below AGHE guidelines. Women in this sample were not meeting AGHE guidelines for fruit and vegetables. |
Martin, et al., 2018 | RCT | MM3-MM6 | Females 18–50 years (n = 230) | Cancer Council Australia Food Frequency Questionnaire (FFQ) | Total diet quality and variety score | ✘ | Diet quality was suboptimal at baseline. Diet quality was improved by the low intensity intervention in rural women. |
Martin et al., 2017 | Cross-sectional | MM3-MM6 | Females 18–50 years (n = 394) | Cancer Council Australia Food Frequency Questionnaire (FFQ) | Macronutrient and micronutrient intake | ✘ | Higher macronutrient consumption pattern in this sample of rural women was potentially related to a higher lean meat intake. |
McMahon et al., 2017 | Cross-sectional | MM7 | Indigenous adults (n = 1363) | 24 h recall | Food groups (percentage energy from major and sub-major food groups), Cereals & cereal products, Sugar products & dishes, Meat/poultry/game products & dishes, Non-alcoholic beverages | ✘ | Vegetable and fruit intakes only made up a small % of energy. |
Mishra et al., 2005 | Cross-sectional study | Large rural sample-Rurality of residence was not further defined by modified Monash model. | women aged 50–55 years (n = 6020) | Cancer Council of Victoria food frequency questionnaires | Mean frequency of consumption per day of Bread, Breakfast cereals, Pasta/noodles, Sweets biscuits, Fast foods. Snack foods, Sugar products and dishes, Milk/flavored milk, Cheese, Ice cream, Yoghurt, Nuts/peanut butter of paste, Chocolate, Vegemite, Meat, Poultry, Fish (steamed, grilled, or baked) | ✘ | There were differences in the dietary intakes between rural and urban women. The most frequently consumed foods for rural women were processed foods. |
Noble et al., 2015 | Cross-sectional | Regional/rural NSW-Rurality of residence was not further defined by modified Monash model. | Adults ≥18 years (n = 377 attending Aboriginal Community Controlled Health Service (ACCHS)) | Fruit and Vegetable Consumption Two items; “How many serves of fruit/vegetables do you usually eat each day?” | <two serves of fruit; and/or <five serves of vegetables daily | ✓ | The relatively small variation in fruit and vegetable intake and under-screening across the sample suggests that almost all people attending an ACCHS would benefit from improved diet and screening. |
Nour et al., 2017 | Cross-sectional | MM2-MM6 | Adults 18–34 years inner regional (n = 408) and outer regional and remote (n = 335) | 24 h recall data | Intakes and variety of fruit and vegetables | ✓ | Fruit and vegetable intake was suboptimal among Australian young adults. Young adults consumed a mean of 0·9 and 2·7 servings of fruits and vegetables daily. Less than a quarter of the population surveyed reported consuming 3–4 different vegetable categories on the day prior to the dietary recall. |
O’Kane et al., 2008 | Cross-sectional | MM3-MM5 | Males 25–64 years, (n = 529) | Food Habit Score survey | Food Habit Score, serves of Fruit; Vegetables; Cereal or bread products; Milk; Visible fat on meat; Butter or margarine on bread; Bread; Cheese; Cooking oil; Milk | ✘ | Participants received a mean Food Habit Score of 12/20, close to that achieved by urban and rural men in the Western Australia (WA) study (Food Habit Score of 12.4/20). The men in higher skilled occupations had a better diet quality than those from lower skilled occupations. |
Owen et al., 2020 | Cross-sectional | MM3 & MM4 | Adults aged 55–89 years (n = 458) | 120 item semi-quantitative food frequency questionnaire | The Australian Recommended Food Score (ARFS), a diet quality index that captures the dietary quality of key food groups, was calculated from the AES FFQ | ✓ | 50% of men and women did not meet recommended intakes of fiber, while 60% of men and 42% of women exceeded recommended dietary sodium intakes. |
Peach et al., 2002 | Cross-sectional | MM2 | Adult ≥18 years (n = 131) | Self-administered, semi-quantitative food and beverage frequency questionnaire | Energy (kJ/day); Starch (g/day); Sugars(g/day); Fats (g/day); Cholesterol (mg/day); Alcohol (g/day); Dietary fiber (g/day); Vitamin C (mg/day); Iron (mg/day); Calcium (mg/day); Coffee (cups/month); Tea (cups/month) | ✘ | Authors did not make specific conclusions about diet. Descriptive data only. |
Peach et al., 2000 | Cross-sectional | MM2 | Adults ≥18 years (n = 332) | Self-administered semi-quantitative food and beverage frequency questionnaire | Assessed calcium intake only | ✓ | Low dietary calcium intake was highly prevalent in both males and females in this regional setting. |
Reinhardt et al., 2012 | Intervention study | MM3-MM5 | Pregnant women ≥18 years (n = 38) | The Cancer Council Victoria Food Frequency Questionnaire (FFQ) was utilized and has 74 items grouped into four food categories | Mean energy intake (mean of intervention and control group) Energy (kJ/day); fat (g/day); saturated fat (g/day); fiber (g/day); Carbohydrate (g/day) | ✓ | High % of saturated fat. Fiber intake below recommendations. |
Simmons et al., 2005 | Cross-sectional | MM2-MM5 | Adults over 25 years (n = 1454) | Validated questions from the Victorian population health survey | Takeaways less than 1/month Use full-fat milk Use low-fat spread Cut fat off the meat Cut skin off chicken Dairy items 2+/day Fruit 2+/day Vegetables 4+/day | ✘ | This study found that the reported dietary intake was not related to obesity/BMI in this rural sample. There was a high % of rural people meeting vegetable intakes compared to more recent national health survey data. |
Thorpe et al., 2016 | Cross-sectional | MM2-MM6 | Australian adults aged 55–65 years; (n = 1667) | 111-item food frequency questionnaire and additional food-related behavior questions. | Score for compliance with the Australian Dietary Guidelines- DGI-2013 | ✓ | Adults aged 55–65 years demonstrated poor diet quality according to the DGI-2013 |
Xu et al., 2019 | Cross-sectional | MM6-MM7 | Indigenous adults ≥18 years with Type 2 diabetes (n = 210) | FFQ with 10 response options | Vegetables; Fruit Fresh fish; Milk-based Drinks; Juice; Coffee or tea; Water; Homemade Meals; Takeaway; Snacks; Diet soft drinks/cordials; Regular soft drinks/cordials; Alcohol | ✘ | Self-reported vegetable and fruit intake was very low; no participant reported adequate daily vegetable intake and only 10% reported adequate fruit intake. If representative of diet quality in Indigenous Australians with diabetes, this is poorer than that of the Indigenous population nationally, in which a greater proportion reported adequate vegetable and fruit intake (5% and 43%, respectively) and poorer than that reported for remote communities in the 2015 Health and Welfare of Australia’s Aboriginal and Torres Strait Islander peoples report. One in six reported consuming takeaways and 30% reported snacking at least twice weekly. This is slightly better than in the DRUID study of urban Indigenous Australians, 29% of whom reported consuming takeaway foods and 37% consumed snacks at least twice weekly. There was low fish intake, with only 4.3% meeting the CARPA guideline of two to three times per week. |
Characteristic | Number of Studies | References | |
Visual representation | Number of studies (%) | ||
Modified Monash Model classification | |||
MM2 | •••••• | 6 (27) | [22,23,28,29,31,32] |
MM3 | ••••••••• | 9 (41) | [20,21,26,29,32,33,34,35,36] |
MM4 | ••••••••• | 9 (41) | [20,21,29,30,32,33,34,35,36] |
MM5 | •••• | 4 (18) | [20,21,29,30,32,33,34,35,37] |
MM6 | •••• | 4 (18) | [30,32,34,38] |
MM7 | ••••• | 5 (23) | [27,38,39,40] |
Unclear but reported as rural and/or remote | ••••• | 5 (23) | [24,31,41,42,43] |
Sample size (rural/remote sample only) | |||
<100 | ••• | 3 (14) | [21,26,28] |
100–500 | ••••••••••• | 11 (50) | [22,23,30,31,33,35,36,38,39,42,43] |
501–1000 | •••• | 4 (18) | [24,29,32,34] |
1001+ | •••• | 4 (18) | [20,27,37,40] |
Dietary outcomes | |||
Food group serves/grams | ••••••••• | 9 (41) | [26,27,29,33,37,39,40,42,43] |
Macronutrient/s or energy | •••••••• | 8 (36) | [21,22,29,30,34,35,36,40] |
Diet Quality Indices/Diet Score | ••••••• | 7 (32) | [24,26,28,30,32,35,36] |
Non-quantifiable data (e.g., frequency of consumption) | ••••• | 5 (23) | [20,24,31,38,41] |
Micronutrient/s | ••• | 3 (14) | [22,23,26] |
Dietary tool | |||
Non-validated questionnaire or short survey | ••••••••••• | 11 (50) | [20,22,23,24,27,28,31,33,37,38,39,42] |
Validated Food Frequency Questionnaire | ••••••••• | 9 (41) | [21,26,29,30,32,34,35,36,41] |
24 h recall | •• | 2 (9) | [40,43] |
Comparison to national public health recommendations | |||
None | •••••••••• | 10 (45) | [20,22,24,28,30,31,34,35,37,40] |
Australian Guide to Healthy Eating | ••••••••• | 9 (41) | [26,27,32,33,36,38,39,42,43] |
Nutrient Reference Values | •••• | 4 (18) | [21,23,26,36] |
Reference | Fruit and Vegetable Consumption Reporting Style | Dietary Assessment Tool | |||
Mean or Median g/Day | Mean or Median Serves/Day | Mean or Median % Contribution to Energy/Day | % of Adequate or Inadequate Intake against Guidelines | ||
[39] | Fruit: 75 g/day Vegetables: 87 g/day | Non-validated questionnaire or short survey | |||
[33] | Meeting fruit guidelines: 47% Meeting vegetable guidelines: 39% | Non-validated questionnaire or short survey | |||
[27] | Fruit 1.0 serves Vegetables 1.2 serves/day | Non-validated questionnaire or short survey | |||
[26] | Fruit: 199.4 g/day Vegetables: 253.5 g/day | Fruit: 1.4 serves Vegetables: 3.4 serves/day | Meeting fruit guidelines: 16% Meeting vegetable guidelines: 17% | Validated Food Frequency Questionnaire | |
[37] | Fruit guidelines: 0 serves = 11%, 1 serve = 39%, 2 serves = 34%, 3 serves = 15%, Vegetable guidelines: 0 serves = 3%, 1 serve = 21%, 2 serves = 34%, 3 serves = 55% | Non-validated questionnaire or short survey | |||
[29] | Fruit: 189 g/day Vegetables: 171 g/day | Validated Food Frequency Questionnaire | |||
[40] | Fruit: 2.1% of energy Vegetables: 4.8% of energy | 24 h recall | |||
[42] | Inadequate fruit or vegetable intake: 84% | Non-validated questionnaire or short survey | |||
[43] | Fruit: 128 g/day Vegetables: 205 g/day | Fruit: 0.9 serves/day Vegetables: 2.7 serves/day | 24 h recall | ||
Australian Public Health Recommendation [15] | Fruit: 300 g/day Vegetables: 375 g/day | Fruit: 2 serves Vegetables: 5 serves | - | - |
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Alston, L.; Walker, T.; Kent, K. Characterizing Dietary Intakes in Rural Australian Adults: A Systematic Literature Review. Nutrients 2020, 12, 3515. https://doi.org/10.3390/nu12113515
Alston L, Walker T, Kent K. Characterizing Dietary Intakes in Rural Australian Adults: A Systematic Literature Review. Nutrients. 2020; 12(11):3515. https://doi.org/10.3390/nu12113515
Chicago/Turabian StyleAlston, Laura, Troy Walker, and Katherine Kent. 2020. "Characterizing Dietary Intakes in Rural Australian Adults: A Systematic Literature Review" Nutrients 12, no. 11: 3515. https://doi.org/10.3390/nu12113515
APA StyleAlston, L., Walker, T., & Kent, K. (2020). Characterizing Dietary Intakes in Rural Australian Adults: A Systematic Literature Review. Nutrients, 12(11), 3515. https://doi.org/10.3390/nu12113515