A Scoping Review of the Operationalization of Fruit and Vegetable Variety
Abstract
:1. Introduction
2. Materials and Methods
2.1. Search Strategies
2.2. Inclusion and Exclusion Criteria
2.3. Study Selection
2.4. Data Extraction Techniques
3. Results
3.1. Study Design and Samples
3.2. Measurement Instruments
3.2.1. Food Frequency Questionnaires (FFQs)
3.2.2. Twenty-Four-Hour Dietary Recalls
3.2.3. Other Measurements
3.3. Quantifying Variety
3.3.1. Timeframe and Frequency
3.3.2. Minimum Amount
3.4. Fruit and Vegetable Items and Subgroups
2015–2020 U.S. Dietary Guidelines for Americans: Vegetable Subgroups
3.5. Seasonality, Dietary Differences by Country and Region
3.6. FV Variety and Outcomes
4. Discussion
Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A. Protocol
- Title: Protocol of A Scoping Review of the Operationalization of Fruit and Vegetable Variety
- Registration N/A
- Contact informationAllison N. MarshallCorresponding Author: Allison Marshall, Allison.n.marshall.5@gmail.comUniversity of Texas Health Science Center Houston School of Public Health Austin, Michael and Susan Dell Center for Healthy Living, 1616 Guadalupe St. Ste 6.300, Austin, Texas 78745Alexandra van den Berg 1Nalini Ranjit 1Deanna M. Hoelscher 1Contributions.Guarantor: A.N.M.All authors contributed to development of selection criteria, data extraction criteria. AM and D.M.H. developed search strategy. All authors contributed expertise on fruit and vegetable consumption and measurement. A.N.M. drafted protocol. All authors read, provided feedback, and approved the final protocol.
- AmendmentsIf we need to amend this protocol, dates, amendments, and rationale will be presented in this section. Changes will not be incorporated into the protocol.
- Funding SupportThis scoping review was partially funded by the Michael and Susan Dell Foundation through the Michael and Susan Dell Center for Healthy Living. It was completed as part of dissertation work to satisfy degree requirements for the PhD program.
- RationaleIntake of fruit and vegetables (FV) is recognized as crucial for optimal health in childhood and adulthood and is critical for proper physical and psychosocial development and functioning for children and adolescents. The World Health Organization (WHO) recognizes inadequate FV consumption as a factor for 14% of gastrointestinal cancer deaths, 11% of ischemic heart disease deaths, and 9% of stroke deaths worldwide, and considers low FV intake as one of the top 10 risks for death worldwide. FV intake is especially critical during childhood and adolescence both because of rapid growth, and because lifestyle habits from childhood tend to track into adulthood. Additionally, low FV intake is associated with higher BMI and higher risk of obesity in childhood, and childhood obesity is linked to excess weight in adolescence and adulthood. Most people are not consuming enough fruit and vegetables, and few studies measure variety.Fruit and vegetable consumption recommendations generally focus on amount; in addition to amounts, the U.S. Dietary Guidelines for Americans 2015–2020 also include a recommendation for fruit and vegetable variety over the course of a week. Although few studies assess variety, there is variation across existing studies. There is a gap in the literature regarding fruit and vegetable variety.
- ObjectivesThe objectives of our study are to systematically review the literature to identify currently available evidence operationalizing fruit and vegetable variety to summarize, compare, and critically evaluate the operationalization of variety.
- Eligibility CriteriaStudies will be selected according to the criteria outlined below:Study designs All study designs are eligible for inclusion in this systematic review. Etiologic, intervention, and determinant studies are eligible to be included;Participants We will include studies examining human population ages 2 years old and older;Interventions Any type of intervention is eligible for inclusion in this review;Setting There will be no restrictions by type of setting;Language We will include articles reported in the English language.
- Information SourcesWe will search PubMed, Medline, PsycINFO all available years. Searches for headings and key words will be conducted using combinations of the following terms: Fruit OR fruits OR vegetable OR vegetables OR diet OR dietary OR nutrition AND variety OR diversity AND measure OR measurement OR assess OR assessment. To ensure a comprehensive review, reference lists of included papers will be scanned for additional records. In addition, papers from the authors’ existing literature base will be included. A list of included items will be circulated to the systematic review team.
- Search StrategyEtiologic, determinant, and intervention studies will be sought. No study design or date limits will be imposed on the search. Only publications published in English will be included. All available years of PubMed, Medline, PsycINFO will be searched. The specific search strategies will be created based on guidance from a health sciences librarian with expertise in systematic reviews.Draft of PsycInfo search—Ovid interface
- fruits.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- fruit.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- vegetable.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- vegetables.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- 1 or 2 or 3 or 4
- diet.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- dietary.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- nutrition.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- 6 or 7 or 8
- diversity.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- variety.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- 10 or 11
- measure.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- assess.mp. [mp=title, abstract, heading word, table of contents, key concepts, original title, tests & measures, mesh]
- 13 or 14
- 5 and 9 and 12 and 15
- limit 16 to ((160 preschool age <age 2 to 5 yrs> or 180 school age <age 6 to 12 yrs> or 200 adolescence <age 13 to 17 yrs> or "300 adulthood <age 18 yrs and older>" or 320 young adulthood <age 18 to 29 yrs> or 340 thirties <age 30 to 39 yrs> or 360 middle age <age 40 to 64 yrs> or "380 aged <age 65 yrs and older>" or "390 very old <age 85 yrs and older>") and english and human)
- 11a
- Data ManagementRecords for all articles resulting from the search strategy applied in each of the three databases will be exported to Refworks. Duplicates will be removed, and titles and abstracts scanned for relevancy to identify a list of potentially relevant studies. Articles not meeting the inclusion criteria will be removed and reasons for exclusion noted. Titles and abstracts potentially meeting the inclusion criteria will be screened in full.
- 11b
- Selection ProcessThe lead review author will independently screen titles and abstracts. We will seek additional information from study authors and from review co-authors as needed to resolve questions about eligibility. We will record the reasons for excluding studies. Review authors will not be blind to journal titles or study authors or institutions.
- 11c
- Data Collection ProcessUsing a standardized abstraction form, demographic information of participants, methodology including study design and measurement instruments, purpose of study, and reported outcomes will be abstracted. We will contact study authors to resolve any uncertainty and review co-authors will be consulted to resolve uncertainty.
- 12
- Data ItemsWe will extract the study design, sample size, participant demographics including geographic location, type and length of measurement instrument, number of fruit and vegetable items and details of specific classification where available, structure of basis for fruit and vegetable classification, length of time assessed, minimum amount of consumption required to be considered for variety, major findings of the studies. Any missing data pertaining to eligibility for inclusion will be noted and the record will proceed to full-text review; any missing data will be reported in the table as “not reported.” Because the purpose of this systematic review is to compare differing operationalizations of fruit and vegetable variety, the degree of detail which is reported is relevant to report and compare.
- 13
- Outcomes and PrioritizationPrimary outcomes include the number of fruit and vegetable items, classification of items, basis of classification, study methodology, and purpose of studies.Secondary outcomes include correlates of variety consumption and health outcomes identified.
- 14
- Risk of BiasBecause the purpose of this systematic review is to compare operationalization of fruit and vegetable variety, risk of bias in studies is not the focus of this review. Risk of bias of the review due to restriction to English language and variations in classification of fruit and vegetables by country are to be listed as limitations.
- 15
- AnalysisDescriptive comparisons will be presented, further meta-analysis will not be conducted. Findings of the systematic narrative synthesis will be presented in text and tabular format to summarize characteristics, findings of included studies.
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Vegetable Subgroup | Weekly Intake | Example Items (Not Exhaustive) |
---|---|---|
Dark green vegetables | 1.5 cups | Broccoli, spinach, leafy salad greens (including romaine lettuce), collards, bok choy, kale, turnip greens, mustard greens, green herbs (parsley and cilantro) |
Red and orange vegetables | 5.5 cups | Tomatoes, carrots, tomato juice, sweet potatoes, red peppers (hot and sweet), winter squash, pumpkin |
Legumes (beans and peas) | 1.5 cups | Pinto, white, kidney, and black beans; lentils; chickpeas; limas (mature and dried); split peas; edamame (green soybeans) |
Starchy vegetables | 5 cups | Potatoes, corn, green peas, limas (green and immature), plaintains, cassava |
Other vegetables | 4 cups | Lettuce (iceberg), onions, green beans, cucumbers, celery, green peppers, cabbage, mushrooms, avocado, summer squash (includes zucchini), cauliflower, eggplant, garlic, bean sprouts, olives, asparagus, peapods (snowpeas), beets |
Citation | Sample | Measurement Instrument Type | Timeframe | Number of F, V, FV Items/Groups |
---|---|---|---|---|
Almeida-de-Souza et al., 2018 | n = 412 adolescents ages 14.4 ± 1.7 years; 52% girls; Portugal | FFQ | 1 year | 12 F; 15 V |
Azadbakht et al., 2013 | n = 411 Isfahanian women aged 12–28 years | FFQ | 1 year | 2 F; 7 V |
Azadbakht et al., 2012 | n = 289 Isfahanian women aged 12–28 years | FFQ | 1 year | 2 F; 7 V |
Azadbakht et al., 2005 | n = 295 males ≥ 18 years old, (20% 51 or older); Tehran, Iran | 24-h recall | 2 days | 2 F; 7 V |
Azupogo et al., 2018 | n = 187 women age 15–49 in rural Ghana | FFQ | 1 mo | 27 V |
Bhupathiraju et al., 2013 | n = 113,276 adults, U.S. | FFQ | NR | 11 F; 19 V |
Bonaccio et al., 2018 | n = 10,812 men and women ≥ 35 years old, Italy | FFQ | 1 year | 37 FV |
Brunt et al., 2008 | n = 557 Canadian college students 18–56 years old, 60% female | DVQ | 3 days | 5 F; 5 V |
Brunt et al., 2008 | n = 585 college students 18–56 years old | Q | 3 days | 5 F; 5 V; 10 FV total |
Buchner et al., 2010 | n = 452,187 participants from 10 European countries | varied, FFQs, food records, interviews | 1 year | 14 F; 8 V; FV (NR); 26 V products |
Buchner et al., 2011 | n = 452,185 participants from 10 European countries | varied, FFQs, food records, interviews | 1 year | 14 F; 8 V; FV (NR); 26 V products |
Burrows et al., 2016 | n = 25 competitive adolescent male 14–18-year-old rugby players | ARFS | 1 week | F(NR); V(NR) |
Chou et al., 2019 | n = 436 elders in Taipei | FFQ | 1 year | F(NR); V(NR); 5 V subgroups |
Conklin et al., 2015 | n = 9580 over-50 s in EPIC-Norfolk (England) | FFQ | 1 year | 11 F; 26 V |
Conrad et al., 2018 | n = 38,981 adults > 20 years old | 24 h recall | 1 day | V(NR) |
Cooper et al., 2012 | n = 3704; 653 diabetes nested cases: EPIC and Nutrition-Norfolk; Norfolk, England | 7 day food diaries | 7 days | 58 F; 59 V; 117 FV total |
de Deus Mendonça et al., 2019 | n = 3414 adults, 88.1% women ≥ 20 years old; Brazil | Q | 6 mos | 14 F; 22 V; FV (NR) |
Do et al., 2008 | n = 1255 low-income adults aged 18–24 years | FFQ | 1 year | 12 F; 14 V |
Estaquio et al., 2008 | n = 4282 French men and women 45–62 years old | 24-h recall | 6 days | 9 F; 10 V |
Falciglia et al., 2005 | n = 18, 33–79 years old; 100% white | 24-h recall | 15 days | F, V, FV (NR) |
Galloway et al., 2003 | n = 192 7-year old girls and their parents; Pennsylvania, US | FFQ | 3 mos | 20 V |
Ghadirian et al., 2009 | n = 739 women in original cohort; mean age 50.5 for BRCA carriers, 53.4 for non-carriers | FFQ | 1 year | VF (NR) |
Giskes et al., 2002 | n = 654 13–17 years old; n = 7695 18–64 years old; Australia | 24-h recall | 1 day | F(NR); V(NR) |
Haws et al., 2017 | n = 134 women with overweight/obesity | 24-h recall | 4 mos | V (NR); |
Henry et al., 2006 | n = 420 low-income, African American mothers 18–45 years old with children < 12 years old; United States | FFQ | 4 wks | 20 F; 23 V |
Jansen et al., 2004 | n = 730 Dutch men 65–84 years old followed for 10 years | FFQ | 1 mo | 7 F; 27 V |
Keim et al., 2014 | n = 112 low-income women 20–55 years old, BMI 11.7–68.5, primary food purchasers/preparers, California | FFQ | 3 mos | 21 V |
Ko et al., 2013 | n = 2271 subjects from (KOHBRA) Study; at study entry, mean age of 42.5 years old for BRCA carriers, 41.9 for non-carriers | FFQ | 1 year | 12 F; 25 V |
Leak et al., 2015 | n = 46, families with 9–12-year-old children (36 intervention, 10 control) | Q; 24-h recall | 30 days | 36 V |
Leenders et al., 2015 | n = 521,448 participants from 10 European countries | varied, FFQs, food records, interviews | 1 year | FV DDS: 49 items F DDS: 16 items V DDS: 33 items V subtype DDS: 8 subtypes |
Lutz et al., 1999 | n = 710 at baseline; n = 573 post-intervention survey; adults | FFQ | 1 wk | FV (NR) |
McCann et al., 1994 | n = 428 (205 men, 223 women) all Caucasian; Western New York, US | Interview, FF instrument | 1 year | 38 F; 20 V |
McCrory et al., 1999 | n = 71 men and women 20–80 years old; New England, US | FFQ | 6 mos | 10 F; 14 V |
Meengs et al., 2012 | n = 66 (32 men aged 20–45; 34 women aged 20–45) Pennsylvania, US | Food weights | 4 wks | 3 V |
Mirmiran et al., 2006 | n = 286 Tehranian women 18–80 years old | 24-h recall | 2 days | 2 F; 7 V |
Nour et al., 2017 | n = 2397 ages 18–34 years in rural and metropolitan Australia | 24-h recall | 1 day | 6 F; 6 V |
Oude Griep et al., 2012 | n = 20,069 (8988 men, 11081 women); Dutch | FFQ | 1 year | 9 F; 13 V; 22 FV total |
Parizel et al., 2017 | n = 59 healthy weight French adults 18–40 years old | freq. count | 4 sessions | 1–3 V |
Ramsay et al., 2017 | n = 2595 ages 2–5 years; 48% male; 55% non-Hispanic white, US. | 24-h recall | 1 day | 4 V, 3 F |
Randall et al., 1989 | n = 428 (205 men, 223 women) | FFQ | 1 year | F (NR); V (NR) |
Raynor et al., 2012 | n = 20, 50% female, 100% non-Hispanic white, mean age 26.5 years; Rhode Island, US | Food weights | four 7-min courses | 4 F |
Robinson et al., 2015 | n = 66 families with parent-child dyads 8–12 years old | 70-item ARFS | NR | F(NR); V(NR) |
Roe et al., 2013 | n = 61 children, age 3–5 years | Food weights | 8 sessions | 3 F, 3 V |
Roy et al., 2016 | n = 100 young adults from university student population, representative sample; mean age 23.5, range 18–34 years | FFQ, WFR | 5 days WFR; 1 mo FFQ | 5 V; F(NR) |
Sidahmed et al., 2014 | n = 120 (88% Caucasian, 72% female, mean age 53 years) | 24-h recall, FR | 6 mos | 6 F; 8 V |
Tichenor et al., 2015 | n = 275,864 adults | BRFSS | NR | 2 F; 4 V |
Torheim et al., 2004 | n = 502 women age 15–45 in Western Mali | FFQ | 7 days | F(NR); V(NR) |
Vandevijvere et al., 2010. | n = 3245 representative of Belgian population ≥ 15 years old | 24-h recall | 2 days | F(NR); V (NR) |
Vossenaar et al., 2010 | n = 355 children 8–10 years old; Quetzaltenango, Guatemala | 24-h recall | 1 day | 69 FV |
Wolfe et al., 2001 | n = 31 (included white, African American, and Hispanic persons) | Variety instrument | 1 mo | 20 F; 24 V |
Ye et al., 2013 | n = 1412 Puerto Rican adults 45–75 years old | FFQ | 1 year | 27 F; 26 V |
Citation | Methods: Sample, Measurement Instrument; Timeframe/Frequency | Number of Items or Subgroups | Findings |
---|---|---|---|
Almeida-de-Souza et al., 2018 | n = 412 adolescents, mean age 14.4 years, 52% girls; Portugal Measurement: semiquantitative FFQ Timeframe: ≥once/month, past year | 12 F items 15 V items | No inflammation marker differences by F variety; highest tertile of V variety had overall low-grade inflammation; independent of quantity |
Azadbakht et al., 2013 | n = 411 Isfahanian women 12–28 years Measurement: semiquantitative FFQ Timeframe: previous year | 2 F subgroups 7 V subgroups | Women consuming breakfast had higher F, V dietary diversity scores |
Azadbakht et al., 2012 | n = 289 Isfahanian women 12–28 years Measurement: semiquantitative FFQ Timeframe: previous year | 2 F subgroups 7 V subgroups | Top tertile of energy density had lowest F, V diversity scores; top tertile of DDS had highest V, F diversity scores |
Azadbakht et al., 2005 | n = 295 males 18 and older, 20% were 51 or older; Tehran, Iran Measurement: two 24 h recalls Timeframe: 2 days | 2 F subgroups 7 V subgroups | F variety correlated with vitamin C, associated with probability of vitamin A, vitamin C, potassium adequacy; V variety correlated with vitamin A, potassium, vitamin C adequacy |
Azupogo et al., 2018 | n = 187 women age 15–49; rural Ghana Measurement: semiquantitative FFQ Timeframe: past month | 27 V items | Increasing trend across VVS tertiles for HRQoL, physical, mental health, physical functioning; significant trend between mental health domain, VVS; higher mental health scores in highest VVS tertile |
Bonaccio et al., 2018 | n = 10,812 adults ≥35 years; Southern Italy Measure: EPIC FFQ Timeframe: once/2 weeks, past year | 37 FV items | FV variety positively associated with psychological resilience |
Brunt et al., 2008 | n = 557 Canadian undergraduate students 18–56 years, 60% female; 75% 21 years old or younger Measure: 42 item DVQ Timeframe: past 3 days | 5 F items 5 V items | F variety was most limited food group (33% reported ≤1 daily servings); no significant V variety findings |
Brunt et al., 2008 | n = 585 college students 18–56 years Measure: 42-item DVQ Timeframe: past 3 days | 5 F items 5 V items 10 FV items | Students living on-campus consumed greater variety of F, V, and FV combined |
Burrows et al., 2016 | n = 25 competitive male rugby players 14–18 years old Measure: ARFS Timeframe: ≥once/week | F NR V NR | Authors state that results indicate need to increase variety within F and V groups |
Conklin et al., 2015 | n = 9580 adults over 50 years old in EPIC-Norfolk (England) Measure: semiquantitative FFQ Timeframe: past year | 11 F items 26 V items | Low social class, low education associated with low F, V variety; difficulty paying bills associated with lower F variety in women; combination of low economic resources, being non-married showed greater magnitude of association with F, V variety than social class, education, or paying bills; among women, low social class, difficulty paying bills; being non-married showed double association with lower V variety than for social class and difficulty paying bills |
Conrad et al., 2018 | n = 38,981 adults < 20 years old Measure: 24-h recall Timeframe: 24-h period | V NR | Inverse relationship of V variety with prevalent CHD; living with domestic partner associated with greater V variety, current smoking associated with lower V variety; V variety, amount positively associated; adults consuming dark leafy greens had lower odds of CVD, CHD |
de Deus Mendonça et al., 2019 | n = 3414 adults, older adults; Brazil Measure: Questionnaire (QBrief-F&V) Timeframe: previous 6 months | 14 F items 22 V items FV NR | Average of only 2 types FV consumed per day, daily average of 5 servings; authors indicate greater commercial F variety would increase consumption diversity |
Giskes et al., 2002 | n = 654 13–17 years old; n = 7695 18–64 year olds; Australia Measure: 24-h dietary recall Timeframe: 24-h period | F NR V NR | The relationship between income and FV variety only significant among adults. Lower-income adults consumed less FV variety than higher-income. |
Henry et al., 2006 | n = 420 low-income, African American mothers aged 18–45 with children < 12 years; St. Paul/Minneapolis, MN; US Measure: FFQ Timeframe: past 4 weeks | 20 F items 23 V items | FV variety consumed was higher for women in later stages of change and with higher FV intake |
McCrory et al., 1999 | n = 71 healthy adults 20–80 years old; New England, US Measure: FFQ Timeframe: past 6 months | 10 F items 14 V items | V variety was negatively associated with body fatness |
Mirmiran et al., 2006 | n = 286 Tehranian women 18–80 years old Measure: 2 24-h dietary recalls Timeframe: 2 days | 2 F subgroups 7 V subgroups | F diversity correlated with vitamin C; F diversity associated with probability of vitamin A, vitamin C, potassium adequacy; V diversity correlated with vitamin A, potassium, vitamin C adequacy |
Nour et al., 2017 | n = 2397 ages 18–34 years old; Australia Measures: 24-h dietary recall Timeframe: 24-h period | 6 F subgroups 6 V subgroups | No differences in F variety (consuming ≥2 categories) by age or gender; 18–24 year olds had the lowest V variety, no gender differences; less than ¼ of surveyed reported 3–4 different V |
Ramsay et al., 2017 | n = 2595 children 2–5 years old; 48% male; 55% non-Hispanic white; US. Measure: 24-h dietary recalls Timeframe: 24-h period | 3 F subgroups 4 V subgroups | Higher F, V variety scores associated with better dietary quality scores for total F, total V, empty calories subscales; greater differences among those consuming ≥5 different FV. |
Robinson et al., 2015 | n = 66 families with children 8–12 years; New South Wales, Australia Measure: 70-item ARFS Timeframe: NR for ARFS | F NR V NR | F variety intake was most strongly correlated in both parent-child dyads |
Tichenor et al., 2015 | n = 275,864 adults Measure: BRFSS FV questions Timeframe: ≥once/week, previous year | 2 F items 4 V items | Less than half of adults consumed F, all V subgroups ≤ once/week. Likelihood of meeting FV variety varied by race/ethnicity, region (p < 0.05). |
Torheim et al., 2004 | n = 502 women 15–45 years old; Western Mali Measure: QFFQ Timeframe: 7 days | F NR V NR | High correlation between MAR and food group variety score for V |
Vossenaar et al., 2010 | n = 355 children 8–10 years old; Guatemala Measure: 24-h dietary recall Timeframe: 24-h period | 69 FV items | Study sample was not meeting FV variety recommendations |
Ye et al., 2013 | n = 1412 Puerto Rican adults 45–75 years old Measure: semiquantitative FFQ Timeframe: ≥once/month, past year | 27 F items 26 V items | Greater FV variety (but not total quantity) associated with higher global cognitive function, executive function, memory, attention scores |
Citation | Methods | Number of FV Items/Subgroups, Specifics where Possible | Findings |
---|---|---|---|
Bhupathiraju et al., 2013 | Design: prospective cohort study | 11 F items: NR 19 V items: NR | Higher FV intake associated with healthy baseline lifestyle characteristics: higher FV variety scores; higher quantity-adjusted variety scores associated with less smoking, more physically active, higher FV intake. No significant associations found among quantity adjusted FV variety scores and CHD risk. |
n = 71,141 women and 42,135 men | |||
Measure: Semiquantitative FFQ | |||
Timeframe: ≥once per week, average daily intake calculated | |||
Buchner et al., 2010 | Design: ongoing multicenter prospective cohort study | 14 F items: NR 8 V subgroups: leafy V; fruiting V; root V; cabbages; mushrooms; grain and pod V; onion and garlic; stalk V 40 FV items: NR 26 V products: NR | V variety inversely associated with lung cancer risk among current smokers; increasing F or V associated with reduced risk of squamous cell carcinomas; independent of quantity, FV variety may decrease lung cancer risk |
n = 452187 adult participants; 10 European countries | |||
Measure varied by country | |||
Timeframe: ≥once per 2 weeks over past 12 months | |||
Buchner et al., 2011 | Design: ongoing multicenter prospective cohort study | 14 F items: NR 8 V subgroups: NR 40 FV items: NR 26 V products: NR | No clear association between FV variety consumption and bladder cancer risk; Highest tertile of DDS of FV consumption had marginally significant hazard ratio as compared with lowest (HR = 1.30, 95% CI: 1.00–1.69, p-trend = 0.05); individuals consuming higher FV variety were more often women, higher educated, more likely to consume alcohol, more often never smokers, had lower BMIs, and had higher FV consumption |
n = 452,185 adult participants; 10 European countries | |||
Measure varied by country | |||
Timeframe: ≥once per 2 weeks over past 12 months | |||
Chou et al., 2019 | Design: prospective cohort | F: NR V: NR 5 V subgroups: spinach and broccoli; other dark-green V; red and orange V; starchy V; other V | Quantity-adjusted V variety not significantly associated with risk of cognitive decline. However, high diet quality was associated with lower risk of global cognitive decline among elders with high V variety. |
n = 436 elders in Taipei | |||
Measure: Semiquantitative FFQ | |||
Timeframe: intake over previous year | |||
Cooper et al., 2012 | Design: prospective case-cohort | 58 F items: NR 59 V items: NR 117 FV items: sum of FV; NR | Greater F variety (0.70 (0.53–0.91)), greater V variety (0.77 (0.61–0.98)), combined FV (0.61 (0.48–0.78)) associated with lower hazard of type 2 diabetes |
n = 3704; 653 diabetes cases nested within EPIC and Nutrition-Norfolk; England; age NR | |||
Measure: 7-day prospective food diaries | |||
Timeframe: 7 days | |||
Estaquio et al., 2008 | Design: part of larger 8-year prospective study | 9 F subgroups: apple, pear, other pome F; citrus F; grapes; berries; stone fruits; melon; banana; other tropical F; F juices 10 V subgroups: green salads; leafy V; fruits used as V; root V; green beans, peas; bulb, stem V; flowering V; mushrooms; sprouts; V juices | V variety, education significantly positively related in both men and women; F variety positively associated with education, occupation in men; FV variety scores similar in both sexes; F variety associated with more healthful lifestyle including nonsmoking in men and women, regular physical activity and low alcohol consumption in men; V variety inversely associated with smoking in men |
n = 4282 French men and women aged 45–62 years | |||
Measure: repeated 24-h dietary recalls over 2 years; used telephone/software assistance system | |||
Timeframe: multiple 24-h periods averaged | |||
Jansen et al., 2004 | Design: prospective cohort | 7 F types: strawberries; berries; grapes; peaches; cherries; prunes; apricots 27 V types: NR | After excluding first 2 years of followup, F variety associated with reduced cancer risk; V variety but not quantity, inversely associated with total cancer and non-lung epithelial cancer |
n = 730 Dutch men aged 65–84 years for 10 years | |||
Measure: FFQ | |||
Timeframe: Past month | |||
Ko et al., 2013 | Design: cohort | 12 F items: NR 25 V items: NR | Dose-response trend for association between low risk of breast cancer and high intake of V; (p trend = 0.036); authors posit that inability to separate out cruciferous V from V variety may have diluted impact of V variety |
n = 2271 subjects (KOHBRA Study); mean age at study entry 42.5 ± 11.5 years (BRCA carriers), 41.9 ± 10.2 (non-BRCA carriers) | |||
Measure: FFQ | |||
Timeframe: ≥once per week in year before study | |||
Leenders et al., 2015 | Design: ongoing multicenter prospective cohort study | FV DDS: 49 items (NR) F DDS: 16 items including berries; citrus F; grapes; hard F; stone F V DDS: 33 items including cabbages; fruiting V; grain and pod V; leafy V; mushrooms; onion and garlic; root V; stalk V V subtype DDS: 8 subtypes | Higher FV variety associated with higher absolute consumption of FV. Higher self-reported FV consumption associated with lower risk of colon cancer (HR Q4 vs Q1 0.87, 95%CI 0.75-2.02, p for trend 0.02). No association found between FV variety and risk of developing colon cancer. Increased risk of rectal cancer with higher F variety. |
n = 521,488 adult participants; 10 European countries | |||
Measure varied by country | |||
Timeframe: ≥once per 2 weeks over past 12 months | |||
Oude Griep et al., 2012 | Design: prospective population-based cohort study | 9 F items: NR 13 V items: NR 22 FV items: NR | F, V variety not related to incident CHD or stroke. Participants consuming greater FV variety were more often women, higher levels of education, less likely to smoke, more likely to be physically active. Strong correlations between variety and total FV intake (Spearman’s r = −0.81, p < 0.0001) and F intake (Spearman’s r = 0.72, p < 0.001). Positive association of variety with vitamin C, carotenoids, flavonoids, and dietary fiber intake. |
n = 20069 (8988 men, 11,081 women); Dutch | |||
Measure: FFQ | |||
Timeframe: ≥once per two weeks in previous year |
Citation | Methods | Number of FV Items/Subgroups | Findings |
---|---|---|---|
Ghadirian et al., 2009 | Design: case-only, breast cancer | VF, number, specific items NR | Strong significant interaction between BRCA mutations and VF diversity between upper and lower quartiles |
n = 739 women in original cohort; mean age 50.5 ± 10.2 years for BRCA carriers, 53.4 ± 7.7 for non-BRCA carriers | |||
Measure: interviewer administered FFQ | |||
Timeframe: ≥once per week in year prior to diagnosis or enrollment for matched controls | |||
McCann et al., 1994 | Design: case-control | 38 F items; specific items NR | Female cases had slightly higher (non-significant) F diversity than controls; for both men and women, F diversity was positively associated w V diversity; among women, F diversity strongly related to meat diversity—trends in risk associated w F diversity among women not statistically significant, all models suggested F diversity to be risk elevating rather than protective; female cases had lower V diversity than controls (p < 0.05) |
n = 428 adults, (205 men, 223 women), colon cancer cases; all Caucasian; 3 counties in Western New York | |||
Measure: 2.5 h in-person interview including FF instrument | 20 V items; specific items NR | ||
Timeframe: 12 months preceding diagnosis, or preceding interview for controls | |||
Randall et al., 1989 | Design: case-control | F; number, specific items NR | Total, F, and V diversity scores associated with fiber, vitamin A, and vitamin C intake. |
n = 428 adults, (205 men, 223 women), colon cancer control subjects; Western New York | V, number, specific items NR | ||
Measure: 2.5 h in-person interview including FF instrument | |||
Timeframe: >once per month over past 12 months |
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Marshall, A.N.; van den Berg, A.; Ranjit, N.; Hoelscher, D.M. A Scoping Review of the Operationalization of Fruit and Vegetable Variety. Nutrients 2020, 12, 2868. https://doi.org/10.3390/nu12092868
Marshall AN, van den Berg A, Ranjit N, Hoelscher DM. A Scoping Review of the Operationalization of Fruit and Vegetable Variety. Nutrients. 2020; 12(9):2868. https://doi.org/10.3390/nu12092868
Chicago/Turabian StyleMarshall, Allison N., Alexandra van den Berg, Nalini Ranjit, and Deanna M. Hoelscher. 2020. "A Scoping Review of the Operationalization of Fruit and Vegetable Variety" Nutrients 12, no. 9: 2868. https://doi.org/10.3390/nu12092868
APA StyleMarshall, A. N., van den Berg, A., Ranjit, N., & Hoelscher, D. M. (2020). A Scoping Review of the Operationalization of Fruit and Vegetable Variety. Nutrients, 12(9), 2868. https://doi.org/10.3390/nu12092868