| Literature DB >> 34444084 |
Katherine Consavage Stanley1, Paige B Harrigan1, Elena L Serrano1,2, Vivica I Kraak1.
Abstract
The United States (U.S.) Department of Agriculture (USDA)-administered Supplemental Nutrition Assistance Program (SNAP) made substantial changes in response to the coronavirus disease 2019 (COVID-19) pandemic. These changes highlight the need to identify the digital literacy skills and capacities of SNAP adults to purchase healthy groceries online. We conducted a scoping review of four electronic databases, Google and Google Scholar to identify studies that measured food and nutrition literacy outcomes for U.S. adults. We applied a multi-dimensional digital food and nutrition literacy (MDFNL) model to assess six literacy levels and components. Of 18 studies published from 2006-2021, all measured functional and interactive literacy but no study measured communicative, critical, translational, or digital literacy. Six studies examined SNAP or SNAP-Education outcomes. Adults with higher food or nutrition literacy scores had better cognitive, behavioral, food security and health outcomes. We suggest how these findings may inform research, policies, and actions to strengthen the multi-dimensional literacy skills of SNAP participants and SNAP-eligible adults to support healthy purchases in the online food retail ecosystem.Entities:
Keywords: COVID-19; SNAP; digital literacy; federal nutrition assistance; food literacy; food retail environment; nutrition literacy; online food retail; online shopping; policy
Mesh:
Year: 2021 PMID: 34444084 PMCID: PMC8394533 DOI: 10.3390/ijerph18168335
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Multi-dimensional Digital Food and Nutrition Literacy (MDFNL) model to support SNAP adults to make healthy purchases in an online food retail ecosystem [49].
The PICOTS framework used to identify relevant food and nutrition literacy studies.
| PICOTS | Inclusion | Exclusion |
|---|---|---|
| Population |
U.S. adults (ages 18 years and older); and/or |
Non-U.S. populations |
|
SNAP participants or SNAP-eligible adults |
Children and adolescents | |
| Intervention/Exposure |
Nutrition or food literacy measured with specific tool; or Measurement of a food- or nutrition-relevant behavior, such as reading a nutrition label, for which there was a clear link to nutrition or food literacy. | Studies for which the main goal was to develop, assess or confirm the validity or reliability of a specific nutrition or food literacy assessment tool, unless the target population was SNAP adults. |
| Comparison | Control populations | No comparative population |
| Outcomes | One or more cognitive, behavioral, food security, or health status outcomes linked to food and/or nutrition literacy, including: | No outcomes relevant to food and/or nutrition literacy reported. |
| Time | Sources published from inception to 18 January 2021 | Sources published after 18 January 2021 |
| Setting/Study Design | Observational, cross-sectional, or intervention studies |
Review articles Commentaries or editorials Poster presentations or abstracts Academic theses or dissertations |
United States (U.S.); Supplemental Nutrition Assistance Program (SNAP).
Figure 2PRISMA flow diagram for the scoping review of studies that evaluated the food and/or nutrition literacy capacities and skills of U.S. adults.
Studies that evaluated the food and/or nutrition literacy of U.S. adults, including SNAP adults, 2006–2021.
| Lead Author, Year | Study | Study | Study | Race/Ethnicity of Study | Study | Outcomes Measured | Major Finding |
|---|---|---|---|---|---|---|---|
| Amuta-Jimenez et al., 2018 [ | Assess differences between food label literacy and other factors between | National | U.S. adults | African American ( | Cross-sectional study | C: Food label literacy; confidence in ability to take care of self. | Food label use associated with better quality diets. |
| Chang et al., 2017 [ | Evaluate relationship between nutrition literacy and food insecurity in SNAP participants. | National (house-hold visits with telephone follow up) | U.S. households ( | Black | Cross-sectional study | C: Knowledge of U.S. nutrition guidelines. | SNAP participants face unique financial challenges. |
| Coffman et al., 2012 [ | Test the Spanish Nutrition Literacy Scale and assess relationship | Southeast US city | Spanish-speaking U.S. adults | Hispanic | Cross-sectional study | C: Nutrition literacy; health literacy. | Nutrition literacy scores were lower in overweight or obese respondents. |
| Gibbs et al., 2016 [ | Test the Nutrition Literacy | Kansas City Metropolitan Area | English-speaking U.S. adults in parent-child dyads | Black ( | Cross-sectional study | C: Nutrition literacy by health literacy and | Parental nutrition literacy is a significant predictor of child diet quality. |
| Grutzmacher et al., 2020 [ | Examine numeracy skills and Nutrition Fact Label skills in classifying health literacy and NVS performance. | Maryland | SNAP-eligible adults | Racial and ethnic data not reported. | Cross-sectional study | C: Health literacy; | The NVS literacy tool appears to measure many skills and constructs simultaneously. |
| Jay et al., 2009 [ | Test multimedia intervention to improve food | New York City | U.S. English-speaking adult patients with chronic health conditions | Asian ( | Random-ized Interven-tion trial | C: Food label exposure; confidence interpreting knowledge; health | A multimedia intervention can improve short-term food label comprehension in patients with adequate health literacy. |
| Jones and | Examine | Indiana | U.S. adult users of a school food pantry | African American | Cross-sectional study | C: Nutrition literacy and preferences. | Higher adult nutrition literacy was associated with a selection of a more diverse set of food items in a school-based food pantry. |
| Moore et al., 2020 [ | Assess and | Texas | U.S. adult college students | Asian | Cross-sectional study | C: Nutrition literacy. | Among students with adequate nutrition literacy, a greater proportion were food secure. |
| Parekh et al., 2018 [ | Feasibility of nutrition education workshops for cancer survivors to inform the design of a multi-center intervention. | New York City | U.S. adult female English-speaking breast cancer patients post-treatment | Asian ( | Random-ized Interven-tion Trial | C: Nutrition literacy; health literacy. | The workshop interventions were found to be promising and scalable. |
| Persoskie et al., 2017 [ | Assess Nutrition Facts label | National | U.S. adults | Black | Cross-sectional study | C: Health literacy. | Even with revised or simplified Nutrition Facts label, ability to make calculations was a barrier to greater health literacy. |
| Rhea et al., 2020 [ | Test multi- | Louisiana | U.S. adult college veterinary and non-veterinary students | Asian | Four-week interven-tion trial | C: Knowledge and awareness of nutritious foods; food preferences. | The intervention raised student awareness and increased behaviors to select, prepare, and eat healthy food. |
| Rosenbaum et al., 2018 [ | Identify correlates of nutrition literacy; whether nutrition literacy predicted weight loss, food record completion and quality, and session attendance; and associations of race and education. | Mid-Atlantic Metropo-litan Area | U.S. adults with overweight | Black | Secondary data analysis of a six-month behavioral weight loss interven-tion | C: Nutrition literacy. | Lower nutrition literacy was associated with less weight loss in program participants. Nutrition literacy was lower for Black participants and those with less education. |
| Roth-man et al., 2006 [ | Patient comprehension of | TN | U.S. primary health care patient adults ( | Black | Cross-sectional study | C: Nutrition label comprehension, reading, and numeracy skills. | Poor nutrition label comprehension was highly correlated with low literacy and low numeracy skills. |
| Speirs et al., 2012 [ | Assess | Maryland | SNAP-eligible adults | African American | Cross-sectional survey | C: Health literacy. | Strong relationship between adequate health literacy and healthy consumption behaviors was not found. |
| Taylor et al., 2019 [ | Describe the | Kansas City Metropolitan Area | U.S. adults | African American | Cross-sectional study | C: Nutrition literacy. | Nutrition literacy predicted diet quality and diet patterns. |
| Tucker et al., 2019 [ | Examine results from a culturally sensitive, church-based health | Florida | U.S. adult church congregants | Black | Random-ized control trial | C: Nutrition label literacy. | Intervention group had significantly greater increases in nutrition label literacy and health behaviors than the control group. |
| Zoellner et al., 2009 [ | Examine the | Lower MS Delta Region | U.S. adults | African American | Cross- | C: Awareness and exposure to nutrition and health information and communication channels; nutrition literacy. | Results suggest an association between nutrition-seeking behaviors and nutrition literacy. |
| Zoellner et al., 2011 [ | Evaluate health literacy, diet quality, and sugar-sweetened beverage intake while accounting for demographic variables. | Lower MS Delta Region | U.S. adults | African American | Cross-sectional study | C: Health literacy. | Better understanding of limited health literacy needed to improve practices. |
Cognitive (C); Behavioral (B); Food Security (FS); Health Status (HS); United States (U.S.); female (F); male (M); Body mass index (BMI); Mississippi (MS); Supplemental Nutrition Assistance Program (SNAP); Tennessee (TN); U.S. Department of Agriculture (USDA).
Literacy measurements and tools used in the 18 studies reviewed.
| Lead Author, Year | Type of | Literacy Tool Used | Literacy Skills and Capacities Measured | Literacy Proficiency Measured (Based on MDFNL Model) |
|---|---|---|---|---|
| Amuta-Jimenez et al., 2018 [ | Food label literacy | Modified Newest Vital Sign (NVS) Health Literacy Screener via Health Information National Trends Survey (mailed) | Ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value; use of calorie labels on menu. | Functional, |
| Chang et al., 2017 [ | Nutrition literacy | USDA’s National Household Food Acquisition and Purchase Survey | Knowledge of U.S. nutrition guidelines (MyPlate and MyPyramid); try to follow nutrition guideline recommendations; use of nutrition facts panel on food products. | Functional, |
| Coffman et al., 2012 [ | Nutrition literacy; health literacy | Spanish Nutrition Literacy Scale; | Ability to correctly fill in blanks for food and diet recommendations and health implication statements; ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, |
| Gibbs et al., 2016 [ | Nutrition literacy | Modified Nutrition Literacy Assessment Instrument | Ability to categorize foods based on dietary | Functional, Interactive |
| Grutzmacher | Health literacy | Original and modified NVS Health Literacy Screener | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, Interactive |
| Jay et al., 2009 [ | Food label use and understand-ing | Short Test of Functional Health Literacy in Adults | Ability to interpret serving size, fat and nutrient levels, and percent daily values from food labels and compare across labels; | Functional, Interactive |
| Jones and | Nutrition literacy | Nutrition Literacy Assessment Instrument | Ability to categorize foods based on dietary recommendations; ability to group foods; knowledge of macronutrients; ability to estimate portion size; ability to read food label and make calculations. | Functional, Interactive |
| Moore et al., 2020 [ | Nutrition literacy | Modified Nutrition Literacy Assessment Instrument | Ability to answer nutrition questions about energy sources (proteins, carbohydrates, and fats). | Functional, Interactive |
| Parekh et al., 2018 [ | Nutrition literacy; health literacy | NVS Health Literacy Screener; | Ability to categorize foods based on dietary | Functional, Interactive |
| Persoskie et al., 2017 [ | Health literacy | NVS Health Literacy Screener, shortened version (mailed) | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, Interactive |
| Rhea et al., 2020 [ | Food literacy | Eating and Food Literacy Behaviors Questionnaire (pre/post program) | Self-reported purchase and consumption of healthy foods and balanced meals; meal preparation and planning behaviors; use of nutrition information before purchase; use of recipes when preparing meals; food | Functional, Interactive |
| Rosenbaum et al., 2018 [ | Nutrition literacy | NVS Health Literacy Screener at baseline | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, Interactive |
| Rothman et al. 2006 [ | Health literacy | Nutrition Label Survey; | Ability to read food label; ability to use food label to calculate various quantities and values, such as nutrient content; ability to compare nutrient contents between two food items. | Functional, Interactive |
| Speirs et al., 2012 [ | Health literacy | NVS Health Literacy Screener | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, Interactive |
| Taylor et al., 2019 [ | Nutrition literacy | Nutrition Literacy Assessment Instrument | Ability to categorize foods based on dietary recommendations; ability to group foods; knowledge of macronutrients; ability to estimate portion size; ability to read food label and make calculations. | Functional, Interactive |
| Tucker et al., 2019 [ | Nutrition label health literacy | NVS Health Literacy Screener | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, Interactive |
| Zoellner et al., 2009 [ | Nutrition literacy | NVS Health Literacy Screener; | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value; use of communication channels for nutrition, food, or diet information; awareness and self-reported knowledge of national dietary guidelines. | Functional, Interactive |
| Zoellner et al., 2011 [ | Health literacy | NVS Health Literacy Screener | Ability to read food label and ingredients; ability to use food label to calculate calories, specific nutrients, fat intake, and percent daily value. | Functional, Interactive |
Newest Vital Sign (NVS).
Recommended policies and actions for U.S. government agencies and other stakeholders to improve the policies, systems, and environments that support Americans’ digital food and nutrition literacy, access and safety.
| Stakeholder | Recommended Policies and Actions |
|---|---|
| Government | Centers for Disease Control and Prevention Develop tools and resources for promoting food and nutrition literacy in schools. Develop national standards and resources for digital food and nutrition literacy for inclusion in U.S. schools’ curricula and for adult learners. Encourage community colleges and institutions of higher education to adopt curricula to support digital food and nutrition literacy for adults. |
| U.S. Department of Health and Human Services Add a research objective to Healthy People 2030 to increase digital food and nutrition literacy and proficiency of Americans similar to the health literacy objective. | |
| Food and Drug Administration Ensure that online retailers and manufacturers offer easy access to clear and readable Nutrition Facts labels, ingredient lists, and nutrition information to enable consumers to make informed food and beverage purchases online. | |
| Federal Trade Commission Examine the marketing practices of online grocery retailers and third-party partners to develop regulatory guidance for the use of automated AI or machine learning that collects and shares customers’ personal information and purchasing patterns. Update regulatory guidance for influencer endorsements, commercial sponsorships, misleading or deceptive advertising, and nutrition misinformation on social media platforms that may target SNAP recipients. | |
| Other | Private Foundations, Academic Researchers, Professional Societies and Civil Develop a comprehensive tool to measure Americans’ digital food and nutrition literacy skills. Support and conduct external evaluations and research on food and nutrition literacy strategies and interventions. Develop policy and practice position statements for members to address digital health, food and nutrition literacy, and digital equity and inclusion comprehensively for individuals and communities. |
Recommended policies and actions for U.S. Congress, USDA and other stakeholders to update SNAP and SNAP-Ed and improve SNAP adults’ digital food and nutrition literacy skills.
| Stakeholder | Recommended Policies and Actions |
|---|---|
| Government | U.S. Congress Authorize and appropriate adequate funding in the 2023 U.S. Farm Bill legislation to include digital food, nutrition, financial, and health literacy messages and interventions within SNAP and SNAP-Ed. |
| U.S. Department of Agriculture Support the development, testing, and validation of a common multi-dimensional digital food and nutrition literacy assessment tool for SNAP adults that includes digital technology skills through USDA’s National Institute of Food and Agriculture and Agriculture and Food and Nutrition Research Initiative funding. Incorporate digital, food, nutrition, financial, and marketing literacy skills training into SNAP-Ed and develop resources to support participants’ use of digital technology. Adopt the Center for Digital Democracy’s recommendations to better protect SNAP adults as they navigate the digital food retail ecosystem. Conduct a formal evaluation of the SNAP Online Purchasing Pilot program. | |
| Other | Private Foundations, Academic Researchers, Professional Societies and Civil Support the development, testing, and validation of a multi-dimensional digital food and nutrition literacy assessment tool for SNAP adults. Update personal data and geolocation disclosures to make them easier for SNAP adults to read and comprehend where and how their personal information is being used. |