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. 2021 Aug 6;18(16):8335. doi: 10.3390/ijerph18168335

Table 2.

Studies that evaluated the food and/or nutrition literacy of U.S. adults, including SNAP adults, 2006–2021.

Lead Author, Year Study
Objective
Study
Location
Study
Population
Race/Ethnicity of Study
Population
Study
Design
Outcomes Measured
Cognitive (C); Behavioral (B); Food Security (FS);
Health Status (H)
Major Finding
Amuta-Jimenez et al., 2018 [55] Assess differences between food label literacy and other factors between
respondents.
National U.S. adults
(n = 3185) with cancer sub-population
(n = 459);
(F = 280; M = 168)
African American (n = 36); Asian (n = 7); Caucasian (n = 285); Hispanic (n = 37); Other (n = 9) Cross-sectional study C: Food label literacy; confidence in ability to take care of self.
B: Food label use; menu use; dietary intake; health information seeking behavior; participation in cancer support group.
FS: Not measured.
H: Body mass index (BMI).
Food label use associated with better quality diets.
Chang et al., 2017 [56] Evaluate relationship between nutrition literacy and food insecurity in SNAP participants. National (house-hold visits with telephone follow up) U.S. households (n = 4158) with SNAP household sub-population (n = 1342 weighted) Black
(n = 349); Hispanic
(n = 318); White
(n = 859); Other
(n = 148)
Cross-sectional study C: Knowledge of U.S. nutrition guidelines.
B: Food label use; nutrition guideline use; conscientious or frugal buying;
financial management practices.
FS: Household-level food security.
H: Not measured.
SNAP participants face unique financial challenges.
Coffman et al., 2012 [57] Test the Spanish Nutrition Literacy Scale and assess relationship
between literacy and overweight/obesity.
Southeast US city Spanish-speaking U.S. adults
(n = 131);
(F = 103;
M = 28)
Hispanic
(n = 131)
Cross-sectional study C: Nutrition literacy; health literacy.
B: Not measured.
FS: Not measured.
H: BMI (overweight and obesity).
Nutrition literacy scores were lower in overweight or obese respondents.
Gibbs et al., 2016 [58] Test the Nutrition Literacy
Assessment for Parents tool and relationships among parental nutrition
literacy, parent, and child BMI and child diet
quality.
Kansas City Metropolitan Area English-speaking U.S. adults in parent-child dyads
(n = 101);
(F = 86; M = 15)
SNAP households
(n = 25)
Black (n = 24); Hispanic (n = 6); White (n = 70); American Indian or Alaskan Native (n = 1) Cross-sectional study C: Nutrition literacy by health literacy and
nutrition knowledge.
B: Dietary intake and quality (parent and child).
FS: Not measured.
H: BMI (parent and child).
Parental nutrition literacy is a significant predictor of child diet quality.
Grutzmacher et al., 2020 [59] Examine numeracy skills and Nutrition Fact Label skills in classifying health literacy and NVS performance. Maryland SNAP-eligible adults
(n = 144);
(F = 110;
M = 34)
Racial and ethnic data not reported. Cross-sectional study C: Health literacy;
nutrition literacy.
B: Not measured.
FS: Not measured.
H: Not measured.
The NVS literacy tool appears to measure many skills and constructs simultaneously.
Jay et al., 2009 [60] Test multimedia intervention to improve food
label comprehension in low-income
patients with chronic health conditions.
New York City U.S. English-speaking adult patients with chronic health conditions
(n = 42);
(F = 34; M = 8)
Asian (n = 5); African American
(n = 11); Caucasian
(n = 6); Hispanic
(n = 16); Other (n = 2)
Random-ized Interven-tion trial
C: Food label exposure; confidence interpreting knowledge; health
literacy.
B: Not measured.
FS: Not measured.
H: Health status measured at baseline but not at post-test.
A multimedia intervention can improve short-term food label comprehension in patients with adequate health literacy.
Jones and
Adkins 2021 [61]
Examine
associations
between
nutrition
literacy and
food selections in school-based food pantry.
Indiana U.S. adult users of a school food pantry
(n = 61);
(F = 41;
M = 20)
African American
(n = 12); Caucasian
(n = 31); Hispanic
(n = 2);
Other (n = 16)
Cross-sectional study C: Nutrition literacy and preferences.
B: Food selection at a food pantry.
FS: Household-level and child food security.
H: Not measured.
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 [62] Assess and
compare
nutrition literacy and food
insecurity in
college students.
Texas
(3 college campuses)
U.S. adult college students
(n = 672);
(F = 527;
M = 69)
SNAP enrolled (n = 14)
Asian
(n = 96);
Black (n = 90); Hispanic
(n = 111); White
(n = 324)
Cross-sectional study C: Nutrition literacy.
B: Not measured.
FS: Individual-level food security.
H: Not measured.
Among students with adequate nutrition literacy, a greater proportion were food secure.
Parekh et al., 2018 [63] 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
(n = 59)
Asian (n = 3); American Indian/Alaskan Native
(n = 2);
Black (n = 13); White
(n = 40); Other (n = 1)
Random-ized Interven-tion Trial
C: Nutrition literacy; health literacy.
B: Fruit and vegetable, alcohol, and high fiber food intake.
FS: Not measured.
H: Height; weight.
The workshop interventions were found to be promising and scalable.
Persoskie et al., 2017 [64] Assess Nutrition Facts label
understanding and
associations by diet and
demographics.
National U.S. adults
(n = 3815)
Nationally representative
(F = 1893;
M = 1190)
Black
(n = 335); Hispanic
(n = 478); White
(n = 2140); Other
(n = 232)
Cross-sectional study
C: Health literacy.
B: Sugar sweetened beverages, fruit, and vegetable intake.
FS: Not measured.
H: Not measured.
Even with revised or simplified Nutrition Facts label, ability to make calculations was a barrier to greater health literacy.
Rhea et al., 2020 [65] Test multi-
factorial
nutrition
education skill building
program for
veterinary
medical students to improve food literacy scores.
Louisiana U.S. adult college veterinary and non-veterinary students
(n = 37);
(F = 31;
M = 6)
Asian
(n = 6);
Black (n = 5); Hispanic
(n = 1);
White
(n = 25)
Four-week interven-tion trial C: Knowledge and awareness of nutritious foods; food preferences.
B: Reads nutrition information before purchase, food selection, food preparation, menu planning, practice
cooking skills.
FS: Not measured.
H: Not measured.
The intervention raised student awareness and increased behaviors to select, prepare, and eat healthy food.
Rosenbaum et al., 2018 [66] 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
or
obesity
(n = 320);
(F = 250;
M = 70)
Black
(n = 80); White
(n = 224); Other
(n = 16)
Secondary data analysis of a six-month behavioral weight loss interven-tion C: Nutrition literacy.
B: Food record completion, food record quality, meeting attendance, self-monitoring.
FS: Not measured.
H: Weight loss at six months.
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 [67] Patient comprehension of
nutrition labels and relationship of label
understanding to patient or
demographic characteristics, literacy, and
numeracy skills.
TN U.S. primary health care patient adults (n = 200)
(F = 143;
M = 57)
Black
(n = 50); White
(n = 134); Other
(n = 16)
Cross-sectional study C: Nutrition label comprehension, reading, and numeracy skills.
B: Food label use and frequency; diet
plan use.
FS: Not measured.
H: Chronic disease status; BMI.
Poor nutrition label comprehension was highly correlated with low literacy and low numeracy skills.
Speirs et al., 2012 [68] Assess
demographic
characteristics and the
relationship
between health
literacy and
nutrition
behaviors.
Maryland SNAP-eligible adults
(n = 142);
(F = 108;
M = 34)
African American
(n = 75); White
(n = 50); Other (n = 17)
Cross-sectional survey C: Health literacy.
B: Fruit and vegetable intake; consumption of healthy foods.
FS: Not measured.
H: Not measured.
Strong relationship between adequate health literacy and healthy consumption behaviors was not found.
Taylor et al., 2019 [69] Describe the
relationship
between adherence to distinct dietary
patterns and
nutrition
literacy.
Kansas City Metropolitan Area U.S. adults
(n = 386) with diabetes, hypertension, hyperlipid-emia, and/or overweight or obesity;
(F = 274;
M = 112)
African American
(n = 131); White
(n = 233); Hispanic
(n = 36); Other (n = 46)
Cross-sectional study C: Nutrition literacy.
B: Food intake and practices.
FS: Not measured.
H: Not measured.
Nutrition literacy predicted diet quality and diet patterns.
Tucker et al., 2019 [70] Examine results from a culturally sensitive, church-based health
promotion
intervention among Black adults.
Florida U.S. adult church congregants
(n = 321);
(F = 208;
M = 51;
no sex reported;
n = 62)
Black
(n = 321)
Random-ized control trial
(pre-post interven-tion)
C: Nutrition label literacy.
B: Using health promoting behaviors (i.e., healthy eating, healthy drinking, physical activity).
FS: Not measured.
H: Weight, blood pressure.
Intervention group had significantly greater increases in nutrition label literacy and health behaviors than the control group.
Zoellner et al., 2009 [71] Examine the
nutrition literacy status and
preferred
nutrition communication channels of adults.
Lower MS Delta Region U.S. adults
(n = 177);
(F = 124;
M = 53)
African American
(n = 144); White (n = 33)
Cross-
sectional study
C: Awareness and exposure to nutrition and health information and communication channels; nutrition literacy.
B: Media use for health, food and diet information.
FS: Not measured.
H: BMI.
Results suggest an association between nutrition-seeking behaviors and nutrition literacy.
Zoellner et al., 2011 [72] Evaluate health literacy, diet quality, and sugar-sweetened beverage intake while accounting for demographic variables. Lower MS Delta Region U.S. adults
(n = 376);
(F = 287;
M = 89)
SNAP-enrolled
(n = 103)
African American
(n = 254); non-Hispanic White
(n = 116); Other (n = 6)
Cross-sectional study C: Health literacy.
B: Dietary intake, diet quality (using the Healthy Eating Index), sugary beverage intake.
FS: Not measured.
H: BMI.
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).