| Literature DB >> 32050996 |
Mavra Ahmed1, Angela Oh1, Lana Vanderlee1,2, Beatriz Franco-Arellano1, Alyssa Schermel1, Wendy Lou3, Mary R L'Abbé4.
Abstract
BACKGROUND: Food labelling is a common intervention to improve diets, where the back-of-pack Nutrition Information Panel (or Nutrition Facts table (NFt)) provides comprehensive nutrition information on food packages. However, many consumers find it difficult and time-consuming to identify healthier foods using the NFt. As a result, different interpretative nutrition rating systems (INRS) may enable healthier food choices and it is essential that consumers have the tools to allow for easily accessible nutrition information. The objective of this study was to examine consumers' perceptions of different (INRS) for delivery of nutrition information using different versions of a smartphone app, FoodFlip©.Entities:
Keywords: Front-of-pack labelling; Interpretative nutrition rating system; Mobile health; Smartphone application
Year: 2020 PMID: 32050996 PMCID: PMC7017573 DOI: 10.1186/s12966-020-0923-1
Source DB: PubMed Journal: Int J Behav Nutr Phys Act ISSN: 1479-5868 Impact factor: 6.457
Fig. 1App screenshots of FoodFlip© for each of the interpretative nutrition rating system (INRS): a Traffic Light Label, b ‘High in’ Warning Label, c Star Rating and d No Front-of-Pack (Nutrition Facts table (NFt) (Control; without healthfulness comparison feature))
List of 20 food product types with varying levels of healthfulness (based on Food Standards of Australia and New Zealand nutrient profiling model criteria), that participants were asked to enter or scan into the smartphone app
| a. Jelly Sponge Cakes | |
| b. Lemon Iced Tea | |
| c. White Bread | |
| d. Ranch Dressing | |
| e. Frosted Flakes | |
| f. All Dressed Potato Chips | |
| g. Crunchy Granola Bars | |
| h. Hash Browns | |
| i. Mixed Vegetables | |
| j. Hot Dog Buns | |
| k. Hummus Chickpea Spread | |
| l. Peaches & Cream Corn | |
| m. Greek Yogurt | |
| n. Red Kidney Beans | |
| o. Popcorn | |
| p. Chocolate Chip Cookies | |
| q. Thin Crust Pizza | |
| r. Chocolate Ice Cream | |
| s. French Vanilla Stirred Yogurt | |
| t. Stix Cheese Flavour |
Fig. 2CONSORT diagram
Characteristics of Participants by App Intervention Group (Traffic Light Label, ‘High in’ Warning Label, Star Rating and Control (NFt))
| Characteristics | Traffic Light ( | High in Warning ( | Star Rating ( | Control (NFt) ( | |
|---|---|---|---|---|---|
| Number of participants who used the app in each condition | 475 (95%) | 478 (95%) | 480 (96%) | 474 (96%) | |
| Age (years) (mean (SD)) | 39 ± 13 | 39 ± 12 | 40 ± 13 | 40 ± 12 | 0.71 |
| Gender | |||||
| Male | 213 (45%) | 220 (46%) | 225 (47%) | 242 (51%) | 0.52 |
| Female | 261 (55%) | 257 (54%) | 255 (53%) | 231 (49%) | |
| Ethnicity | |||||
| White | 342 (72%) | 329 (69%) | 316 (66%) | 334 (70%) | 0.07 |
| Other | 132 (28%) | 141 (29%) | 153 (32%) | 130 (27%) | |
| Not stated | 1 (0.2%) | 8 (2%) | 11 (2%) | 10 (2%) | |
| Calculated BMI1 | |||||
| < 18.5 | 13 (3%) | 10 (2%) | 25 (5%) | 10 (2%) | 0.18 |
| 18.5 to 24.9 | 185 (42%) | 185 (42%) | 190 (42%) | 175 (39%) | |
| 25 to 29.9 | 123 (28%) | 133 (30%) | 134 (30%) | 147 (33%) | |
| > 29.9 | 123 (28%) | 120 (27%) | 100 (22%) | 115 (26%) | |
| Not stated | 31 (6%) | 30 (6%) | 31 (6%) | 29 (6%) | |
| Education | |||||
| Did not graduate high school | 12 (2.5%) | 5 (1%) | 7 (1.5%) | 11 (2%) | 0.54 |
| High school graduate certificate/equivalent | 79 (17%) | 75 (16%) | 87 (18%) | 67 (14%) | |
| Trades certificate/diploma | 22 (4%) | 30 (6%) | 20 (4%) | 24 (5%) | |
| Community/technical college or CEGEP | 123 (26%) | 124 (26%) | 127 (27%) | 122 (26%) | |
| University (undergraduate degree) | 168 (35%) | 189 (40%) | 184 (38%) | 180 (38%) | |
| Post-graduate degree (Master, PhD) | 70 (15%) | 54 (11%) | 54 (11%) | 68 (14%) | |
| Newest Vital Sign Score (max 6) | |||||
| Low (0–1) | 49 (10%) | 53 (11%) | 42 (8%) | 48 (10%) | 0.13 |
| Likely Low (2, 3) | 58 (12%) | 46 (10%) | 73 (15%) | 72 (15%) | |
| Adequate (4–6) | 367 (77%) | 378 (79%) | 364 (76%) | 354 (75%) | |
| Income | |||||
| Under $49,999 | 129 (27%) | 127 (27%) | 122 (25%) | 131 (28%) | 0.04 |
| $50,000 to $99,999 | 177 (37%) | 180 (38%) | 206 (43%) | 154 (32%) | |
| Over $100,000 | 132 (28%) | 129 (27%) | 120 (25%) | 161 (34%) | |
| Don’t know | 6 (1%) | 13 (3%) | 6 (1%) | 3 (0.6%) | |
| Refused | 31 (7%) | 29 (6%) | 26 (5%) | 25 (5%) | |
Data presented as n (%) unless otherwise indicated. There were no significant differences between intervention groups for age, gender, ethnicity, BMI, education, health literacy score (measured by newest vital sign) and income, where p < 0.01 was considered statistically significant. Body Mass Index1 (BMI) calculated from self-reported height and weight data provided by the participants where underweight (< 18.5), normal weight (18.5 to 24.9), overweight (25 to 29.9) and obese (> 29.9)
Consumers’ Perceptions of the FoodFlip© App Usability and Functionality
| 7-point Likert-scale statements | exp (B) | 95% Confidence Interval | |||
|---|---|---|---|---|---|
| Lower | Upper | ||||
| Usability1 | |||||
| The product search feature was easy to use | 0.58 | 0.90 | |||
| I liked the barcode scanner feature | 2.74 | 0.43 | |||
| Overall, I found the app easy to use | 4.17 | 0.24 | |||
| I found the app confusing | 2.25 | 0.52 | |||
| Functionality2 | |||||
| The app provided me with information that I can use | 18.12 | 0.00 | |||
| Traffic Light | 1.06 | 0.83 | 1.35 | 0.65 | |
| ‘High in’ Warning | 1.02 | 0.80 | 1.30 | 0.89 | |
| Star Ratings | 0.67 | 0.52 | 0.85 | 0.00 | |
| Control (NFt) | 1.00 | . | . | . | |
| I found the app to be believable | 21.51 | 0.00 | |||
| Traffic Light | 0.90 | 0.71 | 1.16 | 0.42 | |
| ‘High in’ Warning | 0.93 | 0.73 | 1.19 | 0.56 | |
| Star Ratings | 0.59 | 0.46 | 0.75 | 0.00 | |
| Control (NFt) | 1.00 | . | . | . | |
| Using the app helped me understand the nutrient levels in the food | 34.75 | 0.00 | |||
| Traffic Light | 1.07 | 0.84 | 1.37 | 0.58 | |
| ‘High in’ Warning | 0.78 | 0.61 | 1.00 | 0.05 | |
| Star Ratings | 0.55 | 0.44 | 0.71 | 0.00 | |
| Control (NFt) | 1.00 | . | . | . | |
| Using the app helped me to compare the healthiness between similar products | 19.78 | 0.00 | |||
| Traffic Light | 1.67 | 1.30 | 2.13 | 0.00 | |
| ‘High in’ Warning | 1.49 | 1.17 | 1.91 | 0.00 | |
| Star Ratings | 1.20 | 0.94 | 1.53 | 0.14 | |
| Control (NFt) | 1.00 | . | . | . | |
Data analyzed using Ordinal Logistic Regression to assess for associations of the INRS systems with the 7-point Likert scale responses, controlling for the following covariates: gender, ethnicity, BMI, education, income, age, health literacy score. The 7-point Likert scale responses (1 = completely disagree, 7 = completely agree) of the pre-defined set of app-related statements (n = 8) were treated as ordinal dependent variables whereas the INRS system was treated as the categorical independent variables. 1Usability was defined as the ‘quality of user interface’ which assesses the user satisfaction and user engagement with the app and 2Functionality was defined as the operability of the app according to its purpose or design for the study’s objective, measuring the user evaluation of comparing the nutritional information of products. p < 0.01 was considered statistically significant
Fig. 37-point Likert scale responses on the usability of the FoodFlip© smartphone application. Usability was defined as the ‘quality of user interface’ which assesses the user satisfaction and user engagement with the app. Four statements were used in assessing the usability features of the app: a ‘the product search feature was easy to use’, b ‘I liked the barcode scanner feature (if you used this feature)’, c ‘the app was easy to use’ and d ‘the app was confusing’. 7-point Likert scale ratings corresponded to completely disagreed (1) to completely agree (7)
Fig. 47-point Likert scale responses on the functionality of the FoodFlip© smartphone application. Functionality was defined as the operability of app according to its purpose or design and in this study, measures the user-evaluated reliability of the nutritional information and comparisons of products. Four statements were used in assessing the functionality of the app: a ‘the app provided me with information I can use’, b ‘the app was believable’, c ‘the app helped me in understand the nutrient levels’, and d ‘the app helped me compare the healthiness between similar products’. 7-point Likert scale ratings corresponded to completely disagreed (1) to completely agree (7)
Fig. 5Self-reported opinions and challenges using the FoodFlip© app (n = 14381). Bars show the proportion of participants who provided written responses to the question: “What are some of the challenges you had when using the app?”. Data grouped by thematic analysis and analysed using chi-square test for proportions/counts and presented as % (number of participants)