| Literature DB >> 30597864 |
Alison L Eldridge1, Carmen Piernas2, Anne-Kathrin Illner3, Michael J Gibney4, Mirjana A Gurinović5, Jeanne H M de Vries6, Janet E Cade7.
Abstract
BACKGROUND: New technology-based dietary assessment tools, including Web-based programs, mobile applications, and wearable devices, may improve accuracy and reduce costs of dietary data collection and processing. The International Life Sciences Institute (ILSI) Europe Dietary Intake and Exposure Task Force launched this project to evaluate new tools in order to recommend general quality standards for future applications.Entities:
Keywords: Web-based technologies; dietary assessment; mobile technologies
Mesh:
Year: 2018 PMID: 30597864 PMCID: PMC6356426 DOI: 10.3390/nu11010055
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Figure 1PRISMA diagram used to identify technology-based tools for dietary intake assessment.
Design characteristics of the technology-based tools used in dietary intake assessment.
| Device Name | Country | Main Purpose of the Tool | Target Audience | Main Platform for Tool | Method of Data Collection and Entry | Food Composition Source | Approximate Number of Items | Time to Complete | References |
|---|---|---|---|---|---|---|---|---|---|
| Tools for Use in Research or Surveillance ( | |||||||||
| ASA24 Automated Self-Administered 24 h Recall | USA, Canada, Australia | Dietary intake | Adults and children from 10 years | Web-based | 24-h recall based on automated multiple-pass method (AMPM) | USDA’s FNDDS 4, Canadian Food Composition and Australian food tables | 10,000 | Average of 24 min; most within 17–34 min | Baranowski et al. 2012 and 2014; Kirkpatrick et al. 2014; Thompson et al. 2015 [ |
| CHAT Connecting Health and Technology; mobile food record | Australia | Food groups consumed | Adults and adolescents | Smartphone App | Food record based on images; dietitian identifies foods and food groups | Australia Guide to Healthy Eating, but not integrated into tool | 2670 | Not specified | Kerr et al. 2012 and 2016; Pollard et al. 2016 [ |
| Compl-Eat | Netherlands | Dietary intake | Adults and adolescents from 16 years | Web-based | Interviewer-assisted or self-administered 24-h recall based on | Dutch Food Composition Database | 2000 | Close to 30 min | Meijboom et al. 2017 [ |
| DAP Diet Assess and Plan | Serbia, Balkan region | Diet and physical activity | All ages | Web-based, PC | 24-h recalls, food frequency questionnaires (FFQ), food propensity; dietitian enters data | Serbian and Balkan regional food composition databases | 1450 Serbian and 1600 Balkan foods and recipes 9 | 15–30 min | Gurinovic et al. 2016 and 2018; Zekovic et al. 2017 [ |
| DES Diet Evaluation System | Korea | Dietary intake | All ages | Web-based | Interviewer-assisted 24-h recall | Korean food composition tables | 8100 | Average of 14 min | Jung et al. 2014 [ |
| eButton | USA | Dietary intake, activity | All ages | Wearable | Imaging system with automated portion estimates; dietitian enters data | USDA’s FNDDS, but not integrated into tool | 8500 | Not specified | Sun et al. 2010 and 2014; Jia et al. 2014 [ |
| e-CA Electronic Carnet Alimentaire | Switzerland | Dietary intake | Adults | Web-based | Electronic food record; dietitian enters for coding | Prodi 6.3 software, but not integrated into the tool | 900 | Average of 19 min | Bucher Della Torre et al. 2017 [ |
| eDIA Electronic Dietary Intake Assessment | Australia | Dietary intake | 19–24 years old | Smartphone app | Food record | AUSNUT 5 2007 | 4500 | Not specified | Rangan et al. 2015 and 2016 [ |
| EPIC-Soft 1 | European Union (EU) | Dietary intake | All ages | PC with Web-based management platform | Interviewer-assisted 24-h recall or dietitian enters data from food records | EPIC 6 software from all EU countries | 10,000 | Not specified | de Boer et al. 2011; Huybrechts et al. 2011; Freisling et al. 2014; Park et al. 2017 [ |
| Food4Me | EU—7 European counties | Dietary Intake | Adults | Web-based | FFQ | WISP 7 software; based on McCance and Widdowson | 157 items grouped into 11 categories | Not specified | Fallaize et al., 2014; Forster et al., 2014; Celis-Morales et al. 2016 [ |
| FoodBook24 | Ireland | Dietary intake | Adults | Web-based | Food record, FFQ, food choice | Irish National Adult Nutrition Survey food composition database | 751 | Average of 15 min 10 | Timon et al. 2017a and 2017b [ |
| FoodNow | Australian | Diet and physical activity | Young adults | Smartphone; wearable armband for energy expenditure | Food record based on images, text or voice; dietitian enters data | 2011–2013 Australian Food and Nutrient Database | 5740 | Not specified | Pendergast et al. 2017 [ |
| GraFFS Graphical Food Frequency System | US | Dietary intake | Adults | Web-based | FFQ | NDSR and USDA’s FNDDS | 156 | Not specified | Kristal et al. 2014 [ |
| INTAKE24 | UK | Dietary Intake | Adults and children from 11 years | Web-based | 24-h recall based on AMPM | McCance and Widdowson | 2800 | Average of 13 min with flat interface | Foster et al. 2014; Bradley et al. 2016; Simpson et al. 2017 [ |
| Microsoft SenseCam | Ireland, UK, Australia, others | Dietary intake, activity | Tested in athletes and different adult groups | Wearable | Imaging system to enhance 24-h recall interviews | WinDiets, but not integrated into tool | WinDiets has food databases from many countries | Not specified | O’Loughlin et al. 2013; Gemming et al. 2013 and 2015 [ |
| myfood24 | UK | Dietary Intake | Young Adults, Adults, Elderly | Web-based | 24-h recall based on AMPM or food record | UK food composition database (branded and generic foods) | 45,000 | Average of 19 min (+/−7 min) | Carter et al. 2015; Albar et al. 2016 [ |
| NINA-DISH New Interactive Nutrition Assistant | India: specifically New Delhi, Mumbai and Trivandrum | Dietary intake | Adults (35–69) | PC | Interviewer-assisted 24-h recalls, diet history, mealtime and food-preparer questionnaire | Indian FCT 8 augmented with data from UK, FNDDS, Singapore and Malaysia | 1000 | Not specified | Daniel et al. 2014 [ |
| NANA Novel Assessment of Nutrition and Ageing | UK and USA | Dietary intake, activity, cognitive function | Elderly | Touch-screen computer with audio-recording | Food record based on images and voice; dietitian enters data | Windiets, but not integrated into tool | 1200 | Not specified | Astell et al. 2014; Timon et al. 2015 [ |
| NuDAM Nutricam Dietary Assessment Method | Australia | Dietary intake | Adults | Smartphone/camera | Food record based on images and voice notes; dietitian enters data | FoodWorks 5.1, but not integrated into tool | 13,000 | Not specified | Rollo et al. 2011 and 2015 [ |
| NutriNet Santé | France | Diet and physical activity | Adults | Web-based | 24-h recall or food record based on AMPM | French food composition table | 2600 | Average of 31 ± 29 min; Median 25 min | Touvier et al. 2011 [ |
| Oxford WebQ | UK | Diet and physical activity | Adults | Web-based, PC | 24-h dietary checklist | McCance and Widdowson | 200 items in 21 food groups | Average of 14 min; Median 12.5 min | Liu et al. 2011; Galante et al. 2016 [ |
| R24W | French Canadian | Dietary intake | Adults and adolescents from 16 years | Web-based | 24-h recalls based on AMPM | Canadian Nutrient file 2010 and Foods Commonly Consumed in Canada | 4000 | 27.6% reported < 20 min, 31% 20–30 min, 24.1% 30–45 min, 7% 45–60 min | Jacques et al. 2016; Lafrenière et al. 2017 [ |
| RFPM | USA | Dietary intake | All ages | Smartphone/camera/bar-code reader | Remote imaging system; semi-automated food identification | USDA’s FNDDS, but not integrated into tool | 8500 | Not specified | Martin et al. 2012 and 2014; Nicklas et al. 2017 [ |
| SNAP Synchronized Nutrition and Activity Program | UK | Diet and physical activity | Children | Web-based | Food records collected during eight time-points daily | UK food consumption database | 49 (40 foods, nine beverages) | <25 min | Moore et al. 2013 [ |
| SNAPA Synchronized Nutrition and Activity Program for Adults | UK | Diet and physical activity | Adults | Web-based | Food records collected during 4 time periods each day | UK food consumption database | 120 (102 foods and 18 beverages) | Not specified | Hillier, et al. 2012 [ |
| TADA Technology Assisted Dietary Assessment;mobile food record | USA | Dietary intake | Adults and children from 3 years | Smartphone App | Food record based on before and after images of foods and beverages; system calculates energy and nutrients | USDA’s Food and Nutrient Database for Dietary Studies (FNDDS) | 8500 | Not specified | Daugherty et al. 2012; Ahmad et al. 2016; Boushey et al. 2015 and 2017 [ |
| TECH | Sweden | Diet and physical activity | 2–5 years old | Smartphone App | Food record: Parents take images and provide short descriptions; dietitian enters data | Swedish Food Database, but this was not integrated into tool | Not reported | Not specified | Delisle et al. 2015; Henriksson et al. 2015; Delisle Nyström et al. 2016 [ |
| VNP | Brazil | Dietary intake | Patients undergoing gastric bypass surgery | PC | 24-h recall or food record; dietitian enters data | Brazilian Food Chemical Composition Table | 1711 | Not specified | da Silva et al. 2014a and 2014b [ |
| WebCAAFE | Brazil | Diet and physical activity | Children 6–12 years | Web-based | 24-h recall | None; evaluates foods and beverages only | 32 items in each of 6 eating events per day | Not specified | Davies et al., 2015; Kupek et al. 2016 [ |
| WebDASC | Denmark | Dietary Intake | Children | Web-based | 24-h recall | Danish National Survey of Diet and Physical Activity (DANSDA) | 1300 | Average of 15 min (after first day) | Biltoft-Jensen et al. 2012 and 2013; Andersen et al. 2015 [ |
| Web-FFQ | Quebec, Canada | Dietary intake | Adults | Web-based | FFQ | Nutrition Data System for Research and the Canadian Nutrient File | 136 | 45 min | Labonte et al. 2012 [ |
| WebFR | Norway | Dietary Intake | Children | Web-based | 24-h recall | Norwegian National Survey database (NORKOST) | 550 | Not specified | Medin et al. 2015, 2016, and 2017 [ |
| Zambia Tablet-based 24h recall Tool | Zambia | Dietary intake | Children | Tablet | Interviewer-assisted 24-h recall | HarvestPlus and Zambia food comp tables | Not specified | Not specified | Caswell et al. 2015 [ |
| Tools for Consumer Use ( | |||||||||
| Diabetics Diary, paired with Pebble smartwatch | Norway | Diabetes management Diet and physical activity | Adults | Android Smartphone plus Smart watch | Carbohydrate food log | None | Not reported | Not specified | Arsand et al. 2015 [ |
| DietCam | USA | Dietary intake | All ages for obesity prevention | Smartphone App | Food record from images; system calculates energy | USDA National Nutrient Database for Standard Reference | 8500 | Not specified | Kong and Tan, 2011 and 2012; Kong thesis, 2012; Kong et al. 2015 [ |
| DIMA | USA | Medical management and diet | Hemodialysis patients | PDA | Food record with touch, voice, bar-code scanner | Database was created from existing nutrient database and UPC codes | Not specified | Not specified | Connelly et al. 2012; Welch et al. 2013 [ |
| EVIDENT II app | Spain | Adherence to a Med Diet and log for step counter | Adults | Smartphone App | FFQ and Med Diet checklist | Spanish FFQ | 137s | Not specified | Recio-Rodriguez et al. 2014 and 2016 [ |
| FoodLog for dietary data collection as part of DialBetics program | Japan, Korea | Diabetes management and diet, physical activity | Adults | Smartphone App | Food record from images, text; system calculates energy, macro-nutrients | National food database: Dietary Reference Intakes, Japan (2010) | 2191 | Average of 35 min | Aizawa K. et al. 2014; Waki et al. 2012 and 2015 [ |
| GoCARB | EU | Diabetes management and diet | Adults | Smartphone App | Food record based on meal images for carbohydrate intake estimates | USDA Nutrient Database for Standard Reference | 5000 | ~1 min per image | Rhyner et al. 2016; Bally et al. 2017 [ |
| IDQC | China | Diet and physical activity | Adults and adolescents | Web-based | FFQ | Food Nutrition Calculator (Beijing) | 135 | 30–40 min | Du et al. 2015 [ |
| My Meal Mate (MMM) | UK | Diet, activity and body weight | Adults—Weight loss or maintenance | Smartphone App | Food record | UK Composition of Foods | 40,000 | Average of 22 min | Carter et al. 2013a, 2013b, 2013c [ |
| Snap-n-Eat mobile application | USA | Dietary intake | Adults | Smartphone App | Food record from images; system calculates energy and nutrients | not reported | not reported | Not specified | Zhang et al. 2015 [ |
| SuperTracker 3 | USA | Diet and physical activity | All ages | Web-based | Food records, diet recall | USDA’s FNDDS | 8500 | Not specified | Post et al. 2012; Tsompanakis, 2015 [ |
1 Now called Globo-Diet. 2 Formerly called SCRAN24, which was a PC-based platform. 3 Formerly called MyPyramid Tracker; discontinued as of July 2018. (Long et al., 2012 was for MyPyramid Tracker, the predecessor of SuperTracker). 4 FNDDS is the US Department of Agriculture’s Food and Nutrient Database for Dietary Studies; FNDDS provides the nutrient values for foods and beverages reported in the dietary intake component of the National Health and Nutrition Examination Survey (NHANES). 5 Australian Food, Supplement and Nutrient Database (AUSNUT). 6 European Prospective Investigation into Cancer and Nutrition (EPIC). 7 WISP (Tinuviel Software) is nutritional analysis software for the UK and Ireland (http://www.tinuvielsoftware.co.uk/wisp4.htm). 8 Food Composition Table (FCT). 9 Based on personal communication with M. Gurinović, University of Belgrade, Serbia. 10 Based on personal communication with S. Pigat, CremeGlobal, Dublin, Ireland.
Figure 2Summary rating of the features from the dietary assessment tools designed for research or surveillance (A) and for consumer use (B).
Figure 3Energy estimations from digital tools vs. traditional methods of dietary intake assessment.
Figure 4Best practice guidelines for reporting new technologies for dietary assessment.