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  3. A Comparative Study on Carbohydrate Estimation: GoCARB vs. Dietitians
 

A Comparative Study on Carbohydrate Estimation: GoCARB vs. Dietitians

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BORIS DOI
10.7892/boris.118556
Publisher DOI
10.3390/nu10060741
PubMed ID
29880772
Description
GoCARB is a computer vision-based smartphone system designed for individuals with Type 1 Diabetes to estimate plated meals' carbohydrate (CHO) content. We aimed to compare the accuracy of GoCARB in estimating CHO with the estimations of six experienced dietitians. GoCARB was used to estimate the CHO content of 54 Central European plated meals, with each of them containing three different weighed food items. Ground truth was calculated using the USDA food composition database. Dietitians were asked to visually estimate the CHO content based on meal photographs. GoCARB and dietitians achieved comparable accuracies. The mean absolute error of the dietitians was 14.9 (SD 10.12) g of CHO versus 14.8 (SD 9.73) g of CHO for the GoCARB (p = 0.93). No differences were found between the estimations of dietitians and GoCARB, regardless the meal size. The larger the size of the meal, the greater were the estimation errors made by both. Moreover, the higher the CHO content of a food category was, the more challenging its accurate estimation. GoCARB had difficulty in estimating rice, pasta, potatoes, and mashed potatoes, while dietitians had problems with pasta, chips, rice, and polenta. GoCARB may offer diabetic patients the option of an easy, accurate, and almost real-time estimation of the CHO content of plated meals, and thus enhance diabetes self-management.
Date of Publication
2018-06-07
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
600 Technology > 620 Engineering
Language(s)
en
Contributor(s)
Vasiloglou, Maria
ARTORG Center - Diabetes Technology
Mougiakakou, Stavroula
ARTORG Center - Diabetes Technology
Aubry, Emilie
Bokelmann, Anika
Fricker, Rita
Gomes, Filomena
Guntermann, Cathrin
Meyer, Alexa
Studerus, Diana
Stanga, Zeno
Universitätsklinik für Diabetologie, Endokrinologie, Ernährungsmedizin & Metabolismus (UDEM)
Additional Credits
ARTORG Center - Diabetes Technology
Universitätsklinik für Diabetologie, Endokrinologie, Ernährungsmedizin & Metabolismus (UDEM)
Series
Nutrients
Publisher
MDPI
ISSN
2072-6643
Access(Rights)
open.access
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