DocumentCode :
3576413
Title :
Mobile-based food classification for Type-2 Diabetes using nutrient and textual features
Author :
Yan Luo ; Ling, Charles ; Shuang Ao
Author_Institution :
Comput. Sci. Dept., Western Univ., London, ON, Canada
fYear :
2014
Firstpage :
563
Lastpage :
569
Abstract :
Type-2 Diabetes (T2D) is a dreadful disease affecting hundreds of millions of people worldwide, and is linked and worsen by unhealthy lifestyles, especially the poor diet style. However, managing daily diet effectively remains highly challenging for both T2D patients and doctors. In this paper, we proposed, built, and evaluated an effective food classification tool using mobile computing and predictive models to proactively guide T2D patients along their diet selection. This tool provided a comprehensive food database so that patients can conveniently utilize it to record and track their daily diet. More intelligently, the embedded predictive model classified each food item into three classes (e.g., “Choose More Often”, “In Moderate”, and “Choose Less Often”) using its nutrient and textual features. The evaluation results show that it is able to achieve around 93% classification accuracy in the best scenario, which indicates that it is efficient and effective for T2D diet management.
Keywords :
database management systems; diseases; food products; medical information systems; mobile computing; pattern classification; T2D diet management; T2D patients; choose less often food item; choose more often food item; classification accuracy; daily diet recording; daily diet tracking; diet selection; dreadful disease; embedded predictive model; food classification tool; food database; food item classification; in moderate food item; mobile computing; mobile-based food classification; nutrient features; poor diet style; textual features; type-2 diabetes; unhealthy lifestyles; Accuracy; Databases; Diabetes; Feature extraction; Predictive models; Training; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Data Science and Advanced Analytics (DSAA), 2014 International Conference on
Type :
conf
DOI :
10.1109/DSAA.2014.7058127
Filename :
7058127
Link To Document :
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