journal article

Validation of mobile artificial intelligence technology–assisted dietary assessment tool against weighed records and 24-hour recall in adolescent females in Ghana

by Gloria Folson,
Boateng Bannerman,
Vicentia Atadze,
Gabriel Ador,
Bastien Kolt,
Peter McCloskey,
Rohit Gangupantulu,
Alejandra Arrieta,
Bianca C. Braga,
Joanne Arsenault,
Annalyse Kehs,
Frank Doyle,
Lan Mai Tran,
Nga Thu Hoang,
David Hughes,
Phuong Hong Nguyen and
Aulo Gelli
Open Access | CC BY-4.0
Citation
Folson, Gloria; Bannerman, Boateng; Atadze, Vicentia; Ador, Gabriel; Kolt, Bastien; Arrieta, Alejandra; Nguyen, Phuong Hong; Gelli, Aulo; et al. Validation of mobile artificial intelligence technology–Assisted dietary assessment tool Against weighed records and 24-hour recall in adolescent females in Ghana. Journal of Nutrition 153(8): 2328-2338. https://doi.org/10.1016/j.tjnut.2023.06.001

Background
Important gaps exist in the dietary intake of adolescents in low- and middle-income countries (LMICs), partly due to expensive assessment methods and inaccuracy in portion-size estimation. Dietary assessment tools leveraging mobile technologies exist but only a few have been validated in LMICs.

Objective
We validated Food Recognition Assistance and Nudging Insights (FRANI), a mobile artificial intelligence (AI) dietary assessment application in adolescent females aged 12–18 y (n = 36) in Ghana, against weighed records (WR), and multipass 24-hour recalls (24HR).

Methods
Dietary intake was assessed during 3 nonconsecutive days using FRANI, WRs, and 24HRs. Equivalence of nutrient intake was tested using mixed-effect models adjusted for repeated measures, by comparing ratios (FRANI/WR and 24HR/WR) with equivalence margins at 10%, 15%, and 20% error bounds. Agreement between methods was assessed using the concordance correlation coefficient (CCC).

Results
Equivalence for FRANI and WR was determined at the 10% bound for energy intake, 15% for 5 nutrients (iron, zinc, folate, niacin, and vitamin B6), and 20% for protein, calcium, riboflavin, and thiamine intakes. Comparisons between 24HR and WR estimated equivalence at the 20% bound for energy, carbohydrate, fiber, calcium, thiamine, and vitamin A intakes. The CCCs by nutrient between FRANI and WR ranged between 0.30 and 0.68, which was similar for CCC between 24HR and WR (ranging between 0.38 and 0.67). Comparisons of food consumption episodes from FRANI and WR found 31% omission and 16% intrusion errors. Omission and intrusion errors were lower when comparing 24HR with WR (21% and 13%, respectively).

Conclusions
FRANI AI–assisted dietary assessment could accurately estimate nutrient intake in adolescent females compared with WR in urban Ghana. FRANI estimates were at least as accurate as those provided through 24HR. Further improvements in food recognition and portion estimation in FRANI could reduce errors and improve overall nutrient intake estimations.