Maintenance Notice

Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.

Who will be affected?

Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Jan 26, 2023
Date Accepted: Mar 12, 2024

The final, peer-reviewed published version of this preprint can be found here:

Effectiveness of an Artificial Intelligence-Assisted App for Improving Eating Behaviors: Mixed Methods Evaluation

Chew J, Chew NW, Loong SSE, Lim SL, Tam WSW, Chin YH, Chao AM, Dimitriadish GK, Gao Y, So BYJ, Shabbir A, Ngiam KY

Effectiveness of an Artificial Intelligence-Assisted App for Improving Eating Behaviors: Mixed Methods Evaluation

J Med Internet Res 2024;26:e46036

DOI: 10.2196/46036

PMID: 38713909

PMCID: 11109864

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Effectiveness of an artificial intelligence-assisted app on improving eating behaviors: A mixed-method evaluation

  • Jocelyn Chew; 
  • Nicholas WS Chew; 
  • Shaun Seh Ern Loong; 
  • Su Lin Lim; 
  • Wai San Wilson Tam; 
  • Yip Han Chin; 
  • Ariana M Chao; 
  • Georgios K Dimitriadish; 
  • Yujia Gao; 
  • Bok Yan Jimmy So; 
  • Asim Shabbir; 
  • Kee Yuan Ngiam

ABSTRACT

Background:

While a plethora of weight management apps are available mostly for dietary self-monitoring, many individuals especially those with overweight and obesity still struggle to achieve adequate weight loss. An emerging area in weight management is the support for one’s self-regulation over momentary eating impulses.

Objective:

To examine the feasibility and effectiveness of a novel artificial intelligence (AI)-assisted weight management app on improving eating behaviors.

Methods:

A single group, pretest posttest study was conducted. Participants completed the one-week run-in of a 12-weeks app-based weight management program called the Eating Trigger-Response Inhibition Program (eTRIP). The self-monitoring system was built upon three main components namely (1) chatbot-based check-ins on eating lapse triggers, (2) food-based computer vision image recognition (system built based on local food items), and (3) automated time-based nudges and meal stopwatch. At every mealtime, participants were prompted to take a picture of their food, of which the food items were identified by a computer vision image recognition technology, which then triggered a set of chatbot-initiated questions on eating triggers such as who the users were eating with. Paired t-tests were used to compare the differences in psycho-behavioral constructs before and after the 7 days program, including overeating habit, snacking habit, consideration of future consequences, self-regulation of eating behaviors, anxiety, depression, and physical activity. Qualitative feedbacks were analyzed using content analysis according to the four steps namely decontextualization, recontextualization, categorization and compilation.

Results:

The mean age, and self-reported BMI and waist circumference was 31.25 ± 9.98 years, 28.86 ± 7.02 kg/m2, and 92.58 ± 18.23 cm respectively. There were significant improvements in all the seven psycho-behavioral constructs except for anxiety. After adjusting for multiple comparisons, statistically significant improvements were found for overeating habit (-0.32 ±1.16, P<.001), snacking habit (-0.22 ± 1.12, P<.002), self-regulation of eating behavior (0.08 ± 0.49, P=.007), depression (-0.12 ± 0.74, P=.007), and physical activity (1288.60 ± 3055.20 MET-min/day, P<.001). Forty-one participants reported skipping at least 1 meal (i.e. breakfast, lunch or dinner), summing to a total of 578 (67.1%) of meals skipped. Eighty (34.8%) participants provided textual feedback that indicated a satisfactory user experience from using the eTRIP. Four themes emerged namely (1) becoming more mindful with self-monitoring; (2) personalized reminders with prompts and chatbot; (3) food logging with image recognition; and (4) engaging with simple, easy, and appealing user interface. Attrition rate was 8.7%.

Conclusions:

eTRIP is a feasible and effective weight management program to be tested in a larger population for its effectiveness and sustainability as a personalized weight management program from people with overweight and obesity. Clinical Trial: ClinicalTrials.gov (ref. NCT04833803) registered on the 6th April 2021.


 Citation

Please cite as:

Chew J, Chew NW, Loong SSE, Lim SL, Tam WSW, Chin YH, Chao AM, Dimitriadish GK, Gao Y, So BYJ, Shabbir A, Ngiam KY

Effectiveness of an Artificial Intelligence-Assisted App for Improving Eating Behaviors: Mixed Methods Evaluation

J Med Internet Res 2024;26:e46036

DOI: 10.2196/46036

PMID: 38713909

PMCID: 11109864

Per the author's request the PDF is not available.