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Iterative Development of an Innovative Smartphone-Based Dietary Assessment Tool: Traqq
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An Explainable Artificial Intelligence Software Tool for Weight Management Experts (PRIMO): Mixed Methods Study.

Glenn J Fernandes1,2, Arthur Choi3, Jacob Michael Schauer2

  • 1Department of Computer Science, Northwestern University, Evanston, IL, United States.

Journal of Medical Internet Research
|September 6, 2023
PubMed
Summary
This summary is machine-generated.

Machine learning models can predict weight loss success early. An explainable AI tool, PRIMO, increased weight management experts' trust and agreement with these predictions, enhancing potential intervention effectiveness.

Keywords:
MLdecision-makingexplainable AIexplainable artificial intelligenceinterpretable MLmachine learningmobile phonerandom forestweight loss prediction

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Area of Science:

  • Machine learning applications in healthcare
  • Explainable artificial intelligence (XAI)
  • Behavioral science and intervention effectiveness

Background:

  • Machine learning (ML) models can predict weight loss intervention success, enabling personalized treatment adjustments.
  • However, a lack of trust and understanding hinders the adoption of ML by weight management experts.
  • Explainable AI (XAI) offers a potential solution to bridge this gap.

Purpose of the Study:

  • To develop and evaluate an ML model for predicting 6-month weight loss success based on early intervention data.
  • To assess if ML-based explanations improve weight management experts' agreement with model predictions.
  • To identify factors influencing experts' understanding and trust in ML models for weight loss prediction.

Main Methods:

  • A random forest (RF) ML model was trained on data from 419 participants in a 6-month weight loss intervention.
  • An interactive XAI tool, PRIMO, was developed to interpret RF model predictions.
  • 14 weight management experts evaluated hypothetical cases before and after using PRIMO, comparing it with other explainability methods.

Main Results:

  • The RF model achieved 81% accuracy in predicting weight loss success.
  • Experts showed significantly higher agreement with ML predictions when using PRIMO compared to other methods (P=.02).
  • Interviews revealed preferences for multiple explanation types, visualization of uncertainty, and model performance metrics.

Conclusions:

  • Explainable ML models like PRIMO can increase weight management experts' trust and agreement with early predictions of weight loss success.
  • This enhanced trust can facilitate the dynamic modification of interventions for improved effectiveness.
  • The study provides methods to advance the understandability and trust of ML models in weight management contexts.