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Evaluating a Multitask Artificial Intelligence Model Compared With Humans for Portion-Size Estimation.

Bibinur Nurmanova1, Zhuldyz Omarova1, Aibota Sanatbyek2

  • 1School of Medicine, Nazarbayev University, Astana, Kazakhstan.

The Journal of Nutrition
|June 10, 2026
PubMed
Summary
This summary is machine-generated.

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Visual food atlases significantly improve portion size estimation compared to unassisted judgment or AI models in Central Asia. AI tools need further development for complex foods and small servings.

Area of Science:

  • Nutrition science
  • Artificial intelligence
  • Dietary assessment

Background:

  • Accurate dietary assessment is crucial for precision nutrition and surveillance.
  • Portion size estimation is challenging in Central Asia due to cultural eating habits and non-standard measures.
  • AI offers potential solutions for food recognition and portion estimation, but direct comparisons are limited.

Purpose of the Study:

  • To compare the accuracy of unassisted human judgment, visual food atlas assistance, and an AI model for portion size estimation.
  • To evaluate these methods using Central Asian food items.

Main Methods:

  • 128 participants in Astana, Kazakhstan, estimated portion sizes of 51 foods and 8 beverages from photographs.
  • Participants were randomized to unassisted or atlas-assisted estimation.
Keywords:
AI-driven nutritionCentral Asiaartificial intelligencedietary assessmentdigital healthhuman–AI performanceprecision nutritiontelemedicine

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  • An AI model trained on Central Asian food images was evaluated against actual food weights (reference).
  • Accuracy was measured using Mean Absolute Error (MAE) and Mean Absolute Percentage Error (MAPE).
  • Main Results:

    • Atlas-assisted estimation was most accurate (MAE 80.81g, MAPE 44.76%), while unassisted estimation was least accurate (MAE 133.86g, MAPE 79.40%).
    • The AI model performed intermediately (MAE 97.37g, MAPE 67.81%), with best performance for beverages and average portions.
    • AI accuracy varied by food category and portion size, showing higher errors for small or complex foods.

    Conclusions:

    • Visual atlas use significantly enhances portion size estimation accuracy.
    • The AI model requires further refinement for complex foods and small servings.
    • Combining visual aids and AI tools can improve region-specific dietary monitoring.