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Related Experiment Videos

Automated bone marrow cell classification using ensemble learning: performance, generalization, and clinical

Shahid Mehmood1,2, Muhammad Zubair2, Sagheer Abbas3

  • 1Department of Computer Science, Bahria University, Lahore, Pakistan.

Frontiers in Medicine
|June 19, 2026
PubMed
Summary

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Classification of Leukocytes

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The bones of the human skeletal system are of varied shapes, sizes, and functions. They can be classified based on their shape and function into four major classes: long bones, short bones, flat bones, and irregular bones. Some classifications include a fifth type, the sesamoid bones, as a separate class, whereas others categorize them under short bones.
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This summary is machine-generated.

This study presents an AI framework for accurate bone marrow cell classification, improving hematological disorder diagnosis. The ensemble model enhances performance and interpretability, supporting AI-assisted diagnostics.

Area of Science:

  • Hematology
  • Medical Imaging
  • Artificial Intelligence

Background:

  • Accurate bone marrow (BM) cell classification is crucial for diagnosing hematological disorders.
  • Automated classification faces challenges like morphological overlap, class imbalance, and imaging artifacts.
  • Deep learning models (CNNs) show promise but can lack generalization and robustness.

Purpose of the Study:

  • To develop an ensemble-learning framework using MobileNetV3 and ResNet18 for enhanced BM cell classification.
  • To improve feature extraction, classification performance, and interpretability while maintaining low computational cost.
  • To evaluate the framework's accuracy, efficiency, and reliability in supporting AI-assisted hematological diagnostics.

Main Methods:

  • An ensemble-learning framework combining MobileNetV3 and ResNet18 was developed.
Keywords:
bone marrow cell classificationdeep learningensemble learningexplainable AIhematological diagnosticsmedical image analysistransfer learning

Related Experiment Videos

  • Four ensemble strategies (Soft Voting, Bagging, Boosting, Stacking) were evaluated on a large dataset (>420,000 images, 21 classes).
  • Explainable AI (XAI) methods (Grad-CAM, LIME) were used for interpretability, with Decision Impact Ratio and Confidence Impact Ratio for reliability assessment.
  • Main Results:

    • The Boosting ensemble strategy achieved the highest classification accuracy at 96%.
    • External validation confirmed robust performance across independent datasets and varying imaging conditions.
    • The ensemble model surpassed individual models in accuracy and interpretability stability, with XAI confirming focus on relevant morphological features.

    Conclusions:

    • The MobileNetV3-ResNet18 ensemble framework offers accurate, efficient, and interpretable BM cell classification.
    • This approach can enhance diagnostic performance and explanation reliability for AI-assisted hematological diagnostics.
    • The framework has the potential to reduce diagnostic time and interobserver variability.