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Synergizing Deep Learning-Enabled Preprocessing and Human-AI Integration for Efficient Automatic Ground Truth

Christopher Collazo1, Ian Vargas2, Brendon Cara2

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This summary is machine-generated.

Deep learning for medical imaging faces challenges with costly ground truth labeling and image inconsistencies. This study introduces a novel deep learning preprocessing algorithm to normalize images, significantly reducing labeling costs and improving automated histopathology.

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Area of Science:

  • Medical Image Analysis
  • Computational Pathology
  • Artificial Intelligence in Medicine

Background:

  • Supervised deep learning in medical image interpretation is hindered by high costs and time for ground truth generation.
  • Inconsistent image quality and overfitting in active learning sample selection are significant challenges.
  • Whole-slide images (WSIs) offer rich data for automated histopathology, but inconsistencies persist.

Purpose of the Study:

  • To address the limitations of ground truth generation in medical image interpretation using active learning.
  • To mitigate overfitting in active learning by handling out-of-distribution samples caused by image inconsistencies.
  • To improve the efficiency and accuracy of automated region-of-interest ground truth labeling on high-resolution WSIs.

Main Methods:

  • Developed a novel deep learning-based preprocessing algorithm to normalize WSI data.
  • Implemented an active learning strategy integrated with the preprocessing algorithm for sample selection.
  • Quantitatively assessed and visually highlighted inconsistencies within the WSI dataset.

Main Results:

  • The preprocessing algorithm effectively normalized unknown samples to the training set distribution, mitigating overfitting.
  • Accepted 92% of automatically generated labels, expanding the labeled dataset by 845%.
  • Achieved a 96% reduction in expert time compared to manual ground-truth labeling.

Conclusions:

  • The proposed deep learning strategy significantly enhances automatic ground truth labeling for high-resolution WSIs.
  • This approach effectively addresses image inconsistencies and reduces the cost and time of expert labeling.
  • The method holds promise for advancing automated histopathology and medical image interpretation.