CVAILGMar 13, 2025

CountPath: Automating Fragment Counting in Digital Pathology

arXiv:2503.10520v11 citationsh-index: 162025 IEEE EMBS International Conference on Biomedical and Health Informatics (BHI)
Originality Incremental advance
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This addresses a time-consuming and variable pre-analytical task in pathology workflows, offering an efficient alternative for quality control.

The study tackled the problem of automating fragment counting in digital pathology to replace manual verification, achieving 86% accuracy which is comparable to expert variability (82-88%).

Quality control of medical images is a critical component of digital pathology, ensuring that diagnostic images meet required standards. A pre-analytical task within this process is the verification of the number of specimen fragments, a process that ensures that the number of fragments on a slide matches the number documented in the macroscopic report. This step is important to ensure that the slides contain the appropriate diagnostic material from the grossing process, thereby guaranteeing the accuracy of subsequent microscopic examination and diagnosis. Traditionally, this assessment is performed manually, requiring significant time and effort while being subject to significant variability due to its subjective nature. To address these challenges, this study explores an automated approach to fragment counting using the YOLOv9 and Vision Transformer models. Our results demonstrate that the automated system achieves a level of performance comparable to expert assessments, offering a reliable and efficient alternative to manual counting. Additionally, we present findings on interobserver variability, showing that the automated approach achieves an accuracy of 86%, which falls within the range of variation observed among experts (82-88%), further supporting its potential for integration into routine pathology workflows.

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