1. Optimization of whole slide imaging scan settings for computer vision using human lung cancer tissue.
- Author
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Geubbelmans M, Claes J, Nijsten K, Gervois P, Appeltans S, Martens S, Wolfs E, Thomeer M, Valkenborg D, and Faes C
- Subjects
- Humans, Image Processing, Computer-Assisted methods, Algorithms, Microscopy methods, Cell Nucleus, Lung Neoplasms diagnostic imaging, Lung Neoplasms pathology
- Abstract
Digital pathology has become increasingly popular for research and clinical applications. Using high-quality microscopes to produce Whole Slide Images of tumor tissue enables the discovery of insights into biological aspects invisible to the human eye. These are acquired through downstream analyses using spatial statistics and artificial intelligence. Determination of the quality and consistency of these images is needed to ensure accurate outcomes when identifying clinical and subclinical image features. Additionally, the time-intensive process of generating high-volume images results in a trade-off that needs to be carefully balanced. This study aims to determine optimal instrument settings to generate representative images of pathological tissue using digital microscopy. Using various settings, an H&E stained sample was scanned using the ZEISS Axio Scan.Z1. Next, nucleus segmentation was performed on resulting images using StarDist. Subsequently, detections were compared between scans using a matching algorithm. Finally, nucleus-level information was compared between scans. Results indicated that while general matching percentages were high, similarity between information from replicates was relatively low. Additionally, settings resulting in longer scanning times and increased data volume did not increase similarity between replicates. In conclusion, the scan setting ultimately deemed optimal combined consistent and qualitative performance with low throughput time., Competing Interests: The authors have declared that no competing interests exist., (Copyright: © 2024 Geubbelmans et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.)
- Published
- 2024
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