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A Unified Framework for Foreground and Anonymization Area Segmentation in CT and MRI Data

8 January 2025
Michal Nohel
Constantin Ulrich
Jonathan Suprijadi
Tassilo Wald
Klaus H. Maier-Hein
ArXiv (abs)PDFHTML
Abstract

This study presents an open-source toolkit to address critical challenges in preprocessing data for self-supervised learning (SSL) for 3D medical imaging, focusing on data privacy and computational efficiency. The toolkit comprises two main components: a segmentation network that delineates foreground regions to optimize data sampling and thus reduce training time, and a segmentation network that identifies anonymized regions, preventing erroneous supervision in reconstruction-based SSL methods. Experimental results demonstrate high robustness, with mean Dice scores exceeding 98.5 across all anonymization methods and surpassing 99.5 for foreground segmentation tasks, highlighting the efficacy of the toolkit in supporting SSL applications in 3D medical imaging for both CT and MRI images. The weights and code is available atthis https URL.

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