Current Directions in Biomedical Engineering (Aug 2021)

Slicer-DeepSeg: Open-Source Deep Learning Toolkit for Brain Tumour Segmentation

  • Zeineldin Ramy A.,
  • Weimann Pauline,
  • Karar Mohamed E.,
  • Mathis-Ullrich Franziska,
  • Burgert Oliver

DOI
https://doi.org/10.1515/cdbme-2021-1007
Journal volume & issue
Vol. 7, no. 1
pp. 30 – 34

Abstract

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Purpose Computerized medical imaging processing assists neurosurgeons to localize tumours precisely. It plays a key role in recent image-guided neurosurgery. Hence, we developed a new open-source toolkit, namely Slicer-DeepSeg, for efficient and automatic brain tumour segmentation based on deep learning methodologies for aiding clinical brain research. Methods Our developed toolkit consists of three main components. First, Slicer-DeepSeg extends the 3D Slicer application and thus provides support for multiple data input/ output data formats and 3D visualization libraries. Second, Slicer core modules offer powerful image processing and analysis utilities. Third, the Slicer-DeepSeg extension provides a customized GUI for brain tumour segmentation using deep learning-based methods. Results The developed Slicer- DeepSeg was validated using a public dataset of high-grade glioma patients. The results showed that our proposed platform’s performance considerably outperforms other 3D Slicer cloud-based approaches. Conclusions Developed Slicer-DeepSeg allows the development of novel AIassisted medical applications in neurosurgery. Moreover, it can enhance the outcomes of computer-aided diagnosis of brain tumours. Open-source Slicer-DeepSeg is available at github.com/razeineldin/Slicer-DeepSeg.

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