A review on multiplatform evaluations of semi-automatic open-source based image segmentation for cranio-maxillofacial surgery

•Collection of a homogenous CT data set of the mandible originating from the clinical routine.•Outlining of the mandible manually by two clinical experts and semi-automatically by multiple segmentation algorithms.•Exploration of medical platforms and multiplatform comparison of multiple open-source...

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Veröffentlicht in:Computer methods and programs in biomedicine 2019-12, Vol.182, p.105102-105102, Article 105102
Hauptverfasser: Wallner, Jürgen, Schwaiger, Michael, Hochegger, Kerstin, Gsaxner, Christina, Zemann, Wolfgang, Egger, Jan
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Sprache:eng
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Zusammenfassung:•Collection of a homogenous CT data set of the mandible originating from the clinical routine.•Outlining of the mandible manually by two clinical experts and semi-automatically by multiple segmentation algorithms.•Exploration of medical platforms and multiplatform comparison of multiple open-source based segmentation algorithms.•Inter-rater comparison and validity proof of the generated ground truth and the algorithmic segmentations.•Statistical evaluation of algorithmic against manual segmentations reproducible by others. Computer-assisted technologies, such as image-based segmentation, play an important role in the diagnosis and treatment support in cranio-maxillofacial surgery. However, although many segmentation software packages exist, their clinical in-house use is often challenging due to constrained technical, human or financial resources. Especially technological solutions or systematic evaluations of open-source based segmentation approaches are lacking. The aim of this contribution is to assess and review the segmentation quality and the potential clinical use of multiple commonly available and license-free segmentation methods on different medical platforms. In this contribution, the quality and accuracy of open-source segmentation methods was assessed on different platforms using patient-specific clinical CT-data and reviewed with the literature. The image-based segmentation algorithms GrowCut, Robust Statistics Segmenter, Region Growing 3D, Otsu & Picking, Canny Segmentation and Geodesic Segmenter were investigated in the mandible on the platforms 3D Slicer, MITK and MeVisLab. Comparisons were made between the segmentation algorithms and the ground truth segmentations of the same anatomy performed by two clinical experts (n = 20). Assessment parameters were the Dice Score Coefficient (DSC), the Hausdorff Distance (HD), and Pearsons correlation coefficient (r). The segmentation accuracy was highest with the GrowCut (DSC 85.6%, HD 33.5 voxel) and the Canny (DSC 82.1%, HD 8.5 voxel) algorithm. Statistical differences between the assessment parameters were not significant (p < 0.05) and correlation coefficients were close to the value one (r > 0.94) for any of the comparison made between the segmentation methods and the ground truth schemes. Functionally stable and time-saving segmentations were observed. High quality image-based semi-automatic segmentation was provided by the GrowCut and the Canny segmentation method. In the cranio-maxillofacial
ISSN:0169-2607
1872-7565
DOI:10.1016/j.cmpb.2019.105102