André Klein1,2, Jan Warszawski3, Jens Hillengaß4, Klaus H Maier-Hein5. 1. Division of Medical Image Computing, Deutsches Krebsforschungszentrum (DKFZ), Im Neuenheimer Feld 581, Heidelberg, Germany. andre.klein@dkfz.de. 2. Medical Faculty, University of Heidelberg, Heidelberg, Germany. andre.klein@dkfz.de. 3. Medical Faculty, University of Heidelberg, Heidelberg, Germany. 4. Department of Medicine, Roswell Park Comprehensive Cancer Center, Buffalo, NY, USA. 5. Division of Medical Image Computing, Deutsches Krebsforschungszentrum (DKFZ), Im Neuenheimer Feld 581, Heidelberg, Germany.
Abstract
PURPOSE: Many diagnostic or treatment planning applications critically depend on the successful localization of bony structures in CT images. Manual or semiautomatic bone segmentation is tedious, however, and often not practical in clinical routine. In this paper, we present a reliable and fully automatic bone segmentation in whole-body CT scans of patients suffering from multiple myeloma. METHODS: We address this problem by using convolutional neural networks with an architecture inspired by the U-Net [17]. In this publication, we compared three training procedures: (1) training from 2D axial slices, (2) a pseudo-3D approach including axial, sagittal and coronal slices and (3) an approach where the network is pre-trained in an unsupervised manner. RESULTS: We evaluated the method on an in-house dataset of 18 whole-body CT scans consisting of 6800 axial slices, achieving a dice score of 0.95 and an intersection over union (IOU) of 0.91. Furthermore, we evaluated our method on the dataset used by Peréz-Carrasco et al. (Comput Methods Progr Biomed 156:85-95, 2018). The data and the ground truth have been made publicly available. The proposed method outperformed the other methods, obtaining a dice score of 0.92 and an IOU of 0.85. CONCLUSION: These promising results could facilitate the evaluation of bone density and the localization of focal lesions in the future, with a potential impact on both disease staging and treatment planning.
PURPOSE: Many diagnostic or treatment planning applications critically depend on the successful localization of bony structures in CT images. Manual or semiautomatic bone segmentation is tedious, however, and often not practical in clinical routine. In this paper, we present a reliable and fully automatic bone segmentation in whole-body CT scans of patients suffering from multiple myeloma. METHODS: We address this problem by using convolutional neural networks with an architecture inspired by the U-Net [17]. In this publication, we compared three training procedures: (1) training from 2D axial slices, (2) a pseudo-3D approach including axial, sagittal and coronal slices and (3) an approach where the network is pre-trained in an unsupervised manner. RESULTS: We evaluated the method on an in-house dataset of 18 whole-body CT scans consisting of 6800 axial slices, achieving a dice score of 0.95 and an intersection over union (IOU) of 0.91. Furthermore, we evaluated our method on the dataset used by Peréz-Carrasco et al. (Comput Methods Progr Biomed 156:85-95, 2018). The data and the ground truth have been made publicly available. The proposed method outperformed the other methods, obtaining a dice score of 0.92 and an IOU of 0.85. CONCLUSION: These promising results could facilitate the evaluation of bone density and the localization of focal lesions in the future, with a potential impact on both disease staging and treatment planning.
Entities:
Keywords:
Bone segmentation; Computed tomography; Deep learning; Multiple myeloma; U-Net
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