2018
DOI: 10.1007/s11548-018-1883-7
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Automatic bone segmentation in whole-body CT images

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Cited by 73 publications
(60 citation statements)
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References 15 publications
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“…Even this simplification, however, still results in increased planning time, which may make the process unappealing in a busy clinic or for a multicenter clinical trial. Auto-contouring software is developing at a rapid pace, and whole-body bone segmentation has already been implemented [ 30 ]. Popular methods include atlas-based methods [ 31 ] and convolutional neural networks [ 32 ], and both may also aid in the simultaneous contouring of other OARs including the kidneys, lungs, bowels, and others.…”
Section: Discussionmentioning
confidence: 99%
“…Even this simplification, however, still results in increased planning time, which may make the process unappealing in a busy clinic or for a multicenter clinical trial. Auto-contouring software is developing at a rapid pace, and whole-body bone segmentation has already been implemented [ 30 ]. Popular methods include atlas-based methods [ 31 ] and convolutional neural networks [ 32 ], and both may also aid in the simultaneous contouring of other OARs including the kidneys, lungs, bowels, and others.…”
Section: Discussionmentioning
confidence: 99%
“…In the present work, we focus on foot anatomies that have been generated by 2D image segmentation of CT scans followed by 3D reconstruction of each component (bone). We consider the steps of 3D reconstruction and segmentation pre-processing that are out of the scope of this work (see for example [20][21][22][23][24] for techniques to perform such steps), hence we consider the 28 bones of the foot-and-ankle as the input set I = {P 1 , ..., P 28 } with P i = {x j ∈ R 3 , j = 1, ..., n i }. n i represents the number of 3D points in the cloud associated with the bone i.…”
Section: Definitions and Notationmentioning
confidence: 99%
“…In the case of deep learning algorithms, promising results were achieved via convolutional neural networks using two-dimensional kernels in a slice-by-slice segmentation ( 9 ) or via a pseudo-3D segmentation ( 10 ) . The latter approach used the successful 2D U-Net developed by Ronneberger et al .…”
Section: Introductionmentioning
confidence: 99%