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      Deep Convolutional Neural Network and 3D Deformable Approach for Tissue Segmentation in Musculoskeletal Magnetic Resonance Imaging

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          Abstract

          Purpose:

          To describe and evaluate a new fully automated musculoskeletal tissue segmentation method using deep convolutional neural network (CNN) and three-dimensional (3D) simplex deformable modeling to improve the accuracy and efficiency of cartilage and bone segmentation within the knee joint.

          Methods:

          A fully automated segmentation pipeline was built by combining a semantic segmentation CNN and 3D simplex deformable modeling. A CNN technique called SegNet was applied as the core of the segmentation method to perform high resolution pixel-wise multi-class tissue classification. The 3D simplex deformable modeling refined the output from SegNet to preserve the overall shape and maintain a desirable smooth surface for musculoskeletal structure. The fully automated segmentation method was tested using a publicly available knee image data set to compare with currently used state-of-the-art segmentation methods. The fully automated method was also evaluated on two different data sets, which include morphological and quantitative MR images with different tissue contrasts.

          Results:

          The proposed fully automated segmentation method provided good segmentation performance with segmentation accuracy superior to most of state-of-the-art methods in the publicly available knee image data set. The method also demonstrated versatile segmentation performance on both morphological and quantitative musculoskeletal MR images with different tissue contrasts and spatial resolutions.

          Conclusion:

          The study demonstrates that the combined CNN and 3D deformable modeling approach is useful for performing rapid and accurate cartilage and bone segmentation within the knee joint. The CNN has promising potential applications in musculoskeletal imaging.

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          Author and article information

          Journal
          8505245
          5733
          Magn Reson Med
          Magn Reson Med
          Magnetic resonance in medicine
          0740-3194
          1522-2594
          15 November 2018
          21 July 2017
          April 2018
          01 December 2018
          : 79
          : 4
          : 2379-2391
          Affiliations
          [1 ]Department of Radiology, University of Wisconsin School of Medicine and Public Health, Madison, Wisconsin, USA.
          [2 ]Department of Biomedical Engineering, University of Minnesota, Minneapolis, Minnesota, USA.
          Author notes
          [* ]Correspondence to: Fang Liu, PhD, Department of Radiology, Wisconsin Institutes for Medical Research, 1111 Highland Avenue, Madison, WI 53705-2275, USA. Tel: 612-222-9728; Fax: 608-263-5112; fliu37@ 123456wisc.edu .
          Author information
          http://orcid.org/0000-0001-8032-6681
          Article
          PMC6271435 PMC6271435 6271435 nihpa996920
          10.1002/mrm.26841
          6271435
          28733975
          4289d1df-7755-4496-94c2-bce5d4028aba
          History
          Categories
          Article

          musculoskeletal imaging,MRI,segmentation,CNN,deep learning,deformable model

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