Automatic spine segmentation from CT images using Convolutional Neural Network via redundant generation of class labels

Author:

Vania Malinda12,Mureja Dawit23,Lee Deukhee12

Affiliation:

1. Center for Bionics, Korea Institute of Science and Technology, Seoul 02792, Republic of Korea

2. Division of Bio-Medical Science & Technology, KIST School, Korea University of Science and Technology, Seoul 02792, Republic of Korea

3. Korea Advanced Institute of Science and Technology, Daejeon 34141, Republic of Korea

Abstract

Abstract There has been a significant increase from 2010 to 2016 in the number of people suffering from spine problems. The automatic image segmentation of the spine obtained from a computed tomography (CT) image is important for diagnosing spine conditions and for performing surgery with computer-assisted surgery systems. The spine has a complex anatomy that consists of 33 vertebrae, 23 intervertebral disks, the spinal cord, and connecting ribs. As a result, the spinal surgeon is faced with the challenge of needing a robust algorithm to segment and create a model of the spine. In this study, we developed a fully automatic segmentation method to segment the spine from CT images, and we compared our segmentation results with reference segmentations obtained by well-known methods. We use a hybrid method. This method combines the convolutional neural network (CNN) and fully convolutional network (FCN), and utilizes class redundancy as a soft constraint to greatly improve the segmentation results. The proposed method was found to significantly enhance the accuracy of the segmentation results and the system processing time. Our comparison was based on 12 measurements: the Dice coefficient (94%), Jaccard index (93%), volumetric similarity (96%), sensitivity (97%), specificity (99%), precision (over segmentation 8.3 and under segmentation 2.6), accuracy (99%), Matthews correlation coefficient (0.93), mean surface distance (0.16 mm), Hausdorff distance (7.4 mm), and global consistency error (0.02). We experimented with CT images from 32 patients, and the experimental results demonstrated the efficiency of the proposed method. Highlights A method to enhance the accuracy of spine segmentation from CT data was proposed. The proposed method uses Convolutional Neural Network via redundant generation of class labels. Experiments show the segmentation accuracy has been enhanced.

Funder

Ministry of SMEs and Startups

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computer Graphics and Computer-Aided Design,Human-Computer Interaction,Engineering (miscellaneous),Modelling and Simulation,Computational Mechanics

Reference31 articles.

1. Segmentation

2. 3d slicer as an image computing platform for the quantitative imaging network;Fedorov,2012

3. Valmet: A new validation tool for assessing and improving 3d object segmentation;Gerig,2001

4. Fast image scanning with deep max-pooling convolutional neural networks;Giusti,2013

5. Vertebrae localization in pathological spine CT via dense classification from sparse annotations;Glocker,2013

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