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Published in: BMC Medical Imaging 1/2018

Open Access 01-12-2018 | Technical advance

The segmentation of bones in pelvic CT images based on extraction of key frames

Authors: Hui Yu, Haijun Wang, Yao Shi, Ke Xu, Xuyao Yu, Yuzhen Cao

Published in: BMC Medical Imaging | Issue 1/2018

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Abstract

Background

Bone segmentation is important in computed tomography (CT) imaging of the pelvis, which assists physicians in the early diagnosis of pelvic injury, in planning operations, and in evaluating the effects of surgical treatment. This study developed a new algorithm for the accurate, fast, and efficient segmentation of the pelvis.

Methods

The proposed method consists of two main parts: the extraction of key frames and the segmentation of pelvic CT images. Key frames were extracted based on pixel difference, mutual information and normalized correlation coefficient. In the pelvis segmentation phase, skeleton extraction from CT images and a marker-based watershed algorithm were combined to segment the pelvis. To meet the requirements of clinical application, physician’s judgment is needed. Therefore the proposed methodology is semi-automated.

Results

In this paper, 5 sets of CT data were used to test the overlapping area, and 15 CT images were used to determine the average deviation distance. The average overlapping area of the 5 sets was greater than 94%, and the minimum average deviation distance was approximately 0.58 pixels. In addition, the key frame extraction efficiency and the running time of the proposed method were evaluated on 20 sets of CT data. For each set, approximately 13% of the images were selected as key frames, and the average processing time was approximately 2 min (the time for manual marking was not included).

Conclusions

The proposed method is able to achieve accurate, fast, and efficient segmentation of pelvic CT image sequences. Segmentation results not only provide an important reference for early diagnosis and decisions regarding surgical procedures, they also offer more accurate data for medical image registration, recognition and 3D reconstruction.
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Metadata
Title
The segmentation of bones in pelvic CT images based on extraction of key frames
Authors
Hui Yu
Haijun Wang
Yao Shi
Ke Xu
Xuyao Yu
Yuzhen Cao
Publication date
01-12-2018
Publisher
BioMed Central
Published in
BMC Medical Imaging / Issue 1/2018
Electronic ISSN: 1471-2342
DOI
https://doi.org/10.1186/s12880-018-0260-x

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