| Literature DB >> 27558127 |
Chunsoo Ahn1, Toan Duc Bui1, Yong-Woo Lee1, Jitae Shin2, Hyunjin Park1.
Abstract
BACKGROUND: This study focuses on osteoarthritis (OA), which affects millions of adults and occurs in knee cartilage. Diagnosis of OA requires accurate segmentation of cartilage structures. Existing approaches to cartilage segmentation of knee imaging suffer from either lack of fully automatic algorithm, sub-par segmentation accuracy, or failure to consider all three cartilage tissues.Entities:
Keywords: Cartilage; Knee segmentation; Magnetic resonance imaging; Medical image processing
Mesh:
Year: 2016 PMID: 27558127 PMCID: PMC4997678 DOI: 10.1186/s12938-016-0225-7
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Comparison of existing knee segmentation methods
| Authors | Key algorithm | Segmentation tissues | Modalities | Tesla | Subject numbers | Template image |
|---|---|---|---|---|---|---|
| Tamez-Pena et al. [ | Fuzzy voting algorithm | Femoral cartilage, tibial cartilage | T1-weighted MRI (3-D DESS WE) | 3T | 12 | Used |
| Shan et al. [ | kNN classification | Femoral cartilage, tibial cartilage, femur, tibia | T1-weighted and partially T2-weighted MRI | – | 18 | Used |
| Ringenbach et al. [ | Fast marching algorithm (region growing) | Femur, tibia, patella | CT | – | 20 | Used |
| Ababneh et al. [ | Graph-cut algorithm | Femur, tibia | T2-weighted MRI | 3T | 200 (14 slices per each subject) | Used |
| Dodin et al. [ | Ray casting technique | Femur, tibia | T2-weighted MRI (3-D-FISP) | 1.5T | 161 | Unused |
| Dodin et al. [ | Bayesian decision criterion | Femoral cartilage, tibial cartilage | T1-weighted MRI (3-D DESS WE) | 3T | 14 | Unused |
Fig. 1Proposed overall algorithm
Fig. 2Knee template images. a Patellar cartilage, b femoral cartilage, c tibial cartilage
Fig. 3Cartilage segmentation in knee MRI. a Edge-based level set based cartilage segmentation in knee. b Global region region-based level set. c Localizing region-based level set. d Referenced manual segmentation
DSC results with standard deviations from 10 people with 160 slices each
| Person no. | Femoral cartilage DSC | Patellar cartilage DSC | Tibial cartilage DSC |
|---|---|---|---|
| #1 | 0.87 (1.80 %) | 0.85 (2.86 %) | 0.85 (2.29 %) |
| #2 | 0.85 (0.52 %) | 0.81 (0.86 %) | 0.83 (2.36 %) |
| #3 | 0.85 (1.00 %) | 0.83 (2.47 %) | 0.84 (2.87 %) |
| #4 | 0.89 (1.60 %) | 0.84 (3.32 %) | 0.85 (1.50 %) |
| #5 | 0.87 (1.88 %) | 0.81 (0.83 %) | 0.87 (3.77 %) |
| #6 | 0.87 (1.74 %) | 0.80 (1.29 %) | 0.86 (2.18 %) |
| #7 | 0.89 (0.91 %) | 0.80 (1.11 %) | 0.84 (1.51 %) |
| #8 | 0.87 (1.04 %) | 0.80 (2.89 %) | 0.87 (3.60 %) |
| #9 | 0.87 (1.29 %) | 0.80 (0.99 %) | 0.84 (1.16 %) |
| #10 | 0.87 (1.39 %) | 0.83 (1.75 %) | 0.83 (1.30 %) |
Fig. 4Overlap analysis of the proposed segmentation (solid line) and Lanktons segmentation (dashed line). a Average DSC of femoral cartilage. b Average DSC of tibial cartilage. c Average DSC of patellar cartilage
Fig. 5Knee cartilage segmentation for various cases in two dimensions. Each row represents a slice of a knee MR image in a single series. a Our template image from normal subjects: femoral (left), patellar (center), and tibial (right) cartilage. b Warping results from the template to the original image: SFCM (left) and morphological adjustment (right). c The result of Lanktons method. d The result of our proposed method. e The result of manual segmentation for reference
DSC comparisons with standard deviations
| Segmented tissue | DSC | Sensitivity | Specificity | |
|---|---|---|---|---|
| A recent knee segmentation [ | Femoral cartilage | 88.0 % (4.0 %) | 88.0 % (4.00 %) | 99.9 % (0.00 %) |
| Tibial cartilage | 84.0 % (5.0 %) | 89.0 % (6.00 %) | 100 % (0.00 %) | |
| Patellar cartilage | – | – | – | |
| The localizing region-based active contour segmentation [ | Femoral cartilage | 80.0 % (2.14 %) | 99.9 % (0.00 %) | 99.9 % (0.00 %) |
| Tibial cartilage | 81.3 % (2.19 %) | 99.9 % (0.00 %) | 99.9 % (0.00 %) | |
| Patellar cartilage | 73.3 % (5.44 %) | 99.9 % (0.00 %) | 99.9 % (0.00 %) | |
| The proposed segmentation | Femoral cartilage | 87.1 % (1.10 %) | 90.6 % (2.22 %) | 99.7 % (0.05 %) |
| Tibial cartilage | 84.8 % (1.40 %) | 87.5 % (3.82 %) | 99.9 % (0.01 %) | |
| Patellar cartilage | 81.7 % (1.79 %) | 90.2 % (1.24 %) | 99.8% (0.04 %) |