| Literature DB >> 25628755 |
Zhiyong Pang1, Dongmei Zhu1, Dihu Chen1, Li Li2, Yuanzhi Shao1.
Abstract
This study established a fully automated computer-aided diagnosis (CAD) system for the classification of malignant and benign masses via breast magnetic resonance imaging (BMRI). A breast segmentation method consisting of a preprocessing step to identify the air-breast interfacing boundary and curve fitting for chest wall line (CWL) segmentation was included in the proposed CAD system. The Chan-Vese (CV) model level set (LS) segmentation method was adopted to segment breast mass and demonstrated sufficiently good segmentation performance. The support vector machine (SVM) classifier with ReliefF feature selection was used to merge the extracted morphological and texture features into a classification score. The accuracy, sensitivity, and specificity measurements for the leave-half-case-out resampling method were 92.3%, 98.2%, and 76.2%, respectively. For the leave-one-case-out resampling method, the measurements were 90.0%, 98.7%, and 73.8%, respectively.Entities:
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Year: 2015 PMID: 25628755 PMCID: PMC4300094 DOI: 10.1155/2015/450531
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.238
Figure 1Flowchart of computerized mass segmentation and characterization in a BMRI.
Figure 2Processing steps for breast segmentation.
Figure 3An example of DCE-MRI mass segmentation: (a) original image; (b) initial segmentation result on using the FCM-based method; (c) deformation of GVF snake using FCM-based contour for initialization; (d) LS segmentation result.
Figure 4Weights calculated by ReliefF for morphological and texture features.
Areas, statistical comparisons, and area overlap measures of computerized and radiologists' manual delineation.
| Segmentation method | Area | Pearson's correlation |
| AOR1 | AOR2 |
|---|---|---|---|---|---|
| FCM | 1,439.5 ± 1,300.7 | 0.9807 | 0.7173 | 0.84 ± 0.14 | 0.75 ± 0.15 |
| GVF-snake-FCM | 1,474.7 ± 1,333.9 | 0.9828 | 0.8098 | 0.87 ± 0.09 | 0.78 ± 0.14 |
| CV-level set | 1,526.4 ± 1,334.8 | 0.9868 | 0.9449 | 0.89 ± 0.10 | 0.79 ± 0.14 |
| Radiologists' manual | 1,547.1 ± 1,380.5 | — | — | — | — |
Figure 5Scatter plot of the mass areas segmented by computerized and radiologists' manual delineation. The diagonal line represents the most perfect segmentation performance. The squares represent areas segmented by the FCM-based initial method. The diamonds represent areas extracted using the FCM-GVF method. The triangles represent areas extracted using the LS method.
Figure 6Histograms of the overlap measures for the computerized methods: (a) AOR1; (b) AOR2. The closer the AOR value is to one, the better the segmentation performed. The LS method exhibited the best performance of the three methods.
Classification results of the different segmentation methods (leave-half-case-out).
| Segmentation method | Classification model | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|
| FCM | Fisher | 79.5 | 87.7 | 57.1 |
| SVM | 74.4 | 82.5 | 52.4 | |
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| FCM-GVF-snake | Fisher | 80.8 | 86.0 | 66.7 |
| SVM | 82.1 | 86.0 | 71.4 | |
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| CV-level set | Fisher | 91.0 | 96.5 | 76.2 |
| SVM | 92.3 | 98.2 | 76.2 | |
Classification results of the different segmentation methods (leave-one-case-out).
| Segmentation method | Classification model | Accuracy (%) | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|
| FCM | Fisher | 83.3 | 91.0 | 69.0 |
| SVM | 80.8 | 93.6 | 57.1 | |
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| FCM-GVF-snake | Fisher | 78.3 | 82.1 | 71.4 |
| SVM | 82.5 | 93.6 | 61.9 | |
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| CV-level set | Fisher | 90.8 | 94.9 | 83.3 |
| SVM | 90.0 | 98.7 | 73.8 | |