| Literature DB >> 27847817 |
Woong Bae Yoon1, Ji Eun Oh1, Eun Young Chae2, Hak Hee Kim2, Soo Yeul Lee3, Kwang Gi Kim1.
Abstract
The computer-aided detection (CAD) systems have been developed to help radiologists with the early detection of breast cancer. This system provides objective and accurate information to reduce the misdiagnosis of the disease. In mammography, the pectoral muscle region is used as an index to compare the symmetry between the left and right images in the mediolateral oblique (MLO) view. The pectoral muscle segmentation is necessary for the detection of microcalcification or mass because the pectoral muscle has a similar pixel intensity as that of lesions, which affects the results of automatic detection. In this study, the mammographic image analysis society database (MIAS, 322 cases) was used for detecting the pectoral muscle segmentation. The pectoral muscle was detected by using the morphological method and the random sample consensus (RANSAC) algorithm. We evaluated the detected pectoral muscle region and compared the manual segmentation with the automatic segmentation. The results showed 92.2% accuracy. We expect that the proposed method improves the detection accuracy of breast cancer lesions using a CAD system.Entities:
Mesh:
Year: 2016 PMID: 27847817 PMCID: PMC5099485 DOI: 10.1155/2016/5967580
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1A flowchart for detecting the pectoral muscle.
Figure 2Mammographic image in the MIAS database.
Figure 3Mammographic image processing, (a) removing blank space, (b) image enhancement, (c) edge detection, (d) selecting the candidate line, and (e) result of pectoral muscle region detection.
Figure 4Linear-wedge gray scale image.
Figure 5Detecting the candidate.
Figure 6(a) Linear RANSAC method. (b) Nonlinear RANSAC method.
Figure 7Detection results of mammographic image: (a–d) good detections and (e–h) acceptable and unacceptable detections.
Results of classification.
| Good | Acceptable | Unacceptable | |
|---|---|---|---|
| Images | 264 | 36 | 22 |
Pectoral muscle detection performance.
| Category | Percentage |
|---|---|
| FP | 4.51 ± 6.53 |
| FN | 5.68 ± 8.57 |
| FP < 5% and FN < 5% | 56.5 |
| 5% < FP < 15%, 5% < FN < 15% | 31.5 |
| 15% < FP, 15% < FN | 12.0 |
Results of comparison with other methods.
| Methods | Images | Acc. | Unacc. |
|---|---|---|---|
| Kwok et al. [ | 322 | 83.6 | 16.4 |
| Mustra and Grgic [ | 40 | 85.0 | 15.0 |
| Raba et al. [ | 322 | 86.0 | 14.0 |
| Molinara et al. [ | 55 | 89.1 | 10.9 |
| Alam and Islam [ | 322 | 90.3 | 9.7 |
| Our method | 322 | 92.2 | 7.8 |