| Literature DB >> 29843416 |
Ching-Hsue Cheng1, Wei-Xiang Liu2.
Abstract
Population aging has become a worldwide phenomenon, which causes many serious problems. The medical issues related to degenerative brain disease have gradually become a concern. Magnetic Resonance Imaging is one of the most advanced methods for medical imaging and is especially suitable for brain scans. From the literature, although the automatic segmentation method is less laborious and time-consuming, it is restricted in several specific types of images. In addition, hybrid techniques segmentation improves the shortcomings of the single segmentation method. Therefore, this study proposed a hybrid segmentation combined with rough set classifier and wavelet packet method to identify degenerative brain disease. The proposed method is a three-stage image process method to enhance accuracy of brain disease classification. In the first stage, this study used the proposed hybrid segmentation algorithms to segment the brain ROI (region of interest). In the second stage, wavelet packet was used to conduct the image decomposition and calculate the feature values. In the final stage, the rough set classifier was utilized to identify the degenerative brain disease. In verification and comparison, two experiments were employed to verify the effectiveness of the proposed method and compare with the TV-seg (total variation segmentation) algorithm, Discrete Cosine Transform, and the listing classifiers. Overall, the results indicated that the proposed method outperforms the listing methods.Entities:
Keywords: degenerative brain disease; magnetic resonance imaging; rough sets; segmentation; wavelet packet
Year: 2018 PMID: 29843416 PMCID: PMC6025384 DOI: 10.3390/jcm7060124
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Figure 1The procedure of proposed method. (A) a segmentation block, (B) an image transformation block, (C) a classification block, and (D) a comparison block.
Figure 2(a) The T1 brain region of interest (ROI); (b) The T2 brain region of interest (ROI).
The number of T1-weighted and T2-weighted images.
| T1 | T2 | |
|---|---|---|
| Normal | 14 | 40 |
| Abnormal | 28 | 60 |
| Total | 42 | 100 |
The results of different classifiers and segmentation algorithms for DWPT.
| Dataset | Segmentation Algorithm | RS | C4.5 | Naïve Bayes | SVM |
|---|---|---|---|---|---|
| T1 | Proposed | 99.89 | 89.96 | 94.99 | 93.60 |
| T1 | TV-seg | 94.25 | 73.01 | 77.83 | 66.51 |
| T2 | Proposed | 99.36 | 93.53 | 95.30 | 95.90 |
| T2 | TV-seg | 98.7 | 91.81 | 91.79 | 90.94 |
Note: each numeric cell denotes the average accuracy and the standard deviation in bracket. DWPT, Discrete Wavelet Packet Transform.
The comparison results for different segmentation and decomposition methods.
| Dataset | Method | RS | C4.5 | Naïve Bayes | SVM | |
|---|---|---|---|---|---|---|
| T1 | Proposed | DWPT | 99.89 | 89.96 | 94.99 | 93.60 |
| T1 | Proposed | DCT | 97.03 | 85.20 | 86.54 | 85.06 |
| T1 | TV-seg | DWPT | 94.25 | 73.01 | 77.83 | 66.51 |
| T1 | TV-seg | DCT | 93.65 | 71.26 | 78.64 | 65.75 |
| T2 | Proposed | DWPT | 99.36 | 93.53 | 95.30 | 95.90 |
| T2 | Proposed | DCT | 97.79 | 92.95 | 95.89 | 95.02 |
| T2 | TV-seg | DWPT | 98.7 | 91.81 | 91.79 | 90.94 |
| T2 | TV-seg | DCT | 97.15 | 87.69 | 90.05 | 86.22 |
Note: each numeric cell denotes the average accuracy and the standard deviation in bracket.
The results of pairwise sample t-test for difference analysis.
| Proposed vs. TV-seg | DWPT vs. DCT | |
|---|---|---|
| T1 | 5.635 *** | 7.836 *** |
| T2 | 4.488 *** | 6.149 *** |
Note: *** denotes p < 0.01.