Table 1.
Article | Segmentation | Features | Classifier | Accuracy | Medulloblastoma (MB) Class | Limitations |
---|---|---|---|---|---|---|
[16] | N/A |
|
Soft-max | 99.7% | Anaplastic and Non- anaplastic |
|
[28] | N/A |
|
Soft-max | 97% | Anaplastic and Non- anaplastic |
|
[12] | N/A |
|
k-NN 2 | 87% | Anaplastic and Non- anaplastic |
|
[29] | N/A |
|
RF 3 | 91% | Anaplastic and Non- anaplastic |
|
[30] | N/A |
|
softmax | 76.6% 89.8% |
Anaplastic and Non- anaplastic |
|
[7] | K-means clustering |
|
SVM | 84.9% |
|
|
[31] | K-means clustering |
|
SVM | 65.2% |
|
|
[13] | K-means clustering | Different combinations of fused features including:
|
SVM | 96.7% |
|
|
[32] | N/A |
|
Softmax | 79.3% |
|
|
|
65.4% | |||||
[32] | N/A |
|
SVM | 93.21% |
|
|
|
93.38% |
1 TICA: Topographic independent component analysis, 2 k-NN: k-nearest neighbors,3 RF: Random Forest, 4 HOG: Histogram of oriented gradients, 5 GLCM: grey level covariance matrix, 6 GLRM: grey level run matrix, 7 LBP: local binary pattern, 8 MANOVA: Multivariate analysis of variance, and 10 VGG: Visual Geometry Group.