| Literature DB >> 29313301 |
N Varuna Shree1, T N R Kumar2.
Abstract
The identification, segmentation and detection of infecting area in brain tumor MRI images are a tedious and time-consuming task. The different anatomy structure of human body can be visualized by an image processing concepts. It is very difficult to have vision about the abnormal structures of human brain using simple imaging techniques. Magnetic resonance imaging technique distinguishes and clarifies the neural architecture of human brain. MRI technique contains many imaging modalities that scans and capture the internal structure of human brain. In this study, we have concentrated on noise removal technique, extraction of gray-level co-occurrence matrix (GLCM) features, DWT-based brain tumor region growing segmentation to reduce the complexity and improve the performance. This was followed by morphological filtering which removes the noise that can be formed after segmentation. The probabilistic neural network classifier was used to train and test the performance accuracy in the detection of tumor location in brain MRI images. The experimental results achieved nearly 100% accuracy in identifying normal and abnormal tissues from brain MR images demonstrating the effectiveness of the proposed technique.Entities:
Keywords: DWT; GLCM; Image segmentation; MRI; Morphology; PNN
Year: 2018 PMID: 29313301 PMCID: PMC5893499 DOI: 10.1007/s40708-017-0075-5
Source DB: PubMed Journal: Brain Inform ISSN: 2198-4026
The statistical features obtained from gray-level co-occurrence matrix (GLCM) of LL and HL subbands of trained images
| Images | CON | COR | ENE | HOM | ENT |
|---|---|---|---|---|---|
| Image 1 | 0.0116 | 0.0710 | 0.975 | 0.900 | 0.337 |
| Image 2 | 0.0112 | 0.0206 | 0.977 | 0.903 | 0.332 |
| Image 3 | 0.0036 | 0.0381 | 0.992 | 0.965 | 0.339 |
| Image 4 | 0.0139 | 0.0067 | 0.973 | 0.927 | 0.395 |
| Image 5 | 0.0168 | 0.0259 | 0.966 | 0.901 | 0.337 |
| Image 6 | 0.0054 | 0.0027 | 0.989 | 0.766 | 0.272 |
| Image 7 | 0.0138 | 0.0069 | 0.972 | 0.678 | 0.275 |
| Image 8 | 0.0047 | 0.0288 | 0.990 | 0.467 | 0.337 |
| Image 9 | 0.0162 | 0.0081 | 0.967 | 0.732 | 0.272 |
| Image 10 | 0.0125 | 0.0477 | 0.974 | 0.683 | 0.337 |
The statistical features obtained from gray-level co-occurrence matrix (GLCM) of LL and HL subbands of tested images
| Images | CON | COR | ENE | HOM | ENT |
|---|---|---|---|---|---|
| Image 1 | 0.0098 | 0.0510 | 0.856 | 0.930 | 0.228 |
| Image 2 | 0.0073 | 0.0198 | 0.899 | 0.870 | 0.389 |
| Image 3 | 0.0110 | 0.0295 | 0.954 | 0.910 | 0.321 |
| Image 4 | 0.0095 | 0.0054 | 0.774 | 0.882 | 0.350 |
| Image 5 | 0.0120 | 0.0243 | 0.832 | 0.891 | 0.302 |
| Image 6 | 0.0043 | 0.0034 | 0.820 | 0.745 | 0.253 |
| Image 7 | 0.0100 | 0.0056 | 0.854 | 0.798 | 0.265 |
| Image 8 | 0.0030 | 0.0266 | 0.860 | 0.950 | 0.330 |
| Image 9 | 0.0130 | 0.0071 | 0.789 | 0.947 | 0.232 |
| Image 10 | 0.0108 | 0.0450 | 0.893 | 0.864 | 0.330 |
Fig. 1Diagram of probabilistic neural networks
Fig. 2Brain tumor image dataset
The performance evaluation and area calculation of tumor extracted region of trained images
| Images | PSNR | MSE | Area of image in pixel | Area of tumor region |
|---|---|---|---|---|
| Image 1 | 14.011 | 6.121 | 39,240 | 7698 |
| Image 2 | 13.82 | 3.116 | 67,824 | 9874 |
| Image 3 | 14.12 | 8.068 | 50,508 | 7423 |
| Image 4 | 13.86 | 4.77 | 50,388 | 9056 |
| Image 5 | 13.79 | 5.84 | 24,964 | 4564 |
| Image 6 | 13.82 | 7.79 | 50,429 | 3698 |
| Image 7 | 13.99 | 6.92 | 50,298 | 5879 |
| Image 8 | 14.004 | 7.35 | 35,040 | 13,923 |
| Image 9 | 14.066 | 6.215 | 50,544 | 6534 |
| Image 10 | 14.03 | 6.172 | 16,384 | 4497 |
Fig. 3Observational results of an image a original images, b preprocessed images, c region segmentation tumor image, d extracted tumor images, e area of extracted tumor region
Fig. 4Comparison of trained and tested dataset classification using probabilistic neural networks