| Literature DB >> 35222876 |
M B Sudhan1, M Sinthuja2, S Pravinth Raja3, J Amutharaj4, G Charlyn Pushpa Latha5, S Sheeba Rachel6, T Anitha5, T Rajendran7, Yosef Asrat Waji8.
Abstract
Glaucoma is the second most common cause for blindness around the world and the third most common in Europe and the USA. Around 78 million people are presently living with glaucoma (2020). It is expected that 111.8 million people will have glaucoma by the year 2040. 90% of glaucoma is undetected in developing nations. It is essential to develop a glaucoma detection system for early diagnosis. In this research, early prediction of glaucoma using deep learning technique is proposed. In this proposed deep learning model, the ORIGA dataset is used for the evaluation of glaucoma images. The U-Net architecture based on deep learning algorithm is implemented for optic cup segmentation and a pretrained transfer learning model; DenseNet-201 is used for feature extraction along with deep convolution neural network (DCNN). The DCNN approach is used for the classification, where the final results will be representing whether the glaucoma infected or not. The primary objective of this research is to detect the glaucoma using the retinal fundus images, which can be useful to determine if the patient was affected by glaucoma or not. The result of this model can be positive or negative based on the outcome detected as infected by glaucoma or not. The model is evaluated using parameters such as accuracy, precision, recall, specificity, and F-measure. Also, a comparative analysis is conducted for the validation of the model proposed. The output is compared to other current deep learning models used for CNN classification, such as VGG-19, Inception ResNet, ResNet 152v2, and DenseNet-169. The proposed model achieved 98.82% accuracy in training and 96.90% in testing. Overall, the performance of the proposed model is better in all the analysis.Entities:
Mesh:
Year: 2022 PMID: 35222876 PMCID: PMC8866016 DOI: 10.1155/2022/1601354
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Retinal fundus images: (a) healthy eye, (b) early glaucoma, (c) moderate glaucoma, and (d) deep glaucoma [2].
Figure 2Structure of optic nerve head: (a) normal and (b) glaucoma [3].
Figure 3U-Net architecture of segmentation [6].
Figure 4U-Net output image compared with ground truth image.
Figure 5Feature extraction using pretrained DenseNet-201 model and classification using DCNN [21].
Figure 6DenseNet-201 architecture [21].
Performance analysis of accuracy.
| Models | Training | Testing |
|---|---|---|
| VGG-19 | 97.73 | 95.54 |
| Inception ResNet | 94.86 | 91.64 |
| ResNet 152v2 | 97.56 | 93.21 |
| DenseNet169 | 97.14 | 95.45 |
| Proposed | 98.82 | 96.90 |
Figure 7Graphical plot of accuracy.
Performance analysis of precision.
| Models | Training | Testing |
|---|---|---|
| VGG-19 | 97.30 | 94.70 |
| Inception ResNet | 93.81 | 91.52 |
| ResNet 152v2 | 97.28 | 93.02 |
| DenseNet169 | 97.49 | 95.37 |
| Proposed | 98.63 | 96.45 |
Figure 8Graphical plot of precision.
Performance analysis of recall.
| Models | Training | Testing |
|---|---|---|
| VGG-19 | 97.84 | 95.62 |
| Inception ResNet | 94.90 | 91.97 |
| ResNet 152v2 | 97.62 | 94.05 |
| DenseNet169 | 97.35 | 95.69 |
| Proposed | 98.95 | 97.03 |
Figure 9Graphical plot of recall.
Performance analysis of specificity.
| Models | Training | Testing |
|---|---|---|
| VGG-19 | 97.24 | 95.67 |
| Inception ResNet | 94.05 | 89.92 |
| ResNet 152v2 | 97.28 | 92.73 |
| DenseNet169 | 97.00 | 94.89 |
| Proposed | 98.15 | 96.33 |
Figure 10Graphical plot of specificity.
Performance analysis of F-measure.
| Models | Training | Testing |
|---|---|---|
| VGG-19 | 97.52 | 95.39 |
| Inception ResNet | 94.79 | 91.55 |
| ResNet 152v2 | 97.35 | 93.14 |
| DenseNet169 | 97.07 | 95.09 |
| Proposed | 98.50 | 96.28 |
Figure 11Graphical plot of F-measure.