| Literature DB >> 34258269 |
Saeid Jafarzadeh Ghoushchi1, Ramin Ranjbarzadeh2, Amir Hussein Dadkhah1, Yaghoub Pourasad3, Malika Bendechache4.
Abstract
The present study is developed a new approach using a computer diagnostic method to diagnosing diabetic diseases with the use of fluorescein images. In doing so, this study presented the growth region algorithm for the aim of diagnosing diabetes, considering the angiography images of the patients' eyes. In addition, this study integrated two methods, including fuzzy C-means (FCM) and genetic algorithm (GA) to predict the retinopathy in diabetic patients from angiography images. The developed algorithm was applied to a total of 224 images of patients' retinopathy eyes. As clearly confirmed by the obtained results, the GA-FCM method outperformed the hand method regarding the selection of initial points. The proposed method showed 0.78 sensitivity. The comparison of the fuzzy fitness function in GA with other techniques revealed that the approach introduced in this study is more applicable to the Jaccard index since it could offer the lowest Jaccard distance and, at the same time, the highest Jaccard values. The results of the analysis demonstrated that the proposed method was efficient and effective to predict the retinopathy in diabetic patients from angiography images.Entities:
Year: 2021 PMID: 34258269 PMCID: PMC8257333 DOI: 10.1155/2021/5597222
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1Example of angiography image.
Figure 2The region growth method steps.
Figure 3The results of the presented method for detection of retinopathy.
Figure 4Demonstration of confusion matrix for our approach and 8 other methods.
Comparative outcomes of the proposed strategy and recently published studies.
| Method | ACC | TPR | TNR | PPV | FPR |
|---|---|---|---|---|---|
| Deep membrane [ |
| 97.3% | 69.2% | 93.8% | 84.4% |
| Improved U-NET [ |
| 96.8% | 70.3% | 94.3% | 81.3% |
| PCNN model [ |
| 97.8% | 66.7% | 92.7% | 87.5% |
| Ant colony algorithm [ |
| 93.9% | 46.7% | 87.5% | 65.6% |
| Pixel-based Segmentation [ |
| 93.4% | 47.6% | 88.5% | 62.5% |
| Artificial Neural Network [ |
| 93.8% | 44.7% | 86.5% | 65.6% |
| Morphological Watershed [ |
| 94.4% | 48.9% | 88% | 68.8% |
| Presented FCM |
| 93% | 38.5% | 83.3% | 62.5% |
| Presented FCM+GA |
| 97.9% | 80% | 96.4% | 85.4% |
Quantitative comparative outcomes for segmentation of the retinopathy. This evaluation is conducted between our model and baseline studies. The assessments are based on Relative volume difference (RVD), Volume overlap error (VOE), and Dice similarity (DICE).
| Method | Dice | RVD (%) | VOE (%) |
|---|---|---|---|
| Deep membrane [ |
| -2.46 | 6.16 |
| Improved U-NET [ | 90 | 3.74 | 5.78 |
| PCNN model [ | 92 | 3.55 | 6.41 |
| Ant colony algorithm [ | 88 | -5.64 | 7.94 |
| Pixel-based Segmentation [ | 88 | -4.91 | 7.42 |
| Artificial Neural Network [ | 89 | 5.37 | 8.12 |
| Morphological Watershed [ | 87 | 4.96 | 7.76 |
| Presented FCM | 86% | 4.07 | 7.39 |
| Presented FCM+GA | 94% | 2.32 | 4.28 |