المفاهيم الأساسية
Hybrid image enhancement techniques, combining Histogram Equalization (HE) and Contrast Limited Adaptive Histogram Equalization (CLAHE), consistently outperform individual methods in improving the accuracy of CNN-based brain tumor segmentation using the U-Net architecture.
الملخص
This study investigates the impact of image enhancement techniques, including Histogram Equalization (HE), Contrast Limited Adaptive Histogram Equalization (CLAHE), and their hybrid variations, on the performance of Convolutional Neural Network (CNN)-based Brain Tumor Segmentation using the U-Net architecture.
The key highlights and insights are:
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Preprocessing:
- The dataset consists of 3064 Brain MRI images, which are resized to 256x256 pixels and converted to grayscale.
- Image enhancement techniques, such as HE, CLAHE, and their hybrid combinations, are applied to optimize image quality and contrast.
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CNN Architecture:
- The U-Net architecture is employed as the foundational framework for brain tumor segmentation.
- The encoding path captures low-level features, while the decoding path reconstructs the segmented output.
- Skip connections between encoding and decoding layers facilitate the fusion of low-level and high-level features.
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Training and Validation:
- The training process involves optimizing the loss function, regularization techniques, and optimization strategies to ensure robust model performance.
- The validation phase assesses the trained model's ability to generalize to unseen data, providing insights into its real-world applicability.
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Comparative Analysis:
- Quantitative metrics, including Accuracy, Loss, Mean Squared Error (MSE), Intersection over Union (IoU), and Dice Similarity Coefficient (DSC), are used to evaluate the performance of the CNN-based segmentation.
- The results show that the hybrid approach, particularly CLAHE-HE, consistently outperforms other techniques in terms of accuracy, segmentation overlap, and robustness.
- CLAHE demonstrates superior performance compared to HE, emphasizing the importance of adaptive contrast enhancement for brain tumor segmentation.
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Segmentation Results:
- The visual representation of the segmentation results aligns with the quantitative metrics, showcasing the model's ability to accurately delineate tumor boundaries.
- The findings highlight the potential of the proposed approach for precise brain tumor segmentation, contributing to enhanced medical diagnostics and treatment planning in neuro-oncology.
The study concludes with a call for further refinement in segmentation methodologies to improve diagnostic precision and treatment planning in neuro-oncological applications.
الإحصائيات
The dataset consists of 3064 Brain MRI images.
The images are resized to 256x256 pixels and converted to grayscale.
اقتباسات
"The hybrid approach CLAHE-HE consistently outperforms others. Results highlight its superior accuracy (0.9982, 0.9939, 0.9936 for training, testing, and validation, respectively) and robust segmentation overlap, with Jaccard values of 0.9862, 0.9847, and 0.9864, and Dice values of 0.993, 0.9923, and 0.9932 for the same phases, emphasizing its potential in neuro-oncological applications."