Shalini R, Gopi Varun P
Department of Electronics and Communication Engineering, National Institute of Technology, Tiruchirappalli, Tamilnadu, 620015, India.
Phys Eng Sci Med. 2022 Dec;45(4):1111-1122. doi: 10.1007/s13246-022-01178-4. Epub 2022 Sep 12.
Glaucoma is a major cause of blindness worldwide, and its early detection is essential for the timely management of the condition. Glaucoma-induced anomalies of the optic nerve head may cause variation in the Optic Disc (OD) size. Therefore, robust OD segmentation techniques are necessary for the screening for glaucoma. Computer-aided segmentation has become a promising diagnostic tool for the early detection of glaucoma, and there has been much interest in recent years in using neural networks for medical image segmentation. This study proposed an enhanced lightweight U-Net model with an Attention Gate (AG) to segment OD images. We also used a transfer learning strategy to extract relevant features using a pre-trained EfficientNet-B0 CNN, which preserved the receptive field size and AG, which reduced the impact of gradient vanishing and overfitting. Additionally, the neural network trained using the binary focal loss function improved segmentation accuracy. The pre-trained Attention U-Net was validated using publicly available datasets, such as DRIONS-DB, DRISHTI-GS, and MESSIDOR. The model significantly reduced parameter quantity by around 0.53 M and had inference times of 40.3 ms, 44.2 ms, and 60.6 ms, respectively.
青光眼是全球失明的主要原因,其早期检测对于及时治疗该病症至关重要。青光眼引起的视神经乳头异常可能导致视盘(OD)大小发生变化。因此,强大的OD分割技术对于青光眼筛查是必要的。计算机辅助分割已成为青光眼早期检测的一种有前景的诊断工具,近年来人们对使用神经网络进行医学图像分割很感兴趣。本研究提出了一种带有注意力门(AG)的增强型轻量级U-Net模型来分割OD图像。我们还使用了迁移学习策略,利用预训练的EfficientNet-B0卷积神经网络提取相关特征,该网络保留了感受野大小和AG,减少了梯度消失和过拟合的影响。此外,使用二元焦点损失函数训练的神经网络提高了分割精度。使用公开可用的数据集(如DRIONS-DB、DRISHTI-GS和MESSIDOR)对预训练的注意力U-Net进行了验证。该模型显著减少了约0.53M的参数量,推理时间分别为40.3毫秒、44.2毫秒和60.6毫秒。