State Key Laboratory of Digital Medical Engineering, School of Biomedical Engineering, Hainan University, Haiko 570228, China.
Key Laboratory of Biomedical Engineering of Hainan Province, One Health Institute, Hainan University, Haiko 570228, China.
Sensors (Basel). 2023 Dec 27;24(1):150. doi: 10.3390/s24010150.
Macular pathologies can cause significant vision loss. Optical coherence tomography (OCT) images of the retina can assist ophthalmologists in diagnosing macular diseases. Traditional deep learning networks for retinal disease classification cannot extract discriminative features under strong noise conditions in OCT images. To address this issue, we propose a multi-scale-denoising residual convolutional network (MS-DRCN) for classifying retinal diseases. Specifically, the MS-DRCN includes a soft-denoising block (SDB), a multi-scale context block (MCB), and a feature fusion block (FFB). The SDB can determine the threshold for soft thresholding automatically, which removes speckle noise features efficiently. The MCB is designed to capture multi-scale context information and strengthen extracted features. The FFB is dedicated to integrating high-resolution and low-resolution features to precisely identify variable lesion areas. Our approach achieved classification accuracies of 96.4% and 96.5% on the OCT2017 and OCT-C4 public datasets, respectively, outperforming other classification methods. To evaluate the robustness of our method, we introduced Gaussian noise and speckle noise with varying PSNRs into the test set of the OCT2017 dataset. The results of our anti-noise experiments demonstrate that our approach exhibits superior robustness compared with other methods, yielding accuracy improvements ranging from 0.6% to 2.9% when compared with ResNet under various PSNR noise conditions.
黄斑病变可导致严重的视力丧失。视网膜光学相干断层扫描 (OCT) 图像可帮助眼科医生诊断黄斑疾病。传统的视网膜疾病分类深度学习网络在 OCT 图像的强噪声条件下无法提取有区分度的特征。针对这一问题,我们提出了一种用于视网膜疾病分类的多尺度去噪残差卷积网络 (MS-DRCN)。具体来说,MS-DRCN 包括软去噪块 (SDB)、多尺度上下文块 (MCB) 和特征融合块 (FFB)。SDB 可以自动确定软阈值的阈值,从而有效地去除斑点噪声特征。MCB 旨在捕获多尺度上下文信息并增强提取的特征。FFB 专门用于整合高分辨率和低分辨率特征,以精确识别可变病变区域。我们的方法在 OCT2017 和 OCT-C4 公共数据集上的分类准确率分别达到了 96.4%和 96.5%,优于其他分类方法。为了评估我们方法的鲁棒性,我们在 OCT2017 数据集的测试集中引入了具有不同 PSNR 的高斯噪声和斑点噪声。我们的抗噪声实验结果表明,与其他方法相比,我们的方法具有更高的鲁棒性,在各种 PSNR 噪声条件下,与 ResNet 相比,准确率提高了 0.6%至 2.9%。