Wang Jing, Deng Guohua, Li Wanyue, Chen Yiwei, Gao Feng, Liu Hu, He Yi, Shi Guohua
University of Science and Technology of China, Hefei 230026, China.
Jiangsu Key Laboratory of Medical Optics, Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou 215263, China.
Biomed Opt Express. 2019 Nov 4;10(12):6057-6072. doi: 10.1364/BOE.10.006057. eCollection 2019 Dec 1.
Optical coherence tomography (OCT) is a promising high-speed, non-invasive imaging modality providing high-resolution retinal scans. However, a variety of external factors such as light occlusion and patient movement can seriously degrade OCT image quality, which complicates manual retinopathy detection and computer-aided diagnosis. As such, this study first presents an OCT image quality assessment (OCT-IQA) system, capable of automatic classification based on signal completeness, location, and effectiveness. Four CNN architectures (VGG-16, Inception-V3, ResNet-18, and ResNet-50) from the ImageNet classification task were used to train the proposed OCT-IQA system via transfer learning. The ResNet-50 with the best performance was then integrated into the final OCT-IQA network. The usefulness of this approach was evaluated using retinopathy detection results. A retinopathy classification network was first trained by fine-tuning Inception-V3 model. The model was then applied to two test datasets, created randomly from the original dataset, one of which was screened by the OCT-IQA system and only included high quality images while the other was mixed by high and low quality images. Results showed that retinopathy detection accuracy and area under curve (AUC) were 3.75% and 1.56% higher, respectively, for the filtered data (compared with the unfiltered data). These experimental results demonstrate the effectiveness of the proposed OCT-IQA system and suggest that deep learning could be applied to the design of computer-aided systems (CADSs) for automatic retinopathy detection.
光学相干断层扫描(OCT)是一种很有前景的高速、非侵入性成像方式,可提供高分辨率的视网膜扫描。然而,诸如光线遮挡和患者移动等各种外部因素会严重降低OCT图像质量,这使得手动视网膜病变检测和计算机辅助诊断变得复杂。因此,本研究首先提出了一种OCT图像质量评估(OCT-IQA)系统,该系统能够基于信号完整性、位置和有效性进行自动分类。来自ImageNet分类任务的四种卷积神经网络(CNN)架构(VGG-16、Inception-V3、ResNet-18和ResNet-50)被用于通过迁移学习来训练所提出的OCT-IQA系统。然后将性能最佳的ResNet-50集成到最终的OCT-IQA网络中。使用视网膜病变检测结果评估了这种方法的有效性。首先通过微调Inception-V3模型来训练一个视网膜病变分类网络。然后将该模型应用于从原始数据集中随机创建的两个测试数据集,其中一个由OCT-IQA系统筛选,只包含高质量图像,而另一个则由高质量和低质量图像混合而成。结果表明,对于经过滤波的数据,视网膜病变检测准确率和曲线下面积(AUC)分别比未滤波的数据高3.75%和1.56%。这些实验结果证明了所提出的OCT-IQA系统的有效性,并表明深度学习可应用于设计用于自动视网膜病变检测的计算机辅助系统(CADS)。