Butola Ankit, Prasad Dilip K, Ahmad Azeem, Dubey Vishesh, Qaiser Darakhshan, Srivastava Anurag, Senthilkumaran Paramasivam, Ahluwalia Balpreet Singh, Mehta Dalip Singh
Bio-photonics Laboratory, Department of Physics, Indian Institute of Technology Delhi, Hauz-Khas, New Delhi 110016, India.
School of Computer Science & Engineering, Nanyang Technological University, Singapore 639798, Singapore.
Biomed Opt Express. 2020 Aug 13;11(9):5017-5031. doi: 10.1364/BOE.395487. eCollection 2020 Sep 1.
Optical coherence tomography (OCT) is being increasingly adopted as a label-free and non-invasive technique for biomedical applications such as cancer and ocular disease diagnosis. Diagnostic information for these tissues is manifest in textural and geometric features of the OCT images, which are used by human expertise to interpret and triage. However, it suffers delays due to the long process of the conventional diagnostic procedure and shortage of human expertise. Here, a custom deep learning architecture, LightOCT, is proposed for the classification of OCT images into diagnostically relevant classes. LightOCT is a convolutional neural network with only two convolutional layers and a fully connected layer, but it is shown to provide excellent training and test results for diverse OCT image datasets. We show that LightOCT provides 98.9% accuracy in classifying 44 normal and 44 malignant (invasive ductal carcinoma) breast tissue volumetric OCT images. Also, >96% accuracy in classifying public datasets of ocular OCT images as normal, age-related macular degeneration and diabetic macular edema. Additionally, we show ∼96% test accuracy for classifying retinal images as belonging to choroidal neovascularization, diabetic macular edema, drusen, and normal samples on a large public dataset of more than 100,000 images. The performance of the architecture is compared with transfer learning based deep neural networks. Through this, we show that LightOCT can provide significant diagnostic support for a variety of OCT images with sufficient training and minimal hyper-parameter tuning. The trained LightOCT networks for the three-classification problem will be released online to support transfer learning on other datasets.
光学相干断层扫描(OCT)作为一种无标记且非侵入性的技术,在癌症和眼部疾病诊断等生物医学应用中越来越受到青睐。这些组织的诊断信息体现在OCT图像的纹理和几何特征中,人类专家利用这些特征进行解读和分类。然而,由于传统诊断程序过程漫长且缺乏专业人才,其诊断过程存在延迟。在此,提出了一种定制的深度学习架构LightOCT,用于将OCT图像分类为具有诊断意义的类别。LightOCT是一个仅具有两个卷积层和一个全连接层的卷积神经网络,但它在各种OCT图像数据集上都显示出了出色的训练和测试结果。我们表明,LightOCT在对44个正常和44个恶性(浸润性导管癌)乳腺组织体积OCT图像进行分类时,准确率达到98.9%。此外,在将眼部OCT图像的公共数据集分类为正常、年龄相关性黄斑变性和糖尿病性黄斑水肿时,准确率超过96%。此外,在一个超过10万张图像的大型公共数据集上,我们将视网膜图像分类为脉络膜新生血管、糖尿病性黄斑水肿、玻璃膜疣和正常样本时,测试准确率约为96%。将该架构的性能与基于迁移学习的深度神经网络进行了比较。通过这项研究,我们表明,LightOCT在经过充分训练和最少的超参数调整后,可以为各种OCT图像提供重要的诊断支持。针对三分类问题训练的LightOCT网络将在线发布,以支持在其他数据集上的迁移学习。