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Multiple surface segmentation using convolution neural nets: application to retinal layer segmentation in OCT images

机译:卷积神经网络的多表面分割:在OCT图像中视网膜层分割中的应用

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摘要

Automated segmentation of object boundaries or surfaces is crucial for quantitative image analysis in numerous biomedical applications. For example, retinal surfaces in optical coherence tomography (OCT) images play a vital role in the diagnosis and management of retinal diseases. Recently, graph based surface segmentation and contour modeling have been developed and optimized for various surface segmentation tasks. These methods require expertly designed, application specific transforms, including cost functions, constraints and model parameters. However, deep learning based methods are able to directly learn the model and features from training data. In this paper, we propose a convolutional neural network (CNN) based framework to segment multiple surfaces simultaneously. We demonstrate the application of the proposed method by training a single CNN to segment three retinal surfaces in two types of OCT images - normal retinas and retinas affected by intermediate age-related macular degeneration (AMD). The trained network directly infers the segmentations for each B-scan in one pass. The proposed method was validated on 50 retinal OCT volumes (3000 B-scans) including 25 normal and 25 intermediate AMD subjects. Our experiment demonstrated statistically significant improvement of segmentation accuracy compared to the optimal surface segmentation method with convex priors (OSCS) and two deep learning based UNET methods for both types of data. The average computation time for segmenting an entire OCT volume (consisting of 60 B-scans each) for the proposed method was 12.3 seconds, demonstrating low computation costs and higher performance compared to the graph based optimal surface segmentation and UNET based methods.
机译:在许多生物医学应用中,对象边界或表面的自动分割对于定量图像分析至关重要。例如,光学相干断层扫描(OCT)图像中的视网膜表面在视网膜疾病的诊断和管理中起着至关重要的作用。近来,基于图的表面分割和轮廓建模已经针对各种表面分割任务进行了开发和优化。这些方法需要经过专业设计的,特定于应用程序的转换,包括成本函数,约束和模型参数。但是,基于深度学习的方法能够直接从训练数据中学习模型和特征。在本文中,我们提出了一种基于卷积神经网络(CNN)的框架来同时分割多个表面。我们通过训练单个CNN来分割两种类型的OCT图像中的三个视网膜表面-正常视网膜和受年龄相关性黄斑变性(AMD)影响的视网膜,从而证明了所提出方法的应用。训练有素的网络可在一次通过中直接推断每个B扫描的分割。该方法在50个视网膜OCT体积(3000 B扫描)上得到了验证,其中包括25个正常和25个中级AMD受试者。我们的实验证明,与使用凸先验(OSCS)和两种基于深度学习的UNET方法针对两种类型的数据的最佳表面分割方法相比,分割精度在统计学上有显着提高。针对该方法分割整个OCT体积(每个均由60个B扫描)的平均计算时间为12.3秒,与基于图形的最佳表面分割和基于UNET的方法相比,这证明了较低的计算成本和更高的性能。

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