基于编码器-解码器网络的视网膜OCT数据分割

Mingue Song, Yanggon Kim
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引用次数: 2

摘要

医学图像分析一直在计算机视觉领域进行研究,因为它可以捕捉潜在的症状,从而对患者进行更精确的诊断。基于光学相干断层扫描(OCT)和磁共振成像(MRI)等医疗设备的发展,可以比以前更清晰、更高分辨率地分析医疗数据。然而,仍有许多数据在人工诊断中存在局限性。此外,由于受损的视网膜层不仅包含太多看不见的层,而且太小,因此确定受损的程度仍然是最具挑战性的任务之一。正常OCT数据层平滑,而年龄相关性黄斑变性(AMD)或糖尿病性黄斑水肿(DME)被归类为异常,其层因出血而受损。损伤层的诊断和处方需要精确的区域分类,也需要一种新的方法来有效地训练异常数据的不规则层。因此,本文提出了一种OCT数据处理方法作为预处理步骤,以改善区域层的训练边界。采用该方法对数据进行了预处理,并应用于编解码器网络SegNet和Unet。实验表明,预处理后的数据集的训练速度比原始数据集快得多,并且通过对每个范围的预处理数据集的结果进行比较,确定了优化的范围。
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Manipulating Retinal OCT data for Image Segmentation based on Encoder-Decoder Network
Medical image analysis is consistently being researched in the computer vision in that it captures potential symptoms and enables more delicate diagnosis of patients. Based on the development of medical equipment such as optical coherence tomography(OCT) and magnetic resonance imaging(MRI), it is possible to analyze medical data with clearer and higher resolution than before. However, there are still many data that have limitations in manually diagnosis by human. Moreover, identifying the extent of the damaged retinal layer also remains one of the most challenging tasks since the damaged layer not only contains too many invisible layers, but it is too small. Normal OCT data has smooth layers while age-related macular degeneration(AMD) or diabetic macular edema(DME), which are classified as abnormal, has layers that are damaged by bleeding. The precise regional classification is required for the diagnosis and prescription of the damaged layers and a new approach to effectively training an irregular layer of abnormal data is also needed. Hence, this paper proposes an OCT data manipulation method as a preprocessing step to improve training boundaries of regional layers. The preprocessed data were generated by manual range using the proposed method and applied to the encoder-decoder networks, SegNet and Unet. The experiment shows that the preprocessed datasets were trained much faster than the original and the optimized range was also confirmed through comparison the results of preprocessed dataset by each range.
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