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Fast esophageal layer segmentation in OCT images of guinea pigs based on sparse Bayesian classification and graph search

机译:基于稀疏贝叶斯分类和图搜索的豚鼠OCT图像快速食管层分割

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摘要

Endoscopic optical coherence tomography (OCT) devices are capable of generating high-resolution images of esophageal structures at high speed. To make the obtained data easy to interpret and reveal the clinical significance, an automatic segmentation algorithm is needed. This work proposes a fast algorithm combining sparse Bayesian learning and graph search (termed as SBGS) to automatically identify six layer boundaries on esophageal OCT images. The SBGS first extracts features, including multi-scale gradients, averages and Gabor wavelet coefficients, to train the sparse Bayesian classifier, which is used to generate probability maps indicating boundary positions. Given these probability maps, the graph search method is employed to create the final continuous smooth boundaries. The segmentation performance of the proposed SBGS algorithm was verified by esophageal OCT images from healthy guinea pigs and the eosinophilic esophagitis (EoE) models. Experiments confirmed that the SBGS method is able to implement robust esophageal segmentation for all the tested cases. In addition, benefiting from the sparse model of SBGS, the segmentation efficiency is significantly improved compared to other widely used techniques.
机译:内窥镜光学相干断层扫描(OCT)设备能够高速生成食管结构的高分辨率图像。为了使获得的数据易于解释和揭示临床意义,需要一种自动分割算法。这项工作提出了一种结合稀疏贝叶斯学习和图搜索(称为SBGS)的快速算法,以自动识别食道OCT图像上的六层边界。 SBGS首先提取特征,包括多尺度梯度,平均值和Gabor小波系数,以训练稀疏贝叶斯分类器,该分类器用于生成指示边界位置的概率图。给定这些概率图,可以使用图搜索方法来创建最终的连续平滑边界。 SBGS算法的分割性能已通过健康豚鼠的食道OCT图像和嗜酸性食管炎(EoE)模型进行了验证。实验证实,SBGS方法能够对所有测试病例进行鲁棒的食管分割。此外,得益于SBGS的稀疏模型,与其他广泛使用的技术相比,分割效率得到了显着提高。

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