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首页> 外文期刊>Scientific reports. >Quantification of Retinal Nerve Fibre Layer Thickness on Optical Coherence Tomography with a Deep Learning Segmentation-Free Approach
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Quantification of Retinal Nerve Fibre Layer Thickness on Optical Coherence Tomography with a Deep Learning Segmentation-Free Approach

机译:具有深度学习分割方法光学相干断层扫描的视网膜神经纤维层厚度的定量

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This study describes a segmentation-free deep learning (DL) algorithm for measuring retinal nerve fibre layer (RNFL) thickness on spectral-domain optical coherence tomography (SDOCT). The study included 25,285 B-scans from 1,338 eyes of 706 subjects. Training was done to predict RNFL thickness from raw unsegmented scans using conventional RNFL thickness measurements from good quality images as targets, forcing the DL algorithm to learn its own representation of RNFL. The algorithm was tested in three different sets: (1) images without segmentation errors or artefacts, (2) low-quality images with segmentation errors, and (3) images with other artefacts. In test set 1, segmentation-free RNFL predictions were highly correlated with conventional RNFL thickness (r?=?0.983, P??0.001). In test set 2, segmentation-free predictions had higher correlation with the best available estimate (tests with good quality taken in the same date) compared to those from the conventional algorithm (r?=?0.972 vs. r?=?0.829, respectively; P??0.001). Segmentation-free predictions were also better in test set 3 (r?=?0.940 vs. r?=?0.640, P??0.001). In conclusion, a novel segmentation-free algorithm to extract RNFL thickness performed similarly to the conventional method in good quality images and better in images with errors or other artefacts.
机译:本研究描述了一种用于测量光谱域光学相干断层扫描(SDOCT)上的视网膜神经纤维层(RNFL)厚度的分割深度学习(DL)算法。该研究包括来自706名科目的1,338只眼睛的25,285 B扫描。完成培训以预测来自原始的未分段扫描的RNFL厚度,使用良好的rnfl厚度测量从良好的质量图像作为目标,强制DL算法学习其自身的RNFL表示。该算法在三种不同的集合中进行测试:(1)没有分割错误或人工制品的图像,(2)具有分割误差的低质量图像,(3)与其他人工制品的图像。在测试组1中,与常规RNFL厚度(R≥≤0.983,p≤0.0.983)高度相关的分割的RNFL预测。在测试集2中,与来自传统算法(R?= 0.972 Vs. r?= 0.829的相同日期相同的最佳质量的最佳可用估计(具有良好质量的测试,分割的预测具有更高的相关性; p?<?0.001)。在测试组3中,可以更好的分割预测(R?= 0.940 Vs. r?= 0.640,p?<0.001)。总之,一种新的分割算法,用于提取与良好质量图像中的传统方法类似地执行的RNFL厚度,并且在具有错误或其他人工制品的图像中更好地进行。

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