Correction of Retinal Nerve Fiber Layer Thickness Measurement on Spectral-Domain Optical Coherence Tomographic Images Using U-net Architecture.

IF 1.6 Q3 OPHTHALMOLOGY
Ghazale Razaghi, Masoud Aghsaei Fard, Marjaneh Hejazi
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Abstract

Purpose: In this study, an algorithm based on deep learning was presented to reduce the retinal nerve fiber layer (RNFL) segmentation errors in spectral domain optical coherence tomography (SD-OCT) scans using ophthalmologists' manual segmentation as a reference standard.

Methods: In this study, we developed an image segmentation network based on deep learning to automatically identify the RNFL thickness from B-scans obtained with SD-OCT. The scans were collected from Farabi Eye Hospital (500 B-scans were used for training, while 50 were used for testing). To remove the speckle noise from the images, preprocessing was applied before training, and postprocessing was performed to fill any discontinuities that might exist. Afterward, output masks were analyzed for their average thickness. Finally, the calculation of mean absolute error between predicted and ground truth RNFL thickness was performed.

Results: Based on the testing database, SD-OCT segmentation had an average dice similarity coefficient of 0.91, and thickness estimation had a mean absolute error of 2.23 ± 2.1 μm. As compared to conventional OCT software algorithms, deep learning predictions were better correlated with the best available estimate during the test period (r2 = 0.99 vs r2 = 0.88, respectively; P < 0.001).

Conclusion: Our experimental results demonstrate effective and precise segmentation of the RNFL layer with the coefficient of 0.91 and reliable thickness prediction with MAE 2.23 ± 2.1 μm in SD-OCT B-scans. Performance is comparable with human annotation of the RNFL layer and other algorithms according to the correlation coefficient of 0.99 and 0.88, respectively, while artifacts and errors are evident.

Abstract Image

Abstract Image

Abstract Image

利用U-net结构校正光谱域光学相干层析图像视网膜神经纤维层厚测量。
目的:本研究提出了一种基于深度学习的算法,以眼科医生手动分割为参考标准,减少光谱域光学相干断层扫描(SD-OCT)扫描中视网膜神经纤维层(RNFL)的分割误差。方法:在本研究中,我们开发了一种基于深度学习的图像分割网络,用于从SD-OCT获得的b扫描图像中自动识别RNFL厚度。扫描结果来自法拉比眼科医院(500张b片用于训练,50张用于测试)。为了去除图像中的斑点噪声,在训练前进行预处理,并进行后处理以填充可能存在的不连续性。然后,对输出掩模的平均厚度进行分析。最后,计算了预测RNFL厚度与实际RNFL厚度的平均绝对误差。结果:基于测试数据库,SD-OCT分割的平均骰子相似系数为0.91,厚度估计的平均绝对误差为2.23±2.1 μm。与传统OCT软件算法相比,在测试期间,深度学习预测与最佳可用估计的相关性更好(r2 = 0.99 vs r2 = 0.88;P 0.001)。结论:实验结果表明,在SD-OCT b扫描中,RNFL层的分割系数为0.91,分割厚度预测精度为2.23±2.1 μm。相关系数分别为0.99和0.88,性能与RNFL层人工标注和其他算法相当,但存在明显的伪影和误差。
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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
63
审稿时长
30 weeks
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