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Detecting Retinal Nerve Fibre Layer Segmentation Errors on Spectral Domain-Optical Coherence Tomography with a Deep Learning Algorithm

机译:用深度学习算法检测光谱域 - 光学相干断层扫描的视网膜神经纤维层分割误差

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In this study we developed a deep learning (DL) algorithm that detects errors in retinal never fibre layer (RNFL) segmentation on spectral-domain optical coherence tomography (SDOCT) B-scans using human grades as the reference standard. A dataset of 25,250 SDOCT B-scans reviewed for segmentation errors by human graders was randomly divided into validation plus training (50%) and test (50%) sets. The performance of the DL algorithm was evaluated in the test sample by outputting a probability of having a segmentation error for each B-scan. The ability of the algorithm to detect segmentation errors was evaluated with the area under the receiver operating characteristic (ROC) curve. Mean DL probabilities of segmentation error in the test sample were 0.90?±?0.17 vs. 0.12?±?0.22 (P??0.001) for scans with and without segmentation errors, respectively. The DL algorithm had an area under the ROC curve of 0.979 (95% CI: 0.974 to 0.984) and an overall accuracy of 92.4%. For the B-scans with severe segmentation errors in the test sample, the DL algorithm was 98.9% sensitive. This algorithm can help clinicians and researchers review images for artifacts in SDOCT tests in a timely manner and avoid inaccurate diagnostic interpretations.
机译:在这项研究中,我们开发了一种深度学习(DL)算法,其使用人类级作为参考标准来检测视网膜域光学相干断层扫描(SDOCT)B扫描中的视网膜中的误差(RNFL)分段。通过人类分级机构的分段错误进行评估的25,250ct B-Scans的数据集随机分为验证加培训(50%)和测试(50%)套装。通过输出每个B扫描的分割误差的概率来评估DL算法的性能。通过接收器操作特性(ROC)曲线下的区域评估算法检测分割错误的能力。在测试样品中的分割误差的平均DL概率分别为0.90≤0.90≤0.17.17,0.17与0.12?0.22(p?<0.001)分别用于扫描和没有分割误差。 DL算法在ROC曲线下的区域为0.979(95%CI:0.974至0.984),总精度为92.4%。对于测试样品中具有严重分割误差的B扫描,DL算法敏感98.9%。该算法可以帮助临床医生和研究人员及时审查SDOCT测试中的伪影的图像,并避免不准确的诊断解释。

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