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Automated Intraretinal Layer Segmentation of Optical Coherence Tomography Images using Graph-theoretical Methods

机译:使用图论方法自动进行光学相干断层扫描图像的视网膜内层分割

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Segmentation of spectral-domain Optical Coherence Tomography (SD-OCT) images facilitates visualization and quantification of sub-retinal layers for diagnosis of retinal pathologies. However, manual segmentation is subjective, expertise dependent, and time-consuming, which limits applicability of SD-OCT. Efforts are therefore being made to implement active-contours, artificial intelligence, and graph-search to automatically segment retinal layers with accuracy comparable to that of manual segmentation, to ease clinical decision-making. Although, low optical contrast, heavy speckle noise, and pathologies pose challenges to automated segmentation. Graph-based image segmentation approach stands out from the rest because of its ability to minimize the cost function while maximising the flow. This study has developed and implemented a shortest-path based graph-search algorithm for automated intraretinal layer segmentation of SD-OCT images. The algorithm estimates the minimal-weight path between two graph-nodes based on their gradients. Boundary position indices (BPI) are computed from the transition between pixel intensities. The mean difference between BPIs of two consecutive layers quantify individual layer thicknesses, which shows statistically insignificant differences when compared to a previous study [for overall retina: p = 0.17, for individual layers: p > 0.05 (except one layer: p = 0.04)]. These results substantiate the accurate delineation of seven intraretinal boundaries in SD-OCT images by this algorithm, with a mean computation time of 0.93 seconds (64-bit WindowslO, core i5, 8GB RAM). Besides being self-reliant for denoising, the algorithm is further computationally optimized to restrict segmentation within the user defined region-of-interest. The efficiency and reliability of this algorithm, even in noisy image conditions, makes it clinically applicable.
机译:光谱域光学相干断层扫描(SD-OCT)图像的分割有助于可视化和量化视网膜下层,以诊断视网膜病变。但是,手动分段是主观的,依赖专业知识且耗时的,这限制了SD-OCT的适用性。因此,人们正在努力实现主动轮廓,人工智能和图形搜索,以与手动分割相当的精度自动分割视网膜层,以简化临床决策。虽然,低的光学对比度,严重的斑点噪声和病理状况给自动分割带来了挑战。基于图的图像分割方法与众不同,因为它能够将成本函数最小化,同时将流程最大化。这项研究已经开发并实现了基于最短路径的图搜索算法,用于SD-OCT图像的自动视网膜内层分割。该算法根据两个图节点之间的梯度来估计它们之间的最小权重路径。根据像素强度之间的过渡计算边界位置索引(BPI)。两个连续层的BPI之间的平均差异量化了各个层的厚度,与先前的研究相比,统计上的差异不显着[对于整个视网膜:p = 0.17,对于单个视网膜:p> 0.05(一层除外:p = 0.04) ]。这些结果证实了通过该算法在SD-OCT图像中的七个视网膜内边界的精确描绘,平均计算时间为0.93秒(64位Windows10,核心i5、8GB RAM)。除了可以自我降噪外,还对算法进行了进一步的计算优化,以将分割限制在用户定义的兴趣区域内。即使在嘈杂的图像条件下,该算法的效率和可靠性也使其可在临床上应用。

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