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Bio-inspired Attentive Segmentation of Retinal OCT Imaging

机译:Bio-Inspired Tearinal OCT成像的细分分割

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摘要

Albeit optical coherence imaging (OCT) is widely used to assess ophthalmic pathologies, localization of intra-retinal boundaries suffers from erroneous segmentations due to image artifacts or topological abnormalities. Although deep learning-based methods have been effectively applied in OCT imaging, accurate automated layer segmentation remains a challenging task, with the flexibility and precision of most methods being highly constrained. In this paper, we propose a novel method to segment all retinal layers, tailored to the bio-topological OCT geometry. In addition to traditional learning of shift-invariant features, our method learns in selected pixels horizontally and vertically, exploiting the orientation of the extracted features. In this way, the most discriminative retinal features are generated in a robust manner, while long-range pixel dependencies across spatial locations are efficiently captured. To validate the effectiveness and generalisation of our method, we implement three sets of networks based on different backbone models. Results on three independent studies show that our methodology consistently produces more accurate segmentations than state-of-the-art networks, and shows better precision and agreement with ground truth. Thus, our method not only improves segmentation, but also enhances the statistical power of clinical trials with layer thickness change outcomes.
机译:尽管光学相干成像(OCT)被广泛用于评估眼科病理学,但由于图像伪影或拓扑异常,视网膜内边界的定位受到错误的分割。虽然基于深度学习的方法已在OCT成像中有效应用,但准确的自动化层分割仍然是一个具有挑战性的任务,具有大多数方法的灵活性和精度受到高度约束。在本文中,我们提出了一种对所有视网膜层进行分割的新方法,适合生物拓扑oct几何形状。除了传统的转移不变特征学习之外,我们的方法除了水平和垂直的选定像素中,可以在选定的像素中学习,利用提取的功能的方向。以这种方式,以稳健的方式产生最辨别的视网膜特征,而跨空间位置的远程像素依赖性被有效地捕获。为了验证我们方法的有效性和泛化,我们基于不同的骨干模型实现了三组网络。结果三个独立研究表明,我们的方法始终如一地产生比最先进的网络更准确的细分,并与地面真理表现出更好的精度和协议。因此,我们的方法不仅改善了分段,而且还提高了层厚度变化结果的临床试验的统计力。

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