Automated and accurate segmentation of cystoid structures in Optical Coherence Tomography (OCT) is of interest in the early detection of retinal diseases. It is, however, a challenging task. We propose a novel method for localizing cysts in 3D OCT volumes. The proposed work is biologically inspired and based on selective enhancement of the cysts, by inducing motion to a given OCT slice. A Convolutional Neural Network (CNN) is designed to learn a mapping function that combines the result of multiple such motions to produce a probability map for cyst locations in a given slice. The final segmentation of cysts is obtained via simple clustering of the detected cyst locations. The proposed method is evaluated on two public datasets and one private dataset. The public datasets include the one released for the OPTIMA Cyst segmentation challenge (OCSC) in MICCAI 2015 and the DME dataset. After training on the OCSC train set, the method achieves a mean Dice Coefficient (DC) of 0.71 on the OCSC test set. The robustness of the algorithm was examined by cross-validation on the DME and AEI (private) datasets and a mean DC values obtained were 0.69 and 0.79, respectively. Overall, the proposed system outperforms all benchmarks. These results underscore the strengths of the proposed method in handling variations in both data acquisition protocols and scanners.
翻译:光学一致性肿瘤学(OCT)中细胞细胞结构的自动和准确分解是早期发现视网膜疾病的一项重要工作,但这是一项具有挑战性的任务。我们提出了将3D OCT 卷中的细胞细胞本地化的新方法。拟议工作是生物学启发的,并以选择性增强细胞细胞结构为基础,通过向一个特定OCT切片引来运动。一个进化神经网络(CNN)旨在学习一种映射功能,该功能结合多种此类动作的结果,为某一切片中的细胞位置绘制概率图。通过将检测到的细胞位置简单组合获得细胞的最后分解。在两个公共数据集和一个私人数据集中进行了评估。公共数据集包括MICCAI 2015 中为 OFIMA 分解挑战发布的数据集(OCSC ) 和 DME 数据集。在对OCSC 列列列列列的多个动作组合进行培训后,该方法在OCSC 系统 0.71 中实现了平均的 Dice Coval 度(DC ) 和 0.69 标准 中的平均计算结果。