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An Amplified-Target Loss Approach for Photoreceptor Layer Segmentation in Pathological OCT Scans

机译:病理OCT扫描中感光体层分割的扩增靶损失方法

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Segmenting anatomical structures such as the photoreceptor layer in retinal optical coherence tomography (OCT) scans is challenging in pathological scenarios. Supervised deep learning models trained with standard loss functions are usually able to characterize only the most common disease appearance from a training set, resulting in sub-optimal performance and poor generalization when dealing with unseen lesions. In this paper we propose to overcome this limitation by means of an augmented target loss function framework. We introduce a novel amplified-target loss that explicitly penalizes errors within the central area of the input images, based on the observation that most of the challenging disease appearance is usually located in this area. We experimentally validated our approach using a data set with OCT scans of patients with macular diseases. We observe increased performance compared to the models that use only the standard losses. Our proposed loss function strongly supports the segmentation model to better distinguish photoreceptors in highly pathological scenarios.
机译:分割解剖结构,例如视网膜光学相干断层扫描(OCT)扫描中的感光层是在病理场景中具有挑战性的。受监管的深度学习模型,具有标准损失功能的培训通常能够仅从训练集中表征最常见的疾病外观,导致在处理看不见病变时的次优性能和较差的概括。在本文中,我们建议通过增强目标损失函数框架克服这一限制。我们介绍了一种新的扩增目标损失,该损失在输入图像的中心区域内明确地惩罚,基于大多数挑战性疾病的外观通常位于该区域。我们通过用黄斑疾病的患者的DOT扫描的数据进行了实验验证了我们的方法。与仅使用标准损失的模型相比,我们观察了更高的性能。我们所提出的损失函数强烈支持分割模型,以更好地区分光感受器在高度病理情况下。

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