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Improving Robustness Using Joint Attention Network for Detecting Retinal Degeneration From Optical Coherence Tomography Images

机译:使用联合注意网络从光学相干断层扫描图像中检测视网膜退化以提高鲁棒性

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Noisy data and the similarity in the ocular appearances caused by different ophthalmic pathologies pose significant challenges for an automated expert system to accurately detect retinal diseases. In addition, the lack of knowledge transferability and the need for unreasonably large datasets limit clinical application of current machine learning systems. To increase robustness, a better understanding of how the retinal subspace deformations lead to various levels of disease severity needs to be utilized for prioritizing disease-specific model details. In this paper we propose the use of disease-specific feature representation as a novel architecture comprised of two joint networks - one for supervised encoding of disease model and the other for producing attention maps in an unsupervised manner to retain disease specific spatial information. Our experimental results on publicly available datasets show the proposed joint-network significantly improves the accuracy and robustness of state-of-the-art retinal disease classification networks on unseen datasets.
机译:噪声数据和由不同眼科病理学引起的眼外表相似性对自动专家系统准确检测视网膜疾病提出了重大挑战。此外,缺乏知识的可传递性以及对不合理的大型数据集的需求限制了当前机器学习系统的临床应用。为了提高鲁棒性,需要更好地理解视网膜亚空间变形如何导致各种程度的疾病严重性,以便对特定于疾病的模型细节进行优先级排序。在本文中,我们提出使用疾病特定的特征表示作为由两个联合网络组成的新颖体系结构-一个用于疾病模型的监督编码,另一个用于以无监督的方式生成注意力图以保留疾病特定的空间信息。我们在公开数据集上的实验结果表明,所提出的联合网络显着提高了看不见的数据集上最新的视网膜疾病分类网络的准确性和鲁棒性。

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