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Additive Angular Margin for Few Shot Learning to Classify Clinical Endoscopy Images

机译:添加性角度余量几次射击学习分类临床内窥镜检查

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Endoscopy is a widely used imaging modality to diagnose and treat diseases in gastrointestinal tract. However, varied modalities and use of different imaging protocols at various clinical centers impose significant challenges when generalising deep learning models. Moreover, the assembly of large datasets from different clinical centers can introduce a huge label biases in multi-center studies that renders any learnt model unusable. Additionally, when using new modality or presence of images with rare pattern abnormalities such as dysplasia; a bulk amount of similar image data and their corresponding labels may not be available for training these models. In this work, we propose to use a few-shot learning approach that requires less training data and can be used to predict class labels of test samples from an unseen dataset. We propose a novel additive angular margin metric in the framework of the prototypical network in few-shot learning setting. We compare our approach to the several established methods on a large cohort of multi-center, multi-organ, multi-disease, and multi-modal gastroendoscopy data. The proposed algorithm outperforms existing state-of-the-art methods.
机译:内窥镜检查是一种广泛使用的成像模态,可诊断和治疗胃肠道中的疾病。然而,在各种临床中心时,各种成像协议的不同成像协议的使用情况会造成重大挑战。此外,来自不同临床中心的大型数据集的组装可以在多中心研究中引入巨大的标签偏见,使任何学习模型无法使用。此外,当使用具有罕见模式异常的新的形态或存在图像时,如发育不良;批量相似的图像数据及其相应的标签可能无法用于培训这些模型。在这项工作中,我们建议使用几次学习方法,该方法需要较少的培训数据,并且可用于预测来自未经看不见的数据集的测试样本的类标签。我们提出了一种在几次拍摄学习环境中的原型网络框架中的新添加性角度边缘度量。我们将我们的方法与大量的多中心,多器官,多疾病和多模态胃肠病数据进行了多种建立的方法。所提出的算法优于现有的最先进方法。

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