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Let’s Find Fluorescein: Cross-Modal Dual Attention Learning For Fluorescein Leakage Segmentation In Fundus Fluorescein Angiography

机译:让我们发现荧光素:对荧光素血管造影的荧光素泄漏细分的跨模态双重关注

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Automatic segmentation of fluorescein leakage in fundus fluorescein angiography images is important in the clinical diagnosis of advanced diabetic retinopathy. Despite the recent success of deep-learning-based models in improving medical image segmentation, segmentation of fluorescein leakage has been ignored owing to (1) a lack of publicly available data with sufficient annotations for training a segmentation network and (2) incapability of supervised models to accurately localize fluorescein leakage at different imaging angles. To address these issues, we studied the automatic segmentation of fluorescein leakage in fundus fluorescein angiography images and devised a method involving (1) a cross-modal learning framework for fluorescein leakage segmentation using both image and text data, (2) a dual attention learning module for identifying important linguistic and visual features, and (3) fluorescein-related-keyword classification for identifying meaningful textual expressions pertaining to the location and type of fluorescein leakage. We demonstrate the effectiveness of the proposed method for an in-house fundus fluorescein angiography image data set.
机译:荧光素渗漏的自动分割荧光素血管造影图像在晚期糖尿病视网膜病变的临床诊断中是重要的。尽管最近基于深度学习的模型成功改善了医学图像分割,但由于(1)(1)缺乏具有足够注释的公共可用数据来忽略荧光素泄漏的细分,用于培训分割网络和(2)监督的无法安全性模型以准确定位不同成像角度的荧光素泄漏。为了解决这些问题,我们研究了眼底荧光血管造影图像中荧光素泄漏的自动分割,并设计了一种涉及(1)使用图像和文本数据的荧光素泄漏分割的跨模型学习框架的方法,(2)双重注意学习用于识别重要语言和视觉功能的模块,(3)荧光素相关关键字分类,用于识别与荧光素泄漏的位置和类型有关的有意义的文本表达。我们展示了所提出的内部眼底荧光素血管造影图像数据集的方法的有效性。

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