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Advancing Bag-of-visual-words Representations For Lesion Classification In Retinal Images.

机译:推进视觉图像词袋表示,用于视网膜图像病变分类。

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摘要

Diabetic Retinopathy (DR) is a complication of diabetes that can lead to blindness if not readily discovered. Automated screening algorithms have the potential to improve identification of patients who need further medical attention. However, the identification of lesions must be accurate to be useful for clinical application. The bag-of-visual-words (BoVW) algorithm employs a maximum-margin classifier in a flexible framework that is able to detect the most common DR-related lesions such as microaneurysms, cotton-wool spots and hard exudates. BoVW allows to bypass the need for pre- and post-processing of the retinographic images, as well as the need of specific ad hoc techniques for identification of each type of lesion. An extensive evaluation of the BoVW model, using three large retinograph datasets (DR1, DR2 and Messidor) with different resolution and collected by different healthcare personnel, was performed. The results demonstrate that the BoVW classification approach can identify different lesions within an image without having to utilize different algorithms for each lesion reducing processing time and providing a more flexible diagnostic system. Our BoVW scheme is based on sparse low-level feature detection with a Speeded-Up Robust Features (SURF) local descriptor, and mid-level features based on semi-soft coding with max pooling. The best BoVW representation for retinal image classification was an area under the receiver operating characteristic curve (AUC-ROC) of 97.8% (exudates) and 93.5% (red lesions), applying a cross-dataset validation protocol. To assess the accuracy for detecting cases that require referral within one year, the sparse extraction technique associated with semi-soft coding and max pooling obtained an AUC of 94.2 ± 2.0%, outperforming current methods. Those results indicate that, for retinal image classification tasks in clinical practice, BoVW is equal and, in some instances, surpasses results obtained using dense detection (widely believed to be the best choice in many vision problems) for the low-level descriptors.
机译:糖尿病性视网膜病(DR)是糖尿病的一种并发症,如果不容易发现,则会导致失明。自动化筛选算法有可能改善对需要进一步医疗护理的患者的识别。但是,病变的识别必须准确才能对临床应用有用。视觉词袋(BoVW)算法在灵活的框架中采用了最大利润分类器,能够检测出最常见的与DR相关的病变,例如微动脉瘤,棉絮斑和硬性渗出物。 BoVW允许绕过视网膜图像的预处理和后处理,以及识别每种类型病变的特定临时技术的需求。使用三个具有不同分辨率并由不同医护人员收集的大型视网膜成像仪数据集(DR1,DR2和Messidor)对BoVW模型进行了广泛的评估。结果表明,BoVW分类方法可以识别图像中的不同病变,而不必为每个病变使用不同的算法,从而减少了处理时间并提供了更灵活的诊断系统。我们的BoVW方案基于具有鲁棒加速特征(SURF)局部描述符的稀疏低层特征检测,以及基于具有最大池化的半软编码的中层特征。适用于视网膜图像分类的最佳BoVW表示法是应用跨数据集验证协议的,接收器工作特征曲线(AUC-ROC)下的面积为97.8%(渗出液)和93.5%(红色病变)。为了评估一年内需要转诊的病例的准确性,与半软编码和最大合并相关的稀疏提取技术获得了94.2±2.0%的AUC,优于目前的方法。这些结果表明,对于临床实践中的视网膜图像分类任务而言,BoVW是相等的,并且在某些情况下,它超过了对于低水平描述符使用密集检测(广泛认为是许多视觉问题的最佳选择)获得的结果。

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