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Segmentation of Retinal Lesions in Fundus Images: A Patch Based Approach Using Encoder-Decoder Neural Network

机译:基底图像中视网膜病变的分割:一种基于贴剂的方法,使用编码器解码器神经网络

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摘要

Lesion segmentation is an essential aspect while diagnosing Diabetic Retinopathy (DR) at initial stages. Manual identification becomes exceptionally challenging and time consuming because of the distinction in morphologies and size of lesions. Manual annotation of lesions by professionals is labor intensive and therefore requires the development of automatic segmentation techniques, but still it is also a challenging task because of the low local contrast and small size lesions present in the image. The automatic segmentation of retinal lesions through deep learning approach is of great impact for the initial diagnosis and treatment of DR. This paper proposes a patch based approach using encoder-decoder neural network to perform retinal lesions segmentation in fundus images. The architecture is trained and validated on IDRiD dataset which consists of microaneurysms, hemorrhages and hard exudate segmentations. In this approach for creating image patches a sliding widow technique is used, later the network evaluates the patches of the images and produces a probability map that predicts different types of lesions. An elaborative experiment was accompanied on IDRiD to calculate the performance of the suggested approach. The projected sensitivity, specificity and accuracy are 97.24%, 99.97%, and 99.97% respectively, which validates the effectiveness and dominance of this technique. When compared with other studies on similar tasks, the results obtained by this work indicate substantially improved performance in terms of sensitivity & specificity.
机译:病变分割是在初始阶段诊断糖尿病视网膜病变(DR)的基本方面。由于病变的形态和大小的区别,手动鉴定变得异常挑战和耗时。手动注释专业人员的病变是劳动密集型,因此需要开发自动分割技术,但由于图像中存在的低局部对比度和小尺寸病变,仍然是一个具有挑战性的任务。通过深度学习方法自动分割视网膜病变对博士的初步诊断和治疗产生了很大的影响。本文提出了一种基于补丁的方法,使用编码器解码器神经网络在眼底图像中执行视网膜病变分割。架构培训并在白痴数据集上验证,该数据集包括微内塞,出血和硬渗出物细分。在这种用于创建图像修补的方法中,使用滑动寡妇技术,后面网络评估图像的曲线并产生预测不同类型的病变的概率图。巧妙的实验伴随着白痴来计算建议方法的性能。预计的敏感性,特异性和准确性分别为97.24%,99.97%和99.97%,验证了该技术的有效性和优势。与其他关于类似任务的其他研究相比,通过该工作获得的结果表明在敏感度和特异性方面的性能显着提高。

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