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Retinopathy of Prematurity Stage Diagnosis Using Object Segmentation and Convolutional Neural Networks

机译:基于对象分割和卷积神经网络的早产儿视网膜病变诊断

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Retinopathy of Prematurity (ROP) is an eye disorder primarily affecting premature infants with lower weights. It causes proliferation of vessels in the retina and could result in vision loss and, eventually, retinal detachment, leading to blindness. While human experts can easily identify severe stages of ROP, the diagnosis of earlier stages, which are the most relevant to determining treatment choice, are much more affected by variability in subjective interpretations of human experts. In recent years, there has been a significant effort to automate the diagnosis using deep learning. This paper builds upon the success of previous models and develops a novel architecture, which combines object segmentation and convolutional neural networks (CNN) to construct an effective classifier of ROP stages 1-3 based on neonatal retinal images. Motivated by the fact that the formation and shape of a demarcation line in the retina is the distinguishing feature between earlier ROP stages, our proposed system first trains an object segmentation model to identify the demarcation line at a pixel level and adds the resulting mask as an additional "color" channel in the original image. Then, the system trains a CNN classifier based on the processed images to leverage information from both the original image and the mask, which helps direct the model’s attention to the demarcation line. In a number of careful experiments comparing its performance to previous object segmentation systems and CNN-only systems trained on our dataset, our novel architecture significantly outperforms previous systems in accuracy, demonstrating the effectiveness of our proposed pipeline.
机译:早产儿视网膜病变(ROP)是一种眼病,主要影响体重较轻的早产儿。它会引起视网膜血管的增生,并可能导致视力丧失,并最终导致视网膜脱离,导致失明。尽管人类专家可以轻松地确定ROP的严重阶段,但与确定治疗选择最相关的早期阶段的诊断受人类专家主观解释的可变性的影响更大。近年来,人们已经做出了巨大的努力来使用深度学习使诊断自动化。本文在先前模型的成功基础上,开发了一种新颖的架构,该架构结合了对象分割和卷积神经网络(CNN),可基于新生儿视网膜图像构建ROP 1-3期的有效分类器。由于视网膜上分界线的形成和形状是早期ROP阶段之间的显着特征,因此,我们提出的系统首先训练对象分割模型以在像素级别识别分界线,然后将生成的蒙版添加为像素。原始图像中的其他“颜色”通道。然后,系统根据处理后的图像训练CNN分类器,以利用原始图像和蒙版中的信息,从而有助于将模型的注意力吸引到分界线上。在大量仔细的实验​​中,将其性能与先前的对象分割系统和在我们的数据集上训练的仅CNN的系统进行了比较,我们的新颖体系结构在准确性方面明显优于先前的系统,证明了我们提出的管道的有效性。

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