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The application of deep learning framework in quantifying retinal structures on ophthalmic image in research eye-PACS

机译:深度学习框架在研究眼 - PACS中量子图像定量视网膜结构的应用

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The rise of deep learning (DL) framework and its application in object recognition could benefit image-based medical diagnosis. Since eye is believed to be a window into human health, the application of DL on differentiating abnormal ophthalmic photography (OP) will greatly empower ophthalmologists to relieve their workload for disease screening. In our previous work, we employed ResNet-50 to construct classification model for diabetic retinopathy (DR) within the PACS. In this study, we implemented latest DL object detection and semantic segmentation framework to empower the eye-PACS. Mask R-CNN framework was selected for object detection and instance segmentation of the optic disc (OD) and the macula. Furthermore, Unet framework was utilized for semantic segmentation of retinal vessel pixels from OP. The performance of the segmented results by two frameworks achieved state-of-art efficiency and the segmented results were transmitted to PACS as grayscale softcopy presentation state (GSPS) file. We also developed a prototype for OP quantitative analysis. It's believed that the implementation of DL framework into the object recognition and analysis on OPs is meaningful and worth further investigation.
机译:深度学习(DL)框架的兴起及其在物体识别中的应用可以使基于图像的医学诊断受益。由于眼睛被认为是人类健康的窗口,因此DL在差异异常眼科摄影(OP)中的应用将极大地赋予眼科医生来缓解其疾病筛查的工作量。在我们以前的工作中,我们雇用了Reset-50,构建了PACS内的糖尿病视网膜病变(DR)的分类模型。在这项研究中,我们实施了最新的DL对象检测和语义分段框架,以赋予眼睛PACS。选择掩模R-CNN框架用于对象检测和视镜盘(OD)和MACULA的实例分割。此外,杂交框架用于来自OP的视网膜血管像素的语义分割。通过两个框架的分段结果的性能实现了最先进的效率,并且将分段结果传输到PACS作为灰度软件呈现状态(GSP)文件。我们还开发了一种用于OP定量分析的原型。据信,将DL框架实施进入对象识别和OPS分析是有意义的,值得进一步的调查。

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