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A Benchmark of Ocular Disease Intelligent Recognition: One Shot for Multi-disease Detection

机译:眼部疾病智能识别的基准:多疾病检测一次

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In ophthalmology, early fundus screening is an economic and effective way to prevent blindness caused by ophthalmic diseases. Clinically, due to the lack of medical resources, manual diagnosis is time-consuming and may delay the condition. With the development of deep learning, some researches on ophthalmic diseases have achieved good results, however, most of them are just based on one disease. During fundus screening, ophthalmologists usually give diagnoses of multi-disease on binocular fundus image, so we release a dataset with 8 diseases to meet the real medical scene, which contains 10,000 fundus images from both eyes of 5,000 patients. We did some benchmark experiments on it through some state-of-the-art deep neural networks. We found simply increasing the scale of network cannot bring good results for multi-disease classification, and a well-structured feature fusion method combines characteristics of multi-disease is needed. Through this work, we hope to advance the research of related fields.
机译:在眼科学中,早期的眼底筛查是防止眼科疾病引起的失明的经济有效的方法。临床上,由于缺乏医疗资源,手动诊断是耗时的,可能会延缓条件。随着深度学习的发展,对眼科疾病的一些研究取得了良好的效果,然而,他们中的大多数都是基于一种疾病。在眼底筛查期间,眼科医生通常在双目外眼镜图像中诊断多疾病,因此我们释放了8个疾病的数据集,以满足真正的医疗场景,其中包含5,000名眼睛的10,000个眼底图像。我们通过一些最先进的深神经网络对此进行了一些基准实验。我们发现简单地增加了网络的规模不能带来多疾病分类的良好结果,并且结构良好的特征融合方法需要多疾病的特性。通过这项工作,我们希望推进相关领域的研究。

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