论文标题

从单个放射学图像学习covid-19的诊断

Learning Diagnosis of COVID-19 from a Single Radiological Image

论文作者

Zhang, Pengyi, Zhong, Yunxin, Tang, Xiaoying, Deng, Yunlin, Li, Xiaoqiong

论文摘要

目前,放射学图像被用作临床中Covid-19诊断的视觉证据。使用深层模型来实现自动感染测量和COVID-19诊断对于基于放射学成像的更快检查很重要。不幸的是,很难在早期系统地收集大型培训数据。为了解决这个问题,我们通过诉诸于综合多种放射学图像来探索从单个放射学图像中学习深入诊断的深层模型的可行性。具体而言,我们提出了一种称为Cosingan的新型条件生成模型,可以从具有给定条件的单个放射学图像中学到,即肺和Covid-19感染的注释。我们的Cosingan能够捕获Covid-19感染的视觉发现的条件分布,并进一步合成了与输入条件完全匹配的多样和高分辨率放射学图像。对Cosingan的合成样品进行培训的深层分类和分割网络都达到了COVID-19感染的明显检测准确性。这样的结果明显好于通过使用强数据增强来训练在相同数量的真实样品(1或2个真实样品)上训练的对应者,并且与在大型数据集中训练的对应物(2846个真实图像)近似。它证实我们的方法可以显着降低在极小数据集和大型数据集上训练的深层模型之间的性能差距,因此有可能在Covid-19-19-19的早期阶段从很少的放射学图像中实现学习COVID-19的诊断。我们的代码可在https://github.com/pengyizhang/cosingan上公开提供。

Radiological image is currently adopted as the visual evidence for COVID-19 diagnosis in clinical. Using deep models to realize automated infection measurement and COVID-19 diagnosis is important for faster examination based on radiological imaging. Unfortunately, collecting large training data systematically in the early stage is difficult. To address this problem, we explore the feasibility of learning deep models for COVID-19 diagnosis from a single radiological image by resorting to synthesizing diverse radiological images. Specifically, we propose a novel conditional generative model, called CoSinGAN, which can be learned from a single radiological image with a given condition, i.e., the annotations of the lung and COVID-19 infection. Our CoSinGAN is able to capture the conditional distribution of visual finds of COVID-19 infection, and further synthesize diverse and high-resolution radiological images that match the input conditions precisely. Both deep classification and segmentation networks trained on synthesized samples from CoSinGAN achieve notable detection accuracy of COVID-19 infection. Such results are significantly better than the counterparts trained on the same extremely small number of real samples (1 or 2 real samples) by using strong data augmentation, and approximate to the counterparts trained on large dataset (2846 real images). It confirms our method can significantly reduce the performance gap between deep models trained on extremely small dataset and on large dataset, and thus has the potential to realize learning COVID-19 diagnosis from few radiological images in the early stage of COVID-19 pandemic. Our codes are made publicly available at https://github.com/PengyiZhang/CoSinGAN.

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