论文标题

深度学习以估计肺部感染区域的物理比例用于COVID-19与CT图像集

Deep learning to estimate the physical proportion of infected region of lung for COVID-19 pneumonia with CT image set

论文作者

Wu, Wei, Shi, Yu, Li, Xukun, Zhou, Yukun, Du, Peng, Lv, Shuangzhi, Liang, Tingbo, Sheng, Jifang

论文摘要

利用计算机断层扫描(CT)图像快速估计COVID-19的病例严重程度是最直接有效的方法之一。本文研究了两项任务。一种是在肺炎的情况下将完整肺的面膜分割。另一个是生成由Covid-19感染的区域的口罩。然后将这两个部分的面具转换为相应的体积,以计算肺部感染区域的物理比例。此处收集并研究了总共129个CT图像集。 CT图像的固有Hounsfiled值首先用于生成用于完整肺和受感染区域的标记蒙版的初始肮脏版本。然后,两位专业放射科医生仔细调整并改进了样品,以生成最终的训练集和测试基准。评估了两个深度学习模型:UNET和2.5D UNET。对于受感染区域的细分市场,遵循一个基于深度学习的分类器来删除与空气管和血管组织等错误分割的无关模糊区域,例如,对于完整的肺和感染区域的细分面具,最佳方法可以实现0.972和0.757在我们的测试类似测试中的平均值。作为肺部感染区域的总比例,最终结果显示0.961(皮尔逊的相关系数)和11.7%(平均绝对百分比误差)。肺部感染区域的即时比例可以用作视觉证据,以帮助临床医生确定病例的严重性。此外,被感染区域的量化报告可以帮助预测在治疗周期内定期扫描的19例相互证明的预后。

Utilizing computed tomography (CT) images to quickly estimate the severity of cases with COVID-19 is one of the most straightforward and efficacious methods. Two tasks were studied in this present paper. One was to segment the mask of intact lung in case of pneumonia. Another was to generate the masks of regions infected by COVID-19. The masks of these two parts of images then were converted to corresponding volumes to calculate the physical proportion of infected region of lung. A total of 129 CT image set were herein collected and studied. The intrinsic Hounsfiled value of CT images was firstly utilized to generate the initial dirty version of labeled masks both for intact lung and infected regions. Then, the samples were carefully adjusted and improved by two professional radiologists to generate the final training set and test benchmark. Two deep learning models were evaluated: UNet and 2.5D UNet. For the segment of infected regions, a deep learning based classifier was followed to remove unrelated blur-edged regions that were wrongly segmented out such as air tube and blood vessel tissue etc. For the segmented masks of intact lung and infected regions, the best method could achieve 0.972 and 0.757 measure in mean Dice similarity coefficient on our test benchmark. As the overall proportion of infected region of lung, the final result showed 0.961 (Pearson's correlation coefficient) and 11.7% (mean absolute percent error). The instant proportion of infected regions of lung could be used as a visual evidence to assist clinical physician to determine the severity of the case. Furthermore, a quantified report of infected regions can help predict the prognosis for COVID-19 cases which were scanned periodically within the treatment cycle.

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