论文标题

肺部感染量化Covid-19在CT图像中具有深度学习

Lung Infection Quantification of COVID-19 in CT Images with Deep Learning

论文作者

Shan, Fei, Gao, Yaozong, Wang, Jun, Shi, Weiya, Shi, Nannan, Han, Miaofei, Xue, Zhong, Shen, Dinggang, Shi, Yuxin

论文摘要

CT成像对于诊断,评估和分期COVID-19感染至关重要。通常建议每3-5天进行一次扫描以进行疾病进展。据报道,在Covid-19患者中,双侧和外围地面玻璃的不透明(GGO)是CT的主要发现。但是,由于缺乏计算机化的量化工具,放射学报告中目前仅使用定性印象和对感染区域的粗略描述。在本文中,开发了一个基于深度学习(DL)的分割系统,以自动量化感兴趣的感染区域(ROI)及其体积比率W.R.T.肺。通过将自动分割的感染区与300例COVID-19患者的300张胸部CT扫描中的手动分割区域进行比较,评估了系统的性能。为了快速手动描述训练样本和可能的自动结果手动干预,已经采用了人类的策略(HITL)策略来协助放射科医生进行感染区域细分,从而将总分割时间大幅减少到3次迭代模型更新后的4分钟。平均骰子类似系数在自动和手动发作分段之间显示91.6%的一致性,整个肺部感染百分比(POI)的平均估计误差为0.3%。最后,讨论了可能的应用,包括但不限于分析裂片中的随访CT扫描和感染分布与临床发现相关的细分。

CT imaging is crucial for diagnosis, assessment and staging COVID-19 infection. Follow-up scans every 3-5 days are often recommended for disease progression. It has been reported that bilateral and peripheral ground glass opacification (GGO) with or without consolidation are predominant CT findings in COVID-19 patients. However, due to lack of computerized quantification tools, only qualitative impression and rough description of infected areas are currently used in radiological reports. In this paper, a deep learning (DL)-based segmentation system is developed to automatically quantify infection regions of interest (ROIs) and their volumetric ratios w.r.t. the lung. The performance of the system was evaluated by comparing the automatically segmented infection regions with the manually-delineated ones on 300 chest CT scans of 300 COVID-19 patients. For fast manual delineation of training samples and possible manual intervention of automatic results, a human-in-the-loop (HITL) strategy has been adopted to assist radiologists for infection region segmentation, which dramatically reduced the total segmentation time to 4 minutes after 3 iterations of model updating. The average Dice simiarility coefficient showed 91.6% agreement between automatic and manual infaction segmentations, and the mean estimation error of percentage of infection (POI) was 0.3% for the whole lung. Finally, possible applications, including but not limited to analysis of follow-up CT scans and infection distributions in the lobes and segments correlated with clinical findings, were discussed.

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