Recent research on COVID-19 suggests that CT imaging provides useful information to assess disease progression and assist diagnosis, in addition to help understanding the disease. There is an increasing number of studies that propose to use deep learning to provide fast and accurate quantification of COVID-19 using chest CT scans. The main tasks of interest are the automatic segmentation of lung and lung lesions in chest CT scans of confirmed or suspected COVID-19 patients. In this study, we compare twelve deep learning algorithms using a multi-center dataset, including both open-source and in-house developed algorithms. Results show that ensembling different methods can boost the overall test set performance for lung segmentation, binary lesion segmentation and multiclass lesion segmentation, resulting in mean Dice scores of 0.982, 0.724 and 0.469, respectively. The resulting binary lesions were segmented with a mean absolute volume error of 91.3 ml. In general, the task of distinguishing different lesion types was more difficult, with a mean absolute volume difference of 152 ml and mean Dice scores of 0.369 and 0.523 for consolidation and ground glass opacity, respectively. All methods perform binary lesion segmentation with an average volume error that is better than visual assessment by human raters, suggesting these methods are mature enough for a large-scale evaluation for use in clinical practice.
翻译:最近对COVID-19的研究表明,CT成像除了有助于了解疾病之外,还为评估疾病进展和协助诊断提供了有用的信息; 越来越多的研究提议利用深层学习,利用胸部CT扫描对COVID-19进行快速和准确的量化; 主要感兴趣的任务是对经确认或怀疑的COVID-19病人胸部CT扫描中的肺部和肺部损伤进行自动分解; 在这次研究中,我们比较了使用多中数据集的12种深层次学习算法,包括开放源码和内部开发的算法; 结果表明,混合不同方法可以提高肺分解、二进制损伤分解和多级损伤分解的总体测试组性能,从而分别得出0.982、0.724和0.469的中间值。 由此形成的二进制损伤与平均体积误差91.3毫升。 总的来说,用152毫升的绝对值差和内部开发的算法中0.369和0.523的平均狄克分分法可以提高肺部分数的总体测试性性性能; 分别用一种成熟的诊断法对人体平均分辨法进行较成熟的精确的评估方法。