Department of Radiology, "Maggiore Della Carità" Hospital, AOU Maggiore Della Carità, Corso Mazzini 18, Novara, Italy.
J Digit Imaging. 2022 Jun;35(3):424-431. doi: 10.1007/s10278-022-00593-z. Epub 2022 Jan 28.
The National Health Systems have been severely stressed out by the COVID-19 pandemic because 14% of patients require hospitalization and oxygen support, and 5% require admission to an Intensive Care Unit (ICU). Relationship between COVID-19 prognosis and the extent of alterations on chest CT obtained by both visual and software-based quantification that expresses objective evaluations of the percentage of ventilated lung parenchyma compared to the affected one has been proven. While commercial applications for automatic medical image computing and visualization are expensive and limited in their spread, the open-source systems are characterized by not enough standardization and time-consuming troubles. We analyzed chest CT exams on 246 patients suspected of COVID-19 performed in the Emergency Department CT room. The lung parenchyma segmentation was obtained by a threshold-based method using the open-source 3D Slicer software and software tools called "Segment Editor" and "Segment Quantification." For the three main characteristics analyzed on lungs affected by COVID-19 pneumonia, a specifical densitometry value range was defined: from - 950 to - 700 HU for well-aerated parenchyma; from - 700 to - 250 HU for interstitial lung disease; from - 250 to 250 HU for parenchymal consolidation. For the well-aerated parenchyma and the interstitial alterations, the procedure was semi-automatic with low time consumption, whereas consolidations' analysis needed manual interventions by the operator. After the chest CT, 13% of the sample was admitted to intensive care, while 34% of them to the sub-intensive care. In patients moved to intensive care, the parenchyma analysis reported a higher crazy paving presentation. The quantitative analysis of the alterations affecting the lung parenchyma of patients with COVID-19 pneumonia can be performed by threshold method segmentation on 3D Slicer. The segmentation could have an important role in the quantification in different COVID-19 pneumonia presentations, allowing to help the clinician in the correct management of patients.
国家卫生系统因 COVID-19 大流行而承受巨大压力,因为 14%的患者需要住院和吸氧支持,5%需要入住重症监护病房(ICU)。已经证明,COVID-19 预后与胸部 CT 上的改变程度之间存在关系,这些改变可以通过视觉和基于软件的量化来表达,客观评估与受累肺组织相比通气肺组织的百分比。虽然商业应用的自动医学图像计算和可视化既昂贵又传播范围有限,但开源系统的特点是标准化程度不够,且耗时费力。我们分析了在急诊科 CT 室对 246 例疑似 COVID-19 的患者进行的胸部 CT 检查。使用开源 3D Slicer 软件和名为“Segment Editor”和“Segment Quantification”的软件工具,通过基于阈值的方法获得肺实质分割。对于 COVID-19 肺炎受累肺的三个主要特征进行分析,定义了特定的密度测量值范围:从-950 到-700 HU 用于充气良好的肺实质;从-700 到-250 HU 用于间质性肺病;从-250 到 250 HU 用于实质实变。对于充气良好的肺实质和间质改变,该过程为半自动,耗时短,而实变的分析需要操作人员进行手动干预。胸部 CT 后,样本中有 13%被转入重症监护病房,34%被转入亚重症监护病房。在转入重症监护病房的患者中,肺部分析显示出更高的铺路石样表现。通过 3D Slicer 上的阈值方法分割可以对 COVID-19 肺炎患者的肺实质改变进行定量分析。该分割方法在不同 COVID-19 肺炎表现的定量分析中可能具有重要作用,有助于临床医生对患者进行正确的管理。