Oliveira Anne de Souza, Costa Marly Guimarães Fernandes, Costa João Pedro Guimarães Fernandes, Costa Filho Cícero Ferreira Fernandes
R&D Center in Electronic and Information Technology, Federal University of Amazonas, Manaus 69077-000, Brazil.
Cancer Institute of São Paulo State, São Paulo 01246-000, Brazil.
Diagnostics (Basel). 2024 Dec 12;14(24):2791. doi: 10.3390/diagnostics14242791.
BACKGROUND/OBJECTIVES: According to the World Health Organization, the gold standard for diagnosing COVID-19 is the Reverse Transcription Polymerase Chain Reaction (RT-PCR) test. However, to confirm the diagnosis in patients who have negative results but still show symptoms, imaging tests, especially computed tomography (CT), are used. In this study, using convolutional neural networks, we compared the following topics using manual and automatic lung segmentation methods: (1) the performance of an automatic segmentation of COVID-19 areas using two strategies for data partitioning, CT scans, and slice strategies; (2) the performance of an automatic segmentation method of COVID-19 when there was interobserver agreement between two groups of radiologists; and (3) the performance of the area affected by COVID-19.
Two datasets and two deep neural network architectures are used to evaluate the automatic segmentation of lungs and COVID-19 areas. The performance of the U-Net architecture is compared with the performance of a new architecture proposed by the research group.
With automatic lung segmentation, the Dice metrics for the segmentation of the COVID-19 area were 73.01 ± 9.47% and 84.66 ± 5.41% for the CT-scan strategy and slice strategy, respectively. With manual lung segmentation, the Dice metrics for the automatic segmentation of COVID-19 were 74.47 ± 9.94% and 85.35 ± 5.41% for the CT-scan and the slice strategy, respectively.
The main conclusions were as follows: COVID-19 segmentation was slightly better for the slice strategy than for the CT-scan strategy; a comparison of the performance of the automatic COVID-19 segmentation and the interobserver agreement, in a group of 7 CT scans, revealed that there was no statistically significant difference between any metric.
背景/目的:根据世界卫生组织的说法,诊断新型冠状病毒肺炎(COVID-19)的金标准是逆转录聚合酶链反应(RT-PCR)检测。然而,对于检测结果为阴性但仍有症状的患者,需通过影像学检查(尤其是计算机断层扫描(CT))来确诊。在本研究中,我们使用卷积神经网络,采用手动和自动肺部分割方法对以下内容进行了比较:(1)使用两种数据划分策略、CT扫描和切片策略对COVID-19区域进行自动分割的性能;(2)两组放射科医生之间存在观察者间一致性时COVID-19自动分割方法的性能;(3)受COVID-19影响区域的性能。
使用两个数据集和两种深度神经网络架构来评估肺和COVID-19区域的自动分割。将U-Net架构的性能与研究小组提出的新架构的性能进行比较。
对于自动肺部分割,CT扫描策略和切片策略下COVID-19区域分割的骰子系数分别为73.01±9.47%和84.66±5.41%。对于手动肺部分割,CT扫描和切片策略下COVID-19自动分割的骰子系数分别为74.47±9.9%和85.35±5.41%。
主要结论如下:COVID-19分割在切片策略下略优于CT扫描策略;在一组7次CT扫描中,对COVID-19自动分割性能与观察者间一致性进行比较,结果显示任何指标之间均无统计学显著差异。