Fagman Erika, Alvén Jennifer, Westerbergh Johan, Kitslaar Pieter, Kercsik Michael, Cederlund Kerstin, Duvernoy Olov, Engvall Jan, Gonçalves Isabel, Markstad Hanna, Ostenfeld Ellen, Bergström Göran, Hjelmgren Ola
Department of Radiology, Institute of Clinical Sciences, University of Gothenburg, Sweden.
Department of Radiology, Sahlgrenska University Hospital, Gothenburg, Sweden.
Heliyon. 2023 May 11;9(5):e16058. doi: 10.1016/j.heliyon.2023.e16058. eCollection 2023 May.
Plaque analysis with coronary computed tomography angiography (CCTA) is a promising tool to identify high risk of future coronary events. The analysis process is time-consuming, and requires highly trained readers. Deep learning models have proved to excel at similar tasks, however, training these models requires large sets of expert-annotated training data. The aims of this study were to generate a large, high-quality annotated CCTA dataset derived from Swedish CArdioPulmonary BioImage Study (SCAPIS), report the reproducibility of the annotation core lab and describe the plaque characteristics and their association with established risk factors.
The coronary artery tree was manually segmented using semi-automatic software by four primary and one senior secondary reader. A randomly selected sample of 469 subjects, all with coronary plaques and stratified for cardiovascular risk using the Systematic Coronary Risk Evaluation (SCORE), were analyzed. The reproducibility study (n = 78) showed an agreement for plaque detection of 0.91 (0.84-0.97). The mean percentage difference for plaque volumes was -0.6% the mean absolute percentage difference 19.4% (CV 13.7%, ICC 0.94). There was a positive correlation between SCORE and total plaque volume (rho = 0.30, p < 0.001) and total low attenuation plaque volume (rho = 0.29, p < 0.001).
We have generated a CCTA dataset with high-quality plaque annotations showing good reproducibility and an expected correlation between plaque features and cardiovascular risk. The stratified data sampling has enriched high-risk plaques making the data well suited as training, validation and test data for a fully automatic analysis tool based on deep learning.
冠状动脉计算机断层扫描血管造影(CCTA)斑块分析是识别未来冠状动脉事件高风险的一种有前景的工具。分析过程耗时,且需要训练有素的阅片者。深度学习模型已被证明在类似任务中表现出色,然而,训练这些模型需要大量由专家标注的训练数据。本研究的目的是生成一个源自瑞典心肺生物图像研究(SCAPIS)的大规模、高质量标注的CCTA数据集,报告标注核心实验室的可重复性,并描述斑块特征及其与既定风险因素的关联。
由四名初级阅片者和一名高级中级阅片者使用半自动软件对冠状动脉树进行手动分割。对随机抽取的469名受试者进行分析,所有受试者均有冠状动脉斑块,并使用系统冠状动脉风险评估(SCORE)对心血管风险进行分层。可重复性研究(n = 78)显示斑块检测的一致性为0.91(0.84 - 0.97)。斑块体积的平均百分比差异为 -0.6%,平均绝对百分比差异为19.4%(CV 13.7%,ICC 0.94)。SCORE与总斑块体积(rho = 0.30,p < 0.001)以及总低衰减斑块体积(rho = 0.29,p < 0.001)之间存在正相关。
我们生成了一个具有高质量斑块标注的CCTA数据集,显示出良好的可重复性以及斑块特征与心血管风险之间的预期相关性。分层数据采样丰富了高风险斑块,使该数据非常适合作为基于深度学习的全自动分析工具的训练、验证和测试数据。