Radiology and Imaging Sciences, Clinical Center, National Institutes of Health, Bethesda, MD, 20892-1182, USA.
Department of Radiology, University of Wisconsin School of Medicine and Public Health, Madison, WI, 53726, USA.
Abdom Radiol (NY). 2024 Feb;49(2):642-650. doi: 10.1007/s00261-023-04119-1. Epub 2023 Dec 13.
To detect and assess abdominal aortic aneurysms (AAAs) on CT in a large asymptomatic adult patient population using fully-automated deep learning software.
The abdominal aorta was segmented using a fully-automated deep learning model trained on 66 manually-segmented abdominal CT scans from two datasets. The axial diameters of the segmented aorta were extracted to detect the presence of AAAs-maximum axial aortic diameter greater than 3 cm were labeled as AAA positive. The trained system was then externally-validated on CT colonography scans of 9172 asymptomatic outpatients (mean age, 57 years) referred for colorectal cancer screening. Using a previously-validated automated calcified atherosclerotic plaque detector, we correlated abdominal aortic Agatston and volume scores with the presence of AAA.
The deep learning software detected AAA on the external validation dataset with a sensitivity, specificity, and AUC of 96%, (95% CI 89%, 100%), 96% (96%, 97%), and 99% (98%, 99%) respectively. The Agatston and volume scores of reported AAA-positive cases were statistically significantly greater than those of reported AAA-negative cases (p < 0.0001). Using plaque alone as a AAA detector, at a threshold Agatston score of 2871, the sensitivity and specificity were 84% (73%, 94%) and 87% (86%, 87%), respectively.
Fully-automated detection and assessment of AAA on CT is feasible and accurate. There was a strong statistical association between the presence of AAA and the quantity of abdominal aortic calcified atherosclerotic plaque.
使用完全自动化的深度学习软件在大型无症状成年患者人群中检测和评估腹主动脉瘤(AAA)。
使用在两个数据集的 66 个手动分割腹部 CT 扫描中训练的完全自动化深度学习模型对腹部主动脉进行分割。提取分割主动脉的轴向直径以检测 AAA 的存在-最大轴向主动脉直径大于 3cm 被标记为 AAA 阳性。然后,在 9172 名无症状门诊患者(平均年龄 57 岁)的 CT 结肠成像扫描上对经过训练的系统进行外部验证,这些患者因结直肠癌筛查而转诊。使用先前经过验证的自动钙化粥样斑块检测器,我们将腹主动脉的 Agatston 和体积评分与 AAA 的存在相关联。
深度学习软件在外部验证数据集上检测到 AAA 的灵敏度、特异性和 AUC 分别为 96%(95%CI 89%,100%)、96%(96%,97%)和 99%(98%,99%)。报告的 AAA 阳性病例的 Agatston 和体积评分明显大于报告的 AAA 阴性病例(p<0.0001)。仅使用斑块作为 AAA 检测器,在 2871 的 Agatston 评分阈值下,灵敏度和特异性分别为 84%(73%,94%)和 87%(86%,87%)。
CT 上全自动检测和评估 AAA 是可行且准确的。AAA 的存在与腹主动脉钙化粥样斑块的数量之间存在很强的统计学关联。