Department of Radiology, Azienda Ospedaliero-Universitaria, Monserrato (Cagliari), Italy (F.P., M.P., R.C., A.B., L.S.).
Department of Radiology, University of Cincinnati, Cincinnati, OH (B.J.W., A.V., A.M.).
Circ Cardiovasc Imaging. 2024 Jun;17(6):e016274. doi: 10.1161/CIRCIMAGING.123.016274. Epub 2024 Jun 18.
This study aimed to develop and validate a computed tomography angiography based machine learning model that uses plaque composition data and degree of carotid stenosis to detect symptomatic carotid plaques in patients with carotid atherosclerosis.
The machine learning based model was trained using degree of stenosis and the volumes of 13 computed tomography angiography derived intracarotid plaque subcomponents (eg, lipid, intraplaque hemorrhage, calcium) to identify plaques associated with cerebrovascular events. The model was internally validated through repeated 10-fold cross-validation and tested on a dedicated testing cohort according to discrimination and calibration.
This retrospective, single-center study evaluated computed tomography angiography scans of 268 patients with both symptomatic and asymptomatic carotid atherosclerosis (163 for the derivation set and 106 for the testing set) performed between March 2013 and October 2019. The area-under-receiver-operating characteristics curve by machine learning on the testing cohort (0.89) was significantly higher than the areas under the curve of traditional logit analysis based on the degree of stenosis (0.51, <0.001), presence of intraplaque hemorrhage (0.69, <0.001), and plaque composition (0.78, <0.001), respectively. Comparable performance was obtained on internal validation. The identified plaque components and associated cutoff values that were significantly associated with a higher likelihood of symptomatic status after adjustment were the ratio of intraplaque hemorrhage to lipid volume (≥50%, 38.5 [10.1-205.1]; odds ratio, 95% CI) and percentage of intraplaque hemorrhage volume (≥10%, 18.5 [5.7-69.4]; odds ratio, 95% CI).
This study presented an interpretable machine learning model that accurately identifies symptomatic carotid plaques using computed tomography angiography derived plaque composition features, aiding clinical decision-making.
本研究旨在开发和验证一种基于计算机断层血管造影术(CTA)的机器学习模型,该模型利用斑块成分数据和颈动脉狭窄程度来检测颈动脉粥样硬化患者的症状性颈动脉斑块。
该基于机器学习的模型使用狭窄程度和 CTA 衍生的 13 个颈动脉内斑块亚成分(如脂质、斑块内出血、钙)的体积进行训练,以识别与脑血管事件相关的斑块。该模型通过重复 10 倍交叉验证进行内部验证,并根据区分度和校准在专门的测试队列中进行测试。
这项回顾性、单中心研究评估了 2013 年 3 月至 2019 年 10 月期间进行的 268 例有症状和无症状颈动脉粥样硬化患者的 CTA 扫描(163 例用于推导集,106 例用于测试集)。机器学习在测试队列中的受试者工作特征曲线下面积(0.89)显著高于基于狭窄程度的传统逻辑分析曲线下面积(0.51,<0.001)、斑块内出血存在的曲线下面积(0.69,<0.001)和斑块成分的曲线下面积(0.78,<0.001)。内部验证也获得了类似的性能。在调整后与症状状态发生的可能性更高相关的识别出的斑块成分和相关截断值为斑块内出血与脂质体积的比值(≥50%,38.5[10.1-205.1];优势比,95%置信区间)和斑块内出血体积的百分比(≥10%,18.5[5.7-69.4];优势比,95%置信区间)。
本研究提出了一种可解释的机器学习模型,该模型使用 CTA 衍生的斑块成分特征准确识别症状性颈动脉斑块,有助于临床决策。