Avery Emily W, Abou-Karam Anthony, Abi-Fadel Sandra, Behland Jonas, Mak Adrian, Haider Stefan P, Zeevi Tal, Sanelli Pina C, Filippi Christopher G, Malhotra Ajay, Matouk Charles C, Falcone Guido J, Petersen Nils, Sansing Lauren H, Sheth Kevin N, Payabvash Seyedmehdi
Section of Neuroradiology, Department of Radiology and Biomedical Imaging, Yale School of Medicine, New Haven, CT 06520, USA.
CLAIM-Charité Lab for Artificial Intelligence in Medicine, Charité-Universitätsmedizin Berlin, 10117 Berlin, Germany.
Diagnostics (Basel). 2024 Feb 23;14(5):485. doi: 10.3390/diagnostics14050485.
A major driver of individual variation in long-term outcomes following a large vessel occlusion (LVO) stroke is the degree of collateral arterial circulation. We aimed to develop and evaluate machine-learning models that quantify LVO collateral status using admission computed tomography angiography (CTA) radiomics.
We extracted 1116 radiomic features from the anterior circulation territories from admission CTAs of 600 patients experiencing an acute LVO stroke. We trained and validated multiple machine-learning models for the prediction of collateral status based on consensus from two neuroradiologists as ground truth. Models were first trained to predict (1) good vs. intermediate or poor, or (2) good vs. intermediate or poor collateral status. Then, model predictions were combined to determine a three-tier collateral score (good, intermediate, or poor). We used the receiver operating characteristics area under the curve (AUC) to evaluate prediction accuracy.
We included 499 patients in training and 101 in an independent test cohort. The best-performing models achieved an averaged cross-validation AUC of 0.80 ± 0.05 for poor vs. intermediate/good collateral and 0.69 ± 0.05 for good vs. intermediate/poor, and AUC = 0.77 (0.67-0.87) and AUC = 0.78 (0.70-0.90) in the independent test cohort, respectively. The collateral scores predicted by the radiomics model were correlated with (rho = 0.45, = 0.002) and were independent predictors of 3-month clinical outcome ( = 0.018) in the independent test cohort.
Automated tools for the assessment of collateral status from admission CTA-such as the radiomics models described here-can generate clinically relevant and reproducible collateral scores to facilitate a timely treatment triage in patients experiencing an acute LVO stroke.
大血管闭塞(LVO)性卒中后长期预后个体差异的一个主要驱动因素是侧支动脉循环的程度。我们旨在开发并评估使用入院时计算机断层扫描血管造影(CTA)影像组学来量化LVO侧支状态的机器学习模型。
我们从600例急性LVO性卒中患者入院时的CTA中提取了前循环区域的1116个影像组学特征。我们基于两名神经放射科医生的共识作为金标准,训练并验证了多个用于预测侧支状态的机器学习模型。模型首先被训练用于预测(1)良好与中等或不良情况,或(2)良好与中等或不良侧支状态。然后,将模型预测结果合并以确定一个三级侧支评分(良好、中等或不良)。我们使用曲线下面积(AUC)来评估预测准确性。
我们纳入了499例患者进行训练,101例患者进入独立测试队列。表现最佳的模型在不良与中等/良好侧支的平均交叉验证AUC为0.80±0.05,良好与中等/不良侧支的平均交叉验证AUC为0.69±0.05,在独立测试队列中的AUC分别为0.77(0.67 - 0.87)和0.78(0.70 - 0.90)。影像组学模型预测的侧支评分与独立测试队列中的情况相关(rho = 0.45, = 0.002),并且是3个月临床结局的独立预测因素( = 0.018)。
从入院时CTA评估侧支状态的自动化工具——如本文所述的影像组学模型——可以生成具有临床相关性且可重复的侧支评分,以促进急性LVO性卒中患者的及时治疗分类。