Vande Berg Baptiste, De Keyzer Frederik, Cernicanu Alexandru, Claus Piet, Masci Pier Giorgio, Bogaert Jan, Dresselaers Tom
Department of Radiology, University Hospitals Leuven, Herestraat 49, 3000, Leuven, Belgium.
Department of Imaging and Pathology KU Leuven, Herestraat 49, 3000, Leuven, Belgium.
Int J Cardiovasc Imaging. 2024 Jun;40(6):1211-1220. doi: 10.1007/s10554-024-03089-9. Epub 2024 Apr 17.
Cardiac magnetic resonance cine images are primarily used to evaluate functional consequences, whereas limited information is extracted from the noncontrast pixel-wise myocardial signal intensity pattern. In this study we want to assess whether characterizing this inherent contrast pattern of noncontrast-enhanced short axis (SAX) cine images via radiomics is sufficient to distinguish subjects with acute myocardial infarction (AMI) from controls. Cine balanced steady-state free-precession images acquired at 1.5 T from 99 AMI and 49 control patients were included. First, radiomic feature extraction of the left ventricular myocardium of end-diastolic (ED) and end-systolic (ES) frames was performed based on automated (AUTO) or manually corrected (MAN) segmentations. Next, top features were selected based on optimal classification results using a support vector machine (SVM) approach. The classification performances of the four radiomics models (using AUTO or MAN segmented ED or ES images), were measured by AUC, classification accuracy (CA), F1-score, sensitivity and specificity. The most accurate model was found when combining the features RunLengthNonUniformity, ClusterShade and Median obtained from the manually segmented ES images (CA = 0.846, F1 score = 0.847). ED analysis performed worse than ES, with lower CA and F1 scores (0.769 and 0.770, respectively). Manual correction of automated contours resulted in similar model features as the automated segmentations and did not improve classification results. A radiomics analysis can capture the inherent contrast in noncontrast mid-ventricular SAX cine images to distinguishing AMI from healthy subjects. The ES radiomics model was more accurate than the ED model. Manual correction of the autosegmentation did not provide significant classification improvements.
心脏磁共振电影图像主要用于评估功能后果,而从非对比剂逐像素心肌信号强度模式中提取的信息有限。在本研究中,我们想评估通过影像组学表征非对比增强短轴(SAX)电影图像的这种固有对比模式是否足以区分急性心肌梗死(AMI)患者与对照组。纳入了在1.5T下采集的99例AMI患者和49例对照患者的电影平衡稳态自由进动图像。首先,基于自动(AUTO)或手动校正(MAN)分割对舒张末期(ED)和收缩末期(ES)帧的左心室心肌进行影像组学特征提取。接下来,使用支持向量机(SVM)方法根据最佳分类结果选择顶级特征。通过AUC、分类准确率(CA)、F1分数、敏感性和特异性来衡量四种影像组学模型(使用自动或手动分割的ED或ES图像)的分类性能。发现将从手动分割的ES图像中获得的游程长度非均匀性、聚类阴影和中位数特征相结合时,模型最准确(CA = 0.846,F1分数 = 0.847)。ED分析的表现不如ES,CA和F1分数较低(分别为0.769和0.770)。自动轮廓的手动校正产生的模型特征与自动分割相似,并没有改善分类结果。影像组学分析可以捕捉非对比剂心室中部SAX电影图像中的固有对比,以区分AMI患者与健康受试者。ES影像组学模型比ED模型更准确。自动分割的手动校正没有带来显著的分类改善。