Li Yue, Huo Huaibi, Liu Hui, Zheng Yue, Tian Zhaoxin, Jiang Xue, Jin Shiqi, Hou Yang, Yang Qi, Teng Fei, Liu Ting
Department of Radiology, The First Hospital of China Medical University, Shenyang, China.
Department of Radiology, Shengjing Hospital of China Medical University, Shenyang, China.
Insights Imaging. 2024 Jun 20;15(1):151. doi: 10.1186/s13244-024-01731-7.
To explore the value of radiomic features derived from pericoronary adipose tissue (PCAT) obtained by coronary computed tomography angiography for prediction of coronary rapid plaque progression (RPP).
A total of 1233 patients from two centers were included in this multicenter retrospective study. The participants were divided into training, internal validation, and external validation cohorts. Conventional plaque characteristics and radiomic features of PCAT were extracted and analyzed. Random Forest was used to construct five models. Model 1: clinical model. Model 2: plaque characteristics model. Model 3: PCAT radiomics model. Model 4: clinical + radiomics model. Model 5: plaque characteristics + radiomics model. The evaluation of the models encompassed identification accuracy, calibration precision, and clinical applicability. Delong' test was employed to compare the area under the curve (AUC) of different models.
Seven radiomic features, including two shape features, three first-order features, and two textural features, were selected to build the PCAT radiomics model. In contrast to the clinical model and plaque characteristics model, the PCAT radiomics model (AUC 0.85 for training, 0.84 for internal validation, and 0.81 for external validation; p < 0.05) achieved significantly higher diagnostic performance in predicting RPP. The separate combination of radiomics with clinical and plaque characteristics model did not further improve diagnostic efficacy statistically (p > 0.05).
Radiomic feature analysis derived from PCAT significantly improves the prediction of RPP as compared to clinical and plaque characteristics. Radiomic analysis of PCAT may improve monitoring RPP over time.
Our findings demonstrate PCAT radiomics model exhibited good performance in the prediction of RPP, with potential clinical value.
Rapid plaque progression may be predictable with radiomics from pericoronary adipose tissue. Fibrous plaque volume, diameter stenosis, and fat attenuation index were identified as risk factors for predicting rapid plaque progression. Radiomics features of pericoronary adipose tissue can improve the predictive ability of rapid plaque progression.
探讨通过冠状动脉计算机断层扫描血管造影获得的冠状动脉周围脂肪组织(PCAT)的放射组学特征对冠状动脉快速斑块进展(RPP)的预测价值。
本多中心回顾性研究纳入了来自两个中心的1233例患者。参与者被分为训练组、内部验证组和外部验证组。提取并分析PCAT的传统斑块特征和放射组学特征。使用随机森林构建五个模型。模型1:临床模型。模型2:斑块特征模型。模型3:PCAT放射组学模型。模型4:临床+放射组学模型。模型5:斑块特征+放射组学模型。对模型的评估包括识别准确性、校准精度和临床适用性。采用德龙检验比较不同模型的曲线下面积(AUC)。
选择了七个放射组学特征,包括两个形状特征、三个一阶特征和两个纹理特征来构建PCAT放射组学模型。与临床模型和斑块特征模型相比,PCAT放射组学模型(训练组AUC为0.85,内部验证组为0.84,外部验证组为0.81;p<0.05)在预测RPP方面具有显著更高的诊断性能。放射组学与临床和斑块特征模型的单独组合在统计学上并未进一步提高诊断效能(p>0.05)。
与临床和斑块特征相比,源自PCAT的放射组学特征分析显著提高了对RPP的预测。PCAT的放射组学分析可能会改善对RPP随时间的监测。
我们的研究结果表明PCAT放射组学模型在预测RPP方面表现良好,具有潜在的临床价值。
冠状动脉周围脂肪组织的放射组学可能预测快速斑块进展。纤维斑块体积、直径狭窄和脂肪衰减指数被确定为预测快速斑块进展的危险因素。冠状动脉周围脂肪组织的放射组学特征可以提高快速斑块进展的预测能力。