Jiang Lina, Zhu Guoping, Wang Yue, Hong Jiayi, Fu Jingjing, Hu Jibo, Xiao Shengxiang, Chu Jiayi, Hu Sheng, Xiao Wenbo
Department of Radiology, the Fourth Affiliated Hospital of School of Medicine, and International School of Medicine, International Institutes of Medicine, Zhejiang University, Yiwu, 322000, China.
Department of Neurology, the Fourth Affiliated Hospital of School of Medicine, and International School of Medicine, International Institutes of Medicine, Zhejiang University, Yiwu, 322000, China.
Sci Rep. 2025 May 23;15(1):17990. doi: 10.1038/s41598-025-02056-1.
This study aimed to develop a predictive model integrating clinical, radiomics, and deep learning (DL) features of hyperattenuated imaging markers (HIM) from computed tomography scans immediately following mechanical thrombectomy (MT) to predict hemorrhagic transformation (HT). A total of 239 patients with HIM who underwent MT were enrolled, with 191 patients (80%) in the training cohort and 48 patients (20%) in the validation cohort. Additionally, the model was tested on an internal prospective cohort of 49 patients. A total of 1834 radiomics features and 2048 DL features were extracted from HIM images. Statistical methods, such as analysis of variance, Pearson's correlation coefficient, principal component analysis, and least absolute shrinkage and selection operator, were used to select the most significant features. A K-Nearest Neighbor classifier was employed to develop a combined model integrating clinical, radiomics, and DL features for HT prediction. Model performance was evaluated using metrics such as accuracy, sensitivity, specificity, receiver operating characteristic curves, and area under curve (AUC). In the training, validation, and test cohorts, the combined model achieved AUCs of 0.926, 0.923, and 0.887, respectively, outperforming other models, including clinical, radiomics, and DL models, as well as hybrid models combining subsets of features (Clinical + Radiomics, DL + Radiomics, and Clinical + DL) in predicting HT. The combined model, which integrates clinical, radiomics, and DL features derived from HIM, demonstrated efficacy in noninvasively predicting HT. These findings suggest its potential utility in guiding clinical decision-making for patients with MT.
本研究旨在开发一种预测模型,该模型整合机械取栓(MT)后立即进行的计算机断层扫描中超高密度成像标志物(HIM)的临床、影像组学和深度学习(DL)特征,以预测出血性转化(HT)。共有239例接受MT且有HIM的患者入组,其中191例患者(80%)纳入训练队列,48例患者(20%)纳入验证队列。此外,该模型在一个由49例患者组成的内部前瞻性队列中进行了测试。从HIM图像中提取了总共1834个影像组学特征和2048个DL特征。采用方差分析、Pearson相关系数、主成分分析和最小绝对收缩和选择算子等统计方法来选择最显著的特征。采用K近邻分类器开发一个整合临床、影像组学和DL特征的联合模型用于HT预测。使用准确率、灵敏度、特异性、受试者工作特征曲线和曲线下面积(AUC)等指标评估模型性能。在训练、验证和测试队列中,联合模型的AUC分别为0.926、0.923和0.887,优于其他模型,包括临床、影像组学和DL模型,以及结合特征子集的混合模型(临床+影像组学、DL+影像组学和临床+DL)在预测HT方面的表现。整合从HIM中获得的临床、影像组学和DL特征的联合模型在无创预测HT方面显示出有效性。这些发现表明其在指导MT患者的临床决策方面具有潜在用途。