Zhang Lingfeng, Xie Gang, Zhang Yue, Li Junlin, Tang Wuli, Yang Ling, Li Kang
North Sichuan Medical College, Nanchong, China.
Department of Radiology, The Third People's Hospital of Chengdu, Chengdu, China.
Front Neurosci. 2024 Oct 3;18:1443486. doi: 10.3389/fnins.2024.1443486. eCollection 2024.
This research aimed to create a machine learning model for clinical-radiomics that utilizes unenhanced computed tomography images to assess the likelihood of malignant cerebral edema (MCE) in individuals suffering from acute ischemic stroke (AIS).
The research included 179 consecutive patients with AIS from two different hospitals. These patients were randomly assigned to training ( = 143) and validation ( = 36) sets with an 8:2 ratio. Using 3DSlicer software, the radiomics features of regions impacted by infarction were derived from unenhanced CT scans. The radiomics features linked to MCE were pinpointed through a consistency test, Student's t test and the least absolute shrinkage and selection operator (LASSO) method for selecting features. Clinical parameters associated with MCE were also identified. Subsequently, machine learning models were constructed based on clinical, radiomics, and clinical-radiomics. Ultimately, the efficacy of these models was evaluated by measuring the operating characteristics of the subjects through their area under the curve (AUCs).
Logistic regression (LR) was found to be the most effective machine learning algorithm, for forecasting the MCE. In the training and validation cohorts, the AUCs of clinical model were 0.836 and 0.773, respectively, for differentiating MCE patients; the AUCs of radiomics model were 0.849 and 0.818, respectively; the AUCs of clinical and radiomics model were 0.912 and 0.916, respectively.
This model can assist in predicting MCE after acute ischemic stroke and can provide guidance for clinical treatment and prognostic assessment.
本研究旨在创建一种临床放射组学机器学习模型,该模型利用未增强的计算机断层扫描图像来评估急性缺血性卒中(AIS)患者发生恶性脑水肿(MCE)的可能性。
该研究纳入了来自两家不同医院的179例连续的AIS患者。这些患者以8:2的比例随机分配到训练组(n = 143)和验证组(n = 36)。使用3DSlicer软件,从未增强的CT扫描中提取梗死区域的放射组学特征。通过一致性检验、学生t检验和用于特征选择的最小绝对收缩和选择算子(LASSO)方法确定与MCE相关的放射组学特征。还确定了与MCE相关的临床参数。随后,基于临床、放射组学和临床-放射组学构建机器学习模型。最终,通过测量受试者曲线下面积(AUC)的操作特征来评估这些模型的疗效。
发现逻辑回归(LR)是预测MCE最有效的机器学习算法。在训练和验证队列中,临床模型区分MCE患者的AUC分别为0.836和0.773;放射组学模型的AUC分别为0.849和0.818;临床-放射组学模型的AUC分别为0.912和0.916。
该模型可有助于预测急性缺血性卒中后的MCE,并可为临床治疗和预后评估提供指导。