Department of Neurology, The First Affiliated Hospital of Chongqing Medical University, Chongqing 400016, China; NHC Key Laboratory of Diagnosis and Treatment on Brain Functional Diseases, The First Affiliated Hospital of Chongqing Medical University, Chongqing 400016, China.
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing 400016, China.
J Stroke Cerebrovasc Dis. 2024 Jul;33(7):107731. doi: 10.1016/j.jstrokecerebrovasdis.2024.107731. Epub 2024 Apr 23.
Several studies report that radiomics provides additional information for predicting hematoma expansion in intracerebral hemorrhage (ICH). However, the comparison of diagnostic performance of radiomics for predicting revised hematoma expansion (RHE) remains unclear.
The cohort comprised 312 consecutive patients with ICH. A total of 1106 radiomics features from seven categories were extracted using Python software. Support vector machines achieved the best performance in both the training and validation datasets. Clinical factors models were constructed to predict RHE. Receiver operating characteristic curve analysis was used to assess the abilities of non-contrast computed tomography (NCCT) signs, radiomics features, and combined models to predict RHE.
We finally selected the top 21 features for predicting RHE. After univariate analysis, 4 clinical factors and 5 NCCT signs were selected for inclusion in the prediction models. In the training and validation dataset, radiomics features had a higher predictive value for RHE (AUC = 0.83) than a single NCCT sign and expansion-prone hematoma. The combined prediction model including radiomics features, clinical factors, and NCCT signs achieved higher predictive performances for RHE (AUC = 0.88) than other combined models.
NCCT radiomics features have a good degree of discrimination for predicting RHE in ICH patients. Combined prediction models that include quantitative imaging significantly improve the prediction of RHE, which may assist in the risk stratification of ICH patients for anti-expansion treatments.
多项研究表明,影像组学为预测脑出血(ICH)血肿扩大提供了额外的信息。然而,影像组学预测修订血肿扩大(RHE)的诊断性能比较仍不清楚。
该队列包括 312 例连续的 ICH 患者。使用 Python 软件从七个类别中提取了总共 1106 个影像组学特征。支持向量机在训练集和验证集上均取得了最佳性能。构建临床因素模型来预测 RHE。使用接收者操作特征曲线分析评估非对比 CT(NCCT)征象、影像组学特征和联合模型预测 RHE 的能力。
我们最终选择了前 21 个特征来预测 RHE。经过单因素分析,选择了 4 个临床因素和 5 个 NCCT 征象纳入预测模型。在训练集和验证集中,影像组学特征对 RHE 的预测价值(AUC = 0.83)高于单一 NCCT 征象和血肿扩大倾向。包括影像组学特征、临床因素和 NCCT 征象的联合预测模型对 RHE 的预测性能(AUC = 0.88)高于其他联合模型。
NCCT 影像组学特征对预测 ICH 患者 RHE 具有良好的区分度。纳入定量成像的联合预测模型可显著提高 RHE 的预测能力,这可能有助于对 ICH 患者进行抗扩大治疗的风险分层。