Luo Yuqi, Sun Xuan, Kong Xin, Tong Xu, Xi Fengjun, Mao Yu, Miao Zhongrong, Ma Jun
Department of Radiology, Beijing Tiantan Hospital, Capital Medical University, Beijing 100071, China.
Department of Interventional Neuroradiology, Beijing Tiantan Hospital, Capital Medical University, Beijing 100071, China.
Eur J Radiol. 2023 Apr;161:110731. doi: 10.1016/j.ejrad.2023.110731. Epub 2023 Feb 7.
To develop an effective machine learning model to preoperatively predict the occurrence of futile recanalization (FR) of acute basilar artery occlusion (ABAO) patients with endovascular treatment (EVT).
Data from 132 ABAO patients (109 male [82.6 %]; mean age ± standard deviation, 59.1 ± 12.5 years) were randomly divided into the training (n = 106) and test cohort (n = 26) with a ratio of 8:2. FR is defined as a poor outcome [modified Rankin Scale (mRS) 4-6] despite a successful recanalization [modified Thrombolysis in Cerebral Infarction (mTICI) ≥ 2b]. A total of 1130 radiomics features were extracted from diffusion-weighted imaging (DWI) images. The least absolute shrinkage and selection operator (LASSO) regression method was applicated to select features. Support vector machine (SVM) was applicated to construct radiomics and clinical models. Finally, a radiomics-clinical model that combined clinical with radiomics features was developed. The models were evaluated by receiver operating characteristic (ROC) curve and decision curve.
The area under the receiver operating characteristic (ROC) curve (AUC) of the radiomics-clinical model was 0.897 (95 % confidence interval, 0.837-0.958) in the training cohort and 0.935 (0.833-1.000) in the test cohort. The AUC of the radiomics model was 0.887 (0.824-0.951) in the training cohort and 0.840 (0.680-1.000) in the test cohort. The AUC of the clinical model was 0.746 (0.652-0.840) in the training cohort and 0.766 (0.569-0.964) in the test cohort. The AUC of the radiomics-clinical model was significantly larger than the clinical model (p = 0.016). A radiomics-clinical nomogram was developed. The decision curve analysis indicated its clinical usefulness.
The DWI-based radiomics-clinical machine learning model achieved satisfactory performance in predicting the FR of ABAO patients preoperatively.
建立一种有效的机器学习模型,用于术前预测接受血管内治疗(EVT)的急性基底动脉闭塞(ABAO)患者出现无效再通(FR)的情况。
将132例ABAO患者(109例男性[82.6%];平均年龄±标准差,59.1±12.5岁)的数据以8:2的比例随机分为训练组(n = 106)和测试组(n = 26)。FR定义为尽管成功再通[改良脑梗死溶栓(mTICI)≥2b]但预后不良[改良Rankin量表(mRS)4 - 6分]。从弥散加权成像(DWI)图像中提取了总共1130个影像组学特征。应用最小绝对收缩和选择算子(LASSO)回归方法进行特征选择。应用支持向量机(SVM)构建影像组学和临床模型。最后,建立了一个将临床特征与影像组学特征相结合的影像组学 - 临床模型。通过受试者操作特征(ROC)曲线和决策曲线对模型进行评估。
影像组学 - 临床模型在训练组中的受试者操作特征(ROC)曲线下面积(AUC)为0.897(95%置信区间,0.837 - 0.958),在测试组中为0.935(0.833 - 1.000)。影像组学模型在训练组中的AUC为0.887(0.824 - 0.951),在测试组中为0.840(0.680 - 1.000)。临床模型在训练组中的AUC为0.746(0.652 - 0.840),在测试组中为0.766(0.569 - 0.964)。影像组学 - 临床模型的AUC显著大于临床模型(p = 0.016)。建立了影像组学 - 临床列线图。决策曲线分析表明了其临床实用性。
基于DWI的影像组学 - 临床机器学习模型在术前预测ABAO患者的FR方面取得了令人满意的性能。