Department of Radiology, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
Department of Neuroradiology, Beijing Neurosurgical Institute, Beijing, China.
J Neurooncol. 2024 Feb;166(3):451-460. doi: 10.1007/s11060-023-04554-6. Epub 2024 Feb 3.
To assess the utility of combining contrast-enhanced magnetic resonance imaging (CE-MRI) radiomics features with clinical variables in predicting the response to induction chemotherapy (IC) for primary central nervous system lymphoma (PCNSL).
A total of 131 patients with PCNSL (101 in the training set and 30 in the testing set) who had undergone contrast-enhanced MRI scans were retrospectively analyzed. Pyradiomics was utilized to extract radiomics features, and the clinical variables of the patients were gathered. Radiomics prediction models were developed using different combinations of feature selection methods and machine learning models, and the best combination was ultimately chosen. We screened clinical variables associated with treatment outcomes and developed clinical prediction models. The predictive performance of radiomics model, clinical model, and combined model, which integrates the best radiomics model and clinical characteristics, was independently assessed and compared using Receiver Operating Characteristic (ROC) curves.
In total, we extracted 1598 features. The best radiomics model we selected as the best utilized T-test and Recursive Feature Elimination (RFE) for feature selection and logistic regression for model building. Serum Interleukin 2 Receptor (IL-2R) and Eastern Cooperative Oncology Group (ECOG) Score were utilized to develop a clinical predictive model for assessing the response to induction chemotherapy. The results of the testing set revealed that the combined prediction model (radiomics and IL-2R) achieved the highest area under the ROC curve at 0.868 (0.683, 0.967), followed by the radiomics model at 0.857 (0.681, 0.957), and the clinical prediction model (IL-2R and ECOG) at 0.618 (0.413, 0.797). The combined model was significantly more accurate than the clinical model, with an AUC of 0.868 compared to 0.618 (P < 0.05). While the radiomics model had slightly better predictive power than the clinical model, this difference was not statistically significant (AUC, 0.857 vs. 0.618, P > 0.05).
Our prediction model, which combines radiomics signatures from CE-MRI with serum IL-2R, can effectively stratify patients with PCNSL before high-dose methotrexate (HD-MTX) -based chemotherapy.
评估联合对比增强磁共振成像(CE-MRI)放射组学特征与临床变量预测原发性中枢神经系统淋巴瘤(PCNSL)对诱导化疗(IC)反应的效用。
回顾性分析了 131 例接受对比增强 MRI 扫描的 PCNSL 患者(训练集 101 例,测试集 30 例)。采用 Pyradiomics 提取放射组学特征,并收集患者的临床变量。使用不同的特征选择方法和机器学习模型组合,开发放射组学预测模型,并最终选择最佳组合。筛选与治疗结果相关的临床变量,建立临床预测模型。使用受试者工作特征(ROC)曲线独立评估和比较放射组学模型、临床模型和整合最佳放射组学模型和临床特征的联合模型的预测性能。
共提取了 1598 个特征。我们选择的最佳放射组学模型是利用 T 检验和递归特征消除(RFE)进行特征选择,利用逻辑回归进行模型构建。利用血清白细胞介素 2 受体(IL-2R)和东部合作肿瘤组(ECOG)评分建立预测诱导化疗反应的临床预测模型。测试集结果表明,联合预测模型(放射组学和 IL-2R)的 ROC 曲线下面积最高,为 0.868(0.683,0.967),其次是放射组学模型为 0.857(0.681,0.957),临床预测模型(IL-2R 和 ECOG)为 0.618(0.413,0.797)。联合模型的准确性明显高于临床模型,AUC 为 0.868,而临床模型为 0.618(P<0.05)。虽然放射组学模型的预测能力略优于临床模型,但差异无统计学意义(AUC,0.857 比 0.618,P>0.05)。
我们的预测模型将 CE-MRI 的放射组学特征与血清 IL-2R 相结合,可有效对接受大剂量甲氨蝶呤(HD-MTX)化疗的 PCNSL 患者进行分层。