Cancer Center, Department of Radiology, Zhejiang Provincial People's Hospital (Affiliated People's Hospital), Hangzhou Medical College, Hangzhou, Zhejiang, China.
Jinzhou Medical University, Jinzhou, Liaoning Province, China.
Sci Rep. 2024 May 23;14(1):11760. doi: 10.1038/s41598-024-62584-0.
This study aimed to develop an optimal radiomics model for preoperatively predicting microsatellite instability (MSI) in patients with rectal cancer (RC) based on multiparametric magnetic resonance imaging. The retrospective study included 308 RC patients who did not receive preoperative antitumor therapy, among whom 51 had MSI. Radiomics features were extracted and dimensionally reduced from T2-weighted imaging (T2WI), T1-weighted imaging (T1WI), diffusion-weighted imaging (DWI), and T1-weighted contrast enhanced (T1CE) images for each patient, and the features of each sequence were combined. Multifactor logistic regression was used to screen the optimal feature set for each combination. Different machine learning methods were applied to construct predictive MSI status models. Relative standard deviation values were determined to evaluate model performance and select the optimal model. Receiver operating characteristic (ROC) curve, calibration curve, and decision curve analyses were performed to evaluate model performance. The model constructed using the k-nearest neighbor (KNN) method combined with T2WI and T1CE images performed best. The area under the curve values for prediction of MSI with this model were 0.849 (0.804-0.887), with a sensitivity of 0.784 and specificity of 0.805. The Delong test showed no significant difference in diagnostic efficacy between the KNN-derived model and the traditional logistic regression model constructed using T1WI + DWI + T1CE and T2WI + T1WI + DWI + T1CE data (P > 0.05) and the diagnostic efficiency of the KNN-derived model was slightly better than that of the traditional model. From ROC curve analysis, the KNN-derived model significantly distinguished patients at low- and high-risk of MSI with the optimal threshold of 0.2, supporting the clinical applicability of the model. The model constructed using the KNN method can be applied to noninvasively predict MSI status in RC patients before surgery based on radiomics features from T2WI and T1CE images. Thus, this method may provide a convenient and practical tool for formulating treatment strategies and optimizing individual clinical decision-making for patients with RC.
本研究旨在基于多参数磁共振成像建立预测直肠癌(RC)患者微卫星不稳定性(MSI)的最优放射组学模型。这项回顾性研究纳入了 308 例未接受术前抗肿瘤治疗的 RC 患者,其中 51 例患者存在 MSI。对每位患者的 T2 加权成像(T2WI)、T1 加权成像(T1WI)、扩散加权成像(DWI)和 T1 加权对比增强(T1CE)图像提取并降维处理放射组学特征,并对各序列特征进行组合。采用多因素逻辑回归筛选每种组合的最优特征集。应用不同的机器学习方法构建预测 MSI 状态的模型。确定相对标准偏差值以评估模型性能并选择最优模型。通过绘制受试者工作特征(ROC)曲线、校准曲线和决策曲线分析来评估模型性能。结果显示,基于 K 近邻(KNN)法结合 T2WI 和 T1CE 图像构建的模型性能最佳,其预测 MSI 的曲线下面积为 0.849(0.804-0.887),敏感度为 0.784,特异度为 0.805。DeLong 检验结果表明,与基于 T1WI+DWI+T1CE 和 T2WI+T1WI+DWI+T1CE 数据构建的传统逻辑回归模型相比,KNN 衍生模型的诊断效能无显著差异(P>0.05),且 KNN 衍生模型的诊断效能略优于传统模型。通过 ROC 曲线分析,KNN 衍生模型以 0.2 为最佳阈值,能够显著区分 MSI 低风险和高风险患者,支持模型的临床适用性。该模型基于 T2WI 和 T1CE 图像的放射组学特征,可应用于术前非侵入性预测 RC 患者的 MSI 状态,为制定 RC 患者的治疗策略和优化个体化临床决策提供了一种便捷实用的工具。