Zhao Wenjun, Hou Mengyan, Wang Juan, Song Dan, Niu Yongchao
Department of MRI, Xinxiang Central Hospital (The Fourth Clinical College of Xinxiang Medical University), 56 Jinsui Road, Xinxiang, Henan, 453000, China.
Xinxiang Medical Imaging Engineering Technology Research Center, Xinxiang Key Laboratory of Cardiology Imaging, 56 Jinsui Road, Xinxiang, Henan, 453000, China.
BMC Med Imaging. 2024 Dec 30;24(1):353. doi: 10.1186/s12880-024-01548-2.
To develop and validate an interpretable machine learning model based on intratumoral and peritumoral radiomics combined with clinicoradiological features and metabolic information from magnetic resonance spectroscopy (MRS), to predict clinically significant prostate cancer (csPCa, Gleason score ≥ 3 + 4) and avoid unnecessary biopsies.
This study retrospectively analyzed 350 patients with suspicious prostate lesions from our institution who underwent 3.0 Tesla multiparametric magnetic resonance imaging (mpMRI) prior to biopsy (training set, n = 191, testing set, n = 83, and a temporal validation set, n = 76). Intratumoral and peritumoral volumes of interest (VOI, VOI)) were manually segmented by experienced radiologists on T2-weighted imaging (T2WI) and apparent diffusion coefficient (ADC) maps. Radiomic features were extracted separately from the VOI and VOI. After feature selection via the recursive feature elimination (RFE) algorithm, intratumoral radiomic score (intra-rad-score) and peritumoral radiomic score (peri-rad-score) were constructed. The clinical model, MRS model, and combined model integrating radiomic, clinicoradiological and metabolic features were constructed via the eXtreme Gradient Boosting (XGBoost) algorithm. The predictive performance of the models was evaluated in both the training and testing sets using receiver operating characteristic (ROC) curve analysis. SHapley Additive exPlanations (SHAP) analysis was applied to the combined model to visualize and interpret the prediction process.
A total of 350 patients were included, comprising 173 patients with csPCa (49.4%) and 177 patients with non-csPCa (50.6%). The intra-rad-score and peri-rad-score were constructed via 10 and 16 radiomic features. The combined model demonstrated the highest AUC, accuracy, F1 score, sensitivity, and specificity in the testing set (0.968, 0.928, 0.927, 0.932, and 0.923, respectively) and in the temporal validation set (0.940, 0.895, 0.890, 0.923, and 0.875, respectively). SHAP analysis revealed that the intra-rad-score, PSAD, peri-rad-score, and PI-RADS score were the most important predictors of the combined model.
We developed and validated a robust machine learning model incorporating intratumoral and peritumoral radiomic features, along with clinicoradiological and metabolic parameters, to accurately identify csPCa. The prediction process was visualized via SHAP analysis to facilitate clinical decision- making.
开发并验证一种基于瘤内和瘤周放射组学,结合临床放射学特征和磁共振波谱(MRS)代谢信息的可解释机器学习模型,以预测临床显著前列腺癌(csPCa,Gleason评分≥3+4)并避免不必要的活检。
本研究回顾性分析了我院350例前列腺可疑病变患者,这些患者在活检前接受了3.0特斯拉多参数磁共振成像(mpMRI)检查(训练集,n=191;测试集,n=83;时间验证集,n=76)。经验丰富的放射科医生在T2加权成像(T2WI)和表观扩散系数(ADC)图上手动分割瘤内和瘤周感兴趣体积(VOI)。分别从VOI和VOI中提取放射组学特征。通过递归特征消除(RFE)算法进行特征选择后,构建瘤内放射组学评分(intra-rad-score)和瘤周放射组学评分(peri-rad-score)。通过极端梯度提升(XGBoost)算法构建临床模型、MRS模型以及整合放射组学、临床放射学和代谢特征的联合模型。使用受试者操作特征(ROC)曲线分析在训练集和测试集中评估模型的预测性能。将SHapley加性解释(SHAP)分析应用于联合模型,以可视化和解释预测过程。
共纳入350例患者,其中173例为csPCa患者(49.4%),177例为非csPCa患者(50.6%)。通过10个和16个放射组学特征构建了intra-rad-score和peri-rad-score。联合模型在测试集(分别为0.968、0.928、0.927、0.932和0.923)和时间验证集(分别为0.940、0.895、0.890、0.923和0.875)中表现出最高的曲线下面积(AUC)、准确性、F1评分、敏感性和特异性。SHAP分析显示,intra-rad-score、前列腺特异抗原密度(PSAD)、peri-rad-score和前列腺影像报告和数据系统(PI-RADS)评分是联合模型最重要的预测因子。
我们开发并验证了一种强大的机器学习模型,该模型纳入了瘤内和瘤周放射组学特征以及临床放射学和代谢参数,以准确识别csPCa。通过SHAP分析可视化预测过程,以促进临床决策。