Sun Shifang, Yu Yixing, Xiao Shungen, He Qi, Jiang Zhen, Fan Yanfen
School of Mechatronic Engineering and Automation, Shanghai University, Shanghai, China.
Zhejiang International Maritime College, Zhoushan, China.
J Comput Assist Tomogr. 2025 Jul 2. doi: 10.1097/RCT.0000000000001769.
To construct and validate the optimal model for preoperative prediction of proliferative HCC based on habitat-derived radiomics features of Gd-EOB-DTPA-Enhanced MRI.
A total of 187 patients who underwent Gd-EOB-DTPA-enhanced MRI before curative partial hepatectomy were divided into training (n=130, 50 proliferative and 80 nonproliferative HCC) and validation cohort (n=57, 25 proliferative and 32 nonproliferative HCC). Habitat subregion generation was performed using the Gaussian Mixture Model (GMM) clustering method to cluster all pixels to identify similar subregions within the tumor. Radiomic features were extracted from each tumor subregion in the arterial phase (AP) and hepatobiliary phase (HBP). Independent sample t tests, Pearson correlation coefficient, and Least Absolute Shrinkage and Selection Operator (LASSO) algorithm were performed to select the optimal features of subregions. After feature integration and selection, machine-learning classification models using the sci-kit-learn library were constructed. Receiver Operating Characteristic (ROC) curves and the DeLong test were performed to compare the identified performance for predicting proliferative HCC among these models.
The optimal number of clusters was determined to be 3 based on the Silhouette coefficient. 20, 12, and 23 features were retained from the AP, HBP, and the combined AP and HBP habitat (subregions 1, 2, 3) radiomics features. Three models were constructed with these selected features in AP, HBP, and the combined AP and HBP habitat radiomics features. The ROC analysis and DeLong test show that the Naive Bayes model of AP and HBP habitat radiomics (AP-HBP-Hab-Rad) archived the best performance. Finally, the combined model using the Light Gradient Boosting Machine (LightGBM) algorithm, incorporating the AP-HBP-Hab-Rad, age, and AFP (Alpha-Fetoprotein), was identified as the optimal model for predicting proliferative HCC. For the training and validation cohort, the accuracy, sensitivity, specificity, and AUC were 0.923, 0.880, 0.950, 0.966 (95% CI: 0.937-0.994) and 0.825, 0.680, 0.937, 0.877 (95% CI: 0.786-0.969), respectively. In its validation cohort of the combined model, the AUC value was statistically higher than the other models (P<0.01).
A combined model, including AP-HBP-Hab-Rad, serum AFP, and age using the LightGBM algorithm, can satisfactorily predict proliferative HCC preoperatively.
基于钆塞酸二钠增强磁共振成像(Gd-EOB-DTPA-Enhanced MRI)的瘤内异质性衍生的影像组学特征构建并验证增殖性肝癌术前预测的最佳模型。
187例行根治性肝部分切除术且术前接受Gd-EOB-DTPA增强MRI检查的患者被分为训练组(n = 130,其中增殖性肝癌50例,非增殖性肝癌80例)和验证组(n = 57,其中增殖性肝癌25例,非增殖性肝癌32例)。采用高斯混合模型(GMM)聚类方法进行瘤内异质性亚区域划分,将所有像素聚类以识别肿瘤内相似的亚区域。在动脉期(AP)和肝胆期(HBP)从每个肿瘤亚区域提取影像组学特征。采用独立样本t检验、Pearson相关系数和最小绝对收缩和选择算子(LASSO)算法选择亚区域的最佳特征。经过特征整合与选择后,使用scikit-learn库构建机器学习分类模型。绘制受试者工作特征(ROC)曲线并进行DeLong检验,以比较这些模型预测增殖性肝癌的性能。
根据轮廓系数确定最佳聚类数为3。从AP、HBP以及联合的AP和HBP瘤内异质性(亚区域1、2、3)影像组学特征中分别保留了20、12和23个特征。利用这些选择出的特征分别构建了基于AP、HBP以及联合的AP和HBP瘤内异质性影像组学特征的三个模型。ROC分析和DeLong检验表明,AP和HBP瘤内异质性影像组学的朴素贝叶斯模型(AP-HBP-Hab-Rad)性能最佳。最后,将采用轻梯度提升机(LightGBM)算法、纳入AP-HBP-Hab-Rad、年龄和甲胎蛋白(AFP)的联合模型确定为预测增殖性肝癌的最佳模型。对于训练组和验证组,其准确率、敏感性、特异性和AUC分别为0.923、0.880、0.950、0.966(95%CI:0.937 - 0.994)和0.825、0.680、0.937、0.877(95%CI:0.786 - 0.969)。在联合模型的验证组中,AUC值在统计学上高于其他模型(P<0.01)。
采用LightGBM算法、纳入AP-HBP-Hab-Rad、血清AFP和年龄的联合模型能够令人满意地术前预测增殖性肝癌。