Li Jiangfa, Song Wenxiang, Li Jixue, Cai Lv, Jiang Zhao, Wei Mengxiao, Nong Boming, Lai Meiyu, Jiang Yiyi, Zhao Erbo, Lei Liping
Department of Hepatobiliary and Pancreatic Surgery, Affiliated Hospital of Guilin Medical University, Guilin, Guangxi, China.
Key Laboratory of Early Prevention and Treatment for Regional High Frequency Tumor (Guangxi Medical University), Ministry of Education, Nanning, Guangxi, China.
PLoS One. 2025 Jan 28;20(1):e0318232. doi: 10.1371/journal.pone.0318232. eCollection 2025.
To develop a predictive model for microvascular invasion (MVI) in hepatocellular carcinoma (HCC) through radiomics analysis, integrating data from both enhanced computed tomography (CT) and magnetic resonance imaging (MRI).
A retrospective analysis was conducted on 93 HCC patients who underwent partial hepatectomy. The gold standard for MVI was based on the histopathological diagnosis of the tissue. The 93 patients were randomly divided into training and validation groups in 7:3 ratio. The imaging data of patients, including CT and MRI, were collected and processed using 3D Slicer to delineate the region of interest (ROI) for each tumor. Radiomics features were extracted from CT and MRI of patients using Python. Lasso regression analysis was used to select optimal radiomics features for MVI in the training group. The optimal radiomics features of CT and MRI were selected to establish the prediction model. The predictive performance of the model was evaluated using the receiver operator characteristic curve (ROC), calibration curve, and decision curve analysis (DCA).
After univariate and multivariate analyses, it was found that tumor diameter was significantly different between the MVI positive and negative groups. After extracting 2153 imaging phenotyping features from the CT and MRI images of the 93 patients using Python, ten standardized coefficient non-zero imaging phenotyping features were finally determined by Lasso regression analysis in the CT and MRI images. A comprehensive predictive model with clinical variable and optimal radiomics features was established. The area under the curve (AUC) of the training group was 0.916 (95%CI: 0.843-1.000), sensitivity: 95.2%, specificity: 79.2%. In the validation group, the predictive model diagnosed MVI with AUC = 0.816 (95%CI: 0.642-0.990), sensitivity: 84.2%, and specificity: 75.0%.
The joint model that integrated the optimal radiomics features with clinical variables has good diagnostic performance for MVI of HCC and specific clinical applicability.
通过整合增强计算机断层扫描(CT)和磁共振成像(MRI)数据,利用放射组学分析建立肝细胞癌(HCC)微血管侵犯(MVI)的预测模型。
对93例行肝部分切除术的HCC患者进行回顾性分析。MVI的金标准基于组织的组织病理学诊断。93例患者按7:3比例随机分为训练组和验证组。收集患者的CT和MRI等影像数据,并使用3D Slicer进行处理,以勾勒出每个肿瘤的感兴趣区域(ROI)。使用Python从患者的CT和MRI中提取放射组学特征。在训练组中,采用Lasso回归分析选择MVI的最佳放射组学特征。选择CT和MRI的最佳放射组学特征建立预测模型。使用受试者操作特征曲线(ROC)、校准曲线和决策曲线分析(DCA)评估模型的预测性能。
单因素和多因素分析后发现,MVI阳性和阴性组之间肿瘤直径存在显著差异。使用Python从93例患者的CT和MRI图像中提取2153个影像表型特征后,通过Lasso回归分析最终确定了CT和MRI图像中的10个标准化系数非零影像表型特征。建立了包含临床变量和最佳放射组学特征的综合预测模型。训练组的曲线下面积(AUC)为0.916(95%CI:0.843 - 1.000),灵敏度:95.2%,特异度:79.2%。在验证组中,预测模型诊断MVI的AUC = 0.816(95%CI:0.642 - 0.990),灵敏度:84.2%,特异度:75.0%。
将最佳放射组学特征与临床变量相结合的联合模型对HCC的MVI具有良好的诊断性能和特定的临床适用性。