Zuo Xue-Yong, Liu Hai-Feng
Department of Gastroenterology, Third Affiliated Hospital of Soochow University, Changzhou 213003, Jiangsu Province, China.
Department of Radiology, Third Affiliated Hospital of Soochow University: Changzhou First People's Hospital, Changzhou 213003, Jiangsu Province, China.
World J Hepatol. 2025 Aug 27;17(8):109530. doi: 10.4254/wjh.v17.i8.109530.
Hepatocellular carcinoma (HCC) is a prevalent and life-threatening cancer with increasing incidence worldwide. High Ki-67 risk stratification is closely associated with higher recurrence rates and worse outcomes following curative therapies in patients with HCC. However, the performance of radiomic and deep transfer learning (DTL) models derived from biparametric magnetic resonance imaging (bpMRI) in predicting Ki-67 risk stratification and recurrence-free survival (RFS) in patients with HCC remains limited.
To develop a nomogram model integrating bpMRI-based radiomic and DTL signatures for predicting Ki-67 risk stratification and RFS in patients with HCC.
This study included 198 patients with histopathologically confirmed HCC who underwent preoperative bpMRI. Ki-67 risk stratification was categorized as high (> 20%) or low (≤ 20%) according to immunohistochemical staining. Radiomic and DTL signatures were extracted from the T2-weighted and arterial-phase images and combined through a random forest algorithm to establish radiomic and DTL models, respectively. Multivariate regression analysis identified clinical risk factors for high Ki-67 risk stratification, and a predictive nomogram model was developed.
A nonsmooth margin and the absence of an enhanced capsule were independent factors for high Ki-67 risk stratification. The area under the curve (AUC) of the clinical model was 0.77, while those of the radiomic and DTL models were 0.81 and 0.87, respectively, for the prediction of high Ki-67 risk stratification, and the nomogram model achieved a better AUC of 0.92. The median RFS times for patients with high and low Ki-67 risk stratification were 33.00 months and 66.73 months, respectively ( < 0.001). Additionally, patients who were predicted to have high Ki-67 risk stratification by the nomogram model had a lower median RFS than those who were predicted to have low Ki-67 risk stratification (33.53 66.74 months, = 0.007).
Our developed nomogram model demonstrated good performance in predicting Ki-67 risk stratification and predicting survival outcomes in patients with HCC.
肝细胞癌(HCC)是一种常见且危及生命的癌症,在全球范围内发病率呈上升趋势。高Ki-67风险分层与HCC患者根治性治疗后较高的复发率和较差的预后密切相关。然而,基于双参数磁共振成像(bpMRI)的放射组学和深度迁移学习(DTL)模型在预测HCC患者的Ki-67风险分层和无复发生存期(RFS)方面的表现仍然有限。
建立一个整合基于bpMRI的放射组学和DTL特征的列线图模型,用于预测HCC患者的Ki-67风险分层和RFS。
本研究纳入了198例经组织病理学确诊的HCC患者,这些患者术前行bpMRI检查。根据免疫组化染色,将Ki-67风险分层分为高(>20%)或低(≤20%)。从T2加权图像和动脉期图像中提取放射组学和DTL特征,并分别通过随机森林算法进行组合,以建立放射组学和DTL模型。多因素回归分析确定高Ki-67风险分层的临床危险因素,并建立预测列线图模型。
边缘不光滑和无强化包膜是高Ki-67风险分层的独立因素。临床模型预测高Ki-67风险分层的曲线下面积(AUC)为0.77,而放射组学模型和DTL模型的AUC分别为0.81和0.87,列线图模型的AUC达到了更好的0.92。高Ki-67风险分层和低Ki-67风险分层患者的中位RFS时间分别为33.00个月和66.73个月(<0.001)。此外,列线图模型预测为高Ki-67风险分层的患者的中位RFS低于预测为低Ki-67风险分层的患者(33.53对66.74个月,P=0.007)。
我们开发的列线图模型在预测HCC患者的Ki-67风险分层和生存结局方面表现良好。