Lee I-Cheng, Huang Jo-Yu, Chen Ting-Chun, Yen Chia-Heng, Chiu Nai-Chi, Hwang Hsuen-En, Huang Jia-Guan, Liu Chien-An, Chau Gar-Yang, Lee Rheun-Chuan, Hung Yi-Ping, Chao Yee, Ho Shinn-Ying, Huang Yi-Hsiang
Division of Gastroenterology and Hepatology, Department of Medicine, Taipei Veterans General Hospital, Taipei, Taiwan.
Faculty of Medicine, National Yang Ming Chiao Tung University School of Medicine, Taipei, Taiwan.
Liver Cancer. 2021 Sep 20;10(6):572-582. doi: 10.1159/000518728. eCollection 2021 Nov.
Current prediction models for early recurrence of hepatocellular carcinoma (HCC) after surgical resection remain unsatisfactory. The aim of this study was to develop evolutionary learning-derived prediction models with interpretability using both clinical and radiomic features to predict early recurrence of HCC after surgical resection.
Consecutive 517 HCC patients receiving surgical resection with available contrast-enhanced computed tomography (CECT) images before resection were retrospectively enrolled. Patients were randomly assigned to a training set ( = 362) and a test set ( = 155) in a ratio of 7:3. Tumor segmentation of all CECT images including noncontrast phase, arterial phase, and portal venous phase was manually performed for radiomic feature extraction. A novel evolutionary learning-derived method called genetic algorithm for predicting recurrence after surgery of liver cancer (GARSL) was proposed to design prediction models for early recurrence of HCC within 2 years after surgery.
A total of 143 features, including 26 preoperative clinical features, 5 postoperative pathological features, and 112 radiomic features were used to develop GARSL preoperative and postoperative models. The area under the receiver operating characteristic curves (AUCs) for early recurrence of HCC within 2 years were 0.781 and 0.767, respectively, in the training set, and 0.739 and 0.741, respectively, in the test set. The accuracy of GARSL models derived from the evolutionary learning method was significantly better than models derived from other well-known machine learning methods or the early recurrence after surgery for liver tumor (ERASL) preoperative (AUC = 0.687, < 0.001 vs. GARSL preoperative) and ERASL postoperative (AUC = 0.688, < 0.001 vs. GARSL postoperative) models using clinical features only.
The GARSL models using both clinical and radiomic features significantly improved the accuracy to predict early recurrence of HCC after surgical resection, which was significantly better than other well-known machine learning-derived models and currently available clinical models.
目前用于预测肝细胞癌(HCC)手术切除后早期复发的模型仍不尽人意。本研究旨在利用临床和影像组学特征开发具有可解释性的进化学习衍生预测模型,以预测HCC手术切除后的早期复发。
回顾性纳入517例接受手术切除且术前有可用的对比增强计算机断层扫描(CECT)图像的连续HCC患者。患者按7:3的比例随机分为训练集(n = 362)和测试集(n = 155)。对包括平扫期、动脉期和门静脉期在内的所有CECT图像进行手动肿瘤分割,以提取影像组学特征。提出了一种名为肝癌术后复发遗传算法(GARSL)的新型进化学习衍生方法,用于设计预测HCC术后2年内早期复发的模型。
共使用143个特征(包括26个术前临床特征、5个术后病理特征和112个影像组学特征)来开发GARSL术前和术后模型。训练集中,HCC术后2年内早期复发的受试者工作特征曲线下面积(AUC)分别为0.781和0.767,测试集中分别为0.739和0.741。进化学习方法衍生的GARSL模型的准确性显著优于仅使用临床特征的其他知名机器学习方法或肝癌术后早期复发(ERASL)术前(AUC = 0.687,P < 0.001 vs. GARSL术前)和ERASL术后(AUC = 0.688,P < 0.001 vs. GARSL术后)模型。
使用临床和影像组学特征的GARSL模型显著提高了预测HCC手术切除后早期复发的准确性,明显优于其他知名机器学习衍生模型和现有临床模型。