Wu Ji, Xie Feng, Ji Hao, Zhang Yiyang, Luo Yi, Xia Lei, Lu Tianfei, He Kang, Sha Meng, Zheng Zhigang, Yong Junekong, Li Xinming, Zhao Di, Yang Yuting, Xia Qiang, Xue Feng
Department of Liver Surgery, Renji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, China.
Department of Instrument Science and Engineering, School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University, Shanghai, China.
Front Surg. 2022 Mar 24;9:857838. doi: 10.3389/fsurg.2022.857838. eCollection 2022.
The indocyanine green retention rate at 15 min (ICG-R15) is of great importance in the accurate assessment of hepatic functional reserve for safe hepatic resection. To assist clinicians to evaluate hepatic functional reserve in medical institutions that lack expensive equipment, we aimed to explore a novel approach to predict ICG-R15 based on CT images and clinical data in patients with hepatocellular carcinoma (HCC).
In this retrospective study, 350 eligible patients were enrolled and randomly assigned to the training cohort (245 patients) and test cohort (105 patients). Radiomics features and clinical factors were analyzed to pick out the key variables, and based on which, we developed the random forest regression, extreme gradient boosting regression (XGBR), and artificial neural network models for predicting ICG-R15, respectively. Pearson's correlation coefficient (R) was adopted to evaluate the performance of the models.
We extracted 660 CT image features in total from each patient. Fourteen variables significantly associated with ICG-R15 were picked out for model development. Compared to the other two models, the XGBR achieved the best performance in predicting ICG-R15, with a mean difference of 1.59% (median, 1.53%) and an -value of 0.90. Delong test result showed no significant difference in the area under the receiver operating characteristic (AUROCs) for predicting post hepatectomy liver failure between actual and estimated ICG-R15.
The proposed approach that incorporates the optimal radiomics features and clinical factors can allow for individualized prediction of ICG-R15 value of patients with HCC, regardless of the specific equipment and detection reagent (NO. ChiCTR2100053042; URL, http://www.chictr.org.cn).
15分钟吲哚菁绿滞留率(ICG-R15)对于准确评估肝储备功能以确保安全肝切除至关重要。为帮助缺乏昂贵设备的医疗机构的临床医生评估肝储备功能,我们旨在探索一种基于肝细胞癌(HCC)患者的CT图像和临床数据预测ICG-R15的新方法。
在这项回顾性研究中,纳入350例符合条件的患者,并随机分为训练队列(245例患者)和测试队列(105例患者)。分析影像组学特征和临床因素以挑选出关键变量,并在此基础上分别建立随机森林回归、极端梯度提升回归(XGBR)和人工神经网络模型来预测ICG-R15。采用Pearson相关系数(R)评估模型性能。
我们从每位患者中总共提取了660个CT图像特征。挑选出14个与ICG-R15显著相关的变量用于模型构建。与其他两个模型相比,XGBR在预测ICG-R15方面表现最佳,平均差异为1.59%(中位数为1.53%),R值为0.90。德龙检验结果显示,实际和估计的ICG-R15在预测肝切除术后肝功能衰竭的受试者操作特征曲线下面积(AUROCs)方面无显著差异。
所提出的结合最佳影像组学特征和临床因素的方法能够对HCC患者的ICG-R15值进行个体化预测,而无需考虑特定设备和检测试剂(注册号:ChiCTR2100053042;网址:http://www.chictr.org.cn)。