Xu Xiaoqing, Xing Zijian, Xu Zhiyao, Tong Yifan, Wang Shuxin, Liu Xiaoqing, Ren Yiyue, Liang Xiao, Yu Yizhou, Ying Hanning
Department of Nursing, Sir Run Run Shaw Hospital, Zhejiang University School of Medicine, Hangzhou, China.
Deepwise Artificial Intelligence Laboratory, Hangzhou, China.
Front Med (Lausanne). 2023 Jun 28;10:1154314. doi: 10.3389/fmed.2023.1154314. eCollection 2023.
Post-hepatectomy liver failure (PHLF) remains clinical challenges after major hepatectomy. The aim of this study was to establish and validate a deep learning model to predict PHLF after hemihepatectomy using preoperative contrast-enhancedcomputed tomography with three phases (Non-contrast, arterial phase and venous phase).
265 patients undergoing hemihepatectomy in Sir Run Run Shaw Hospital were enrolled in this study. The primary endpoint was PHLF, according to the International Study Group of Liver Surgery's definition. In this study, to evaluate the proposed method, 5-fold cross-validation technique was used. The dataset was split into 5 folds of equal size, and each fold was used as a test set once, while the other folds were temporarily combined to form a training set. Performance metrics on the test set were then calculated and stored. At the end of the 5-fold cross-validation run, the accuracy, precision, sensitivity and specificity for predicting PHLF with the deep learning model and the area under receiver operating characteristic curve (AUC) were calculated.
Of the 265 patients, 170 patients with left liver resection and 95 patients with right liver resection. The diagnosis had 6 types: hepatocellular carcinoma, intrahepatic cholangiocarcinoma, liver metastases, benign tumor, hepatolithiasis, and other liver diseases. Laparoscopic liver resection was performed in 187 patients. The accuracy of prediction was 84.15%. The AUC was 0.7927. In 170 left hemihepatectomy cases, the accuracy was 89.41% (152/170), and the AUC was 82.72%. The accuracy was 77.47% (141/182) with liver mass, 78.33% (47/60) with liver cirrhosis and 80.46% (70/87) with viral hepatitis.
The deep learning model showed excellent performance in prediction of PHLF and could be useful for identifying high-risk patients to modify the treatment planning.
肝切除术后肝衰竭(PHLF)仍是大肝切除术后的临床挑战。本研究的目的是建立并验证一种深度学习模型,用于使用术前三期(平扫期、动脉期和静脉期)增强计算机断层扫描预测半肝切除术后的PHLF。
本研究纳入了在邵逸夫医院接受半肝切除术的265例患者。根据国际肝脏手术研究组的定义,主要终点为PHLF。在本研究中,为评估所提出的方法,采用了五折交叉验证技术。将数据集分成大小相等的5折,每折用作一次测试集,而其他折临时合并形成训练集。然后计算并存储测试集上的性能指标。在五折交叉验证运行结束时,计算了深度学习模型预测PHLF的准确性、精确性、敏感性和特异性以及受试者操作特征曲线下面积(AUC)。
265例患者中,170例行左肝切除术,95例行右肝切除术。诊断有6种类型:肝细胞癌、肝内胆管癌、肝转移瘤、良性肿瘤、肝内胆管结石和其他肝脏疾病。187例患者行腹腔镜肝切除术。预测准确性为84.15%。AUC为0.7927。在170例左半肝切除病例中,准确性为89.41%(152/170),AUC为82.72%。肝肿物患者的准确性为77.47%(141/182),肝硬化患者为78.33%(47/60),病毒性肝炎患者为80.46%(70/87)。
深度学习模型在预测PHLF方面表现出优异性能,可用于识别高危患者以调整治疗方案。