3D automatic liver and spleen assessment in predicting overt hepatic encephalopathy before TIPS: a multi-center study

Author:

Chen Xiaoqiong,Wang Tao,Ji Zhonghua,Luo Junyang,Lv Weifu,Wang Haifang,Zhao Yujie,Duan Chongyang,Yu Xiangrong,Li Qiyang,Zhang Jiawei,Chen Jinqiang,Zhang Xiaoling,Huang Mingsheng,Zhou Shuoling,Lu Ligong,Huang Meiyan,Fu Sirui

Abstract

Abstract Background Overt hepatic encephalopathy (HE) should be predicted preoperatively to identify suitable candidates for transjugular intrahepatic portosystemic shunt (TIPS) instead of first-line treatment. This study aimed to construct a 3D assessment-based model to predict post-TIPS overt HE. Methods In this multi-center cohort study, 487 patients who underwent TIPS were subdivided into a training dataset (390 cases from three hospitals) and an external validation dataset (97 cases from another two hospitals). Candidate factors included clinical, vascular, and 2D and 3D data. Combining the least absolute shrinkage and operator method, support vector machine, and probability calibration by isotonic regression, we constructed four predictive models: clinical, 2D, 3D, and combined models. Their discrimination and calibration were compared to identify the optimal model, with subgroup analysis performed. Results The 3D model showed better discrimination than did the 2D model (training: 0.719 vs. 0.691; validation: 0.730 vs. 0.622). The model combining clinical and 3D factors outperformed the clinical and 3D models (training: 0.802 vs. 0.735 vs. 0.719; validation: 0.816 vs. 0.723 vs. 0.730; all p < 0.050). Moreover, the combined model had the best calibration. The performance of the best model was not affected by the total bilirubin level, Child–Pugh score, ammonia level, or the indication for TIPS. Conclusion 3D assessment of the liver and the spleen provided additional information to predict overt HE, improving the chance of TIPS for suitable patients. 3D assessment could also be used in similar studies related to cirrhosis. Graphical abstract

Funder

National Natural Science Foundation of China

Guangdong Basic and Applied Basic Research Foundation

Science and Technology Planning Project of Guangzhou

Nurture Programme of Zhuhai People's Hospital

Publisher

Springer Science and Business Media LLC

Subject

Hepatology

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