医学
经颈静脉肝内门体分流术
肝性脑病
放射性武器
肝硬化
门体分流术
接收机工作特性
放射科
肝病
队列
逻辑回归
终末期肝病模型
逐步回归
门脉高压
内科学
外科
肝移植
移植
作者
Yang Yang,Xueqing Liang,Shirui Yang,Xiao‐Feng He,Mingsheng Huang,Wenfeng Shi,Junyang Luo,Chongyang Duan,Xinghui Feng,Sirui Fu,Ligong Lu
标识
DOI:10.1016/j.ejrad.2022.110384
摘要
Preoperative prediction of overt hepatic encephalopathy (OHE) should be performed in patients with variceal bleeding treated using the transjugular intrahepatic portosystemic shunt (TIPS) procedure. A reliable prediction tool is therefore required.Patients with cirrhosis-related variceal bleeding treated using the TIPS procedure were screened at two hospitals. Patients classified as Child-Pugh Class B were identified. The least absolute shrinkage and selection operator method and the backward stepwise selection method were used to screen the clinical and radiological characteristics of participants. Then, models were constructed accordingly to predict OHE. Area under the receiver operating characteristic curves, calibration curves, and decision curves were performed to discover the optimal model. Finally, whether clinical factors influenced the performance of our optimal model was tested.A total of 191 patients were included (training cohort: 127 cases; validation cohort: 64 cases). Three novel radiological independent risk factors were found. The combined model outperformed the models containing clinical factors or radiological characteristics alone. The areas under the curve for the training and validation cohorts were 0.901 and 0.903, respectively, with satisfactory calibration and decision curves. The Model for End-Stage Liver Disease score, serum sodium, albumin, total bilirubin, and age exhibited limited influence on the performance of the combined model.These radiological characteristics are also independent risk factors for post-TIPS OHE. Combining clinical factors and radiological characteristics was an effective means of predicting OHE. This study's model could be used for preoperative selection of appropriate patients before the TIPS procedure is performed.
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