Department of Radiology, The Second Affiliated Hospital of Chongqing Medical University, Chongqing, China.
GE Healthcare Life Sciences, Shanghai, China.
Brain Behav. 2021 Feb;11(2):e01970. doi: 10.1002/brb3.1970. Epub 2020 Nov 24.
The significant abnormalities of precuneus (PC), which are associated with brain dysfunction, have been identified in cirrhotic patients with covert hepatic encephalopathy (CHE). The present study aimed to apply radiomics analysis to identify the significant radiomic features in PC and their subregions, combine with clinical risk factors, then build and evaluate the classification models for CHE diagnosis.
106 HBV-related cirrhotic patients (54 had current CHE and 52 had non-CHE) underwent the three-dimensional T1-weighted imaging. For each participant, PC and their subregions were segmented and extracted a large number of radiomic features and then identified the features with significant discriminative power as the radiomics signature. The logistic regression analysis was employed to develop and evaluate the classification models, which are constructed using the radiomics signature and clinical risk factors.
The classification model (R-C model) achieved best diagnostic performance, which incorporated radiomics signature (4 radiomic features from right PC), venous blood ammonia, and the Child-Pugh stage. And the area under the receiver operating characteristic curve values (AUC), sensitivity, specificity, and accuracy values were 0.926, 1.000, 0.765, and 0.848, in the testing set. Application of the radiomics nomogram in the testing set still showed a good predictive accuracy.
This study presented the radiomic features of the right PC, as a potential image marker of CHE. The radiomics nomogram that incorporates the radiomics signature and clinical risk factors may facilitate the individualized prediction of CHE.
在隐匿性肝性脑病(CHE)的肝硬化患者中,已发现与脑功能障碍相关的楔前叶(PC)显著异常。本研究旨在应用放射组学分析确定 PC 及其亚区的显著放射组学特征,结合临床危险因素,然后建立和评估 CHE 诊断的分类模型。
106 例 HBV 相关肝硬化患者(54 例有当前 CHE,52 例无 CHE)接受了三维 T1 加权成像。对于每个参与者,对 PC 及其亚区进行分割并提取大量放射组学特征,然后识别具有显著判别力的特征作为放射组学特征。使用逻辑回归分析来开发和评估分类模型,该模型使用放射组学特征和临床危险因素构建。
分类模型(R-C 模型)的诊断性能最佳,该模型整合了放射组学特征(来自右 PC 的 4 个放射组学特征)、静脉血氨和 Child-Pugh 分期。在测试集中,受试者工作特征曲线下面积值(AUC)、敏感性、特异性和准确性值分别为 0.926、1.000、0.765 和 0.848。在测试集中应用放射组学列线图仍然显示出良好的预测准确性。
本研究提出了右 PC 的放射组学特征,作为 CHE 的潜在影像标志物。整合放射组学特征和临床危险因素的放射组学列线图可能有助于 CHE 的个体化预测。