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光谱 CT 参数和纹理分析无创评估兔显著性肝纤维化。

Noninvasive assessment of significant liver fibrosis in rabbits by spectral CT parameters and texture analysis.

机构信息

Shanghai Municipal Hospital of Traditional Chinese Medicine, Shanghai University of Traditional Chinese Medicine, 274 Zhijiang Middle Road, Jing 'an District, Shanghai, 200071, China.

出版信息

Jpn J Radiol. 2023 Sep;41(9):983-993. doi: 10.1007/s11604-023-01423-0. Epub 2023 Apr 18.

Abstract

PURPOSE

Noninvasive assessment of significant liver fibrosis in rabbits by spectral CT parameters and texture analysis.

MATERIALS AND METHODS

Thirty-three rabbits were randomly divided into 27 carbon tetrachloride-induced liver fibrosis group and 6 control group. Spectral CT contrast-enhanced scan was performed in batches, and the liver fibrosis was staged according to the histopathological results. The portal venous phase spectral CT parameters [70 keV CT value, normalized iodine concentration (NIC), spectral HU curve slope (λ)] were measured, and MaZda texture analysis was performed on 70 keV monochrome images. Three dimensionality reduction methods and four statistical methods in B11 module were used to perform discriminant analysis and calculate misclassified rate (MCR), and ten texture features under the lowest combination of MCR were statistically analyzed. Receiver operating characteristic curve (ROC) was used to calculate the diagnostic performance of spectral parameters and texture features for significant liver fibrosis. Finally, the binary logistic regression was used to further screen independent predictors and establish model.

RESULTS

A total of 23 experimental rabbits and 6 control rabbits were included, of which 16 had significant liver fibrosis. Three spectral CT parameters with significant liver fibrosis were significantly lower than those of non-significant liver fibrosis (p < 0.05), and the AUC ranged from 0.846 to 0.913. The combination analysis of mutual information (MI) and nonlinear discriminant analysis (NDA) had the lowest MCR, which with 0%. In the filtered texture features, four were statistically significant and AUC > 0.5, ranges from 0.764 to 0.875. The logistic regression model showed that Perc.90% and NIC could be used as independent predictors, the overall prediction accuracy of the model was 89.7% and the AUC was 0.976.

CONCLUSION

Spectral CT parameters and texture features have high diagnostic value for predicting significant liver fibrosis in rabbits, and the combination of the two can improve its diagnostic efficiency.

摘要

目的

利用光谱 CT 参数和纹理分析无创评估兔肝脏纤维化的严重程度。

材料与方法

将 33 只兔子随机分为 27 只四氯化碳诱导的肝纤维化组和 6 只对照组。进行分批光谱 CT 增强扫描,根据组织病理学结果对肝纤维化进行分期。测量门脉期光谱 CT 参数[70keVCT 值、标准化碘浓度(NIC)、光谱 HU 曲线斜率(λ)],对 70keV 单色图像进行 MaZda 纹理分析。使用 B11 模块中的三维降维和四种统计方法进行判别分析,计算误分类率(MCR),并对 MCR 最低组合下的十个纹理特征进行统计学分析。使用受试者工作特征曲线(ROC)计算光谱参数和纹理特征对显著肝纤维化的诊断性能。最后,采用二元逻辑回归进一步筛选独立预测因子并建立模型。

结果

共纳入 23 只实验兔和 6 只对照兔,其中 16 只兔有显著肝纤维化。三种与显著肝纤维化相关的光谱 CT 参数明显低于无显著肝纤维化(p<0.05),其 AUC 范围为 0.8460.913。互信息(MI)和非线性判别分析(NDA)组合分析的 MCR 最低,为 0%。在过滤后的纹理特征中,有 4 个具有统计学意义,AUC>0.5,范围为 0.7640.875。逻辑回归模型显示,Perc.90%和 NIC 可作为独立预测因子,模型的总体预测准确率为 89.7%,AUC 为 0.976。

结论

光谱 CT 参数和纹理特征对预测兔肝脏纤维化严重程度具有较高的诊断价值,两者结合可提高其诊断效率。

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