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用于检测早期肝纤维化的超声放射组学

Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis.

作者信息

Al-Hasani Maryam, Sultan Laith R, Sagreiya Hersh, Cary Theodore W, Karmacharya Mrigendra B, Sehgal Chandra M

机构信息

Ultrasound Research Lab, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.

出版信息

Diagnostics (Basel). 2022 Nov 9;12(11):2737. doi: 10.3390/diagnostics12112737.

Abstract

Objective: The study evaluates quantitative ultrasound (QUS) texture features with machine learning (ML) to enhance the sensitivity of B-mode ultrasound (US) for the detection of fibrosis at an early stage and distinguish it from advanced fibrosis. Different ML methods were evaluated to determine the best diagnostic model. Methods: 233 B-mode images of liver lobes with early and advanced-stage fibrosis induced in a rat model were analyzed. Sixteen features describing liver texture were measured from regions of interest (ROIs) drawn on B-mode images. The texture features included a first-order statistics run length (RL) and gray-level co-occurrence matrix (GLCM). The features discriminating between early and advanced fibrosis were used to build diagnostic models with logistic regression (LR), naïve Bayes (nB), and multi-class perceptron (MLP). The diagnostic performances of the models were compared by ROC analysis using different train-test sampling approaches, including leave-one-out, 10-fold cross-validation, and varying percentage splits. METAVIR scoring was used for histological fibrosis staging of the liver. Results: 15 features showed a significant difference between the advanced and early liver fibrosis groups, p < 0.05. Among the individual features, first-order statics features led to the best classification with a sensitivity of 82.1−90.5% and a specificity of 87.1−89.8%. For the features combined, the diagnostic performances of nB and MLP were high, with the area under the ROC curve (AUC) approaching 0.95−0.96. LR also yielded high diagnostic performance (AUC = 0.91−0.92) but was lower than nB and MLP. The diagnostic variability between test-train trials, measured by the coefficient-of-variation (CV), was higher for LR (3−5%) than nB and MLP (1−2%). Conclusion: Quantitative ultrasound with machine learning differentiated early and advanced fibrosis. Ultrasound B-mode images contain a high level of information to enable accurate diagnosis with relatively straightforward machine learning methods like naïve Bayes and logistic regression. Implementing simple ML approaches with QUS features in clinical settings could reduce the user-dependent limitation of ultrasound in detecting early-stage liver fibrosis.

摘要

目的

本研究使用机器学习(ML)评估定量超声(QUS)纹理特征,以提高B型超声(US)在早期检测纤维化的敏感性,并将其与晚期纤维化区分开来。评估了不同的ML方法以确定最佳诊断模型。方法:分析了在大鼠模型中诱导的具有早期和晚期纤维化的肝叶的233幅B型图像。从B型图像上绘制的感兴趣区域(ROI)测量了描述肝脏纹理的16个特征。纹理特征包括一阶统计游程长度(RL)和灰度共生矩阵(GLCM)。使用逻辑回归(LR)、朴素贝叶斯(nB)和多类感知器(MLP),利用区分早期和晚期纤维化的特征建立诊断模型。使用不同的训练-测试抽样方法,包括留一法、10折交叉验证和不同百分比分割,通过ROC分析比较模型的诊断性能。METAVIR评分用于肝脏组织学纤维化分期。结果:15个特征在晚期和早期肝纤维化组之间显示出显著差异,p < 0.05。在各个特征中,一阶统计特征导致了最佳分类,敏感性为82.1−90.5%,特异性为87.1−89.8%。对于组合特征,nB和MLP的诊断性能较高,ROC曲线下面积(AUC)接近0.95−0.96。LR也产生了较高的诊断性能(AUC = 0.91−0.92),但低于nB和MLP。通过变异系数(CV)测量的训练-测试试验之间的诊断变异性,LR(3−5%)高于nB和MLP(1−2%)。结论:机器学习的定量超声可区分早期和晚期纤维化。超声B型图像包含高水平的信息,能够使用朴素贝叶斯和逻辑回归等相对简单的机器学习方法进行准确诊断。在临床环境中使用具有QUS特征的简单ML方法可以减少超声在检测早期肝纤维化时用户依赖的局限性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2240/9689042/8db806c93e24/diagnostics-12-02737-g001.jpg

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