Department of Biomedical Engineering, Faculty of Environment and Life, Beijing University of Technology, Beijing, China.
Fan Gongxiu Honors College, Beijing University of Technology, Beijing, China.
Ultrason Imaging. 2022 Nov;44(5-6):229-241. doi: 10.1177/01617346221120070. Epub 2022 Aug 26.
The homodyned-K distribution is an important ultrasound backscatter envelope statistics model of physical meaning, and the parametric imaging of the model parameters has been explored for quantitative ultrasound tissue characterization. In this paper, we proposed a new method for liver fibrosis characterization by using radiomics of ultrasound backscatter homodyned-K imaging based on an improved artificial neural network (iANN) estimator. The iANN estimator was used to estimate the ultrasound homodyned-K distribution parameters and from the backscattered radiofrequency (RF) signals of clinical liver fibrosis ( = 237), collected with a 3-MHz convex array transducer. The RF data were divided into two groups: Group I corresponded to liver fibrosis with no hepatic steatosis ( = 94), and Group II corresponded to liver fibrosis with mild to severe hepatic steatosis ( = 143). The estimated homodyned-K parameter values were then used to construct and parametric images using the sliding window technique. Radiomics features of and parametric images were extracted, and feature selection was conducted. Logistic regression classification models based on the selected radiomics features were built for staging liver fibrosis. Experimental results showed that the proposed method is overall superior to the radiomics method of uncompressed envelope images when assessing liver fibrosis. Regardless of hepatic steatosis, the proposed method achieved the best performance in staging liver fibrosis ≥, ≥, and the area under the receiver operating characteristic curve was 0.88, 0.85 (Group I), and 0.85, 0.86 (Group II), respectively. Radiomics has improved the ability of ultrasound backscatter statistical parametric imaging to assess liver fibrosis, and is expected to become a new quantitative ultrasound method for liver fibrosis characterization.
同态 K 分布是一种具有物理意义的重要超声背散射包络统计模型,其模型参数的参数成像已被探索用于定量超声组织特征化。在本文中,我们提出了一种新的方法,通过使用基于改进人工神经网络(iANN)估计器的超声背散射同态 K 成像的放射组学对肝纤维化进行特征描述。该 iANN 估计器用于从临床肝纤维化的回波射频(RF)信号(=237)中估计超声同态 K 分布参数和。RF 数据分为两组:组 I 对应于无肝脂肪变性的肝纤维化(=94),组 II 对应于轻度至严重肝脂肪变性的肝纤维化(=143)。然后使用滑动窗口技术使用估计的同态 K 参数值构建和参数图像。提取和参数图像的放射组学特征,并进行特征选择。基于选定的放射组学特征构建用于分期肝纤维化的逻辑回归分类模型。实验结果表明,与未压缩包络图像的放射组学方法相比,该方法在评估肝纤维化时总体表现更优。无论是否存在肝脂肪变性,该方法在分期肝纤维化≥、≥时的表现最佳,在组 I 和组 II 中,接收器操作特征曲线下的面积分别为 0.88、0.85 和 0.85、0.86。放射组学提高了超声背散射统计参数成像评估肝纤维化的能力,有望成为肝纤维化特征描述的一种新的定量超声方法。