Yu HeiShun, Touret Anne-Sophie, Li Baojun, O'Brien Michael, Qureshi Muhammad M, Soto Jorge A, Jara Hernan, Anderson Stephan W
Department of Radiology, Boston University Medical Center, Boston, Massachusetts, USA.
Department of Pathology and Laboratory Medicine, Boston University Medical Center, Boston, Massachusetts, USA.
J Magn Reson Imaging. 2017 Jan;45(1):250-259. doi: 10.1002/jmri.25328. Epub 2016 Jun 1.
To assess the utility of texture analysis of T and T maps for the detection of hepatic fibrosis in a murine model of hepatic fibrosis.
Following Institutional Animal Care and Use Committee approval, a dietary model of hepatic fibrosis was used and 15 ex vivo murine livers were examined. Images were acquired using a 30 mm bore 11.7T magnetic resonance imaging (MRI) scanner with a rapid acquisition with relaxation enhancement sequence. Texture analysis was then employed, extracting texture features including histogram-based, gray-level co-occurrence matrix-based (GLCM), gray-level run-length-based features (GLRL), gray-level gradient matrix (GLGM), and Laws' features. Areas under the curve (AUCs) were then calculated to determine the ability of texture features to detect hepatic fibrosis.
Texture analysis of T maps identified very good to excellent discriminators of hepatic fibrosis within the histogram and GLGM categories. Histogram feature interquartile range (IQR) achieved an AUC value of 0.90 (P < 0.0001) and GLGM feature variance gradient achieved an AUC of 0.91 (P < 0.0001). Texture analysis of T maps identified very good to excellent discriminators of hepatic fibrosis within the histogram, GLCM, GLRL, and GLGM categories. GLGM feature kurtosis was the best discriminator of hepatic fibrosis, achieving an AUC value of 0.90 (P < 0.0001).
This study demonstrates the utility of texture analysis for the detection of hepatic fibrosis when applied to T and T maps in a murine model of hepatic fibrosis and validates the potential use of this technique for the noninvasive, quantitative assessment of hepatic fibrosis.
1 J. Magn. Reson. Imaging 2017;45:250-259.
评估在肝纤维化小鼠模型中,T和T图的纹理分析用于检测肝纤维化的效用。
经机构动物护理和使用委员会批准后,采用肝纤维化饮食模型,并对15个离体小鼠肝脏进行检查。使用具有弛豫增强快速采集序列的30毫米孔径11.7T磁共振成像(MRI)扫描仪采集图像。然后进行纹理分析,提取包括基于直方图、基于灰度共生矩阵(GLCM)、基于灰度行程长度的特征(GLRL)、灰度梯度矩阵(GLGM)和劳斯特征在内的纹理特征。随后计算曲线下面积(AUC),以确定纹理特征检测肝纤维化的能力。
T图的纹理分析在直方图和GLGM类别中识别出对肝纤维化非常好到极好的判别指标。直方图特征四分位数间距(IQR)的AUC值为0.90(P < 0.0001),GLGM特征方差梯度的AUC为0.91(P < 0.0001)。T图的纹理分析在直方图、GLCM、GLRL和GLGM类别中识别出对肝纤维化非常好到极好的判别指标。GLGM特征峰度是肝纤维化的最佳判别指标,AUC值为0.90(P < 0.0001)。
本研究证明了在肝纤维化小鼠模型中,将纹理分析应用于T和T图时,其在检测肝纤维化方面的效用,并验证了该技术在肝纤维化无创定量评估中的潜在应用。
1 J. Magn. Reson. Imaging 2017;45:250 - 259。