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Respiratory motion correction of liver contrast-enhanced ultrasound sequences by selecting reference image automatically

机译:通过自动选择参考图像来校正肝脏超声造影序列的呼吸运动

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Objective Respiratory motion correction is necessary to quantitative analysis of liver contrast-enhance ultrasound (CEUS) image sequences. However, traditionally manual selecting reference image would affect the accuracy of the respiratory motion correction. Methods First, the original high-dimensional ultrasound gray-level image data was mapped into a two-dimensional space by using Laplacian Eigenmaps (LE). Then, the cluster analysis was adopted using K-means, and the optimal ultrasound reference image could be gotten for respiratory motion correction. Finally, this proposed method was validated on 18 CEUS cases of VX2 tumor in rabbit liver, and the effectiveness of this method was demonstrated. Results After correction, the time-intensity curves extracted from the region of interest of CEUS image sequences became smoother. Before correction, the average of total mean structural similarity (TMSSIM) and the average of mean correlation coefficient (MCC) from image sequences were 0.45±0.11 and 0.67±0.16, respectively. After correction, the two parameters were increased obviously (P<0.001), and were 0.59±0.11 and 0.81±0.11, respectively. The average of deviation valve (DV) from image sequences before correction was 92.16±18.12. After correction, the average was reduced to one-third of the original value. Conclusions The proposed respiratory motion method could improve the accuracy of the quantitative analysis of CEUS by using the reference image based on the traditionally manual selection. This method is operated simply and has a potential in clinical application.
机译:客观的呼吸运动校正对于定量分析肝脏造影剂超声(CEUS)图像序列是必要的。但是,传统上手动选择参考图像会影响呼吸运动校正的准确性。方法首先,使用拉普拉斯特征图谱(LE)将原始的高维超声灰度图像数据映射到二维空间中。然后,采用K均值进行聚类分析,可获得最佳的超声参考图像进行呼吸运动校正。最后,对18例CEUS兔肝VX2肿瘤进行了验证,证明了该方法的有效性。结果校正后,从CEUS图像序列感兴趣区域提取的时间强度曲线变得更平滑。校正前,图像序列的平均平均结构相似度(TMSSIM)和平均相关系数(MCC)的平均值分别为0.45±0.11和0.67±0.16。校正后,两个参数明显增加(P <0.001),分别为0.59±0.11和0.81±0.11。校正前图像序列的偏差阀(DV)的平均值为92.16±18.12。校正后,平均值降低到原始值的三分之一。结论所提出的呼吸运动方法可以在传统的人工选择基础上使用参考图像来提高CEUS定量分析的准确性。该方法操作简单,具有临床应用潜力。

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