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Optimizing multicompression approaches to elasticity imaging

机译:优化弹性成像的多压缩方法

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Breast lesion visibility in static strain imaging ultimately is noise limited. When correlation and related techniques are applied to estimate local displacements between two echo frames recorded before and after a small deformation, target contrast increases linearly with the amount of deformation applied. However, above some deformation threshold, decorrelation noise increases more than contrast such that lesion visibility is severely reduced. Multicompression methods avoid this problem by accumulating displacements from many small deformations to provide the same net increase in lesion contrast as one large deformation but with minimal decorrelation noise. Unfortunately, multicompression approaches accumulate echo noise (electronic and sampling) with each deformation step as contrast builds so that lesion visibility can be reduced again if the applied deformation increment is too small. This paper uses signal models and analysis techniques to develop multicompression strategies that minimize strain image noise. The analysis predicts that displacement variance is minimal in elastically homogeneous media when the applied strain increment is 0.0035. Predictions are verified experimentally with gelatin phantoms. For in vivo breast imaging, a strain increment as low as 0.0015 is recommended for minimum noise because of the greater elastic heterogeneity of breast tissue.
机译:静态应变成像中的乳房病变可见性最终受到噪声的限制。当应用相关技术和相关技术来估计小变形前后记录的两个回波帧之间的局部位移时,目标对比度会随着变形量的增加而线性增加。但是,在某个变形阈值之上,去相关噪声的增加大于对比度,从而严重降低了病变的可见性。多压缩方法通过累积许多小变形的位移来避免此问题,从而提供与一个大变形相同的病变对比度净增加,但具有最小的去相关噪声。不幸的是,随着压缩的建立,多重压缩方法会在每个变形步骤中累积回声噪声(电子和采样),因此如果施加的变形增量太小,则病变可见度会再次降低。本文使用信号模型和分析技术来开发可将应变图像噪声降至最低的多重压缩策略。分析预测,当施加的应变增量为0.0035时,弹性均质介质中的位移变化最小。用明胶幻象通过实验验证了预测。对于体内乳房成像,由于乳房组织的弹性异质性较大,因此建议将应变增量低至0.0015,以将噪声降至最低。

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