Multiparametric quantification and visualization of liver fat using ultrasound

Jihye Baek , Ahmed El Kaffas , Aya Kamaya , Kenneth Hoyt , Kevin J. Parker
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Abstract

Objectives

Several ultrasound measures have shown promise for assessment of steatosis compared to traditional B-scan, however clinicians may be required to integrate information across the parameters. Here, we propose an integrated multiparametric approach, enabling simple clinical assessment of key information from combined ultrasound parameters.

Methods

We have measured 13 parameters related to ultrasound and shear wave elastography. These were measured in 30 human subjects under a study of liver fat. The 13 individual measures are assessed for their predictive value using independent magnetic resonance imaging-derived proton density fat fraction (MRI-PDFF) measurements as a reference standard. In addition, a comprehensive and fine-grain analysis is made of all possible combinations of sub-sets of these parameters to determine if any subset can be efficiently combined to predict fat fraction.

Results

We found that as few as four key parameters related to ultrasound propagation are sufficient to generate a linear multiparametric parameter with a correlation against MRI-PDFF values of greater than 0.93. This optimal combination was found to have a classification area under the curve (AUC) approaching 1.0 when applying a threshold for separating steatosis grade zero from higher classes. Furthermore, a strategy is developed for applying local estimates of fat content as a color overlay to produce a visual impression of the extent and distribution of fat within the liver.

Conclusion

In principle, this approach can be applied to most clinical ultrasound systems to provide the clinician and patient with a rapid and inexpensive estimate of liver fat content.

利用超声波对肝脏脂肪进行多参数量化和可视化分析
目标与传统的 B 型扫描相比,几种超声测量方法都显示出评估脂肪变性的前景,但临床医生可能需要整合各种参数的信息。在此,我们提出了一种综合的多参数方法,可从组合超声参数中获得简单的临床评估关键信息。方法我们测量了与超声和剪切波弹性成像相关的 13 个参数。我们测量了与超声波和剪切波弹性成像相关的 13 个参数。以独立的磁共振成像衍生质子密度脂肪分数(MRI-PDFF)测量结果为参考标准,评估了这 13 个单独测量值的预测价值。此外,还对这些参数子集的所有可能组合进行了全面细致的分析,以确定是否有任何子集可以有效地组合起来预测脂肪分数。结果我们发现,与超声波传播相关的四个关键参数就足以生成一个线性多参数,其与 MRI-PDFF 值的相关性大于 0.93。当采用阈值将脂肪变性零级与更高级别的脂肪变性区分开时,发现这种最佳组合的分类曲线下面积(AUC)接近 1.0。结论原则上,这种方法可应用于大多数临床超声系统,为临床医生和患者提供快速、廉价的肝脏脂肪含量评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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