硅学分析揭示了肾脏各向异性在利用超声剪切波弹性成像改进慢性肾病检测方面的前景。

IF 2.2 4区 医学 Q3 ENGINEERING, BIOMEDICAL
William T. H. Lim, Ean H. Ooi, Ji J. Foo, Kwan H. Ng, Jeannie H. D. Wong, Sook S. Leong
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引用次数: 0

摘要

肾脏各向异性是肾脏的一种复杂特性,在使用剪切波弹性成像技术检测慢性肾脏疾病时,要获得一致的测量结果往往是一项挑战。为了规避肾脏各向异性在临床环境中带来的挑战,我们引入了一种称为 "各向异性比 "的无量纲生物标志物,以便从硅学角度建立肾脏各向异性程度的变化与慢性肾脏疾病进展之间的相关性。为此,研究人员开发了一种高效的模型还原方法来模拟肾脏的各向异性。数值数据和实验数据之间获得了良好的一致性,与文献中的实验模型测量结果相比,误差小于 5.5%。为了证明该模型在临床测量中的适用性,对绵羊肾脏的各向异性比进行了量化,数值结果和推导出的实验结果都报告了 0.667 的值。分析各向异性比与慢性肾病进展的关系表明,肾脏正常的患者各向异性比较低,为 0.872,而肾功能受损的患者各向异性比可能会增加到 0.904,正如本研究确定的那样。研究结果表明,各向异性比可提高利用剪切波弹性成像检测慢性肾病的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

In silico analysis reveals the prospects of renal anisotropy in improving chronic kidney disease detection using ultrasound shear wave elastography

In silico analysis reveals the prospects of renal anisotropy in improving chronic kidney disease detection using ultrasound shear wave elastography

Renal anisotropy is a complex property of the kidney and often poses a challenge in obtaining consistent measurements when using shear wave elastography to detect chronic kidney disease. To circumvent the challenge posed by renal anisotropy in clinical settings, a dimensionless biomarker termed the ‘anisotropic ratio’ was introduced to establish a correlation between changes in degree of renal anisotropy and progression of chronic kidney disease through an in silico perspective. To achieve this, an efficient model reduction approach was developed to model the anisotropic property of kidneys. Good agreement between the numerical and experimental data were obtained, as percentage errors of less than 5.5% were reported when compared against experimental phantom measurement from the literature. To demonstrate the applicability of the model to clinical measurements, the anisotropic ratio of sheep kidneys was quantified, with both numerical and derived experimental results reporting a value of .667. Analysis of the anisotropic ratio with progression of chronic kidney disease demonstrated that patients with normal kidneys would have a lower anisotropic ratio of .872 as opposed to patients suffering from renal impairment, in which the anisotropic ratio may increase to .904, as determined from this study. The findings demonstrate the potential of the anisotropic ratio in improving the detection of chronic kidney disease using shear wave elastography.

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来源期刊
International Journal for Numerical Methods in Biomedical Engineering
International Journal for Numerical Methods in Biomedical Engineering ENGINEERING, BIOMEDICAL-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
4.50
自引率
9.50%
发文量
103
审稿时长
3 months
期刊介绍: All differential equation based models for biomedical applications and their novel solutions (using either established numerical methods such as finite difference, finite element and finite volume methods or new numerical methods) are within the scope of this journal. Manuscripts with experimental and analytical themes are also welcome if a component of the paper deals with numerical methods. Special cases that may not involve differential equations such as image processing, meshing and artificial intelligence are within the scope. Any research that is broadly linked to the wellbeing of the human body, either directly or indirectly, is also within the scope of this journal.
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