透析血管通路狭窄的特征和鉴定。

S Chin, B Panda, M S Damaser, S J A Majerus
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引用次数: 6

摘要

血管通路功能障碍是血液透析患者住院的主要原因,也是该患者群体中医疗费用最高的原因。血管通路流动通常因血管狭窄而受阻。目前涉及成像以检测狭窄的筛查方法对于在护理点的常规使用来说成本太高。对有血管通路功能障碍风险的患者进行无创实时筛查,有可能识别高危患者,并降低紧急手术干预的可能性。Bruits(狭窄附近湍流产生的声音)可以由熟练的临床工作人员使用传统听诊器进行解读。为了提高检测的灵敏度,血流声音的数字分析(声学血管造影或PAG)是使用非侵入性听觉记录对血管通路狭窄进行分类的一种很有前途的方法。在这里,我们展示了PAG的听觉和频谱特征,这些特征可以估计狭窄的位置和程度(DOS)。使用数字记录听诊器获得了9个具有可变DOS和血流动力学流速的狭窄模型的听觉记录,并对其进行分析以提取分类特征。使用自回归建模和离散小波变换进行多分辨率信号分解,产生了14个不同的特征,其中大多数特征与DOS线性相关。我们的初步结果表明,广泛使用的听觉频谱质心是一种计算特征的简单方法,可以估计血管通路狭窄的位置和严重程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stenosis Characterization and Identification for Dialysis Vascular Access.

Vascular access dysfunction is the leading cause of hospitalization for hemodialysis patients and accounts for the most medical costs in this patient population. Vascular access flow is commonly hindered by blood vessel narrowing (stenosis). Current screening methods involving imaging to detect stenosis are too costly for routine use at the point of care. Noninvasive, real-time screening of patients at risk of vascular access dysfunction could potentially identify high-risk patients and reduce the likelihood of emergency surgical interventions. Bruits (sounds produced by turbulent blood flow near stenoses) can be interpreted by skilled clinical staff using conventional stethoscopes. To improve the sensitivity of detection, digital analysis of blood flow sounds (phonoangiograms or PAGs) is a promising approach for classifying vascular access stenosis using non-invasive auditory recordings. Here, we demonstrate auditory and spectral features of PAGs which estimate both the location and degree of stenosis (DOS). Auditory recordings from nine stenosis phantoms with variable DOS and hemodynamic flow rate were obtained using a digital recording stethoscope and analyzed to extract classification features. Autoregressive modeling and discrete wavelet transforms were used for multiresolution signal decomposition to produce 14 distinct features, most of which were linearly correlated with DOS. Our initial results suggest that the widely-used auditory spectral centroid is a simple way to calculate features which can estimate both the location and severity of vascular access stenosis.

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