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Usefulness of chest perfusion computed tomography in the diagnosis of diabetic pulmonary microangiopathy

机译:胸部灌注计算机断层扫描对糖尿病性肺微血管病的诊断价值

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This paper presents the usefulness of perfusion computed tomography (pCT) in the diagnosis of diabetic pulmonary microangiopathy. Our previous works have shown that perfusion parameters are useful in the diagnosis of diabetic pulmonary microangiopathy. We are looking for such measurements and perfusion parameters that provide the most accurate diagnosis. Two types of comparison were made based on the results of clinical trials: nondiabetic vs. diabetic and diabetes without rnicroangiopathy vs. diabetes with microangiopathy. Our studies have shown that PS (permeability surface) is only perfusion parameter statistically significant. In certain regions of interest logistic regression as a classifier produces very good results in diagnosing lung microangiopathy: sensitivity Sens = 89% and excellent specificity Spec = 100%. The results were obtained on the base of measurements taken from 23 subjects. These results were compared with results reported in the literature and based on diffusion capacity and spirometry measurements and modeling. None of the previous results was as good as those obtained using the PS and logistic regression for binary classification. (C) 2014 Nalecz Institute of Biocybemetics and Biomedical Engineering. Published by Elsevier Urban & Partner Sp. z o.o. All rights reserved.
机译:本文介绍了灌注CT扫描在诊断糖尿病性肺微血管病中的实用性。我们以前的工作表明,灌注参数可用于糖尿病性肺微血管病的诊断。我们正在寻找能够提供最准确诊断的测量和灌注参数。根据临床试验结果进行了两种类型的比较:非糖尿病与糖尿病以及无肾小管血管病变的糖尿病与有微血管病的糖尿病。我们的研究表明,PS(渗透表面)仅是具有统计学意义的灌注参数。在某些感兴趣的区域中,作为分类器的逻辑回归在诊断肺微血管病方面产生了非常好的结果:灵敏度Sens = 89%,优良的Spec = 100%。结果是根据对23位受试者的测量得出的。将这些结果与文献报道的结果进行比较,并基于扩散能力,肺活量测定和建模。以前的结果没有一个比使用PS和Logistic回归进行二元分类获得的结果更好。 (C)2014 Nalecz生物仿制药和生物医学工程研究所。由Elsevier Urban&Partner Sp。动物园。版权所有。

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