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Estimation of glomerular filtration rate by a radial basis function neural network in patients with type-2 diabetes mellitus

机译:通过径向基函数神经网络估计2型糖尿病患者的肾小球滤过率

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Background Accurate and precise estimates of glomerular filtration rate (GFR) are essential for clinical assessments, and many methods of estimation are available. We developed a radial basis function (RBF) network and assessed the performance of this method in the estimation of the GFRs of 207 patients with type-2 diabetes and CKD. Methods Standard GFR (sGFR) was determined by 99mTc-DTPA renal dynamic imaging and GFR was also estimated by the 6-variable MDRD equation and the 4-variable MDRD equation. Results Bland-Altman analysis indicated that estimates from the RBF network were more precise than those from the other two methods for some groups of patients. However, the median difference of RBF network estimates from sGFR was greater than those from the other two estimates, indicating greater bias. For patients with stage I/II CKD, the median absolute difference of the RBF network estimate from sGFR was significantly lower, and the P50 of the RBF network estimate (n?=?56, 87.5%) was significantly higher than that of the MDRD-4 estimate (n?=?49, 76.6%) (p? Conclusions In patients with type-2 diabetes mellitus, estimation of GFR by our RBF network provided better precision and accuracy for some groups of patients than the estimation by the traditional MDRD equations. However, the RBF network estimates of GFR tended to have greater bias and higher than those indicated by sGFR determined by 99mTc-DTPA renal dynamic imaging.
机译:背景技术肾小球滤过率(GFR)的准确和准确估算对于临床评估至关重要,并且有许多估算方法可用。我们开发了一个径向基函数(RBF)网络,并评估了该方法在207例2型糖尿病和CKD患者的GFR评估中的效果。方法通过 99m Tc-DTPA肾动态显像确定标准GFR(sGFR),并通过6变量MDRD方程和4变量MDRD方程估算GFR。结果Bland-Altman分析表明,对于某些类型的患者,RBF网络的估算值比其他两种方法更准确。但是,来自sGFR的RBF网络估算值的中位数差异大于其他两个估算值的差异,表明存在较大偏差。对于患有I / II期CKD的患者,RBF网络估计值与sGFR的中位数绝对差值明显更低,RBF网络估计值的P 50 (n?=?56,87.5%)结论显着高于MDRD-4估计值(n?=?49,76.6%)(p?结论)在2型糖尿病患者中,通过我们的RBF网络估计GFR为某些组的糖尿病患者提供了更好的准确性和准确性。与传统的MDRD方程估计相比,RBF网络对GFR的估计倾向于具有更大的偏倚且高于 99m Tc-DTPA肾脏动态成像所确定的sGFR所指示的估计。

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