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Glomerular Filtration Rate Estimation by a Novel Numerical Binning-Less Isotonic Statistical Bivariate Numerical Modeling Method

机译:新型数值分箱少等渗统计双变量数值建模方法估算肾小球滤过率

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Statistical bivariate numerical modeling is a method to infer an empirical relationship between unpaired sets of data based on statistical distributions matching. In the present paper, a novel efficient numerical algorithm is proposed to perform bivariate numerical modeling. The algorithm is then applied to correlate glomerular filtration rate to serum creatinine concentration. Glomerular filtration rate is adopted in clinical nephrology as an indicator of kidney function and is relevant for assessing progression of renal disease. As direct measurement of glomerular filtration rate is highly impractical, there is considerable interest in developing numerical algorithms to estimate glomerular filtration rate from parameters which are easier to obtain, such as demographic and ‘bedside’ assays data.
机译:统计双变量数值建模是一种基于统计分布匹配来推断未配对数据集之间的经验关系的方法。在本文中,提出了一种新颖的高效数值算法来进行双变量数值建模。然后应用该算法将肾小球滤过率与血清肌酐浓度相关联。肾小球滤过率在临床肾脏病学中被用作肾脏功能的指标,并与评估肾脏疾病的进展有关。由于直接测量肾小球滤过率非常不切实际,因此人们对开发数值算法以根据更容易获得的参数(例如人口统计和“床边”检测数据)估计肾小球滤过率非常感兴趣。

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