首页> 外文期刊>Journal of renal nutrition: the official journal of the Council on Renal Nutrition of the National Kidney Foundation >Development of a Predictive Energy Equation for Maintenance Hemodialysis Patients: A Pilot Study
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Development of a Predictive Energy Equation for Maintenance Hemodialysis Patients: A Pilot Study

机译:维持性血液透析患者预测能量方程的开发:一项先导研究

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Objective: The study objectives were to explore the predictors of measured resting energy expenditure (mREE) among a sample of maintenance hemodialysis (MHD) patients, to generate a predictive energy equation (MHDE), and to compare such models to another commonly used predictive energy equation in nutritional care, the Mifflin-St. Jeor equation (MSJE). Design and Methods: The study was a retrospective, cross-sectional cohort design conducted at the Vanderbilt University Medical Center. Study subjects were adult MHD patients (N = 67). Data collected from several clinical trials were analyzed using Pearson's correlation and multivariate linear regression procedures. Demographic, anthropometric, clinical, and laboratory data were examined as potential predictors of mREE. Limits of agreement between the MHDE and the MSJE were evaluated using Bland-Altman plots. The a priori α was set at P .05. The main outcome measure was mREE. Results: The mean age of the sample was 47±13years. Fifty participants (75.6%) were African American, 7.5% were Hispanic, and 73.1% were males. Fat-free mass (FFM), serum albumin (ALB), age, weight, serum creatinine (CR), height, body mass index, sex, high-sensitivity C-reactive protein (CRP), and fat mass (FM) were all significantly (P .05) correlated with mREE. After screening for multicollinearity, the best predictive model (MHDE-lean body mass [LBM]) of mREE included (R2=0.489) FFM, ALB, age, and CRP. Two additional models (MHDE-CRP and MHDE-CR) with acceptable predictability (R2=0.460 and R2=0.451) were derived to improve the clinical utility of the developed energy equation (MHDE-LBM). Using Bland-Altman plots, the MHDE over- and underpredicted mREE less often than the MSJE. Conclusions: Predictive models (MHDE) including selective demographic, clinical, and anthropometric data explained less than 50% variance of mREE but had better precision in determining energy requirements for MHD patients when compared with MSJE. Further research is necessary to improve predictive models of mREE in the MHD population and to test its validity and clinical application.
机译:目的:研究目的是探索维持性血液透析(MHD)患者样本中测得的静息能量消耗(mREE)的预测因子,生成预测能量方程(MHDE),并将此类模型与另一个常用的预测能量进行比较营养保健方面的方程式,Mifflin-St。 Jeor方程(MSJE)。设计与方法:该研究是在范德比尔特大学医学中心进行的一项回顾性横断队列研究。研究对象为成人MHD患者(N = 67)。使用Pearson相关性和多元线性回归程序分析了从多个临床试验中收集的数据。人口统计学,人体测量学,临床和实验室数据被检查为mREE的潜在预测指标。 MHDE和MSJE之间的一致性极限是使用Bland-Altman图评估的。先验α设置为P <.05。主要结果指标为mREE。结果:样本的平均年龄为47±13岁。五十名参与者(75.6%)是非洲裔美国人,西班牙裔是7.5%,男性是73.1%。无脂肪量(FFM),血清白蛋白(ALB),年龄,体重,血清肌酐(CR),身高,体重指数,性别,高敏C反应蛋白(CRP)和脂肪量(FM)所有这些均与mREE相关(P <.05)。在筛选多重共线性之后,mREE的最佳预测模型(MHDE瘦体重[LBM])包括(R2 = 0.489)FFM,ALB,年龄和CRP。推导了两个具有可接受的可预测性的模型(MHDE-CRP和MHDE-CR)(R2 = 0.460和R2 = 0.451),以改善已开发的能量方程(MHDE-LBM)的临床效用。使用Bland-Altman图,MHDE的mREE高估和低估的频率低于MSJE。结论:与MSJE相比,包括选择性人口统计学,临床和人体测量学数据的预测模型(MHDE)解释了mREE的差异小于50%,但在确定MHD患者的能量需求方面具有更高的精度。为了改善MHD人群中mREE的预测模型并检验其有效性和临床应用,有必要进行进一步的研究。

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