Rutgers University, Newark, New Jersey, USA.
Case Western Reserve University, Cleveland, Ohio, USA.
JPEN J Parenter Enteral Nutr. 2018 Mar;42(3):587-596. doi: 10.1177/0148607117696942. Epub 2017 Dec 19.
Hypermetabolism is theorized in patients diagnosed with chronic kidney disease who are receiving maintenance hemodialysis (MHD). We aimed to distinguish key disease-specific determinants of resting energy expenditure to create a predictive energy equation that more precisely establishes energy needs with the intent of preventing protein-energy wasting.
For this 3-year multisite cross-sectional study (N = 116), eligible participants were diagnosed with chronic kidney disease and were receiving MHD for at least 3 months. Predictors for the model included weight, sex, age, C-reactive protein (CRP), glycosylated hemoglobin, and serum creatinine. The outcome variable was measured resting energy expenditure (mREE). Regression modeling was used to generate predictive formulas and Bland-Altman analyses to evaluate accuracy.
The majority were male (60.3%), black (81.0%), and non-Hispanic (76.7%), and 23% were ≥65 years old. After screening for multicollinearity, the best predictive model of mREE (R = 0.67) included weight, age, sex, and CRP. Two alternative models with acceptable predictability (R = 0.66) were derived with glycosylated hemoglobin or serum creatinine. Based on Bland-Altman analyses, the maintenance hemodialysis equation that included CRP had the best precision, with the highest proportion of participants' predicted energy expenditure classified as accurate (61.2%) and with the lowest number of individuals with underestimation or overestimation.
This study confirms disease-specific factors as key determinants of mREE in patients on MHD and provides a preliminary predictive energy equation. Further prospective research is necessary to test the reliability and validity of this equation across diverse populations of patients who are receiving MHD.
患有慢性肾脏病并接受维持性血液透析(MHD)的患者被认为存在代谢亢进。我们旨在区分静息能量消耗的关键疾病特异性决定因素,以创建一个更准确地确定能量需求的预测能量方程,从而预防蛋白质-能量消耗。
这项为期 3 年的多中心横断面研究(N=116)纳入了诊断为慢性肾脏病且接受 MHD 治疗至少 3 个月的患者。模型的预测因子包括体重、性别、年龄、C 反应蛋白(CRP)、糖化血红蛋白和血清肌酐。结局变量为静息能量消耗(mREE)。回归建模用于生成预测公式,Bland-Altman 分析用于评估准确性。
大多数患者为男性(60.3%)、黑人(81.0%)和非西班牙裔(76.7%),23%的患者年龄≥65 岁。经过多线性筛查,mREE 的最佳预测模型(R=0.67)包括体重、年龄、性别和 CRP。另外两个具有可接受预测性的替代模型(R=0.66)由糖化血红蛋白或血清肌酐推导得出。基于 Bland-Altman 分析,包含 CRP 的维持性血液透析方程具有最佳的准确性,有 61.2%的患者的预测能量消耗被归类为准确,低估或高估的患者人数最少。
本研究证实了 MHD 患者的特定疾病因素是 mREE 的关键决定因素,并提供了一个初步的预测能量方程。进一步的前瞻性研究是必要的,以测试该方程在接受 MHD 治疗的不同患者群体中的可靠性和有效性。