Department of Nutrition and Food Service, James A. Haley Veterans Hospital, Tampa, Florida, USA.
Department of Laboratory and Pathology Service, James A. Haley Veterans Hospital, Tampa, Florida, USA.
Nutr Clin Pract. 2023 Oct;38(5):1082-1092. doi: 10.1002/ncp.11009. Epub 2023 Jun 5.
Low muscle mass has been correlated with adverse outcomes in patients who are critically ill. Methods to identify low muscularity such as computed tomography scans or bioelectrical impedance analyses are impractical for admission screening. Urinary creatinine excretion (UCE) and creatinine height index (CHI) are associated with muscularity and outcomes but require a 24-h urine collection. The estimation of UCE from patient variables avoids the need for a 24-h urine collection and may be clinically useful.
Variables of age, height, weight, sex, plasma creatinine, blood urea nitrogen (BUN), glucose, sodium, potassium, chloride, and carbon dioxide from a deidentified data set of 967 patients who had UCE measured were used to develop models to predict UCE. The model identified with the best predictive ability was validated and then retrospectively applied to a separate sample of 120 veterans who were critically ill to examine if UCE and CHI predicted malnutrition or were associated with outcomes.
A model was identified that included variables of plasma creatinine, BUN, age, and weight and was found to be highly correlated, moderately predictive of UCE, and statistically significant. Patients with model-estimated CHI 60% had significantly lower body weight, body mass index, plasma creatinine, and sera albumin and prealbumin levels; were 8.0 times more likely to be diagnosed with malnutrition; and were 2.6 times more likely to be readmitted in 6 months.
A model that predicts UCE offers a novel method to identify patients with low muscularity and malnutrition on admission without the use of invasive tests.
低肌肉量与危重症患者的不良预后相关。用于识别低肌肉量的方法,如计算机断层扫描或生物电阻抗分析,对于入院筛查来说不切实际。尿肌酐排泄量(UCE)和肌酐身高指数(CHI)与肌肉量和结局相关,但需要 24 小时尿液收集。通过患者变量估计 UCE 可避免 24 小时尿液收集的需要,并且可能具有临床意义。
从 967 例接受 UCE 测量的患者的匿名数据集中,使用年龄、身高、体重、性别、血浆肌酐、血尿素氮(BUN)、葡萄糖、钠、钾、氯和二氧化碳等变量来建立预测 UCE 的模型。鉴定出的预测能力最佳的模型进行验证,然后回顾性地应用于 120 例危重症退伍军人的独立样本中,以检查 UCE 和 CHI 是否预测营养不良或与结局相关。
确定了一个包含血浆肌酐、BUN、年龄和体重变量的模型,该模型相关性高,对 UCE 具有中度预测能力,且具有统计学意义。模型估计的 CHI 为 60%的患者体重、体重指数、血浆肌酐和血清白蛋白及前白蛋白水平明显较低;营养不良诊断的可能性高 8 倍;并且在 6 个月内再次入院的可能性高 2.6 倍。
预测 UCE 的模型提供了一种新颖的方法,可以在不使用侵入性检查的情况下,在入院时识别出低肌肉量和营养不良的患者。