坦桑尼亚达累斯萨拉姆穆欣比利国立医院重症监护室患者能源消耗模式评估及预测公式验证

D. P. Mwasapi, D. E. Lugazia, Dr. H.J. Mathew, DR.H. Mgaya, Dr Peter Kibunto, Dr. Abubakar R Hamis, Dr. Eric K Muhumba, D. R. T. Mliwa, Dr. Edwin M Muhondezi, Dr. Raymond P Makundi
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摘要

背景:危重病人的营养支持是保证预后、影响发病率和死亡率的最重要参数之一,因此,指南建议将使用间接热量计精确测量静息能量消耗作为黄金标准。但由于缺乏资源和其他技术问题,预测方程被方便地用作代用指标。目的:本研究旨在检查营养不良的程度、不良的营养支持方法,并验证我们这里危重病人常用的预测方程。研究方法:在穆亨比利国立医院(Muhimbili National Hospital Mloganzila)连续抽取了110名接受机械通气治疗的重症监护病房患者,进行了一项医院描述性横断面研究。研究人员记录了患者的人体测量数据、在重症监护室的住院时间、体温和分钟容积,以便根据不同的预测方程估算静息能量消耗(REE)。使用间接量热模块测量并记录患者的静息能量消耗,然后使用 SPSS 软件 23 版对统计数据进行分析。结果营养支持不良的发生率为 69%;在所有参与者中,分别有 41.8% 和 27.3% 的人出现喂养不足和喂养过度。营养不良的发生率为 51.8%;体重不足和超重分别占所有参与者的 29.1%和 22.7%。在 HB、MSJ、ESPEN 和 PENN 中,±10% 差异的预测方程准确率分别为 30%、45.5%、46.4% 和 68.2%。结论和建议:营养不良和营养支持不足是重症监护室的常见问题。与间接热量计相比,预测方程的准确性和有效性较差。宾州方程最准确,与 IC 的一致性最高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Energy Consumption Patterns and Validation of Predictive Equations among ICU Patients at Muhimbili National Hospital in Dar es Salaam, Tanzania
Background: Nutritional support in critically-ill patients is one of the most important parameters guarding the prognosis and influencing morbidity and mortality in these patients, owing to that fact, accurate measurement of the resting energy expenditure using Indirect calorimetry is recommended by guidelines as a gold standard. But due to lack of resources and other technicalities predictive equations are conveniently used as surrogates. Aims: This study was intended to examine the extent of malnutrition, poor nutrition support practices and to validate the common used predictive equations in critically-ill patients in our setting. Methodology: A hospital-based descriptive cross-sectional study was conducted on consecutively sampled 110 mechanically ventilated ICU patients at Muhimbili National Hospital Mloganzila. Anthropometric measurements, duration of stay in ICU, Temperature and Minute Volumes were recorded so as to estimate resting energy expenditure, REE from different predictive equations. Using Indirect Calorimetry Module patient’s REE was measured and recorded then a statistical data analyzed using SPSS software version 23. Results: The prevalence of poor nutritional support was 69%; underfeeding and overfeeding were observed in 41.8% and 27.3% of all participants respectively. Prevalence of malnutrition was 51.8%; underweight and overweight were found to be in 29.1% and 22.7% of all participants respectively. The accuracy of predictive equation in ±10% difference was 30%, 45.5%, 46.4% and 68.2% in HB, MSJ, ESPEN and PENN respectively. Conclusion and Recommendation: Malnutrition and Poor Nutritional support are common problems in ICU. Predictive equations have poor accuracy and validity in comparison to indirect calorimetry. Penn State Equation was the most accurate and with the highest agreement with IC.
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