医学
肠内给药
肠外营养
重症监护室
重症监护医学
质量管理
重症监护
病危
协议(科学)
体积热力学
急诊医学
运营管理
管理制度
替代医学
经济
病理
物理
量子力学
作者
Angela Bonomo,Diane Lynn Blume,Katie Davis,Hee Jun Kim
出处
期刊:Critical Care Nurse
[AACN Publishing]
日期:2021-04-01
卷期号:41 (2): 16-26
被引量:5
摘要
Background At least 80% of ordered enteral nutrition should be delivered to improve outcomes in critical care patients. However, these patients typically receive 60% to 70% of ordered enteral nutrition volume. In a practice review within a 28-bed medical-surgical adult intensive care unit, patients received a median of 67.5% of ordered enteral nutrition with standard rate-based feeding. Volume-based feeding is recommended to deliver adequate enteral nutrition to critically ill patients. Objective To use a quality improvement project to increase the volume of enteral nutrition delivered in the medical-surgical intensive care unit. Methods Percentages of target volume achieved were monitored in 73 patients. Comparisons between the rate-based and volume-based feeding groups used nonparametric quality of medians test or the χ2 test. A customized volume-based feeding protocol and order set were created according to published protocols and then implemented. Standardized education included lecture, demonstration, written material, and active personal involvement, followed by a scenario-based test to apply learning. Results Immediately after implementation of this practice change, delivered enteral nutrition volume increased, resulting in a median delivery of 99.8% of ordered volume (P = .003). Delivery of a mean of 98% ordered volume was sustained over the 15 months following implementation. Conclusions Implementation of volume-based feeding optimized enteral nutrition delivery to critically ill patients in this medical-surgical intensive care unit. This success can be attributed to a comprehensive, individualized, and proactive process design and educational approach. The process can be adapted to quality improvement initiatives with other patient populations and units.
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