The cost-effectiveness ratio of a managed protocol for severe sepsis

Journal of Critical Care(2014)

引用 19|浏览5
暂无评分
摘要
PURPOSE:Severe sepsis is a time-dependent disease, and implementation of early treatment has been associated with mortality rate reduction. However, the literature is controversial regarding cost-effectiveness analysis of this intervention. The aim was to assess the cost-effectiveness of a managed protocol for the treatment of severe sepsis. MATERIALS AND METHODS:This is a prospective cohort study involving a historical comparison (before and after the implementation of the protocol) of patients who had been hospitalized with severe sepsis and septic shock. The group of patients who were treated before the assistance routine was implemented was considered to be the control. The case-managed nurse involved with assistance protocol performed the data collection. This nurse received special training to ensure the quality of the data and to measure the intervention throughout the implementation process. RESULTS:A total of 414 patients were analyzed. The mortality rates were 57% in the control group and 38% in the protocol group (P=.002). After the implementation of the protocol, the absolute risk reduction was 18%; and the relative risk reduction was 31.8%. There was a tendency for a reduction in the cost of the full hospitalization, but this trend did not reach statistical significance. Nevertheless, the cost of hospitalization in the intensive care unit was reduced significantly from US $138,237±$202,418 in the control group to US $85,484±$127,471 in the protocol group (P=.003). The managed protocol for sepsis resulted in an average gain of 3.2 life-years after being discharged from the hospital (8.8±13.3 years in the control group and 12.0±14.0 years in the protocol group, P=.01). CONCLUSIONS:Given that the incremental cost was lower than or equal to zero, the effectiveness of the protocol was justified by the significant increase in the life-years saved and the reduced mortality.
更多
查看译文
关键词
ICU,SSC
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要