医学
急诊医学
病例组合指数
重症监护室
回顾性队列研究
心理干预
损伤严重程度评分
资源利用
出院
伤害预防
毒物控制
重症监护医学
内科学
护理部
经济
自然资源经济学
作者
Lynne Moore,Henry T. Stelfox,David C. Evans,Sayed Morad Hameed,Natalie Yanchar,Richard Simons,John B. Kortbeek,G Bourgeois,Julien Clément,François Lauzier,Alexis F. Turgeon
出处
期刊:Annals of Surgery
[Lippincott Williams & Wilkins]
日期:2016-10-05
卷期号:267 (1): 177-182
被引量:13
标识
DOI:10.1097/sla.0000000000002036
摘要
To assess the variation in hospital and intensive care unit (ICU) length of stay (LOS) for injury admissions across Canadian provinces and to evaluate the relative contribution of patient case mix and treatment-related factors (intensity of care, complications, and discharge delays) to explaining observed variations.Identifying unjustified interprovider variations in resource use and the determinants of such variations is an important step towards optimizing health care.We conducted a multicenter, retrospective cohort study on admissions for major trauma (injury severity score >12) to level I and II trauma centers across Canada (2006-2012). We used data from the Canadian National Trauma Registry linked to hospital discharge data to compare risk-adjusted hospital and ICU LOS across provinces.Risk-adjusted hospital LOS was shortest in Ontario (10.0 days) and longest in Newfoundland and Labrador (16.1 days; P < 0.001). Risk-adjusted ICU LOS was shortest in Québec (4.4 days) and longest in Alberta (6.1 days; P < 0.001). Patient case-mix explained 32% and 8% of interhospital variations in hospital and ICU LOS, respectively, whereas treatment-related factors explained 63% and 22%.We observed significant variation in risk-adjusted hospital and ICU LOS across trauma systems in Canada. Provider ranks on hospital LOS were not related to those observed for ICU LOS. Treatment-related factors explained more interhospital variation in LOS than patient case-mix. Results suggest that interventions targeting reductions in low-value procedures, prevention of adverse events, and better discharge planning may be most effective for optimizing LOS for injury admissions.
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