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非心脏手术后院内死亡的预测因素:基于南非一家医院行政数据库分析的结果

Predictors of in-hospital mortality following non-cardiac surgery: Findings from an analysis of a South African hospital administrative database.

作者信息

Moodley Yoshan, Biccard Bruce M

机构信息

Perioperative Research Group, Department of Anaesthetics, College of Health Sciences, Nelson R Mandela School of Medicine, University of KwaZulu-Natal and Inkosi Albert Luthuli Central Hospital, Durban, South Africa.

出版信息

S Afr Med J. 2015 Jan 3;105(2):126-9. doi: 10.7196/samj.8268.

DOI:10.7196/samj.8268
PMID:26242531
Abstract

BACKGROUND

Predictors of in-hospital mortality (IHM) following non-cardiac surgery in South African (SA) patients are not well described.

OBJECTIVE

To determine the association between patient comorbidity and IHM in a cohort of SA non-cardiac surgery patients.

METHODS

Data related to comorbidity and IHM for 3,727 patients aged ≥45 years were obtained from a large administrative database at a tertiary SA hospital. Logistic regression analysis was used to determine independent predictors of IHM. In addition, population-attributable fractions (PAFs) were calculated for all clinical factors identified as independent predictors of IHM.

RESULTS

Renal dysfunction, congestive heart failure, cerebrovascular disease, male gender and high-risk surgical specialties were independently associated with IHM (odds ratios (95% confidence intervals) 7.585 (5.480-10.50); 2.604 (1.119-6.060); 2.645 (1.414-4.950); 1.433 (1.107-1.853); and 1.646 (1.213-2.233), respectively). Ischaemic heart disease, diabetes and hypertension were not identified as independent predictors of IHM in SA non-cardiac surgery patients. Renal dysfunction had the largest contribution to IHM in this study (PAF 0.34), followed by high-risk surgical specialties (PAF 0.15), male gender (PAF 0.08), cerebrovascular disease (PAF 0.03) and congestive heart failure (PAF 0.03).

CONCLUSION

Renal dysfunction, congestive heart failure, cerebrovascular disease, male gender and high-risk surgical specialties were major contributors to increased IHM in SA non-cardiac surgery patients. Prospectively designed research is required to determine whether ischaemic heart disease, diabetes and hypertension contribute to IHM in these patients.

摘要

背景

南非(SA)患者非心脏手术后院内死亡率(IHM)的预测因素尚未得到充分描述。

目的

确定一组南非非心脏手术患者中患者合并症与IHM之间的关联。

方法

从南非一家三级医院的大型管理数据库中获取了3727名年龄≥45岁患者的合并症和IHM相关数据。采用逻辑回归分析来确定IHM的独立预测因素。此外,还计算了所有被确定为IHM独立预测因素的临床因素的人群归因分数(PAF)。

结果

肾功能不全、充血性心力衰竭、脑血管疾病、男性性别和高风险手术专科与IHM独立相关(比值比(95%置信区间)分别为7.585(5.480 - 10.50);2.604(1.119 - 6.060);2.645(1.414 - 4.950);1.433(1.107 - 1.853);以及1.646(1.213 - 2.233))。缺血性心脏病、糖尿病和高血压在南非非心脏手术患者中未被确定为IHM的独立预测因素。在本研究中,肾功能不全对IHM的贡献最大(PAF为0.34),其次是高风险手术专科(PAF为0.15)、男性性别(PAF为0.08)、脑血管疾病(PAF为0.03)和充血性心力衰竭(PAF为0.03)。

结论

肾功能不全、充血性心力衰竭、脑血管疾病、男性性别和高风险手术专科是南非非心脏手术患者IHM增加的主要因素。需要进行前瞻性设计的研究来确定缺血性心脏病、糖尿病和高血压是否会导致这些患者的IHM。

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