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[社会阶层、入院方式、疾病严重程度与医院死亡率:对都灵莫利内特医院出院病例采用“所有患者精细化疾病诊断相关分组”进行的分析]

[Social class, mode of admission, severity of illness and hospital mortality: an analysis with "All patient refined DRG" of discharges from the Molinette hospital in Turin].

作者信息

Ciccone G, Lorenzoni L, Ivaldi C, Ciccarelli E, Piobbici M, Arione R

机构信息

UODU Epidemiologia dei Tumori-ASO San Giovanni Battista di Torino, Centro di Prevenzione Oncologica (CPO Piemonte).

出版信息

Epidemiol Prev. 1999 Jul-Sep;23(3):188-96.

Abstract

Data available from the standard hospital discharge database (SDO) allow us to explore differences in health conditions according to different indicators of socioeconomic status (SES). We analysed all the patients aged 30-59, discharged from the S. Giovanni Battista (Molinette) hospital (the main general hospital in Turin, Italy) during three years (1996-1998) (n = 49949). Three health indicators were used as outcomes: a) emergency admission; b) severity of illness (according to the "All Patient Refined DRGs" subclasses); c) hospital mortality. Patients were compared for each outcome according to two different SES indicators: a) level of education; b) employment status. Logistic regression models (both conditional and unconditional) were used to adjust for several potential confounders. Patients with lower education (up to 5 years of schooling), compared to those with 13 or more years of schooling, showed a higher probability of being admitted through the emergency ward (29.1% vs 23.3%), with an odds ratio (OR) = 1.56-95% confidence interval (95% CI) = 1.45-1.68; of being classified in higher severity subclasses of illness (23.3% vs 17.7%, OR = 1.14; 95% CI = 1.07-1.22) and of dying in hospital (2.3% vs 1.6%). However, after adjustment for other prognostic factors (as severity of illness and specific expected mortality), this association disappeared (OR = 1.05, 95% CI = 0.84-1.32). Similar, but somewhat stronger, associations were observed when comparing the unemployed versus the employed. The corresponding figures (ORs; 95% CI) were 1.57 (1.42-1.74) for emergency admission; 1.31 (1.18-1.45) for severity of illness and 1.55 (1.10-2.16) for hospital mortality. In conclusion, this study showed that SES differentials in health are clearly measurable through routine hospital information systems, and documented that patients of low SES, particularly unemployed, experienced a delayed access to hospital, were admitted in poorer general health conditions and had a more unfavourable prognosis.

摘要

从标准医院出院数据库(SDO)获取的数据使我们能够根据社会经济地位(SES)的不同指标来探究健康状况的差异。我们分析了1996年至1998年这三年间从圣乔瓦尼·巴蒂斯塔(莫利内特)医院(意大利都灵的主要综合医院)出院的所有30至59岁的患者(n = 49949)。使用了三项健康指标作为结果:a)急诊入院;b)疾病严重程度(根据“所有患者精细诊断相关分组”子类);c)医院死亡率。根据两个不同的SES指标对患者的每项结果进行比较:a)教育水平;b)就业状况。使用逻辑回归模型(条件模型和无条件模型)来调整几个潜在的混杂因素。与接受13年或以上教育的患者相比,受教育程度较低(最多5年 schooling应改为schooling years,即受教育年限)的患者通过急诊病房入院的可能性更高(29.1%对23.3%),优势比(OR) = 1.56,95%置信区间(95%CI) = 1.45 - 1.68;被归类为疾病严重程度较高子类的可能性更高(23.3%对17.7%,OR = 1.14;95%CI = 1.07 - 1.22),以及在医院死亡的可能性更高(2.3%对1.6%)。然而,在对其他预后因素(如疾病严重程度和特定预期死亡率)进行调整后,这种关联消失了(OR = 1.05,95%CI = 0.84 - 1.32)。在比较失业者与就业者时观察到了类似但稍强的关联。急诊入院的相应数字(ORs;95%CI)为1.57(1.42 - 1.74);疾病严重程度为1.31(1.18 - 1.45),医院死亡率为1.55(1.10 - 2.16)。总之,本研究表明,通过常规医院信息系统可以清楚地衡量健康方面的SES差异,并记录了低SES患者,特别是失业者,住院延迟,入院时总体健康状况较差,预后更不利。 (原文中schooling表述有误,翻译时做了修正)

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