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首页> 外文期刊>BMC Gastroenterology >Comparison of risk adjustment methods in patients with liver disease using electronic medical record data
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Comparison of risk adjustment methods in patients with liver disease using electronic medical record data

机译:使用电子病历数据比较肝病患者的风险调整方法

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Background Risk adjustment is essential for valid comparison of patients’ health outcomes or performances of health care providers. Several risk adjustment methods for liver diseases are commonly used but the optimal approach is unknown. This study aimed to compare the common risk adjustment methods for predicting in-hospital mortality in cirrhosis patients using electronic medical record (EMR) data. Methods The sample was derived from Beijing YouAn hospital between 2010 and 2014. Previously validated EMR extraction methods were applied to define liver disease conditions, Charlson comorbidity index (CCI), Elixhauser comorbidity index (ECI), Child-Turcotte-Pugh (CTP), model for end-stage liver disease (MELD), MELD sodium (MELDNa), and five-variable MELD (5vMELD). The performance of the common risk adjustment models as well as models combining disease severity and comorbidity indexes for predicting in-hospital mortality was compared using c-statistic. Results Of 11,121 cirrhotic patients, 69.9% were males and 15.8% age 65 or older. The c-statistics across compared models ranged from 0.785 to 0.887. All models significantly outperformed the baseline model with age, sex, and admission status (c-statistic: 0.628). The c-statistics for the CCI, ECI, MELDNa, and CTP were 0.808, 0.825, 0.849, and 0.851, respectively. The c-statistic was 0.887 for combination of CTP and ECI, and 0.882 for combination of MELDNa score and ECI. Conclusions The liver disease severity indexes (i.e., CTP and MELDNa score) outperformed the CCI and ECI for predicting in-hospital mortality among cirrhosis patients using Chinese EMRs. Combining liver disease severity and comorbidities indexes could improve the discrimination power of predicting in-hospital mortality.
机译:背景风险调整对于有效比较患者的健康结果或医疗保健提供者的表现至关重要。通常使用几种针对肝脏疾病的风险调整方法,但最佳方法尚不清楚。这项研究旨在比较使用电子病历(EMR)数据预测肝硬化患者住院死亡率的常见风险调整方法。方法该样本取自北京尤安医院于2010年至2014年。采用先前验证过的EMR提取方法确定肝脏疾病状况,查尔森合并症(CCI),埃利克豪斯合并症指数(ECI),Child-Turcotte-Pugh(CTP),晚期肝病(MELD),MELD钠(MELDNa)和五变量MELD(5vMELD)的模型。使用c统计量比较了常见风险调整模型以及结合疾病严重程度和合并症指数的模型来预测住院死亡率的性能。结果11121名肝硬化患者中,男性占69.9%,65岁或以上年龄占15.8%。所比较模型的c统计量介于0.785至0.887之间。所有模型在年龄,性别和入院状态方面均明显优于基线模型(c统计量:0.628)。 CCI,ECI,MELDNa和CTP的c统计量分别为0.808、0.825、0.849和0.851。 CTP和ECI的组合的c统计量为0.887,MELDNa评分和ECI的组合的c统计量为0.882。结论肝病严重程度指数(即CTP和MELDNa评分)在使用中国EMR预测肝硬化患者住院死亡率方面优于CCI和ECI。结合肝脏疾病的严重程度和合并症指标可以提高预测院内死亡率的区分力。

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