...
首页> 外文期刊>International Journal of Population Data Science >Comparison of Risk Adjustment Methods in Patients with Liver Disease Using Electronic Medical Record
【24h】

Comparison of Risk Adjustment Methods in Patients with Liver Disease Using Electronic Medical Record

机译:电子病历对肝病患者风险调整方法的比较

获取原文

摘要

ABSTRACTObjectiveRisk adjustment methods are widely used to compare quality of care or predict health outcome, but the optimal approach is unclear for liver disease. This study is to compare the performance of common risk adjustment methods for predicting in-hospital mortality in patients with liver disease using Electronic Medical Record (EMR). ApproachThe EMR data was derived from Beijing YouAn Hospital between 2010 and 2015. 85,526 EMRs were included. Previously developed and validated automated EMR case definitions were applied to define the conditions including primary liver cancer, cirrhosis and other conditions included in Charlson, Elixhauser comorbidity algorithms, Child-Turcotte-Pugh (CTP) score and Model for End-Stage Liver Disease (MELD). Logistic regression was conducted and C-statistic was obtained to compare the performance of the different methods for predicting in-hospital mortality. To eliminate the effect of the model complexity on model performance, we compared Akaike Information Criterion (AIC) of different methods (smaller AIC is better). ResultIn total, we included three liver diseases cohort: 7,178 Primary Liver Cancer (PLC) patients, 11,121 cirrhosis patients and 7,298 cirrhosis without PLC patient. For PLC cohort, C-statistics of these compared indexes ranged from 0.72 to 0.84; AIC was between 4312.3 and 5048.4. For cirrhosis cohort, C-statistics of these compared indexes ranged from 0.73 to 0.83; AIC was between 4952.1 and 5788.2. For cirrhosis without PLC cohort, C-statistics ranged from 0.73 to 0.84; AIC was between 2608.3 and 3240.5. It was consistent across the three cohorts that MELD + sodium (MELD_Na) score (a variant of MELD score) had the highest C-statistic and lowest AIC; CTP had the lowest C-statistic and highest AIC. Integrating Charlson Comorbidity to MELD_Na, C-statistic improved to 0.86 and AIC reduced. ConclusionAmong the compared risk adjustment methods, MELD_Na performed best for predicting in-hospital mortality among patients with PLC or cirrhosis using Chinese EMRs. Adding clinical information to comorbidity algorithms improved the performance of the model.
机译:摘要目的风险调整方法广泛用于比较护理质量或预测健康结果,但是对于肝病,最佳方法尚不清楚。这项研究旨在比较使用电子病历(EMR)预测肝病患者住院死亡率的常见风险调整方法的效果。方法EMR数据来源于2010年至2015年之间的北京佑安医院。其中包括85,526个EMR。应用先前开发和验证的自动EMR病例定义来定义包括原发性肝癌,肝硬化以及Charlson,Elixhauser合并症算法,Child-Turcotte-Pugh(CTP)评分和终末期肝病模型(MELD)中包括的其他疾病的疾病)。进行Logistic回归并获得C统计量,以比较不同方法预测院内死亡率的效果。为了消除模型复杂性对模型性能的影响,我们比较了不同方法的Akaike信息准则(AIC)(AIC越小越好)。结果总共纳入了3个肝脏疾病队列:7178例原发性肝癌(PLC)患者,11121例肝硬化患者和7298例无PLC的肝硬化患者。对于PLC队列,这些比较指标的C统计量范围为0.72至0.84; AIC在4312.3和5048.4之间。对于肝硬化队列,这些比较指标的C统计量范围为0.73至0.83; AIC在4952.1和5788.2之间。对于没有PLC队列的肝硬化,C统计量范围为0.73至0.84; AIC在2608.3和3240.5之间。在这三个队列中,MELD +钠(MELD_Na)评分(MELD评分的一种变体)具有最高的C统计量和最低的AIC,这是一致的。 CTP的C统计量最低,AIC最高。将Charlson合并症整合到MELD_Na,C统计量提高到0.86,AIC降低。结论在比较的风险调整方法中,MELD_Na最能预测中国EMRs对PLC或肝硬化患者的院内死亡率。将临床信息添加到合并症算法可以改善模型的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号