首页> 外文会议>IEEE International Conference on Healthcare Informatics, Imaging and Systems Biology >Azathioprine-Induced Comorbidity Network Reveals Patterns and Predictors of Nephrotoxicity and Neutrophilia
【24h】

Azathioprine-Induced Comorbidity Network Reveals Patterns and Predictors of Nephrotoxicity and Neutrophilia

机译:AzathioLne诱导的合并网络揭示肾毒性和中性粒细胞的模式和预测因子

获取原文

摘要

We sought to examine the frequencies and patterns of nephrotoxicity and neutrophilia due to azathioprine (AZA), and to develop a prototype method for using large de-identified electronic health record (EHR) data to aid in post-market drug surveillance. We leveraged a de-identified database of over 10 million patient EHRs to construct a network of comorbidities induced by administration of AZA, where comorbidities were defined by baseline-controlled laboratory values. To gauge the significance of the identified disease patterns, we calculated the relative risk of developing a comorbidity pair relative to a control cohort of patients taking one of 12 other anti-rheumatic agents. Nephrotoxicity as gauged by elevations in creatinine was present in 11% of patients taking AZA, and this frequency was significantly higher than in patients taking other anti-rheumatic agents (RR: 1.2, 95% CI: 1.04-1.43). Neutrophilia was highly prevalent (45%) in the population and was also unique to AZA (RR: 1.2, 95% CI: 1.17-1.28). Using a comorbidity network analysis, we hypothesized that the joint consideration of anemia (hemoglobin 190 IU/L) may serve as a predictor of impending renal dysfunction. Indeed, these two laboratory values provide approximately 100% sensitivity in predicting subsequent elevations in creatinine. Furthermore, the predictive power is unique to AZA, for jointly considering anemia and an elevated LDH provides only 50% sensitivity in predicting creatinine elevations with other anti-rheumatic agents. Our work demonstrates that the construction of comorbidity networks from de-identified EHR data sets can provide both sufficient insight and statistical power to uncover novel patterns and predictors of disease.
机译:我们试图检查频率,由于硫唑嘌呤(AZA)肾毒性和中性粒细胞的模式,并制定使用大去识别电子健康记录(EHR)的数据,以在上市后药品监测援助的原型方法。我们利用超过1000万患者的电子健康档案的去识别数据库,构建由AZA,其中合并症基线控制的实验室值定义的给药引起合并症的网络。为了衡量已查明疾病模式的重要意义,我们计算相对于服用的其他12个抗风湿药一个病人控制队列合并症对发展的相对风险。作为衡量由肌酐升高肾毒性存在于服用AZA患者11%,该频率比在服用其他抗风湿药治疗的患者显著更高(RR:1.2,95%CI:1.04-1.43)。中性粒细胞是在人口非常普遍的(45%),同时也是唯一的AZA(RR:1.2,95%CI:1.17-1.28)。使用合并症网络分析,我们推测,共同审议贫血(血红蛋白190 IU / L)可以作为即将发生肾功能不全的预测。事实上,这两个实验室值在肌酸酐预测随后的隆起提供大约100%的灵敏性。此外,预测能力是唯一的AZA,对于联合考虑贫血和升高的LDH在预测与其他抗风湿剂肌酸酐升高仅提供50%的灵敏度。我们的工作表明,合并症网络从去标识的电子病历数据集的建设可以同时提供足够的洞察力和统计力量揭开新的模式和疾病的预测。

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