Example of data mining use to follow indicators in clinical pathways

Michelle Le Braz, E. D. Clercq, C. Juillet, N. Garin, A. Perrier
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Abstract

Objectives: To measure the reliability of data mining for indicators related to patient treatment at hospital discharge. Methods: Design: Retrospective cohort study. Population: Patients discharged alive after an admission for heart failure in a general internal medicine department from 2009 to 2010. Data: Key treatments at patient's discharge extracted from the clinical information system compared with data extracted manually from the medical records. Endpoint: Accuracy of data mining for treatment prescription. Analysis: Sensitivity, specificity, positive and negative predictive values (PPVs and NPVs) of data mining for angiotensin-converting enzyme (ACE) inhibitors and betablockers prescription discharge. The gold standard was manual data extraction. We then investigated causes of discrepancies between the two methods. Results: A total of 724 patients were included. At discharge, 85.2% received an ACE inhibitor and 72.4% a beta-blocker. For ACE inhibitors, data mining yielded a sensitivity of 90%, a specificity of 100%, a PPV of 100% and an NPV of 64%. Corresponding values for beta-blockers were 95%, 100%, 100% and 88%, respectively. Main causes for discrepancy were: omission of some molecules in the electronic query used; non-standard writing of a prescription in the clinical information system; formats incorrectly interpreted by the query. Conclusion: Immediate reliance on data mining for drug prescription is currently unwarranted because this complex process is still prone to errors. Results should be manually checked before they can be used as quality indicators.
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数据挖掘用于跟踪临床路径指标的示例
目的:衡量数据挖掘对患者出院治疗相关指标的可靠性。方法:设计:回顾性队列研究。人群:2009 - 2010年在普通内科因心力衰竭入院后存活出院的患者。数据:从临床信息系统中提取患者出院时的关键治疗方法,与人工从病历中提取的数据进行比较。目的:数据挖掘治疗处方的准确性。分析:数据挖掘对血管紧张素转换酶(ACE)抑制剂和β受体阻滞剂处方排放的敏感性、特异性、阳性预测值和阴性预测值(PPVs和npv)。黄金标准是手工数据提取。然后,我们调查了两种方法之间差异的原因。结果:共纳入724例患者。出院时,85.2%的患者接受了ACE抑制剂治疗,72.4%的患者接受了β受体阻滞剂治疗。对于ACE抑制剂,数据挖掘的灵敏度为90%,特异性为100%,PPV为100%,NPV为64%。受体阻滞剂的相应值分别为95%、100%、100%和88%。产生差异的主要原因是:电子查询中遗漏了部分分子;临床信息系统处方书写不规范查询解释的格式不正确。结论:直接依赖数据挖掘药物处方目前是没有根据的,因为这个复杂的过程仍然容易出错。结果在用作质量指标之前应手工检查。
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