Olson Catherine H, Dierich Mary, Westra Bonnie L
Biomedical Health Informatics, University of Minnesota, 330 Diehl Hall, 505 Essex Street SE, Minneapolis, MN 55455, United States.
School of Nursing, University of Minnesota, Minneapolis, MN, United States.
J Biomed Inform. 2014 Oct;51:60-71. doi: 10.1016/j.jbi.2014.04.004. Epub 2014 Apr 13.
Create an automated algorithm for predicting elderly patients' medication-related risks for readmission and validate it by comparing results with a manual analysis of the same patient population.
Outcome and Assessment Information Set (OASIS) and medication data were reused from a previous, manual study of 911 patients from 15 Medicare-certified home health care agencies. The medication data was converted into standardized drug codes using APIs managed by the National Library of Medicine (NLM), and then integrated in an automated algorithm that calculates patients' high risk medication regime scores (HRMRs). A comparison of the results between algorithm and manual process was conducted to determine how frequently the HRMR scores were derived which are predictive of readmission.
HRMR scores are composed of polypharmacy (number of drugs), Potentially Inappropriate Medications (PIM) (drugs risky to the elderly), and Medication Regimen Complexity Index (MRCI) (complex dose forms, instructions or administration). The algorithm produced polypharmacy, PIM, and MRCI scores that matched with 99%, 87% and 99% of the scores, respectively, from the manual analysis.
Imperfect match rates resulted from discrepancies in how drugs were classified and coded by the manual analysis vs. the automated algorithm. HRMR rules lack clarity, resulting in clinical judgments for manual coding that were difficult to replicate in the automated analysis.
The high comparison rates for the three measures suggest that an automated clinical tool could use patients' medication records to predict their risks of avoidable readmissions.
创建一种自动算法,用于预测老年患者再次入院的药物相关风险,并通过将结果与对同一患者群体的人工分析进行比较来验证该算法。
结果与评估信息集(OASIS)和药物数据取自之前对15家医疗保险认证的家庭健康护理机构的911名患者进行的人工研究。使用美国国立医学图书馆(NLM)管理的应用程序编程接口(API)将药物数据转换为标准化药物代码,然后将其整合到一个自动算法中,该算法可计算患者的高风险用药方案评分(HRMRs)。对算法和人工流程的结果进行比较,以确定能预测再次入院的HRMR评分的得出频率。
HRMR评分由多重用药(药物数量)、潜在不适当药物(PIM)(对老年人有风险的药物)和用药方案复杂性指数(MRCI)(复杂剂型、说明或给药方式)组成。该算法得出的多重用药、PIM和MRCI评分分别与人工分析得出的评分的99%、87%和99%相匹配。
不完美的匹配率是由于人工分析与自动算法对药物的分类和编码方式存在差异所致。HRMR规则缺乏清晰度,导致人工编码的临床判断难以在自动分析中复制。
这三项指标的高比较率表明,一种自动化临床工具可以利用患者的用药记录来预测其可避免再次入院的风险。