Ni Yizhao, Lingren Todd, Huth Hannah, Timmons Kristen, Melton Krisin, Kirkendall Eric
Division of Biomedical Informatics, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, United States.
Department of Pediatrics, University of Cincinnati College of Medicine, Cincinnati, OH, United States.
JMIR Med Inform. 2020 Sep 2;8(9):e19774. doi: 10.2196/19774.
At present, electronic health records (EHRs) are the central focus of clinical informatics given their role as the primary source of clinical data. Despite their granularity, the EHR data heavily rely on manual input and are prone to human errors. Many other sources of data exist in the clinical setting, including digital medical devices such as smart infusion pumps. When incorporated with prescribing data from EHRs, smart pump records (SPRs) are capable of shedding light on actions that take place during the medication use process. However, harmoniz-ing the 2 sources is hindered by multiple technical challenges, and the data quality and utility of SPRs have not been fully realized.
This study aims to evaluate the quality and utility of SPRs incorporated with EHR data in detecting medication administration errors. Our overarching hypothesis is that SPRs would contribute unique information in the med-ication use process, enabling more comprehensive detection of discrepancies and potential errors in medication administration.
We evaluated the medication use process of 9 high-risk medications for patients admitted to the neonatal inten-sive care unit during a 1-year period. An automated algorithm was developed to align SPRs with their medica-tion orders in the EHRs using patient ID, medication name, and timestamp. The aligned data were manually re-viewed by a clinical research coordinator and 2 pediatric physicians to identify discrepancies in medication ad-ministration. The data quality of SPRs was assessed with the proportion of information that was linked to valid EHR orders. To evaluate their utility, we compared the frequency and severity of discrepancies captured by the SPR and EHR data, respectively. A novel concordance assessment was also developed to understand the detec-tion power and capabilities of SPR and EHR data.
Approximately 70% of the SPRs contained valid patient IDs and medication names, making them feasible for data integration. After combining the 2 sources, the investigative team reviewed 2307 medication orders with 10,575 medication administration records (MARs) and 23,397 SPRs. A total of 321 MAR and 682 SPR dis-crepancies were identified, with vasopressors showing the highest discrepancy rates, followed by narcotics and total parenteral nutrition. Compared with EHR MARs, substantial dosing discrepancies were more commonly detectable using the SPRs. The concordance analysis showed little overlap between MAR and SPR discrepan-cies, with most discrepancies captured by the SPR data.
We integrated smart infusion pump information with EHR data to analyze the most error-prone phases of the medication lifecycle. The findings suggested that SPRs could be a more reliable data source for medication error detection. Ultimately, it is imperative to integrate SPR information with EHR data to fully detect and mitigate medication administration errors in the clinical setting.
目前,电子健康记录(EHRs)作为临床数据的主要来源,是临床信息学的核心关注点。尽管EHR数据粒度较细,但严重依赖人工输入,容易出现人为错误。临床环境中还存在许多其他数据来源,包括智能输液泵等数字医疗设备。当与EHR中的处方数据相结合时,智能泵记录(SPRs)能够揭示用药过程中发生的行为。然而,协调这两种数据来源受到多种技术挑战的阻碍,并且SPRs的数据质量和效用尚未得到充分实现。
本研究旨在评估结合EHR数据的SPRs在检测用药错误方面的质量和效用。我们的总体假设是,SPRs将在用药过程中提供独特信息,从而能够更全面地检测用药管理中的差异和潜在错误。
我们评估了新生儿重症监护病房1年内收治患者的9种高风险药物的用药过程。开发了一种自动算法,使用患者ID、药物名称和时间戳将SPRs与其在EHR中的用药医嘱进行匹配。匹配后的数据由临床研究协调员和2名儿科医生进行人工审核,以识别用药管理中的差异。通过与有效EHR医嘱相关联的信息比例来评估SPRs的数据质量。为了评估其效用,我们分别比较了SPRs和EHR数据捕获的差异的频率和严重程度。还开发了一种新颖的一致性评估方法,以了解SPRs和EHR数据的检测能力。
大约70%的SPRs包含有效的患者ID和药物名称,使其适合进行数据整合。将这两种数据来源结合后,研究团队审查了2307条用药医嘱,涉及10575条用药记录(MARs)和23397条SPRs。总共识别出321条MAR差异和682条SPRs差异,血管活性药物的差异率最高,其次是麻醉药品和全胃肠外营养。与EHR MARs相比,使用SPRs更常检测到明显的剂量差异。一致性分析表明,MAR差异和SPRs差异之间几乎没有重叠,大多数差异由SPRs数据捕获。
我们将智能输液泵信息与EHR数据相结合,以分析用药生命周期中最容易出错的阶段。研究结果表明,SPRs可能是检测用药错误更可靠的数据源。最终,必须将SPRs信息与EHR数据整合,以在临床环境中全面检测和减轻用药错误。