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开发并探索性分析用于检测形似、音似药品名称的软件。

Development and exploratory analysis of software to detect look-alike, sound-alike medicine names.

机构信息

School of Pharmacy and Biomedical Sciences, Curtin University, GPO Box U1987, Perth, WA, 6845, Australia.

Discipline of Pharmacy, School of Medicine, University of Tasmania, Private Bag 34, Hobart Tas, 7000, Australia.

出版信息

Int J Med Inform. 2020 May;137:104119. doi: 10.1016/j.ijmedinf.2020.104119. Epub 2020 Mar 9.

Abstract

BACKGROUND

'Look-alike, sound-alike' (LASA) medicines may be confused by prescribers, pharmacists, nurses and patients, with serious consequences for patient safety. The current research aimed to develop and trial software to proactively identify LASA medicines by computing medicine name similarity scores.

METHODS

Literature review identified open-source software from the United States Food and Drug Administration for screening of proposed medicine names. We adapted and refined this software to compute similarity scores (0.0000-1.0000) for all possible pairs of medicines registered in Australia. Two-fold exploratory analysis compared: RESULTS: Screening of the Australian medicines register identified 7,750 medicine pairs with at least moderate (arbitrarily ≥0.6600) name similarity, including many oncology, immunomodulating and neuromuscular-blocking medicines. Computed similarity scores and resulting risk categories demonstrated a modest correlation with the manually-calculated similarity scores (r = 0.324, p < 0.002, 95 % CI 0.119-0.529). However, agreement between the resulting risk categories was not significant (Cohen's kappa = -0.162, standard error = 0.063).

CONCLUSIONS

The software (LASA v2) has potential to identify pairs of confusable medicines. It is recommended to supplement incident reports in risk-management programs, and to facilitate pre-screening of medicine names prior to brand/trade name approval and inclusion of medicines in formularies.

摘要

背景

“形似、音似”(LASA)药品可能会被处方者、药剂师、护士和患者混淆,对患者安全造成严重后果。本研究旨在开发和试验软件,通过计算药品名称相似度得分来主动识别 LASA 药品。

方法

文献综述确定了美国食品和药物管理局用于筛选拟议药品名称的开源软件。我们对该软件进行了改编和完善,以计算澳大利亚注册的所有可能的药品对之间的相似度得分(0.0000-1.0000)。采用双折探索性分析比较:

结果

对澳大利亚药品登记处的筛选发现,有 7750 对药品具有至少中度(任意≥0.6600)的名称相似性,其中包括许多肿瘤学、免疫调节和神经肌肉阻滞剂药物。计算出的相似度得分和由此产生的风险类别与手动计算的相似度得分(r = 0.324,p < 0.002,95%置信区间 0.119-0.529)显示出一定的相关性。然而,产生的风险类别之间的一致性并不显著(Cohen's kappa = -0.162,标准误差 = 0.063)。

结论

该软件(LASA v2)具有识别易混淆药品对的潜力。建议将其补充到风险管理计划中的不良事件报告中,并在品牌/商品名批准和纳入处方集之前方便药品名称的预筛选。

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