Lambert B L, Lin S J, Chang K Y, Gandhi S K
Department of Pharmacy Administration, University of Illinois at Chicago, USA.
Med Care. 1999 Dec;37(12):1214-25. doi: 10.1097/00005650-199912000-00005.
One of every four medication errors reported in the United States is a name-confusion error. The rate of name-confusion errors might be reduced if new and confusing names were not allowed on the market and if safeguards could be put in place to avoid confusion between existing names.
To evaluate several prognostic tests of drug-name confusion, alone and in combination, with respect to their sensitivity, specificity, and overall accuracy.
Case-control study. Twenty-two different computerized measures of orthographic similarity, orthographic distance, and phonetic similarity were used to compute similarity/distance scores for n = 1,127 cases (ie, pairs of names that appeared in published error reports or national error databases) and n = 1,127 controls.
Mean similarity/distance scores were compared across cases and controls. The performance of each measure at distinguishing between cases and controls was evaluated by tenfold crossvalidation. Dose-response relationships were examined. Univariate and multivariate logistic regression models were formed and evaluated by 10 fold crossvalidation.
Cases had significantly higher similarity scores than controls. Every measure of similarity proved to be a significant risk factor for error. There was a significant increasing trend in the odds-ratio as a function of similarity. A three-predictor logistic regression model had crossvalidated sensitivity of 93.7%, specificity of 95.9% and accuracy of 94.8%.
A sensitive and specific test of drug-name confusion potential can be formed using objective measures of orthographic similarity, orthographic distance, and phonetic distance.
在美国报告的每四起用药错误中,就有一起是名称混淆错误。如果不允许市场上出现新的易混淆名称,并且能够采取保障措施避免现有名称之间的混淆,那么名称混淆错误的发生率可能会降低。
单独或联合评估几种药物名称混淆的预后测试的敏感性、特异性和总体准确性。
病例对照研究。使用二十二种不同的拼写相似性、拼写距离和语音相似性的计算机化测量方法,计算n = 1127例(即出现在已发表的错误报告或国家错误数据库中的名称对)和n = 1127例对照的相似性/距离分数。
比较病例组和对照组的平均相似性/距离分数。通过十折交叉验证评估每种测量方法在区分病例和对照方面的性能。检查剂量反应关系。构建单变量和多变量逻辑回归模型,并通过十折交叉验证进行评估。
病例组的相似性分数显著高于对照组。每种相似性测量方法都被证明是错误的重要风险因素。优势比随相似性呈显著增加趋势。一个三预测因子逻辑回归模型的交叉验证敏感性为93.7%,特异性为95.9%,准确性为94.8%。
使用拼写相似性、拼写距离和语音距离的客观测量方法,可以形成一种敏感且特异的药物名称混淆可能性测试。