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Identification of Misspelled Words without a Comprehensive Dictionary Using Prevalence Analysis

机译:使用流行度分析识别没有综合词典的拼写错误的单词

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摘要

Misspellings are common in medical documents and can be an obstacle to information retrieval. We evaluated an algorithm to identify misspelled words through analysis of their prevalence in a representative body of text.We evaluated the algorithm’s accuracy of identifying misspellings of 200 anti-hypertensive medication names on 2,000 potentially misspelled words randomly selected from narrative medical documents. Prevalence ratios (the frequency of the potentially misspelled word divided by the frequency of the non-misspelled word) in physician notes were computed by the software for each of the words. The software results were compared to the manual assessment by an independent reviewer.Area under the ROC curve for identification of misspelled words was 0.96. Sensitivity, specificity, and positive predictive value were 99.25%, 89.72% and 82.9% for the prevalence ratio threshold (0.32768) with the highest F-measure (0.903). Prevalence analysis can be used to identify and correct misspellings with high accuracy.
机译:拼写错误在医疗文档中很常见,并且可能成为信息检索的障碍。我们评估了一种算法,通过分析代表性文本中的拼写错误来识别拼写错误的单词。我们评估了该算法在从叙述性医疗文档中随机选择的2,000个潜在拼写错误的单词上识别200个降压药物名称的拼写错误的准确性。通过软件为每个单词计算医师注释中的患病率(可能拼错单词的频率除以未拼错单词的频率)。软件结果与独立审核者的手动评估进行了比较.ROC曲线下识别拼写错误的单词的面积为0.96。 F值最高(0.903)的患病率阈值(0.32768)的敏感性,特异性和阳性预测值分别为99.25%,89.72%和82.9%。患病率分析可用于识别和更正拼写错误。

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