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Automating the assignment of diagnosis codes to patient encounters using example-based and machine learning techniques.

机译:使用基于示例和机器学习技术,将诊断代码自动分配给患者。

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OBJECTIVE: Human classification of diagnoses is a labor intensive process that consumes significant resources. Most medical practices use specially trained medical coders to categorize diagnoses for billing and research purposes. METHODS: We have developed an automated coding system designed to assign codes to clinical diagnoses. The system uses the notion of certainty to recommend subsequent processing. Codes with the highest certainty are generated by matching the diagnostic text to frequent examples in a database of 22 million manually coded entries. These code assignments are not subject to subsequent manual review. Codes at a lower certainty level are assigned by matching to previously infrequently coded examples. The least certain codes are generated by a naive Bayes classifier. The latter two types of codes are subsequently manually reviewed. MEASUREMENTS: Standard information retrieval accuracy measurements of precision, recall and f-measure were used. Micro- and macro-averaged results were computed. RESULTS At least 48% of all EMR problem list entries at the Mayo Clinic can be automatically classified with macro-averaged 98.0% precision, 98.3% recall and an f-score of 98.2%. An additional 34% of the entries are classified with macro-averaged 90.1% precision, 95.6% recall and 93.1% f-score. The remaining 18% of the entries are classified with macro-averaged 58.5%. CONCLUSION: Over two thirds of all diagnoses are coded automatically with high accuracy. The system has been successfully implemented at the Mayo Clinic, which resulted in a reduction of staff engaged in manual coding from thirty-four coders to seven verifiers.
机译:目的:诊断的人类分类是一个劳动密集型过程,会消耗大量资源。大多数医学实践使用经过专门培训的医学编码人员对诊断进行分类,以进行计费和研究。方法:我们开发了一种自动编码系统,旨在为临床诊断分配代码。系统使用确定性概念来建议后续处理。通过将诊断文本与2200万个手动编码条目的数据库中的常见示例进行匹配,可以生成具有最高确定性的代码。这些代码分配不受后续人工检查的约束。通过与先前不经常编码的示例匹配来分配较低确定性级别的代码。最少的某些代码是由朴素的贝叶斯分类器生成的。随后手动检查后两种类型的代码。测量:使用标准信息检索精度测量,包括精度,召回率和f量度。计算了微观和宏观平均结果。结果Mayo诊所的所有EMR问题列表条目中至少有48%可以自动进行宏观平均98.0%的准确分类,98.3%的召回率和98.2%的f评分。另外,有34%的条目以平均90.1%的宏精度,95.6%的召回率和93.1%的f得分进行分类。其余18%的条目按平均58.5%的宏进行分类。结论:所有诊断中的三分之二以上都自动进行了高精度编码。该系统已在Mayo诊所成功实施,从而使从事手动编码的人员从34个编码员减少到7个验证员。

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