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An error detecting and tagging framework for reducing data entry errors in electronic medical records (EMR) system

机译:用于减少电子医疗记录(EMR)系统中数据输入误差的错误检测和标记框架

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We develop an error detecting and tagging framework for reducing data entry errors in Electronic Medical Records (EMR) systems. We propose a taxonomy of data errors with three levels: Incorrect Format and Missing error, Out of Range error, and Inconsistent error. We aim to address the challenging problem of detecting erroneous input values that look statistically normal but are abnormal in medical sense. Detecting such an error needs to take patient medical history and population data into consideration. In particular, we propose a probabilistic method based on the assumption that the input value for a field depends on the historical records of this field, and is affected by other fields through dependency relationships. We evaluate our methods using the data collected from an EMR System. The results show that the method is promising for automatic data entry error detection.
机译:我们开发出错误检测和标记框架,用于减少电子医疗记录(EMR)系统中的数据输入错误。我们提出了三个级别的数据错误分类:错误的格式和缺失错误,超出范围错误和不一致错误。我们的目标是解决检测错误输入值的挑战性问题,这些输入值看起来统计学正常,但医学意义上异常。检测此类错误需要考虑患者病史和人口数据。特别是,我们提出了一种基于假设字段的输入值取决于该字段的历史记录的假设,并通过依赖关系受到其他字段的影响。我们使用从EMR系统收集的数据进行评估。结果表明,该方法对自动数据输入错误检测有前途。

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