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Automated misspelling detection and correction in clinical free-text records

机译:临床自由文本记录中的自动拼写错误检测和更正

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摘要

Accurate electronic health records are important for clinical care and research as well as ensuring patient safety. It is crucial for misspelled words to be corrected in order to ensure that medical records are interpreted correctly. This paper describes the development of a spelling correction system for medical text. Our spell checker is based on Shannon's noisy channel model, and uses an extensive dictionary compiled from many sources. We also use named entity recognition, so that names are not wrongly corrected as misspellings. We apply our spell checker to three different types of free-text data: clinical notes, allergy entries, and medication orders: and evaluate its performance on both misspelling detection and correction. Our spell checker achieves detection performance of up to 94.4% and correction accuracy of up to 88.2%. We show that high-performance spelling correction is possible on a variety of clinical documents. (C) 2015 Elsevier Inc. All rights reserved.
机译:准确的电子健康记录对于临床护理和研究以及确保患者安全至关重要。纠正拼写错误的单词至关重要,以确保正确理解医疗记录。本文介绍了医学文本拼写纠正系统的开发。我们的拼写检查器基于Shannon的嘈杂频道模型,并使用从许多来源编译而来的大量词典。我们还使用命名实体识别,因此名称不会被错误地纠正为拼写错误。我们将拼写检查器应用于三种不同类型的自由文本数据:临床注释,过敏条目和用药顺序:并评估其在拼写错误检测和纠正方面的性能。我们的拼写检查器可实现高达94.4%的检测性能和高达88.2%的更正精度。我们证明,在各种临床文档中都可以进行高性能的拼写纠正。 (C)2015 Elsevier Inc.保留所有权利。

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