Gundersen M L, Haug P J, Pryor T A, van Bree R, Koehler S, Bauer K, Clemons B
Department of Medical Informatics, L DS Hospital, Salt Lake City, Utah 84143, USA.
Comput Biomed Res. 1996 Oct;29(5):351-72. doi: 10.1006/cbmr.1996.0026.
Hospital information systems designed to support the needs of health care professionals include patient data entered using both freetext and precoded storage schemes. A major disadvantage of freetext storage schemes is that data captured in this format can only be presented as is to the user for review tasks. In the view of many health care scientists, natural language understanding systems capable of identifying, extracting, and encoding information contained in freetext data may provide the necessary tools to overcome this weakness. This paper describes the development and evaluation of a such a system designed to encode freetext admission diagnoses. This system combines both semantic and syntactic linguistic analysis techniques. Evaluation results demonstrate the overall performance of this system to be reasonable, accurately encoding approximately 76% of admission diagnoses. Inefficiencies are primarily due to the inability of this system to generate encodings in roughly 15% of test cases. When encodings are produced, however, accuracy equals that of the current manual coding method. With further modification, this application can partially automate the coding process.
旨在满足医疗保健专业人员需求的医院信息系统包括使用自由文本和预编码存储方案输入的患者数据。自由文本存储方案的一个主要缺点是,以这种格式捕获的数据只能原样呈现给用户进行审查任务。在许多医疗保健科学家看来,能够识别、提取和编码自由文本数据中包含的信息的自然语言理解系统可能提供克服这一弱点的必要工具。本文描述了一个旨在对自由文本入院诊断进行编码的系统的开发和评估。该系统结合了语义和句法语言分析技术。评估结果表明,该系统的整体性能合理,能够准确编码约76%的入院诊断。效率低下主要是由于该系统在大约15%的测试案例中无法生成编码。然而,当生成编码时,准确性与当前的手动编码方法相当。通过进一步修改,该应用程序可以部分自动化编码过程。