Department of Signal Processing, Tampere University of Technology, Tampere, Finland.
Int J Med Inform. 2009 Dec;78(12):e27-30. doi: 10.1016/j.ijmedinf.2009.02.002. Epub 2009 Mar 23.
A large share of the information in electronic medical records (EMRs) consists of free-text compositions. From a computational point-of-view, the continuing prevalence of free-text entry is a major hindrance when the goal is to increase automation in EMRs. However, the efforts in developing standards for the structured representation of medical information have not proven to be a panacea. The information space of clinical medicine is very diverse and constantly evolving, making it challenging to develop standards for the domain. This paper reports a study aiming to increase automation in the EMR through the computational understanding of specific class of medical text in English, namely emergency department chief complaints.
We apply domain-specific analytical modeling for the computational understanding of chief complaints. We evaluate the performance of this approach in the automatic classification of chief complaints, e.g., for use in automatic syndromic surveillance.
The evaluation in a multi-hospital setting showed that the presented algorithm was accurate in terms of classification correctness. Also, use of approximate matching in the algorithm to cope with typographic variance did not affect classification correctness while increasing classification completeness.
电子病历(EMR)中的很大一部分信息由自由文本组成。从计算的角度来看,当目标是增加 EMR 中的自动化程度时,继续使用自由文本输入是一个主要障碍。然而,为医学信息的结构化表示制定标准的努力并没有被证明是万无一失的。临床医学的信息空间非常多样化且不断发展,因此为该领域制定标准具有挑战性。本文报告了一项旨在通过计算理解英文中特定类别的医学文本(即急诊科主要投诉)来增加 EMR 中自动化程度的研究。
我们应用特定于域的分析建模来计算理解主要投诉。我们评估了这种方法在主要投诉的自动分类中的性能,例如,用于自动综合征监测。
在多医院环境中的评估表明,所提出的算法在分类正确性方面具有准确性。此外,算法中使用近似匹配来应对排版差异并不会影响分类正确性,同时还提高了分类完整性。