Department of Future Technologies, University of Turku, Vesilinnantie 5, Turku, 20500, Finland.
University of Turku Graduate School, University of Turku, Hämeenkatu 4, Turku, 20500, Finland.
J Biomed Semantics. 2020 Sep 1;11(1):10. doi: 10.1186/s13326-020-00229-7.
Up to 35% of nurses' working time is spent on care documentation. We describe the evaluation of a system aimed at assisting nurses in documenting patient care and potentially reducing the documentation workload. Our goal is to enable nurses to write or dictate nursing notes in a narrative manner without having to manually structure their text under subject headings. In the current care classification standard used in the targeted hospital, there are more than 500 subject headings to choose from, making it challenging and time consuming for nurses to use.
The task of the presented system is to automatically group sentences into paragraphs and assign subject headings. For classification the system relies on a neural network-based text classification model. The nursing notes are initially classified on sentence level. Subsequently coherent paragraphs are constructed from related sentences.
Based on a manual evaluation conducted by a group of three domain experts, we find that in about 69% of the paragraphs formed by the system the topics of the sentences are coherent and the assigned paragraph headings correctly describe the topics. We also show that the use of a paragraph merging step reduces the number of paragraphs produced by 23% without affecting the performance of the system.
The study shows that the presented system produces a coherent and logical structure for freely written nursing narratives and has the potential to reduce the time and effort nurses are currently spending on documenting care in hospitals.
高达 35%的护士工作时间用于护理文档记录。我们描述了一个旨在协助护士记录患者护理信息并可能减少文档工作负荷的系统的评估。我们的目标是使护士能够以叙述的方式书写或口述护理记录,而不必手动将其文本结构化为主题标题。在目标医院使用的当前护理分类标准中,有超过 500 个主题标题可供选择,这使得护士使用起来具有挑战性和耗时。
所提出的系统的任务是自动将句子分组为段落并分配主题标题。为了进行分类,系统依赖于基于神经网络的文本分类模型。护理记录首先在句子级别进行分类。然后,从相关句子中构建连贯的段落。
基于由三名领域专家组成的小组进行的手动评估,我们发现系统形成的大约 69%的段落中,句子的主题是连贯的,分配的段落标题正确地描述了主题。我们还表明,使用段落合并步骤可以在不影响系统性能的情况下将生成的段落数量减少 23%。
该研究表明,所提出的系统为自由书写的护理叙述生成了连贯和合乎逻辑的结构,并有可能减少护士目前在医院记录护理信息所花费的时间和精力。