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Relevance Ranking of Intensive Care Nursing Narratives

机译:重症监护叙事的相关性排名

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摘要

Current computer-based patient records provide many capabilities to assist nurses' work in intensive care units, but the possibilities to utilize existing free-text documentation are limited without the appropriate tools. To ease this limitation, we present an adaptation of the Regularized Least-Squares (RLS) algorithm for ranking pieces of nursing notes with respect to their relevance to breathing, blood circulation, and pain. We assessed the ranking results by using Kendall's τ_b as a measure of association between the output of the RLS algorithm and the desired ranking. The values of τ_b were 0.62, 0.69, and 0.44 for breathing, blood circulation, and pain, respectively. These values indicate that a machine learning approach can successfully be used to rank nursing notes, and encourage further research on the use of ranking techniques when developing intelligent tools for the utilization of nursing narratives.
机译:当前基于计算机的患者记录提供了许多功能来协助护士在重症监护室工作,但是如果没有适当的工具,利用现有的自由文本文档的可能性将受到限制。为了缓解此限制,我们提出了一种正则化最小二乘(RLS)算法的改编,用于根据护理注意事项与呼吸,血液循环和疼痛的相关性对护理说明进行排序。我们通过使用Kendall的τ_b评估排名结果,以衡量RLS算法的输出与所需排名之间的关联。对于呼吸,血液循环和疼痛,τ_b的值分别为0.62、0.69和0.44。这些值表明,机器学习方法可以成功地用于对护理笔记进行排名,并鼓励在开发用于护理叙事的智能工具时,对使用排名技术进行进一步的研究。

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