识别护士护理活动:一种具有双向交互交叉注意的人工智能方法。

Lingyu Li, Haijing Han, Jupo Ma
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引用次数: 0

摘要

护理活动对医疗保健服务至关重要,直接影响患者的安全、康复和整体健康。准确识别和记录这些活动对于评估护士绩效、有效管理资源和保持一致的护理质量至关重要。然而,护理活动本质上是复杂的,不仅受到护士行为的影响,也受到患者行为的影响。传统的文档方法严重依赖人工输入,是劳动密集型的,容易出错,经常导致绩效评估和护理优化方面的差距。本文论述了先进的自动化系统准确识别护理活动的必要性。本文提出了一种基于Transformer的双向交互交叉注意人工智能模型,该模型利用多模态数据的互补性,通过相互信息交换来提高识别精度和上下文理解。我们对双向交互交叉注意的性能进行了评价,实验证明了它的良好性能。我们的方法突出了显著提高护理活动识别的潜力,这有望提高护理活动识别,并支持更好的工作量评估、调度和护理质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Nurse Care Activity: An Artificial Intelligence Approach With Bidirectional Interactive Cross-Attention.

Nursing care activities are essential to healthcare delivery, directly impacting patient safety, recovery, and overall well-being. Accurate recognition and documentation of these activities are critical for assessing nurse performance, managing resources efficiently, and maintaining consistent care quality. However, nursing activities are inherently complex, influenced not only by the nurse's actions but also by patient behavior. Traditional documentation methods, which rely heavily on manual input, are labor-intensive and prone to errors, often leading to gaps in performance evaluation and care optimization. This paper addresses the necessity for advanced, automated systems to accurately recognize nursing care activities. We propose a novel artificial intelligence model featuring bidirectional interactive cross-attention based on Transformer, which leverages the complementary nature of multimodal data through mutual information exchange to enhance recognition accuracy and contextual understanding. We evaluate the performance of bidirectional interactive cross-attention, and experiments demonstrate that it performs excellently. Our method highlights the potential to significantly enhance nursing activity recognition, which is expected to improve nursing activity recognition and support better workload assessment, scheduling, and care quality.

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