University of Potsdam, Digital Engineering Faculty, Digital Health - Connected Healthcare of the Hasso Plattner Institute, Potsdam, 14482, Germany.
Ss. Cyril and Methodius University in Skopje, Faculty of Electrical Engineering and Information Technologies, Skopje, 1000, North Macedonia.
Sci Data. 2023 Oct 20;10(1):727. doi: 10.1038/s41597-023-02620-2.
Accurate and comprehensive nursing documentation is essential to ensure quality patient care. To streamline this process, we present SONAR, a publicly available dataset of nursing activities recorded using inertial sensors in a nursing home. The dataset includes 14 sensor streams, such as acceleration and angular velocity, and 23 activities recorded by 14 caregivers using five sensors for 61.7 hours. The caregivers wore the sensors as they performed their daily tasks, allowing for continuous monitoring of their activities. We additionally provide machine learning models that recognize the nursing activities given the sensor data. In particular, we present benchmarks for three deep learning model architectures and evaluate their performance using different metrics and sensor locations. Our dataset, which can be used for research on sensor-based human activity recognition in real-world settings, has the potential to improve nursing care by providing valuable insights that can identify areas for improvement, facilitate accurate documentation, and tailor care to specific patient conditions.
准确全面的护理文件记录对于确保患者护理质量至关重要。为了简化这一过程,我们提出了 SONAR,这是一个公共可用的数据集,其中包含了在养老院中使用惯性传感器记录的护理活动。该数据集包括 14 个传感器流,如加速度和角速度,以及 23 项由 14 名护理人员使用五个传感器记录的活动,总时长为 61.7 小时。护理人员在执行日常任务时佩戴传感器,从而可以对其活动进行持续监测。我们还提供了可以根据传感器数据识别护理活动的机器学习模型。具体来说,我们提出了三个深度学习模型架构的基准,并使用不同的指标和传感器位置评估了它们的性能。我们的数据集可用于研究现实环境中基于传感器的人体活动识别,通过提供可识别改进领域、促进准确记录和根据特定患者情况定制护理的有价值见解,有潜力改善护理。