Department of Computer Science and Engineering, School of Computing, Sathyabama Institute of Science and Technology, Chennai, India.
Future Technology Research Center, College of Future, National Yunlin University of Science and Technology, Yunlin, Taiwan.
Front Public Health. 2022 Jan 21;9:831404. doi: 10.3389/fpubh.2021.831404. eCollection 2021.
The proliferation of wearable sensors that record physiological signals has resulted in an exponential growth of data on digital health. To select the appropriate repository for the increasing amount of collected data, intelligent procedures are becoming increasingly necessary. However, allocating storage space is a nuanced process. Generally, patients have some input in choosing which repository to use, although they are not always responsible for this decision. Patients are likely to have idiosyncratic storage preferences based on their unique circumstances. The purpose of the current study is to develop a new predictive model of health data storage to meet the needs of patients while ensuring rapid storage decisions, even when data is streaming from wearable devices. To create the machine learning classifier, we used a training set synthesized from small samples of experts who exhibited correlations between health data and storage features. The results confirm the validity of the machine learning methodology.
可穿戴传感器的普及使得记录生理信号的数据呈指数级增长,这些数据也推动了数字健康领域的发展。为了选择合适的存储库来存储不断增加的数据量,智能程序变得越来越必要。然而,分配存储空间是一个细致的过程。通常情况下,患者在选择使用哪个存储库方面有一定的发言权,尽管他们并不总是负责做出这一决定。患者可能会根据自己的特殊情况产生独特的存储偏好。本研究的目的是开发一种新的健康数据存储预测模型,以满足患者的需求,同时确保即使在可穿戴设备不断传输数据的情况下,也能快速做出存储决策。为了创建机器学习分类器,我们使用了一个从小样本专家那里合成的训练集,这些专家展示了健康数据和存储特征之间的相关性。结果证实了机器学习方法的有效性。