AGH University of Science and Technology, Faculty of Electrical Engineering, Automatics, Computer Science and Biomedical Engineering, Department of Biocybernetics and Biomedical Engineering, 30 Mickiewicz Ave. 30 30-059 Kraków, Poland.
Sensors (Basel). 2018 Sep 24;18(10):3219. doi: 10.3390/s18103219.
With the recent advancement in wearable computing, sensor technologies, and data processing approaches, it is possible to develop smart clothing that integrates sensors into garments. The main objective of this study was to develop the method of automatic recognition of sedentary behavior related to cardiovascular risk based on quantitative measurement of physical activity. The solution is based on the designed prototype of the smart shirt equipped with a processor, wearable sensors, power supply and telemedical interface. The data derived from wearable sensors were used to create feature vector that consisted of the estimation of the user-specific relative intensity and the variance of filtered accelerometer data. The method was validated using an experimental protocol which was designed to be safe for the elderly and was based on clinically validated short physical performance battery (SPPB) test tasks. To obtain the recognition model six classifiers were examined and compared including Linear Discriminant Analysis, Support Vector Machines, K-Nearest Neighbors, Naive Bayes, Binary Decision Trees and Artificial Neural Networks. The classification models were able to identify the sedentary behavior with an accuracy of 95.00% ± 2.11%. Experimental results suggested that high accuracy can be obtained by estimating sedentary behavior pattern using the smart shirt and machine learning approach. The main advantage of the developed method to continuously monitor patient activities in a free-living environment and could potentially be used for early detection of increased cardiovascular risk.
随着可穿戴计算、传感器技术和数据处理方法的最新进展,开发将传感器集成到服装中的智能服装成为可能。本研究的主要目的是开发一种基于体力活动定量测量的心血管风险相关静坐行为自动识别方法。该解决方案基于配备处理器、可穿戴传感器、电源和远程医疗接口的智能衬衫设计原型。从可穿戴传感器获得的数据用于创建特征向量,该向量由用户特定相对强度的估计和滤波加速度计数据的方差组成。该方法使用专门为老年人设计的安全实验方案进行验证,该方案基于经过临床验证的短体机能电池 (SPPB) 测试任务。为了获得识别模型,检查并比较了包括线性判别分析、支持向量机、K-最近邻、朴素贝叶斯、二叉决策树和人工神经网络在内的六种分类器。分类模型能够以 95.00%±2.11%的准确率识别静坐行为。实验结果表明,使用智能衬衫和机器学习方法可以通过估计静坐行为模式获得高精度。该方法的主要优点是能够在自由生活环境中连续监测患者的活动,并可能用于早期检测心血管风险增加。