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How Is Grandma Doing? Predicting Functional Health Status from Binary Ambient Sensor Data

机译:奶奶怎么样?从二进制环境传感器数据预测功能健康状态

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Ambient activity monitoring systems produce large amounts of data, which can be used for health monitoring. The problem is that patterns in this data reflecting health status are not identified yet. In this paper the possibility is explored of predicting the functional health status (the motor score of AMPS =Assessment of Motor and Process Skills) of a person from data of binary ambient sensors. Data is collected of five independently living elderly people. Based on expert knowledge, features are extracted from the sensor data and several subsets are selected. We use standard linear regression and Gaussian processes for mapping the features to the functional status and predict the status of a test person using a leave-one-person-out cross validation. The results show that Gaussian processes perform better than the linear regression model, and that both models perform better with the basic feature set than with location or transition based features. Some suggestions are provided for better feature extraction and selection for the purpose of health monitoring. These results indicate that automated functional health assessment is possible, but some challenges lie ahead. The most important challenge is eliciting expert knowledge and translating that into quantifiable features.
机译:环境活动监测系统产生大量数据,可用于健康监测。问题是该数据中的模式尚未识别。本文探讨了从二进制环境传感器数据的数据预测功能健康状况(AMPS =电机和工艺技能的评估)的可能性。数据被收集的五个独立的老年人。基于专业知识,从传感器数据中提取特征,选择了几个子集。我们使用标准的线性回归和高斯进程来将功能映射到功能状态,并使用休假交叉验证预测测试人员的状态。结果表明,高斯过程比线性回归模型更好地执行,并且两种模型的基本功能比与基于位置或转换的特征更好。提供了一些建议,以便更好的特征提取和选择的健康监测。这些结果表明,自动化功能健康评估是可能的,但有些挑战是未来的。最重要的挑战是引发专家知识并将其转化为可量化的功能。

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