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A Smart-Home System to Unobtrusively and Continuously Assess Loneliness in Older Adults

机译:一个智能家居系统可以持续不断地评估老年人的孤独感

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摘要

Loneliness is a common condition in older adults and is associated with increased morbidity and mortality, decreased sleep quality, and increased risk of cognitive decline. Assessing loneliness in older adults is challenging due to the negative desirability biases associated with being lonely. Thus, it is necessary to develop more objective techniques to assess loneliness in older adults. In this paper, we describe a system to measure loneliness by assessing in-home behavior using wireless motion and contact sensors, phone monitors, and computer software as well as algorithms developed to assess key behaviors of interest. We then present results showing the accuracy of the system in detecting loneliness in a longitudinal study of 16 older adults who agreed to have the sensor platform installed in their own homes for up to 8 months. We show that loneliness is significantly associated with both time out-of-home ( and ) and number of computer sessions ( and ). for the model was 0.35. We also show the model’s ability to predict out-of-sample loneliness, demonstrating that the correlation between true loneliness and predicted out-of-sample loneliness is 0.48. When compared with the University of California at Los Angeles loneliness score, the normalized mean absolute error of the predicted loneliness scores was 0.81 and the normalized root mean squared error was 0.91. These results represent first steps toward an unobtrusive, objective method for the prediction of loneliness among older adults, and mark the first time multiple objective behavioral measures that have been related to this key health outcome.
机译:孤独是老年人的常见病,与发病率和死亡率增加,睡眠质量下降和认知下降的风险增加有关。由于与孤独感相关的负面期望偏差,评估老年人的孤独感具有挑战性。因此,有必要开发更客观的技术来评估老年人的孤独感。在本文中,我们描述了一种通过使用无线运动和接触传感器,电话监控器以及计算机软件以及为评估关键行为而开发的算法来评估家庭行为来衡量孤独感的系统。然后,我们在对16位同意在自己的房屋中安装传感器平台长达8个月的成年人的纵向研究中显示了该系统检测孤独感的准确性。我们表明,孤独感与出门时间(和)和计算机会话数(和)都显着相关。该模型的值为0.35。我们还展示了模型预测样本外寂寞的能力,证明了真实寂寞与预测样本外寂寞之间的相关性是0.48。与加州大学洛杉矶分校的寂寞分数进行比较时,预测的寂寞分数的归一化平均绝对误差为0.81,归一化均方根误差为0.91。这些结果代表了迈向客观,客观的方法来预测老年人孤独感的第一步,并标志着首次与该关键健康结果相关的多种客观行为指标。

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