Petersen Johanna, Austin Daniel, Kaye Jeffrey A, Pavel Misha, Hayes Tamara L
IEEE J Biomed Health Inform. 2014 Sep;18(5):1590-6. doi: 10.1109/JBHI.2013.2294276.
Loneliness is a common condition in elderly associated with severe health consequences including increased mortality, decreased cognitive function, and poor quality of life. Identifying and assisting lonely individuals is therefore increasingly important-especially in the home setting-as the very nature of loneliness often makes it difficult to detect by traditional methods. One critical component in assessing loneliness unobtrusively is to measure time spent out-of-home, as loneliness often presents with decreased physical activity, decreased motor functioning, and a decline in activities of daily living, all of which may cause decrease in the amount of time spent outside the home. Using passive and unobtrusive in-home sensing technologies, we have developed a methodology for detecting time spent out-of-home based on logistic regression. Our approach was both sensitive (0.939) and specific (0.975) in detecting time out-of-home across over 41,000 epochs of data collected from four subjects monitored for at least 30 days each in their own homes. In addition to linking time spent out-of-home to loneliness, (r = -0.44, p = 0.011) as measured by the UCLA Loneliness Index, we demonstrate its usefulness in other applications such as uncovering general behavioral patterns of elderly and exploring the link between time spent out-of-home and physical activity ( r = 0.415, p = 0.031), as measured by the Berkman Social Disengagement Index.
孤独是老年人的一种常见状况,会带来严重的健康后果,包括死亡率增加、认知功能下降和生活质量低下。因此,识别和帮助孤独的个体变得越来越重要,尤其是在家庭环境中,因为孤独的本质往往使得传统方法难以检测到。在不引人注意的情况下评估孤独感的一个关键因素是测量外出时间,因为孤独往往表现为身体活动减少、运动功能下降以及日常生活活动减少,所有这些都可能导致在家外度过的时间减少。利用被动式和非侵入式的家庭传感技术,我们开发了一种基于逻辑回归来检测外出时间的方法。在从四名受试者收集的超过41000个数据时段中检测外出时间时,我们的方法灵敏度为0.939,特异性为0.975,这四名受试者在各自家中至少被监测了30天。除了将外出时间与孤独感联系起来(根据加州大学洛杉矶分校孤独感指数测量,r = -0.44,p = 0.011),我们还证明了它在其他应用中的有用性,比如揭示老年人的一般行为模式以及探索外出时间与身体活动之间的联系(根据伯克曼社会脱离指数测量,r = 0.415,p = 0.031)。