Timon Claire M, Hussey Pamela, Lee Hyowon, Murphy Catriona, Vardan Rai Harsh, Smeaton Alan F
Centre for eIntegrated Care (CeIC), School of Nursing, Psychotherapy and Community Health, Dublin City University, Dublin, Ireland.
Insight Centre for Data Analytics, Dublin City University, Dublin, Ireland.
Digit Health. 2023 Jul 18;9:20552076231184084. doi: 10.1177/20552076231184084. eCollection 2023 Jan-Dec.
The NEX project has developed an integrated Internet of Things (IoT) system coupled with data analytics to offer unobtrusive health and wellness monitoring supporting older adults living independently at home. Monitoring involves visualising a set of automatically detected activities of daily living (ADLs) for each participant. ADL detection allows the incorporation of additional participants whose ADLs are detected without system re-training.
Following a user needs and requirements study involving 426 participants, a pilot trial and a friendly trial of the deployment, an action research cycle (ARC) trial was completed. This involved 23 participants over a 10-week period each with 20 IoT sensors in their homes. During the ARC trial, participants took part in two data-informed briefings which presented visualisations of their own in-home activities. The briefings also gathered training data on the accuracy of detected activities. Association rule mining was used on the combination of data from sensors and participant feedback to improve the automatic ADL detection.
Association rule mining was used to detect a range of ADLs for each participant independently of others and then used to detect ADLs across participants using a single set of rules for each ADL. This allows additional participants to be added without the necessity of them providing training data.
Additional participants can be added to the NEX system without the necessity to re-train the system for automatic detection of their ADLs.
NEX项目开发了一个集成物联网(IoT)系统,并结合数据分析,以提供不干扰的健康和 wellness 监测,支持在家独立生活的老年人。监测包括为每个参与者可视化一组自动检测到的日常生活活动(ADL)。ADL检测允许纳入那些其ADL在无需系统重新训练的情况下被检测到的额外参与者。
在一项涉及426名参与者的用户需求研究、一次试点试验和一次部署友好试验之后,完成了一个行动研究周期(ARC)试验。这涉及23名参与者,为期10周,每人家里有20个物联网传感器。在ARC试验期间,参与者参加了两次基于数据的简报会,简报会展示了他们自己在家中的活动可视化情况。简报会还收集了关于检测到的活动准确性的训练数据。关联规则挖掘被用于结合传感器数据和参与者反馈,以改进自动ADL检测。
关联规则挖掘被用于独立地为每个参与者检测一系列ADL,然后用于使用针对每个ADL的一组单一规则跨参与者检测ADL。这使得可以添加额外的参与者,而无需他们提供训练数据。
可以将额外的参与者添加到NEX系统中,而无需重新训练系统以自动检测他们的ADL。