The Urinary Tract Infections (UTIs) are one of the top reasons for unplanned hospital admissions in people with dementia, and if detected early, they can be timely treated. However, the standard UTI diagnosis tests, e.g. urine tests, will be only taken if the patients are clinically suspected of having UTIs. This causes a delay in diagnosis and treatment of the conditions and in some cases like people with dementia, the symptoms can be difficult to observe. Delay in detection and treatment of dementia is one of the key reasons for unplanned hospital admissions in people with dementia. To address these issues, we have developed a technology-assisted monitoring system, which is a Class 1 medical device. The system uses off-the-shelf and low-cost in-home sensory devices to monitor environmental and physiological data of people with dementia within their own homes. We have designed a machine learning model to use the data and provide risk analysis for UTIs. We use a semi-supervised learning model which leverage the environmental data, i.e. the data collected from the motion sensors, smart plugs and network-connected body temperature monitoring devices in the home, to detect patterns that can show the risk of UTIs. Since the data is noisy and partially labelled, we combine the neural networks and probabilistic neural networks to train an auto-encoder, which is to extract the general representation of the data. We will demonstrate our smart home management by videos/online, and show how our model can pick up the UTI related patterns.
翻译:尿道感染(UTIs)是患有痴呆症的人意外住院入院的主要原因之一,如果早期发现,可以及时治疗。然而,标准的UTI诊断测试,如尿检等,只有在病人临床怀疑患有UTIs的情况下,才会接受。这导致诊断和治疗条件的延迟,在某些情况下,像痴呆症患者一样,症状难以观察。诊断和治疗痴呆症的延迟是患有痴呆症的人意外入院的主要原因之一。为了解决这些问题,我们开发了一个技术辅助监测系统,这是一个第1级医疗设备。该系统使用现场外和低成本的家庭感官设备来监测患有痴呆症的人的环境和生理数据。我们设计了一个机器学习模型来使用UTIs的数据并提供风险模型分析。我们使用半超前的学习模型来利用环境数据,例如从运动感应器、智能插座和内部感应变模型,我们通过内部感官网络收集的数据、智能感官网络和部分数据模型来显示我们内部感官的温度。我们可以通过内部感官/感官网络来显示我们内部感官的感官、网络的感测温度。