IoT-Inspired Smart Toilet System for Home-Based Urine Infection Prediction

Munish Bhatia, Simranpreet Kaur, S. Sood
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引用次数: 21

Abstract

The healthcare industry is the premier domain that has been significantly influenced by incorporation of Internet of Things (IoT) technology resulting in smart healthcare application. Inspired by the enormous potential of IoT technology, this research provides a framework for an IoT-based smart toilet system, which enables home-based determination of Urinary Infection (UI) efficaciously. The overall system comprises a four-layered architecture for monitoring and predicting infection in urine. The layers include the Urine Acquisition, Urine Analyzation, Temporal Extraction, and Temporal Prediction layers, which enable an individual to monitor his or her health on daily basis and predict UI so that precautionary measures can be taken at early stages. Moreover, probabilistic quantification of urine infection in the form of Degree of Infectiousness (DoI) and Infection Index Value (IIV) were performed for infection prediction based on a temporal Artificial Neural Network. In addition, the presence of UI is displayed to the user based on a Self-Organized Mapping technique. For validation purposes, numerous experimental simulations were performed on four individuals for 60 days. Results were compared with different state-of-the-art techniques for measuring the overall efficiency of the proposed system.
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基于物联网的智能厕所系统用于家庭尿液感染预测
医疗保健行业是受物联网(IoT)技术引入智能医疗应用显著影响的首要领域。受物联网技术巨大潜力的启发,这项研究为基于物联网的智能厕所系统提供了一个框架,该系统能够有效地在家中确定尿路感染(UI)。整个系统包括用于监测和预测尿液中感染的四层结构。这些层包括尿液采集、尿液分析、时间提取和时间预测层,使个人能够每天监测自己的健康状况并预测UI,以便在早期阶段采取预防措施。此外,以感染程度(DoI)和感染指数值(IIV)的形式对尿液感染进行概率量化,用于基于时间人工神经网络的感染预测。此外,基于自组织映射技术向用户显示UI的存在。为了验证目的,对四个个体进行了为期60天的大量实验模拟。将结果与不同的最先进技术进行比较,以测量所提出的系统的整体效率。
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CiteScore
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