论文标题

健康状态估计

Health State Estimation

论文作者

Nag, Nitish

论文摘要

人生最有价值的资产是健康。如果我们希望改善它,不断了解我们的健康状况并建模它的发展是必不可少的。鉴于人们拥有比历史上其他任何时候都拥有更多有关其生活的数据的机会,因此挑战在于将这些数据与越来越多的知识体系交织在一起,以不断地计算和建模个人的健康状态。本文提出了一种建立个人模型的方法,并通过融合多模式数据和域知识来动态估计个人的健康状态。该系统是从四个基本的抽象元素中缝合在一起的:1。生命中的事件,2。生物系统的层(从分子到生物体),3。生物基础引起的功能性公用事业,以及4。我们如何与日常生活中现实中的这些实用性相互作用。通过图形网络块连接这四个元素形成了我们实例化个体数字双胞胎的骨干。然后,随着数据的不断消化,该图结构中的边缘和节点会定期使用学习技术。实验证明了从各种个人和环境传感器中使用密集和异质的现实世界数据来监控个别的心血管健康状态。国家估计和个人建模是偏离以疾病为导向的方法的基本基础。预测健康的精度需要了解国家轨迹。通过将此估计纳入导航方法中,系统的指导框架可以计划将当前状态转换为所需的行动。这项工作结束了这一结合,以结合健康状态和个人图模型,以永久计划和帮助我们实现目标。

Life's most valuable asset is health. Continuously understanding the state of our health and modeling how it evolves is essential if we wish to improve it. Given the opportunity that people live with more data about their life today than any other time in history, the challenge rests in interweaving this data with the growing body of knowledge to compute and model the health state of an individual continually. This dissertation presents an approach to build a personal model and dynamically estimate the health state of an individual by fusing multi-modal data and domain knowledge. The system is stitched together from four essential abstraction elements: 1. the events in our life, 2. the layers of our biological systems (from molecular to an organism), 3. the functional utilities that arise from biological underpinnings, and 4. how we interact with these utilities in the reality of daily life. Connecting these four elements via graph network blocks forms the backbone by which we instantiate a digital twin of an individual. Edges and nodes in this graph structure are then regularly updated with learning techniques as data is continuously digested. Experiments demonstrate the use of dense and heterogeneous real-world data from a variety of personal and environmental sensors to monitor individual cardiovascular health state. State estimation and individual modeling is the fundamental basis to depart from disease-oriented approaches to a total health continuum paradigm. Precision in predicting health requires understanding state trajectory. By encasing this estimation within a navigational approach, a systematic guidance framework can plan actions to transition a current state towards a desired one. This work concludes by presenting this framework of combining the health state and personal graph model to perpetually plan and assist us in living life towards our goals.

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