Intelligent wearable systems are at the forefront of precision medicine and play a crucial role in enhancing human-machine interaction. Traditional devices often encounter limitations due to their dependence on empirical material design and basic signal processing techniques. To overcome these issues, we introduce the concept of Human-Symbiotic Health Intelligence (HSHI), which is a framework that integrates multi-modal sensor networks with edge-cloud collaborative computing and a hybrid approach to data and knowledge modeling. HSHI is designed to adapt dynamically to both inter-individual and intra-individual variability, transitioning health management from passive monitoring to an active collaborative evolution. The framework incorporates AI-driven optimization of materials and micro-structures, provides robust interpretation of multi-modal signals, and utilizes a dual mechanism that merges population-level insights with personalized adaptations. Moreover, the integration of closed-loop optimization through reinforcement learning and digital twins facilitates customized interventions and feedback. In general, HSHI represents a significant shift in healthcare, moving towards a model that emphasizes prevention, adaptability, and a harmonious relationship between technology and health management.
翻译:智能可穿戴系统处于精准医疗的前沿,在增强人机交互方面发挥着关键作用。传统设备因其依赖经验性材料设计和基本信号处理技术而常面临局限性。为克服这些问题,我们提出了人机共生健康智能(HSHI)的概念,这是一个将多模态传感器网络与边缘-云协同计算以及数据和知识建模的混合方法相集成的框架。HSHI旨在动态适应个体间与个体内的变异性,将健康管理从被动监测转变为主动协同演进。该框架融合了人工智能驱动的材料与微结构优化,提供了对多模态信号的鲁棒性解释,并采用了一种将群体层面洞察与个性化适应相结合的双重机制。此外,通过强化学习和数字孪生技术实现的闭环优化集成,促进了定制化干预与反馈。总体而言,HSHI代表了医疗健康领域的重大转变,朝着强调预防性、适应性以及技术与健康管理之间和谐关系的模式迈进。