Decentralized Intelligence Health Network (DIHN)

Abraham Nash
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Abstract

Decentralized Intelligence Health Network (DIHN) is a theoretical framework addressing significant challenges of health data sovereignty and AI utilization in healthcare caused by data fragmentation across providers and institutions. It establishes a sovereign architecture for healthcare provision as a prerequisite to a sovereign health network, then facilitates effective AI utilization by overcoming barriers to accessing diverse medical data sources. This comprehensive framework leverages: 1) self-sovereign identity architecture coupled with a personal health record (PHR) as a prerequisite for health data sovereignty; 2) a scalable federated learning (FL) protocol implemented on a public blockchain for decentralized AI training in healthcare, where health data remains with participants and only model parameter updates are shared; and 3) a scalable, trustless rewards mechanism to incentivize participation and ensure fair reward distribution. This framework ensures that no entity can prevent or control access to training on health data offered by participants or determine financial benefits, as these processes operate on a public blockchain with an immutable record and without a third party. It supports effective AI training in healthcare, allowing patients to maintain control over their health data, benefit financially, and contribute to a decentralized, scalable ecosystem that leverages collective AI to develop beneficial healthcare algorithms. Patients receive rewards into their digital wallets as an incentive to opt-in to the FL protocol, with a long-term roadmap to funding decentralized insurance solutions. This approach introduces a novel, self-financed healthcare model that adapts to individual needs, complements existing systems, and redefines universal coverage. It highlights the potential to transform healthcare data management and AI utilization while empowering patients.
分散式情报保健网络(DIHN)
去中心化智能健康网络(DIHN)是一个理论框架,旨在解决因各提供商和机构之间的数据分散而导致的健康数据主权和人工智能在医疗保健领域的应用所面临的重大挑战:1) 自我主权身份架构与个人健康记录(PHR)相结合,作为健康数据主权的先决条件;2) 在公共区块链上实施可扩展的联合学习(FL)协议,用于医疗保健领域的去中心化人工智能培训,其中健康数据由参与者保留,仅共享模型参数更新;3) 可扩展的无信任奖励机制,用于激励参与并确保公平的奖励分配。该框架可确保任何实体都无法阻止或控制对参与者提供的健康数据进行培训,以确定经济收益,因为这些过程是在具有不可变记录的公共区块链上进行的,没有第三方参与。它支持在医疗保健领域进行有效的人工智能培训,使患者能够保持对其健康数据的控制,获得经济收益,并为利用集体人工智能开发有益的医疗保健算法的去中心化、可扩展生态系统做出贡献。患者的数字钱包会收到奖励,以鼓励他们选择加入 FL 协议,并为去中心化保险解决方案提供长期资金支持。这种方法引入了一种新颖的、自筹资金的医疗保健模式,它能适应个人需求、补充现有系统并重新定义全民保险。它凸显了改变医疗数据管理和人工智能利用的潜力,同时增强了患者的能力。
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