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Asynchronous Blockchain-based Privacy-preserving Training Framework for Disease Diagnosis

机译:基于异步区块链的疾病诊断隐私保护培训框架

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With the emerging artificial intelligence technology, especially machine learning and deep learning, an increasing number of healthcare institutions have designed and implemented various data-driven analysis tools and models to assist disease diagnosis. However, it is difficult for a single healthcare institution to collect sufficient medical records to support a sophisticated automatic disease recognition model, especially for some rare diseases, which urges the collaboration among different medical institutions and hospitals. The current mainstream solutions, like centralized distributed machine learning, heavily rely on a central server, which may be vulnerable to attackers or even malicious itself. Meanwhile, data privacy concerns make hospitals reluctant to share their patients’ records with others. To solve these issues, in this work, we utilize the blockchain to build a decentralized privacy-preserving cross-institution disease classification framework, called Health-Chain. Specifically, we combined differential privacy and pseudo-identity mechanism to protect data privacy in distributed stochastic gradient descent (SGD) algorithm. Meanwhile, we equip gradient delay compensation to address the asynchronous issues in the decentralized blockchain-based learning system. In the experiments, we implement our Health-Chain in two popular disease recognition tasks, breast cancer diagnosis, and ECG arrhythmia classification, and demonstrate the efficiency and effectiveness of the proposed framework.
机译:随着新兴的人工智能技术(尤其是机器学习和深度学习)的出现,越来越多的医疗机构设计并实施了各种数据驱动的分析工具和模型来辅助疾病诊断。但是,单个医疗机构很难收集足够的病历来支持复杂的自动疾病识别模型,特别是对于某些罕见疾病,这促使不同医疗机构和医院之间进行合作。当前的主流解决方案(例如集中式分布式机器学习)严重依赖于中央服务器,该中央服务器可能容易受到攻击者的攻击甚至是恶意软件本身的攻击。同时,由于担心数据隐私,医院不愿与他人共享患者的病历。为了解决这些问题,在这项工作中,我们利用区块链建立了一个分散的,保护隐私的跨机构疾病分类框架,称为健康链。具体来说,我们结合了差分隐私和伪身份机制来保护分布式随机梯度下降(SGD)算法中的数据隐私。同时,我们在梯度分散的基于区块链的学习系统中配备了梯度延迟补偿来解决异步问题。在实验中,我们在两个流行的疾病识别任务,乳腺癌诊断和ECG心律失常分类中实施了健康链,并证明了所提出框架的有效性和有效性。

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