患者贝叶斯推断:使用基于约束的自适应Boost算法的基于云的医疗保健数据分析

Shahid Naseem
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摘要

基于云的医疗保健数据是互联网上分布式数据的一种形式。互联网已成为关键医疗基础设施中最脆弱的部分。医疗保健数据被认为是敏感信息,可以揭示患者的很多信息。对于医疗保健数据,除了保密性之外,数据的隐私和保护也是非常敏感的问题。需要采取主动措施,如早期预警,以降低患者数据违规的风险。本章探讨了患者贝叶斯推理(PBI)在患者数据违规的网络场景分析中产生预警的能力。贝叶斯推理允许对处理丢失数据问题带来的不确定性进行建模,允许集成来自远程节点的数据,并显式地指示依赖性和独立性。使用基于约束的自适应增强算法可以在医疗数据的真实数据集中展示患者的贝叶斯推理性能。
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Patient Bayesian Inference: Cloud-Based Healthcare Data Analysis Using Constraint-Based Adaptive Boost Algorithm
Cloud-based healthcare data are a form of distributed data over the internet. The internet has become the most vulnerable part of critical healthcare infrastructures. Healthcare data are considered to be sensitive information, which can reveal a lot about a patient. For healthcare data, apart from confidentiality, privacy and protection of data are very sensitive issues. Proactive measures such as early warning are required to reduce the risk of patient ’ s data violation. This chapter investigates the ability of Patient Bayesian Inference (PBI) for network scenario analysis with violation of patient data to produce early warning. The Bayesian inference allows modeling the uncertainties that come with the problem of dealing with missing data, allows integrating data from remote nodes, and explicitly indicates depen-dence and independence. The use of constraint-based adaptive boost algorithm can demonstrate the patient ’ s Bayesian inference performance in the real-world datasets from healthcare data.
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Bayesian Analysis for Random Effects Models Patient Bayesian Inference: Cloud-Based Healthcare Data Analysis Using Constraint-Based Adaptive Boost Algorithm A Brief Tour of Bayesian Sampling Methods A Review on the Exact Monte Carlo Simulation On the Impact of the Choice of the Prior in Bayesian Statistics
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