隐私保护疾病治疗及并发症预测系统(PDTCPS)

Qinghan Xue, M. Chuah, Yingying Chen
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引用次数: 4

摘要

经济实惠的云计算技术允许用户有效地存储和管理他们的个人健康记录(PHRs),并与他们的护理人员或医生共享。这反过来又提高了保健服务的质量,降低了保健成本。然而,严重的安全和隐私问题出现了,因为人们将他们的个人信息和phrr上传到公共云。数据加密为医疗信息提供了隐私保护,但利用加密数据具有挑战性。在本文中,我们提出了一种隐私保护的疾病治疗、并发症预测方案(PDTCPS),该方案允许授权用户进行疾病诊断、个性化治疗和潜在并发症预测的搜索。$PDTCPS$使用基于树的结构来提高搜索效率,使用通配符方法来支持模糊关键字搜索,使用bloom过滤器来提高搜索准确性和存储效率。此外,我们的设计还允许医疗保健提供者和公共云共同生成汇总训练模型,用于疾病诊断、个性化治疗和并发症预测。此外,我们的设计提供了查询不可链接性,并隐藏了搜索和访问模式。最后,在两个UCI数据集上的评估结果表明,我们的方案比现有的两种方案更高效、更准确。
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Privacy Preserving Disease Treatment & Complication Prediction System (PDTCPS)
Affordable cloud computing technologies allow users to efficiently store, and manage their Personal Health Records (PHRs) and share with their caregivers or physicians. This in turn improves the quality of healthcare services, and lower health care cost. However, serious security and privacy concerns emerge because people upload their personal information and PHRs to the public cloud. Data encryption provides privacy protection of medical information but it is challenging to utilize encrypted data. In this paper, we present a privacy-preserving disease treatment, complication prediction scheme (PDTCPS), which allows authorized users to conduct searches for disease diagnosis, personalized treatments, and prediction of potential complications. $PDTCPS$ uses a tree-based structure to boost search efficiency, a wildcard approach to support fuzzy keyword search, and a Bloom-filter to improve search accuracy and storage efficiency. In addition, our design also allows health care providers and the public cloud to collectively generate aggregated training models for disease diagnosis, personalized treatments and complications prediction. Moreover, our design provides query unlinkability and hides both search & access patterns. Finally, our evaluation results using two UCI datasets show that our scheme is more efficient and accurate than two existing schemes.
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