Privacy-preserving Diverse Keyword Search and Online Pre-diagnosis in Cloud Computing

Xiangyu Wang, Jianfeng Ma, Yinbin Miao, Ximeng Liu, Ruikang Yang
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引用次数: 4

Abstract

With the development of the Mobile Healthcare Monitoring Network (MHMN), patients’ data collected by body sensors not only allows patients to monitor their health or make online pre-diagnosis but also enables clinicians to make proper decisions by utilizing data mining techniques. In MHMN, patients’ personal data are collected by sensors per second and uploaded to the cloud server as multi-dimension vectors, cloud server stores the personal data as well as sends monitoring information to the hospital when the real-time data is abnormal. Hospital users (i.e., doctors, etc.) may query some samples which contain certain textual keywords or digital keywords in certain ranges for disease diagnosis or medical research. For example, a certain hospital user may query all samples with textual keywords ‘cancer; diabetes’ and digital vectors ‘age’ ∈ [30,50], ‘blood sugar’ ∈ [4,8], ‘heart rhythm’ ∈ [70,80]. Besides, the potential value of massive medical data has attracted considerable interests recently, for example, valuable results in diagnosis model can be yield with large-scale aggregation analysis of personal medical data. The cloud server can build a diagnosis model using data mining technology over massive data, so that hospital users or pre-diagnosis users upload medical data (i.e., age, blood pressure, blood sugar, etc.) to the cloud for diagnosis.
云计算中保护隐私的多关键字搜索与在线预诊断
随着移动医疗监测网络(MHMN)的发展,身体传感器收集的患者数据不仅可以让患者监测自己的健康状况或进行在线预诊断,还可以让临床医生利用数据挖掘技术做出正确的决策。在MHMN中,传感器每秒采集患者的个人数据,并以多维向量的形式上传到云服务器,云服务器存储个人数据,当实时数据出现异常时,向医院发送监控信息。医院用户(即医生等)可能会查询一些样本,其中包含一定范围的文本关键词或数字关键词,用于疾病诊断或医学研究。例如,某医院用户可以用文本关键词“癌症”查询所有样本;糖尿病”和数字向量“年龄”∈[30,50],“血糖”∈[4,8],“心律”∈[70,80]。此外,海量医疗数据的潜在价值也引起了人们的广泛关注,例如,对个人医疗数据进行大规模的聚合分析,可以得到有价值的诊断模型结果。云服务器可以在海量数据上利用数据挖掘技术构建诊断模型,医院用户或预诊断用户可以将医疗数据(如年龄、血压、血糖等)上传到云端进行诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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