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首页> 外文期刊>Computers in Biology and Medicine >Private naive bayes classification of personal biomedical data: Application in cancer data analysis
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Private naive bayes classification of personal biomedical data: Application in cancer data analysis

机译:私人天真贝叶斯个人生物医学数据分类:在癌症数据分析中的应用

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Clinicians would benefit from access to predictive models for diagnosis, such as classification of tumors as malignant or benign, without compromising patients privacy. In addition, the medical institutions and companies who own these medical information systems wish to keep their models private when in use by outside parties. Fully homomorphic encryption (FHE) enables computation over encrypted medical data while ensuring data privacy. In this paper we use private-key fully homomorphic encryption to design a cryptographic protocol for private Naive Bayes classification. This protocol allows a data owner to privately classify his or her information without direct access to the learned model. We apply this protocol to the task of privacy-preserving classification of breast cancer data as benign or malignant. Our results show that private-key fully homomorphic encryption is able to provide fast and accurate results for privacy-preserving medical classification.
机译:临床医生可以从获得预测模型进行诊断的获取,例如肿瘤的分类是恶性或良性的,而不会影响患者隐私。 此外,拥有这些医疗信息系统的医疗机构和公司希望在外部各方使用时保持其私人的私人。 完全同性恋加密(FHE)使得能够在确保数据隐私的同时计算加密的医疗数据。 在本文中,我们使用私钥完全同性恋加密来设计私人天真贝叶斯分类的加密协议。 该协议允许数据所有者私下分类他或她的信息而不直接访问学习模型。 我们将本协议应用于隐私保留分类乳腺癌数据的任务,作为良性或恶性。 我们的研究结果表明,私人关键的完全同性恋加密能够为隐私保留医疗分类提供快速准确的结果。

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