病毒株的同态多标记分类

Junwei Zhou, Botian Lei, Huile Lang
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引用次数: 0

摘要

检测患者体内病毒株的基因序列并对其进行分类,对提供有效的治疗具有重要意义。然而,由于考虑到患者的隐私问题,以明文形式共享病毒株的基因数据存在很大障碍。同态加密是一种允许用户在不解密的情况下计算加密数据的加密形式。在保护用户隐私的同时实现高度准确的病毒株预测是一项挑战。利用同态加密方案,提出了一种安全的多标签病毒株分类方法。我们首先采用统计基因型频率的方法进行预处理,降低病毒株的基因维数。其次,我们改进了Chillotti等人提出的TFHE库,以适应神经网络的浮点输入,使同态计算结果更加准确。最后,我们通过将多个特征信息打包成一个密文的数据打包方法提高了计算速度并减少了存储空间的使用。我们在0.09秒内对128位加密的测试数据成功计算出2000个病毒株分类推断步骤,准确率达到100%。
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Homomorphic multi-label classification of virus strains
Detecting the gene sequence of virus strains from patients and classifying them into specific strains are very important to provide effective treatment. However, there are significant barriers to sharing the virus strains' gene data in plaintext to the privacy concerns of the patients. Homomorphic encryption is a form of encryption that allows users to calculate encrypted data without decrypting it. Achieving highly accurate viral strain prediction while safeguarding user privacy is a challenge. We develop a secure multi-label virus strains classification method using the homomorphic encryption scheme. We first used the method of statistical genotype frequencies for preprocessing to reduce the gene dimension of viral strains. Second, we improved the TFHE library proposed by Chillotti et al. to accommodate the floating-point input of the neural network to make the homomorphic calculation result more accurate. Finally, we improve computational speed and reduce storage usage by a data packing method that packs multiple feature information into one ciphertext. We successfully calculated 2000 virus strains classification inference steps on 128-bit encrypted test data in 0.09 seconds, reaching an accuracy of 100 %.
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