Enhancing Privacy-Preserving Cancer Classification with Convolutional Neural Networks.

Q2 Computer Science
Aurora A F Colombo, Luca Colombo, Alessandro Falcetta, Manuel Roveri
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引用次数: 0

Abstract

Precision medicine significantly enhances patients prognosis, offering personalized treatments. Particularly for metastatic cancer, incorporating primary tumor location into the diagnostic process greatly improves survival rates. However, traditional methods rely on human expertise, requiring substantial time and financial resources. To address this challenge, Machine Learning (ML) and Deep Learning (DL) have proven particularly effective. Yet, their application to medical data, especially genomic data, must consider and encompass privacy due to the highly sensitive nature of data. In this paper, we propose OGHE, a convolutional neural network-based approach for privacy-preserving cancer classification designed to exploit spatial patterns in genomic data, while maintaining confidentiality by means of Homomorphic Encryption (HE). This encryption scheme allows the processing directly on encrypted data, guaranteeing its confidentiality during the entire computation. The design of OGHE is specific for privacy-preserving applications, taking into account HE limitations from the outset, and introducing an efficient packing mechanism to minimize the computational overhead introduced by HE. Additionally, OGHE relies on a novel feature selection method, VarScout, designed to extract the most significant features through clustering and occurrence analysis, while preserving inherent spatial patterns. Coupled with VarScout, OGHE has been compared with existing privacy-preserving solutions for encrypted cancer classification on the iDash 2020 dataset, demonstrating their effectiveness in providing accurate privacy-preserving cancer classification, and reducing latency thanks to our packing mechanism. The code is released to the scientific community.

利用卷积神经网络增强癌症隐私保护分类。
精准医疗显著提高患者预后,提供个性化治疗。特别是对于转移性癌症,将原发肿瘤位置纳入诊断过程大大提高了生存率。然而,传统的方法依赖于人的专业知识,需要大量的时间和财政资源。为了应对这一挑战,机器学习(ML)和深度学习(DL)已被证明特别有效。然而,由于数据的高度敏感性,它们在医疗数据,特别是基因组数据中的应用必须考虑并包含隐私。在本文中,我们提出了一种基于卷积神经网络的隐私保护癌症分类方法OGHE,该方法旨在利用基因组数据中的空间模式,同时通过同态加密(HE)保持机密性。该加密方案允许直接对加密数据进行处理,保证了整个计算过程中的机密性。OGHE的设计专门针对隐私保护应用程序,从一开始就考虑到HE的限制,并引入了一种有效的打包机制,以最大限度地减少HE带来的计算开销。此外,OGHE依赖于一种新的特征选择方法VarScout,该方法旨在通过聚类和发生分析提取最重要的特征,同时保留固有的空间模式。结合VarScout, OGHE与现有的iDash 2020数据集加密癌症分类的隐私保护解决方案进行了比较,证明了它们在提供准确的隐私保护癌症分类方面的有效性,并且由于我们的打包机制减少了延迟。代码被发布到科学界。
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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CiteScore
4.50
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0.00%
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