基于云的蛋白质折叠识别的隐私保护方法

IF 6.7 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Patterns Pub Date : 2024-07-19 DOI:10.1016/j.patter.2024.101023
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引用次数: 0

摘要

训练机器学习模型的复杂性和成本使得基于云的机器学习即服务(MLaaS)对企业和研究人员极具吸引力。MLaaS 通过提供预建模型和基础设施,消除了对内部专业知识的需求。然而,它也引发了数据隐私和模型安全性方面的担忧,尤其是在蛋白质折叠识别等医学领域。我们提出了一种基于三方计算的安全 MLaaS 解决方案,用于保护蛋白质折叠识别的隐私,同时保护序列和模型隐私。我们的高效私密构建模块可以私下进行复杂的运算,包括加法、乘法、不同方法的多路复用器、最显著位、模数转换和精确指数运算。我们展示了保护隐私的递归核网络(RKN)解决方案,结果表明它与非隐私模型的性能不相上下。我们的可扩展性分析表明了 RKN 参数的线性可扩展性,使其在现实世界的部署成为可行。该解决方案有望利用我们的构建模块将其他医疗领域的机器学习算法转换为隐私保护型 MLaaS。
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A privacy-preserving approach for cloud-based protein fold recognition

The complexity and cost of training machine learning models have made cloud-based machine learning as a service (MLaaS) attractive for businesses and researchers. MLaaS eliminates the need for in-house expertise by providing pre-built models and infrastructure. However, it raises data privacy and model security concerns, especially in medical fields like protein fold recognition. We propose a secure three-party computation-based MLaaS solution for privacy-preserving protein fold recognition, protecting both sequence and model privacy. Our efficient private building blocks enable complex operations privately, including addition, multiplication, multiplexer with a different methodology, most-significant bit, modulus conversion, and exact exponential operations. We demonstrate our privacy-preserving recurrent kernel network (RKN) solution, showing that it matches the performance of non-private models. Our scalability analysis indicates linear scalability with RKN parameters, making it viable for real-world deployment. This solution holds promise for converting other medical domain machine learning algorithms to privacy-preserving MLaaS using our building blocks.

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来源期刊
Patterns
Patterns Decision Sciences-Decision Sciences (all)
CiteScore
10.60
自引率
4.60%
发文量
153
审稿时长
19 weeks
期刊介绍:
期刊最新文献
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