Privacy-Preserving Statistical Analysis by Exact Logistic Regression

David duVerle, Shohei Kawasaki, Yoshiji Yamada, Jun Sakuma, K. Tsuda
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引用次数: 21

Abstract

Logistic regression is the method of choice in most genome-wide association studies (GWAS). Due to the heavy cost of performing iterative parameter updates when training such a model, existing methods have prohibitive communication and computational complexities that make them unpractical for real-life usage. We propose a new sampling-based secure protocol to compute exact statistics, that requires a constant number of communication rounds and a much lower number of computations. The publicly available implementation of our protocol (and its many optional optimisations adapted to different security scenarios) can, in a matter of hours, perform statistical testing of over 600 SNP variables across thousands of patients while accounting for potential confounding factors in the clinical data.
基于精确逻辑回归的隐私保护统计分析
逻辑回归是大多数全基因组关联研究(GWAS)的选择方法。由于在训练这样的模型时执行迭代参数更新的沉重成本,现有的方法具有令人望而却步的通信和计算复杂性,使它们不适合实际使用。我们提出了一种新的基于抽样的安全协议来计算精确的统计数据,该协议需要恒定的通信轮数和更少的计算量。我们协议的公开实施(以及它的许多可选优化适应不同的安全方案)可以在几个小时内对数千名患者的600多个SNP变量进行统计测试,同时考虑到临床数据中潜在的混杂因素。
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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