Privacy-preserving dataset combination and Lasso regression for healthcare predictions

被引:23
|
作者
van Egmond, Marie Beth [1 ]
Spini, Gabriele [1 ]
van der Galien, Onno [5 ]
IJpma, Arne [6 ]
Veugen, Thijs [1 ,3 ]
Kraaij, Wessel [1 ,2 ]
Sangers, Alex [1 ]
Rooijakkers, Thomas [1 ]
Langenkamp, Peter [1 ]
Kamphorst, Bart [1 ]
van de L'Isle, Natasja [4 ]
Kooij-Janic, Milena [1 ]
机构
[1] TNO Dutch Org Appl Sci Res, Unit ICT, The Hague, Netherlands
[2] Leiden Univ, Leiden Inst Adv Comp Sci, Leiden, Netherlands
[3] Ctr Wiskunde & Informat CWI, Cryptol Res Grp, Amsterdam, Netherlands
[4] TMC Data Sci, Eindhoven, Netherlands
[5] Achmea, Zeist, Netherlands
[6] Erasmus MC, Rotterdam, Netherlands
基金
欧盟地平线“2020”;
关键词
Secure multi-party computation; Privacy; Machine learning; Lasso regression; RIDGE-REGRESSION;
D O I
10.1186/s12911-021-01582-y
中图分类号
R-058 [];
学科分类号
摘要
Background Recent developments in machine learning have shown its potential impact for clinical use such as risk prediction, prognosis, and treatment selection. However, relevant data are often scattered across different stakeholders and their use is regulated, e.g. by GDPR or HIPAA. As a concrete use-case, hospital Erasmus MC and health insurance company Achmea have data on individuals in the city of Rotterdam, which would in theory enable them to train a regression model in order to identify high-impact lifestyle factors for heart failure. However, privacy and confidentiality concerns make it unfeasible to exchange these data. Methods This article describes a solution where vertically-partitioned synthetic data of Achmea and of Erasmus MC are combined using Secure Multi-Party Computation. First, a secure inner join protocol takes place to securely determine the identifiers of the patients that are represented in both datasets. Then, a secure Lasso Regression model is trained on the securely combined data. The involved parties thus obtain the prediction model but no further information on the input data of the other parties. Results We implement our secure solution and describe its performance and scalability: we can train a prediction model on two datasets with 5000 records each and a total of 30 features in less than one hour, with a minimal difference from the results of standard (non-secure) methods. Conclusions This article shows that it is possible to combine datasets and train a Lasso regression model on this combination in a secure way. Such a solution thus further expands the potential of privacy-preserving data analysis in the medical domain.
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页数:16
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