dsMTL: a computational framework for privacy-preserving, distributed multi-task machine learning

Author:

Cao Han1ORCID,Zhang Youcheng2ORCID,Baumbach Jan34,Burton Paul R5ORCID,Dwyer Dominic6,Koutsouleris Nikolaos6,Matschinske Julian3,Marcon Yannick7,Rajan Sivanesan1,Rieg Thilo1,Ryser-Welch Patricia5,Späth Julian3,Herrmann Carl2ORCID,Schwarz Emanuel1,

Affiliation:

1. Department of Psychiatry and Psychotherapy, Central Institute of Mental Health, Medical Faculty Mannheim, Heidelberg University , Mannheim 68158, Germany

2. Health Data Science Unit, Medical Faculty Heidelberg & BioQuant , Heidelberg 69120, Germany

3. Chair of Computational Systems Biology, University of Hamburg , Hamburg 22607, Germany

4. Computational Biomedicine Lab, Department of Mathematics and Computer Science, University of Southern Denmark , Odense 5230, Denmark

5. Population Health Sciences Institute, Newcastle University , Newcastle upon Tyne NE2 4AX, UK

6. Department of Psychiatry and Psychotherapy, Section for Neurodiagnostic Applications, Ludwig-Maximilian University , Munich 80638, Germany

7. Epigeny , St Ouen, France

Abstract

AbstractMotivationIn multi-cohort machine learning studies, it is critical to differentiate between effects that are reproducible across cohorts and those that are cohort-specific. Multi-task learning (MTL) is a machine learning approach that facilitates this differentiation through the simultaneous learning of prediction tasks across cohorts. Since multi-cohort data can often not be combined into a single storage solution, there would be the substantial utility of an MTL application for geographically distributed data sources.ResultsHere, we describe the development of ‘dsMTL’, a computational framework for privacy-preserving, distributed multi-task machine learning that includes three supervised and one unsupervised algorithms. First, we derive the theoretical properties of these methods and the relevant machine learning workflows to ensure the validity of the software implementation. Second, we implement dsMTL as a library for the R programming language, building on the DataSHIELD platform that supports the federated analysis of sensitive individual-level data. Third, we demonstrate the applicability of dsMTL for comorbidity modeling in distributed data. We show that comorbidity modeling using dsMTL outperformed conventional, federated machine learning, as well as the aggregation of multiple models built on the distributed datasets individually. The application of dsMTL was computationally efficient and highly scalable when applied to moderate-size (n < 500), real expression data given the actual network latency.Availability and implementationdsMTL is freely available at https://github.com/transbioZI/dsMTLBase (server-side package) and https://github.com/transbioZI/dsMTLClient (client-side package).Supplementary informationSupplementary data are available at Bioinformatics online.

Funder

Deutsche Forschungsgemeinschaft

German Federal Ministry of Education and Research (BMBF

eMed COMMITMENT

European Union’s Horizon 2020 research and innovation program under grant agreements

HBCC dataset used in this study (dbGAP

Intramural Research Program of the NIMH

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

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