dsSurvival: Privacy preserving survival models for federated individual patient meta-analysis in DataSHIELD

BMC Res Notes. 2022 Jun 3;15(1):197. doi: 10.1186/s13104-022-06085-1.

Abstract

Objective: Achieving sufficient statistical power in a survival analysis usually requires large amounts of data from different sites. Sensitivity of individual-level data, ethical and practical considerations regarding data sharing across institutions could be a potential challenge for achieving this added power. Hence we implemented a federated meta-analysis approach of survival models in DataSHIELD, where only anonymous aggregated data are shared across institutions, while simultaneously allowing for exploratory, interactive modelling. In this case, meta-analysis techniques to combine analysis results from each site are a solution, but an analytic workflow involving local analysis undertaken at individual studies hinders exploration. Thus, the aim is to provide a framework for performing meta-analysis of Cox regression models across institutions without manual analysis steps for the data providers.

Results: We introduce a package (dsSurvival) which allows privacy preserving meta-analysis of survival models, including the calculation of hazard ratios. Our tool can be of great use in biomedical research where there is a need for building survival models and there are privacy concerns about sharing data.

Keywords: Federated analysis; Meta-analysis; Survival analysis.

Publication types

  • Meta-Analysis

MeSH terms

  • Biomedical Research* / methods
  • Humans
  • Information Dissemination
  • Privacy*