@inproceedings{455f7591c8f145c886267fb37e417415,
title = "VANTAGE6: an open source priVAcy preserviNg federaTed leArninG infrastructurE for Secure Insight eXchange",
abstract = "Answering many of the research questions in the field of cancer informatics requires incorporating and centralizing data that are hosted by different parties. Federated Learning (FL) has emerged as a new approach in which a global model can be generated without disclosing private patient data by keeping them at their original location. Flexible, user-friendly, and robust infrastructures are crucial for bringing FL solutions to the day-to-day work of the cancer epidemiologist. In this paper, we present an open source priVAcy preserviNg federaTed leArninG infrastructurE for Secure Insight eXchange, VANTAGE6. We provide a detailed description of its conceptual design, modular architecture, and components. We also show a few examples where VANTAGE6 has been successfully used in research on observational cancer data. Developing and deploying technology to support federated analyses - such as VANTAGE6 - will pave the way for the adoption and mainstream practice of this new approach for analyzing decentralized data.",
keywords = "Confidentiality, Humans, Learning, Machine Learning, Privacy",
author = "Arturo Moncada-Torres and Frank Martin and Melle Sieswerda and {Van Soest}, Johan and Gijs Geleijnse",
note = "{\textcopyright}2020 AMIA - All rights reserved.",
year = "2020",
language = "English",
volume = "2020",
series = "AMIA ... Annual Symposium proceedings / AMIA Symposium. AMIA Symposium",
publisher = "American Medical Informatics Association",
pages = "870--877",
booktitle = "AMIA Annual Symposium Proceedings Archive",
}