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The FeatureCloud Platform for Federated Learning in Biomedicine: Unified Approach.
Matschinske, Julian; Späth, Julian; Bakhtiari, Mohammad; Probul, Niklas; Kazemi Majdabadi, Mohammad Mahdi; Nasirigerdeh, Reza; Torkzadehmahani, Reihaneh; Hartebrodt, Anne; Orban, Balazs-Attila; Fejér, Sándor-József; Zolotareva, Olga; Das, Supratim; Baumbach, Linda; Pauling, Josch K; Tomasevic, Olivera; Bihari, Béla; Bloice, Marcus; Donner, Nina C; Fdhila, Walid; Frisch, Tobias; Hauschild, Anne-Christin; Heider, Dominik; Holzinger, Andreas; Hötzendorfer, Walter; Hospes, Jan; Kacprowski, Tim; Kastelitz, Markus; List, Markus; Mayer, Rudolf; Moga, Mónika; Müller, Heimo; Pustozerova, Anastasia; Röttger, Richard; Saak, Christina C; Saranti, Anna; Schmidt, Harald H H W; Tschohl, Christof; Wenke, Nina K; Baumbach, Jan.
  • Matschinske J; University of Hamburg, Hamburg, Germany.
  • Späth J; University of Hamburg, Hamburg, Germany.
  • Bakhtiari M; University of Hamburg, Hamburg, Germany.
  • Probul N; University of Hamburg, Hamburg, Germany.
  • Kazemi Majdabadi MM; University of Hamburg, Hamburg, Germany.
  • Nasirigerdeh R; Technical University Munich, Munich, Germany.
  • Torkzadehmahani R; Technical University Munich, Munich, Germany.
  • Hartebrodt A; University of Southern Denmark, Odense, Denmark.
  • Orban BA; Gnome Design SRL, Sfântu Gheorghe, Romania.
  • Fejér SJ; Gnome Design SRL, Sfântu Gheorghe, Romania.
  • Zolotareva O; Technical University Munich, Munich, Germany.
  • Das S; University of Hamburg, Hamburg, Germany.
  • Baumbach L; University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Pauling JK; Technical University Munich, Munich, Germany.
  • Tomasevic O; University of Novi Sad, Novi Sad, .
  • Bihari B; Gnome Design SRL, Sfântu Gheorghe, Romania.
  • Bloice M; Medical University of Graz, Graz, Austria.
  • Donner NC; Concentris Research Management gGmbH, Fürstenfeldbruck, Germany.
  • Fdhila W; SBA Research gGmbH, Vienna, Austria.
  • Frisch T; University of Southern Denmark, Odense, Denmark.
  • Hauschild AC; University Medical Center Göttingen, Göttingen, Germany.
  • Heider D; Philipps-University of Marburg, Marburg, Germany.
  • Holzinger A; Medical University of Graz, Graz, Austria.
  • Hötzendorfer W; Research Institute AG & Co KG, Vienna, Austria.
  • Hospes J; Research Institute AG & Co KG, Vienna, Austria.
  • Kacprowski T; Technical University Braunschweig and Hannover Medical School, Brunswick, Germany.
  • Kastelitz M; Research Institute AG & Co KG, Vienna, Austria.
  • List M; Technical University Munich, Munich, Germany.
  • Mayer R; SBA Research gGmbH, Vienna, Austria.
  • Moga M; Gnome Design SRL, Sfântu Gheorghe, Romania.
  • Müller H; Medical University of Graz, Graz, Austria.
  • Pustozerova A; SBA Research gGmbH, Vienna, Austria.
  • Röttger R; University of Southern Denmark, Odense, Denmark.
  • Saak CC; University of Hamburg, Hamburg, Germany.
  • Saranti A; Medical University of Graz, Graz, Austria.
  • Schmidt HHHW; Maastricht University, Maastricht, Netherlands.
  • Tschohl C; Research Institute AG & Co KG, Vienna, Austria.
  • Wenke NK; University of Hamburg, Hamburg, Germany.
  • Baumbach J; University of Hamburg, Hamburg, Germany.
J Med Internet Res ; 25: e42621, 2023 07 12.
Article en En | MEDLINE | ID: mdl-37436815
ABSTRACT

BACKGROUND:

Machine learning and artificial intelligence have shown promising results in many areas and are driven by the increasing amount of available data. However, these data are often distributed across different institutions and cannot be easily shared owing to strict privacy regulations. Federated learning (FL) allows the training of distributed machine learning models without sharing sensitive data. In addition, the implementation is time-consuming and requires advanced programming skills and complex technical infrastructures.

OBJECTIVE:

Various tools and frameworks have been developed to simplify the development of FL algorithms and provide the necessary technical infrastructure. Although there are many high-quality frameworks, most focus only on a single application case or method. To our knowledge, there are no generic frameworks, meaning that the existing solutions are restricted to a particular type of algorithm or application field. Furthermore, most of these frameworks provide an application programming interface that needs programming knowledge. There is no collection of ready-to-use FL algorithms that are extendable and allow users (eg, researchers) without programming knowledge to apply FL. A central FL platform for both FL algorithm developers and users does not exist. This study aimed to address this gap and make FL available to everyone by developing FeatureCloud, an all-in-one platform for FL in biomedicine and beyond.

METHODS:

The FeatureCloud platform consists of 3 main components a global frontend, a global backend, and a local controller. Our platform uses a Docker to separate the local acting components of the platform from the sensitive data systems. We evaluated our platform using 4 different algorithms on 5 data sets for both accuracy and runtime.

RESULTS:

FeatureCloud removes the complexity of distributed systems for developers and end users by providing a comprehensive platform for executing multi-institutional FL analyses and implementing FL algorithms. Through its integrated artificial intelligence store, federated algorithms can easily be published and reused by the community. To secure sensitive raw data, FeatureCloud supports privacy-enhancing technologies to secure the shared local models and assures high standards in data privacy to comply with the strict General Data Protection Regulation. Our evaluation shows that applications developed in FeatureCloud can produce highly similar results compared with centralized approaches and scale well for an increasing number of participating sites.

CONCLUSIONS:

FeatureCloud provides a ready-to-use platform that integrates the development and execution of FL algorithms while reducing the complexity to a minimum and removing the hurdles of federated infrastructure. Thus, we believe that it has the potential to greatly increase the accessibility of privacy-preserving and distributed data analyses in biomedicine and beyond.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Algoritmos / Inteligencia Artificial Límite: Humans Idioma: En Año: 2023 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Algoritmos / Inteligencia Artificial Límite: Humans Idioma: En Año: 2023 Tipo del documento: Article