Swarm Learning for decentralized and confidential clinical machine learning.
Journal
Nature
ISSN: 1476-4687
Titre abrégé: Nature
Pays: England
ID NLM: 0410462
Informations de publication
Date de publication:
06 2021
06 2021
Historique:
received:
03
07
2020
accepted:
26
04
2021
pubmed:
28
5
2021
medline:
22
6
2021
entrez:
27
5
2021
Statut:
ppublish
Résumé
Fast and reliable detection of patients with severe and heterogeneous illnesses is a major goal of precision medicine
Identifiants
pubmed: 34040261
doi: 10.1038/s41586-021-03583-3
pii: 10.1038/s41586-021-03583-3
pmc: PMC8189907
doi:
Types de publication
Journal Article
Research Support, Non-U.S. Gov't
Langues
eng
Sous-ensembles de citation
IM
Pagination
265-270Investigateurs
Paul Balfanz
(P)
Thomas Eggermann
(T)
Peter Boor
(P)
Ralf Hausmann
(R)
Hannah Kuhn
(H)
Susanne Isfort
(S)
Julia Carolin Stingl
(JC)
Günther Schmalzing
(G)
Christiane K Kuhl
(CK)
Rainer Röhrig
(R)
Gernot Marx
(G)
Stefan Uhlig
(S)
Edgar Dahl
(E)
Dirk Müller-Wieland
(D)
Michael Dreher
(M)
Nikolaus Marx
(N)
Angel Angelov
(A)
Alexander Bartholomäus
(A)
Anke Becker
(A)
Daniela Bezdan
(D)
Conny Blumert
(C)
Ezio Bonifacio
(E)
Peer Bork
(P)
Bunk Boyke
(B)
Helmut Blum
(H)
Thomas Clavel
(T)
Maria Colome-Tatche
(M)
Markus Cornberg
(M)
Inti Alberto De La Rosa Velázquez
(IA)
Andreas Diefenbach
(A)
Alexander Dilthey
(A)
Nicole Fischer
(N)
Konrad Förstner
(K)
Sören Franzenburg
(S)
Julia-Stefanie Frick
(JS)
Gisela Gabernet
(G)
Julien Gagneur
(J)
Tina Ganzenmueller
(T)
Marie Gauder
(M)
Janina Geißert
(J)
Alexander Goesmann
(A)
Siri Göpel
(S)
Adam Grundhoff
(A)
Hajo Grundmann
(H)
Torsten Hain
(T)
Frank Hanses
(F)
Ute Hehr
(U)
André Heimbach
(A)
Marius Hoeper
(M)
Friedemann Horn
(F)
Daniel Hübschmann
(D)
Michael Hummel
(M)
Thomas Iftner
(T)
Angelika Iftner
(A)
Thomas Illig
(T)
Stefan Janssen
(S)
Jörn Kalinowski
(J)
René Kallies
(R)
Birte Kehr
(B)
Oliver T Keppler
(OT)
Christoph Klein
(C)
Michael Knop
(M)
Oliver Kohlbacher
(O)
Karl Köhrer
(K)
Jan Korbel
(J)
Peter G Kremsner
(PG)
Denise Kühnert
(D)
Markus Landthaler
(M)
Yang Li
(Y)
Kerstin U Ludwig
(KU)
Oliwia Makarewicz
(O)
Manja Marz
(M)
Alice C McHardy
(AC)
Christian Mertes
(C)
Maximilian Münchhoff
(M)
Sven Nahnsen
(S)
Markus Nöthen
(M)
Francine Ntoumi
(F)
Jörg Overmann
(J)
Silke Peter
(S)
Klaus Pfeffer
(K)
Isabell Pink
(I)
Anna R Poetsch
(AR)
Ulrike Protzer
(U)
Alfred Pühler
(A)
Nikolaus Rajewsky
(N)
Markus Ralser
(M)
Kristin Reiche
(K)
Stephan Ripke
(S)
Ulisses Nunes da Rocha
(UN)
Antoine-Emmanuel Saliba
(AE)
Leif Erik Sander
(LE)
Birgit Sawitzki
(B)
Simone Scheithauer
(S)
Philipp Schiffer
(P)
Jonathan Schmid-Burgk
(J)
Wulf Schneider
(W)
Eva-Christina Schulte
(EC)
Alexander Sczyrba
(A)
Mariam L Sharaf
(ML)
Yogesh Singh
(Y)
Michael Sonnabend
(M)
Oliver Stegle
(O)
Jens Stoye
(J)
Janne Vehreschild
(J)
Thirumalaisamy P Velavan
(TP)
Jörg Vogel
(J)
Sonja Volland
(S)
Max von Kleist
(M)
Andreas Walker
(A)
Jörn Walter
(J)
Dagmar Wieczorek
(D)
Sylke Winkler
(S)
John Ziebuhr
(J)
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