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Federated learning for predicting clinical outcomes in patients with COVID-19

Authors :
Jiahui Guan
Krishna Juluru
Yothin Rakvongthai
Benjamin S. Glicksberg
Watsamon Jantarabenjakul
Li-Chen Fu
Mike Fralick
Anthony Costa
Quanzheng Li
Andrew Feng
Eric K. Oermann
Joshua D. Kaggie
Xihong Lin
Pedro Mário Cruz e Silva
Deepeksha Bhatia
Byung Seok Kim
Hitoshi Mori
Pablo F. Damasceno
Peiying Ruan
Yuhong Wen
Hao-Hsin Shin
Amilcare Gentili
Weichung Wang
Chiu-Ling Lai
Jason C. Crane
Andrew N. Priest
Soo-Young Park
Peerapon Vateekul
Matheus Ribeiro Furtado de Mendonça
Gustavo César de Antônio Corradi
Griffin Lacey
Meena AbdelMaseeh
Yu Rim Lee
Tatsuya Kodama
Pierre Elnajjar
Krishna Nand Keshava Murthy
Xiang Li
Evan Leibovitz
Vitor Lavor
Christopher P. Hess
Colin B. Compas
Stefan Gräf
Masoom A. Haider
Daguang Xu
Nicola Rieke
Thanyawee Puthanakit
Sarah E Hickman
Hui Ren
Marcio Aloisio Bezerra Cavalcanti Rockenbach
Jung Gil Park
Jesse Tetreault
Hisashi Sasaki
Min Kyu Kang
Won Young Tak
Chun-Nan Hsu
Fiona J. Gilbert
Chin Lin
Varun Buch
Felipe Kitamura
Tony Mazzulli
Eddie Huang
Abood Quraini
Shelley McLeod
Young Joon Kwon
Gustavo Nino
Dufan Wu
Chien-Sung Tsai
Mona Flores
Baris Turkbey
Sira Sriswasdi
Pochuan Wang
Mohammad Adil
Aoxiao Zhong
Chih-Hung Wang
Sheng Xu
C. K. Lee
Isaac Yang
Marius George Linguraru
Holger R. Roth
Chia-Jung Hsu
Anas Z. Abidin
Thomas M. Grist
Hirofumi Obinata
Sheridan Reed
Andrew Liu
Ahmed Harouni
Natalie Gangai
Ittai Dayan
Kristopher Kersten
Stephanie Harmon
Jae Ho Sohn
John Garrett
Bradford J. Wood
Sharmila Majumdar
Bernardo Bizzo
Shuichi Kawano
Keith J. Dreyer
Carlos Tor-Díez
Chia-Cheng Lee
Source :
Nature Medicine. 27:1735-1743
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

Federated learning (FL) is a method used for training artificial intelligence models with data from multiple sources while maintaining data anonymity, thus removing many barriers to data sharing. Here we used data from 20 institutes across the globe to train a FL model, called EXAM (electronic medical record (EMR) chest X-ray AI model), that predicts the future oxygen requirements of symptomatic patients with COVID-19 using inputs of vital signs, laboratory data and chest X-rays. EXAM achieved an average area under the curve (AUC) >0.92 for predicting outcomes at 24 and 72 h from the time of initial presentation to the emergency room, and it provided 16% improvement in average AUC measured across all participating sites and an average increase in generalizability of 38% when compared with models trained at a single site using that site’s data. For prediction of mechanical ventilation treatment or death at 24 h at the largest independent test site, EXAM achieved a sensitivity of 0.950 and specificity of 0.882. In this study, FL facilitated rapid data science collaboration without data exchange and generated a model that generalized across heterogeneous, unharmonized datasets for prediction of clinical outcomes in patients with COVID-19, setting the stage for the broader use of FL in healthcare. Federated learning, a method for training artificial intelligence algorithms that protects data privacy, was used to predict future oxygen requirements of symptomatic patients with COVID-19 using data from 20 different institutes across the globe.

Details

ISSN :
1546170X and 10788956
Volume :
27
Database :
OpenAIRE
Journal :
Nature Medicine
Accession number :
edsair.doi...........c204df8c07fd165584f2de19871d49b1
Full Text :
https://doi.org/10.1038/s41591-021-01506-3