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Electronic health records accurately predict renal replacement therapy in acute kidney injury
Authors
A Wonnacott
Amartya Mukhopadhyay
+40Â more
Anantharaman Vathsala
AS Levey
Bee-Hong Tan
CR Parikh
CV Thakar
D Saly
E Maccariello
ED Siew
F Aregger
FP Wilson
FP Wilson
G Woodrow
Graeme MacLaren
Horng-Ruey Chua
J Holmes
JL Koyner
K Disease
K Kashani
K Kashani
Long Pang
LZ Ong
M Gallagher
M Haase
M Soares
MH Rosner
MJ Koziolek
NV Kolhe
PM Palevsky
R Bellomo
RK Hsu
RL Lins
S Demirjian
Sabrina Haroon
Sanmay Low
Shir-Lynn Lim
T Ohnuma
Tanusya Murali Murali
Titus Lau
V Kontis
Wan-Ying Ng
Publication date
Publisher
'Springer Science and Business Media LLC'
Doi
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Last time updated on 11/12/2019