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Predicting the naturalistic course of depression from a wide range of clinical, psychological, and biological data: a machine learning approach
Authors
A Kraha
AJ Fyer
+33 more
AJ Rush
AM Chekroud
AT Beck
BAA Bus
BS Fernandes
BWJH Penninx
BWJH Penninx
CG Lyketsos
CJL Murray
D Rhebergen
F Lamers
G Varoquaux
HD Schmidt
J Friedman
JE Wiersma
JL Wang
JW Pettit
L Schmaal
LN Robins
M King
ME Rice
N Meinshausen
N Vogelzangs
N Vogelzangs
PT Costa
R Graaf de
RC Kessler
RC Kessler
S Kapur
SA Vreeburg
T Hastie
Y Milaneschi
YT Nigatu
Publication date
Publisher
'Springer Science and Business Media LLC'
Doi
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Last time updated on 11/12/2019