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1 research outputs found
On Predicting lung cancer subtypes using ‘omic’ data from tumor and tumor-adjacent histologically-normal tissue
Author
A Lee
A Zhang
+42Â more
AL Richer
Arturo López Pineda
C-H Chiu
CJ Langer
Claudia Rangel Escareño
CM Haaland
College of American Pathologists
College of American Pathologists
E Brzeziańska
ERE DeLong
G Stamatis
GK Smyth
GP Pfeifer
H Yao
H-H Chang
Henry Ato Ogoe
I Kononenko
J Li
J Subramanian
JA Capra
James Gordon Herman
Jeya Balaji Balasubramanian
JR Molina
M Szyf
PC Austin
PT Cagle
R Ben-Hamo
R Siegel
RE Neapolitan
S Dacic
S Dudoit
S Garcia
Shyam Visweswaran
SK Raghuwanshi
TA Rauch
The Cancer Genome Atlas Research Network
The Cancer Genome Atlas Research Network
U Fayyad
Vanathi Gopalakrishnan
X Jiang
Z Cai
Z Dlamini
Publication venue
'Springer Science and Business Media LLC'
Publication date
Field of study
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