Predicting non-small cell lung cancer prognosis by fully automated microscopic pathology image features
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Predicting non-small cell lung cancer prognosis by fully automated microscopic pathology image features
description
article científic
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article scientifique
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articolo scientifico
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artigo científico
@pt
bilimsel makale
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scientific article published on 16 August 2016
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vedecký článok
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vetenskaplig artikel
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videnskabelig artikel
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vědecký článek
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name
Predicting non-small cell lung ...... copic pathology image features
@en
Predicting non-small cell lung ...... opic pathology image features.
@nl
type
label
Predicting non-small cell lung ...... copic pathology image features
@en
Predicting non-small cell lung ...... opic pathology image features.
@nl
prefLabel
Predicting non-small cell lung ...... copic pathology image features
@en
Predicting non-small cell lung ...... opic pathology image features.
@nl
P2093
P2860
P356
P1476
Predicting non-small cell lung ...... copic pathology image features
@en
P2093
Daniel L Rubin
Gerald J Berry
Kun-Hsing Yu
Michael Snyder
P2860
P2888
P356
10.1038/NCOMMS12474
P407
P577
2016-08-16T00:00:00Z
P6179
1000998210