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Amsterdam 2011
Tuesday, 27.09.2011
Quality management for lung cancer patients
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NeuroStation – Statistical software based on artificial intelligence and pattern recognition for NSCLC development prediction through comprehensive biomarker analysis
N. Minic, S. Zunic, S. Zunic (Belgrade, Republic Of Serbia)
Source:
Annual Congress 2011 - Quality management for lung cancer patients
Session:
Quality management for lung cancer patients
Session type:
Thematic Poster Session
Number:
4437
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Citations should be made in the following way:
N. Minic, S. Zunic, S. Zunic (Belgrade, Republic Of Serbia). NeuroStation – Statistical software based on artificial intelligence and pattern recognition for NSCLC development prediction through comprehensive biomarker analysis. Eur Respir J 2011; 38: Suppl. 55, 4437
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