Neural networks analysis of spontaneous pneumothorax development

L. Bertolaccini, L. Boschetto, C. Cassardo, A. Viti, A. Terzi (Cuneo, Italy)

Source: Annual Congress 2012 - Chest wall, diaphragm and pleura
Session: Chest wall, diaphragm and pleura
Session type: Oral Presentation
Number: 183

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Citations should be made in the following way:
L. Bertolaccini, L. Boschetto, C. Cassardo, A. Viti, A. Terzi (Cuneo, Italy). Neural networks analysis of spontaneous pneumothorax development. Eur Respir J 2012; 40: Suppl. 56, 183

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