Data-Driven Clinical Decision-Making Using Deep Learning in Imaging
| Autor corporatiu: | |
|---|---|
| Altres autors: | , | 
| Sumari: | XII, 274 p. 105 illus., 92 illus. in color. text | 
| Idioma: | anglès | 
| Publicat: | Singapore :
          Springer Nature Singapore : Imprint: Springer,
    
        2024. | 
| Edició: | 1st ed. 2024. | 
| Col·lecció: | Studies in Big Data,
              152 | 
| Matèries: | |
| Accés en línia: | https://doi.org/10.1007/978-981-97-3966-0 | 
| Format: | Electrònic Llibre | 
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