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Bush, 2016 - Google Patents

  • ️Fri Jan 01 2016
Lung nodule detection and classification

Bush, 2016

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Document ID
16475531465059323852
Author Publication year
2016
Publication venue
Rep. Stanf. Comput. Sci

External Links

Snippet

Detection of malignant lung nodules in chest radiographs is currently performed by pulmonary radiologists, potentially with the aid of CAD systems. Recent advancements in convolutional neural network (CNN) models have improved image classification and …

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  • 238000001514 detection method 0 title abstract description 19

Classifications

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