Phantom evaluation of feasibility and applicability of artificial intelligence based pulmonary nodule detection in chest radiographs
Mona El-Gedaily,
André Euler,
Mike Guldimann
et al.
Abstract:The aim of our study was to evaluate the specific performance of an artificial intelligence (AI) algorithm for lung nodule detection in chest radiography for a larger number of nodules of different sizes and densities using a standardized phantom approach. A total of 450 nodules with varying density (d1 to d3) and size (3, 5, 8, 10 and 12 mm) were inserted in a Lungman phantom at various locations. Radiographic images with varying projections were acquired and processed using the AI algorithm for nodule detect… Show more
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