A CAD system for nodule detection in low-dose lung CTs based on region growing and a new active contour model.
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R. Bellotti | G. Gargano | P. Delogu | A. Retico | P. Cerello | S. Cheran | Donato Cascio | F. De Carlo | S. Tangaro | E. Catanzariti | I. De Mitri | C. Fulcheri | D. Grosso | S. Squarcia | E. Tommasi | B. Golosio
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