Lung Nodule Classification Using Biomarkers, Volumetric Radiomics, and 3D CNNs

We would like to thank Dr. Eliot Seigel, Dr. Michael Morris, Dr. Yelena Yesh and the members of the VIPAR Lab and CARTA lab, UMBC for all the support, advice and valuable feedback for this research.

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