† People involved in the organization of the challenge. ‡ People contributing data from their institutions.§ Equal senior authors.
Highlights CT-based radiomics with machine learning classifier is able to accurately predict primary refractory Diffuse Large B Cell Lymphomas (DLBCL). The radiomics model exhibits a better discrimination for refractory DLBCL identification compared to available standard clinical criteria.
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