Multimodality imaging with CT, PET, and MRI is the basis for precise tumor segmentation in radiation therapy. We analyze which MR imaging contrasts mainly improve the segmentation performance of a CNN by training multiple networks using different input channels. The predictive value of 7 different contrasts is compared for two tumor regions, gross tumor volume and lymph node metastasis, in head and neck tumor patients.
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