A cohort-aware neural network improves generalizability of radiomic/dosiomic models for predicting radiotherapy-induced hematologic toxicity by learning shared and cohort-specific features with contrastive regularization.
Dosimetric predictors of acute hematologic toxicity in cervical cancer patients treated with concurrent cisplatin and intensity-modulated pelvic radiotherapy
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Prediction of Radiotherapy-Induced Hematologic Toxicity in Cervical Cancer with Cohort-Aware Framework
A cohort-aware neural network improves generalizability of radiomic/dosiomic models for predicting radiotherapy-induced hematologic toxicity by learning shared and cohort-specific features with contrastive regularization.