Predicting Response to [177Lu]Lu-PSMA Therapy in mCRPC Using Machine Learning
Kaiyuan Gong,
Baptiste Magnier,
Salomé L’hostis
et al.
Abstract:Background/Objectives: Radioligandtherapy (RLT) with [177Lu]Lu-PSMA has been newly introduced as a routine treatment for metastatic castration-resistant prostate cancer (mCRPC). However, not all patients can tolerate the entire therapeutic sequence, and in some cases, the treatment may prove ineffective. In real-world conditions, the aim is to distinguish between patients who fully benefit from treatment (those who respond effectively and tolerate the entire therapeutic sequence) and those who do not respond o… Show more
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