

An AI model for transplant risk in myelofibrosis; preventing priapism in men with sickle cell anemia; hallmarks of T cell exhaustion absent in newly diagnosed MM
Jun 26, 2025
Discover how AI is revolutionizing transplant risk assessment in myelofibrosis, identifying patients with poor outcomes. Explore a feasibility study on preventing priapism in men with sickle cell anemia, showcasing promising adherence to new therapies. Finally, delve into groundbreaking findings that reveal the absence of T-cell exhaustion in newly diagnosed multiple myeloma, challenging existing beliefs and opening doors for innovative treatment strategies.
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AI Predicts High-Risk Myelofibrosis Transplants
- Machine learning model (RSF) predicts poor survival post-transplant in myelofibrosis with high accuracy.
- It identifies 25% of patients at high risk, aiding personalized treatment decisions.
Combined Therapy Reduces Priapism Risk
- Combining hydroxyurea with tadalafil showed a significant reduction in priapism in sickle cell disease.
- The trial demonstrated high recruitment, retention, and adherence, supporting feasibility of larger studies.
Myeloma Lacks Terminal T-cell Exhaustion
- Newly diagnosed myeloma patients lack terminal T-cell exhaustion features found in other cancers.
- Immune evasion in myeloma may not be via T-cell exhaustion, suggesting different immunotherapy approaches.