Jeffrey C Buchsbaum, Henry F VanBrocklin, Reinier Hernandez, Ellen M O'Brien, Heather M Hennkens, Dmitri G Medvedev, Roger W Howell, Freddy E Escorcia, Yuni K Dewaraja, Abhinav K Jha, Anuj J Kapadia, Greeshma Agasthya, Arman Rahmim, Babak Saboury, Kristian Myhre, Sandra Davern
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The workshop emphasized interdisciplinary collaboration, particularly between the Department of Energy (DOE) and the National Institutes of Health (NIH), to strengthen the domestic isotope supply, streamline regulatory pathways, and further integrate computational tools into radiopharmaceutical therapy (RPT). Key discussions explored the role of AI-driven modeling, machine learning, and digital twin technologies in optimizing dosimetry, dynamically personalizing treatments, and reducing time to clinical adoption. Advances in predictive computational modeling were highlighted as essential for improving radionuclide yield, purity, and synthesis efficiency. Regulatory considerations and equitable access were central themes, with participants advocating for harmonized global standards, adaptive trial designs, and expanded infrastructure for clinical implementation. DOE computational and production infrastructure was emphasized. Future priorities identified include increased investment in radionuclide production infrastructure, expanded workforce development in radiopharmaceutical sciences and computational modeling, and the creation of robust public-private partnerships. The workshop concluded that continued strategic collaboration and sustained resources will be vital for advancing next-generation radiotheranostics, ensuring safe and effective therapies accessible to all patients.</p>","PeriodicalId":20903,"journal":{"name":"Radiation research","volume":" ","pages":"75-79"},"PeriodicalIF":2.5000,"publicationDate":"2025-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Computational Modeling to Advance Novel Medical Isotopes for Radiotheranostics: A DOE-NIH Joint Workshop Executive Summary.\",\"authors\":\"Jeffrey C Buchsbaum, Henry F VanBrocklin, Reinier Hernandez, Ellen M O'Brien, Heather M Hennkens, Dmitri G Medvedev, Roger W Howell, Freddy E Escorcia, Yuni K Dewaraja, Abhinav K Jha, Anuj J Kapadia, Greeshma Agasthya, Arman Rahmim, Babak Saboury, Kristian Myhre, Sandra Davern\",\"doi\":\"10.1667/RADE-25-00MR1.1\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>The DOE-NIH Joint Workshop on Computational Modeling to Advance Novel Medical Isotopes for Radiotheranostics, held on September 27, 2024, brought together experts from government, academia, and industry to address critical challenges in radionuclide production and clinical translation. 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Computational Modeling to Advance Novel Medical Isotopes for Radiotheranostics: A DOE-NIH Joint Workshop Executive Summary.
The DOE-NIH Joint Workshop on Computational Modeling to Advance Novel Medical Isotopes for Radiotheranostics, held on September 27, 2024, brought together experts from government, academia, and industry to address critical challenges in radionuclide production and clinical translation. The workshop emphasized interdisciplinary collaboration, particularly between the Department of Energy (DOE) and the National Institutes of Health (NIH), to strengthen the domestic isotope supply, streamline regulatory pathways, and further integrate computational tools into radiopharmaceutical therapy (RPT). Key discussions explored the role of AI-driven modeling, machine learning, and digital twin technologies in optimizing dosimetry, dynamically personalizing treatments, and reducing time to clinical adoption. Advances in predictive computational modeling were highlighted as essential for improving radionuclide yield, purity, and synthesis efficiency. Regulatory considerations and equitable access were central themes, with participants advocating for harmonized global standards, adaptive trial designs, and expanded infrastructure for clinical implementation. DOE computational and production infrastructure was emphasized. Future priorities identified include increased investment in radionuclide production infrastructure, expanded workforce development in radiopharmaceutical sciences and computational modeling, and the creation of robust public-private partnerships. The workshop concluded that continued strategic collaboration and sustained resources will be vital for advancing next-generation radiotheranostics, ensuring safe and effective therapies accessible to all patients.
期刊介绍:
Radiation Research publishes original articles dealing with radiation effects and related subjects in the areas of physics, chemistry, biology
and medicine, including epidemiology and translational research. The term radiation is used in its broadest sense and includes specifically
ionizing radiation and ultraviolet, visible and infrared light as well as microwaves, ultrasound and heat. Effects may be physical, chemical or
biological. Related subjects include (but are not limited to) dosimetry methods and instrumentation, isotope techniques and studies with
chemical agents contributing to the understanding of radiation effects.