Zheng Dandan, Preuss Kiersten, Milano Michael T, He Xiuxiu, Gou Lang, Shi Yu, Marples Brian, Wan Raphael, Yu Hongfeng, Du Huijing, Zhang Chi
Department of Radiation Oncology, Wilmot Cancer Institute, University of Rochester Medical Center, 601 Elmwood Avenue, Box 647, Rochester, NY, 14642, USA.
University of Nebraska Medical Center, Omaha, USA.
Radiat Oncol. 2025 Apr 4;20(1):49. doi: 10.1186/s13014-025-02626-7.
Mathematical modeling has long been a cornerstone of radiotherapy for cancer, guiding treatment prescription, planning, and delivery through versatile applications. As we enter the era of medical big data, where the integration of molecular, imaging, and clinical data at both the tumor and patient levels could promise more precise and personalized cancer treatment, the role of mathematical modeling has become even more critical. This comprehensive narrative review aims to summarize the main applications of mathematical modeling in radiotherapy, bridging the gap between classical models and the latest advancements. The review covers a wide range of applications, including radiobiology, clinical workflows, stereotactic radiosurgery/stereotactic body radiotherapy (SRS/SBRT), spatially fractionated radiotherapy (SFRT), FLASH radiotherapy (FLASH-RT), immune-radiotherapy, and the emerging concept of radiotherapy digital twins. Each of these areas is explored in depth, with a particular focus on how newer trends and innovations are shaping the future of radiation cancer treatment. By examining these diverse applications, this review provides a comprehensive overview of the current state of mathematical modeling in radiotherapy. It also highlights the growing importance of these models in the context of personalized medicine and multi-scale, multi-modal data integration, offering insights into how they can be leveraged to enhance treatment precision and patient outcomes. As radiotherapy continues to evolve, the insights gained from this review will help guide future research and clinical practice, ensuring that mathematical modeling continues to propel innovations in radiation cancer treatment.
长期以来,数学建模一直是癌症放射治疗的基石,通过多种应用指导治疗处方、计划和实施。随着我们进入医学大数据时代,在肿瘤和患者层面整合分子、影像和临床数据有望实现更精确和个性化的癌症治疗,数学建模的作用变得更加关键。这篇综合性叙述性综述旨在总结数学建模在放射治疗中的主要应用,弥合经典模型与最新进展之间的差距。该综述涵盖了广泛的应用,包括放射生物学、临床工作流程、立体定向放射外科/立体定向体部放射治疗(SRS/SBRT)、空间分割放射治疗(SFRT)、FLASH放射治疗(FLASH-RT)、免疫放射治疗以及放射治疗数字孪生这一新兴概念。对这些领域中的每一个都进行了深入探讨,特别关注更新的趋势和创新如何塑造放射肿瘤治疗的未来。通过审视这些不同的应用,本综述全面概述了放射治疗中数学建模的现状。它还强调了这些模型在个性化医疗以及多尺度、多模态数据整合背景下日益增长的重要性,深入探讨了如何利用它们来提高治疗精度和患者预后。随着放射治疗不断发展,本综述所获得的见解将有助于指导未来的研究和临床实践,确保数学建模继续推动放射肿瘤治疗的创新。