Desideri Isacco, Loi Mauro, Francolini Giulio, Becherini Carlotta, Livi Lorenzo, Bonomo Pierluigi
Radiation Oncology, Azienda Ospedaliero-Universitaria Careggi, University of Florence, Florence, Italy.
Front Oncol. 2020 Oct 6;10:1708. doi: 10.3389/fonc.2020.01708. eCollection 2020.
Normal tissue complication probability (NTCP) models that were formulated in the Quantitative Analyses of Normal Tissue Effects in the Clinic (QUANTEC) are one of the pillars in support of everyday's clinical radiation oncology. Because of steady therapeutic refinements and the availability of cutting-edge technical solutions, the ceiling of organs-at-risk-sparing has been reached for photon-based intensity modulated radiotherapy (IMRT). The possibility to capture heterogeneity of patients and tissues in the prediction of toxicity is still an unmet need in modern radiation therapy. Potentially, a major step towards a wider therapeutic index could be obtained from refined assessment of radiation-induced morbidity at an individual level. The rising integration of quantitative imaging and machine learning applications into radiation oncology workflow offers an unprecedented opportunity to further explore the biologic interplay underlying the normal tissue response to radiation. Based on these premises, in this review we focused on the current-state-of-the-art on the use of radiomics for the prediction of toxicity in the field of head and neck, lung, breast and prostate radiotherapy.
在临床正常组织效应定量分析(QUANTEC)中制定的正常组织并发症概率(NTCP)模型是支持日常临床放射肿瘤学的支柱之一。由于治疗的不断改进和前沿技术解决方案的可用性,基于光子的调强放射治疗(IMRT)在保护危及器官方面已达到上限。在预测毒性时捕捉患者和组织异质性的可能性在现代放射治疗中仍是未满足的需求。潜在地,朝着更宽治疗指数迈出的重要一步可以通过在个体水平上对辐射诱发发病率的精确评估来实现。定量成像和机器学习应用在放射肿瘤学工作流程中的日益整合提供了前所未有的机会,以进一步探索正常组织对辐射反应背后的生物学相互作用。基于这些前提,在本综述中,我们聚焦于头颈部、肺部、乳腺和前列腺放射治疗领域中使用放射组学预测毒性的最新技术水平。