Faculty of Science, University of Oradea, Oradea, Romania; Cancer Research Institute and School of Health Sciences, University of South Australia, Adelaide, Australia.
Cancer Research Institute and School of Health Sciences, University of South Australia, Adelaide, Australia; South Australia Medical Imaging Physics, Adelaide, SA 5000, Australia.
J Am Coll Radiol. 2019 Dec;16(12):1695-1701. doi: 10.1016/j.jacr.2019.05.045. Epub 2019 Jun 22.
Head and neck carcinomas are clinically challenging malignancies because of tumor heterogeneities and resilient tumor subvolumes that require individualized treatment planning and delivery for an improved outcome. Although current approaches to diagnosis and therapy have boosted locoregional control, the long-term survival in this patient group remains unchanged over the last decades. A new approach to head and neck cancer management is therefore needed to better identify patient subgroups that are responsive to specific therapies. The aim of this article is to review the current status of knowledge and practice utilizing big data toward personalized therapy in head and neck cancers based on CT and PET imaging modalities.
Literature published in English since 2000 was searched using Medline. Additional articles were retrieved via pearling of identified literature. Publications were reviewed and summarized in tabulated format.
Studies based on big data in head and neck cancer are limited; however, the field of radiomics is under continuous development and provides valuable input for personalized treatment. Using PET/PET CT biomarkers for patient treatment individualization and response prediction seems promising, especially in regard to detection of hypoxia and clonogenic cancer stem cells. Literature shows that macroscopic changes in medical images (whether structural or functional) are correlated with biologic and biochemical changes within a tumor.
Current trends in data science suggest that the ideal model for decision support in head and neck cancers should be based on human-machine collaboration, namely, on (1) software-based algorithms, (2) physician innovation collaboratives, and (3) clinician mix optimization.
头颈部癌是临床上具有挑战性的恶性肿瘤,因为肿瘤异质性和有弹性的肿瘤亚体积需要个体化的治疗计划和实施,以获得更好的结果。尽管目前的诊断和治疗方法提高了局部区域控制率,但在过去几十年中,该患者群体的长期生存率仍未改变。因此,需要一种新的头颈部癌管理方法,以更好地识别对特定治疗有反应的患者亚组。本文旨在回顾基于 CT 和 PET 成像模式利用大数据实现头颈部癌个体化治疗的最新知识和实践现状。
使用 Medline 搜索自 2000 年以来以英文发表的文献。通过识别文献的珍珠链检索其他文章。对出版物进行综述和总结。
基于头颈部癌大数据的研究有限;然而,放射组学领域正在不断发展,并为个体化治疗提供有价值的信息。使用 PET/PET CT 生物标志物进行患者个体化治疗和反应预测似乎很有前景,特别是在检测缺氧和克隆性癌症干细胞方面。文献表明,医学图像中的宏观变化(无论是结构还是功能)与肿瘤内的生物学和生化变化相关。
数据科学的当前趋势表明,头颈部癌决策支持的理想模型应该基于人机协作,即(1)基于软件的算法,(2)医生创新合作,以及(3)临床医生组合优化。