Khalili Nastaran, Kazerooni Anahita Fathi, Familiar Ariana, Haldar Debanjan, Kraya Adam, Foster Jessica, Koptyra Mateusz, Storm Phillip B, Resnick Adam C, Nabavizadeh Ali
Center for Data-Driven Discovery in Biomedicine (D3b), Children's Hospital of Philadelphia, Philadelphia, PA, USA.
AI2D Center for AI and Data Science for Integrated Diagnostics, University of Pennsylvania, Philadelphia, PA, USA.
NPJ Precis Oncol. 2023 Jun 19;7(1):59. doi: 10.1038/s41698-023-00413-9.
Increasing evidence suggests that besides mutational and molecular alterations, the immune component of the tumor microenvironment also substantially impacts tumor behavior and complicates treatment response, particularly to immunotherapies. Although the standard method for characterizing tumor immune profile is through performing integrated genomic analysis on tissue biopsies, the dynamic change in the immune composition of the tumor microenvironment makes this approach not feasible, especially for brain tumors. Radiomics is a rapidly growing field that uses advanced imaging techniques and computational algorithms to extract numerous quantitative features from medical images. Recent advances in machine learning methods are facilitating biological validation of radiomic signatures and allowing them to "mine" for a variety of significant correlates, including genetic, immunologic, and histologic data. Radiomics has the potential to be used as a non-invasive approach to predict the presence and density of immune cells within the microenvironment, as well as to assess the expression of immune-related genes and pathways. This information can be essential for patient stratification, informing treatment decisions and predicting patients' response to immunotherapies. This is particularly important for tumors with difficult surgical access such as gliomas. In this review, we provide an overview of the glioma microenvironment, describe novel approaches for clustering patients based on their tumor immune profile, and discuss the latest progress on utilization of radiomics for immune profiling of glioma based on current literature.
越来越多的证据表明,除了突变和分子改变外,肿瘤微环境的免疫成分也对肿瘤行为产生重大影响,并使治疗反应复杂化,尤其是对免疫疗法的反应。虽然表征肿瘤免疫特征的标准方法是对组织活检进行综合基因组分析,但肿瘤微环境免疫组成的动态变化使得这种方法不可行,特别是对于脑肿瘤。放射组学是一个快速发展的领域,它使用先进的成像技术和计算算法从医学图像中提取大量定量特征。机器学习方法的最新进展有助于对放射组学特征进行生物学验证,并使其能够“挖掘”各种重要的相关性,包括遗传、免疫和组织学数据。放射组学有潜力作为一种非侵入性方法来预测微环境中免疫细胞的存在和密度,以及评估免疫相关基因和通路的表达。这些信息对于患者分层、指导治疗决策和预测患者对免疫疗法的反应至关重要。这对于手术难以触及的肿瘤(如神经胶质瘤)尤为重要。在这篇综述中,我们概述了神经胶质瘤微环境,描述了基于肿瘤免疫特征对患者进行聚类的新方法,并根据当前文献讨论了利用放射组学进行神经胶质瘤免疫特征分析的最新进展。