Mahajan A, Sahu A, Ashtekar R, Kulkarni T, Shukla S, Agarwal U, Bhattacharya K
Department of Radiology, The Clatterbridge Cancer Centre NHS Foundation Trust, Pembroke Place, Liverpool L7 8YA, UK.
Department of Radiodiagnosis and Imaging, Tata Memorial Hospital, Homi Bhabha National Institute, Mumbai 400012, Maharashtra, India.
Clin Radiol. 2023 Feb;78(2):137-149. doi: 10.1016/j.crad.2022.08.138. Epub 2022 Oct 11.
Radiogenomics refers to the study of the relationship between imaging phenotypes and gene expression patterns/molecular characteristics, which might allow improved diagnosis, decision-making, and predicting patient outcomes in the context of multiple diseases. Central nervous system (CNS) tumours contribute to significant cancer-related mortality in the present age. Although historically CNS neoplasms were classified and graded based on microscopic appearance, there was discordance between two histologically similar tumours that showed varying prognosis and behaviour, attributable to their molecular signatures. These led to the incorporation of molecular markers in the classification of CNS neoplasms. Meanwhile, advancements in imaging technology such as diffusion-based imaging (including tractography), perfusion, and spectroscopy in addition to the conventional imaging of glial neoplasms, have opened an avenue for radiogenomics. This review touches upon the schema of the current classification of gliomas, concepts behind molecular markers, and parameters that are used in radiogenomics to characterise gliomas and the role of artificial intelligence for the same. Further, the role of radiomics in the grading of brain tumours, prediction of treatment response and prognosis has been discussed. Use of automated and semi-automated tumour segmentation for radiotherapy planning and follow-up has also been discussed briefly.
放射基因组学是指对影像表型与基因表达模式/分子特征之间关系的研究,这可能有助于在多种疾病的背景下改善诊断、决策制定以及预测患者预后。中枢神经系统(CNS)肿瘤在当今导致了与癌症相关的重大死亡率。尽管历史上中枢神经系统肿瘤是根据显微镜下的外观进行分类和分级的,但在两个组织学相似的肿瘤之间存在不一致,它们表现出不同的预后和行为,这归因于它们的分子特征。这些情况促使在中枢神经系统肿瘤的分类中纳入分子标记。同时,除了神经胶质瘤的传统成像技术外,基于扩散的成像(包括纤维束成像)、灌注和光谱学等成像技术的进步,为放射基因组学开辟了一条道路。本综述涉及胶质瘤当前分类的模式、分子标记背后的概念、放射基因组学中用于表征胶质瘤的参数以及人工智能在其中的作用。此外,还讨论了放射组学在脑肿瘤分级、治疗反应预测和预后方面的作用。还简要讨论了自动和半自动肿瘤分割在放射治疗计划和随访中的应用。