Yi Zhenjie, Long Lifu, Zeng Yu, Liu Zhixiong
Department of Neurosurgery, Xiangya Hospital, Central South University, Changsha, China.
XiangYa School of Medicine, Central South University, Changsha, China.
Front Oncol. 2021 Oct 14;11:732196. doi: 10.3389/fonc.2021.732196. eCollection 2021.
Imaging diagnosis is crucial for early detection and monitoring of brain tumors. Radiomics enable the extraction of a large mass of quantitative features from complex clinical imaging arrays, and then transform them into high-dimensional data which can subsequently be mined to find their relevance with the tumor's histological features, which reflect underlying genetic mutations and malignancy, along with grade, progression, therapeutic effect, or even overall survival (OS). Compared to traditional brain imaging, radiomics provides quantitative information linked to meaningful biologic characteristics and application of deep learning which sheds light on the full automation of imaging diagnosis. Recent studies have shown that radiomics' application is broad in identifying primary tumor, differential diagnosis, grading, evaluation of mutation status and aggression, prediction of treatment response and recurrence in pituitary tumors, gliomas, and brain metastases. In this descriptive review, besides establishing a general understanding among protocols, results, and clinical significance of these studies, we further discuss the current limitations along with future development of radiomics.
影像诊断对于脑肿瘤的早期检测和监测至关重要。放射组学能够从复杂的临床影像阵列中提取大量定量特征,然后将其转化为高维数据,随后可对这些数据进行挖掘,以发现它们与肿瘤组织学特征的相关性,这些特征反映了潜在的基因突变和恶性程度,以及分级、进展、治疗效果,甚至总生存期(OS)。与传统脑成像相比,放射组学提供了与有意义的生物学特征相关的定量信息,以及深度学习的应用,这为影像诊断的全自动化提供了线索。最近的研究表明,放射组学在识别垂体瘤、胶质瘤和脑转移瘤的原发性肿瘤、鉴别诊断、分级、突变状态和侵袭性评估、治疗反应预测和复发预测方面应用广泛。在这篇描述性综述中,除了在这些研究的方案、结果和临床意义方面达成总体共识外,我们还进一步讨论了放射组学目前的局限性以及未来的发展。