Bodalal Z, Wamelink I, Trebeschi S, Beets-Tan R G H
Department of Radiology, Netherlands Cancer Institute, Amsterdam, The Netherlands.
GROW School for Oncology and Developmental Biology, Maastricht University, Maastricht, The Netherlands.
Immunooncol Technol. 2021 Apr 16;9:100028. doi: 10.1016/j.iotech.2021.100028. eCollection 2021 Mar.
With the ongoing advances in imaging techniques, increasing volumes of anatomical and functional data are being generated as part of the routine clinical workflow. This surge of available imaging data coincides with increasing research in quantitative imaging, particularly in the domain of imaging features. An important and novel approach is radiomics, where high-dimensional image properties are extracted from routine medical images. The fundamental principle of radiomics is the hypothesis that biomedical images contain predictive information, not discernible to the human eye, that can be mined through quantitative image analysis. In this review, a general outline of radiomics and artificial intelligence (AI) will be provided, along with prominent use cases in immunotherapy (e.g. response and adverse event prediction) and targeted therapy (i.e. radiogenomics). While the increased use and development of radiomics and AI in immuno-oncology is highly promising, the technology is still in its early stages, and different challenges still need to be overcome. Nevertheless, novel AI algorithms are being constructed with an ever-increasing scope of applications.
随着成像技术的不断进步,作为常规临床工作流程的一部分,正在生成越来越多的解剖学和功能数据。可用成像数据的激增与定量成像研究的增加相吻合,特别是在成像特征领域。一种重要且新颖的方法是放射组学,即从常规医学图像中提取高维图像特征。放射组学的基本原理是这样一种假设:生物医学图像包含人眼无法识别的预测信息,可通过定量图像分析挖掘出来。在本综述中,将概述放射组学和人工智能(AI),以及在免疫治疗(如反应和不良事件预测)和靶向治疗(即放射基因组学)中的突出应用案例。虽然放射组学和AI在免疫肿瘤学中的应用和发展前景广阔,但该技术仍处于早期阶段,仍需克服不同的挑战。尽管如此,新的AI算法正在构建中,应用范围也在不断扩大。