Shui Lin, Ren Haoyu, Yang Xi, Li Jian, Chen Ziwei, Yi Cheng, Zhu Hong, Shui Pixian
Department of Medical Oncology, Cancer Center, West China Hospital, Sichuan University, Chengdu, China.
Department of General, Visceral and Transplantation Surgery, University Hospital, LMU Munich, Munich, Germany.
Front Oncol. 2021 Jan 26;10:570465. doi: 10.3389/fonc.2020.570465. eCollection 2020.
With the rapid development of new technologies, including artificial intelligence and genome sequencing, radiogenomics has emerged as a state-of-the-art science in the field of individualized medicine. Radiogenomics combines a large volume of quantitative data extracted from medical images with individual genomic phenotypes and constructs a prediction model through deep learning to stratify patients, guide therapeutic strategies, and evaluate clinical outcomes. Recent studies of various types of tumors demonstrate the predictive value of radiogenomics. And some of the issues in the radiogenomic analysis and the solutions from prior works are presented. Although the workflow criteria and international agreed guidelines for statistical methods need to be confirmed, radiogenomics represents a repeatable and cost-effective approach for the detection of continuous changes and is a promising surrogate for invasive interventions. Therefore, radiogenomics could facilitate computer-aided diagnosis, treatment, and prediction of the prognosis in patients with tumors in the routine clinical setting. Here, we summarize the integrated process of radiogenomics and introduce the crucial strategies and statistical algorithms involved in current studies.
随着包括人工智能和基因组测序在内的新技术的快速发展,放射基因组学已成为个性化医疗领域的一门前沿科学。放射基因组学将从医学图像中提取的大量定量数据与个体基因组表型相结合,并通过深度学习构建预测模型,以对患者进行分层、指导治疗策略和评估临床结果。最近对各种类型肿瘤的研究证明了放射基因组学的预测价值。并且还介绍了放射基因组分析中的一些问题以及先前研究提出的解决方案。尽管放射基因组分析的工作流程标准和统计方法的国际公认指南有待确定,但放射基因组学是一种可重复且具有成本效益的检测持续变化的方法,并且是侵入性干预的一种有前景的替代方法。因此,放射基因组学可以在常规临床环境中促进对肿瘤患者的计算机辅助诊断及治疗和预后预测。在此,我们总结了放射基因组学的整合过程,并介绍了当前研究中涉及的关键策略和统计算法。