Department of Radiology, Churchill Hospital, Oxford University Hospitals NHS Foundation Trust, Old Road, Headington, Oxford, OX3 7LE, UK.
Nuffield Department of Surgical Sciences, John Radcliffe Hospital, University of Oxford, Room 6607, Level 6, Oxford, OX3 9DU, UK.
Eur Radiol. 2021 Feb;31(2):1049-1058. doi: 10.1007/s00330-020-07141-9. Epub 2020 Aug 18.
Radiomics is the extraction of quantitative data from medical imaging, which has the potential to characterise tumour phenotype. The radiomics approach has the capacity to construct predictive models for treatment response, essential for the pursuit of personalised medicine. In this literature review, we summarise the current status and evaluate the scientific and reporting quality of radiomics research in the prediction of treatment response in non-small-cell lung cancer (NSCLC).
A comprehensive literature search was conducted using the PubMed database. A total of 178 articles were screened for eligibility and 14 peer-reviewed articles were included. The radiomics quality score (RQS), a radiomics-specific quality metric emulating the TRIPOD guidelines, was used to assess scientific and reporting quality.
Included studies reported several predictive markers including first-, second- and high-order features, such as kurtosis, grey-level uniformity and wavelet HLL mean respectively, as well as PET-based metabolic parameters. Quality assessment demonstrated a low median score of + 2.5 (range - 5 to + 9), mainly reflecting a lack of reproducibility and clinical evaluation. There was extensive heterogeneity between studies due to differences in patient population, cancer stage, treatment modality, follow-up timescales and radiomics workflow methodology.
Radiomics research has not yet been translated into clinical use. Efforts towards standardisation and collaboration are needed to identify reproducible radiomic predictors of response. Promising radiomic models must be externally validated and their impact evaluated within the clinical pathway before they can be implemented as a clinical decision-making tool to facilitate personalised treatment for patients with NSCLC.
• The included studies reported several promising radiomic markers of treatment response in lung cancer; however, there was a lack of reproducibility between studies. • Quality assessment using the radiomics quality score (RQS) demonstrated a low median total score of + 2.5 (range - 5 to + 9). • Future radiomics research should focus on implementation of standardised radiomics features and software, together with external validation in a prospective setting.
放射组学是从医学影像中提取定量数据,具有描述肿瘤表型的潜力。放射组学方法能够构建治疗反应的预测模型,这对于追求个性化医疗至关重要。在本文献综述中,我们总结了放射组学在非小细胞肺癌(NSCLC)治疗反应预测中的研究现状,并评估了其科学和报告质量。
使用 PubMed 数据库进行全面的文献检索。共筛选了 178 篇文章以确定其是否符合纳入标准,最终纳入了 14 篇同行评议的文章。使用放射组学质量评分(RQS)评估科学和报告质量,RQS 是一种模仿 TRIPOD 指南的放射组学专用质量指标。
纳入的研究报告了几种预测标志物,包括一阶、二阶和高阶特征,如峰度、灰度均匀性和小波 HLL 均值,以及 PET 基于代谢参数。质量评估显示中位数评分为+2.5(范围-5 至+9),主要反映了重现性和临床评估方面的不足。由于患者人群、癌症分期、治疗方式、随访时间范围和放射组学工作流程方法的差异,研究之间存在广泛的异质性。
放射组学研究尚未转化为临床应用。需要努力实现标准化和协作,以确定可重现的治疗反应放射组学预测因子。有前途的放射组学模型必须在临床路径中进行外部验证,并评估其对患者的影响,然后才能将其作为临床决策工具实施,以促进 NSCLC 患者的个体化治疗。
纳入的研究报告了肺癌治疗反应的几种有前途的放射组学标志物,但研究之间缺乏重现性。
使用放射组学质量评分(RQS)进行的质量评估显示中位数总分为+2.5(范围-5 至+9)。
未来的放射组学研究应侧重于标准化放射组学特征和软件的实施,以及在前瞻性研究中进行外部验证。