Department of Radiation Oncology, Dana-Farber Cancer Institute, Brigham and Women's Hospital, Harvard Medical School, Boston, United States.
Department of Biostatistics and Computational Biology, Dana-Farber Cancer Institute, Boston, United States.
Elife. 2017 Jul 21;6:e23421. doi: 10.7554/eLife.23421.
Medical imaging can visualize characteristics of human cancer noninvasively. Radiomics is an emerging field that translates these medical images into quantitative data to enable phenotypic profiling of tumors. While radiomics has been associated with several clinical endpoints, the complex relationships of radiomics, clinical factors, and tumor biology are largely unknown. To this end, we analyzed two independent cohorts of respectively 262 North American and 89 European patients with lung cancer, and consistently identified previously undescribed associations between radiomic imaging features, molecular pathways, and clinical factors. In particular, we found a relationship between imaging features, immune response, inflammation, and survival, which was further validated by immunohistochemical staining. Moreover, a number of imaging features showed predictive value for specific pathways; for example, intra-tumor heterogeneity features predicted activity of RNA polymerase transcription (AUC = 0.62, p=0.03) and intensity dispersion was predictive of the autodegration pathway of a ubiquitin ligase (AUC = 0.69, p10). Finally, we observed that prognostic biomarkers performed highest when combining radiomic, genetic, and clinical information (CI = 0.73, p<10) indicating complementary value of these data. In conclusion, we demonstrate that radiomic approaches permit noninvasive assessment of both molecular and clinical characteristics of tumors, and therefore have the potential to advance clinical decision-making by systematically analyzing standard-of-care medical images.
医学影像学可以无创地可视化人体癌症的特征。放射组学是一个新兴领域,它将这些医学图像转化为定量数据,以实现肿瘤的表型分析。虽然放射组学已经与多个临床终点相关联,但放射组学、临床因素和肿瘤生物学之间的复杂关系在很大程度上是未知的。为此,我们分析了分别来自 262 名北美和 89 名欧洲肺癌患者的两个独立队列,并一致发现了放射组学成像特征、分子途径和临床因素之间以前未描述的关联。特别是,我们发现了影像学特征与免疫反应、炎症和生存之间的关系,这通过免疫组织化学染色进一步得到了验证。此外,一些影像学特征显示出对特定途径的预测价值;例如,肿瘤内异质性特征预测 RNA 聚合酶转录活性(AUC=0.62,p=0.03),强度分散预测泛素连接酶的自动降解途径(AUC=0.69,p<10)。最后,我们观察到当将放射组学、遗传和临床信息相结合时,预后生物标志物的表现最佳(CI=0.73,p<10),这表明这些数据具有互补价值。总之,我们证明了放射组学方法可以无创评估肿瘤的分子和临床特征,因此通过系统分析标准医疗图像,有可能为临床决策提供帮助。