Department of Hematology/Oncology, University of Chicago, 900 East 57th Street, KCBD 8100, Chicago, IL, 60637, USA.
Department of Radiology, University of Chicago, 5841 South Maryland Avenue, MC2026, Chicago, IL, 60637, USA.
Cancer Imaging. 2019 Jul 15;19(1):48. doi: 10.1186/s40644-019-0233-5.
Imaging techniques can provide information about the tumor non-invasively and have been shown to provide information about the underlying genetic makeup. Correlating image-based phenotypes (radiomics) with genomic analyses is an emerging area of research commonly referred to as "radiogenomics" or "imaging-genomics". The purpose of this study was to assess the potential for using an automated, quantitative radiomics platform on magnetic resonance (MR) breast imaging for inferring underlying activity of clinically relevant gene pathways derived from RNA sequencing of invasive breast cancers prior to therapy.
We performed quantitative radiomic analysis on 47 invasive breast cancers based on dynamic contrast enhanced 3 Tesla MR images acquired before surgery and obtained gene expression data by performing total RNA sequencing on corresponding fresh frozen tissue samples. We used gene set enrichment analysis to identify significant associations between the 186 gene pathways and the 38 image-based features that have previously been validated.
All radiomic size features were positively associated with multiple replication and proliferation pathways and were negatively associated with the apoptosis pathway. Gene pathways related to immune system regulation and extracellular signaling had the highest number of significant radiomic feature associations, with an average of 18.9 and 16 features per pathway, respectively. Tumors with upregulation of immune signaling pathways such as T-cell receptor signaling and chemokine signaling as well as extracellular signaling pathways such as cell adhesion molecule and cytokine-cytokine interactions were smaller, more spherical, and had a more heterogeneous texture upon contrast enhancement. Tumors with higher expression levels of JAK/STAT and VEGF pathways had more intratumor heterogeneity in image enhancement texture. Other pathways with robust associations to image-based features include metabolic and catabolic pathways.
We provide further evidence that MR imaging of breast tumors can infer underlying gene expression by using RNA sequencing. Size and shape features were appropriately correlated with proliferative and apoptotic pathways. Given the high number of radiomic feature associations with immune pathways, our results raise the possibility of using MR imaging to distinguish tumors that are more immunologically active, although further studies are necessary to confirm this observation.
成像技术可以提供肿瘤的无创信息,并已被证明可以提供潜在的遗传组成信息。将基于图像的表型(放射组学)与基因组分析相关联是一个新兴的研究领域,通常称为“放射基因组学”或“影像基因组学”。本研究旨在评估在治疗前使用自动定量放射组学平台对磁共振(MR)乳腺成像进行分析,以推断来自浸润性乳腺癌 RNA 测序的临床相关基因途径的潜在活性的能力。
我们对 47 例术前采集的 3T 磁共振动态对比增强成像进行定量放射组学分析,并对相应的新鲜冷冻组织样本进行总 RNA 测序以获取基因表达数据。我们使用基因集富集分析来识别 186 个基因途径和 38 个先前已验证的基于图像的特征之间的显著关联。
所有放射组学大小特征均与多个复制和增殖途径呈正相关,与凋亡途径呈负相关。与免疫系统调节和细胞外信号转导相关的基因途径具有最高数量的显著放射组学特征关联,平均每个途径有 18.9 和 16 个特征。上调免疫信号通路(如 T 细胞受体信号和趋化因子信号)和细胞外信号通路(如细胞黏附分子和细胞因子-细胞因子相互作用)的肿瘤较小、更球形且增强对比后的纹理更不均匀。具有更高 JAK/STAT 和 VEGF 途径表达水平的肿瘤在图像增强纹理中具有更高的异质性。与图像特征具有强大关联的其他途径包括代谢和分解代谢途径。
我们提供了进一步的证据,表明通过使用 RNA 测序,乳腺肿瘤的 MR 成像可以推断潜在的基因表达。大小和形状特征与增殖和凋亡途径适当相关。鉴于与免疫途径的放射组学特征具有很高的关联,我们的结果提出了使用 MR 成像来区分更具免疫活性的肿瘤的可能性,尽管需要进一步的研究来证实这一观察结果。