无线电技术
医学
肿瘤微环境
磁共振成像
抗辐射性
肿瘤缺氧
放射治疗
相关性
缺氧(环境)
放射基因组学
病理
表型
核医学
放射科
生物
癌症
内科学
化学
基因
有机化学
氧气
生物化学
数学
几何学
作者
J. Müller,Stefan Leger,Alex Zwanenburg,Theresa Suckert,Armin Lühr,Elke Beyreuther,Cläre von Neubeck,Mechthild Krause,Steffen Löck,Antje Dietrich,Rebecca Bütof
标识
DOI:10.1016/j.radonc.2022.02.020
摘要
Background and purposeRadiomics analyses have been shown to predict clinical outcomes of radiotherapy based on medical imaging-derived biomarkers. However, the biological meaning attached to such image features often remains unclear, thus hindering the clinical translation of radiomics analysis. In this manuscript, we describe a preclinical radiomics trial, which attempts to establish correlations between the expression of histological tumor microenvironment (TME)- and magnetic resonance imaging (MRI)-derived image features.Materials & MethodsA total of 114 mice were transplanted with the radioresistant and radiosensitive head and neck squamous cell carcinoma cell lines SAS and UT-SCC-14, respectively. The models were irradiated with five fractions of protons or photons using different doses. Post-treatment T1-weighted MRI and histopathological evaluation of the TME was conducted to extract quantitative features pertaining to tissue hypoxia and vascularization. We performed radiomics analysis with leave-one-out cross validation to identify the features most strongly associated with the tumor's phenotype. Performance was assessed using the area under the curve (AUCValid) and F1-score. Furthermore, we analyzed correlations between TME- and MRI features using the Spearman correlation coefficient ρ.ResultsTME and MRI-derived features showed good performance (AUCValid,TME = 0.72, AUCValid,MRI = 0.85, AUCValid,Combined = 0.85) individual tumor phenotype prediction. We found correlation coefficients of ρ = −0.46 between hypoxia-related TME features and texture-related MRI features. Tumor volume was a strong confounder for MRI feature expression.ConclusionWe demonstrated a preclinical radiomics implementation and notable correlations between MRI- and TME hypoxia-related features. Developing additional TME features may help to further unravel the underlying biology.
科研通智能强力驱动
Strongly Powered by AbleSci AI