CT Radiomic Features are Associated with DNA Copy Number Alterations of Head and Neck Squamous Cell Carcinomas.

Stefan P Haider, Andrea Schreier, Tal Zeevi, Moritz Gross, Benedikt Paul, Jasmin Krenn, Martin Canis, Philipp Baumeister, Christoph A Reichel, Seyedmehdi Payabvash, Kariem Sharaf
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Abstract

Background and purpose: While a larger fraction of head and neck squamous cell carcinoma (HNSCC) genomes is characterized by a high prevalence of copy number alterations (CNA-positive), a smaller subset with more favorable oncologic outcome is instead driven by somatic mutations (CNA-negative). We aimed to investigate the radiomic phenotypes of CNA-positive and -negative HNSCCs in contrast CT images.

Materials and methods: Single nucleotide polymorphism (SNP)-array copy number data were utilized and CNA-based hierarchical clustering of patients was performed to define CNA subclasses. Radiomic features (n=1037) quantifying shape, first-order intensity, and texture were extracted from HNSCC primary tumors in pretherapeutic neck CTs. We performed univariate association analyses and trained, optimized and validated radiomics-based CNA prediction models by combining feature selection algorithms with machine learning classifiers.

Results: A total of 522 and 114 patients were included in the copy number and radiomic analyses, respectively. Univariate analysis revealed 190 features from all feature subtypes (shape, first-order, texture) were significantly associated with the CNA status; after multiple testing correction, 29 texture or first-order features remained significant. The best-performing CNA status prediction model utilized a support vector machine classifier, achieving an AUC of 0.71 (95% confidence interval: 0.60-0.83).

Conclusions: CNA subgroups exhibit distinct radiomic phenotypes, primarily reflected in texture and intensity characteristics. These findings enhance our understanding of the biological significance of radiomic information in HNSCC. In the clinical setting, as CNA-positive and -negative HNSCCs may emerge as distinct subclasses with unique staging schemes and treatment implications, improved CT radiomics-based prediction models could offer a noninvasive, cost-effective method for CNA subtyping.

头颈部鳞状细胞癌的CT放射学特征与DNA拷贝数改变有关。
背景和目的:虽然头颈部鳞状细胞癌(HNSCC)基因组的大部分以拷贝数改变(cna阳性)的高流行率为特征,但更有利的肿瘤预后的一小部分是由体细胞突变(cna阴性)驱动的。我们的目的是研究cna阳性和阴性HNSCCs在CT对比图像中的放射组学表型。材料和方法:利用单核苷酸多态性(SNP)-阵列拷贝数数据,对患者进行基于CNA的分层聚类来定义CNA亚类。从治疗前颈部ct的HNSCC原发肿瘤中提取量化形状、一阶强度和质地的放射学特征(n=1037)。我们进行了单变量关联分析,并通过将特征选择算法与机器学习分类器相结合,训练、优化和验证了基于放射学的CNA预测模型。结果:共有522例和114例患者分别被纳入拷贝数和放射组学分析。单因素分析显示,所有特征亚型中的190个特征(形状、一阶、纹理)与CNA状态显著相关;经过多次测试校正,有29个纹理或一阶特征仍然显著。表现最好的CNA状态预测模型使用了支持向量机分类器,AUC为0.71(95%置信区间:0.60-0.83)。结论:CNA亚群表现出不同的放射学表型,主要反映在结构和强度特征上。这些发现增强了我们对HNSCC放射学信息的生物学意义的理解。在临床环境中,由于CNA阳性和阴性HNSCCs可能作为不同的亚类出现,具有独特的分期方案和治疗意义,改进的基于CT放射学的预测模型可以为CNA亚型提供一种无创、经济有效的方法。
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