Bardosi Zoltan R, Dejaco Daniel, Santer Matthias, Kloppenburg Marcel, Mangesius Stephanie, Widmann Gerlig, Ganswindt Ute, Rumpold Gerhard, Riechelmann Herbert, Freysinger Wolfgang
Department of Otorhinolaryngology-Head and Neck Surgery, Medical University of Innsbruck, 6020 Innsbruck, Austria.
Department of Radiology, Medical University of Innsbruck, 6020 Innsbruck, Austria.
Cancers (Basel). 2022 Jan 18;14(3):477. doi: 10.3390/cancers14030477.
In head and neck squamous cell carcinoma (HNSCC) pathologic cervical lymph nodes (LN) remain important negative predictors. Current criteria for LN-classification in contrast-enhanced computed-tomography scans (contrast-CT) are shape-based; contrast-CT imagery allows extraction of additional quantitative data ("features"). The data-driven technique to extract, process, and analyze features from contrast-CTs is termed "radiomics". Extracted features from contrast-CTs at various levels are typically redundant and correlated. Current sets of features for LN-classification are too complex for clinical application. Effective eliminative feature selection (EFS) is a crucial preprocessing step to reduce the complexity of sets identified. We aimed at exploring EFS-algorithms for their potential to identify sets of features, which were as small as feasible and yet retained as much accuracy as possible for LN-classification. In this retrospective cohort-study, which adhered to the STROBE guidelines, in total 252 LNs were classified as "non-pathologic" ( = 70), "pathologic" ( = 182) or "pathologic with extracapsular spread" ( = 52) by two experienced head-and-neck radiologists based on established criteria which served as a reference. The combination of sparse discriminant analysis and genetic optimization retained up to 90% of the classification accuracy with only 10% of the original numbers of features. From a clinical perspective, the selected features appeared plausible and potentially capable of correctly classifying LNs. Both the identified EFS-algorithm and the identified features need further exploration to assess their potential to prospectively classify LNs in HNSCC.
在头颈部鳞状细胞癌(HNSCC)中,病理性颈部淋巴结(LN)仍然是重要的阴性预测指标。相比之下,增强计算机断层扫描(contrast-CT)中当前的LN分类标准是基于形状的;contrast-CT图像允许提取额外的定量数据(“特征”)。从contrast-CT中提取、处理和分析特征的数据驱动技术被称为“放射组学”。从不同层面的contrast-CT中提取的特征通常是冗余且相关的。当前用于LN分类的特征集对于临床应用来说过于复杂。有效的消除性特征选择(EFS)是降低所识别特征集复杂性的关键预处理步骤。我们旨在探索EFS算法识别特征集的潜力,这些特征集要尽可能小,但在LN分类中仍能保留尽可能高的准确性。在这项遵循STROBE指南的回顾性队列研究中,两名经验丰富的头颈放射科医生根据既定标准,将总共252个LN分类为“非病理性”( = 70)、“病理性”( = 182)或“伴有包膜外扩散的病理性”( = 52),这些标准作为参考。稀疏判别分析和遗传优化的组合仅使用原始特征数量的10%,却保留了高达90%的分类准确性。从临床角度来看,所选特征似乎合理,并且有可能正确地对LN进行分类。所识别的EFS算法和所识别的特征都需要进一步探索,以评估它们在HNSCC中对LN进行前瞻性分类的潜力。