Benchmarking Eliminative Radiomic Feature Selection for Head and Neck Lymph Node Classification.
Zoltan R BardosiDaniel DejacoMatthias SanterMarcel KloppenburgStephanie MangesiusGerlig WidmannUte GanswindtGerhard RumpoldHerbert RiechelmannWolfgang FreysingerPublished in: Cancers (2022)
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" ( n = 70), "pathologic" ( n = 182) or "pathologic with extracapsular spread" ( n = 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.
Keyphrases
- contrast enhanced
- machine learning
- computed tomography
- deep learning
- lymph node
- diffusion weighted
- magnetic resonance
- magnetic resonance imaging
- neoadjuvant chemotherapy
- artificial intelligence
- dual energy
- positron emission tomography
- big data
- locally advanced
- early stage
- squamous cell carcinoma
- gene expression
- high resolution
- risk assessment
- oxidative stress
- human health
- neural network
- anti inflammatory