Impact of Lesion Delineation and Intensity Quantisation on the Stability of Texture Features from Lung Nodules on CT: A Reproducible Study.
Francesco BianconiMario Luca FravoliniIsabella PalumboGiulia PascolettiSusanna NuvoliMaria RondiniAngela SpanuBarbara PalumboPublished in: Diagnostics (Basel, Switzerland) (2021)
Computer-assisted analysis of three-dimensional imaging data (radiomics) has received a lot of research attention as a possible means to improve the management of patients with lung cancer. Building robust predictive models for clinical decision making requires the imaging features to be stable enough to changes in the acquisition and extraction settings. Experimenting on 517 lung lesions from a cohort of 207 patients, we assessed the stability of 88 texture features from the following classes: first-order (13 features), Grey-level Co-Occurrence Matrix (24), Grey-level Difference Matrix (14), Grey-level Run-length Matrix (16), Grey-level Size Zone Matrix (16) and Neighbouring Grey-tone Difference Matrix (five). The analysis was based on a public dataset of lung nodules and open-access routines for feature extraction, which makes the study fully reproducible. Our results identified 30 features that had good or excellent stability relative to lesion delineation, 28 to intensity quantisation and 18 to both. We conclude that selecting the right set of imaging features is critical for building clinical predictive models, particularly when changes in lesion delineation and/or intensity quantisation are involved.
Keyphrases
- white matter
- high resolution
- decision making
- healthcare
- mental health
- squamous cell carcinoma
- end stage renal disease
- ejection fraction
- multiple sclerosis
- deep learning
- machine learning
- chronic kidney disease
- emergency department
- working memory
- prognostic factors
- mass spectrometry
- patient reported outcomes
- big data
- positron emission tomography
- lymph node metastasis
- photodynamic therapy
- image quality