Skip to Main content Skip to Navigation
Conference papers

Dissimilarity-based Representation for Radiomics Applications

Hongliu Cao 1, 2 Simon Bernard 1 Laurent Heutte 1 Robert Sabourin 2 
1 DocApp - LITIS - Equipe Apprentissage
LITIS - Laboratoire d'Informatique, de Traitement de l'Information et des Systèmes
Abstract : Radiomics is a term which refers to the analysis of the large amount of quantitative tumor features extracted from medical images to find useful predictive, diagnostic or prognostic information. Many recent studies have proved that radiomics can offer a lot of useful information that physicians cannot extract from the medical images and can be associated with other information like gene or protein data. However, most of the classification studies in radiomics report the use of feature selection methods without identifying the machine learning challenges behind radiomics. In this paper, we first show that the radiomics problem should be viewed as an high dimensional, low sample size, multi view learning problem, then we compare different solutions proposed in multi view learning for classifying radiomics data. Our experiments, conducted on several real world multi view datasets, show that the intermediate integration methods work significantly better than filter and embedded feature selection methods commonly used in radiomics.
Document type :
Conference papers
Complete list of metadata
Contributor : Simon Bernard Connect in order to contact the contributor
Submitted on : Thursday, April 25, 2019 - 6:12:12 PM
Last modification on : Wednesday, March 2, 2022 - 10:10:10 AM

Links full text


  • HAL Id : hal-02111139, version 1
  • ARXIV : 1803.04460


Hongliu Cao, Simon Bernard, Laurent Heutte, Robert Sabourin. Dissimilarity-based Representation for Radiomics Applications. First International Conference on Pattern Recognition and Artificial Intelligence (ICPRAI'2018), May 2018, Montréal, Canada. pp.53--58. ⟨hal-02111139⟩



Record views