A comparative study of machine learning methods for time-to-event survival data for radiomics risk modelling

Volume: 7, Issue: 1
Published: Oct 16, 2017
Abstract
Radiomics applies machine learning algorithms to quantitative imaging data to characterise the tumour phenotype and predict clinical outcome. For the development of radiomics risk models, a variety of different algorithms is available and it is not clear which one gives optimal results. Therefore, we assessed the performance of 11 machine learning algorithms combined with 12 feature selection methods by the concordance index (C-Index), to...
Paper Details
Title
A comparative study of machine learning methods for time-to-event survival data for radiomics risk modelling
Published Date
Oct 16, 2017
Volume
7
Issue
1
Citation AnalysisPro
  • Scinapse’s Top 10 Citation Journals & Affiliations graph reveals the quality and authenticity of citations received by a paper.
  • Discover whether citations have been inflated due to self-citations, or if citations include institutional bias.