CAMUR: Knowledge extraction from RNA-seq cancer data through equivalent classification rules

Author: Paola Bertolazzi, Valerio Cestarelli, GIOVANNI FELICI, GIULIA FISCON, Emanuel Weitschek
Publisher: Oxford University Press (OUP)

ABOUT BOOK

Nowadays, knowledge extraction methods from Next Generation Sequencing data are highly requested. In this work, we focus on RNA-seq gene expression analysis and specifically on case-control studies with rule-based supervised classification algorithms that build a model able to discriminate cases from controls. State of the art algorithms compute a single classification model that contains few features (genes). On the contrary, our goal is to elicit a higher amount of knowledge by computing many classification models, and therefore to identify most of the genes related to the predicted class

Powered by: