A Framework Based on Metabolic Networks and Biomedical Images Data to Discriminate Glioma Grades
Chapter
Publication Date:
2021
abstract:
Collecting and integrating information from dierent data
sources is a successful approach to investigate complex biological phe-
nomena and to address tasks such as disease subtyping, biomarker pre-
diction, target, and mechanisms identication. Here, we describe an in-
tegrative framework, based on the combination of transcriptomics data,
metabolic networks, and magnetic resonance images, to classify dierent
grades of glioma, one of the most common types of primary brain tu-
mors arising from glial cells. The framework is composed of three main
blocks for feature sorting, choosing the best number of sorted features,
and classication model building. We investigate dierent methods for
each of the blocks, highlighting those that lead to the best results. Our
approach demonstrates how the integration of molecular and imaging
data achieves better classication performance than using the individual
data-sets, also comparing results with state-of-the-art competitors. The
proposed framework can be considered as a starting point for a clinically
relevant grading system, and the related software made available lays the
foundations for future comparisons.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Data integration; Metabolic networks; Glioma grade classification; Omics Imaging; Transcriptomics
List of contributors:
Manipur, Ichcha; Maddalena, Lucia; Granata, Ilaria
Book title:
Biomedical Engineering Systems and Technologies