A NETWORK OF MOLECULAR AND FUNCTIONAL INTERACTIONS TO ANALYSE GEMMA OMICS DATASETS
TOOL TYPE
Dataset
TARGET USERS
Science & research
LEAD PARTNER
CNR-ITB
COMPLETENESS
100%
A NETWORK OF MOLECULAR AND FUNCTIONAL INTERACTIONS TO ANALYSE GEMMA OMICS DATASETS
We developed a pipeline to assess the performance of GEMMA biomarkers in distinguishing children with ASD from neurotypical children. Given a list of biomarkers and a series of third-party features-by-subjects datasets, the pipeline provides methods for data pre-processing. Subsequently, it uses machine learning models (neural networks, random forests, support vector machines) to test the performance of the biomarkers in distinguishing ASD vs controls on each dataset.
INSTRUCTIONS
Release: with the publication of articles by the GEMMA Consortium.
Source code: https://github.com/emosca-cnr/GEMMA_biomarker_classification