Raffaele Giancarlo, Simona E. Rombo, et al.
Bioinformatics
Identifying molecular signatures from complex disease patients with underlying symptomatic similarities is a significant challenge in the analysis of high-dimensional multi-omics data. Topological data analysis (TDA) provides a way of extracting such information from the geometric structure of the data and identifying multi-way higher-order relationships. Here, we propose an application of harmonic persistent homology, which overcomes the limitation of the ambiguity of the choice of a cycle representing a specific homology class. When applied to multi-omics data, this leads to the discovery of hidden patterns highlighting the relationships between different omic profiles, while allowing for common tasks in multi-omics analyses, such as disease subtyping, and most importantly biomarker identification for similar latent biological pathways that are associated with complex diseases. Our experiments on multiple cancer data show that harmonic persistent homology effectively dissects multi-omics data to identify biomarkers by detecting representative cycles predictive of disease subtypes.
Raffaele Giancarlo, Simona E. Rombo, et al.
Bioinformatics
Raffaele Giancarlo, Filippo Utro
Algorithms for Molecular Biology
Sanjoy Dey, Aritra Bose, et al.
AMIA Annual Symposium 2021
Filippo Utro, Omar E. Cornejo, et al.
BMC Bioinformatics