Metabolic enrichment through functional gene rules
Davide Maspero, Claudio Isella, Marzia Di Filippo, Alex Graudenzi,, Sara Erika Bellomo, Marco Antoniotti, Giancarlo Mauri, Enzo Medico, Chiara, Damiani

TL;DR
This paper introduces a method to analyze tumor metabolic activity by deriving reaction-based scores from transcriptional data, aiding in tumor classification and understanding metabolic differences between colorectal cancer subtypes.
Contribution
The study presents a novel approach to reduce gene expression data into metabolic reaction scores, enabling detailed tumor metabolic profiling and patient clustering based on metabolism.
Findings
Identified key metabolic differences between MSI and MSS colorectal tumors.
Demonstrated clustering of patients based on metabolic reaction scores.
Applied method to characterize individual tumor metabolism.
Abstract
It is well known that tumors originating from the same tissue have different prognosis and sensitivity to treatments. Over the last decade, cancer genomics consortia like the Cancer Genome Atlas (TCGA) have been generating thousands of cross-sectional data, for thousands of human primary tumors originated from various tissues. Thanks to that public database, it is today possible to analyze a broad range of relevant information such as gene sequences, expression profiles or metabolite footprints, to capture tumor molecular heterogeneity and improve patient stratification and clinical management. To this aim, it is common practice to analyze datasets grouped into clusters based on clinical observations and/or molecular features. However, the identification of specific properties of each cluster that may be effectively targeted by therapeutic drugs still represents a challenging task. We…
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Taxonomy
TopicsMicrobial Metabolic Engineering and Bioproduction · Cancer, Hypoxia, and Metabolism · RNA modifications and cancer
