Review and meta-analysis of the genetic Minimal Cut Set approach for gene essentiality prediction in cancer metabolism

Author:

Olaverri-Mendizabal Danel1ORCID,Valcárcel Luis V123ORCID,Barrena Naroa1ORCID,Rodríguez Carlos J1,Planes Francisco J123ORCID

Affiliation:

1. Tecnun School of Engineering, University of Navarra , Manuel de Lardizábal 13, San Sebastián 20018 , Spain

2. Biomedical Engineering Center, University of Navarra , Campus Universitario, Pamplona, Navarra 31009 , Spain

3. Instituto de Ciencia de los Datos e Inteligencia Artificial (DATAI), University of Navarra , Campus Universitario, Pamplona 31080 , Spain

Abstract

Abstract Cancer metabolism is a marvellously complex topic, in part, due to the reprogramming of its pathways to self-sustain the malignant phenotype in the disease, to the detriment of its healthy counterpart. Understanding these adjustments can provide novel targeted therapies that could disrupt and impair proliferation of cancerous cells. For this very purpose, genome-scale metabolic models (GEMs) have been developed, with Human1 being the most recent reconstruction of the human metabolism. Based on GEMs, we introduced the genetic Minimal Cut Set (gMCS) approach, an uncontextualized methodology that exploits the concepts of synthetic lethality to predict metabolic vulnerabilities in cancer. gMCSs define a set of genes whose knockout would render the cell unviable by disrupting an essential metabolic task in GEMs, thus, making cellular proliferation impossible. Here, we summarize the gMCS approach and review the current state of the methodology by performing a systematic meta-analysis based on two datasets of gene essentiality in cancer. First, we assess several thresholds and distinct methodologies for discerning highly and lowly expressed genes. Then, we address the premise that gMCSs of distinct length should have the same predictive power. Finally, we question the importance of a gene partaking in multiple gMCSs and analyze the importance of all the essential metabolic tasks defined in Human1. Our meta-analysis resulted in parameter evaluation to increase the predictive power for the gMCS approach, as well as a significant reduction of computation times by only selecting the crucial gMCS lengths, proposing the pertinency of particular parameters for the peak processing of gMCS.

Funder

Minister of Economy and Competitiveness of Spain

PIBA Programme of the Basque Government

ERANET program ERAPerMed

Elkartek programme of the Basque Government

Basque Government predoctoral

Publisher

Oxford University Press (OUP)

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