Selection of human tissue-specific elementary flux modes using gene expression data

2013 ◽  
Vol 29 (16) ◽  
pp. 2009-2016 ◽  
Author(s):  
Alberto Rezola ◽  
Jon Pey ◽  
Luis F. de Figueiredo ◽  
Adam Podhorski ◽  
Stefan Schuster ◽  
...  
Biomedicines ◽  
2020 ◽  
Vol 8 (11) ◽  
pp. 488
Author(s):  
Carolina Peixoto ◽  
Marta B. Lopes ◽  
Marta Martins ◽  
Luís Costa ◽  
Susana Vinga

Colorectal cancer (CRC) is one of the leading causes of mortality and morbidity in the world. Being a heterogeneous disease, cancer therapy and prognosis represent a significant challenge to medical care. The molecular information improves the accuracy with which patients are classified and treated since similar pathologies may show different clinical outcomes and other responses to treatment. However, the high dimensionality of gene expression data makes the selection of novel genes a problematic task. We propose TCox, a novel penalization function for Cox models, which promotes the selection of genes that have distinct correlation patterns in normal vs. tumor tissues. We compare TCox to other regularized survival models, Elastic Net, HubCox, and OrphanCox. Gene expression and clinical data of CRC and normal (TCGA) patients are used for model evaluation. Each model is tested 100 times. Within a specific run, eighteen of the features selected by TCox are also selected by the other survival regression models tested, therefore undoubtedly being crucial players in the survival of colorectal cancer patients. Moreover, the TCox model exclusively selects genes able to categorize patients into significant risk groups. Our work demonstrates the ability of the proposed weighted regularizer TCox to disclose novel molecular drivers in CRC survival by accounting for correlation-based network information from both tumor and normal tissue. The results presented support the relevance of network information for biomarker identification in high-dimensional gene expression data and foster new directions for the development of network-based feature selection methods in precision oncology.


2017 ◽  
Vol 25 (02) ◽  
pp. 231-246
Author(s):  
DO GYUN KIM ◽  
WANG-HEE LEE ◽  
SUNG-WON SEO ◽  
HYE-SUN PARK

This study aims at developing a tissue-specific model for glycolysis in bovine mammary gland epithelial cells by incorporating gene expression data into metabolic reactions. Two types of data sets were embedded in the COnstraint-Based Reconstruction Analysis (COBRA) toolbox: metabolic reactions that overlay bovine genetic information into human glycolysis data from a public database and gene expression data of cattle acquired from lab experiments. As a result, we successfully generated a tissue-specific model of bovine glycolysis in bovine mammary gland epithelial cells, providing information on expression of metabolic pathways and gene annotations still required for curation.


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