2020
DOI: 10.1098/rsos.191241
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Oncogene inference optimization using constraint-based modelling incorporated with protein expression in normal and tumour tissues

Abstract: Cancer cells are known to exhibit unusual metabolic activity, and yet few metabolic cancer driver genes are known. Genetic alterations and epigenetic modifications of cancer cells result in the abnormal regulation of cellular metabolic pathways that are different when compared with normal cells. Such a metabolic reprogramming can be simulated using constraint-based modelling approaches towards predicting oncogenes. We introduced the tri-level optimization problem to use the metabolic reprogramming towards infe… Show more

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Cited by 10 publications
(21 citation statements)
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References 54 publications
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“…However, duality transformation is difficult for multilevel optimization problems, such as the TLOP in this study. We applied the NHDE algorithm (see Supplementary File S2) , which has been used to solve oncogene inference problems [18,21] , to infer the oncogenes of LUAD and LUSC. The problem [Eq (1)] consisted of the crisp objectives and fuzzy equal objective to introduce a combination of weighted-sum and minimum decisions for evaluating the fitness,  D , which was used in the NHDE algorithm as follows:…”
Section: Fitness Evaluationmentioning
confidence: 99%
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“…However, duality transformation is difficult for multilevel optimization problems, such as the TLOP in this study. We applied the NHDE algorithm (see Supplementary File S2) , which has been used to solve oncogene inference problems [18,21] , to infer the oncogenes of LUAD and LUSC. The problem [Eq (1)] consisted of the crisp objectives and fuzzy equal objective to introduce a combination of weighted-sum and minimum decisions for evaluating the fitness,  D , which was used in the NHDE algorithm as follows:…”
Section: Fitness Evaluationmentioning
confidence: 99%
“…obtained through MFVA, and were used to determine the trend of flux change between dysregulated case and normal situation in terms of seven categories of classification [21].…”
Section: Accepted Articlementioning
confidence: 99%
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