2020
DOI: 10.3389/fmolb.2020.502573
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A Middle-Out Modeling Strategy to Extend a Colon Cancer Logical Model Improves Drug Synergy Predictions in Epithelial-Derived Cancer Cell Lines

Abstract: Cancer is a heterogeneous and complex disease and one of the leading causes of death worldwide. The high tumor heterogeneity between individuals affected by the same cancer type is accompanied by distinct molecular and phenotypic tumor profiles and variation in drug treatment response. In silico modeling of cancer as an aberrantly regulated system of interacting signaling molecules provides a basis to enhance our biological understanding of disease progression, and it offers the means to use computer simulatio… Show more

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Cited by 16 publications
(14 citation statements)
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“…Computational models hold great promise as supportive tools within many fields of medicine. Models presented in the medical literature span a wide range of application areas, from studies of disease development (Baratchart et al, 2015) to biomarker discovery (Ding et al, 2019) and treatment prediction (Eduati et al, 2020;Folkesson et al, 2020;Kuenzi, 2020;Niederdorfer et al, 2020;Tsirvouli et al, 2020). Prediction of treatment response is of special importance within the field of cancer, where the time spent on ineffective therapy will have severe consequences as it may allow disease progression beyond treatment.…”
Section: Discussionmentioning
confidence: 99%
“…Computational models hold great promise as supportive tools within many fields of medicine. Models presented in the medical literature span a wide range of application areas, from studies of disease development (Baratchart et al, 2015) to biomarker discovery (Ding et al, 2019) and treatment prediction (Eduati et al, 2020;Folkesson et al, 2020;Kuenzi, 2020;Niederdorfer et al, 2020;Tsirvouli et al, 2020). Prediction of treatment response is of special importance within the field of cancer, where the time spent on ineffective therapy will have severe consequences as it may allow disease progression beyond treatment.…”
Section: Discussionmentioning
confidence: 99%
“…In the same line, researchers developed a methodology that integrates several -omics datasets to identify candidate genes, serving as seeds for network modelling. They analysed multi-omics data from the Consensus Molecular Subtypes [15,16] study of colorectal cancer to expand a previously built generic cell-fate decision network [17].…”
Section: High-throughput Data Integration Into Logic-based Modelsmentioning
confidence: 99%
“…In the same line, researchers developed a methodology that integrates several -omics datasets to identify candidate genes, serving as seeds for network modelling. They analysed multi-omics data from the Consensus Molecular Subtypes (CMSs) [15,16] study of colorectal cancer (CRC) to expand a previously built generic cell-fate decision network [17].…”
Section: High-throughput Data Integration Into Logic-based Modelsmentioning
confidence: 99%