بيانات النشر: Linköpings universitet, Avdelningen för medicinsk teknik
Linköpings universitet, Matematiska institutionen
Linköpings universitet, Tekniska fakulteten
Linköpings universitet, Avdelningen för diagnostik och specialistmedicin
Linköpings universitet, Medicinska fakulteten
Linköpings universitet, Bioinformatik
Linköpings universitet, Centrum för medicinsk bildvetenskap och visualisering, CMIV
Orebro Univ, Sweden; Orebro Univ, Sweden
Univ Skovde, Sweden
Univ Gothenburg, Sweden
NATURE PORTFOLIO
نبذة مختصرة : Adipocyte signaling, normally and in type 2 diabetes, is far from fully understood. We have earlier developed detailed dynamic mathematical models for several well-studied, partially overlapping, signaling pathways in adipocytes. Still, these models only cover a fraction of the total cellular response. For a broader coverage of the response, large-scale phosphoproteomic data and systems level knowledge on protein interactions are key. However, methods to combine detailed dynamic models with large-scale data, using information about the confidence of included interactions, are lacking. We have developed a method to first establish a core model by connecting existing models of adipocyte cellular signaling for: (1) lipolysis and fatty acid release, (2) glucose uptake, and (3) the release of adiponectin. Next, we use publicly available phosphoproteome data for the insulin response in adipocytes together with prior knowledge on protein interactions, to identify phosphosites downstream of the core model. In a parallel pairwise approach with low computation time, we test whether identified phosphosites can be added to the model. We iteratively collect accepted additions into layers and continue the search for phosphosites downstream of these added layers. For the first 30 layers with the highest confidence (311 added phosphosites), the model predicts independent data well (70-90% correct), and the predictive capability gradually decreases when we add layers of decreasing confidence. In total, 57 layers (3059 phosphosites) can be added to the model with predictive ability kept. Finally, our large-scale, layered model enables dynamic simulations of systems-wide alterations in adipocytes in type 2 diabetes. ; Funding Agencies|Swedish Research Council [2018-05418]; Swedish Research Council; CENIIT; Swedish Foundation for Strategic Research [2018-05418, 2018-03319, S2021-0008]; SciLifeLab National COVID-19 Research Program - Knut and Alice Wallenberg Foundation [Dnr 2019-03767, 2020-04711]; H2020 project PRECISE4Q [15.09]; ...
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