| Literature DB >> 32868372 |
Alba Simats1, Laura Ramiro1, Teresa García-Berrocoso1, Ferran Briansó2,3, Ricardo Gonzalo2, Luna Martín4, Anna Sabé4, Natalia Gill1, Anna Penalba1, Nuria Colomé4, Alex Sánchez2,3, Francesc Canals4, Alejandro Bustamante1, Anna Rosell1, Joan Montaner5.
Abstract
Stroke remains a leading cause of death and disability worldwide. Despite continuous advances, the identification of key molecular signatures in the hyper-acute phase of ischemic stroke is still a primary interest for translational research on stroke diagnosis, prognosis, and treatment. Data integration from high-throughput -omics techniques has become crucial to unraveling key interactions among different molecular elements in complex biological contexts, such as ischemic stroke. Thus, we used advanced data integration methods for a multi-level joint analysis of transcriptomics and proteomics data sets obtained from mouse brains at 2 h after cerebral ischemia. By modeling net-like correlation structures, we identified an integrated network of genes and proteins that are differentially expressed at a very early stage after stroke. We validated 10 of these deregulated elements in acute stroke, and changes in their expression pattern over time after cerebral ischemia were described. Of these, CLDN20, GADD45G, RGS2, BAG5, and CTNND2 were next evaluated as blood biomarkers of cerebral ischemia in mice and human blood samples, which were obtained from stroke patients and patients presenting stroke-mimicking conditions. Our findings indicate that CTNND2 levels in blood might potentially be useful for distinguishing ischemic strokes from stroke-mimicking conditions in the hyper-acute phase of the disease. Furthermore, circulating GADD45G content within the first 6 h after stroke could also play a key role in predicting poor outcomes in stroke patients. For the first time, we have used an integrative biostatistical approach to elucidate key molecules in the initial stages of stroke pathophysiology and highlight new notable molecules that might be further considered as blood biomarkers of ischemic stroke.Entities:
Keywords: Stroke biology; animal models; bioinformatics; biomarker: diagnostic; biomarker: prognostic; biomarkers; systems biology
Year: 2020 PMID: 32868372 PMCID: PMC7710142 DOI: 10.1074/mcp.RA120.002283
Source DB: PubMed Journal: Mol Cell Proteomics ISSN: 1535-9476 Impact factor: 5.911