ncbi.nlm.nih.gov/geo) using the accession GPL5972. Following hybridization, washing and drying, the slides were scanned in a ScanArray Express HT system (version 3.0, Perkin Elmer, Hvidovre, Denmark) and the resulting images were analyzed using GenePix Pro
(version 6.1.0.4, Molecular Devices). Statistical analysis was carried out in the R computing environment (version 2.6.1 for Windows) using the package Linear Models for Microarray Analysis (Limma, version 2.12.0, [42]) which is part of the Bioconductor project [43]. Spots marked as “Not found” by GenePix and spots with more than 50% of saturated pixels were weighted buy ARN-509 “0” before the log2-transformed ratios of Alexa-647 to Alexa-555 (not background corrected) were normalized within-slide using global-loess with default parameters as implemented in Limma. The set of normalized log-ratios were then analyzed in Limma to identify genes being significantly differentially expressed due to resection over time adjusting for effects by using the expression profiles CRT0066101 molecular weight obtained from the control animals and the sham operated animals. The false discovery rate was controlled using the method of Benjamini and Hochberg [44] as implemented in Limma and a corrected P-value below 0.20 was considered significant. A detailed description of the microarray experiment together
with the resulting dataset is available at NCBI’s Gene Expression H 89 manufacturer Omnibus (GEO, [40, 41]http://www.ncbi.nlm.nih.gov/geo) using the accession number GSE14396. According to OMIM [45] and Ace View [46], we classified all top 50 genes into 14 groups by molecular function and biological process. First, this functional classification was illustrated by using top tables for each time contrast (3–0 weeks, 6–0 weeks and 6–3 weeks). Second, this Succinyl-CoA set of genes was further analyzed by finding genes associated with genes regulating cell cycle propagation and apoptosis that we previously found in an acute model of liver resection [14]. Third, to highlight differences in temporal differential gene expression between groups “contrast of contrast” analyzes was conducted. According to Wack et al. [47] proliferation and migration of the sinusoidal endothelium
into the avascular hepatic islands is suspected to be driven by the up-regulation of various angiogenic growth factors. Using the stepwise approach described above (1 and 2), we sought and analyzed genes associated with angiogenesis and endothelial cell proliferation at all time points. Authors’ information IEN: Resident at the Department of Digestive Surgery, University Hospital of Northern Norway, Tromsø, Norway. KEM: PhD, Department of Digestive Surgery, University Hospital of Northern Norway, Tromsø, Norway. JH: PhD, Institute of Clinical Medicine, Department of Molecular Medicine, Aarhus University Hospital, Aarhus, Denmark. LNC: PhD, Department of Genetics and Biotechnology, Faculty of Agricultural Sciences, University of Aarhus, Denmark.