7 ± 0.1%) within 24 hours (p < 0.05) and rVEGF164b inhibited VEGF-A-induced proliferation. TEER was significantly decreased by VEGF-A (81.7 ± 6.2% of control). Treatment with rVEGF164b at 50 ng/mL transiently reduced MVEC barrier (p < 0.05) at 30 minutes post-treatment (87.9 ± 1.7% of control TEER), and returned to control levels by 40 minutes post-treatment. Treatment with rVEGF164b prevented barrier changes by subsequent exposure to VEGF-A. Treatment of MVECS with VEGF-A reorganized F-actin buy MK-2206 and ZO-1, which was attenuated by rVEGF164b. Conclusions: VEGF-A may dysregulate endothelial barrier through junctional cytoskeleton
processes, which can be attenuated by rVEGF164b. The VEGF-A stimulated MVEC proliferation, barrier dysregulation, and cytoskeletal www.selleckchem.com/products/PLX-4720.html rearrangement. However, rVEGF164b blocks these effects, therefore it
may be useful for regulation studies of VEGF-A/VEGF-R signaling in many different models. “
“Please cite this paper as: Murray, Feng, Moore, Allen, Taylor, and Herrick (2011). Preliminary Clinical Evaluation of Semi-automated Nailfold Capillaroscopy in the Assessment of Patients with Raynaud’s Phenomenon. Microcirculation 18(6), 440–447. Objectives: Nailfold capillaroscopy is well established in screening patients with Raynaud’s phenomenon for underlying SSc-spectrum disorders, by identifying abnormal capillaries. Our aim was to compare semi-automatic feature measurement from newly developed software with manual measurements, and determine the degree to which semi-automated data allows disease group classification. Methods: Images from 46 healthy 4��8C controls, 21 patients with PRP and 49 with SSc were preprocessed, and semi-automated
measurements of intercapillary distance and capillary width, tortuosity, and derangement were performed. These were compared with manual measurements. Features were used to classify images into the three subject groups. Results: Comparison of automatic and manual measures for distance, width, tortuosity, and derangement had correlations of r = 0.583, 0.624, 0.495 (p < 0.001), and 0.195 (p = 0.040). For automatic measures, correlations were found between width and intercapillary distance, r = 0.374, and width and tortuosity, r = 0.573 (p < 0.001). Significant differences between subject groups were found for all features (p < 0.002). Overall, 75% of images correctly matched clinical classification using semi-automated features, compared with 71% for manual measurements. Conclusions: Semi-automatic and manual measurements of distance, width, and tortuosity showed moderate (but statistically significant) correlations. Correlation for derangement was weaker. Semi-automatic measurements are faster than manual measurements. Semi-automatic parameters identify differences between groups, and are as good as manual measurements for between-group classification.