\n\nMethods: We used registry data derived from the University of California Davis Health System’s electronic medical record system to identify patients with diabetes mellitus from a network of 13 primary care clinics in the greater Sacramento area. This information was converted to a database www.selleckchem.com/products/bromosporine.html file for use in the GIS software. Geocoding was performed and after excluding those who had unknown home addresses we matched 8528 unique patient
records with their respective home addresses.\n\nSocioeconomic and demographic data were obtained from the Geolytics, Inc. (East Brunswick, NJ), a provider of US Census Bureau data, with 2008 estimates and projections. Patient, socioeconomic, and demographic data were then joined to a single database. We conducted regression analysis assessing A1c level based on each patient’s buy Quisinostat demographic and laboratory characteristics and their neighborhood
characteristics (socioeconomic status [SES] quintile). Similar analysis was done for low-density lipoprotein cholesterol.\n\nResults: After excluding ineligible patients, the data from 7288 patients were analyzed. The most notable findings were as follows: There was, there was found an association between neighborhood SES and A1c. SES was not associated with low-density lipoprotein control.\n\nConclusion: GIS methodology can assist primary care physicians and provide guidance for disease management programs. It can also help health systems in their mission to improve the health of a community. Our analysis found that neighborhood SES was a barrier to optimal glucose control but not to lipid control. This research provides an example of a useful application of GIS analyses applied to large data sets now available in electronic medical records. (J Am Board Fam Med 2010;23:88-96.)”
“Self-aligned ZnO nanorods (NRs) were grown on n-Si(100) substrate by RF sputtering techniques. The NRs are uniformly grown on 2-inch wafer along [0001] direction. Single-crystalline wurtzite structure of ZnO NRs was confirmed by X-ray diffraction. The average diameter, height, and density of NRs are found 48 nm, 750 nm, and
1.26 x 10(10) cm(-2), respectively. MI-503 solubility dmso The current-voltages (I-V) characteristics of ZnO NRs/Si heterojunction (HJ) were studied in the temperature range of 120-300 K and it shows a rectifying behavior. Barrier height (phi(B)) and ideality factor (eta) were estimated from thermionic emission model and found to be highly temperature dependent in nature. Richardson constant (A*) was evaluated using Richardson plot of ln(I-o/T-2) versus q/kT plot by linear fitting in two temperature range 120-180K and 210-300 K. Large deviation in Richardson constant from its theoretical value of n-Si indicates the presence of barrier inhomogeneities at HJ. Double Gaussian distribution of barrier height with thermionic equation gives mean barrier heights of 0.55 +/- 0.01 eV and 0.86 +/- 0.