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0%, and the false-negative-rate was 0.015%. Similar results were found even when only CGM samples below 70 were considered. The true-positive-hyperglycemia-prediction-rate was 61%. Conclusions State-of-the-art SML tools are effective in predicting the glucose level values of patients with type-1diabetes and notifying these patients of future hypoglycemic and hyperglycemic events, thus improving glycemic control. The algorithm can be used to improve the calculation of the basal insulin rate and bolus insulin, and suitable for a closed loop "artificial pancreas" system. The algorithm provides a personalized medical solution that can successfully identify the best-fit method for each patient. This article is protected by copyright. All rights reserved.Aims to build a tool to assess the management of inpatients with diabetes mellitus and to investigate its relationship, if any, with clinical outcomes. Materials and methods 678 patients from different settings, Internal Medicine (IMU, n = 255), General Surgery (GSU, n = 230) and Intensive Care (ICU, n = 193) Units, were enrolled. A work-flow of clinical care of diabetes was created according to guidelines. The workflow was divided in 5 different domains 1) initial assessment, 2) glucose monitoring, 3) medical therapy, 4) consultancies, 5) discharge. Each domain was assessed by a performance score (PS), computed as the sum of the scores achieved in a set of indicators of clinical appropriateness, management and patient empowerment. Appropriate glucose goals were included as intermediate phenotypes. Clinical outcomes included hypoglycemia, survival rate and clinical conditions at discharge. Results the total PS and those of initial assessment and glucose monitoring were significantly lower in GSU respect to IMU and ICU (P less then 0.0001). The glucose monitoring PS was associated with lower risk of hypoglycemia (OR 0.55; P less then 0.0001), whereas both the PSs of glucose monitoring and medical therapy resulted associated with higher in-hospital survival only in IMU ward (OR = 6.67 P = 0.001 and OR = 2.38 P = 0.03, respectively). Instrumental variable analysis with the aid of PS of glucose monitoring showed that hypoglycemia may play a causal role in in-hospital mortality (P = 0.04). Conclusions the quality of in-hospital care of diabetes may affect patient outcomes, including glucose control and the risk of hypoglycaemia, and through the latter it may influence the risk of in-hospital mortality. This article is protected by copyright. Selleckchem Veliparib All rights reserved.Landscape genomics studies focus on identifying candidate genes under selection via spatial variation in abiotic environmental variables, but rarely by biotic factors (i.e., disease). The Tasmanian devil (Sarcophilus harrisii) is found only on the environmentally heterogeneous island of Tasmania and is threatened with extinction by a transmissible cancer, devil facial tumor disease (DFTD). Devils persist in regions of long-term infection despite epidemiological model predictions of species' extinction, suggesting possible adaptation to DFTD. Here, we test the extent to which spatial variation and genetic diversity are associated with the abiotic environment (i.e., climatic variables, elevation, vegetation cover) and/or DFTD. We employ genetic-environment association analyses using 6,886 SNPs from 3,287 individuals sampled pre- and post-disease arrival across the devil's geographic range. Pre-disease, we find significant correlations of allele frequencies with environmental variables, including 365 unique loci linked to 71 genes, suggesting local adaptation to abiotic environment. The majority of candidate loci detected pre-DFTD are not detected post-DFTD arrival. Several post-DFTD candidate loci are associated with disease prevalence and were in linkage disequilibrium with genes involved in tumor suppression and immune response. Loss of apparent signal of abiotic local adaptation post-disease suggests swamping by strong selection resulting from the rapid onset of DFTD. This article is protected by copyright. All rights reserved.With ageing comes an increased risk of poor health and social isolation, particularly in poorer populations. Older people are under-represented in research and as a result interventions may not take account of their context or barriers to participation. In co-creative work, future service users work with professionals on an equal basis to design, develop and produce a service or intervention. Our objectives were to (a) undertake a co-creation study with older people living in a northern city in the United Kingdom, (b) explore maintenance of health and well-being in older age, (c) explore the application of co-creation with an older community population and (d) evaluate the process and inform future work. The study was conducted during 2017 by a project team of 10 lay community dwelling older people and four university researchers. Findings demonstrate that state of mind and of health were key to well-being in older age. Feeling safe, comfortable and pain free were important along with being able to adapt to change, have choice and a sense of personal freedom. Social connectedness was seen as the keystone to support healthy behaviours. Rather than developing new interventions, there was a perceived need to connect people with existing resources and provide a human 'bridge' to address barriers to accessing these. In conclusion, the co-creation process proved productive, even when undertaken on a small scale. The scope of the project needs to be realistic, to use diverse methods of recruitment and skilled facilitators, and to prepare well in terms of accessibility, simple systems and appropriate information provision.Immunofluorescence microscopy is an essential tool for tissue-based research, yet data reporting is almost always qualitative. Quantification of images, at the per-cell level, enables "flow cytometry-type" analyses with intact locational data but achieving this is complex. Gastrointestinal tissue, for example, is highly diverse from mixed-cell epithelial layers through to discrete lymphoid patches. Moreover, different species (e.g., rat, mouse, and humans) and tissue preparations (paraffin/frozen) are all commonly studied. Here, using field-relevant examples, we develop open, user-friendly methodology that can encompass these variables to provide quantitative tissue microscopy for the field. Antibody-independent cell labeling approaches, compatible across preparation types and species, were optimized. Per-cell data were extracted from routine confocal micrographs, with semantic machine learning employed to tackle densely packed lymphoid tissues. Data analysis was achieved by flow cytometry-type analyses alongside visualization and statistical definition of cell locations, interactions and established microenvironments.