39 research outputs found

    Adsorption of phenol from aqueous solutions onto natural and thermallymodified kaolinitic materials

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    Phenol removal from aqueous solutions by kaolinite (KAO) and metakaolinite (MET) have been carried out at 25 °C in batch mode to evaluate the effects of parameters such as pH, initial phenol concentration and adsorbent mass on the extent of adsorption. It was observed that phenol uptake increased with increases in adsorbent concentration at maximum pH of 2 and equilibrium time of 40 minutes for both KAO and MET. Results showed that pseudo second-order kinetic model best describes the chemisorption of phenol from aqueous solutions onto the two clay samples. The low correlation coefficient of the intraparticle diffusion model proves that pore diffusion plays little or no significant role in the adsorption of phenol onto KAO and MET. Also, from adsorption isotherm analysis, only the Temkin equation modeled best the adsorption process of phenol from aqueous solutions onto MET while the Freundlich and Temkin models best described the adsorption of phenol onto KAO. Maximum adsorption capacity for KAO and MET were 1.71 and 5.82 mg/g respectively through Langmuir model equation. It can be inferred from experimental results and modeled parameters that clay samples are not very effective for the removal of phenol from aqueous solution.Keywords: Environment, clays, organic pollutants, Kinetic models, Isotherm models

    Child maltreatment and NR3C1 exon 1F methylation, link with deregulated hypothalamus-pituitary-adrenal axis and psychopathology: A systematic review

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    Background Epigenetics offers one promising method for assessing the psychobiological response to stressful experiences during childhood. In particular, deoxyribonucleic acid (DNA) methylation has been associated with an altered hypothalamus–pituitary–adrenal (HPA) axis and the onset of mental disorders. Equally, there are promising leads regarding the association between the methylation of the glucocorticoid receptor gene (NR3C1-1F) and child maltreatment and its link with HPA axis and psychopathology. Objective The current study aimed to assess the evidence of a link among child maltreatment, NR3C1-1F methylation, HPA axis deregulation, and symptoms of psychopathology. Methods We followed the Prisma guidelines and identified 11 articles that met our inclusion criteria. Results We found that eight studies (72.72%) reported increased NR3C1-1F methylation associated with child maltreatment, specifically physical abuse, emotional abuse, sexual abuse, neglect, and exposure to intimate partner violence, while three studies (27.27%) found no significant association. Furthermore, a minority of studies (36.36%) provided additional measures of symptoms of psychopathology or cortisol in order to examine the link among NR3C1-1F methylation, HPA axis deregulation, and psychopathology in a situation of child maltreatment. These results suggest that NR3C1-1F hypermethylation is positively associated with higher HPA axis activity, i.e. increased production of cortisol, as well as symptoms of psychopathology, including emotional lability-negativity, externalizing behavior symptoms, and depressive symptoms. Conclusion NR3C1-1F methylation could be one mechanism that links altered HPA axis activity with the development of psychopathology

    Assessment of the 10-year risk of cardiovascular events among a group of Sub-Saharan African post-menopausal women

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    Background: Post-menopausal women may be at particular risk of developing cardiovascu­lar disease due to metabolic changes occurring at menopause. The present study aimed to assess the 10-year cardiovascular risk (CVR) among a group of post-menopausal women and to deter­mine associated factors. Methods: This was a cross-sectional study conducted among post-menopausal women in YaoundĂ©, Cameroon. CVR was calculated using the Framingham risk score. Results: We enrolled 108 women, their ages ranging from 45 to 80 years, with a mean of 56.4 ± ± 6.9 years. CVR ranged between 1.2% and greater than 30% with a mean of 13.4 ± 8.7%. Forty-three (39.8%) participants had a low CVR (< 10%), 39 (36.1%) women had a moderate CVR (10-20%), and 21 (24.1%) women had a high CVR (> 20%). Low-density lipoproteins cholesterol (LDL-C; b = 3.27, p = 0.004), fasting plasma glucose (b = 5.40, p = 0.015), and diastolic blood pressure (DBP; b = 3.49, p < 0.0001) were independently associated with CVR. Women not married (i.e. single, divorced or widowed) (adjusted odds ratio [aOR] 4.66, p = 0.002), those with high titers of LDL-C (≄ 1.6 g/L; aOR 5.07, p = 0.001), and those with elevated DBP (≄ 90 mm Hg; aOR 8.10, p < 0.0001) presented an increased likelihood to be at an advanced level of CVR. Conclusions: A significant number of post-menopausal women are at considerable risk of cardiovascular events in our setting. Therefore, they should be educated to adopt healthy life­styles for substantial reduction in their CVR

    Connectome smoothing via low-rank approximations

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    In brain imaging and connectomics, the study of brain networks, estimating the mean of a population of graphs based on a sample is a core problem. Often, this problem is especially difficult because the sample or cohort size is relatively small, sometimes even a single subject, while the number of nodes can be very large with noisy estimates of connectivity. While the element-wise sample mean of the adjacency matrices is a common approach, this method does not exploit underlying structural properties of the graphs. We propose using a low-rank method which incorporates dimension selection and diagonal augmentation to smooth the estimates and improve performance over the naĂ€ve methodology for small sample sizes. Theoretical results for the stochastic blockmodel show that this method offers major improvements when there are many vertices. Similarly, we demonstrate that the low-rank methods outperform the standard sample mean for a variety of independent edge distributions as well as human connectome data derived from magnetic resonance imaging, especially when sample sizes are small. Moreover, the low-rank methods yield “eigen-connectomes”, which correlate with the lobe-structure of the human brain and superstructures of the mouse brain. These results indicate that low-rank methods are an important part of the toolbox for researchers studying populations of graphs in general, and statistical connectomics in particular

    Connectome smoothing via low-rank approximations

    No full text
    In statistical connectomics, the quantitative study of brain networks, estimating the mean of a population of graphs based on a sample is a core problem. Often, this problem is especially difficult because the sample or cohort size is relatively small, sometimes even a single subject. While using the element-wise sample mean of the adjacency matrices is a common approach, this method does not exploit any underlying structural properties of the graphs. We propose using a low-rank method which incorporates tools for dimension selection and diagonal augmentation to smooth the estimates and improve performance over the naive methodology for small sample sizes. Theoretical results for the stochastic blockmodel show that this method offers major improvements when there are many vertices. Similarly, we demonstrate that the low-rank methods outperform the standard sample mean for a variety of independent edge distributions as well as human connectome data derived from magnetic resonance imaging, especially when sample sizes are small. Moreover, the low-rank methods yield "eigen-connectomes", which correlate with the lobe-structure of the human brain and superstructures of the mouse brain. These results indicate that low-rank methods are an important part of the tool box for researchers studying populations of graphs in general, and statistical connectomics in particular
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