353 research outputs found

    Personality variables that discriminate pseudoseizures patients and epileptic patients used in the 16 PF

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    This project was designed to study the effect of certain personality factors on pseudoseizure patients. It was hypothesized that Factors C and O in the 16 Personality Questionnaire could serve as predictor variables for the criterion variable, positive diagnosis of pseudoseizure versus true epileptic seizures. It was also hypothesized that these two groups, pseudoseizure versus epileptic seizure, would differ significantly on a test titled the Sickness Impact Profile. The two scales in this test, psychosocial and physical, were examined. Two discriminant analyses were performed with these two tests being the predictor variables and group membership being the criterion variable. Non-significant results indicated no support for these two hypotheses. Difficulties with rEliaoility of the 16 PF Questionnaire and the small sample size may have contributed to the non-significant results

    MFA11 (MFA 2011)

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    Catalogue of a culminating student exhibition held at the Mildred Lane Kemper Art Museum, May 6-Aug. 1, 2011. Content includes Introduction / Buzz Spector -- Patricia Olynyk -- Marshall N. Klimasewiski -- John Talbott Allen -- Meghan Bean -- Shira Berkowitz / Maggie Stanley Majors -- Darrick Byers, Bryce Olen Robinson -- Jisun Choi -- Zlatko Ćosić -- James R. Daniels -- Kara Daving -- Andrea Degener -- Kristin Fleischmann / Randi Shapiro -- William Frank / Lawrence Ypil -- Nicholas Kania -- Katherine McCullough -- Jordan McGirk / Aditi Machado -- Zachary Miller -- Esther Murphy / Maggie Stanley Majors -- Kathryn Neale -- Christopher Ottinger / Melissa Olson -- Maia Palmer -- Nicole Petrescu / Melissa Olson -- Lauren Pressler / Randi Shapiro -- Whitney Sage / Aliya A. Reich -- Donna Smith.https://openscholarship.wustl.edu/books/1005/thumbnail.jp

    Children must be protected from the tobacco industry's marketing tactics.

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    The genetic architecture of the human cerebral cortex

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    The cerebral cortex underlies our complex cognitive capabilities, yet little is known about the specific genetic loci that influence human cortical structure. To identify genetic variants that affect cortical structure, we conducted a genome-wide association meta-analysis of brain magnetic resonance imaging data from 51,665 individuals. We analyzed the surface area and average thickness of the whole cortex and 34 regions with known functional specializations. We identified 199 significant loci and found significant enrichment for loci influencing total surface area within regulatory elements that are active during prenatal cortical development, supporting the radial unit hypothesis. Loci that affect regional surface area cluster near genes in Wnt signaling pathways, which influence progenitor expansion and areal identity. Variation in cortical structure is genetically correlated with cognitive function, Parkinson's disease, insomnia, depression, neuroticism, and attention deficit hyperactivity disorder

    Conversion Discriminative Analysis on Mild Cognitive Impairment Using Multiple Cortical Features from MR Images

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    Neuroimaging measurements derived from magnetic resonance imaging provide important information required for detecting changes related to the progression of mild cognitive impairment (MCI). Cortical features and changes play a crucial role in revealing unique anatomical patterns of brain regions, and further differentiate MCI patients from normal states. Four cortical features, namely, gray matter volume, cortical thickness, surface area, and mean curvature, were explored for discriminative analysis among three groups including the stable MCI (sMCI), the converted MCI (cMCI), and the normal control (NC) groups. In this study, 158 subjects (72 NC, 46 sMCI, and 40 cMCI) were selected from the Alzheimer's Disease Neuroimaging Initiative. A sparse-constrained regression model based on the l2-1-norm was introduced to reduce the feature dimensionality and retrieve essential features for the discrimination of the three groups by using a support vector machine (SVM). An optimized strategy of feature addition based on the weight of each feature was adopted for the SVM classifier in order to achieve the best classification performance. The baseline cortical features combined with the longitudinal measurements for 2 years of follow-up data yielded prominent classification results. In particular, the cortical thickness produced a classification with 98.84% accuracy, 97.5% sensitivity, and 100% specificity for the sMCI–cMCI comparison; 92.37% accuracy, 84.78% sensitivity, and 97.22% specificity for the cMCI–NC comparison; and 93.75% accuracy, 92.5% sensitivity, and 94.44% specificity for the sMCI–NC comparison. The best performances obtained by the SVM classifier using the essential features were 5–40% more than those using all of the retained features. The feasibility of the cortical features for the recognition of anatomical patterns was certified; thus, the proposed method has the potential to improve the clinical diagnosis of sub-types of MCI and predict the risk of its conversion to Alzheimer's disease
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