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1.
Braz. j. med. biol. res ; 47(7): 576-583, 07/2014. tab, graf
Article in English | LILACS | ID: lil-712969

ABSTRACT

Affective states influence subsequent attention allocation. We evaluated emotional negativity bias modulation by reappraisal in patients with generalized anxiety disorder (GAD) relative to normal controls. Event-related potential (ERP) recordings were obtained, and changes in P200 and P300 amplitudes in response to negative or neutral words were noted after decreasing negative emotion or establishing a neutral condition. We found that in GAD patients only, the mean P200 amplitude after negative word presentation was much higher than after the presentation of neutral words. In normal controls, after downregulation of negative emotion, the mean P300 amplitude in response to negative words was much lower than after neutral words, and this was significant in both the left and right regions. In GAD patients, the negative bias remained prominent and was not affected by reappraisal at the early stage. Reappraisal was observed to have a lateralized effect at the late stage.


Subject(s)
Adult , Female , Humans , Male , Anxiety Disorders/pathology , Attention/physiology , Emotions/physiology , Evoked Potentials/physiology , Behavior Control/methods , Case-Control Studies , Down-Regulation , Manifest Anxiety Scale , Photic Stimulation , Reaction Time/physiology
2.
Indian J Med Microbiol ; 2014 Jan- Mar ; 32 (1): 95-96
Article in English | IMSEAR | ID: sea-156865
3.
Genet. mol. res. (Online) ; 6(3): 522-533, 2007. ilus, tab, graf
Article in English | LILACS | ID: lil-498919

ABSTRACT

The evolutionary tree reconstruction algorithm called SEMPHY using structural expectation maximization (SEM) is an efficient approach but has local optimality problem. To improve SEMPHY, a new algorithm named HSEMPHY based on the homotopy continuation principle is proposed in the present study for reconstructing evolutionary trees. The HSEMPHY algorithm computes the condition probability of hidden variables in the structural through maximum entropy principle. It can reduce the influence of the initial value of the final resolution by simulating the process of the homotopy principle and by introducing the homotopy parameter â. HSEMPHY is tested on real datasets and simulated dataset to compare with SEMPHY and the two most popular reconstruction approaches PHYML and RAXML. Experimental results show that HSEMPHY is at least as good as PHYML and RAXML and is very robust to poor starting trees.


Subject(s)
Algorithms , Computational Biology , Computer Simulation , Models, Genetic , Models, Statistical , Software , Bayes Theorem , Evolution, Molecular , Likelihood Functions , Models, Theoretical , Pattern Recognition, Automated , Phylogeny , Probability
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