Michael M Plichta
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Explore the profile of Michael M Plichta including associated specialties, affiliations and a list of published articles.
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82
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2429
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Recent Articles
21.
Morina N, Bryant R, Doolan E, Martin-Solch C, Plichta M, Pfaltz M, et al.
Depress Anxiety
. 2017 Sep;
35(1):58-64.
PMID: 28881455
Background: Perceived self-efficacy (SE) is an important factor underlying psychological well-being. Refugees suffer many experiences that can compromise SE. This study tested the impact of enhancing perceived SE on coping...
22.
Grimm O, Kaiser S, Plichta M, Tobler P
Neurosci Biobehav Rev
. 2017 Feb;
75:91-103.
PMID: 28143762
Obesity and weight gain are severe complications of mental illness, especially schizophrenia. They result from changes in lifestyle and nutrition, side effects of medication and other, less well-understood factors. Recent...
23.
Ventral striatum and amygdala activity as convergence sites for early adversity and conduct disorder
Holz N, Boecker-Schlier R, Buchmann A, Blomeyer D, Jennen-Steinmetz C, Baumeister S, et al.
Soc Cogn Affect Neurosci
. 2016 Oct;
12(2):261-272.
PMID: 27694318
Childhood family adversity (CFA) increases the risk for conduct disorder (CD) and has been associated with alterations in regions of affective processing like ventral striatum (VS) and amygdala. However, no...
24.
Pfaltz M, Wu G, Liu G, Tankersley A, Stilley A, Plichta M, et al.
J Behav Ther Exp Psychiatry
. 2016 Oct;
54:254-262.
PMID: 27693905
Background And Objectives: In nonclinical populations, adopting a third-person perspective as opposed to a first-person perspective while analyzing negative emotional experiences fosters understanding of these experiences and reduces negative emotional...
25.
Krause-Utz A, Cackowski S, Daffner S, Sobanski E, Plichta M, Bohus M, et al.
Psychol Med
. 2016 Aug;
46(15):3137-3149.
PMID: 27572473
Background: Impulsivity is a core feature of borderline personality disorder (BPD) and attention deficit hyperactivity disorder (ADHD). In BPD, impulsive behavior primarily occurs under acute stress; impulse control deficits under...
26.
Boecker-Schlier R, Holz N, Buchmann A, Blomeyer D, Plichta M, Jennen-Steinmetz C, et al.
Neuroimage
. 2016 Feb;
132:556-570.
PMID: 26879624
Background: Accumulating evidence suggests that altered dopamine transmission may increase the risk of mental disorders such as ADHD, schizophrenia or depression, possibly mediated by reward system dysfunction. This study aimed...
27.
Holz N, Boecker R, Jennen-Steinmetz C, Buchmann A, Blomeyer D, Baumeister S, et al.
Soc Cogn Affect Neurosci
. 2016 Jan;
11(5):813-20.
PMID: 26743466
Stress exposure has been linked to increased rates of depression and anxiety in adults, particularly in females, and has been associated with maladaptive changes in the anterior cingulate cortex (ACC),...
28.
A statistical approach for segregating cognitive task stages from multivariate fMRI BOLD time series
Demanuele C, Bahner F, Plichta M, Kirsch P, Tost H, Meyer-Lindenberg A, et al.
Front Hum Neurosci
. 2015 Nov;
9:537.
PMID: 26557064
Multivariate pattern analysis can reveal new information from neuroimaging data to illuminate human cognition and its disturbances. Here, we develop a methodological approach, based on multivariate statistical/machine learning and time...
29.
Plichta M, Scheres A
J Am Acad Child Adolesc Psychiatry
. 2015 Jul;
54(8):685-6.
PMID: 26210338
No abstract available.
30.
Grimm O, Pohlack S, Cacciaglia R, Winkelmann T, Plichta M, Demirakca T, et al.
J Neurosci Methods
. 2015 Jun;
253:254-61.
PMID: 26057114
Automated segmentation of the amygdala and the hippocampus is of interest for research looking at large datasets where manual segmentation of T1-weighted magnetic resonance tomography images is less feasible for...