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13 - Concepts and Principles of Clinical Functional Magnetic Resonance Imaging

from Part III - Experimental and Biological Approaches

Published online by Cambridge University Press:  23 March 2020

Aidan G. C. Wright
Affiliation:
University of Pittsburgh
Michael N. Hallquist
Affiliation:
Pennsylvania State University
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Summary

Fueled by rapid methodological and analytic advances, functional magnetic resonance imaging (fMRI) has become the dominant method to characterize the relationship between brain function, the environment, and symptoms of psychiatric illness. The widespread adoption of this in vivo imaging approach has allowed for the study of brain systems that underlie symptom expression, treatment response, and risk for illness onset. Yet a host of approaches exist for the collection and analysis of fMRI data, and researchers often struggle to select appropriate study designs and analytic methods. Here we take a critical look at how recent advances in fMRI methods can inform our understanding of brain functions in mental illness. The benefits and limitations of different experimental approaches, from task-evoked fMRI to resting-state designs are described, and how these data provide complementary perspectives on the neurobiological basis of psychiatric illness. Established and cutting-edge analytic techniques for fMRI data are covered. Finally, some of the constraints and limitations on the interpretation of fMRI analyses are reviewed, highlighting common pitfalls to avoid, including issues pertaining to assumptions of mechanistic specificity, causality, diagnostic and symptom specificity, as well as controversial inferential strategies utilized by much of the field.

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Publisher: Cambridge University Press
Print publication year: 2020

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