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A Sensitive and Specific Neural Signature for Picture-Induced Negative Affect.


ABSTRACT: Neuroimaging has identified many correlates of emotion but has not yet yielded brain representations predictive of the intensity of emotional experiences in individuals. We used machine learning to identify a sensitive and specific signature of emotional responses to aversive images. This signature predicted the intensity of negative emotion in individual participants in cross validation (n =121) and test (n = 61) samples (high-low emotion = 93.5% accuracy). It was unresponsive to physical pain (emotion-pain = 92% discriminative accuracy), demonstrating that it is not a representation of generalized arousal or salience. The signature was comprised of mesoscale patterns spanning multiple cortical and subcortical systems, with no single system necessary or sufficient for predicting experience. Furthermore, it was not reducible to activity in traditional "emotion-related" regions (e.g., amygdala, insula) or resting-state networks (e.g., "salience," "default mode"). Overall, this work identifies differentiable neural components of negative emotion and pain, providing a basis for new, brain-based taxonomies of affective processes.

SUBMITTER: Chang LJ 

PROVIDER: S-EPMC4476709 | biostudies-literature | 2015 Jun

REPOSITORIES: biostudies-literature

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A Sensitive and Specific Neural Signature for Picture-Induced Negative Affect.

Chang Luke J LJ   Gianaros Peter J PJ   Manuck Stephen B SB   Krishnan Anjali A   Wager Tor D TD  

PLoS biology 20150622 6


Neuroimaging has identified many correlates of emotion but has not yet yielded brain representations predictive of the intensity of emotional experiences in individuals. We used machine learning to identify a sensitive and specific signature of emotional responses to aversive images. This signature predicted the intensity of negative emotion in individual participants in cross validation (n =121) and test (n = 61) samples (high-low emotion = 93.5% accuracy). It was unresponsive to physical pain  ...[more]

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