Roger E Beaty1, Mathias Benedek2, Scott Barry Kaufman3, Paul J Silvia1. 1. Department of Psychology, University of North Carolina at Greensboro, USA. 2. Department of Psychology, University of Graz, Austria. 3. The Imagination Institute, University of Pennsylvania, USA.
Abstract
The role of attention in creative cognition remains controversial. Neuroimaging studies have reported activation of brain regions linked to both cognitive control and spontaneous imaginative processes, raising questions about how these regions interact to support creative thought. Using functional magnetic resonance imaging (fMRI), we explored this question by examining dynamic interactions between brain regions during a divergent thinking task. Multivariate pattern analysis revealed a distributed network associated with divergent thinking, including several core hubs of the default (posterior cingulate) and executive (dorsolateral prefrontal cortex) networks. The resting-state network affiliation of these regions was confirmed using data from an independent sample of participants. Graph theory analysis assessed global efficiency of the divergent thinking network, and network efficiency was found to increase as a function of individual differences in divergent thinking ability. Moreover, temporal connectivity analysis revealed increased coupling between default and salience network regions (bilateral insula) at the beginning of the task, followed by increased coupling between default and executive network regions at later stages. Such dynamic coupling suggests that divergent thinking involves cooperation between brain networks linked to cognitive control and spontaneous thought, which may reflect focused internal attention and the top-down control of spontaneous cognition during creative idea production.
The role of attention in creative cognition remains controversial. Neuroimaging studies have reported activation of brain regions linked to both cognitive control and spontaneous imaginative processes, raising questions about how these regions interact to support creative thought. Using functional magnetic resonance imaging (fMRI), we explored this question by examining dynamic interactions between brain regions during a divergent thinking task. Multivariate pattern analysis revealed a distributed network associated with divergent thinking, including several core hubs of the default (posterior cingulate) and executive (dorsolateral prefrontal cortex) networks. The resting-state network affiliation of these regions was confirmed using data from an independent sample of participants. Graph theory analysis assessed global efficiency of the divergent thinking network, and network efficiency was found to increase as a function of individual differences in divergent thinking ability. Moreover, temporal connectivity analysis revealed increased coupling between default and salience network regions (bilateral insula) at the beginning of the task, followed by increased coupling between default and executive network regions at later stages. Such dynamic coupling suggests that divergent thinking involves cooperation between brain networks linked to cognitive control and spontaneous thought, which may reflect focused internal attention and the top-down control of spontaneous cognition during creative idea production.
Neuroscience has made substantial progress in demystifying how the brain generates novel and
useful ideas. Despite progress in the field, however, several fundamental questions remain. One
central question concerns the role of attention—whether creative thought involves more or
less cognitive control. Past research provides seemingly contradictory evidence, reporting
activation of brain regions associated with both cognitive control (e.g., dorsolateral prefrontal
cortex) and spontaneous imaginative processes (e.g., the precuneus; 1). Moreover, these regions
correspond to the core hubs of large-scale networks that typically act in opposition1. It therefore remains unclear whether their activation reflects isolated contributions or
increased cooperation among regions. We explored this question by examining whole-brain functional
connectivity during a divergent thinking task. A functional connectivity approach can reveal the
extent to which distributed brain regions interact to support complex cognitive processes, which may
shed further insight on the role of attention in creative cognition.
Large-Scale Networks and Creative Cognition
Research in cognitive neuroscience has increasingly focused on examining large-scale functional
networks23. Functional networks consist of spatially distributed brain regions that
show a correlated pattern of activity at rest and during cognitive tasks4. One of the
most widely studied networks is the default mode network (DMN), a set of midline and inferior
parietal regions that activate in the absence of most external task demands56. The
landmark discovery of the DMN has led to an explosion of interest in its role in attention and
cognition (for reviews, see 789). The DMN is associated with cognitive processes
that require internally-directed or self-generated thought, such as mind-wandering10,
future thinking11, perspective taking12, and mental simulation13. The apparent overlap between these processes and those hypothesized to support
imagination has fueled speculation that the DMN may be important for creativity1415161718.Recent theorizing on the role of the DMN in creativity has received support from neuroimaging
studies linking individual default regions to performance on creative thinking tasks. For example,
the precuneus—a core hub of the DMN19—has been implicated in both
structural20212223 and functional242526 imaging studies of
divergent thinking. Moreover, activation of the inferior parietal lobule (IPL), another core hub of
the DMN27, has also been reported in several neuroimaging studies of creativity28293031. For example, Benedek and colleagues29. found that generating
new ideas during a divergent thinking task (responses participants identified as novel during
functional imaging) was related to increased involvement of the left IPL, providing further support
for a role of default mode regions in creative cognition.Although the DMN and spontaneous thought appear to be important for creativity, past research
also points to a role of brain regions associated with cognitive control. Supporting evidence comes
from neuroimaging studies reporting activation within the lateral prefrontal cortex, a core hub of
the executive control network (ECN; 3, 33). The ECN is engaged during cognitive tasks that require
externally-directed attention, such as working memory32, relational integration33, response inhibition34, and task-set switching35. Regions
of the ECN have been implicated in several creative thought processes, including divergent
thinking36, artistic drawing37, and musical improvisation38. Together, such findings suggest that creativity also taps brain networks linked to the
top-down control of attention and cognition.The controversy surrounding the role of attention in creativity is also evident in behavioral
research on the cognitive basis of creative thought. Although early theories emphasized unconscious
and associative processes in creativity (e.g., 39), a growing
body of recent evidence points to a role of cognitive control mechanisms, such as working memory
capacity4041, fluid intelligence4243, verbal fluency44, and pre-potent response inhibition45. Such executive functions are
hypothesized to support creative thought by providing the attention control needed to manage complex
search processes and inhibit salient but irrelevant conceptual knowledge45464748.
The Present Research
A growing body of research suggests that creative cognition recruits brain regions associated
both cognitive control and spontaneous imaginative processes. Such work commonly implicates regions
within large-scale networks, including the ECN and the DMN. Despite their apparent cooperation,
evidence from resting-state and task-based research suggests that the DMN and ECN tend to act in
opposition—activation of one network typically corresponds to suppression of the other1. This antagonistic relationship is thought to reflect opposing modes of attention, with
ECN activity indicating focused external attention and DMN activity indicating spontaneous internal
attention2.We believe these findings may be an artifact of the measurement methods employed in cognitive
neuroscience, most of which use paradigms that require focused external attention. Indeed, when
attention is externally directed, such as viewing a visual stimulus, the dorsal attention network
and executive networks are coupled, and both networks are anticorrelated with activity of the
default mode network. Emerging evidence, however, suggests that the executive and default networks
actually cooperate whenever it is necessary to perform a task that requires extended evaluation
of internal information8. Under these contexts—including autobiographical
future planning, positive constructive daydreaming, keeping track of social information, and
evaluating creative ideas—the dorsal attention network and executive networks become
decoupled and the executive network couples with the default mode network173749505152. Recent research is also beginning to reveal the importance of
executive and default network interactions for the healthy development of cognitive control535455, self-regulation5657, emotion regulation5859,
and memory suppression60.To further understand the dynamic interplay between executive and default networks, we examined
the time-course of brain network connectivity during performance on a creative thinking task.
Participants completed an alternate-uses divergent thinking task and a control task during
functional magnetic resonance imaging (fMRI). Multivariate pattern analysis was used to assess
whole-brain connectivity associated with divergent thinking. Seed-based and temporal connectivity
analyses explored further connections between regions identified in the whole-brain analysis. The
present study thus sought to identify a whole-brain network associated with divergent thinking and
to explore other potential connections between regions identified in the whole-brain analysis.
Method
Participants
The original sample consisted of 28 young adults from the University of North Carolina at
Greensboro (UNCG). Participants received course credit or cash payment for their involvement in the
study. Three participants were excluded for excessive head movement (>3 mm), resulting in
a final sample of 25 (13 females; mean age: 21.04 years, age range: 18-30). All participants were
right-handed with normal or corrected-to-normal vision and no reported history of CNS-affecting
drugs or neurological disease. All participants provided written informed consent. The study was
performed in accordance with the guidelines and regulations of UNCG’s Institutional Review
Board, who approved the study methods.
Procedure
Participants completed two tasks in the scanner: an alternate uses divergent thinking task and an
object characteristics task. The alternate uses task required participants to generate creative uses
for everyday objects (e.g., a brick); the object characteristics task, our control task, required
participants to generate typical properties of everyday objects. These two tasks provide an optimal
contrast for isolating brain activity related to the creative manipulation of objects during
divergent thinking while controlling for activity related to the mental visualization of objects
(see also3061). Participants received thorough training on both tasks and completed
several practice trials prior to scanning. Prior to the fMRI experiment, they also competed a timed
divergent thinking task—alternate uses for a brick (2 minutes)—on a computer running
MediaLab v.2010.3. Responses were subsequently coded for creative quality by three trained raters
using the subjective scoring method.The task paradigm consisted of a jittered fixation cross (4-6 s), a cue indicating the upcoming
condition (“create” or “object”; 3 s), an idea generation
period presenting an object in text (e.g., “umbrella”; 12 s), and a response
period requiring a button press to indicate whether an idea was successfully generated
(1 = yes, 2 = no; 3 s). The purpose of the response
period was to ensure compliance and maintain active engagement with the task; all trials were
included in the subsequent analysis. A total of 46 trials were administered in an event-related
design. For each participant, experimental stimuli were randomly assigned to either condition
(alternate uses or object characteristics). Participants were encouraged to continue to generate
ideas until the end of the idea generation period.
MRI Data Acquisition and Preprocessing
Participants completed the tasks in a single fMRI run. Whole-brain imaging was performed on a 3T
Siemens Magnetom MRI system (Siemens Medical Systems, Erlangen, Germany) using a 16-channel head
coil. BOLD-sensitive T2*-weighted functional images were acquired using a single shot gradient-echo
EPI pulse sequence (TR = 2000 ms, TE = 30 ms, flip
angle = 78°, 32 axial slices,
3.5 × 3.5 × 4.0 mm, distance factor 0%,
FoV = 192 × 192 mm, interleaved slice ordering) and
corrected online for head motion. The first two volumes were discarded to allow for T1 equilibration
effects.Visual stimuli were presented using e-Prime and viewed through a mirror attached to the head
coil. Following functional imaging, a high resolution T1 scan was acquired for anatomic
normalization. Imaging data were slice-time corrected and realigned using the Statistical Parametric
Mapping (SPM) 8 package (Wellcome Institute of Cognitive Neurology, London). Functional volumes were
coregistered and resliced to a voxel size of 2mm3, normalized to the MNI template
brain (Montreal Neurological Institute), and smoothed with an 8 mm3 isotropic
Gaussian kernel.We assessed task-related functional connectivity using the CONN toolbox (http://www.nitrc.org/projects/conn; 63) in
MATLAB. For each participant, CONN implemented CompCor, a method for identifying principal
components associated with segmented white matter (WM) and cerebrospinal fluid (CSF; 62). These components were entered as confounds along with realignment
parameters in a first-level analysis. Because CompCor accounts for the effects of subject movement,
the global BOLD signal was not regressed.
Analytic Approach
Functional connectivity analysis was conducted in four steps. First, to identify brain regions
showing significantly greater functional connectivity during divergent thinking, we analyzed
whole-brain connectivity with multivariate pattern analysis (MVPA; 63).
Next, to determine the putative resting-state network affiliation of select regions identified in
the MVPA, we conducted resting-state functional connectivity analysis using an independent sample of
age-matched participants. Task-related functional connectivity analyses were then conducted with
these ROIs to further explore connectivity associated with divergent thinking. Finally, graph theory
methods were used to compute global efficiency of the whole-brain network of ROIs to explore whether
network efficiency was modulated by individual differences in divergent thinking ability (i.e.,
creativity ratings of responses generated during the alternate uses task completed outside of the
scanner).
Multivariate Pattern Analysis
MVPA assesses the entire multivariate pattern of pairwise connections between all voxels in the
brain63. First-level voxel-to-voxel covariance matrices were computed for each
participant and for both tasks, permitting second-level analyses that tested for differences in
whole-brain connectivity between conditions by means of a statistical F-test. In contrast to
standard univariate analysis, which considers the effects of each voxel cluster separately, MVPA
accounts for multivariate dependencies in the data. Thus, second-level statistical analysis yields a
multivariate pattern of voxel clusters showing connectivity differences between the two task
conditions (i.e., divergent thinking vs. object characteristics). But because MVPA is an omnibus
test, post-hoc analyses are needed to determine specific connectivity patterns in the data63. We therefore extracted regions of interest (ROI; 10 mm spheres) based on peak
activation clusters from the whole-brain analysis to explore further connections between these
regions during the task.
Resting-state Functional Connectivity Analysis
We conducted resting-state functional connectivity analysis with select ROIs using an independent
sample of age-matched participants (n = 42). Past research suggests that
subtle differences in ROI placement within a given brain region can affect the corresponding
resting-state networks64. This approach therefore allowed us to determine the
putative resting-state network affiliation of the ROIs. Structural and functional imaging data were
acquired using the same scanning parameters described above (see MRI Data Acquisition and
Preprocessing). For resting-state functional imaging, participants were asked to relax with their
eyes closed for five minutes. Following functional imaging, a high-resolution T1 scan was acquired
for anatomic normalization. Preprocessing steps also followed the same procedure as above, with the
exception of a conventional band-pass filter applied to the resting-state time series (i.e.,
0.008-0.09; 63).
Seed-to-Voxel and ROI-to-ROI Analyses
We then conducted a series of seed-to-voxel and ROI-to-ROI analyses with the task-based data to
assess pairwise correlations between the ROIs. For the seed-based analyses, we explored connectivity
between select ROIs and all other voxels in the brain. For the ROI-to-ROI analysis, we explored
dynamic changes in functional connectivity between ROIs across the task duration. The two task
conditions (divergent thinking and object characteristics) were divided into six 2 s
intervals, corresponding to the repetition time (TR) of 2 s and total task durations of
12 s. We then computed task contrasts for each of the 2 s task intervals (p
< .05 FDR corrected). Due to the temporal lag in the BOLD signal, the first time window was not
analyzed, resulting in five temporal windows for analysis (i.e., TRs 2-6).
Graph Theory Analysis
We explored whether activity of the whole-brain network of ROIs was modulated by individual
differences in divergent thinking ability using graph theory methods. For each participant, the CONN
toolbox computed global network efficiency—a graph theory measure that is increasingly used
to assess the integrative capacity of complex systems65. We focused on global
efficiency as it has been shown to be one of the most robust measures of brain network
integrity66. Global efficiency reflects effective information transfer or
“small-worldness”65 within a network of nodes (i.e., ROIs) and edges
(i.e., correlations or “paths” between nodes). It is mathematically expressed as the
inverse of the average shortest path length in a graph G to all other nodes in the graph. For
our purposes, global efficiency provided a marker of information flow within a brain network
associated with divergent thinking.Composite creativity scores were computed for each participant by averaging the subjective
ratings of the three raters for the divergent thinking task completed outside of the scanner (i.e.,
alternate uses for a brick). Inter-rater reliability for the three raters’ scores was good
(Cronbach’s alpha = .87). The global efficiency and divergent thinking composite scores were
standardized by z-score transformation. Finally, we computed the correlation between global network
efficiency and composite creativity scores. We hypothesized that network efficiency would be
positively correlated with individual differences in divergent thinking ability.For all second-level analyses, T-tests on Fisher’s Z-transformed correlations were used
to test for differences in functional connectivity between tasks. Results are reported when
significant at a voxelwise threshold of level of p < .001 uncorrected.
Seed-to-voxel analyses are reported at a cluster-level threshold of
p < .05 familywise error (FWE) corrected; ROI-to-ROI analyses are reported
when significant at a threshold of p < .05 false discovery rate (FDR)
corrected63.
Results
The MVPA task contrast (alternate uses > object characteristics) revealed a
distributed network of voxel clusters associated with divergent thinking (see Table
1 and Fig. 1). The networkconsisted of several frontal, temporal, and
parietal regions, including regions within the default network: the left precuneus, right PCC, and
bilateral IPL. The network also included the right DLPFC, a core region of the ECN, as well as the
right ACC and bilateral insula, core regions of the salience network2. In addition,
the network included several significant clusters within the temporal lobes (e.g., bilateral middle
temporal gyri; MTG), regions associated with semantic and episodic memory retrieval. Taken together,
the whole-brain MVPA identified a distributed network of brain regions associated with divergent
thinking, including several core regions of the default, executive, and salience networks.
Table 1
Peak activation clusters resulting from the whole-brain MVPA task contrast (alternate
uses > object characteristics). Lobes are shown in italics
Multivariate pattern analysis for the whole-brain task contrast (alternate uses > object
characteristics).
We then explored resting-state functional connectivity with select regions of the DMN (left
precuneus and right PCC) and ECN (right DLPFC) associated with divergent thinking in the MVPA. This
analysis was conducted using data from an independent sample of participants
(n = 42). In line with previous resting-state research, we expected that the
PCC and precuneus seeds would show positive correlation with other default network regions (e.g.,
MPFC) and negative correlation with executive network regions (e.g., DLPFC); likewise, we expected
that the DLPFC seed would show positive correlation with other executive network regions and
negative correlation with default regions.Our first set of analyses focused on the precuneus and PCC seeds. As expected, both seeds showed
positive connectivity with other regions of the DMN, including MPFC, PCC, and bilateral IPL (see
Fig. 2). The PCC and precuneus seeds also showed negative connectivity with
regions of the ECN, including bilateral DLPFC and posterior parietal cortex; these regions also
showed negative connectivity with salience network regions (bilateral insula and the ACC). Next, we
examined resting-state connectivity with the right DLPFC seed. As expected, the right DLPFC showed
positive connectivity with other ECN regions, including the left DLPFC and bilateral posterior
parietal cortex, and negative connectivity with DMN regions, including MPFC, PCC, and bilateral IPL
(see Fig. 2). The DLPFC seed also showed positive connectivity with regions of
the salience network (bilateral insula and ACC), consistent with previous resting-state
research67. The resting-state analysis thus confirmed the hypothesized resting-state
network affiliations of the default and executive network ROIs.
Figure 2
Resting-state functional connectivity (RSFC) maps with select default and executive network
ROIs.
Seeds were defined based on the whole-brain task contrast (alternate
uses > object characteristics) and applied to an independent sample of
participants (n = 42). Warm colors (red and yellow) reflect positive RSFC and
cool colors (blue and green) reflect negative RSFC.
Seed-to-Voxel Analysis
Our next step was to analyze task-related connectivity associated with divergent thinking
(alternate uses > object characteristics). The first seed-to-voxel analysis
assessed connectivity between the precuneus seed and all other voxels
(p < .05, FWE corrected). Results revealed increased functional
connectivity between the precuneus and seven voxel clusters during divergent thinking, including
regions within the executive network (right MFG; BA 9/10) and salience network (bilateral insula and
ACC), as well as the left MTG and left pre-motor cortex (PMC; see Table 2
and Fig. 3). Next, we assessed connectivity between the right PCC and the rest
of the brain. Similar to the precuneus seed, the PCC seed showed increased coupling with regions of
the executive network (right DLPFC) and salience network (bilateral insula), as well as the left MTG
and left PMC. Novel to this analysis, the PCC showed connectivity with a cluster of voxels in left
rostrolateral prefrontal cortex (RLPFC; BA 10) and posterior parietal cortex (BA 31; see Table 2 and Fig. 4). These results extend the whole-brain
MVPA by revealing direct functional connections between the core hubs of the DMN and ECN during
divergent thinking.
Table 2
Seed-to-voxel results with the precuneus and PCC specified as seeds (shown in
italics).
We then assessed task-related connectivity with the right DLPFC seed. In line with the above
analyses, the right DLPFC showed increased connectivity with regions of the DMN, including the right
IPL (BA 40), left PCC, and right precuneus (see Fig. 5); we also found
connectivity between the right DLPFC seed and bilateral RLPFC (BA 10). Finally, we assessed
connectivity with another region identified in the whole-brain analysis—left IFG (BA
45)—to compare task-related connectivity with results from a recent resting-state study
showing increased coupling between this region and the DMN68. Results revealed
increased connectivity between the left IFG and a cluster of voxels in the left IPL (BA 39), a core
DMN region.
Figure 5
Functional connectivity maps for the general task contrast (alternate
uses > object characteristics) with the right DLPFC specified as a seed.
We then assessed dynamic changes in functional connectivity across the duration of the task. All
regions from the whole-brain MVPA were specified as ROIs (i.e., 10 mm spheres; see Table 1). The PCC, precuneus, and DLPPFC were specified as “source”
ROIs, and the remaining ROIs were specified as “targets”. The first analysis
explored temporal connections between the PCC source ROI and the other targets. During the first
time window, the PCC showed increased functional connectivity with bilateral insula (see Fig. 6). The PCC remained connected to the bilateral insula during the second
window, and showed further connectivity with the right DLPFC, ACC, and bilateral MTG, among other
regions. This pattern of connectivity was sustained during the third window, with additional
connectivity found with the left RLPFC and the left AG. The same pattern emerged during the next
time window, with the exception that the PCC was no longer connected to bilateral insula; no
significant connectivity differences were found during the final time window. The PCC thus showed
early coupling with salience network regions (bilateral insula) and later coupling with an executive
network region (right DLPFC).
Figure 6
ROI-to-ROI temporal connectivity for the general task contrast (alternate
uses > object characteristics) with the right PCC specified as the source ROI
(black sphere) and all other ROIs specified as targets (red spheres).
Regions labeled in black on the right show positive connectivity with the source ROI; regions
labeled in gray were not significant.
We then assessed temporal connections between the precuneus source ROI and the targets (see Fig. 7). During the first time window, the precuneus showed increased functional
connectivity with the left insula, left MTG, and right PMC (see Fig. 7).
During the second window, the precuneus showed sustained coupling with these regions and additional
coupling with the right insula and left temporal pole (i.e., STG). This pattern persisted throughout
the third time window, with additional connectivity found with the right MTG and left RLPFC. During
the fifth time window, the precuneus showed connectivity with bilateral MTG and the left RLPFC; no
significant connectivity differences were found during the final time window.
Figure 7
ROI-to-ROI temporal connectivity for the general task contrast (alternate
uses > object characteristics) with the left precuneus specified as the source
ROI (black sphere) and all other ROIs specified as targets (red spheres).
Regions labeled in black on the right show positive connectivity with the source ROI; regions
labeled in gray were not significant.
We then explored temporal connectivity with the right DLPFC target ROI. During the first two time
windows (TRs 2-3), the RDLPFC did not show any significant connectivity differences with the target
ROIs. However, during the third time window, the DLPFC showed increased connectivity with regions
within the DMN, including the right PCC and right IPL, in addition to left RLPFC, left temporal
pole, and right PMC (see Fig. 8). The DLPFC showed sustained coupling with the
right IPL during the fourth time window, and no significant differences emerged during the final
time window. Taken together, results from the temporal connectivity analyses revealed dynamic
coupling between core regions of the default, salience, and executive networks at different stages
of divergent thinking.
Figure 8
ROI-to-ROI temporal connectivity for general task contrast (alternate
uses > object characteristics) with the right DLPFC specified as the source ROI
(black sphere) and all other ROIs specified as targets (red spheres).
Regions labeled in black on the right show positive connectivity with the source ROI; regions
labeled in gray were not significant.
Graph Theory Analyses
Finally, we computed global efficiency of the whole-brain network of ROIs (see Fig. 9A) and correlated global network efficiency with individual differences in divergent
thinking ability (i.e., average creativity ratings to the alternate uses task completed outside of
the scanner). As expected, global efficiency values were positively correlated with composite
creativity scores (r = .44, p = .02)—as
divergent thinking ability increased, the divergent thinking network showed greater efficiency (see
Fig. 9B). This suggests that more creative participants exhibited more
efficient information transfer across a network of brain regions linked to divergent thinking,
including the core nodes of the default and executive networks.
Figure 9
Graph theory analysis of the functional network associated with divergent thinking.
(A) Nodes (ROIs from the whole-brain analysis) and edges (paths between the nodes) that
were used to define the divergent thinking network. (B) Scatter plot depicting the
correlation between composite creativity scores (i.e., average divergent thinking creativity
ratings) and global efficiency of the divergent thinking network.
Discussion
The present study explored whole-brain functional connectivity associated with creative idea
production. We identified a functional network related to divergent thinking, consisting of regions
within the default (PCC, precuneus, and inferior parietal lobules) and executive (DLPFC) networks,
among other regions. Resting-state functional connectivity analysis confirmed the underlying network
affiliations of these regions, using data from an independent sample of participants. Seed-based
analyses found increased connectivity between the DLPFC, PCC, and precuneus, and temporal analyses
revealed dynamic coupling between these regions at different stages of the divergent thinking task.
The results extend past research by revealing functional connections between regions commonly
associated with creative cognition. Moreover, functional connectivity between hubs of large-scale
networks points to a greater cooperation between networks associated with cognitive control and
spontaneous thought processes.The whole-brain MVPA revealed a distributed network associated with divergent thinking (see Fig. 1). This network consisted of several core default regions, including the
precuneus, PCC, and bilateral IPL, as well as the right DLPFC, a core region of the executive
network67. The network also included the hubs of the salience network (bilateral
insula and ACC), as well as several other temporal regions (e.g., bilateral MTG). Activation of
temporal regions is consistent with previous neuroimaging studies of creative cognition36, and may reflect increased demands on memory retrieval mechanisms common to the temporal
lobes. Together, results from the whole-brain analysis indicates a greater cooperation between brain
regions involved in spontaneous thought, cognitive control, and semantic memory retrieval. These
findings are consistent with the emerging literature on the cooperative role of default and
executive networks during cognitive states that involve focused internal attention8.Seed-based and ROI-to-ROI analyses were conducted to explore further connections between specific
default and executive regions identified in the whole-brain analysis. We found increased
connectivity between the right DLPFC seed and regions of the default network, including the right
IPL and the precuneus, as well as connectivity between the PCC seed and the DLPFC. These results
extended the whole-brain analysis by showing direct connections between default and executive
network regions during the task. Such findings provide support for the notion that creative thought
involves cooperation between spontaneous and controlled processes17184269.We also found increased connectivity between default regions (PCC and precuneus) and regions of
the salience network (dorsal ACC and bilateral insula). The salience network is involved in
reallocating attentional resources to salient environmental events2, and it is
thought to play a central role in dynamic switching between other brain networks, especially the DMN
and the ECN28. In this context, functional connectivity between default, salience,
and executive regions may reflect dynamic switching between large-scale networks during divergent
thinking.Further support for this notion comes from results of the ROI-to-ROI temporal connectivity
analyses. Here, we examined changes in connectivity between default and executive network ROIs
across the duration of the task. We found that the PCC was more strongly connected to salience
network regions (i.e., bilateral insula) at the beginning of the task, followed by stronger
connections with executive network regions (i.e., right DLPFC). Early coupling of the PCC with the
salience network may provide an intermediate mechanism that facilitates later coupling with the
executive network. Moreover, we found differential coupling between the right DLPFC seed and default
network regions (i.e., PCC and right IPL). Interestingly, the DLPFC only showed connectivity with
default regions during the second half of the task (i.e., TRs 4-5), pointing to a potential role
executive processes at later stages of divergent thinking. Taken together, such dynamic coupling may
reflect cooperation between brain networks associated with cognitive control and spontaneous
thought, consistent with recent theorizing on the role of attention in creative cognition14161718.The present results raise the question of how such typically opposing networks cooperate in the
brain. A large body of resting-state and task-based research has reported an antagonistic
relationship between the DMN and ECN. During working memory performance, for example, the ECN shows
increased activation while the DMN deactivates2, presumably indicating the
suppression of task-unrelated thought during cognitive control67. At the same time, a
growing literature points to certain conditions that foster a greater cooperation between these
typically opposing networks (e.g.,54). Such findings suggest that DMN and ECN regions
show increased coupling when attention is focused on internally-directed processes8.Like other types of self-generated thought (e.g., future thinking), creative thinking may require
focused internal attention (cf. 70, 71). But the need for additional executive control may differentiate creative cognition
from other modes of self-generated thought. For example, during a divergent thinking task, people
typically begin by retrieving known uses for a given object (e.g., a brick, “build a
house”) before eventually shifting to more elaborate and effective semantic search
strategies4247. Executive control can mitigate these early sources of interference
by suppressing salient conceptual knowledge (e.g., typical uses for an object; 43, 48) and facilitating flexible switching between semantic
categories during memory retrieval48. Co-activation of default and executive networks
may thus reflect both focused internal attention and the executive control of thought content.The present study extends recent research on resting-state functional connectivity and divergent
thinking ability72. Beaty and colleagues contrasted intrinsic connectivity networks
of high- and low-divergent thinking ability groups and found that high divergent thinking ability
was related to greater connectivity between the inferior frontal gyrus and the default network. The
IFG is involved in several executive processes, such as controlled memory retrieval68
and pre-potent response inhibition73. Hence, connectivity between the IFG and the DMN
was interpreted as a greater ability of highly creative individuals to exert top-down control over
imaginative processes stemming from the DMN. A similar pattern was observed in the present study: we
found increased connectivity between the left IFG and the left IPL. It’s worth noting,
however, that the IFG region found in the present study was located in BA 45 (pars triangularis),
whereas the IFG region used in the resting-state study was in BA 47 (pars orbitalis). Nevertheless,
the results of both studies suggest that creative thought may rely on functional coupling of brain
regions associated with cognitive control and spontaneous thought.
Limitations and Future Directions
The present study explored dynamic interactions between brain regions during performance on a
creative thinking task. We found increased functional connectivity between regions of the default
and executive networks, pointing to cooperation between large-scale networks underlying creative
idea production. One notable limitation of the study was our inability to capture participant
responses in the scanner, which would have shed light on task compliance and further permitted
parametric analyses of brain activity related to the creative quality of responses. Yet the high
correlation between individual differences in divergent thinking ability, assessed outside the
scanner, and global efficiency of the divergent thinking network suggests that participants were
indeed engaged in divergent thinking during the task, and that the integrity of the network was
sensitive to the creative ability of participants.The study was also limited to the use of a single assessment (an alternate-uses divergent
thinking task) to indicate a rather broadly defined construct (creativity). Future research should
examine functional connections among brain regions during other creative thinking tasks and in
relation to creative performance in specific domains, such as musical improvisation74. This approach would shed light on whether connectivity between default and executive networks is
exclusive to divergent thinking, or whether such connectivity reflects a domain–general
network underlying a range of creative thought processes. In addition, future research should
attempt to clarify whether creative cognition differs from other imaginative processes (e.g., future
thinking) in terms of executive involvement. We assumed that divergent thinking requires greater
executive activity to manage internal sources of interference, but it remains to be seen whether
such processes are more relevant for creative thought compared to other self–generated
thought processes.
Additional Information
How to cite this article: Beaty, R. E. et al. Default and Executive Network
Coupling Supports Creative Idea Production. Sci. Rep. 5, 10964; doi: 10.1038/srep10964
(2015).
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