Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate

Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate
réseaux. Neurosciences en réseau, Advance publication. https://doi.org/10.1162/netn_a_00328.

Title: Top-down threat bias in pain perception is predicted by higher segregation between resting-

state networks

Short title: High system segregation in RSNs predicts top-down threat bias.

Authors: Veronika Pak1,2, Javeria Ali Hashmi3,4

1Department of Neurology and Neurosurgery, Université McGill, Montréal, Canada

2McConnell Brain Imaging Centre, Institut neurologique de Montréal, Montréal, Canada

3Department of Anesthesia, Pain Management, and Perioperative Medicine, Nova Scotia Health

Authority, Halifax, NS, Canada

4Dalhousie University, Halifax, NS, Canada

ABSTRAIT

Top-down processes such as expectations have a strong influence on pain perception. Predicted

threat of impending pain can affect perceived pain even more than the actual intensity of a noxious

event. This type of threat bias in pain perception is associated with fear of pain and low pain

tolerance and hence the extent of bias varies between individuals. Large-scale patterns of

functional brain connectivity are important for integrating expectations with sensory data. Greater

integration is necessary for sensory integration hence, here we investigate the association between

system segregation and top-down threat bias in healthy individuals. We show that top-down threat

bias is predicted by less functional connectivity between resting-state networks. This effect was

significant at a wide range of network thresholds and specifically in pre-defined parcellations of

resting-state networks. Greater system segregation in brain networks also predicted higher anxiety

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and pain catastrophizing. These findings highlight the role of integration in brain networks in

mediating threat bias in pain perception.

Mots clés: pain perception, bias, top-down, expectation, prediction, threat, functional MRI,

functional connectivity, system segregation, resting-state networks, pain catastrophizing

INTRODUCTION

Any painful experience aids the learning of threat contingencies so that future experiences of pain

can be inferred, and tissue damage can be prevented. These top-down processes, through which

expectations influence pain, may rely on brain network architecture (Caras & Sanes, 2017; Choi

et coll., 2018). Parsing out individual differences in large-scale network features that govern pain

perception and how expectations modulate pain intensity can be useful for understanding why

people perceive pain differently and what goes awry in chronic pain conditions (Fields, 2018;

Heathcote et al., 2020; Leeuw et al., 2007; Peters et al., 2002).

When a sensory experience relies more on prediction and less on sensory verification, le

result is a biased perceptual experience that deviates from the objectively defined external cause.

A key function of pain is to warn and direct attention towards threats (Kucyi & Davis, 2015;

Legrain et al., 2011). Ainsi, in pain averse individuals, expectations can have a strong hold on

perception when noxious events are expected to be more intense (Aue & Okon-Singer, 2015; Bar-

Haim et al., 2007; Kelley & Schmeichel, 2014; LeDoux, 2014; Smith et al., 2021). We have

reported that a stepped increase in the threat of experiencing a strong pain evoking stimulus can

significantly magnify the pain even though the stimulus intensity was constant (Lim et al., 2020).

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Each cued increase in the expected stimulus strength, linearly increased the perceived pain

intensity (Kong et al., 2013; Lim et al., 2020). In some individuals, the increased threat of strong

noxious stimuli produced increasingly more intense pain and this variability was taken as an

indicator of top-down threat bias (Aristi et al., 2022). Greater threat bias was predicted by higher

pain catastrophizing scores, low mindful awareness, low pain tolerance (Lim et al., 2020), et était

also associated with reduced integrity in white matter pathways needed in the brain for sensory

and top-down integration (Aristi et al., 2022). Nevertheless, the effects of variability in large-scale

functional connectivity patterns on pain perception remain unknown.

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Brain networks consist of modules representing sub-networks where each may putatively

serve distinct functions (Gozdas et al., 2019; Khan et al., 2022; Rubinov & Sporns, 2010; van den

Heuvel & Sporns, 2013). These modules are in turn connected with each other through relatively

sparse global connections (Baum et al., 2017). The balance of the number of connections within

and between sub-networks, termed as system segregation/integration (SS), varies between

individuals and is a useful feature that captures higher-order cognitive brain functions (Cohen &

D'Esposito, 2016; Misic & Sporns, 2016). It has been suggested that system integration in brain

networks reflects cognitive efforts and has been also shown to predict performance accuracy in a

working memory task (Cohen & D'Esposito, 2016). In contrast, greater clustering and more system

segregation predicted the ability to adhere to prescribed training such as meditation, cognitive

behavioral therapy and exercise (Arnemann et al., 2015; Baniqued et al., 2019; Baniqued et al.,

2017; Gallen et al., 2016; Saghayi et al., 2020). Although, any specific function of network

segregation is unclear, putatively, brain sub-networks that function relatively independently may

have increased capacity for specialized functions but at the possible cost of a reduced capacity to

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integrate new information (Aristi et al., 2022; Bullmore & Sporns, 2012; Hashmi et al., 2017). Pour

instance, higher clustering indices, which is a measure related to SS, has been reported to predict

higher expectation effects towards the efficacy of a treatment (placebo analgesia) (Hashmi et al.,

2014). Note that when placebo analgesia and expectation effects are strong, they can be represented

as a type of cognitive bias, where the error between actual and predicted sensation are not fully

integrated and perception is more reliant on the top-down priors. This type of bias may be

associated with individual differences in the capacity to integrate information from different

subnetworks in the brain, but a direct mapping between top-down expectation effects and SS is yet

to be clearly demonstrated.

Here we investigate top-down threat bias in healthy individuals at a wide range of network

thresholds. We test reproducibility with three different a priori brain parcellations, (c'est à dire. previously

predefined), and also with subject-specific parcellations. Results were verified by analyzing

association with threat bias values as a continuous variable and also by grouping individuals into

high and low bias groups. To further explore the role of SS in mediating group differences in threat

bias, we studied the change in SS between rest and task. En outre, we tested the interrelationship

between the brain measures and relevant variables including age, pain catastrophization, et

anxiety.

MATERIALS AND METHODS

Participants. Forty-two healthy and right-handed individuals (21 female; ages 20-56 années; mean

age ± SD of 31.23 ± 10.91 années) were recruited for the study and provided written informed

consent. Exclusions criteria were as follows: (1) having concomitant acute or chronic pain; (2)

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taking medications for pain; (3) pregnancy; (4) history of cardiac, respiratory, or nervous system

disease that could interfere with participation in the study or present potential for adverse outcome

(par exemple., asthma or psychiatric or mental disorders); ou (5) contraindications to MRI scanning [par exemple.,

cardiac pacemaker, metal implants (including titanium), dental braces, permanent retainers, ou

known fear of closed spaces]. The study protocol was approved by the Nova Scotia Health

Authority Research Ethics Board.

Of all 42 participants, 39 underwent structural T1-weighted MRI, diffusion-weighted imaging

(DWI), functional MRI (IRMf) resting-state scan, and experimental pain task scans. The analysis

of this study focuses on resting-state and experimental fMRI data collected from 39 participants.

On structural analyses made on this dataset, see our previously reported findings (Aristi et al.,

2022; Lim et al., 2020; Wang et al., 2022).

Pain task experiment. The task was designed as a cognitive test of bias to evaluate the influence

of top-down threat predictions on new sensory experience. Before proceeding to the MRI scanner,

participants were informed that they would be shown information on a screen, experience thermal

stimuli (heat), and be asked to rate the experienced pain intensity using a numeric scale.

Each trial, threat cues on the screen would either predict the stimulus intensity in the form

of a percentage range of 10 points (example: “the incoming heat stimulus is at 70-80% intensity”)

or prompt that the stimulus intensity is unknown (“the incoming heat stimulus intensity is

unknown”). While participants were looking at a red fixation cross on the screen, the heat

stimulation was delivered to their skin on their lower left leg (tibialis anterior muscle) via an ATS

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30 × 30 mm thermode (PATHWAY system, Medoc). Participants were asked to rate their

perceived pain intensity by using a 0-100 numerical rating scale (NRS; où 0 means no pain at

all and 100 being the worst pain imaginable). Participants moved the cursor along the scale to

select a number representing their pain level by pressing two buttons on an MRI-compatible

response pad (Lumina LSC-400 controller, Cedrus). For a graphical representation of the task, voir

Figure 1A.

The procedure described above was repeated multiple times across four different runs

including one matched-condition run, one level 1 mismatched-condition run, and two level 2

mismatched-condition runs. Mismatched runs were shortly named task 1, task 2a and task 2b,

respectivement.

In the matched run (see Figure 1B), threat cue values accurately predicted pain intensities

in a linear fashion. Each 10-point increase in cued threat value was associated with a 0.4° increase

in stimulus temperature (43.8–47°C temperature range). Donc, during the matched condition,

participants were taught to anticipate pain intensity based on the correctly predicted level of threat.

In mismatched runs, threat cue values did not match the following heat stimuli, introducing

the difference between expected and actual stimulus intensities. Three mismatched condition runs

were conducted to determine whether the linear relationship learnt by participants during the

matched condition carried over to subsequent runs of the task, followed. During the level 1

mismatched run, all cue values ranging from 1-40% were coupled with the same low-heat 45°C

stimulus and cue values ranging from 60-100% were paired with a high heat 47°C stimulus. Là

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was no prediction error for cue ranges of 31-40% et 91-100%. In the remaining level 2

mismatched runs, all threat cue values were paired with the maximum temperature of 45 °C or a

47°C. Participant’s reliance on the information presented by the visual cues, c'est à dire., their top-down

bias, was measured using the trials in level 2 runs where the temperature was always 47 °C (Chiffre

1C). The top-down threat bias was thus assessed by measuring the difference in pain ratings

between the high and low threats cues, when the stimulus temperature remained the same in each

participant.

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Chiffre 1. Experimental paradigm of the pain task performed by participants during fMRI

acquisition. UN. In each trial, a threat cue stating the intensity of the incoming stimulus was shown

on the screen. Heat pain stimulus was administered during the presentation of a red fixation cross

on the screen. Alors, participants were asked to rate their pain intensity on a scale of 0–100. B.

Matched condition: threat cue predictions matched the heat stimuli intensity in a linear fashion,

thus training participants to learn a linear schema on perceived pain, where actual stimulus

intensity matched the expectations of the perceived pain. C. Mismatched condition: in the last two

runs (task 2a and 2b), all threat cues were coupled with the maximum heat temperature of 47°C,

as depicted on the plot. High threat cue values ranged from 70 à 98 and low threat cue values

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ranged from 8 à 32. The difference between pain ratings for high threat cues and low threat cues

during the mismatched run was defined as top-down threat bias.

Top-down threat bias calculation. Effect of top-down threat cues on pain perception was

calculated as a difference between averaged pain ratings in response to the low threat cue values

(8-32%) and to the maximum cue values (70-98%). A greater difference indicated a stronger effect

of threat cues on pain ratings. Only data collected during the mismatched level 2 runs, when the

temperature remained at its peak (47 °C) throughout the task, was used in these calculations.

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We conducted a group comparison of individuals with different levels of threat bias to

verify the results where threat bias was used as a continuous variable. Participants were assigned

to the low threat bias (n = 15) and high threat bias (n = 17) groups by using a K-means clustering

algorithm implemented in MATLAB (Lloyd, 1982). The algorithm assigned cluster memberships

based on the data distribution itself and with minimal user decision-making. High threat bias group

included participants whose pain perception was more aligned with threat expectation and less

with the actual heat stimulus. Participants that were being reclassified after each iteration (n = 7)

and whose bias fell near the mean of the distribution were excluded from the group analysis.

Psychosocial measures. The pain catastrophizing scores and its three subscales (Rumination,

Magnification and Helplessness) were obtained using the Pain Catastrophizing Scale (PCS)

questionnaire (Sullivan et al., 1995). State anxiety and trait anxiety were evaluated by self-reported

The State-Trait Anxiety Inventory (STAI) (Spielberger et al., 1970).

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Data Acquisition. Structural and functional scans were collected using a 3T MRI scanner

(Discovery MR750; General Electric Medical Systems, Waukesha, WI, Etats-Unis) with a 32-channel

head coil (MR Instruments, Inc.; Minneapolis, MN, Etats-Unis). The experiment took place at the

Halifax Infirmary Site, QEII Health Sciences Centre, Halifax, NS, Canada. Participants’ heads

were fitted with foam padding to provide comfort and minimize motion, ear plugs were used to

reduce sound levels, and reminders were given before each scan to keep their head still. Resting-

state scan lasted 8 minutes. The following parameters were used for T1-weighted brain images

(GE sequence 3D IR-FSPGR): field of view = 224×224 mm; in-plane resolution = 1mm×1mm;

slice thickness = 1.0mm; TR/TE = 4.4/1.908 millisecondes; flip angle = 9°. The fMRI BOLD (blood

oxygenation level dependent) sequence protocol used a multi-band EPI sequence: field of view =

216×216 mm; in-plane resolution = 3mm×3mm; slice thickness=3.0mm; TR/TE=950/30

millisecondes, SENSE factor of 2, acceleration factor of 3. Il y avait 500 volumes for resting-

state scans, 814 volumes for the training scan (not used in analysis), et 624 for the three pain task

scans in total. For distortion correction, reverse phase encoded images were also obtained for the

application of FSL’s topup.

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.

Preprocessing of resting-state data. All functional datasets were corrected for field map-based

distortion. Data were preprocessed with AFNI (http://afni.nimh.nih.gov/afni) and FSL

(http://www.fmrib.ox.ac.uk/fsl), with the scripts provided by 1000 Functional Connectomes

Project (http://www.nitrc.org/projects/fcon_1000). All the following parameters for preprocessing

were adapted from the parent study (Lim et al., 2020). Preprocessing with AFNI included (1)

discarding the first five EPI volumes to allow signals to reach a steady state, (2) rigid-body motion

correction of time series by aligning each volume to the mean image using Fourier interpolation,

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(3) skull stripping, et (4) getting an eighth image for use in registration. Preprocessing using FSL

consisted of (5) spatial smoothing with a Gaussian kernel of full-width half-maximum=6 mm, (6)

grand-mean scaling of the voxel value, (7) bandpass temporal filtering between 0.005 and 0.3Hz,

(8) removal of linear and quadratic trends using Fourier transformation, et (9) mean-based

intensity normalization.

The six motion parameters corresponding to rotational movement and cardinal

displacement were generated using the FSL-based motion correction step in native functional

espace. En outre, two nuisance time courses were calculated for white matter and ventricles by

using masks obtained from the image segmentation of the participant’s T1w data and applying a

tissue-type probability threshold of 80%.

For analyzing data in standard space, FLIRT was used to perform registration of functional

images to the MNI152 standard template (Fonov et al., 2011). This included (1) registration of

native-space structural image to the MNI152 2mm template using twelve df linear affine

transformation, (2) registration of native-space functional image to high-resolution structural

image with six df linear transformation, et (3) computation of native-functional-to-standard-

structural warps using by concatenating matrices computed in steps (1) et (2).

For data quality verification, maximum framewise displacement (FD) and DVARS

(difference of volume N to N+1), were calculated to assess motion. For image quality criteria,

participant data with maximum FD above 3mm or DVARS outliers detected in more than 10% de

the acquired data were removed from analysis. Mean FD was 0.12 (SD=0.07) and mean DVARS

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était 46.9 (SD=4.7). No images were excluded, as the highest maximum FD obtained and highest

percentage of outliers in data detected for all participants was 2.65 mm and 8%. Maximum FD and

maximum DVARS were used as nuisance covariates when correlating functional and behavioral

metrics for further verification.

Brain parcellations. For each participant, image voxels were grouped into 131 regions of interest

(ROI), which were defined by the optimized Harvard-Oxford atlas for pain studies (Hashmi et

al., 2014; Saghayi et al., 2020). BOLD time series were extracted from each voxel within each

region and then averaged using FSL. The regions were grouped within the following five canonical

resting-state networks:

subcortical,

sensoriel, default mode, attention/executive, et

language/memory (Hashmi et al., 2017).

Additional group-level parcellations with seven and seventeen resting-state networks were

employed from the open-source Yeo atlas (Yeo et al., 2011). Seven network parcellation included

52 ROIs and the seventeen network parcellation included 114 ROI. Seven networks spanned

visuel, somatomotor, dorsal attention, ventral attention, limbic, frontoparietal, and default mode

réseaux. The seventeen networks presented a higher resolution extended parcellation with

inclusion of sensory and motor cortices (Yeo et al., 2011). These estimated networks have been

chosen for showing reliability across datasets and being previously validated in region-based fMRI

analyses (Yeo et al., 2011; Zhi et al., 2022).

System segregation calculation. Whole brain weighted system segregation was measured with a

graph theory technique. To build the functional connectivity graph, the 131×131 adjacency matrix

for each participant was created by calculating zero-lag Pearson’s linear correlations between the

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131 BOLD time series. Negative correlation values and diagonal entries were removed from the

correlation matrices. For selecting only significant functional connections unaffected by

physiological or experimental noise, each matrix was thresholded and converted to a binarized

adjacency matrix (van Wijk et al., 2010). Network thresholding was based on predefined

correlation thresholds (percentage of the strongest connections) ranging from 0.20 à 0.5, avec

increment of 0.05. This range of possible thresholds was used to test for consistency of the results

to account for spurious connections in unthresholded networks. De plus, there is no consensus

regarding an optimal threshold and removing some connections may lead to the loss of important

information at the cost of reduced sensitivity (Drakesmith et al., 2015; van den Heuvel et al., 2017;

Zalesky et al., 2016). We used functions from the Brain Connectivity Toolbox and custom code

implemented in MATLAB to quantify functional networks from the matrix (Avena-Koenigsberger

et coll., 2017; Rubinov & Sporns, 2010).

A measure for weighted system segregation for each network was defined as the difference

between mean Fisher’s z-transformed within-network connectivity and mean Fisher’s z-

transformed between-network connectivity and was calculated by the following formula:

𝑆𝑦𝑠𝑡𝑒𝑚 𝑠𝑒𝑔𝑟𝑒𝑔𝑎𝑡𝑖𝑜𝑛 =

𝑧 ̄w−𝑧 ̄b
𝑧 ̄w

,

where 𝑧 ̄w is the number of connections within a given network and 𝑧 ̄b is the number of

connections between nodes (ROI) within a given network and other networks, normalized by the

total number of possible connections between networks. The code for the measure was employed

from the study of Chan et al. (2014).

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Subject-specific system segregation calculation. We defined subject-specific networks by

adopting Girvan-Newman and Louvain algorithms, commonly used methods for community

detection (Braga & Buckner, 2017; Harrison et al., 2015; Laumann et al., 2015; Yeo et al., 2011).

This approach known as modularity maximization process that aims to partition network’s nodes

into brain modules (réseaux) (Sporns & Betzel, 2016). Spécifiquement, we calculated subject-

specific weighted system segregation between a set of non-overlapping modules (m as the total

number of modules) calculated by the following formulas:

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𝑄 =

1
2𝑚

∑ [𝐴𝑖𝑗 − 𝑃𝑖𝑗]𝛿(𝑐𝑖, 𝑐𝑗),

𝑖,𝑗

where Q is a modularity coefficient, 𝐴𝑖𝑗 represents the number of connections between nodes i and

j, 𝑐𝑖 and 𝑐𝑗 are the networks to which nodes i and j belong, m is the sum of all connectivity weights

in the graph, 𝛿 is the Kronecker delta function, and 𝑃𝑖𝑗 stands for the expected number of

connections according to a null model (Newman & Girvan, 2004). For an undirected network

based on the Louvain method, the following formula was applied:

𝑄 =

1
2𝑚

∑ [𝐴𝑖𝑗 −

𝑖,𝑗

𝑘𝑖𝑘𝑗
2𝑚

] 𝛿(𝑐𝑖, 𝑐𝑗),

where 𝑃𝑖𝑗 =

𝑘𝑖𝑘𝑗
2𝑚

, 𝑘𝑖 and 𝑘𝑗 are the sum of the connectivity weights attached to nodes i and j, et

the delta-function 𝛿 (𝑐𝑖, 𝑐𝑗) equals 1 if i = j and 0. Otherwise, 2m = ∑ 𝐴𝑖𝑗

𝑖𝑗

is the total number of

connections in the network (Blondel et al., 2008).

13

RÉSULTATS

Cue threat predictions altered pain perception evoked by a heat stimulus

As we have previously reported, presenting threat predictions as cues prior to applying heat stimuli

significantly influenced pain perception in healthy participants (Lim et al., 2020). Figure 2A

demonstrates averaged pain ratings in response to low threat cues (8-32) and high threat cues (70-

98) averaged from three mismatched runs. These differences in pain ratings were related to the

cues since in both conditions the stimuli were identical (peak stimuli intensity of 47°C), indicating

the effect of linear schema on pain perception i.e. top-down threat bias. A greater difference in

pain ratings was suggestive of a stronger top-down threat bias.

Figure 2B shows the distribution of bias scores calculated for 39 participants (-25.03 ±

15.86) as a difference in pain ratings in mismatched runs between low threat cues and high threat

cues. The median of the distribution (-25) was within 10% of the mean, suggesting that the

variability was normally distributed (W = 0.953, p = 103). K-means clustering was used to assign

participants into two groups (high bias, n = 17; low bias, n = 15) based on their threat bias scores

(high bias -40.2, ± 8.31; low bias, -8.56 ± 5.4). The high bias group included individuals whose

pain perception became intensified with increase in threat of a stronger stimulus. We have

previously reported significant influence of all cue values on pain ratings in both threat groups

(Aristi et al., 2022). Spécifiquement, the increase in reported pain with increase in cued threat was

more steep in the high bias group, while ratings in the low bias group showed less amplification

with increase in cued threat (Aristi et al., 2022).

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Chiffre 2. (UN) Effects of high threat (70-98) and low threat (8-32) cue values on participants’ pain

ratings during mismatched conditions. Pain ratings for high threat cues were significantly altered

by threat bias formed by the linear schema. (B) Frequency distribution of perceptual threat bias

scores calculated for healthy participants. The values for all participants were used as a continuous

variable for testing associations with system segregation. For group analysis, participants lying on

the left (n = 17) and right (n = 15) sides were classified by K-mean clustering algorithms into the

high threat bias and low threat bias groups, respectivement. Shaded region shows the cut-off band of

the K-means classification, where participants that lie within the band (n = 7) were excluded from

the group analysis.

System segregation during rest predicts top-down threat bias

We first tested whether SS in five functional RSNs predicted top-down threat bias in 39 healthy

individuals that underwent fMRI scans. We also compared differences in SS between individuals

15

from the high bias and low bias groups. In addition we tested if the findings reproduce when two

other parcellations with different spatial resolutions from the Yeo atlas (Yeo et al., 2011) étaient

used.

As Figure 3 illustrates, higher weighted SS in five networks significantly correlated with

higher top-down threat bias in pain perception at all seven sparsity thresholds (T0.20-0.50: R = -0.412,

p = 0.009; R = -0.390, p = 0.014; R = -0.378, p = 0.018; R = -0.376, p = 0.018; R = -0.371, p =

0.02; R = -0.370, p = 0.02; R = -0.375, p = 0.019; Figure 3A). These findings were reproducible

in seven networks: SS significantly correlated with threat bias at six out of seven sparsity

thresholds (T0.20-0.45: R = -0.358, p = 0.025; R = -0.334, p = 0.038; R = -0.338, p = 0.035; R =

0.336, p = 0.037; R = -0.328, p = 0.041; R = -0.319, p = 0.048; Figure 3B). In comparison, le

correlation analysis did not show significant correlations between threat bias and SS in seventeen

réseaux (p>0.05). While results were not significant relative to the standard alpha level of .05,

the p-value was less than .10 at all sparsity thresholds. This result suggests that SS in seventeen

networks showed a trend similar to the findings from other parcellations and indicated that

parcellations with lower spatial resolution were more effective in capturing the association

between segregation and the threat bias (Figure 3C).

In group analysis, we found a significant between-subjects effect (RM-ANOVA: F(1) =

4.816, p = 0.036) on SS in five canonical RSNs. This effect was reproducible in seven networks

(RM-ANOVA: F(1) = 5.224, p = 0.030) and in seventeen (RM-ANOVA: F(1) = 5.115, p = 0.031).

Post-hoc analysis showed that weighed SS in five networks was significantly different between

the high threat bias and low threat bias groups at all seven sparsity thresholds (T0.20-0.50: t = -2.348,

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p = 0.026; t = -2.22, p = 0.034; t = -2.156, p = 0.039, t = -2.168, p = 0.038; t = -2.122, p = 0.042; t

= -2.131, p = 0.041; t = -2.167, p = 0.038; independent t-test, Figure 3D). Other parcellation

networks produced similar results: the high bias group showed higher SS compared to the low bias

group at all seven sparsity thresholds in seven networks (T0.20-0.50: t = -2.497, p = 0.018; t = -2.31,

p = 0.028; t = -2.366, p = 0.025, t = -2.289, p = 0.029; t = -2.217, p = 0.034, t = -2.134, p = 0.041;

t = -2.067, p = 0.047; independent t-test, Figure 3E) and at all seven sparsity thresholds in

seventeen networks (T0.20-0.50: t = -2.284, p = 0.03; t = -2.337, p = 0.026; t = -2.257, p = 0.031; t =

-2.235, p = 0.033; t = -2.263, p = 0.031; t = -2.226, p = 0.034; t = -2.196, p = 0.036; independent

t-test, Figure 3F). In the explorative analysis, we found that the high bias group showed more

functional connectivity within RSNs. In comparison, the low bias group, showed a larger number

of significant connections between RSNs. These exploratory results illustrate that the high bias

group shows greater SS relative to the low bias group (Supplementary Figure 1).

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Chiffre 3. System segregation during resting-state predicts top-down threat bias in pain perception

at a wide range of network thresholds when tested with three different brain parcellations. (UN) SS

in five networks significantly correlates with threat bias at all sparsity thresholds (p < 0.05). (B) In seven networks, SS is associated with bias at almost all thresholds (p < 0.05). (C) A similar trend towards significance can be observed for correlations in seventeen networks. The heat map on the right demonstrates the R values ranging from -0.2 (colored yellow) to -0.4 (red) for all parcellation schemes. (D-F) Participants in the high bias group demonstrated significantly higher 18 SS compared to the low bias group at the 0.20 threshold (p = 0.026; p = 0.018; p = 0.03). Between- subjects effect was significant for all parcellations (p < 0.05). (G) Scatter plot demonstrates a significant negative relationship between SS in five networks and threat bias at the 0.20 threshold (p = 0.009). (H) SS in seven networks also decreases with threat bias at the 0.20 threshold (p = 0.019) (I) Similar trend of a negative association between SS and threat bias can be observed in seventeen networks at the 0.20 threshold. For each scatterplot, a line reflecting a linear regression between SS and threat bias in pain perception is depicted. Significant results are marked by asterisks (*). l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . t / / e d u n e n a r t i c e - p d l f / d o i / / / . t 1 0 1 1 6 2 n e n _ a _ 0 0 3 2 8 2 1 4 1 0 8 8 n e n _ a _ 0 0 3 2 8 p d . / t f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Subject specific parcellations and system segregation Girman-Newman and Louvain algorithms for community detection were utilized to identify the number of network communities for each subject individually (Blondel et al., 2008; Newman & Girvan, 2004). Compared to the results from the predefined networks (optimized Harvard Oxford and Yeo), weighted SS measured from subject-specific modules by the Girvan-Newman algorithm significantly correlated with top-down bias at only one sparsity threshold (T0.20: R = -0.337, p = 0.036). Correlations between subject-specific weighted SS based on the Louvain method were not significant at any of the sparsity thresholds. Changes in segregation of functional brain networks from rest-to-task Figure 4 illustrates changes in SS values averaged across participants between resting-state scan and mismatched runs of the pain schema task. Two types of analysis were run. First, we looked at overall changes in SS with tasks, for that we looked at whether SS significantly changes with each subsequent scan. The RM-ANOVA revealed a significant overall effect on SS for all participants 19 (F(18) = 4.968, p < 0.01 for type of scan x threshold). However, the between-subjects effect was not significant (F(1) = 3.315, p = 0.079). The variability in SS between scans was not significant for the low bias group (F(27) = 1.347, p = 0.118 for type of scan x threshold; Figure 4C). Meanwhile, participants in the high bias group showed significant changes in SS from rest-to-task scans (type of scan x threshold, F(27) = 482.709, p < 0.01). Effect of the type of scan alone was also significant (F(3) = 478.572, p < 0.01). Figure 4D demonstrates how integration across 5 networks increases gradually with each task for the high bias group. Post-hoc analysis showed that significant changes occurred mainly between task1 and task 2b across five out seven sparsity thresholds (T0.20-0.40: t = 2.429, p = 0.028; t = 2.43, p = 0.028; t = 2.335, p = 0.034; t = 2.318, p = 0.035; t = 2.345; p = 0.033). There was no significant difference in the prediction errors in task 2a and 2b (Lim et al., 2020). Given that there was no change in task condition between these tasks, the lack of changes in SS indicated that prediction errors played a role only in changes observed between other scans. To test this assumption the overall model was run without task 2b and showed stronger effect (RM-ANOVA: F(12) = 5.563, p < 0.01 for type of scan X threshold). The between subject effect was significant (F(1) = 4.739, p = 0.037). 20 l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . / t / e d u n e n a r t i c e - p d l f / d o i / . / t / 1 0 1 1 6 2 n e n _ a _ 0 0 3 2 8 2 1 4 1 0 8 8 n e n _ a _ 0 0 3 2 8 p d t . / f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . t / / e d u n e n a r t i c e - p d l f / d o i / . t / / 1 0 1 1 6 2 n e n _ a _ 0 0 3 2 8 2 1 4 1 0 8 8 n e n _ a _ 0 0 3 2 8 p d / . t f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Figure 4. Participants in the high threat bias group showed significant changes in system segregation from rest-to-task scans compared to people in the low threat bias group. (A) Variability in SS values from rest-to-task showed significant interaction effect for type of scan and a sparsity threshold value (p < 0.01). (B) Participants in the high bias group showed significantly higher SS during rest, tasks 1, and 2a compared to the low bias group at the 0.20 threshold (RM-ANOVA: p < 0.05). (C) No variation in SS from rest-to-task in the low bias group was identified across all sparsity thresholds (RM-ANOVA: p = 0.118). (D) Significant changes in SS between resting-state and task scans were observed in high bias group at different sparsity thresholds (RM-ANOVA: p < 0.01). 21 Relationships between segregation in networks and demographic characteristics To measure the effect of maladaptive characteristics related to pain, the relationships between SS and self-reported pain catastrophizing, anxiety and depression measures were investigated. Table 1 summarizes what demographic metrics were used and how they were associated with segregation in RSNs defined by different parcellations at the 0.20 sparsity threshold. Next, we report correlations that were significant at most sparsity thresholds only. Higher SS between five networks predicted higher magnification, an aspect of pain catastrophizing, at all seven sparsity thresholds (T0.20-0.50: R = 0.435, p = 0.006; R = 0.407, p = 0.01; R = 0.390, p = 0.014; R = 0.381, p = 0.017; R = 0.369, p = 0.021; R = 0.360, p = 0.024; R = 0.352, p = 0.028). In 17 networks, decreased integration was a significant indicator of state anxiety (T0.20-0.50: R = 0.371, p = 0.02; R = 0.396, p = 0.013; R = 0.388, p = 0.015; R = 0.392, p = 0.014; R = 0.384, p = 0.016; R = 0.377, p = 0.018; R = 0.369, p = 0.021) and trait anxiety (T0.20-0.50: R = 0.376, p = 0.018; R = 0.392, p = 0.014; R = 0.380, p = 0.017; R = 0.385, p = 0.015; R = 0.379, p = 0.017; R = 0.377, p = 0.018; R = 0.371, p = 0.02) at all seven sparsity thresholds. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . / t / e d u n e n a r t i c e - p d l f / d o i / . t / / 1 0 1 1 6 2 n e n _ a _ 0 0 3 2 8 2 1 4 1 0 8 8 n e n _ a _ 0 0 3 2 8 p d / . t Table 1. Relationship between system segregation and demographic characteristics for healthy controls (n = 39) at the 0.20 weighted threshold. Parameters Mean ± STD R value p value f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Networks Five Seven Seventeen Five Seven Seventeen Agex PCS 31.41 ± 10.17 -0.291 -0.104 -0.251 0.073 0.527 0.123 12.44 ± 9.99 0.316* 0.261 0.219 0.05 0.109 0.18 22 Ruminationx 5.54 ± 4.84 0.269 0.162 0.122 0.098 0.326 0.461 Magnification 2.82 ± 2.39 0.435* 0.196 0.166 0.006 0.231 0.313 Helplessnessx 4.69 ± 4.68 0.177 0.291 0.243 0.281 0.072 0.136 State anxiety 32.18 ± 9.66 0.119 0.264 0.371* 0.505 0.104 0.020 Trait anxiety 35.80 ± 10.40 0.155 0.323* 0.376* 0.345 0.045 0.018 Significant correlations are defined by asterisks (*). x indicates that non-parametric Spearman’s correlation analysis was performed on data instead of Pearson since data was not normally distributed. We assessed sex differences in top-down threat bias and weighted SS at different thresholds. There were no significant differences between male and female participants in threat bias (p = 0.574) and in SS (T0.20-0.50: p = 0.366; p = 0.254; p = 0.188; p = 0.151; p = 0.130; p = 0.111; p = 0.094). In addition, we confirmed that the group differences in SS were not related to head motion. We did not observe a significant difference in maximum frame wise displacement (FD) and DVARS between the high and low bias groups for all the three network parcellations (p>0.05). De la même manière, there was no significant correlation between these two motion metrics and

SS (p>0.05).

DISCUSSION

Here we report that higher segregation in RSNs was associated with greater amplification in pain

during manipulated expectations of a stronger pain stimulus. Higher segregation in functional brain

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networks also associated with higher anxiety and pain catastrophizing. Our findings were

reproducible at a wide range of network sparsity thresholds and between different types of pre-

defined parcellations but were not significant when were tested with subject-specific parcellations.

Both segregation and integration of brain networks have been recognized to be critical for

cognitive functioning (Cohen & D'Esposito, 2016; Deco et al., 2015; Friston, 2009; Sporns, 2013;

Wig, 2017). Previous work has shown that higher SS predicts different types of cognitive

capacities and the ability to learn new physical and mental skills such as cognitive behavioral

therapy and meditation (Arnemann et al., 2015; Baniqued et al., 2019; Baniqued et al., 2017;

Cohen & D'Esposito, 2016; Gallen et al., 2016; Saghayi et al., 2020). More segregated networks

also predicted higher expectation effects of placebo analgesia suggesting the role of segregation in

the process of integrating top-down information with sensory input (Hashmi et al., 2014). In the

present study, we have found that higher segregation between canonical RSNs is associated with

a top-down bias (or reduced capacity to integrate sensory evidence).

It has been suggested that individuals can vary in SS due to underlying differences in

neurotransmitter functions. A prominent hypothesis suggests that large-scale network dynamics

are mediated by neuromodulatory neurotransmitter inputs from the ascending arousal system

(Shine, 2019; Shine et al., 2018; Shine et al., 2016; Shine et al., 2019). Spécifiquement, it has been

shown that widespread projections from the noradrenergic locus coeruleus (LC) coordinate neural

gain which in turn affects the balance between segregation and integration by altering network

level topology to promote attentional and cognitive performance (Shine et al., 2018; Wainstein et

al., 2021). En outre, the patterns of segregation and integration are correlated with the spatial

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distribution of the 2a adrenergic receptors (Wainstein et al., 2021). We have previously

demonstrated that 2 adrenergic receptors are important for maintaining brain network

architecture by administering an agonist (dexmedetomidine) that significantly reduced resting-

state functional connectivity both within and between brain subnetworks (Hashmi et al., 2017).

The 2 adrenergic tone has a direct link with stress, stress resilience and anxiety (Grueschow et

al., 2021; McCall et al., 2015; Ross & Van Bockstaele, 2020). In rodents, stimulant drugs and

physiological manipulations targeting these receptors can lead to heightened LC-reactivity to

stressors (Morris et al., 2020; Samuels & Szabadi, 2008). The heightened noradrenergic tone

following an aversive threat can promote cued fear learning that in turn enhances amygdala

function and impairs prefrontal structure and function (Giustino & Maren, 2018). This segues into

the observed association between increased SS and higher state and trait anxiety and higher

magnification, a subscale of pain catastrophizing. Previous studies have linked increased anxiety

to decreased resting-state functional connectivity within/between the affective (AN), salience

(SN), central executive (CEN) and default mode (DMN) réseaux (Xu et al., 2019). Excessive

anxiety has been associated with lower functional connectivity between the DMN and the anterior

SN (Gerlach et al., 2021). Since pain is an aversive signal, pain processes and aversive fear

conditioning share similar pathways (Biggs et al., 2020; Ceko et al., 2022; Elman & Borsook,

2018; Ji et al., 2018). The observed association between SS, threat bias, and anxiety prone

behaviors taken together with what has been suggested about a role of adrenergic pathways in

arousal and network integration suggests a role of altered autonomic nervous system function in

fear of pain. En outre, the SS measure offers a global metric that can be investigated to study

the putative link between adrenergic (and potentially other neurotransmitters) tone (Shine, 2019;

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Shine et al., 2018; Shine et al., 2019) and anxiety prone patterns of responses to pain (Delgado-

Gallén et al., 2023).

Previous work from our lab also indicates that white matter pathways that connect disparate

brain regions show reduced integrity in people with high threat bias (Aristi et al., 2022).

Spécifiquement, people with high threat bias exhibit weaknesses in the splenium of the corpus

collosum (Aristi et al., 2022). This region is a structural pathway that connects sensory regions

with multimodal regions in parietal cortex and is important for integrating top-down information

with bottom-up sensory input (Aristi et al., 2022; Fabri et al., 2001). We conclude that individual

differences behind macroscale and microscale neurophysiological mechanisms account for

variation in threat bias sensitivity and can be reflected in measures of large-scale functional

dynamics such as SS.

We found that participants in the high bias group showed significant change in SS from

rest-to-task while networks in individuals from the low bias group stayed consistently integrated

across all scans. Several studies reported that large-scale brain networks stay less integrated during

task performance compared to rest (Cohen & D'Esposito, 2016; Cole et al., 2014; Krienen et al.,

2014; Shine et al., 2016). Whether the system is more integrated or segregated depends on task

complexity that requires different amount of cognitive control: simple tasks are associated with

greater network segregation, while more complex tasks favor decreased segregation (Cohen &

D'Esposito, 2016; Shine et al., 2016; Yue et al., 2017). These rest-to-task differences in segregation

can be explained by the need to minimize metabolic cost of brain function (Bullmore & Sporns,

2012; Zalesky et al., 2014). Brain networks are wired to minimize metabolic costs by staying less

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clustered / more segregated at rest, but task-related processing demands engage communication

and relocation of energy resources between specific task-relevant networks that become more

connected / integrated (Bullmore & Sporns, 2012). Our results suggest that the high bias group

required greater engagement of brain networks sub-serving greater cognitive efforts to integrate

prior expectations and contradictory sensory stimuli and thus demonstrated higher variation in

task-specific network organization across the scans. Given that these changes across rest vs task

conditions are specific to certain types of people, individual variation in network architecture may

be related to cognitive ability and these assertions need confirmation.

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Our results were produced based on two different cortical parcellations that involve known

canonical RSNs. The seven and seventeen networks in the Yeo parcellations are two subscale

resolutions of brain regions that show high reproducibility of resting-state fMRI connectivity when

assessed from a thousand subjects (Yeo et al., 2011). Parcellations derived from large groups of

healthy individuals have provided important insights into study of brain topological organization

and network properties (Buckner et al., 2013). These properties have allowed researchers to

investigate brain behavioural associations with developmental, cognitive, and behavioural

phenotypes. It has been shown that the size, location, and spatial arrangement albeit consistent

between subjects, does show individual level variations (Braga & Buckner, 2017; Harrison et al.,

2015; Laumann et al., 2015). Encore, it remains unclear whether topological metrics derived from

subject-specific parcellations are comparable in their association with behavior relative to metrics

from group-based parcellations (Hacker et al., 2013; Wig et al., 2014). Ici, we tested the

possibility of whether individual-specific network organization offers comparable information to

group-averaged networks. We showed that segregation in the predefined five and seven RSNs was

27

more robust in association with pain behavior. The higher resolution parcellations with seventeen

RSNs showed some correspondence but was less predictive relative to the spatially coarser

resolution networks, and segregation in individual-specific RSNs obtained by Girvan-Newman

and Louvain algorithms failed to predict threat bias. Dans l'ensemble, our results indicate that predefined

group-averaged RSNs are better at capturing behavioral differences associated with threat bias in

pain compared to subject-specific RSNs.

The main limitation of this study is the absence of a validation data set to test the

reproducibility of current findings. The small group sizes resulting from the K-means clustering

algorithm may reduce the statistical power of group analyses. Néanmoins, our data provided

sufficient power to establish neurobiological correlates of top-down threat bias in pain observable

in resting-state fMRI. As we demonstrated, the choice of parcellation, spatial resolution of the

parcellation and type of scan (rest vs task) lead to different results. Ainsi, a more thorough

investigation of variables with larger dataset and cognitive measurements can help to validate and

extend the findings.

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En résumé, this study shows, for the first time, that segregation in canonical RSNs is a

predictive of individual variance in threat bias. Spécifiquement, we suggest the balance between large

scale dynamics in RSNs is critical for the processes involved in integrating sensory information

with top-down priors in response to threat. Increased SS is also related to maladaptive pain traits

such as higher pain catastrophizing and increased pain responsiveness to threat. Donc, higher

integration may be an indicator of coordinated activity between multiple brain networks that allows

proper sensory integration and reduced amplification of sensory responses to threats. Future work

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28

that focuses on further investigation of neurobiological mechanisms implicated in top-down

cognitive biases in pain can benefit the development of interventions targeting chronic pain

conditions.

ACKNOWLEDGHMENTS

Data Availability Statement: The data that support the findings of this study are available from

the corresponding author upon request.

Funding Statement: This study was funded the Natural Sciences and Research Engineering

Council of Canada (NSERC) Discovery Grant, the Canada Research Chairs Program, the John R.

Evans Leaders and Canada Innovation Funds (CFI-JELF), the Canadian Institute of Health

Research (CIHR) Project Grant, the Nova Scotia Health Authority (NSHA) Establishment Grant,

and the NSHA Fibromyalgia Research Grant.

Conflict of Interest Disclosure: The authors have no conflicts of interest to declare.

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Author Summary

RÉSUMÉ DE L'AUTEUR

Some individuals are more sensitive to threats of receiving strong pain stimuli. Dans cette étude, nous

report that higher system segregation in brain networks is associated with a greater threat bias (un

reliance on expected intensity of pain versus the actual sensory stimuli in the manipulated pain

experiment). We verified the results with different pre-defined resting-state parcellations at

different network sparsities, and also tested subject-driven parcellations. These findings

demonstrate that higher integration between resting-state networks is conducive for integrating

top-down expectation processes with changes in bottom-up noxious stimulus intensities. Réseau

segregation in resting state is thus associated with poor sensory integration and also shows

association with anxiety and fear of pain.

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3Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image
Pak, V. & Hashmi, J.A. (2023). Top-down threat bias in pain perception is predicted by higher segregation between restingstate image

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