| Literature DB >> 30097579 |
Xing Qian1, Beatrice Rui Yi Loo1, Francisco Xavier Castellanos2, Siwei Liu1, Hui Li Koh1, Xue Wei Wendy Poh3, Ranga Krishnan1, Daniel Fung3, Michael Wl Chee1, Cuntai Guan4, Tih-Shih Lee1, Choon Guan Lim4, Juan Zhou5,6.
Abstract
A brain-computer-interface (BCI)-based attention training game system has shown promise for treating attention deficit/hyperactivity disorder (ADHD) children with inattentive symptoms. However, little is known about brain network organizational changes underlying behavior improvement following BCI-based training. To cover this gap, we aimed to examine the topological alterations of large-scale brain functional networks induced by the 8-week BCI-based attention intervention in ADHD boys using resting-state functional magnetic resonance imaging method. Compared to the non-intervention (ADHD-NI) group, the intervention group (ADHD-I) showed greater reduction of inattention symptoms accompanied with differential brain network reorganizations after training. Specifically, the ADHD-NI group had increased functional connectivity (FC) within the salience/ventral attention network (SVN) and increased FC between task-positive networks (including the SVN, dorsal attention (DAN), somatomotor, and executive control network) and subcortical regions; in contrast ADHD-I group did not have this pattern. In parallel, ADHD-I group had reduced degree centrality and clustering coefficient as well as increased closeness in task-positive and the default mode networks (prefrontal regions) after the training. More importantly, these reduced local functional processing mainly in the SVN were associated with less inattentive/internalizing problems after 8-week BCI-based intervention across ADHD patients. Our findings suggest that the BCI-based attention training facilitates behavioral improvement in ADHD children by reorganizing brain functional network from more regular to more random configurations, particularly renormalizing salience network processing. Future long-term longitudinal neuroimaging studies are needed to develop the BCI-based intervention approach to promote brain maturation in ADHD.Entities:
Mesh:
Year: 2018 PMID: 30097579 PMCID: PMC6086861 DOI: 10.1038/s41398-018-0213-8
Source DB: PubMed Journal: Transl Psychiatry ISSN: 2158-3188 Impact factor: 6.222
Demographic and imaging information of the participants
| ADHD-I ( | ADHD-NI ( | ||||
|---|---|---|---|---|---|
| Time point 1 | Time point 2 | Time point 1 | Time point 2 | ||
| Age, mean (SD), years | 9.00 (1.50) | 9.45 (1.29) | 0.412 | ||
| Gender | All males | All males | – | ||
| Handedness | All right | All right | – | ||
| Ethnicity | All Chinese | 10 Chinese, 1 Indian | 0.193 | ||
| Scanner type | 5 Tim Trio, 13 Prisma | 9 Tim Trio, 2 Prisma | 0.005* | ||
| Number of volumes left after motion scrubbing, mean (SD) | 208.389 (21.136) | 203.889 (32.881) | 193.727 (39.664) | 208.636 (27.496) | 0.595 |
| Mean absolute motion displacement (mm) | 1.037 (0.975) | 0.870 (0.571) | 1.339 (1.024) | 1.384 (0.820) | 0.327 |
| Max. absolute motion displacement (mm) | 2.321 (1.370) | 2.227 (1.396) | 3.021 (1.777) | 2.945 (1.412) | 0.367 |
| ADHD-RS inattention score | 16.278 (4.254) | 13.167(4.077) | 18.909 (5.186) | 17.273(5.764) | 0.148△: 0.038+ |
| CBCL internalizing problems | 7.889 (5.086) | 5.389 (4.175) | 12.364 (9.553) | 10.546 (7.841) | 0.110△: 0.441+ |
N number of subjects. “*” indicated there was significant difference with p-value < 0.05. “△” indicated the test was performed between the two groups at the first time point. “+” represents the interaction effect between group and time
Fig. 1Study design schematic diagram.
a Participants were randomly divided into two groups: intervention group (ADHD-I) and non-intervention group (ADHD-NI). All participants underwent resting-state functional magnetic resonance imaging (RS-fMRI) and neuropsychological assessments at baseline and follow-ups. Between the two visits, participants in ADHD-I group underwent a brain-computer-interface (BCI)-based attention game training (three sessions per week for 8 weeks). b The functional connectivity (FC) matrix among 141 regions of interest (ROIs) covering the whole brain was derived for each participant at each time point. Intra- and inter-network FC measures were calculated. The FC matrix was then thresholded to a sparse weighted network to derive network topological measures. These FC metrics were then used to examine the effect of the BCI-based intervention on brain networks and brain-behavioral associations
Fig. 2BCI-based intervention improved the attention in ADHD.
The ADHD-I group had significantly greater reduction in the ADHD-RS clinician inattention scores compared to the ADHD-NI group (p = 0.038)
Fig. 3Changes in intra- and inter-network functional connectivity (FC) of the attentional networks related to behavioral improvement in ADHD after the BCI-based intervention.
a Brain slices highlight the major intrinsic connectivity networks and subcortical regions[38]. b Intra- and inter-network FC showed significant group and time interaction effect (p < 0.05). Error bars represent standard errors. ADHD-NI group had increased FC within the salience/ventral attentional network (SVN) and between the SVN with dorsal attention (DAN) and other networks while ADHD-I did not exhibit this pattern. c, d FC changes of the intra-SVN and the inter-network between SVN and DAN by the BCI-based intervention were correlated with the behavior improvement of internalizing problems in ADHD children. SalVenAttn: salience/ventral attention network, DorAttn: dorsal attention network, SomMot: somatomotor network, Cont: executive control network
Fig. 4BCI-based intervention in ADHD is associated with brain network re-organization underlying behavioral improvement.
a Nodes showing significant time and group interaction effect on nodal degree, clustering coefficient, or closeness are presented. Brain network topology exhibited significant group and time interaction in nodal degree (b), clustering coefficient (c), and closeness (d) (p < 0.05). Error bars represent standard errors. Changes of nodal graph metrics by the BCI-based intervention were correlated with the behavior improvement of internalizing problems and inattention in ADHD children (e, f). ContA/B executive control network A/B (A or B refers to the subnetworks), SalVenAttn: salience/ventral attention network, DorAttn: dorsal attention network, Default: default mode network, PrCv: precentral ventral frontal cortex, PFCmp: medial posterior prefrontal cortex, PFCl: lateral prefrontal cortex, SPL: superior parietal lobule, FrMed: medial frontal cortex, PFCv: ventral prefrontal cortex