| Literature DB >> 27881961 |
Bo-Yong Park1, Jisu Hong1, Seung-Hak Lee1, Hyunjin Park2.
Abstract
Attention deficit hyperactivity disorder (ADHD) is a pervasive neuropsychological disorder that affects both children and adolescents. Child and adolescent ADHD patients exhibit different behavioral symptoms such as hyperactivity and impulsivity, but not much connectivity research exists to help explain these differences. We analyzed openly accessible resting-state functional magnetic resonance imaging (rs-fMRI) data on 112 patients (28 child ADHD, 28 adolescent ADHD, 28 child normal control (NC), and 28 adolescent NC). We used group independent component analysis (ICA) and weighted degree values to identify interaction effects of age (child and adolescent) and symptom (ADHD and NC) in brain networks. The frontoparietal network showed significant interaction effects (p = 0.0068). The frontoparietal network is known to be related to hyperactive and impulsive behaviors. Intelligence quotient (IQ) is an important factor in ADHD, and we predicted IQ scores using the results of our connectivity analysis. IQ was predicted using degree centrality values of networks with significant interaction effects of age and symptom. Actual and predicted IQ scores demonstrated significant correlation values, with an error of about 10%. Our study might provide imaging biomarkers for future ADHD and intelligence studies.Entities:
Keywords: IQ; attention deficit hyperactivity disorder; connectivity; group ICA; resting-state fMRI
Year: 2016 PMID: 27881961 PMCID: PMC5101198 DOI: 10.3389/fnhum.2016.00565
Source DB: PubMed Journal: Front Hum Neurosci ISSN: 1662-5161 Impact factor: 3.169
Demographic data of child and adolescent subjects in the attention deficit hyperactivity disorder (ADHD) and normal control (NC) groups (means and standard deviations are reported).
| ADHD group | Child ( | Adolescent ( | |
|---|---|---|---|
| Gender (male : female) | 22:6 | 22:6 | ∗1 |
| Age (years) | 8.59 (0.76) | 12.31 (1.80) | <0.001 |
| IA score | 71.82 (8.74) | 72.07 (9.60) | 0.9192 |
| HI score | 68.21 (11.89) | 71.75 (11.97) | 0.2725 |
| C score | 72.14 (8.10) | 74.39 (10.06) | 0.3607 |
| Subtype (IA : HI : C) | 7:0:21 | 7:1:20 | ∗0.9372 |
| FSIQ | 110.11 (13.70) | 105.32 (14.35) | 0.2073 |
| VIQ | 110.79 (12.70) | 106.29 (14.15) | 0.2158 |
| PIQ | 106.54 (14.99) | 102.89 (14.51) | 0.3596 |
| Gender (male : female) | 14:14 | 14:14 | ∗1 |
| Age (years) | 8.50 (0.78) | 13.68 (2.31) | <0.001 |
| FSIQ | 109.04 (12.67) | 111.75 (13.52) | 0.4417 |
| VIQ | 111.46 (14.74) | 111.96 (13.44) | 0.8950 |
| PIQ | 104.61 (12.58) | 109.00 (13.00) | 0.2042 |
Functionally interpretable independent components (ICs) and resting state networks (RSNs).
| RSNs | ICs | Network | Region | |
|---|---|---|---|---|
| 1 | 3 | 0.82 | Visual | Calcarine, Cuneus, Lingual gyrus, Superior occipital gyrus |
| 2 | 29 | 0.82 | Visual | Inferior occipital gyrus |
| 3 | 12 | 0.69 | Visual | Superior, middle, and inferior occipital gyri |
| 4 | 4, 6 | 0.47, 0.65 | Default mode | Medial orbitofrontal gyrus, Posterior cingulate cortex, Cuneus |
| 5 | - | - | Cerebellum | - |
| 6 | 14 | 0.46 | Sensorimotor | Paracentral lobule |
| 7 | 8 | 0.65 | Auditory | Rolandic operculum, Insula, Putamen, Pallidum, Heschl’s gyrus |
| 8 | 9 | 0.66 | Executive control | Superior medial frontal gyrus, Anterior cingulate cortex |
| 9 | 5 | 0.63 | Frontoparietal | Superior, middle, and inferior frontal gyri, Inferior parietal gyrus, Angular gyrus |
| 10 | 13, 19 | 0.52, 0.46 | Frontoparietal | Inferior frontal gyrus, Angular gyrus |
Two-way ANOVA results of all ICs.
| ICs | RSNs | Network | DOF | ||
|---|---|---|---|---|---|
| 3 | 1 | Visual | 1 | 2.0622 | 0.1539 |
| 29 | 2 | Visual | 1 | 2.5908 | 0.1104 |
| 12 | 3 | Visual | 1 | 1.0103 | 0.3171 |
| 4 | 4 | Default mode | 1 | 0.0381 | 0.8457 |
| 6 | 4 | Default mode | 1 | 1.3595 | 0.2462 |
| 14 | 6 | Sensorimotor | 1 | 0.1797 | 0.6725 |
| 8 | 7 | Auditory | 1 | 0.2283 | 0.6338 |
| 9 | 8 | Executive control | 1 | 1.2503 | 0.2660 |
| 13 | 10 | Frontoparietal | 1 | 0.0115 | 0.9149 |
| 19 | 10 | Frontoparietal | 1 | 1.0749 | 0.3022 |
Correlation between degree values of the identified IC and IQ scores.
| ICs (RSNs) | FSIQ | VIQ | PIQ | |||
|---|---|---|---|---|---|---|
Prediction of IQ scores using degree values of the identified IC.
| IQ | Information | IC 5 (RSN 9) |
|---|---|---|
| FSIQ | ||
| RMS error | ||
| Percent error [%] | ||
| VIQ | ||
| RMS error | ||
| Percent error [%] | ||
| PIQ | ||
| RMS error | ||
| Percent error [%] |