| Literature DB >> 31680915 |
Keitaro Machida1, Michael Murias2, Katherine A Johnson1.
Abstract
Individuals with Attention Deficit Hyperactivity Disorder (ADHD) tend to perform cognitive tasks with greater Response Time Variability (RTV). Greater RTV in ADHD may be due to inefficient functional connectivity of the brain during information processing. This study aimed to investigate the relationship between brain connectivity, RTV, and levels of ADHD symptoms. Twenty-eight children aged 9-12 years and 49 adolescents aged 15-18 years performed the Sustained Attention to Response Task (SART) while EEG was recorded. The participants' levels of ADHD symptoms were measured using self- and parent-rated questionnaires. The ex-Gaussian analysis and The Fast Fourier Transform were used to measure multiple aspects of RTV. Functional connectivity between 64 electrodes was computed during task performance, and global efficiency and modularity were calculated, reflecting integration and segregation of the brain, respectively. There was a positive association between multiple RTV measures and the level of ADHD symptoms, where participants with higher levels of ADHD symptoms showed greater RTV, except for sigma from the ex-Gaussian analysis. More efficient brain network activity, measured by global efficiency, was associated with reduced RTV. Children showed greater RTV and less efficient brain network activity compared with the adolescents. These findings support the view that stable responses are achieved with more integrated (and efficient) brain connectivity.Entities:
Keywords: ADHD (attention deficit and hyperactivity disorder); EEG; graph theory; response time variability; sustained attention
Year: 2019 PMID: 31680915 PMCID: PMC6803451 DOI: 10.3389/fnhum.2019.00363
Source DB: PubMed Journal: Front Hum Neurosci ISSN: 1662-5161 Impact factor: 3.169
Analysis for behavioral measures.
| Mean RT | ADHD | β = −0.067, CI = [−1.35, 1.19] | |||
| Age | β = −48.8, CI = [−66.9, −31.2]∗ | ||||
| SART | β = 0.65, CI = [−10.6, 11.9] | ||||
| SDRT | ADHD | β = 1.19, CI = [0.556, 1.80]∗ | |||
| Age | β = −26.0, CI = [−34.8, −17.2]∗ | ||||
| SART | β = 2.34, CI = [−1.54, 6.22] | ||||
| Mu | ADHD | β = −2.06, CI = [−3.45, −0.650]∗ | |||
| Age | β = −35.0, CI = [−55.0, −15.2]∗ | ||||
| SART | β = −0.110, CI = [−15.4, 13.7] | ||||
| Sigma | ADHD | β = −0.275, CI = [−0.828, 0.290] | |||
| Age | β = −20.1, CI = [−28.3, −11.9]∗ | ||||
| SART | β = 1.04, CI = [−4.19, 6.43] | ||||
| Tau | ADHD | β = 1.99, CI = [1.27, 2.68]∗ | |||
| Age | β = −13.7, CI = [−23.6, −3.85]∗ | ||||
| SART | β = 0.739, CI = [−6.10, 7.39] | ||||
| FFAUS | ADHD | β = 3.18, CI = [0.933, 5.25]∗ | |||
| Age | β = −70.3, CI = [−102.6, −41.3]∗ | ||||
| SART | β = 5.01, CI = [−6.79, 16.2] | ||||
| SFAUS | ADHD | β = 13.3, CI = [3.59, 23.4] | Age × Flanker ( | β = 46.5, CI = [6.23, 87.9] | Child:Con − Child:Inc., |
| Age | β = −356.9, CI = [−500.8, −216.9]∗ | Adol:Con − Adol:Inc., | |||
| SART | β = 1.77, CI = [−72.2, 70.4] | ||||
| Omission errors | ADHD | β = 0.023, CI = [−0.002, 0.046] | |||
| Age | β = −0.780, CI = [−1.13, −0.444]∗ | ||||
| SART | β = 0.055, CI = [0.052, 0.163] | ||||
| Commission errors | ADHD | β = 0.006, CI = [−0.004, 0.015] | |||
| Age | β = −0.539, CI = [−0.676, −0.406]∗ | ||||
| SART | β = −0.111, CI = [−0.200, −0.024]∗ |
Behavioral measures with network measures.
| Mean RT | GE (theta) | β = −423.6, CI = [−899.4, 23.7] | |||
| Mean RT | GE (alpha) | β = −315.1, CI = [−913.2, 297.8] | |||
| Mean RT | GE (beta) | β = 496.8, CI = [−730.8, 1678.8] | |||
| Mean RT | Mod (theta) | β = 745.0, CI = [−123.5, 1636.0] | |||
| Mean RT | Mod (alpha) | β = 389.8, CI = [−433.5, 1191.9] | |||
| Mean RT | Mod (beta) | β = 270.0, CI = [−1657.1, 2123.4] | |||
| SDRT | GE (theta) | β = −280.9, CI = [−491.1, −63.8]∗ | |||
| SDRT | GE (alpha) | β = −96.4, CI = [−327.7, 143.9] | |||
| SDRT | GE (beta) | β = 0.101.1, CI = [−436.7, 584.5] | |||
| SDRT | Mod (theta) | β = 252.7 CI = [−66.0, 629.4] | Mod (theta) × Age × SART ( | β = 403.0, CI = [151.6, 663.1] | Mod:Adol:Fixed (slope of Mod = 1206.1, CI = [610.4, 1801.9]∗) – Mod:Child:Fixed (slope of Mod = −405.1, CI = [−997.9, 187.9]), |
| SDRT | Mod (alpha) | β = −166.4, CI = [−482.7, 158.4] | |||
| SDRT | Mod (beta) | β = −799.8, CI = [−1567.5, 27.2] | Mod (beta) × Age ( | β = 876.5, CI = [95.6, 1675.4] | Mod:Child (slope of Mod = −1676.3, CI = [−3026.7, −326.0]∗) – Mod:Adol (slope of Mod = 76.7, CI = [−793.3, 946.6]), |
| Mu | GE (theta) | β = 129.7, CI = [−698.3, 417.8] | |||
| Mu | GE (alpha) | β = −133.9, CI = [−876.9, 578.4] | |||
| Mu | GE (beta) | β = 307.6, CI = [−1121.0, 1707.6] | |||
| Mu | Mod (theta) | β = 475.2, CI = [−579.2, 1602.1] | |||
| Mu | Mod (alpha) | β = 528.5, CI = [−460.0, 1494.8] | |||
| Mu | Mod (beta) | β = 869.4, CI = [−1416.1, 3234.9] | |||
| Sigma | GE (theta) | β = −94.4, CI = [−336.0, 132.4] | |||
| Sigma | GE (alpha) | β = −78.8, CI = [−353.1, 179.7] | |||
| Sigma | GE (beta) | β = −247.1, CI = [−794.0, 306.9] | |||
| Sigma | Mod (theta) | β = 18.6, CI = [−362.7, 447.2] | Mod (theta) × Age × SART | β = 510.6, CI = [163.8, 828.9] | Mod:Adol:Fixed (slope of Mod = 905.5, CI = [213.0, 1598.0]∗) – Mod:Child:Fixed (slope of Mod = −707.9, CI = [−1412.8, −3.01]∗), |
| Sigma | Mod (alpha) | β = −105.0, CI = [−481.9, 247.8] | |||
| Sigma | Mod (beta) | β = −773.3, CI = [−1637.2, 122.1] | |||
| Tau | GE (theta) | β = −310.9, CI = [−622.4, −23.2]∗ | |||
| Tau | GE (alpha) | β = −129.7, CI = [−512.1, 236.1] | |||
| Tau | GE (beta) | β = 294.8, CI = [−513.1, 1002.5] | |||
| Tau | Mod (theta) | β = 254.3, CI = [−315.4, 818.9] | |||
| Tau | Mod (alpha) | β = −56.6, CI = [−555.9, 436.2] | |||
| Tau | Mod (beta) | β = −374.4, CI = [−1544.2, 754.9] | |||
| FFAUS | GE (theta) | β = −903.1, CI = [−1586.7, −211.8]∗ | |||
| FFAUS | GE (alpha) | β = 166.8, CI = [−599.7, 895.8] | |||
| FFAUS | GE (beta) | β = 436.2, CI = [−1093.2, 1934.3] | |||
| FFAUS | Mod (theta) | β = 1029.0, CI = [−83.5, 2151.7] | |||
| FFAUS | Mod (alpha) | β = −510.4, CI = [−1486.7, 419.8] | |||
| FFAUS | Mod (beta) | β = −523.0, CI = [−2894.4, 1883.2] | |||
| SFAUS | GE (theta) | β = −4356.2, CI = [−7943.4, −473.3]∗ | |||
| SFAUS | GE (alpha) | β = −2072.9, CI = [−6556.4, 2361.4] | |||
| SFAUS | GE (beta) | β = 5391.1, CI = [−3356.1 14423.1] | |||
| SFAUS | Mod (theta) | β = 865.5, CI = [−5500.0, 7345.1] | |||
| SFAUS | Mod (alpha) | β = −5613.3, CI = [−11091.6, 82.2] | Mod (alpha) × Age ( | β = 6179.6, CI = [947.1, 11368.4] | Mod:Child (slope of Mod = −11792.9, CI = [−20490.4, −3095.4]∗) – Mod:Adol (slope of Mod = 566.3, CI = [−6193.9, 7326.6]), |
| SFAUS | Mod (beta) | β = −7653.7, CI = [−21731.2, 5397.7] | Mod (beta) × Age × SART ( | β = 10723.1, CI = [956.7, 20353.7] | Mod:Child:Fixed (slope of Mod = −38294.6, CI = [−65478.8, 11110.3]∗) – Mod:Adol:Fixed (slope of Mod = 3355.9, CI = [−16420.5, 23132.4]∗), |
FIGURE 1Associations between SDRT and modularity in the theta band for each age group and two versions of the SART. A similar association was also found for sigma.
FIGURE 2Associations between SFAUS from the FFT analysis and modularity in the alpha band for children and adolescents. In this figure, data from the fixed and random conditions of the SART have been aggregated for each age group.
FIGURE 3Associations between SDRT and modularity in the beta band for each age group. In this figure, data from the fixed and random conditions of the SART have been aggregated for each age group.
FIGURE 4Associations between SFAUS and modularity in the beta band for each age group. The panel was split by the fixed and random versions of the SART.
Outcomes of analysis for network measures during the task period.
| GE (theta) | ADHD | β = −0.0004, CI = [−0.0011, 0.0002] | ADHD × Age ( | β = −0.0007, CI = [−0.0013, −0.0001] | ADHD:Adol (slope of ADHD = −0.0011, CI = [−0.0020, −0.0002]∗) − ADHD:Child (slope of ADHD = 0.0003, CI = [−0.0007, 0.0013]), |
| Age | β = 0.0117, CI = [0.0024, 0.0211]∗ | ||||
| SART | β = −0.0013, CI = [−0.0043, 0.0017] | ||||
| GE (alpha) | ADHD | β = −0.0003, CI = [−0.0009, 0.0003] | Age x SART ( | β = 0.0058, CI = [0.0020, 0.0096] | Adol:Fixed −Child:Fixed, |
| Age | β = 0.0101, CI = [0.0020, 0.0187]∗ | ||||
| SART | β = −0.0010, CI = [−0.0048, 0.0027] | ||||
| GE (beta) | ADHD | β = 0.0000, CI = [−0.0001, 0.0002] | |||
| Age | β = −0.0011, CI = [−0.0036, 0.0016] | ||||
| SART | β = 0.0005, CI = [−0.0016, 0.0026] | ||||
| Mod (theta) | ADHD | β = 0.0002, CI = [−0.0001, 0.0004] | |||
| Age | β = −0.0060, CI = [−0.0093, −0.0027]∗ | ||||
| SART | β = 0.0002, CI = [−0.0019, 0.0022] | ||||
| Mod (alpha) | ADHD | β = −0.0000, CI = [−0.0002, 0.0002] | |||
| Age | β = −0.0046, CI = [−0.0078, −0.0012]∗ | ||||
| SART | β = −0.0001, CI = [−0.0027, 0.0024] | ||||
| Mod (beta) | ADHD | β = −0.0001, CI = [−0.0003, −0.0000]∗ | |||
| Age | β = −0.0002, CI = [−0.0018, 0.0015] | ||||
| SART | β = −0.0005, CI = [−0.0016, 0.0005] |
FIGURE 5Associations between global efficiency in the theta band during the task and ADHD Index. In this figure, data from the fixed and random conditions of the SART have been aggregated for each age group.
FIGURE 6Bar graph representing global efficiency in the alpha band for each age group and the fixed and random versions of the SART. Error bars indicate the standard error.