| Literature DB >> 30559954 |
Yu Veronica Sui1,2, Jeffrey Donaldson1, Laura Miles1, James S Babb1, Francisco Xavier Castellanos3,4, Mariana Lazar1,2.
Abstract
Background: The corpus callosum is implicated in the pathophysiology of autism spectrum disorder (ASD). However, specific structural deficits and underlying mechanisms are yet to be well defined.Entities:
Keywords: Autism; Corpus callosum; Diffusional kurtosis imaging; Interhemispheric connectivity; Processing speed
Mesh:
Year: 2018 PMID: 30559954 PMCID: PMC6293510 DOI: 10.1186/s13229-018-0245-1
Source DB: PubMed Journal: Mol Autism Impact factor: 7.509
Fig. 1The five callosal regions examined in this work, depicted in mid-sagittal cross-section: segment 1—red, segment 2—orange, segment 3—yellow, segment 4—green, segment 5—blue
Summary of demographic and IQ data for the TD and ASD groups. Significant group differences were found in processing speed and its two component subtests, DigitSC and SS
| TD ( | ASD ( | ||
|---|---|---|---|
| Age | 21.71 ± 2.14 | 21.38 ± 2.39 | .678 |
| Handedness | 14.53 ± 3.59 | 14.81 ± 3.04 | .809 |
| Full score IQ | 116.65 ± 11.98 | 108.88 ± 17.39 | .143 |
| Verbal comprehension index | 119.18 ± 13.14 | 115.13 ± 23.75 | .545 |
| Perceptual organization index | 113.76 ± 15.34 | 107.56 ± 12.06 | .208 |
| Working memory index | 107.76 ± 12.39 | 104.56 ± 15.40 | .514 |
| Processing speed index | 108.71 ± 14.28 | 93. 44 ± 18.37 | .012* |
| DigitSC | 11.12 ± 2.71 | 8.13 ± 4.59 | .028* |
| SS | 12.41 ± 2.85 | 9.56 ± 2.92 | .008* |
*p < .05
Fig. 2Group comparisons for DKI metrics by segment, with segment 1 to 5 representing anterior to posterior callosal region (*p < .05). Black and red lines represent TD controls and ASD participants, respectively. Error bars depict standard error
Summary of group differences from two-way ANOVA for DKI measures, including number of volumes, faxon, Daxon, ADextra, and RDextra across callosal body and by callosal segment (F, uncorrected p, and effect size partial η values are reported)
| TD | ASD |
|
| ||
|---|---|---|---|---|---|
|
| .422 ± .020 | .405 ± .014 | 7.47 | .19 | |
| | .394 ± .024 | .379 ± .022 | 3.42 | .074 | .10 |
| | .404 ± .024 | .387 ± .023 | 4.34 |
| .12 |
| | .429 ± .022 | .411 ± .025 | 4.30 | .15 | |
| | .427 ± .023 | .407 ± .016 | 8.52 | .22 | |
| | .440 ± .021 | .423 ± .017 | 6.51 | .17 | |
|
| 1.001 ± .067 | .961 ± .052 | 4.26 | .12 | |
| | .921 ± .087 | .883 ± .061 | 2.06 | .161 | .06 |
| | .913 ± .071 | .870 ± .062 | 3.27 | .080 | .10 |
| | .972 ± .082 | .920 ± .063 | 4.00 |
| .12 |
| | 1.047 ± .094 | .992 ± .088 | 3.10 | .088 | .09 |
| | 1.073 ± .072 | 1.040 ± .076 | 1.62 | .213 | .05 |
| ADextra | 2.338 ± .068 | 2.313 ± .083 | 1.76 | .194 | .05 |
| RDextra | .940 ± .041 | .926 ± .032 | 0.94 | .339 | .03 |
| Number of volumes | 2854 ± 718 | 2882 ± 542 | 0.02 | .901 | .00 |
Italics indicate p < .05 uncorrected
*Significant result after correcting for multiple comparisons using Benjamini-Hochberg procedure with false discovery rate (FDR) set at 5%
Regression models for TD group describing processing speed scores’ dependence on faxon and Daxon in the mid and posterior segments, controlling for the number of voxels (NumVox) in that segment. Adjusted R2 (i.e., R2 adjusted for the number of predictors in the model) and uncorrected p values are reported
| Model | Predictors | Sig. (predictors) | Sig. (model) | ||
|---|---|---|---|---|---|
| 1 (DigitSC) | Covariate | NumVox (seg1) | .255 | .215 | .179 |
| Investigated predictors | .084 | ||||
| .120 | |||||
| ADextra (seg1) | .416 | ||||
| RDextra (seg1) | .243 | ||||
| 2 (DigitSC) | Covariate | NumVox (seg2) | .511 | .312 | .100 |
| Investigated predictors | .284 | ||||
| .080 | |||||
| ADextra (seg2) | .213 | ||||
| RDextra (seg2) | .429 | ||||
| 3 (DigitSC) | Covariate | NumVox (seg3) | .663 | .025* | .385 |
| Investigated predictors | .014* | ||||
| .053 | |||||
| 4 (DigitSC) | Covariate | NumVox (seg3) | .986 | .035* | .382 |
| Investigated predictor | RDextra (seg3) | .019* | |||
| 5 (DigitSC) | Covariate | NumVox (seg4) | .088 | .016* | .429 |
| Investigated predictors | .003* | ||||
| ADextra (seg4) | .056 | ||||
| 6 (DigitSC) | Covariate | NumVox (seg5) | .005* | .001* | .707 |
| Investigated predictors | .001* | ||||
| .002* | |||||
| ADextra (seg5) | .012* | ||||
| 7 (SS) | Covariate | NumVox (seg1) | .339 | .399 | .040 |
| Investigated predictors | .461 | ||||
| .748 | |||||
| ADextra (seg1) | .719 | ||||
| RDextra (seg1) | .650 | ||||
| 8 (SS) | Covariate | NumVox (seg2) | .004* | .020* | .407 |
| Investigated predictors | .026* | ||||
| .095 | |||||
| 9 (SS) | Covariate | NumVox (seg3) | .269 | .182 | .212 |
| Investigated predictors | .752 | ||||
| .180 | |||||
| ADextra (seg3) | .289 | ||||
| RDextra (seg3) | .308 | ||||
| 10 (SS) | Covariate | NumVox (seg4) | .253 | .366 | .044 |
| Investigated predictors | .378 | ||||
| .354 | |||||
| ADextra (seg4) | .928 | ||||
| RDextra (seg4) | .921 | ||||
| 11 (SS) | Covariate | NumVox (seg1) | .190 | .197 | .049 |
| Investigated predictors | .556 | ||||
| .564 | |||||
| ADextra (seg1) | .985 | ||||
| RDextra (seg1) | .939 | ||||
*p < .05
Regression models for ASD group describing processing speed scores’ lack of dependence on faxon and Daxon in the mid and posterior segments. As in the analyses reported in Table 3, analyses controlled for the number of voxels (NumVox) in the designated segment. Adjusted R2 (i.e., R2 adjusted for the number of predictors in the model) and uncorrected p values are reported
| Model | Predictors | Sig. (predictors) | Sig. (model) | ||
|---|---|---|---|---|---|
| 1 (DigitSC) | Covariate | NumVox (seg1) | .997 | .254 | .160 |
| Investigated predictors | .785 | ||||
| .110 | |||||
| ADextra (seg1) | .138 | ||||
| RDextra (seg1) | .587 | ||||
| 2 (DigitSC) | Covariate | NumVox (seg2) | .614 | .339 | .023 |
| Investigated predictors | .371 | ||||
| .950 | |||||
| ADextra (seg2) | .498 | ||||
| RDextra (seg2) | .836 | ||||
| 3 (DigitSC) | Covariate | NumVox (seg3) | .549 | .738 | − .1781 |
| Investigated predictors | .344 | ||||
| .894 | |||||
| ADextra (seg3) | .220 | ||||
| RDextra (seg3) | .630 | ||||
| 4 (DigitSC) | Covariate | NumVox (seg4) | .407 | .221 | .190 |
| Investigated predictors | .061 | ||||
| .812 | |||||
| ADextra (seg4) | .099 | ||||
| RDextra (seg4) | .524 | ||||
| 5 (DigitSC) | Covariate | NumVox (seg1) | .970 | .870 | − .2751 |
| Investigated predictors | .748 | ||||
| .830 | |||||
| ADextra (seg1) | .509 | ||||
| RDextra (seg1) | .723 | ||||
| 6 (SS) | Covariate | NumVox (seg1) | .670 | .372 | .046 |
| Investigated predictors | .906 | ||||
| .261 | |||||
| ADextra (seg1) | .143 | ||||
| RDextra (seg1) | .963 | ||||
| 7 (SS) | Covariate | NumVox (seg2) | .675 | .362 | .033 |
| Investigated predictors | .160 | ||||
| .550 | |||||
| ADextra (seg2) | .813 | ||||
| RDextra (seg2) | .386 | ||||
| 8 (SS) | Covariate | NumVox (seg3) | .269 | .339 | .066 |
| Investigated predictors | .752 | ||||
| .180 | |||||
| ADextra (seg3) | .289 | ||||
| RDextra (seg3) | .308 | ||||
| 9 (SS) | Covariate | NumVox (seg4) | .253 | .375 | .008 |
| Investigated predictors | .378 | ||||
| .354 | |||||
| ADextra (seg4) | .928 | ||||
| RDextra (seg4) | .921 | ||||
| 10 (SS) | Covariate | NumVox (seg1) | .190 | .394 | .052 |
| Investigated predictors | .556 | ||||
| .564 | |||||
| ADextra (seg1) | .985 | ||||
| RDextra (seg1) | .939 | ||||
1Negative adjusted R2 values indicate poor fit of the data
Fig. 3Partial correlation plots for one of the regression models describing digit-symbol coding score dependence on callosal diffusion metrics. Top: model 5 for TD group (Table 3), bottom: equivalent model for the ASD group (Tables 4). Significant partial correlations are noted in the TD but not in the ASD group