| Literature DB >> 28070266 |
Carlos A Pardo1, Cristan A Farmer2, Audrey Thurm2, Fatma M Shebl3, Jorjetta Ilieva1, Simran Kalra2, Susan Swedo2.
Abstract
BACKGROUND: The causes of autism likely involve genetic and environmental factors that influence neurobiological changes and the neurological and behavioral features of the disorder. Immune factors and inflammation are hypothesized pathogenic influences, but have not been examined longitudinally.Entities:
Keywords: Autism; CSF; Chemokine; Cytokine; Growth factor; Immune
Mesh:
Substances:
Year: 2017 PMID: 28070266 PMCID: PMC5217649 DOI: 10.1186/s13229-016-0115-7
Source DB: PubMed Journal: Mol Autism Impact factor: 7.509
Participant demographic characteristics (for sample 1)
| Full sample | Subsample with CSF | ||
|---|---|---|---|
| AUT | TYP | AUT | |
|
| 104 | 54 | 67 |
| Male, | 86 (83) | 41 (76) | 55 (82) |
| Race, | |||
| Black | 20 (19) | 4 (7) | 12 (18) |
| Asian | 4 (4) | 0 | 3 (5) |
| White | 74 (71) | 44 (81) | 47 (70) |
| Multiple races | 5 (5) | 5 (9) | 4 (6) |
| Unknown | 1 (1) | 1 (2) | 1 (2) |
| Ethnicity, | |||
| Hispanic | 7 (7) | 4 (7) | 4 (6) |
| Non-Hispanic | 97 (93) | 49 (90) | 63 (94) |
| Unknown | 0 | 1 (2) | 0 |
| Age, | 4.41 ± 1.27 | 3.64 ± 1.11 | 3.60 ± 0.95 |
| Full scale DQ, | 50.49 ± 18.04 | 109.91 ± 12.90 | 53.42 ± 16.32 |
| Body mass index | 16.68 ± 2.21 | 16.53 ± 1.42 | 16.52 ± 1.51 |
| Number of samples, | |||
| 1 | 104 (100%) | 54 (100%) | 67 (100%) |
| 2 | 82 (78) | 32 (59) | 31 (46) |
| 3 | 37 (36) | 25 (46) | -- |
| 4 | 11 (11) | 6 (11) | -- |
| Parent reported immunologic historya, | |||
| None | 68 (65) | 44 (81) | 43 (64) |
| Allergies (food, environmental, seasonal) | 36 (35) | 10 (19) | 24 (36) |
| Immunodeficiency or autoimmune disorder | 0 | 0 | 0 |
| Serum basic features, | |||
| WBC count | 8.15 ± 2.31 | 7.16 ± 1.73 | 8.42 ± 2.37 |
| IgG, mg/dL | 838.07 ± 251.71 | 760.94 ± 188.37 | 774.52 ± 252.22 |
| IgM, mg/dL | 83.95 ± 35.52 | 84.89 ± 33.78 | 80.73 ± 37.48 |
| IgA, mg/dL | 88.05 ± 51.82 | 86.81 ± 46.77 | 78.48 ± 46.26 |
| CSF basic features, | |||
| WBC count | – | – | 0.79 ± 1.03 |
| Albumin quotient | – | – | 2.62 ± 1.60 |
Data missing for two participants in each group.
Note: Sample size differed slightly for basic laboratory features. Serum WBC count: AUT, n = 101; TYP, n = 52. Serum IgG/IgM/IgA: AUT, n = 95; TYP, n = 52. CSF WBC count, n = 63. CSF albumin quotient: n = 61. Body mass index sample size was AUT (serum), n = 85; TYP, n = 47; AUT (CSF), n = 64
Serum results of mixed models
| Limit of detection (pg/mL) | % outside limit of detection | Within | Test statistics from mixed model | |||
|---|---|---|---|---|---|---|
| Group (1 | Age (2 | Age2 (2 | ||||
|
|
|
| ||||
| Cytokines | ||||||
| IL-1α | 0.35 | 15 | 149 | 0.01 (.94) | ||
| IL-1RAa | 0.09 | 49 | 193 | 0.27 (.85) | ||
| IL-1βa | 0.03 | 49 | 193 | 0.23 (.85) | ||
| IL-2 | 0.03 | 29 | 117 | 0.46 (.81) | ||
| sIL-2RAa | 0.30 | 33 | 189 | 0.43 (.81) | 7.72 (.01) | 3.65 (.13) |
| IL-3a | 0.01 | 46 | 193 | 4.80 (.13) | ||
| IL-4 | 0.04 | 28 | 116 | 0.59 (.77) | ||
| IL-5 | 0.01 | 10 | 163 | 0.2 (.86) | ||
| IL-6a | 0.06 | 34 | 193 | 0.23 (.85) | ||
| IL-7 | 0.03 | 12 | 156 | 0.89 (.70) | ||
| IL-9 | 0.01 | 6 | 171 | 0.03 (.93) | ||
| IL-10 | 0.01 | 27 | 119 | 0.1 (.88) | 3.97 (.11) | 4.5 (.07) |
| IL-12p40 | 0.57 | 16 | 146 | 1.12 (.60) | 5.81 (.04) | |
| IL-12p70 | 0.05 | 15 | 147 | 1.27 (.60) | ||
| IL-13a | 0.01 | 37 | 193 | 0.62 (.77) | ||
| IL-15a | 0.17 | 52 | 193 | 0.40 (.81) | ||
| IL-17 | 0.01 | 5 | 177 | 0.10 (.88) | ||
| IFNα2 | 0.12 | 5 | 174 | 0.79 (.73) | ||
| IFNγ | 0.04 | 2 | 186 | 0.02 (.93) | ||
| TNFα | na | 0 | 190 | 0.02 (.93) | 13.10 (<.001) | |
| TNFβ | 0.02 | 27 | 123 | 0.04 (.93) | ||
| TGFα | 0.02 | 12 | 153 | 1.12 (.60) | ||
| Growth factors | ||||||
| EGF | 2.70 | 7 | 170 | 8.64 (.04) | ||
| G-CSF | 1.65 | 1 | 186 | 0.10 (.88) | 3.99 (.11) | |
| GM-CSF | 1.85 | 2 | 186 | 0.36 (.81) | ||
| VEGF | 3.36 | 3 | 185 | 2.26 (.43) | ||
| FGF-2 | 4.08 | 8 | 166 | 0.02 (.93) | ||
| FLT-3La | 0.04 | 57 | 193 | 1.19 (.60) | ||
| sCD40La | 1 671 700 | 53 | 193 | 15.0 (<.001) | ||
| Chemokines | ||||||
| CCL2 (MCP-1) | na | 0 | 192 | 2.04 (.44) | ||
| CCL3 (MIP-1α) | 0.03 | 8 | 169 | 1.59 (.53) | ||
| CCL4 (MIP-1β) | 2.9 | 1 | 191 | 0.15 (.88) | ||
| CCL7 (MCP-3) | 0.73 | 21 | 132 | 0.59 (.77) | ||
| CCL11 (EOTAXIN) | 17.06 | 1 | 188 | 0.01 (.94) | ||
| CCL22 (MDC) | na | 0 | 190 | 4.73 (.13) | 7.92 (.01) | |
| CXCL1 (GRO) | na | 0 | 193 | 1.65 (.53) | ||
| CXCL8 (IL-8) | na | 0 | 189 | 0.12 (.88) | 1.63 (.53) | 5.18 (.07) |
| CXCL10 (IP-10) | na | 0 | 192 | 2.59 (.42) | ||
| CX3CL1 (FRACTALKINE) | 2.1 | 26 | 119 | 0.02 (.93) | ||
Note: df = degrees of freedom; na = not applicable. Out-of-range values were below the limit of detection for all variables except sCD40L, for which out-of-range refers to values above the limit of detection. Out-of-range values were set to missing, except where the % outside the limit of detection was ≥30%. Those variables were analyzed as categorical (out-of-range versus detectable), modeled with a binary distribution and logit link. A series of nested models were tested; sequential models for quadratic, linear, and no effect of age were tested. Where a linear or quadratic term was significant, a contrast statement was used to determine the difference in linear slope or quadratic shape between groups; in no case was this contrast statistically significant. Raw p values were used to determine the best-fitting model; FDR-adjustment was performed after this model was selected and are presented in the table; many terms did not remain significant after correction. All models included sex as a covariate and a random effect of intercept to control for observations correlated within subject
aVariables that were analyzed as categorical (out-of-range versus detectable) and modeled with a binary distribution and logit link. The remaining variables were analyzed as Ln-transformed continuous variables with a Gaussian distribution
Fig. 1Estimated intraclass correlations (ICC) for each variable. The estimated ICC was obtained using the ratio of variance explained by the subject cluster to the total variance, controlling for age (out-of-range values were replaced with the limit of detection). Lower values indicate less variance explained by subject cluster, or less within-subject correlation or stability. By convention, values above .60 are considered moderate and above .80 are considered strong
Estimated stability of CSF immune mediators in children with autism, controlling for age and time-to-follow-up
| Partial Spearman correlations for variables with <30% outside the LOD | % <LOD for one or both samples | Rate of sample 2 <LOD where sample 1 <LOD | |||
|---|---|---|---|---|---|
|
| Partial correlation, 95% CI |
| |||
| Cytokines | |||||
| IL-1A | 26 | .33 (−.09–.64) | .11 | 16 | 1/5 (20%) |
| IL-IRA | 87 | 21/25 (84%) | |||
| IL-1B | 87 | 23/27 (85%) | |||
| IL-2 | 84 | 20/23 (87%) | |||
| sIL-2RA | 65 | 15/17 (88%) | |||
| IL-3 | 52 | 15/15 (100%) | |||
| IL-4 | 97 | 29/29 (100%) | |||
| IL-5 | 28 | .85 (.68–.93) | <.0001 | 10 | 1/3 (33%) |
| IL-6 | 94 | 28/29 (97%) | |||
| IL-7 | 71 | 19/19 (100%) | |||
| IL-9 | 31 | .82 (.63–.91) | <.0001 | 0 | na |
| IL-10 | 35 | 8/11 (73%) | |||
| IL-12p40 | 61 | 13/19 (68%) | |||
| IL-12p70 | 94 | 24/25 (96%) | |||
| IL-13 | 100 | 30/31 (97%) | |||
| IL-15 | 31 | .80 (.61–.90) | <.0001 | 0 | na |
| IL-17 | 94 | 27/28 (96%) | |||
| IFNα2 | 30 | .74 (.50–.87) | <.0001 | 3 | 0/1 (0%) |
| IFNγ | 68 | 16/18 (89%) | |||
| TNFα | 31 | .62 (.32–.80) | .004 | 0 | na |
| TNFβ | 65 | 12/16 (75%) | |||
| TGFα | 31 | .84 (.67–.92) | <.0001 | 0 | na |
| Growth factors | |||||
| EGF | 100 | 31/31 (100%) | |||
| G-CSF | 31 | .53 (.19–.75) | .003 | 0 | na |
| GM-CSF | 31 | .72 (.48–.86) | <.0001 | 0 | na |
| VEGF | 97 | 26/29 (90%) | |||
| FGF-2 | 74 | 17/21 (81%) | |||
| FLT-3L | 31 | .82 (.64–.91) | <.0001 | 0 | na |
| sCD40L | 27 | .63 (.30–.82) | .0008 | 13 | 1/4 (25%) |
| Chemokines | |||||
| CCL2 (MCP-1) | 31 | .64 (.35–.81) | .0002 | 0 | na |
| CCL3 (MIP-1α) | 58 | 9/13 (69%) | |||
| CCL4 (MIP-1β) | 48 | 12/12 (100%) | |||
| CCL7 (MCP-3) | 71 | 12/19 (63%) | |||
| CCL11 (EOTAXIN) | 97 | 26/30 (87%) | |||
| CCL22 (MDC) | 32 | 5/10 (50%) | |||
| CXCL1 (GRO) | 29 | .53 (.18–.75) | .004 | 6 | 0/2 (0%) |
| CXCL8 (IL-8) | 31 | .51 (.17–.74) | .004 | 0 | na |
| CXCL10 (IP-10) | 31 | .50 (.16–.73) | .01 | 0 | na |
| CX3CL1 (FRACTALKINE) | 31 | .42 (.06–.68) | .02 | 0 | na |
Note:
Fig. 2Relative concentrations and percent transfer (CSF:Serum) in AUT group with contemporaneous CSF and serum samples (n = 54). a The relative ln-transformed concentration of analytes (labeled in the Y axis of (b)) in CSF versus serum. b The median percent transfer (with interquartile range, IQR) for each analyte. For ease of presentation, Y axis units in (b) are log10. Values outside the range of detection were imputed with the limit of detection. Percent transfer values of 100% (gray horizontal line) reflect equal CNS and serum production