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. Author manuscript; available in PMC: 2021 May 1.
Published in final edited form as: J Autism Dev Disord. 2020 May;50(5):1834–1840. doi: 10.1007/s10803-019-03921-5

Brief Report: A Gene Enrichment Approach Applied to Sleep and Autism

Emily A Abel 1, AJ Schwichtenberg 2, Olivia R Mannin 3, Kristine Marceau 4
PMCID: PMC6848755  NIHMSID: NIHMS1021498  PMID: 30790196

Abstract

Sleep disorders (SD) are common in autism spectrum disorder (ASD), yet relatively little is known about the potential genetic mechanisms involved in SD and ASD comorbidity. The current study begins to fill this gap with a gene enrichment study that 1) identifies risk genes that contribute to both SD and ASD which implicate circadian entrainment, melatonin synthesis, and several genetic syndromes. An over-representation analysis identified several enriched pathways that suggest dopamine and serotonin synapses as potential shared SD and ASD mechanisms. This overlapping gene set and the highlighted biological pathways may serve as a preliminary stepping-stone for new genetic investigations of SD and ASD comorbidity.

Keywords: sleep, gene, syndrome, autism spectrum disorder, circadian, melatonin


Sleep problems/disorders (SD) are common in autism spectrum disorder (ASD), and up to 80% of individuals diagnosed with ASD will experience a SD within their lifetime (Baker & Richdale, 2017; Richdale & Schreck, 2009). These SD’s regularly include increased sleep onset latency, frequent and prolonged night awakenings (Allik, Larsson, & Smedje, 2008; Krakowiak, Goodlin-Jones, Hertz-Picciotto, Croen, & Hansen, 2008), insomnia (Cortesi, Giannotti, Ivanenko, & Johnson, 2010; Richdale & Baglin, 2015), and/or early morning rise times (Richdale & Baglin, 2015). Although SD and ASD are highly comorbid, relatively little is known about the mechanistic intersections of these two disorder classes. The present study aims to inform this gap using a gene enrichment analysis to determine whether genes associated with both SD and ASD risk overlap to a higher degree than expected by chance. This analysis will identify a set of specific risk genes that contribute to both phenotypes, which may help to identify potential mechanistic pathways linking SD and ASD.

In studies of sleep and ASD, genetic mechanisms are often discussed as potentially important (Souders et al., 2017); however, studies directly assessing genes and sleep in ASD are still relatively uncommon. Most often, researchers have assessed genes in the circadian system including CLOCK-related genes (Nicholas et al., 2007), and genes in the melatonin pathway (Jonsson et al., 2010; Veatch et al., 2015). Notably, the steady stream of genetic studies informing our understanding of CLOCK-related or circadian sleep genes in ASD use very small sample sizes (e.g., Ns between 28 and 110) and are thus vastly underpowered to detect the small effect that a specific gene is expected to exert on a complex phenotype. In order to generate new biologically plausible mechanisms to guide future studies, we identified genes that have been empirically linked to both SD and ASD and subjected these genes to an enrichment analysis that uses summarized empirical evidence and accumulated bioinformatics knowledge to understand the downstream impacts of these risk genes.

Methods

Data

This study utilized data from a previously published autism gene database (http://db.cbi.pku.edu.cn/autismkb_v2; Xu et al., 2011) and a hand-curated sleep gene set.

Autism gene set.

Based on a comprehensive literature review, Xu and colleagues (2011) created the Autism KB database (newest version, Autism KB 2.0), which includes candidate gene lists that were curated from several studies (e.g., clinical features, experimental design). Meta-data from each study regarding the methodological approach were also recorded and scored in order to generate evidence scores for each gene found by the study. Documentation is available online at http://db.cbi.pku.edu.cn/autismkb_v2/document.php, containing a detailed outline of their search and scoring methodology. Autism KB 2.0 encompasses multiple evidence-based datasets. For the purposes of the current study, we used the ASD ‘Core Dataset’ (hereafter referred to as the ASD core gene set). The ASD core gene set includes 228 genes (see Supplemental Table 2), each with a total evidence score of 16 or higher (the higher the score, the more confident the gene is related to ASD). Total evidence scores above 16 are generally considered pathology-linked or significantly associated (Xu et al., 2011). Information regarding database construction and analyses for the ASD core gene set can be found in the online manual for Autism KB 2.0 (http://db.cbi.pku.edu.cn/autismkb_v2/document.php) and in the supplemental online materials of Xu et al. (2011).

Sleep gene set.

We hand-curated a set of genes likely related to sleep problem/disorder phenotypes (henceforth referred to as the sleep phenotype data set) from existing literature. The first step in this process involved identifying genes potentially related to sleep by searching 1) the Genome Wide-Association Study (GWAS) catalog (https://www.ebi.ac.uk/gwas/) using the keyword ‘sleep’, 2) National Center for Biotechnology Information (NCBI) Gene (https://www.ncbi.nlm.nih.gov/gene) using the keyword ‘sleep’, and 3) PubMed and Google Scholar using the search terms ‘sleep’ and ‘genetics’. Searches were conducted between June and September 2017. Inclusion in the final gene set required a minimum of two peer-reviewed empirical findings (per gene) indicating the association of structural variations in that gene with sleep phenotypes (rather than the sleep phenotype influencing gene expression), or at least one peer-reviewed GWAS finding. The final sleep gene set contained 154 genes (for a complete list see Supplemental Table 1).

Analytic Strategy

Following Marceau & Abel (2018), our analytic strategy comprised two steps. First, we determined the number of genes appearing in both the sleep and ASD core gene datasets and calculated whether the ASD gene set was enriched for sleep-related genes (e.g., whether more genes were in both gene sets than expected by chance). Specifically, we compared our final sleep gene set against the published ASD core gene set. We used the Nematode bioinformatics analysis tools and data (Lund, n.d.) to calculate the statistical significance of genetic overlap between the two gene sets. Consistent with current estimates of protein-coding genes in the human genome (Ezkurdia et al., 2014), we estimated 19,000 genes to calculate the number of overlapping genes expected by chance.

Then, to further elucidate the biological function of the genes implicated in both sleep and ASD, we subjected the list of overlapping genes to an over-representation pathway analysis (see Marceau & Abel, 2018). Over-representation pathway analysis is a systems biology tool that identifies whether sets of genes are differentially expressed in any particular biological pathways (Kamburov et al., 2011; Kamburov, Wierling, Lehrach, & Herwig, 2009). A pathway can be defined as a set of “functionally-related” genes (Jin et al., 2014, p. 211), which may be more informative regarding genetically influenced biological mechanisms related to both sleep and ASD than single genes. The over-representation analysis was conducted by uploading the overlapping genes into the online over-representation tool maintained by the Consensus Pathway Database (CPDB; http://cpdb.molgen.mpg.de/). We selected pathway-based sets wherein at least 25% of the genes on the overlap list were included in the pathway to ensure high relevance of the pathway to identify potential new mechanisms of association of ASD and SD.

Results

Enrichment Analyses

There were 15 overlapping genes in our sleep phenotype gene set and the ASD core gene set, listed in Table 1. The expected number of overlapping genes was (154[sleep gene set size] * 228[ASD core gene set size]) / 19,000[total genes in genome] = 1.848. The representation factor was therefore 15[identified genes] / 1.848[expected genes] = 8.11, p < 5.466e-10, indicating significantly more overlap than expected by chance.

Table 1.

List of 15 overlapping genes including function and pathway(s).

Gene Symbol Gene Function Pathway(s)
ASMT An encoded enzyme catalyst used in the final reaction in melatonin synthesis.
BDNF Encodes a member of the nerve growth factor family of proteins. Binding of this protein to its cognate receptor promotes neuronal survival in the adult brain. 3 and 4
CACNA1C a This gene encodes an alpha-1 subunit of a voltage-dependent calcium channel. Calcium channels mediate the influx of calcium ions into the cell upon membrane polarization. 1 and 2
CDKL5a This gene is a member of the Ser/Thr protein kinase family and encodes a phosphorylated protein with protein kinase activity.
DISC1 This gene encodes a protein located in the nucleus, cytoplasm, and mitochondria which is involved in neurite outgrowth and cortical development through its interaction with other proteins.
DSCAM The Down syndrome cell adhesion molecule (DSCAM) gene impacts cell adhesion and is expressed widely in the developing nervous system (implicated in both central and peripheral system development).
FOXP2 This gene encodes a member of the forkhead/winged-helix (FOX) family of transcription factors. This gene is required for proper development of speech and language regions of the brain during embryogenesis and may be involved in a variety of biological pathways and cascades that may ultimately influence language development.
HTR2A This gene encodes one serotonin receptor. Mutations in this gene are associated with schizophrenia and obsessive-compulsive disorder. 2 and 4
MAOA a This gene is one of two neighboring gene family members that encode mitochondrial enzymes which catalyze the oxidative deamination of amines, such as dopamine, norepinephrine, and serotonin. 1, 2, and 4
MECP2a MEP2 is essential for embryonic development and mutations in this gene cause most cases of Rett syndrome and some other neurodevelopmental disorders. 3 and 4
RBFOX1 This gene regulates tissue-specific alternative splicing in metazoa. 3
SCN1A a Voltage-dependent sodium channels are heteromeric complexes that regulate sodium exchange between intracellular and extracellular spaces and are essential for the generation and propagation of action potentials in muscle cells and neurons. 1
SLC6A4 This gene encodes an integral membrane protein that transports the neurotransmitter serotonin from synaptic spaces into presynaptic neurons. 2 and 4
SLC6A3 The primary role of this gene is the generation of a dopamine transporter (DAT). Implicated in dopamine transporter deficiency syndrome and considered a risk factor for ADHD, ASD, and alcohol use disorder. 1
UBE3A a This gene encodes E3 ubiquitin-protein ligase which is involved in the protein degradation process (to remove damaged proteins from the cell). 3

Note.

a

Genes linked with genetic syndromes that are highly comorbid with autism spectrum disorder. 1 = Dopaminergic Synapse, 2 = Serotonergic Synapse, 3 = MECP2 and Associated Rett Syndrome, 4 = Sudden Infant Death Syndrome (SIDS) Susceptibility Pathways.

*

Gene descriptions modified from NCBI gene: https://www.ncbi.nlm.nih.gov/gene

Over-representation Pathway Analysis with Core ASD Gene Set

Using a threshold of 25% (a minimum of 4 genes from the overlap list), the over-representation analysis revealed four enriched pathways: Dopaminergic Synapse, Serotonergic Synapse, MECP2 and Associated Rett Syndrome, and Sudden Infant Death Syndrome Susceptibility Pathways. Table 2 describes each pathway. Table 3 summarizes the genes on the overlap list appearing in each pathway and the affiliated sleep problems/disorders or neurodevelopmental syndrome. Because the WikiPathways database (included in the CPDB search) is community-based without verifiable scientific oversight, we exclude MECP2 and Associated Rett Syndrome and Sudden Infant Death Syndrome Susceptibility Pathways (which were identified only via WikiPathways) from our discussion, as their veracity is less certain.

Table 2.

Enriched pathways for the 15-gene overlap set.

Pathway Name Set Size Candidates
Contained
p value Pathway Source Pathway Description
1) Dopaminergic Synapse 131 4 (3.1%)a
CACNA1C
MAOA
SCN1A
SLC6A3
9.14e-06 KEGG Dopamine is found in the brain and controls several functions such as locomotor activity, motivation and reward, learning and memory, and endocrine regulation.
2) Serotonergic Synapse 115 4 (3.5%)a
CACNA1C
HTR2A
MAOA
SLC6A4
5.08e-6 KEGG Serotonin is a neurotransmitter that has a key role in physiological functions including sleep, emotion, learning and memory, and pathology.
3) MECP2 and Associated Rett Syndrome 63 4 (6.3%)a
BDNF
MECP2
RBFOX1
UBE3A
4.84e-07 Wikipathways MECP2 regulates neuronal function and development. It effects all cell types, especially neurons but also astrocytes, oligodendrocytes, and glial cells. MECP2 is also involved in neuronal differentiation, maturation, morphology and function, and influences synaptic plasticity. Mutations in MECP2 are associated with Rett Syndrome, schizophrenia, PPM-X-syndrome, FASD, and ASD.
4) Sudden Infant Death Syndrome
and (SIDS) Susceptibility Pathways
159 5 (3.1%)a
BDNF
HTR2A
MAOA
MECP2
SLC6A4
4.72e-07 Wikipathways SIDS is the sudden and unexpected death of an infant, almost always during sleep, where no cause of death can be found by autopsy. Factors that mediate SIDS are likely to be both biological and behavioral, such as sleeping position, environment and stress during a critical phase of infant development. This pathway describes candidate genes associated with neuronal signaling, cardiac contraction, and inflammatory response that are empirically related to SIDS.

Note. To be included in the manuscript, biological pathways had to contain at least 25% of the genes on the overlap list.

a

These numbers refer to the percentage of each total pathway (set size) represented in our overlap list.

Table 3.

Candidate genes in each of the primary biological pathways.

Gene Symbol Sleep Phenotype Syndrome Associated with Autism

Dopaminergic Synapse

MAOA Poorer sleep quality; lower sleep efficiency (indexed by higher quantitative sleep disturbance scores); insomnia Brunner Syndrome
SCN1A Increased sleep disturbances; abnormal non-rapid eye movement sleep architecture; sleep dysregulation Early Infantile Epileptic Encephalopathy; Dravet Syndrome
CACNA1C Increased (longer) sleep latency; reduced REM Sleep Timothy Syndrome
SLC6A3 Sleep-wake cycle; sleep architecture N/A

Serotonergic Synapse

MAOA Sleep-wake cycle—including lower homeostatic drive; poorer sleep continuity. N/A
CACNA1C Shorter sleep duration; fatigue; early morning awakening Wu Type of X-linked Syndromic Mental Retardation
HTR2A Obstructive sleep apnea, chronic fatigue syndrome N/A
SLC6A4 Increased risk of sleep bruxism; increased complaint of sleep onset problems; shorter sleep duration N/A

MECP2 and Associated Rett Syndrome

MECP2 Phase-specific sleep loss; sleep fragmentation; increased daytime napping with age; Rett Syndrome
BDNF Regulation of sleep slow wave oscillations; decreased spectral power in the alpha band in stage one and decreased theta power in stages two and three of nonrapid-eye-movement sleep N/A
RBFOX1 Sleep timing N/A
UBE3A Short sleep duration; increased sleep onset latency; reduced capacity to accumulate sleep pressure Angelman Syndrome

SIDS Susceptibility Pathways

MECP2 Phase-specific sleep loss; sleep fragmentation; increased daytime napping with age; Rett Syndrome
BDNF Regulation of sleep slow wave oscillations; decreased spectral power in the alpha band in stage one and decreased theta power in stages two and three of nonrapid-eye-movement sleep N/A
SLC6A4 Increased risk of sleep bruxism; increased complaint of sleep onset problems; shorter sleep duration N/A
MAOA Poorer sleep quality; lower sleep efficiency (indexed by higher quantitative sleep disturbance scores); insomnia Brunner Syndrome

Discussion

This study demonstrated significant overlap in genes related to both SD and ASD risk, highlighting potential genetic and downstream biological mechanisms that may be involved in increased rates of comorbid SD in ASD samples. Our findings serve as a first, preliminary step in understanding the genetic overlap in ASD and SD, which we hope will facilitate interest in new empirical studies on gene mutations and expression in individuals with ASD and comorbid SD. The field is well poised to conduct such studies given our expanding access to the largest autism genome databanks in history (e.g., MSSNG; SPARK, Simons Simplex Collection).

Unexpectedly, the overlapping genes identified in this study did not include those most commonly studied in relation to sleep in ASD samples (e.g., CLOCK). This finding does not imply that CLOCK-related genes do not influence sleep in ASD, but rather, they may not be part of a shared SD-ASD mechanistic pathway. We did identify one overlapping gene that supports circadian entrainment: CACNA1C. CACNA1C aids in the regulation of calcium channels and has a circadian expression pattern. In mouse models, CACNA1C is associated with deficits in phase shifting (Schmutz et al., 2014) and reduced lower spectral power and impaired REM during recovery sleep (Kumar et al., 2015). In individuals with ASD, some studies have noted circadian-based sleep difficulties and atypical EEG patterns during REM and non-REM sleep phases (Godbout, Bergeron, Limoges, Stip, & Mottron, 2000; Godbout, Bergeron, Stip, & Mottron, 1998; Limoges, Mottron, Bolduc, Berthiaume, & Godbout, 2005). Notably, these differences are not consistent across the ASD literature as some studies reported no remarkable EEG differences from comparison groups (e.g., Tani et al., 2003, 2004). Further explorations of CACNA1C and ASD could inform these inconsistencies.

One overlapping gene, ASMT, is involved in melatonin synthesis. Dysregulation of melatonin synthesis is well documented in individuals with ASD (Tordjman et al., 2013; Veatch et al., 2015) and the findings from the present study implicate one (of several) genes involved in melatonin synthesis. It is unclear what mechanistic role melatonin synthesis may have in ASD phenotypes, but it is likely a contributing factor in the high rates of comorbidity in SD and ASD (Veatch et al., 2015).

Neurotransmitter dysregulation is commonly documented in ASD—with noted differences in the dopamine, serotonin, glutamate, and GABA systems (Horder et al., 2018; Muller, Anacker, & Veenstra-VanderWeele, 2016; Paval, 2017). Within this exploratory study, dopamine and serotonin systems were implicated in our pathway analysis—including genes that aid in regulating calcium channels (CACNA1C, SCN1A), mitochondrial enzyme encoding (MAOA), dopamine transmission (SLC6A3), and serotonin receptors and transmission (HTR2A, SLC6A4). Future SD and ASD research can build on this study by giving attention to the dopamine and serotonin systems and how they may impact sleep and ASD phenotypes. From a treatment approach, pharmacological therapies that promote dopamine or serotonin regulation may have the potential to improve both sleep and ASD-related behaviors. Indeed, several commonly used medications target these systems (e.g., selective serotonin reuptake inhibitors) but additional studies are needed to inform if upregulation, downregulation, or adjusting interacting mechanisms will best support balance in these systems (e.g., Volkow et al., 2012).

It is important to note that the employed pathway analysis can be prone to identifying large-scale pathways involved in fundamental biological processes that therefore may not be specific to ASD and SD. Thus, our analysis may simply reflect that brain-based pathways are necessary for all behavior and higher-order cognitive function. The high percentage of syndromic or neurological conditions associated with ASD in our gene list (10 out of 16 genes) also alludes to a more general brain-based dysregulation, which may manifest as behavioral difficulties during the day and at night. Although the aim of this study was to narrow potential future targets for SD and ASD research, the identified genes may only influence both daytime (ASD behaviors) and nighttime (sleep) behaviors when large-scale brain-based dysregulation is present.

Additional limitations include that the statistical method for assessing gene overlap does not account for gene size, which could lead to increased type I error. Second, GWAS studies are difficult to replicate, and as such the identified genes may include some that are not robustly linked to sleep. Further, many of the large GWAS studies in the sleep phenotype gene set measured sleep problems using self-report methods. Although polysomnography and actigraphy may provide less biased sleep estimates than sleep diaries or self-report questionnaires, these gold-standard approaches are also costly and difficult to implement on a large scale. Our sleep phenotype data set also includes genes implicated in a broad range of SD’s, which are each biologically distinct. Some of these SD’s are more common in individuals with ASD than others. Thus, future research may benefit from a more concise gene set—including genes related to SD’s with the highest rates of comorbidity in ASD, genes that are more heavily replicated in the peer-reviewed literature (e.g., two or more GWAS Studies and excluding genes with evidence only from candidate gene studies with small samples).

Summary and Future Directions

Our overlapping gene set may serve as a preliminary stepping-stone for new studies investigating genetic components of SD in ASD risk (including new gene sets that may be more specific to ASD), or may be useful in exploring existing autism genome databases to answer critical questions about why children with ASD experience increased rates of SD. Future research exploring: 1) potential mutations in genes empirically found to influence SD and ASD, and 2) related neural underpinnings of SD in ASD may prove valuable for understanding mechanistic links between SD and ASD. This study should be replicated using other reputable ASD gene databases, such as SFARI, and should be repeated as more reliable gene discovery is completed in both disorders (particularly sleep).

Supplementary Material

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Acknowledgments

Grant sponsor: The National Institute on Drug Abuse; Grant number: K01 DA039288 (Marceau).

Funding: This study was funded in part by The National Institute on Drug Abuse; Grant number: K01 DA039288 (PI: [removed for review]).

Footnotes

Compliance with Ethical Standards:

Ethical approval: This article does not contain any studies with human participants or animals performed by any of the authors.

Conflict of Interest: Emily A. Abel declares that she has no conflict of interest. A.J. Schwichtenberg declares that she has no conflict of interest. Olivia Mannin declares that she has no conflict of interest. Kristine Marceau declares that she has no conflict of interest.

Contributor Information

Emily A. Abel, Department of Human Development and Family Studies, Purdue University, Yale Child Study Center, Yale University

A.J. Schwichtenberg, Department of Human Development and Family Studies, Purdue University

Olivia R. Mannin, Department of Human Development and Family Studies, Purdue University

Kristine Marceau, Departments of Human Development and Family Studies, and Statistics, Purdue University.

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