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Article

Replicated Risk Nicotinic Cholinergic Receptor Genes for Nicotine Dependence

1
Department of Psychiatry, Yale University School of Medicine, New Haven, CT 06510, USA
2
Curriculum & Research Support Department, Cushing/Whitney Medical Library, Yale University School of Medicine, New Haven, CT 06510, USA
3
Shanghai Mental Health Center, Shanghai 200030, China
4
Department of Cellular and Molecular Physiology, Yale University School of Medicine, New Haven, CT 06510, USA
5
Department of Neurosurgery, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai 200127, China
6
Biological Psychiatry Research Center, Beijing Huilongguan Hospital, Beijing 100096, China
7
Department of Neurology, Shanghai First People’s Hospital, Shanghai Jiao Tong University, Shanghai 200080, China
8
Key Laboratory for Molecular Genetic Mechanisms and Intervention Research on High Altitude Diseases of Tibet Autonomous Region, Xizang Minzu University School of Medicine, Xianyang, Shanxi 712082, China
9
Provincial Key Laboratory for Inflammation and Molecular Drug Target, Medical College of Nantong University, Nantong 226001, China
10
Departments of Genetics, Genomics, Informatics, Anatomy and Neurobiology, University of Tennessee Health Science Center, Memphis, TN 38163, USA
11
Nevada Institute of Personalized Medicine, University of Nevada, Las Vegas, NV 89154, USA
12
Department of Psychology, University of Nevada, Las Vegas, NV 89154, USA
*
Authors to whom correspondence should be addressed.
Submission received: 4 July 2016 / Revised: 20 October 2016 / Accepted: 2 November 2016 / Published: 7 November 2016
(This article belongs to the Special Issue Genetic Mechanism of Psychiatric Disorders)

Abstract

:
It has been hypothesized that the nicotinic acetylcholine receptors (nAChRs) play important roles in nicotine dependence (ND) and influence the number of cigarettes smoked per day (CPD) in smokers. We compiled the associations between nicotinic cholinergic receptor genes (CHRNs) and ND/CPD that were replicated across different studies, reviewed the expression of these risk genes in human/mouse brains, and verified their expression using independent samples of both human and mouse brains. The potential functions of the replicated risk variants were examined using cis-eQTL analysis or predicted using a series of bioinformatics analyses. We found replicated and significant associations for ND/CPD at 19 SNPs in six genes in three genomic regions (CHRNB3-A6, CHRNA5-A3-B4 and CHRNA4). These six risk genes are expressed in at least 18 distinct areas of the human/mouse brain, with verification in our independent human and mouse brain samples. The risk variants might influence the transcription, expression and splicing of the risk genes, alter RNA secondary or protein structure. We conclude that the replicated associations between CHRNB3-A6, CHRNA5-A3-B4, CHRNA4 and ND/CPD are very robust. More research is needed to examine how these genetic variants contribute to the risk for ND/CPD.

1. Introduction

Nicotine dependence (ND) is commonly assessed for cigarette smokers with DSM-IV criteria or a severity scale such as the Fagerstrom Test for Nicotine Dependence (FTND) [1]. FTND assesses the frequency of smoking, the number of cigarettes smoked and the urgency to smoke, and is widely used to index the severity of ND. Of the six questions assessed in FTND, the number of cigarettes smoked per day (CPD) has been shown to carry the highest genetic loading [2]. It has been hypothesized that the nicotinic acetylcholine receptors (nAChRs) play important roles in the development of ND and shows a strong association to CPD. The nAChR is named because its endogenous agonist is acetylcholine and the plant alkaloid nicotine also binds to these receptors. Neuronal nAChR include α2–α10 and β2–β4 subunits that are encoded by CHRNAs 2–10 and CHRNBs 2–4, respectively, whereas muscle-type nAChRs include α1, β1, γ, δ and ε subunits that are encoded by CHRNA1, CHRNB1, CHRNG, CHRND and CHRNE, respectively (reviewed by Zuo et al. [3]).
In this article, we reviewed the relationship between CHRNs and ND or CPD that were replicated across studies. We show that most significant risk variants (84%) for ND/CPD at the CHRNs are typically located in non-coding regions, and 95% of them have no direct effects on protein structure (see below). These non-coding genetic variants may have effects on the function of genes by altering the transcription, splicing or stability of the coding mRNAs. The association signals detected from the non-coding regions might be related to the roles of non-coding RNAs (ncRNAs) existing within, or proximate to, these regions, and thus these ncRNAs were explored in this study.
ncRNAs include long non-coding RNAs (LncRNAs) and small non-coding RNAs such as miRNAs, piRNAs, siRNAs, snoRNAs and rasiRNAs. Recent evidence suggests that LncRNAs are involved in a wide variety of cellular functions, including epigenetic silencing, transcriptional regulation, RNA processing and modification [4,5,6]; LncRNAs are also implicated in neural plasticity [7], neuropathological process [8], neurotransmission [9], and stress response [7]. Dysregulation of many LncRNAs has been found to contribute to substance use disorders including alcohol, nicotine, heroin and cocaine dependence. For example, NEAT2, an LncRNA regulating synapse formation [10], was up-regulated in alcoholics’ brains [11]; NEAT2, NEAT1, MIAT and MEG3 were up-regulated in the nucleus accumbens (NAc) of heroin abusers [12]; and NEAT2, MIAT, MEG3 and EMX2OS were elevated in the NAc of cocaine abusers [12]. Smokers had dramatically elevated H19 expression in airway epithelium [13]; demethylation of H19 was correlated to chronic alcohol use in men [14]; and many LncRNAs mediated cocaine-induced neural plasticity in the NAc and conferred risk for cocaine dependence [8]. Together, evidence accumulates to support the hypothesis that LncRNAs contribute to the severity of ND, including the number of cigarettes smoked per day (CPD).
In addition to LncRNAs, piRNAs are also increasingly being studied for their roles in cellular functions. Numerous research indicates that piRNAs have important roles in modulating mRNA stability, regulating target mRNAs and translation [15], preserving genomic integrity [16], suppressing transposons [17], remodelling euchromatin, developmental regulation and epigenetic programming [18,19]. Recent evidence suggests that piRNAs are abundant in the brain [17,20,21,22,23,24,25,26,27]. These piRNAs have unique biogenesis patterns and are associated with a neuronal Piwi protein. Thus, it has been hypothesized that piRNAs may potentially play roles in ND/CPD too. The LncRNAs and piRNAs that might regulate the effects of the replicated risk CHRNs on disease were analyzed in this study. This analysis is a necessary step towards identification of the missing regulatory pathways after a long history of attention to the coding mRNAs and other ncRNAs such as miRNAs.
In this article, we also reviewed the distribution of the nAChRs encoded by the replicated risk CHRNs in the human/mouse brain and then verified their expression in an independent sample of mouse brain. Furthermore, we explored the possible mechanisms underlying these replicated associations using a series of bioinformatics analyses.

2. Materials and Methods

2.1. The Replicated Associations between Nicotinic Cholinergic Receptor Genes (CHRNs) and Nicotine Dependence/Cigarettes per Day (ND/CPD) and the Expression of Risk Genes in Brain

In PubMed (http://0-www-ncbi-nlm-nih-gov.brum.beds.ac.uk/pubmed), we searched for the literature using the keywords “(nicotinic acetylcholine receptor OR nAChR OR nicotinic cholinergic receptor OR CHRN) AND (nicotine dependence OR nicotine addiction OR smoking OR cigarette)” and obtained 2463 reports (as of 19 September 2016). From these articles, we extracted the established associations between CHRNs and ND/CPD. We noticed that although most of the distinct CHRNs have been associated with ND/CPD, the replicable associations at single-point level by different studies are rare. We list such rare associations for six genes in three genomic regions from a total of 20 studies in Table 1.
Additionally, the distribution of the nAChRs encoded by the replicated risk CHRNs reported in the literature is illustrated in Figure 1 (http://anatomy-bodychart.us/) [28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52,53].

2.2. Expression Correlation Analysis in Human Brain

Based on our review (Figure 1), all six replicated risk CHRNs are expressed in the midbrain that is enriched with dopaminergic neurons, and four CHRNs (i.e., CHRNA4, CHRNA5, CHRNA6 and CHRNB3) are expressed in the striatum that is enriched with GABAergic terminals. These are two main neurotransmission systems that have been related to CHRNs in the literature (see Section 4: Discussion). We evaluated the mRNA expression levels of these genes and the dopaminergic and GABAergic receptors/enzymes in two independent brain tissue samples using Affymetrix Human ST 1.0 exon arrays (validated by qPCR). The first sample included ten human brain tissues extracted from 134 Europeans (UK Brain Expression Consortium (UKBEC) [74]). These 134 individuals were free of neurodegenerative disorders, and the ten brain tissues included cerebellar cortex, frontal cortex, temporal cortex, occipital cortex, putamen, thalamus, hippocampus, substantia nigra, intralobular white matter and medulla. The second sample included 93 autopsy-collected human frontal cortical tissues [75]. These 93 individuals included 55 male and 38 female Europeans, from 34 to 104 years old with an average of 74 ± 16 years. The postmortem intervals, i.e., the time from death to brain tissue collection, were 1.2–46 h with an average of 14.3 ± 9.5 h. These 93 individuals had no defined neuropsychiatric condition either. Correlations between expression of the risk CHRNs and expression of 25 dopaminergic and GABAergic receptor/enzyme genes were tested using Pearson correlation analysis for the first sample and generalized linear model (GLM) analysis for the second sample (Table 2). The 25 dopaminergic and GABAergic genes were DRD1-5, TH, GABRA1-6, GABRB1-3, GABRD, GABRE, GABRG1-3, GABRR1-3, GABRP and GABRQ. In the GLM, the expression levels of CHRNs served as dependent variable, and those of dopaminergic and GABAergic receptor genes as independent variable, by correcting for age, sex and postmortem interval. The directions of the correlations will be shown by the signs of correlation coefficients (r) or regression coefficients (β) (Supplementary Tables S1 and S2). α was set at 3.5 × 10−5 for the first sample because 10 brain regions, 25 dopaminergic and GABAergic genes and six CHRNs were evaluated, 6.9 × 10−7 for the second sample because 12,114 transcripts in the array and six CHRNs were evaluated.

2.3. Detection of Chrn mRNA Expression in Mouse Brains

To verify the expression of the six replicated risk genes (Figure 1), we examined their mRNA expression in mouse brains in our own samples. The levels of mRNA expression for the whole brain and in eight brain areas were examined, including the cortex, dorsal striatum, NAc, hippocampus, amygdala, midbrain, ventral tegmental area (VTA) and cerebellum (Table 3). The details for mouse strains, gene expression analysis, and calculation for standardized expression values (SEVs) and fold changes (FCs) were published previously [3].

2.4. Cis-Acting Genetic Regulation of Expression Analysis in Human Brain Tissues

To examine relationships between the replicated risk CHRN variants and local CHRN mRNA expression levels, we performed cis-acting expression of quantitative locus (cis-eQTL) analysis. Expression and genotype data of the six replicated risk CHRN genes in ten human brain tissues of the above first sample (i.e., 134 Europeans [74]) were evaluated. Differences in the distribution of mRNA expression levels between SNP genotypes were compared using a Wilcoxon-type trend test. p-values less than 0.05 were listed in Table 4. Significance level (α) was corrected by the numbers of tissues, genes and haplotype blocks, i.e., α = 2.8 × 10−4 = 0.05/(10 brain tissues × 6 genes × 3 independent haplotype blocks where the 19 replicated SNPs were located).

2.5. Bioinformatics Analysis

The linkage disequilibrium (LD) between the replicated risk SNPs was assessed using online HapMap data. To verify the potential functions of these replicated risk SNPs, we predicted their functions using a series of bioinformatics analyses. We used UCSC Genome Browser data or other bioinformatics analysis software packages (e.g., FuncPred [76] or VE!P [77]) to see whether the risk SNPs are located in LncRNAs, in transcription factor binding sites (TFBS), in open chromatin regions, within methylated CpG islands, within copy number variations (CNVs) or in exonic splicing silencers (ESS) or enhancers (ESE). Additionally, Polyphen [78] and SIFT [79] were applied to predict the pathogenicity in order to see whether these risk SNPs affect protein function or structure, and MFOLD [80] was applied to predict whether these risk SNPs alter secondary RNA structure. The conservation of these risk SNPs across 17 species was also predicted [81]. The tertiary structure of the mutant and wild-type protein obtained by translation of each mutant gene was simulated using SWISS-MODEL software [82] so as to find the difference between them.

2.6. Long Non-Coding RNAs (LncRNA) and piRNA Analysis

There are tens of thousands of LncRNAs (>200 nt) across the transcriptome [5,83,84], and more than half of them are expressed in the brain [85]. According to the positional relationship between LncRNAs and their associated protein-coding genes, LncRNAs can be classified as intergenic, intronic, antisense, sense overlapping, and bidirectional lncRNAs [86]. In this study, we extracted the LncRNAs close to, or within, the risk CHRN genes from the National Center for Biotechnology Information (NCBI) Gene database (http://0-www-ncbi-nlm-nih-gov.brum.beds.ac.uk/gene).
The RNAs interacting with the Piwi subfamily of proteins in Piwi/piRNA complex are named piRNAs. piRNAs are a class of small ncRNAs originally isolated from the mammalian germline, but recently they have also been detected in the brain [21,22,24]. Each species usually has hundreds of thousands of unique piRNA sequences. Mature piRNAs are short, single-stranded RNA molecules approximately 24–32 nucleotides in length. They are unevenly distributed in the genome, and usually cluster in some specific genomic loci. In this article, we searched for piRNAs within the risk CHRN genes from the piRNABank database [87].

3. Results

3.1. Replicated Associations between CHRNs and ND/CPD (Table 1)

Replicated associations for ND/CPD were found at 19 SNPs in three genomic regions (CHRNB3-A6, CHRNA5-A3-B4 and CHRNA4) in Europeans, Africans and Asians. They were replicated across at least three independent samples in at least two independent studies including genome-wide association studies (GWASs) [54,62,66,68,69,71,88] and candidate gene studies [55,56,57,58,59,60,61,63,64,67], and some of them were verified by functional studies.
The associations for CHRNA5-A3-B4 were most comprehensively studied and most robust; many of them were highly significant with p values below 10−72; and many of them were detected by high-impact unbiased GWASs. For example, Thorgeirsson et al. [71] (2008) and Liu et al. [68] (2010) reported associations between rs1051730 at CHRNA3 and smoking quantity (p = 5 × 10−16 and 1.7 × 10−66, respectively). This association has been replicated by numerous other GWASs [89,90,91] and candidate gene studies [56,72,92] and in a meta-analysis (p = 2.75 × 10−73 in the subjects of European ancestry) [57,62,66,68]. Liu et al. [68] (2010) also reported associations between rs16969968 at CHRNA5 (p = 4.3 × 10−65) and rs6495308 at CHRNA3 (p = 5.8 × 10−44) and smoking quantity. These two SNPs were also associated with ND [92,93]. rs16969968 was a non-synonymous, functional SNP [88] and was associated with experiencing pleasurable response upon first-time smoking, with current smoking status [94] and with ND [56,61,93], which was supported by some meta-analyses (p = 5.57 × 10−72 in European) [57,62,66,68]. Berrettini et al. [72] (2008) also reported in a GWAS that rs6495308 at CHRNA3 was associated with CPD (p = 6.9 × 10−5). Additionally, a common haplotype at CHRNA5 and CHRNA3 increased risk across a series of ND-related phenotypes among European-origin populations, including ND [88,89,91,92,95], early-onset ND [96,97], CPD [98], FTND score [89,96], inability to quit when pregnant [99], serum cotinine (a nicotine metabolite) level [95,100], and chronic obstructive pulmonary disease [101]. Finally, rare variant analysis showed that rare missense variants at conserved residues in CHRNB4 were associated with reduced risk of ND among African Americans [102]. Among these studies, at least five studies that identified peak SNPs rs16969968 and rs1051730 at CHRNA5-A3-B4 as risk markers for ND or CPD were high-impact GWASs (Table 1) [62,66,68,69,71,88].
Additionally, several other GWASs identified association peak for ND at CHRNA4 [64,69,89], a finding that has been widely replicated [56,57,64,89,103,104]. Many other GWASs also showed an association of CHRNB3–CHRNA6 with nicotine addiction [62,89,92,105], which was replicated by many other candidate gene studies [56,57,58,60,64,65]. This region was also associated with subjective response to tobacco use [106].

3.2. Distributions of Nicotinic Acetylcholine Receptors (nAChRs) Encoded by the Replicated Risk CHRNs in Brain (Figure 1)

The three replicated genomic regions including six genes are expressed in at least 18 brain areas. They are most commonly expressed in medial habenula, midbrain (including the VTA, substantia nigra, interpeduncular nucleus (IPN), lateral and medial geniculate bodies, and superior colliculus) and the mesolimbic system (VTA→NAc). They are also expressed in cortex, entorhinal cortex, striatum, thalamus, hippocampus, amygdala, locus coeruleus, brainstem nuclei and cerebellum. Specifically, CHRNA5, CHRNA3 and CHRNB4 are highly expressed in medial habenula. All six genes are expressed in the midbrain, although different genes have distinct densities in different midbrain areas. CHRNA4 is expressed in the thalamus at the highest level. CHRNA3 and CHRNA5 are also expressed in the thalamus, with α5 in low density. CHRNA5 and CHRNA3 are expressed in or around the hippocampus. Both have expression in amygdala and entorhinal cortex. CHRNA3 also has a low level of expression in hippocampus. CHRNA5 and CHRNA4 are expressed in cortex. CHRNA3 is also expressed in cingulate cortex and insular cortex at low density. CHRNA5, CHRNA4, CHRNA6 and CHRNB3 are expressed in striatum. CHRNA6 is expressed in locus coeruleus, a noradrenergic nucleus with wide projections to cortical and subcortical structures [107]. CHRNA3 is also expressed in brainstem nuclei. Finally, CHRNA5 and CHRNA3 are expressed in cerebellum.

3.3. All Six CHRN Genes Were Expressed in Human Brain and Their Expression Was Correlated with Dopaminergic or GABAergic Expression (Table 2, Tables S1 and S2)

These six CHRN genes were detected in ten human brain areas. In many areas, their expression was significantly correlated with the dopaminergic or GABAergic expression (p < α) (Table 2). The correlation coefficients (0.358 ≤ |r| ≤ 0.920), regression coefficients (0.008 ≤ |β| ≤ 0.749) and p values (3.9 × 10−42p ≤ 3.3 × 10−5) for these correlations are shown in the Supplementary Tables S1 and S2.

3.4. All Six Chrn Genes Were Expressed in Mouse Brain in Distinct Areas and at Different Levels, a Majority of Which Verified Previous Reports (Table 3)

We found that all six Chrn genes were expressed in mouse brain at different levels. All of these genes were expressed in the hippocampus, in which the gene with the most highly abundant expression (SEV > 9) was Chrna4 (SEV = 9.95). α4 mRNA was also abundant in other brain areas examined (SEV = 8.29–10.73), with 2.5-13.3-FCs in mRNA level compared to the expression base. Compared with other genes, α4 mRNA was also the most abundant in the whole brain and five other brain areas including cortex, striatum, NAc, amygdala and cerebellum (Table 3).
Chrna5, Chrna3 and Chrnb4 were expressed in multiple brain areas (SEV = 7.22–9.35), with a 1.2-5.1-FC in mRNA expression levels compared to the expression base (SEV = 7). Chrna6 and Chrnb3 were expressed in several areas (SEV = 7.11–10.37), among which a6 mRNA was the most abundant in the midbrain (FC = 10.4) and VTA (FC = 3.9) among all six Chrns. Many of these findings verified the previous reports described above.

3.5. The CHRN Variants May Regulate the Expression of CHRN Genes (Table 4)

Cis-eQTL analysis showed that 13 risk SNPs at CHRNB3-CHRNA6 had nominally significant cis-acting regulatory effects on CHRNB3 mRNA expression in cerebellar cortex and thalamus (p = 0.015–0.022 and 0.026–0.031, respectively), and on CHRNA6 mRNA expression in frontal cortex and hippocampus (p = 0.042–0.043 and 0.027–0.033, respectively). Three risk SNPs at CHRNA5-CHRNA3-CHRNB4 had nominally significant cis-acting regulatory effects on CHRNA5 mRNA expression in almost all ten brain areas (5.1 × 10−6p ≤ 0.034), and on CHRNA3 mRNA expression in putamen (8.9 × 10−4p ≤2.7 × 10−3). rs6495308 at this region also had nominally significant cis-acting regulatory effects on CHRNB4 mRNA expression in occipital cortex and medulla (0.014 ≤ p ≤ 0.025). rs2236196 at CHRNA4 had nominally significant cis-acting regulatory effects on CHRNA4 mRNA expression in intralobular white matter and medulla (0.035 ≤ p ≤ 0.044). After Bonferroni correction (α = 2.8 × 10−4), the regulatory effects of the three risk SNPs at CHRNA5-CHRNA3-CHRNB4 on CHRNA5 mRNA expression remained significant in seven brain areas.

3.6. Bioinformatics Analysis (Table 5)

Of the 19 replicated risk variants, 15 SNPs at CHRNB3-CHRNA6, three SNPs at CHRNA5-CHRNA3-CHRNB4, and one SNP at CHRNA4 are included. The 15 SNPs at CHRNB3-CHRNA6 are all in high LD (D’ > 0.95) (https://hapmap.ncbi.nlm.nih.gov/). Among the 19 risk SNPs, 10 SNPs are located in LncRNAs that might regulate the gene expression. There are eight SNPs located in the TFBS. Most of them are located in the 5′ to CHRNB3. They may affect the local DNA conformation, and thereby influence the binding of transcription factors [108]. Two SNPs, i.e., rs4954 and rs2236196, are located in the open chromatin regions, which are often associated with regulatory factor binding. One SNP, rs1051730 at the exon 7 of CHRNA3, is located within a 234 bp CpG island, whose methylation status may affect the expression of CHRNA3 [109]. rs16969968 (Asp398Asn) at the exon 5 of CHRNA5 is located in an exonic splicing silencer or enhancer. Furthermore, seven SNPs are predicted to significantly or highly significantly alter the RNA secondary structures, including rs10958725, rs13273442, rs4736835, rs13277524, rs6474412 and rs4952 at CHRNB3, and rs16969968 at CHRNA5. Two SNPs are predicted to mildly alter the RNA secondary structures, including rs1955186 and rs7004381 at CHRNB3. They may affect the downstream activities of the RNA molecules [110]. rs16969968 is also predicted to be conservative across species. Finally, amino acid sequence alignment and three-dimensional computer space model verify that rs16969968 highly significantly alters protein structure and function (Supplementary Figure S1).

3.7. The LncRNAs and piRNAs Related to the Replicated Risk CHRNs

The LncRNAs proximate to each gene are listed in Table 6. One sense LncRNA 37 kb to CHRNB4 is a large intergenic non-coding RNA (LincRNA), with a length of 35 kb; two others overlapping with CHRNB3 and CHRNA4 are antisense LncRNAs, with lengths of 11 kb to 22 kb. The annotated piRNAs mapping within the two replicated CHRN gene regions are listed in Table 7. These piRNAs show a size distribution between 26 and 31 nt.

4. Discussion

Replicated associations for ND/CPD were found at 19 SNPs in three genomic regions (CHRNB3-A6, CHRNA5-A3-B4 and CHRNA4). Many of these associations are highly replicable across studies, highly significant, verified by functional studies, and supported by bioinformatics analysis, and thus are very robust. Interestingly, these three replicated loci were just the top three peak risk loci for ND identified by a GWAS meta-analysis using a large sample size of 17,074 [69]. We believe that CHRNB3-A6, CHRNA5-A3-B4 and CHRNA4 play important roles in the susceptibility to ND/CPD. Mechanisms underlying these roles may be related to the brain areas where the risk genes are expressed, the specific functions of the risk variants, or the regulatory pathways for the expression of these risk genes.
All replicated risk genes were expressed in human/mouse brain regions, which was verified at the mRNA level in our independent samples of both human and mouse brains. Many of these brain areas are important for the development of drug dependence [111]. Functional data have shown changes in nicotine intake following manipulations of α5*, α3* and β4* nAChRs in the medial habenula, supporting that medial habenula could contribute to the reinforcing effect of nicotine [28]. Many areas in midbrain are enriched in dopaminergic neurons, including VTA (where all six replicated risk genes were expressed) and substantia nigra (β3* and β4*). We demonstrated that the mRNA expression of six CHRNs was correlated with the expression of dopaminergic receptor/enzyme genes in ten brain areas. Thus, the CHRN receptors in these areas may modulate dopamine release, and contribute to the reinforcing effect of nicotine. Several pathways in the midbrain, e.g., habenula-IPN pathway (α5*, α3* and β4*) and VTA-NAc pathway (i.e., mesolimbic system; α5*, α3* and α4*), are also critical to drug-induced reward responses. The thalamus plays a major role in relaying and transforming information to the cortex and in turn modulates cortical outputs. Imaging studies in humans implicated the thalamus in cognitive control [112], a process frequently compromised in individuals with addiction [113]. Nicotine binding to α4* nAChRs in the human thalamus is very high in most thalamic nuclei, especially in the lateral dorsal, the medial geniculate, lateral geniculate and anterior nuclei. Striatum (α5*, α4*, α6* and β3*) receives dopaminergic input to the GABAergic medium spiny neurons. We demonstrated that the mRNA expression of six CHRNs was correlated with the expression of GABA receptor genes, supporting that nicotine stimulation of dopamine and GABA terminals in striatum may facilitate the release of these neurotransmitters. The locus coeruleus (α6*) is the principal site for brain synthesis of norepinephrine (noradrenaline). This nucleus may be involved in physiological responses to stress and panic, and some symptoms of ND. Finally, the hippocampus, amygdala, cortex including entorhinal cortex, and cerebellum are involved in reward, learning, motor co-ordination, memory and/or emotion. Nicotine may direct information flow through the neural circuits via the activation of α5*, α4* and α3* in these areas.
Our cis-eQTL and bioinformatics analyses provided additional evidence to support the previous findings that these replicated risk SNPs were functional [114,115,116]. They might influence the transcription, expression and splicing of the risk genes; they might alter the RNA secondary structure and thus affect the downstream activities of the RNA molecules; or they might even alter the structure and function of the proteins encoded by these risk genes. This analysis supports the roles of CHRNs in ND/CPD.
The sense LincRNA usually collaborates with chromatin modifying proteins (PRC2, CoREST and SCMX) to regulate expression of proximate genes [117]. Accordingly, we can postulate that the LincRNA XR_932509.1 might potentially regulate the expression of the CHRNB4 and might be functional components of the pathways through which the CHRNB4 variants influence risk for ND/CPD. The other two antisense-overlapping LncRNAs, i.e., XR_949716.1 and NR_110634.1, might use diverse transcriptional and post-transcriptional mechanisms [118,119] to regulate CHRNB3 and CHRNA4 to play roles in ND/CPD.
The piRNAs in brain usually show unique biogenesis patterns and predominantly nuclear localization [20]. The influence of piRNAs on disease might depend on the neurotransmitters/genes they interact with or the brain areas they are expressed in. For example, the piRNAs may have robust sensitivity to serotonin, a neurotransmitter with important roles in learning and memory and widely implicated in the etiology of many mental disorders [18,20]. The Piwi/piRNA complex may facilitate serotonin-dependent methylation of a conserved CpG island in the promoter of CREB2, the major inhibitory constraint of memory, leading to enhanced long-term learning-related synaptic facilitation [20]. Some piRNAs expressed in hippocampal neurons may influence dendritic spine morphogenesis [21]. For instance, piRNAs may target Astrotactin, which has been implicated in neuronal migration [120] or regulate genes to control nervous system function [21]. One is tempted to speculate that these piRNAs might potentially regulate the expression of the risk genes and serve as functional components of the pathways through which the risk SNPs influence risk for ND/CPD. These hypotheses regarding LncRNAs and piRNAs should be tested in the future.

Supplementary Materials

The following are available online at www.mdpi.com/2073-4425/7/11/95/s1, Table S1, Significant expression correlation between CHRNs and dopaminergic and GABAergic receptor genes in ten human brain areas; Table S2, Significant expression correlation between CHRNs and dopaminergic and GABAergic receptor genes in human frontal cortex; Figure S1, The tertiary structures of α5 nAChR altered by rs16969968 (D: Asp; N: Asn).

Acknowledgments

We thank Dr. Picciotto for the helpful comments. This work was supported in part by National Institute on Drug Abuse (NIDA) grants K01 DA029643 and K02 DA026990, National Institute on Alcohol Abuse and Alcoholism (NIAAA) grants R21 AA021380, R21 AA020319 and R21 AA023237, and ABMRF/The Foundation for Alcohol Research (Lingjun Zuo).

Author Contributions

Conceived and designed the experiments: Lingjun Zuo, Xiaoyun Guo, Chunlong Zhong, and Xingguang Luo; Performed the experiments: Lingjun Zuo, Xingguang Luo, Xiaoyun Guo, Chunlong Zhong, Rolando Garcia-Milian, Yunlong Tan, Zhiren Wang, Jijun Wang, Xiangning Chen, Xiaoping Wang and Lu Lu; Analyzed the data: Xiaoyun Guo, Lingjun Zuo, Xingguang Luo, Longli Kang, and Chiang-Shan R. Li; Contributed reagents/materials/analysis tools: Lingjun Zuo, Xiaoyun Guo, Xingguang Luo and Rolando Garcia-Milian; Wrote the manuscript: Lingjun Zuo, Xiaoyun Guo, and Xingguang Luo.

Conflict of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
nAChRsnicotinic acetylcholine receptors
CHRNsnicotinic cholinergic receptor genes
NDnicotine dependence
CPDcigarettes smoked per day
FTNDFagerstrom Test for Nicotine Dependence
ncRNAsnon-coding RNAs
LncRNAslong non-coding RNAs
NAcnucleus accumbens
VTAventral tegmental area

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Figure 1. Distribution of nAChR subunits in brain.
Figure 1. Distribution of nAChR subunits in brain.
Genes 07 00095 g001
Table 1. Replicated associations between CHRN genes and nicotine dependence.
Table 1. Replicated associations between CHRN genes and nicotine dependence.
SNPGenepRef.pRef.pRef.pRef.pRef.pRef.pRef.pRef.
rs10958725CHRNB3-A63.1 × 10−8[54]4.7 × 10−3[55]3.6 × 10−5[55]
rs10958726CHRNB3-A61.2 × 10−7[54]9.6 × 10−5[56]5.7 × 10−3[57]1.1 × 10−3[57]1.1 × 10−2[55]1.4 × 10−5[55]
rs13273442CHRNB3-A61.4 × 10−7[54]2.0 × 10−2[58]1.4 × 10−3[58]3.0 × 10−2[58]
rs4736835CHRNB3-A63.0 × 10−8[54]6.0 × 10−3[55]6.2 × 10−3[57]
rs1955186CHRNB3-A68.3 × 10−5[56]5.4 × 10−3[57]1.1 × 10−2[57]
rs1955185CHRNB3-A64.6 × 10−8[54]1.0 × 10−4[56]1.1 × 10−5[55]5.4 × 10−3[57]1.2 × 10−3[57]
rs13277254CHRNB3-A64.0 × 10−3[59]4.0 × 10−5[56]7.8 × 10−4[57]6.3 × 10−4[60]
rs13277524CHRNB3-A66.0 × 10−5[56]3.8 × 10−3[57]7.4 × 10−4[57]
rs6474412CHRNB3-A61.1 × 10−4[56]5.6 × 10−3[57]1.0 × 10−3[61]8.7 × 10−3[55]2.1 × 10−5[55]* 1.7 × 10−4[62]* 2.6 × 10−5[62]* 8.0 × 10−3[63]
rs6474413CHRNB3-A63.6 × 10−8[54]6.3 × 10−5[56]9.3 × 10−4[57]
rs7004381CHRNB3-A69.9 × 10−8[54]3.9 × 10−2[60]3.1 × 10−3[57]
rs4950CHRNB3-A69.5 × 10−8[54]1.0 × 10−4[56]1.4 × 10−3[57]7.0 × 10−3[60]1.1 × 10−5[55]
rs13280604CHRNB3-A61.0 × 10−7[54]6.0 × 10−3[60]1.4 × 10−5[55]* 1.2 × 10−4[62]* 2.7 × 10−5[62]
rs4952CHRNB3-A64.1 × 10−3[56]1.1 × 10−2[57]1.4 × 10−3[57]2.0 × 10−2[58]
rs4954CHRNB3-A64.3 × 10−7[64]6.0 × 10−3[65]4.1 × 10−3[57]
rs16969968CHRNA5-A3-B41.0 × 10−2[59]1.3 × 10−4[56]* 2.4 × 10−69[62]* 5.6 × 10−72[66]* 9.0 × 10−4[67]* 4.3 × 10−65[68]5.1 × 10−17[69]
rs1051730CHRNA5-A3-B42.0 × 10−4[56]2.0 × 10−3[70]* 5.8 × 10−44[68]* 2.8 × 10−73[66]* 1.0 × 10−3[67]* 1.7 × 10−66[68]* 6.0 × 10−20[71]4.3 × 10−17[69]
rs6495308CHRNA5-A3-B41.9 × 10−3[56]* 6.9 × 10−5[72]4.8 × 10−3[56]1.7 × 10−7[69]
rs2236196CHRNA43.1 × 10−7[64]2.0 × 10−2[73]5.0 × 10−4[57]4.4 × 10−4[57]2.7 × 10−2[69]
p. p-value; Ref. reference. * associations with cigarettes per day (CPD). The associations identified by GWASs were underlined.
Table 2. Significant expression correlation between CHRNs and dopaminergic and GABAergic receptor genes in human brain.
Table 2. Significant expression correlation between CHRNs and dopaminergic and GABAergic receptor genes in human brain.
GenesCHRNB3CHRNA6CHRNA5CHRNA3CHRNB4CHRNA4
DRD1SNIGPUTM,TCTX FCTX,TCTX FCTX,THAL
DRD2SNIG,TCTXPUTM,SNIG,TCTX,THAL FCTX,HIPP,TCTX,THALCRBL,FCTXCRBL,OCTX,SNIG,TCTX,THAL
DRD3FCTXPUTMTHALFCTXFCTX,OCTX
DRD4FCTX THALFCTX,TCTXFCTX,HIPP,OCTX,PUTM,TCTX
DRD5WHMTTHALTHALFCTX,THAL,WHMTCRBL,FCTX,HIPP,SNIG,WHMTTHAL
THSNIG,TCTX,WHMTSNIG,TCTX FCTX,TCTXCRBL,FCTX,OCTXCRBL,SNIG
GABRA1SNIGSNIG,THALSNIG,THALCRBL,THALFCTXFCTX,HIPP,MEDU,SNIG,THAL
GABRA2OCTXMEDU,OCTX,PUTM,THALCRBL,MEDUFCTX,MEDU,TCTX,THALFCTX,MEDUOCTX,THAL
GABRA3OCTX,SNIGMEDU,OCTX,SNIG,THALMEDU,SNIG,THALCRBL,THAL CRBL,FCTX,HIPP,OCTX,PUTM,SNIG,TCTX,THAL
GABRA4FCTX,OCTX,SNIG,THALMEDU,OCTX,PUTM,SNIG,THAL,WHMTCRBL,MEDU,THALFCTX,MEDU,TCTX,THAL,WHMTFCTX,MEDU,TCTXCRBL,FCTX,HIPP,SNIG,THAL
GABRA5OCTXMEDU,OCTX,THALMEDU,THALMEDU,THALCRBLCRBL,FCTX,OCTX,THAL
GABRA6 CRBL
GABRB1FCTX,OCTX,PUTM,SNIGMEDU,PUTM,SNIG,THALCRBL,MEDU,SNIGFCTX,OCTX,TCTXFCTX,TCTXOCTX,SNIG
GABRB2SNIGSNIG,THALCRBL,THALCRBL,FCTX,PUTM,TCTX,THALFCTX,TCTXFCTX,HIPP,MEDU,THAL
GABRB3OCTX,SNIGMEDU,OCTX,SNIG,THALMEDU,THALMEDU,TCTX,THALMEDU,TCTXCRBL,FCTX,OCTX,SNIG,THAL
GABRDWHMTTHALTHALCRBL,PUTM,THAL,WHMT FCTX,HIPP,MEDU,THAL
GABRE THAL MEDU
GABRG1 MEDUCRBL,MEDUMEDU,OCTX
GABRG2OCTX,SNIG,WHMTSNIG,THALTHALCRBL,TCTX,THALTCTXFCTX,HIPP,MEDU,SNIG,THAL
GABRG3FCTXMEDU,PUTMCRBLTCTXFCTX,TCTXCRBL,FCTX,MEDU
GABRPFCTX,PUTM FCTXCRBL,FCTX,PUTM
GABRQHIPPTHALTHALHIPP,THALCRBLCRBL,MEDU,PUTM,THAL
GABRR2 THAL
α = 3.3 × 10−5. Cerebellar cortex (CRBL), frontal cortex (FCTX), hippocampus (HIPP), medulla (specifically inferior olivary nucleus, MEDU), occipital cortex (specifically primary visual cortex, OCTX), putamen (PUTM), substantia nigra (SNIG), temporal cortex (TCTX), thalamus (THAL), and intralobular white matter (WHMT). These six CHRN genes were detected in ten human brain areas. In many areas, their expression was significantly correlated with the dopaminergic or GABAergic expression (p < α) (Table 2). The correlation coefficients (0.358 ≤ |r| ≤ 0.920), regression coefficients (0.008 ≤ |β| ≤ 0.749) and p values (3.9 × 10−42p ≤ 3.3 × 10−5) for these correlations are shown in the Supplementary Tables S1 and S2.
Table 3. Chrn gene expression at whole brain and different brain areas of BXD mice.
Table 3. Chrn gene expression at whole brain and different brain areas of BXD mice.
GeneLocation (Chr, Mb)Whole BrainCortexStriatumNAcHippocampusAmygdalaMidbrainVTACerebellum
Chrnb3Chr8: 28.5046457.857.11 7.25 7.65
Chrna6Chr8: 28.5139398.73 7.797.13 10.378.977.23
Chrna5Chr9: 54.852890 7.22 8.447.45
Chrna3Chr9: 54.8603909.35 7.228.32 7.607.61
Chrnb4Chr9: 54.8778937.23 7.58 8.658.188.23
Chrna4Chr2: 180.7594079.4810.059.028.299.9510.739.648.718.30
The order of the gene list corresponds to Table 1. Only the standardized expression values (SEV) > 7 are listed. The expression replicating the previous reports (Figure 1) is underlined. This is a sub-table of the Table 5 in the paper by Zuo et al. [3].
Table 4. Cis-acting expression of quantitative locus (cis-eQTL) analysis.
Table 4. Cis-acting expression of quantitative locus (cis-eQTL) analysis.
SNPsTarget geneCerebellar CortexFrontal CortexTemporal CortexOccipital CortexPutamenThalamusHippo-CampusSubstantia NigraIntralobular White MatterMedulla
rs10958725CHRNB30.015 0.026
rs10958725CHRNA6 0.042 0.027
rs10958726CHRNB30.020 0.028
rs10958726CHRNA6 0.043 0.031
rs13273442CHRNB30.022 0.030
rs13273442CHRNA6 0.043 0.032
rs4736835CHRNB30.022 0.030
rs4736835CHRNA6 0.043 0.032
rs1955186CHRNB30.022 0.030
rs1955186CHRNA6 0.043 0.032
rs1955185CHRNB30.022 0.030
rs1955185CHRNA6 0.043 0.032
rs13277254CHRNB30.021 0.031
rs13277254CHRNA6 0.042 0.033
rs13277524CHRNB30.022 0.030
rs13277524CHRNA6 0.043 0.032
rs6474412CHRNB30.022 0.030
rs6474412CHRNA6 0.043 0.032
rs6474413CHRNB30.022 0.030
rs6474413CHRNA6 0.043 0.032
rs7004381CHRNB30.022 0.030
rs7004381CHRNA6 0.043 0.032
rs4950CHRNB30.022 0.030
rs4950CHRNA6 0.043 0.032
rs13280604CHRNB30.022 0.030
rs13280604CHRNA6 0.043 0.032
rs16969968CHRNA50.0342.0 × 10−49.3 × 10−55.1 × 10−61.9 × 10−32.2 × 10−35.9 × 10−51.8 × 10−50.0161.6 × 10−4
rs16969968CHRNA3 8.9 × 10−4
rs1051730CHRNA50.0342.0 × 10−49.3 × 10−55.1 × 10−61.9 × 10−32.2 × 10−35.9 × 10−51.8 × 10−50.0161.6 × 10−4
rs1051730CHRNA3 8.9 × 10−4
rs6495308CHRNA55.1 × 10−31.9 × 10−44.2 × 10−38.4 × 10−32.8 × 10−4 1.6 × 10−47.3 × 10−33.4 × 10−3
rs6495308CHRNA3 2.7 × 10−3 0.013
rs6495308CHRNB4 0.025 0.014
rs2236196CHRNA4 0.0440.035
α = 2.8 × 10−4 = 0.05/(10 brain tissues × 6 genes × 3 haplotype blocks); n = 134.
Table 5. Bioinformatics analyses on replicable risk CHRN SNPs.
Table 5. Bioinformatics analyses on replicable risk CHRN SNPs.
SNPChrPositionLocationAllele Frequency2nd RNA AlterationBioinformatics
(Build 37)AlleleEuropeanAfricanAsian
rs109587258425245845′ to CHRNB3G0.8220.2390.792Highly significant--
rs109587268425359095′ to CHRNB3T0.8070.3280.816no--
rs132734428425440175′ to CHRNB3G0.8250.350.826Significant--
rs47368358425470335′ to CHRNB3C0.8250.350.826SignificantLncRNA
rs19551868425494915′ to CHRNB3C0.8330.3260.875MildTFBS, LncRNA
rs19551858425496475′ to CHRNB3T0.8220.2330.836noTFBS, LncRNA
rs132772548425499825′ to CHRNB3A0.8330.4350.875noTFBS, LncRNA
rs132775248425500575′ to CHRNB3T0.8330.3260.875SignificantTFBS, LncRNA
rs64744128425504985′ to CHRNB3T0.810.3090.824SignificantTFBS, LncRNA
rs64744138425510645′ to CHRNB3T0.8330.2350.875noTFBS, LncRNA
rs70043818425511615′ to CHRNB3G0.8250.3390.826MildTFBS, LncRNA
rs49508425526335′UTR of CHRNB3A0.8280.1820.826noTFBS, LncRNA
rs13280604842559586Intron 1 of CHRNB3A0.8250.1780.826noLncRNA
rs4952842587065Exon 6 of CHRNB3C0.98311Highly significant--
rs4954842587796Intron 6 of CHRNB3A0.9730.7730.885nochromatin
rs16969968 (Asp398Asn)1578882925Exon 5 of CHRNA5G0.58710.982Highly significantsplicing,tolerated, benign,conservative
rs10517301578894339Exon 7 of CHRNA3G0.6080.8760.982noCpG
rs64953081578907656Intron 6 of CHRNA3T0.7920.6610.244no--
rs223619620619775563′UTR of CHRNA4A0.7440.4580.889nochromatin
2nd RNA alteration, the alteration of secondary RNA structure predicted using MFOLD; LncRNA, these SNPs are located in LncRNAs; TFBS, these SNPs are located in the transcription factor binding sites; chromatin, this SNP is located in an open chromatin region; splicing, this SNP is located in an exonic splicing silencer or enhancer; tolerated/benign, these SNPs are predicted by SIFT/Polyphen not to significantly affect protein function or structure; conservative, this SNP is predicted to be conservative; CpG, this SNP is located within a 234 bp methylated CpG island.
Table 6. The long non-coding RNAs (LncRNAs) proximate to the three replicable CHRN genes.
Table 6. The long non-coding RNAs (LncRNAs) proximate to the three replicable CHRN genes.
LncRNA name (NCBI Gene)AliasLength (nt)Distance to risk geneCategory
XR_949716.1LOC10537939621,176Covering CHRNB3antisense LncRNA
XR_932509.1LOC10537091335,23037,240 bp to CHRNB4intergenic sense LincRNA
NR_110634.1LOC10013058711,190Overlap with exon 1 of CHRNA4antisense LncRNA
Intergenic, located between two protein-coding genes and at least 1 kb away from these genes; Sense, LncRNAs are transcribed from the same genomic strand as the protein-coding mRNAs; Antisense, LncRNAs are transcribed from the antisense strand.
Table 7. The annotated piRNAs within the two replicable CHRN genes.
Table 7. The annotated piRNAs within the two replicable CHRN genes.
Replicable genesPosition (Build 37)Number of piRNAsLength (nt)
CHRNB3chr8:42552561–425922084226–31
CHRNA6chr8:42607762–42623618829–31
CHRNA5chr15:78857905–788864591728–31
CHRNA3chr15:78887650:789133212026–31
CHRNB4Chr15:78916635:78933586427–29

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Zuo, L.; Garcia-Milian, R.; Guo, X.; Zhong, C.; Tan, Y.; Wang, Z.; Wang, J.; Wang, X.; Kang, L.; Lu, L.; et al. Replicated Risk Nicotinic Cholinergic Receptor Genes for Nicotine Dependence. Genes 2016, 7, 95. https://0-doi-org.brum.beds.ac.uk/10.3390/genes7110095

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Zuo L, Garcia-Milian R, Guo X, Zhong C, Tan Y, Wang Z, Wang J, Wang X, Kang L, Lu L, et al. Replicated Risk Nicotinic Cholinergic Receptor Genes for Nicotine Dependence. Genes. 2016; 7(11):95. https://0-doi-org.brum.beds.ac.uk/10.3390/genes7110095

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Zuo, Lingjun, Rolando Garcia-Milian, Xiaoyun Guo, Chunlong Zhong, Yunlong Tan, Zhiren Wang, Jijun Wang, Xiaoping Wang, Longli Kang, Lu Lu, and et al. 2016. "Replicated Risk Nicotinic Cholinergic Receptor Genes for Nicotine Dependence" Genes 7, no. 11: 95. https://0-doi-org.brum.beds.ac.uk/10.3390/genes7110095

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