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Article

Secondhand Smoke Induces Liver Steatosis through Deregulation of Genes Involved in Hepatic Lipid Metabolism

1
Department of Preventive Medicine, USC Keck School of Medicine, University of Southern California, Los Angeles, CA 90033, USA
2
Department of Cancer Biology, Beckman Research Institute of the City of Hope, Duarte, CA 91010, USA
*
Author to whom correspondence should be addressed.
Current address: HANDOK, 132, Teheran-ro, Gangnam-gu, Seoul 06235, Korea.
Int. J. Mol. Sci. 2020, 21(4), 1296; https://doi.org/10.3390/ijms21041296
Submission received: 14 January 2020 / Revised: 5 February 2020 / Accepted: 13 February 2020 / Published: 14 February 2020
(This article belongs to the Section Molecular Genetics and Genomics)

Abstract

:
We investigated the role of secondhand smoke (SHS) exposure, independently of diet, in the development of chronic liver disease. Standard diet-fed mice were exposed to SHS (5 h/day, 5 days/week for 4 months). Genome-wide gene expression analysis, together with molecular pathways and gene network analyses, and histological examination for lipid accumulation, inflammation, fibrosis, and glycogen deposition were performed on the liver of SHS-exposed mice and controls, upon termination of exposure and after one-month recovery in clean air. Aberrantly expressed transcripts were found in the liver of SHS-exposed mice both pre- and post-recovery in clean air (n = 473 vs. 222). The persistent deregulated transcripts (n = 210) predominantly affected genes and functional networks involved in lipid metabolism as well as in the regulation of the endoplasmic reticulum where manufacturing of lipids occurs. Significant hepatic fat accumulation (steatosis) was observed in the SHS-exposed mice, which progressively increased as the animals underwent recovery in clean air. Moderate increases in lobular inflammation infiltrates and collagen deposition as well as loss of glycogen were also detectable in the liver of SHS-exposed mice. A more pronounced phenotype, manifested as a disrupted cord-like architecture with foci of necrosis, apoptosis, inflammation, and macrovesicular steatosis, was observed in the liver of SHS-exposed mice post-recovery. The progressive accumulation of hepatic fat and other adverse histological changes in the SHS-exposed mice are highly consistent with the perturbation of key lipid genes and associated pathways in the corresponding animals. Our data support a role for SHS in the genesis and progression of metabolic liver disease through deregulation of genes and molecular pathways and functional networks involved in lipid homeostasis.

1. Introduction

Non-alcoholic fatty liver disease (NAFLD) is one of the most prevalent forms of chronic liver disorders worldwide [1,2]. The incidence of NAFLD is rising in many parts of the world, especially in developed countries [3]. In the United States alone, between 30% and 40% of the adult population is affected with NAFLD [3]. Among children and adolescents, NAFLD is currently the primary form of liver disease; it is estimated that nearly 10% of the US population aged between 2 and 19 has NAFLD [4]. NAFLD has been associated with insulin resistance and metabolic syndrome—a cluster of conditions consisting of high blood sugar, excess body fat around the waist, and abnormal cholesterol or triglyceride levels—that are key determinants of cardiovascular disease and type 2 diabetes mellitus [1]. Abdominal obesity is a common feature of patients with NAFLD; in obese individuals, the prevalence of NAFLD can exceed 95% [5]. As the epidemic of obesity continues to grow worldwide, so does the prevalence of NAFLD [5].
NAFLD is characterized by the accumulation of fat droplets within the liver cells, a condition known as hepatic ‘steatosis’ [6]. Retention of lipids within the cells reflects an impairment of the normal process of synthesis and elimination of fat, primarily triglycerides [6]. Buildup of excess lipids within the cells manifests as the accumulation of vesicles that can displace the nucleus, disrupt cell constituents and, in severe cases, lead to cell rupture/burst [7]. Non-diagnosed and untreated NAFLD can progress from benign steatosis and fatty liver to more permanent and severe liver injury, including non-alcoholic steatohepatitis (NASH) with inflammation and variable fibrosis, cirrhosis, and eventually hepatocellular carcinoma [8].
Although distinct risk factors for NAFLD have been identified, the exact cause(s) of this disease and the underlying mechanisms of its initiation and progression remain unknown. Accumulating evidence shows that exposure to environmental toxicants, including secondhand smoke (SHS), contributes to the development of NAFLD by promoting mitochondrial dysfunction and oxidative stress within the hepatocytes [9,10,11,12]. Several studies have shown that cigarette smoking is an independent risk factor for the onset of NAFLD [13,14,15,16], and significantly associated with increased intrahepatic fat [17] and advanced liver fibrosis [18,19]. Survey based reports have also shown an association between exposure to SHS and development of NAFLD in children [20,21] and in never-smoking women [22]. A more recent systematic review and meta-analysis established that SHS increases the risk of NAFLD approximately 1.38 times [23]. Animal studies have also provided support for a potential role of SHS in the genesis and progression of NAFLD [24,25,26]. Yuan et al. [26] have shown that subchronic exposure of mice to SHS stimulates hepatic fatty acids synthesis by modulating two key regulators of lipid metabolism, including AMP-activated protein kinase (AMPK) and sterol regulatory element binding protein-1c (SREBP-1c). The SHS-exposed mice in the Yuan et al. study developed hepatic steatosis, which—as the authors inferred—would lead to NAFLD development [26]. De la Monte et al. [25] have demonstrated that A/J mice exposed to SHS exhibit progressive liver injury and steatohepatitis, with impairments in hepatic insulin and insulin-like growth factor (IGF) signaling. Azzalini et al. [24] have shown that nose-only exposure of Zucker ‘obese’ rats to cigarette smoke, mimicking SHS exposure, worsens the histological severity of NAFLD, increases the burden of oxidative stress, and induces hepatocellular apoptosis [24,27].
Although informative, most animal studies investigating the role of SHS exposure in the development of NAFLD have been conducted in rodents fed with high-fat diets that contain cholate, a known cause of liver inflammation and dysfunction [28]. As a result, the role of SHS exposure, independently of diet, in the genesis of NAFLD is not delineated. In addition, the above studies are limited in scope, as they have focused on the analysis of ‘select’ target genes. Therefore, a comprehensive study interrogating the whole transcriptome is needed to establish the global effects of SHS on the regulation of genes that govern NAFLD development. Towards this end, we have constructed the whole hepatic transcriptome in relation to liver histology in ‘standard diet-fed’ mice subchronically exposed to SHS according to our published protocol [29,30,31,32]. More specifically, we have investigated the relationship between global regulation of genes and molecular pathways and gene networks and histological changes indicative of liver injury and hepatic steatosis (i.e., lipid accumulation, inflammation, fibrosis, and glycogen deposition) in the SHS-exposed mice both upon cessation of exposure and after one-month recovery in clean air.

2. Results

2.1. Genome-Wide Gene Expression Changes in the Liver of Secondhand Smoke (SHS)-Exposed Mice

As shown in Figure 1A, subchronic exposure of mice to SHS elicited a significant transcriptomic response, as reflected by the large number of aberrantly expressed transcripts in the SHS-exposed versus control mice. More specifically, there were 473 aberrant transcripts in the SHS-exposed mice relative to age-matched controls (Figure 1A; Table S1). One-month recovery in clean air resulted in slight attenuation of the transcriptional changes in the SHS-exposed mice, although the number of aberrantly expressed transcripts remained considerably high in the exposed mice undergone recovery (i.e., 222 transcripts). There were 210 overlapping aberrant transcripts in the SHS-exposed mice pre- and post-recovery.
Principal component analysis (PCA) and hierarchical clustering analysis in Partek GS® showed clustering of the datasets from mice belonging to the same experimental or control groups, which confirms a uniform gene expression pattern within each experimental/control group (Figure 1B,C). Compiled lists of differentially expressed transcripts in experimental groups relative to controls are shown in Table S1. The lists identify both common and unique deregulated genes in the SHS-exposed mice before and after one-month recovery. Overall, there was a high degree of overlap between differentially expressed genes in the SHS-exposed mice before and after recovery in clean air (Figure 1A; Table S1).

2.2. Modulation of Functional Networks and Biological Pathways in SHS-Exposed Mice

To investigate the lasting effects of SHS, we selected the dataset generated by comparing both the SHS4m and SHS4m+1m recovery groups vs. controls (Set 3; Figure 1A). Of the 210 common transcripts, 201 mapped to known IDs, for a total of 153 unique genes (Table 1). Of the 153 differentially expressed genes (DEGs), 63 (>41%) are known to participate in lipid homeostasis, specifically uptake, synthesis, and accumulation of lipids, as well as fatty acids oxidation and secretion (Table 1). Eighteen of these 63 genes (>28%) are specifically involved in liver steatosis (Figure 2A). To characterize the gene networks and functional pathways associated with the 153 unique genes, we performed gene ontology and functional network analyses, using a combination of Database for Annotation, Visualization and Integrated Discovery (DAVID) and Ingenuity® Pathway Analysis (IPA®). Applying the DAVID annotation clustering analysis tool, we discovered twenty-eight relevant biological clusters. The top functional category with the highest enrichment score consisted of gene sets involved in lipid metabolism (Figure 2B). Based on DAVID analysis, we also detected deregulated genes that are involved in oxidoreductase reactions (Figure 2B). The latter is consistent with SHS being a well-known inducer of reactive oxygen species (ROS) and oxidative stress [33,34]. Other highly enriched categories included genes implicated in endoplasmic reticulum function, circadian regulation of gene expression, lipid biosynthesis, and transcription regulation (Figure 2B).
IPA® analysis of the 153 unique DEGs showed disruption of similar gene networks and functional pathways in the SHS-exposed mice, both pre- and post-recovery. As shown in Figure S1, the top impacted networks comprised of genes involved in lipid metabolism and biosynthesis. Other affected gene networks included molecules implicated in behavior and nervous system development and function, cell death and survival, drug metabolism and small molecule biochemistry (Figure S1). The top canonical pathways impacted in the SHS-exposed mice, both pre- and post-recovery, included the lipopolysaccharide (LPS)/IL-1 mediated inhibition of the Retinoid X Receptor (RXR) function (p = 3.11 × 10−6), the adipogenesis pathway (p = 3.97 × 10−6), and the nicotine degradation II pathway (p = 4.98 × 10−6) (Figure 2C). Members of these pathways are known to participate in the negative acute phase response (APR), which down-regulates hepatic genes with crucial physiological roles, in response to liver injury, infection, and/or inflammation. Reduction of key molecules within these pathways ultimately leads to impaired metabolism, transport and/or biosynthesis of lipid, cholesterol, bile acid, and xenobiotics [35].
Next, we used the IPA® Upstream Regulator Analysis tool to identify the upstream regulators that are likely to account for the aberrant expression of the 63 lipid-specific genes. Based on IPA® prediction analysis, we identified the Conserved Helix-Loop-Helix Ubiquitous Kinase (CHUK) as the top master regulator with an activation z-score of 2.376. CHUK is a member of the serine/threonine protein kinase family, and plays an essential role in the NF-κB signaling pathway. The NF-κB pathway is activated by multiple stimuli, including DNA damage [36] and is involved in inflammation, fibrosis and hepatocarcinogenesis [37]. Our prediction analysis shows that CHUK modulates a complex network of upstream regulators (IKBKG, IKBKB, SP1, STAT1, NFKBIA, FOXO3, NF-κB complex, RELA, NFKB1 and TP53), which may work together to elicit the transcriptional changes observed in a subset of lipid-specific genes (25 out of 63 genes). Thirteen of these 25 target genes are presumably under control of the TP53 gene (Figure 3). Four of the TP53-regulated genes, i.e., Rgs16, Lpin1, Hmox1, and Tsc22d3, are known to be involved in liver steatosis (Figure 2A).

2.3. Initiation and Progression of Liver Steatosis in SHS-Exposed Mice

To investigate whether in vivo exposure of mice to SHS causes anomalies in the lipogenic pathways and induces hepatic steatosis, we performed Oil Red O (ORO) staining on liver sections from SHS-exposed mice in comparison to controls. As illustrated in Figure 4A (upper panels), there was a significant increase in fat deposition (steatosis) within the liver cells of SHS-exposed mice, immediately after treatment, as compared to age-matched controls (p = 0.000334). The extent of liver steatosis in the SHS-exposed mice was significantly enhanced after one-month recovery in clean air (SHS4m+1m recovery vs. SHS4m; p = 0.000017 and SHS4m+1m recovery vs. Control 1; p = 0.000276). While reaffirming the steatogenic properties of tobacco smoke on hepatocytes [26,38], these findings show that SHS-induced liver steatosis in vivo is likely to progress and become pervasive. To further determine whether the SHS-induced liver steatosis persisted and/or intensified over prolonged periods of time, we measured fat accumulation in the liver of a subgroup of SHS-exposed mice undergone seven-month recovery in clean air (SHS4m+7m recovery). As shown in Figure 4A (lower panels), extended recovery in clean air resulted in progression of the induced liver steatosis in the SHS-exposed mice (SHS4m+7m recovery vs SHS4m; p < 0.00001). The SHS-exposed mice undergone seven-month recovery also showed significantly higher levels of hepatic fat accumulation than age-matched control mice (SHS4m+7m recovery vs. Control 2; p = 0.000114).
Ogrodnik et al. [39] have recently shown that cellular senescence drives age-dependent hepatic fat accumulation and steatosis through induction of mitochondrial dysfunction, which, in turn, reduces fat metabolism. Consistent with the findings of that study, we observed higher levels of fat accumulation in the liver of control older mice than younger mice (Control 2 vs. Control 1; p = 0.000508). Altogether our data indicate that in vivo exposure of mice to SHS not only initiates liver steatosis but also exacerbates age-dependent progression of hepatic fat deposition.

2.4. Histopathological Evaluation of Liver Injury in SHS-Exposed Mice

Several deregulated genes detected in our dataset (ACOT1, ADIPOR2, ADORA1, EGR1, HMOX1, IL6R, LPIN1, NROB2, and POR) are known to play a crucial role in liver inflammation (Table 1). Three genes in particular, ACOT1, ADIPOR2 and ADORA1, are associated with nonalcoholic steatohepatitis [40,41]. Deregulation of IL6, a potent pleiotropic cytokine, and the hepatic IL6 receptor (IL6R) are important contributors to the immune response and acute inflammation in vivo. To further investigate whether exposure to SHS predisposes mice to other forms of liver injury, including inflammation and/or fibrosis, paraffin-embedded liver sections from experimental and control mice were stained with H&E, Masson’s trichrome and Periodic Acid-Schiff (PAS) stain. As shown in Figure 4B and Figure 5, we observed a mild increase in lobular inflammation infiltrates and collagen deposition (blue areas) in the liver of SHS4m and SHS4m+1m recovery mice, as compared to control mice. Consistent with previous findings [25], a more pronounced phenotype manifested in the liver of mice post-recovery. Liver sections from SHS4m+1m recovery mice showed a disrupted cord-like architecture with foci of necrosis, apoptosis, inflammation and macrovesicular steatosis (Figure 4B, panels c,f). A great variability in the size and nuclear morphology of hepatocytes was also observed in these mice (Figure 4B, panel f). Our data show that exposure to SHS is likely to induce early signs of inflammation and fibrosis, with effects that persist even after termination of exposure. Furthermore, the results obtained by histopathological examination are in good agreement with the gene expression data.
A recent study has shown that lack of liver glycogen causes hepatic insulin resistance and steatosis in mice [42]. To examine whether exposure to SHS affects glycogen metabolism, we also performed PAS staining on liver sections from SHS-exposed mice and controls, before and after recovery. As shown in Figure 5, liver tissues from SHS4m mice displayed prominent loss of glycogen (h, k), while hepatocytes of SHS4m+1m recovery mice and controls showed intense and extensive PAS-positive staining (i, l), indicative of glycogen accumulation. The divergent patterns of glycogen loss/buildup in the liver of SHS-exposed vs. control mice are consistent with body weight gains of the corresponding animals (Figure S2). Whilst mice in the control group gained body weight steadily throughout the sham-exposure and subsequent recovery, the mice in the experimental group showed a nearly flat pattern of body weight gain during the four-month SHS exposure. The SHS-exposed mice, however, started to re-gain weight immediately after the termination of exposure (Figure S2) [29]. In confirmation, we observed up-regulation of glycogen synthase 2 (Gys2) in the SHS4+1m recovery mice relative to controls (Table S1), indicating that synthesis of glycogen is resumed following recovery in clean air.

2.5. Validation of Genome-Wide Gene Expression Data by Reverse Transcription-Quantitative PCR (RT-qPCR)

To validate the genome-wide gene expression data, we randomly selected several up-regulated or down-regulated targets from the 153 gene list (Table 1), and quantified the expression level of each gene by standard Reverse Transcription Quantitative PCR (RT-qPCR). Mean normalized expression levels of all selected genes in the SHS-exposed mice, before and after recovery, relative to age-matched controls are shown in Figure 6A. Consistent with the microarray data, RT-qPCR analysis of total RNA from the liver of SHS-exposed mice pre-recovery showed a ~13-fold increase in relative expression level of the regulator of G-protein signaling 16 gene (Rgs16). The expression level of Rgs16 continued to increase in the SHS-exposed mice after one-month recovery, reaching ~46 times higher than that in age-matched controls (Figure 6A). The regulator of G-protein signaling 16 gene (Rgs16) is a key determinant of lipid metabolism and biosynthesis [43]. RGS16 has been shown to induce hepatic steatosis by inhibiting Gi/Gq-mediated fatty acid oxidation. Transgenic mice specifically expressing RGS16 protein in their hepatocytes have shown to have elevated levels of triglycerides and accumulation of fat deposits in their liver compared to control littermates, while Rgs16 knockout mice have displayed the opposite phenotype [43].
Likewise, over-expression of the Lipin1 (Lpin1) gene, which plays a crucial role in liver metabolism [44,45], was confirmed in the SHS-exposed mice by RT-qPCR analysis. LPIN1 is a bi-functional protein with distinct roles in lipid metabolism, depending on its subcellular localization [46]. In the nucleus, Lpin1 interacts with the peroxisome proliferator-activated receptor α (PPARα) and PPARγ coactivator 1α (PGC-1α) to modulate the expression of genes involved in mitochondrial fatty acid oxidation [44]. In the cytoplasm, LPIN1 functions as a Mg2+-dependent phosphatidate phosphatase enzyme that catalyzes the conversion of phosphatidate to diacylglycerol, a key step in the biosynthesis of triacylglycerol [45]. As shown in Figure 6A, the expression level of Lpin1 was increased in the SHS-exposed mice pre-recovery (2.5-fold) and continued to rise after one month of recovery (~5-fold) relative to age-matched controls. Of significance, both Rgs16 and Lpin1 were identified by IPA® analysis as part of a subset of molecules affecting liver steatosis in the SHS-exposed mice (Figure 2A).
We also confirmed over-expression of the metallothionein 1 (Mt1) gene in the SHS-exposed mice before and after one-month recovery (Figure 6A). Mt1 and its isoform Mt2 belong to a family of small cysteine-rich and heavy metal binding proteins, the metallothioneins (MTs), that are involved in protective stress responses [47]. Synthesis of MTs has been reported to significantly increase due to a variety of stimuli, including oxidative stress, cytotoxicity, irradiation, and DNA damage [47]. Furthermore, we detected SHS-induced up-regulation of the ubiquitin specific peptidase 2 (Usp2) gene and its downstream target, the period circadian clock 1 (Per1) gene, in the SHS-exposed mice vs. controls. The transcription levels of these two genes were significantly elevated in the SHS-exposed mice, both before and after one-month recovery, as compared to age-matched controls (Figure 6A).
Moreover, we verified the SHS-induced down-regulation of other functionally important genes. The hepatocyte nuclear factor 6 (Hnf6/Onecut1) is a member of the one cut family of transcription factors, which modulates expression of numerous genes required for hepatocyte function. Hfn6 is known to be down-regulated during liver injury [48]. The elongation of very long chain fatty acids (FEN1/Elo2, SUR4/Elo3, yeast)-like 3 (Elovl3) gene encodes a protein that plays a key role in elongation of long chain fatty acids, thus providing precursors for synthesis of sphingolipids and ceramides [49]. Down-regulation of Onecut1 and Elovl3 transcripts was confirmed in the SHS-exposed mice upon termination of exposure (0.20-fold and 0.17-fold, respectively) and remained persistent in the counterpart mice undergone one-month recovery in clean air (0.78-fold and 0.22-fold, respectively) (Figure 6A).

3. Discussion

First, we analyzed the hepatic transcriptome of SHS-exposed mice, pre- and post-recovery, using genome-wide gene expression analysis followed by functional network and molecular pathway analyses. As shown in Figure 1A and Table S1, SHS-exposure resulted in a significant transcriptomic response, with several hundred differentially expressed transcripts being detectable in the exposed mice immediately after treatment. One-month recovery in clean air only partially mitigated the SHS-induced transcriptional changes as the number of aberrant transcripts in the exposed mice undergone recovery remained substantially high (Figure 1A and Table S1). The persistent transcriptional changes in the SHS-exposed mice predominantly affected genes and functional networks involved in lipid metabolism and biosynthesis as well as in regulation of the endoplasmic reticulum where manufacturing of lipids occurs (Figure 2B, Figure S1 and Table 1). Of the common DEGs in the SHS-exposed mice pre- and post-recovery, 41% are known to modulate lipid metabolism, with 28% being specifically involved in the development of hepatic steatosis (Figure 2A and Table 1).
Upstream Regulator Analysis by IPA® identified a complex network of eleven transcription factors and/or regulators (CHUK, IKBKG, IKBKB, SP1, STAT1, NFKBIA, FOXO3, NF-κB complex, RELA, NFKB1 and TP53) that are likely to account for the observed deregulation of lipid metabolism-specific genes and associated pathways in the SHS-exposed mice (Figure 3). This network includes NF-κB, whose activation in non-parenchymal cells is generally recognized to promote inflammation, fibrosis and hepatocarcinogenesis [37]. Of significance is also the predicted activation of TP53, a preferential target of DNA-damaging agents, such as tobacco smoke carcinogens [30,50,51], and a key regulator in fatty liver and insulin resistance [52]. TP53 interacts with the NK-kB complex, and crosstalk between the TP53 and NF-kB transcription factors has been shown to play a pivotal role in determining the cellular response to certain stimuli, e.g., DNA damage [53]. The predicted activation of TP53 is in accordance with the expression status of several downstream lipid targets found in the SHS-exposed mice, both before and after recovery in clean air (Figure 3).
A novel finding of our study is the SHS-induced up-regulation of Rgs16 and Lpin1, two TP53 downstream effectors with crucial roles in lipid metabolism and liver steatosis (Figure 2A). RGS16 is known to be induced by doxorubicin in cells expressing wild-type p53 [54]. In normal lung fibroblasts, RGS16 is transcriptionally activated by exogenous expression of p53, either individually or in combination with retinoblastoma 1 [55]. TP53 can also up-regulate the expression of Lpin1 via three p53 binding sites located on the first intron of the gene [56]. Whole body γ-irradiation of wild-type p53 mice, but not p53−/− mice, has been shown to cause up-regulation of Lpin 1 in several organs, with a pattern of expression resembling that of typical p53-responsive genes, including the p21WAF1 gene [56]. In addition to being bona fide targets of p53, Rgs16 and Lpn1 contain potential sterol regulatory element (SRE) binding sites for SREBP-1, a key regulator of lipid metabolism under the negative control of AMPK [57].
A growing number of studies has shown a ‘noncanonical’ role for p53 in modulating lipid metabolism by either transcriptional regulation of target molecules involved in fatty acid synthesis and oxidation and lipid droplet formation or via direct protein-protein interactions [58,59,60,61]. Based on our results, we propose a model in which SHS induces TP53 via the DNA-damage response pathway, the ataxia–telangiectasia mutated/ataxia–telangiectasia and Rad3 related (ATM/ATR) kinase pathway). Active TP53, in turn, transcriptionally activates Rgs16 and Lpin1, and most likely additional steatogenic genes in a tissue-specific context, ultimately leading to liver steatosis (Figure 6B). Alternatively, SHS can cause mutations in the TP53 gene, and gain-of-function mutant forms of TP53 have been found to enhance fatty acid synthesis by inhibitory interaction with AMPKα, and consequent activation of SREBP-1 (Figure 6B) [60]. In turn, SREBP-1 can transcriptionally activate Rgs16 and Lpin1 through the SRE binding sites located on these genes. Yuan et al. have previously reported inactivation of AMPK and activation of SREBP-1c concurrent with hepatic lipid accumulation in mice fed with high-fat-diet and exposed to SHS [26]. Altogether, the deregulation of Rgs16 and Lpin1 in the SHS-exposed mice found in our study may provide novel insights into the interplay of carcinogen exposure, TP53-dependent response, and metabolic liver disease. Work in our laboratory is currently underway to further investigate the herein proposed model of SHS-induced hepatic steatosis via the TP53 pathway.
Lastly, the perturbation of key lipid genes in the SHS-exposed mice, which persisted after recovery in clean air, is highly consistent with the progressive accumulation of fat and other adverse histological changes observed in the liver of corresponding animals (Figure 4 and Figure 5). As shown in Figure 4A, the extent of fat accumulation in the liver of SHS-exposed mice progressively increased after recovery time in clean air (Figure 4A). Furthermore, SHS-exposed mice undergone recovery displayed more pronounced signs of liver injury, including disorganized lobular architecture, foci of inflammation, necrosis, and variable fibrosis (Figure 4B and Figure 5). One possible explanation for this observation is that the cascade of events triggered by exposure to SHS can further progress, even in the absence of SHS, and cause potentially irreversible liver injury. According to the ‘multiple-hit’ hypothesis, multiple events are required to promote NAFLD initiation and progression. Based on our results, SHS-induced disruption of lipid homeostasis with consequent steatosis may constitute the first hit. Additional factors (metabolic, environmental, genetic and/or epigenetic mechanisms) can further exacerbate liver injury mostly through modulation of pathways involved in mitochondrial dysfunction, oxidative stress, fatty acid biosynthesis, and inflammation, thus, leading to more severe forms of NAFLD. In other words, the first hit (SHS-induced liver steatosis) can increase the susceptibility to subsequent hits, and this could explain why we observed more pronounced effects in SHS4m+1m recovery mice. Future follow up studies are needed to investigate the likelihood of the above scenarios in human populations.

4. Materials and Methods

4.1. Animal Care and Maintenance

This study was conducted in accordance with the recommendations described in the Guide for the Care and Use of Laboratory Animals of the National Institutes of Health, and all efforts were made to minimize animal suffering [62]. The study was approved by the Institutional Animal Care and Use Committee (IACUC) of the City of Hope (Protocol Number: 09012, 07 January 2009). All mice were fed a standard diet consisting, at a caloric level, of 25% proteins, 13% fat, and 62% carbohydrates (PicoLab® Rodent Diet 20, PMI Nutrition International, LLC., Brentwood, MO, USA). At all times, including the exposure phase and recovery period, the mice had access to food and water ad libitum.

4.2. Smoking Machine and SHS Exposure

The smoking machine and exposure protocol have been described in detail in [29,30]. Briefly, SHS was generated using a custom-made TE-10 smoking machine (Teague Enterprises, Woodland, CA, USA). The TE-10 smoking machine is a microprocessor-controlled unit that can generate mainstream smoke, sidestream smoke, or a combination of the two. The machine was programmed to burn 3R4F Reference Kentucky cigarettes (Tobacco Research Institute, University of Kentucky, Lexington, KY, USA), and produce a mixture of sidestream smoke (89%) and mainstream smoke (11%). This formulation is conventionally used to mimic SHS for in vivo exposure and is representative of the SHS inhaled by humans in real life [32,63,64].
At the outset, all experimental mice underwent an acclimatization period during which they were gradually exposed ‘whole body’ to incremental doses of SHS. Following the acclimatization period, the mice were maintained on a SHS exposure regimen, which included 5 h per day, 5 days per week, and four-month whole body exposure to SHS, produced by continuous burning of 7–9 cigarettes. The average concentrations of total suspended particulate (TSP) in the exposure chambers were 233.0 ±15.4 mg/m3 at any given time during the four-month SHS exposure. The respective average TSP concentrations correspond to SHS generated through continuous smoking of 8.0 ± 0.5 cigarettes, at any given time during the four-month SHS exposure [29].
We note that whole body smoke exposure in rodents may result in residual transdermal and gastrointestinal absorption of smoke particles consequent to grooming [30]. However, ‘nose-only’ exposure can cause stress and discomfort for the animals, which would be pronounced in long-term studies, such as the present one. Therefore, we chose whole body exposure of mice to SHS based on tolerability and practicality of this approach and its compatibility with our study design. In addition, whole body smoke exposure in mice recapitulates real-life human exposure to SHS [30].

4.3. Study Design

Adult male mice (6–8 weeks old), on a C57BL/6 genetic background, were randomly assigned to two groups, including (1) ‘experimental’ (SHS exposure) and (2) ‘control’ (sham-treatment in clean air). The experimental group was divided in two subgroups (5 mice per subgroup), including four-month SHS exposure (SHS4m) and four-month SHS exposure plus one-month recovery in clean air (SHS4m+1m recovery). Age-matched control mice were similarly subdivided in sham-treatment subgroups, with and without recovery (5 mice per subgroup). The sham-treated mice were exposed to filtered high-efficiency particulate air (HEPA) in lieu of SHS, as described previously [29,30,31,32]. At the end of all experiments, the SHS-exposed and control mice were euthanized by CO2 asphyxiation and various tissues and organs, including the liver, were harvested and kept at −80 °C until further analysis. We note that based on life span, four-month SHS exposure in mice is equivalent to approximately 12 years human exposure to SHS, which is a realistic and biologically relevant exposure scenario in real-life. In our previously published studies [29,30,31,32,65,66], we have also verified that four-month SHS exposure is sufficient to elicit significant genotoxic, epigenetic, and transcriptomic responses in various organs and tissues of male C57BL/6 mice. We have also confirmed that five mice per group are sufficient to yield, at a minimum, a study power of 1 − β = 80%, and statistically significant results at p < 0.05.

4.4. Genome-Wide Gene Expression Analysis

To construct the hepatic transcriptome in SHS-exposed mice, we used the GeneChip® Mouse Genome 430 2.0 Array (originally from Affymetrix Inc., Santa Clara, CA, USA; currently Thermo Fisher Scientific, Waltham, MA, USA). This microarray platform enables interrogation of over 39,000 transcripts and variants from more than 34,000 well-characterized mouse genes. Briefly, total RNA was isolated from liver tissues of SHS-exposed mice and controls, using the RNeasy Mini Kit (Qiagen, Valencia, CA, USA). Synthesis of double-stranded cDNA from total RNA, fragmentation, hybridization, staining, and microarray scanning were performed according to the manufacturer’s instructions (Affymetrix Inc.). Quality control evaluation and processing and analysis of expression data were performed using the Affymetrix Expression Console™ software (Affymetrix Inc.). The Bioconductor package ‘ArrayTools’ was used to identify differentially expressed genes in experimental groups relative to controls, as described previously [67]. To establish gene expression trends within each experimental group, significant gene lists were examined by hierarchical clustering analysis and principal component analysis (PCA) using the Partek® Genomics Suite® software (Partek Incorporated, St. Louis, MO, USA). Raw microarray data have been deposited in the Gene Expression Omnibus database at NCBI (accession number: GSE139440; htttp://www.ncbi.nlm.nih.gov/geo/).

4.5. Gene Ontology and Canonical Pathways Analysis

Gene ontology (GO) analysis was performed using a combination of the Database for Annotation, Visualization and Integrated Discovery (DAVID) Bioinformatics Tool v.6.8 [68] and the Ingenuity® Pathway Analysis (IPA®) v.9 tool (QIAGEN Bioinformatics, Redwood City, CA, USA; www.qiagenbioinformatics.com). The Functional Clustering Analysis tool in DAVID was used to group together similar annotation terms for all categories, while functional identification of gene networks, canonical pathways, and upstream regulators was done by IPA®.

4.6. Histological Examination

For histological visualization of fat content and neutral triglycerides, we performed Oil Red O (ORO) staining on liver sections prepared from SHS-exposed mice and controls, according to a published protocol [69]. Bright-field images were captured with an Olympus microscope (Camera Model DP27, Tokyo, Japan), at several magnifications, using the CellSens Standard software (Olympus, Tokyo, Japan). Quantification of lipid droplets in the ORO-stained slides was achieved by measuring the area occupied by red pixels, in ImageJ software (https://imagej.nih.gov/ij/), as described previously [69].
Paraffin-embedded liver sections were stained with hematoxylin and eosin (H&E), Masson’s trichrome and Periodic Acid-Schiff (PAS) stain according to standard procedures [70,71]. Images were acquired with the Philips IntelliSite Pathology Solutions (PIPS) system.

4.7. Reverse Transcription Quantitative PCR (RT-qPCR)

For validation purposes, we used a standard RT-qPCR protocol [66] to determine the expression level of single up-regulated or down-regulated genes identified by microarray analysis. Detailed descriptions for RT-qPCR method are available in Supplementary Material.

5. Conclusions

We have demonstrated, for the first time, that subchronic exposure of mice to SHS, independently of diet, induces liver steatosis by modulating genes and functional pathways involved in lipid metabolism. Our findings underscore how an environmental carcinogen, such as SHS, in addition to cancer-causing effects, may contribute to other adverse health consequences, specifically metabolic liver disease.

Supplementary Materials

The following are available online at https://www.mdpi.com/1422-0067/21/4/1296/s1.

Author Contributions

S.T. & A.B.: Conceived and designed the study; S.T., J.-I.Y. & A.B.: Performed experiments and collected data; S.T. & A.B.: Analyzed data and interpreted the results; S.T. & A.B.: Wrote the manuscript. All authors have read and agreed to the published version of the manuscript.

Acknowledgments

Work of the authors was supported by grants from Tobacco-Related Disease Research Program (25IP-0001 and 26IP-0051) awarded to ST and grants from National Institute of Dental and Craniofacial Research (1R01DE026043) and Tobacco-Related Disease Research Program (26IR-0015) awarded to AB. The sponsors of the study had no role in study design, data collection, data analysis, data interpretation, writing of the report, or in the decision to submit for publication.

Conflicts of Interest

All authors declare no conflict of interest.

Abbreviations

AMPKAMP-activated kinase
APRAcute Phase Response
CHUKComponent of inhibitor of nuclear factor kappa B kinase complex
DAVIDDatabase for Annotation, Visualization and Integrated Discovery
DEGsDifferentially expressed genes
Elovl3Elongation of very long chain fatty acids (FEN1/Elo2, SUR4/Elo3, yeast)-like 3
FOXO3Forkhead box O3
GOGene Ontology
GapdhGlyceraldehyde-3-phosphate dehydrogenase
H&Ehematoxylin and eosin
Hmox1Heme oxygenase 1
Hnf6/Onecut1Hepatocyte nuclear factor 6
HEPAHigh-efficiency particulate air
IPAIngenuity Pathway Analysis
IKBKBInhibitor of nuclear factor kappa B kinase subunit beta
IKBKGInhibitor of nuclear factor kappa B kinase regulatory subunit gamma
IACUCInstitutional Animal Care and Use Committee
IGFInsulin-like growth factor
IL-1interleukin-1
Lpin1Lipin 1
LPSlipopolysaccharide
NAFLDNon-alcoholic fatty liver disease
MTsMetallothioneins
Mt1Metallothionein 1
NFKBIANFKB inhibitor alpha
NF-κBNuclear factor kappa B
NFKB1Nuclear factor kappa B subunit 1
OROOil Red O
PASPeriodic Acid-Schiff
PCAprincipal component analysis
PPARαPeroxisome proliferator-activated receptor α
PGC-1αPPARγ coactivator 1α
RELARELA proto-oncogene
RXRNF-κB subunit Retinoid X Receptor
Per1Period circadian clock 1
SHSSecondhand smoke
ROSReactive oxygen species
Rgs16Regulator of G-protein signaling 16
RT-qPCRReverse transcription quantitative polymerase chain reaction
SP1Sp1 transcription factor
STAT1Signal transducer and activator of transcription 1
SREBPsSterol regulatory elements binding sites for proteins
SREBP-1cSterol regulatory element binding protein-1c
TSPTotal suspended particulate
Tsc22d3TSC22 domain family, member 3
TP53Tumor protein p53
Usp2Ubiquitin specific peptidase 2

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Figure 1. Global gene expression profiling in secondhand smoke (SHS)-exposed mice. (A) Differentially expressed transcripts identified in various contrast groups as compared to controls. (B) Principal component analysis (PCA) and (C) hierarchical clustering analysis by Partek® GS® confirmed clustering of the datasets from mice belonging to the same experimental or control group.
Figure 1. Global gene expression profiling in secondhand smoke (SHS)-exposed mice. (A) Differentially expressed transcripts identified in various contrast groups as compared to controls. (B) Principal component analysis (PCA) and (C) hierarchical clustering analysis by Partek® GS® confirmed clustering of the datasets from mice belonging to the same experimental or control group.
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Figure 2. Gene-set enrichment analysis of deregulated genes in SHS-exposed mice. We performed gene ontology analysis on the 153 unique genes identified in SHS-exposed mice, before and after recovery, relative to controls. (A) Eighteen genes are specifically implicated in hepatic steatosis. Red and green nodes represent up-regulated and down-regulated genes, respectively. (B) The Functional Clustering Analysis tool in DAVID was used to group together redundant annotations. The top ten categories identified by DAVID, with a group enrichment score between 1.26 and 3.88 (x-axis), are listed on the y-axis. (C) The top canonical pathways and hepatotoxic functions were displayed along with the significance values and number of associated molecules and included, among others, liver steatosis, inflammation and necrosis.
Figure 2. Gene-set enrichment analysis of deregulated genes in SHS-exposed mice. We performed gene ontology analysis on the 153 unique genes identified in SHS-exposed mice, before and after recovery, relative to controls. (A) Eighteen genes are specifically implicated in hepatic steatosis. Red and green nodes represent up-regulated and down-regulated genes, respectively. (B) The Functional Clustering Analysis tool in DAVID was used to group together redundant annotations. The top ten categories identified by DAVID, with a group enrichment score between 1.26 and 3.88 (x-axis), are listed on the y-axis. (C) The top canonical pathways and hepatotoxic functions were displayed along with the significance values and number of associated molecules and included, among others, liver steatosis, inflammation and necrosis.
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Figure 3. Upstream Regulator Analysis of lipid-specific genes in SHS-exposed mice. We used IPA® Upstream Regulator Analysis to identify the upstream regulators that are likely to account for the aberrant expression of the 63 lipid-specific genes in SHS-exposed mice. Using IPA® prediction analysis, we found that 25 out of the 63 lipid-specific genes are likely to be modulated by a complex network of eleven upstream regulators. For brevity, only gene targets regulated by TP53 are shown. Red molecule, up-regulation; green molecule, down-regulation. Solid and dotted lines indicate a direct or indirect relationship, respectively, between the upstream regulator and its target.
Figure 3. Upstream Regulator Analysis of lipid-specific genes in SHS-exposed mice. We used IPA® Upstream Regulator Analysis to identify the upstream regulators that are likely to account for the aberrant expression of the 63 lipid-specific genes in SHS-exposed mice. Using IPA® prediction analysis, we found that 25 out of the 63 lipid-specific genes are likely to be modulated by a complex network of eleven upstream regulators. For brevity, only gene targets regulated by TP53 are shown. Red molecule, up-regulation; green molecule, down-regulation. Solid and dotted lines indicate a direct or indirect relationship, respectively, between the upstream regulator and its target.
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Figure 4. Evaluation of fat accumulation and liver injury in SHS-exposed mice. (A) Liver sections from SHS-exposed and control mice were stained with Oil Red O to detect neutral lipid accumulation (red droplets) within the hepatocytes. Microphotographs are shown at 400× original magnifications. Quantification of lipid droplets (graphs on the right) was performed on Oil Red O (ORO)-stained slides (n = 4–8) at 400X magnification by measuring the area occupied by red pixels in ImageJ software (https://imagej.nih.gov/ij/). * SHS4m vs. Control 1: p = 0.000334; SHS4m+1m recovery vs. Control 1: p = 0.000276; § SHS4m+1m recovery vs. SHS4m: p = 0.000017; SHS4m+7m recovery vs. Control 2: p = 0.000114; §§ SHS4m+7m recovery vs. SHS4m: p < 0.00001; ** Control 2 vs. Control 1: p = 0.000508. (B) Paraffin-embedded liver sections from experimental and control mice were stained with hematoxylin and eosin (H&E) to examine cell morphology and detect potential manifestations of liver injury. Representative microphotographs are shown at low (scale bar, 200 μM) and high magnifications (scale bar, 50 μM). Top panels (a,d), control mice; middle panels (b,e), SHS4m mice; lower panels (c,f); SHS4m+1m recovery mice. Small foci of inflammatory infiltrates and areas of necrosis were observed in the liver of SHS4m and SHS4m+1m recovery mice (panels e,f). SHS4m+1m recovery mice exhibited a disrupted cord-like architecture and a great variability in the size and nuclear morphology of hepatocytes (panel f). The white arrow shows an area of pronounced liver steatosis. Big black arrows, foci of inflammation; small black arrows, apoptotic cells.
Figure 4. Evaluation of fat accumulation and liver injury in SHS-exposed mice. (A) Liver sections from SHS-exposed and control mice were stained with Oil Red O to detect neutral lipid accumulation (red droplets) within the hepatocytes. Microphotographs are shown at 400× original magnifications. Quantification of lipid droplets (graphs on the right) was performed on Oil Red O (ORO)-stained slides (n = 4–8) at 400X magnification by measuring the area occupied by red pixels in ImageJ software (https://imagej.nih.gov/ij/). * SHS4m vs. Control 1: p = 0.000334; SHS4m+1m recovery vs. Control 1: p = 0.000276; § SHS4m+1m recovery vs. SHS4m: p = 0.000017; SHS4m+7m recovery vs. Control 2: p = 0.000114; §§ SHS4m+7m recovery vs. SHS4m: p < 0.00001; ** Control 2 vs. Control 1: p = 0.000508. (B) Paraffin-embedded liver sections from experimental and control mice were stained with hematoxylin and eosin (H&E) to examine cell morphology and detect potential manifestations of liver injury. Representative microphotographs are shown at low (scale bar, 200 μM) and high magnifications (scale bar, 50 μM). Top panels (a,d), control mice; middle panels (b,e), SHS4m mice; lower panels (c,f); SHS4m+1m recovery mice. Small foci of inflammatory infiltrates and areas of necrosis were observed in the liver of SHS4m and SHS4m+1m recovery mice (panels e,f). SHS4m+1m recovery mice exhibited a disrupted cord-like architecture and a great variability in the size and nuclear morphology of hepatocytes (panel f). The white arrow shows an area of pronounced liver steatosis. Big black arrows, foci of inflammation; small black arrows, apoptotic cells.
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Figure 5. Evaluation of liver fibrosis and glycogen deposition in SHS-exposed mice. Paraffin-embedded liver sections from experimental and control mice were stained with Masson’s trichrome (af) and Periodic Acid-Schiff (PAS) stain (gl) to evaluate fibrosis and glycogen deposition, respectively. Representative microphotographs are shown at low (scale bar, 200 μM) and high magnifications (scale bar, 50 μM). Panels a, d, g, j, control mice; panels b, e, h, k, SHS4m mice; panels c, f, i, l, SHS4m+1m recovery mice. Areas of mild liver fibrosis (blue areas) are increasingly observed in the experimental mice. The white arrow shows an area of pronounced liver steatosis. Black arrows indicated parenchymal invasion of collagen fibers. Prominent loss of glycogen was observed in the liver of SHS4m mice, while SHS4m+1m recovery mice and controls show intense and extensive PAS-positive staining.
Figure 5. Evaluation of liver fibrosis and glycogen deposition in SHS-exposed mice. Paraffin-embedded liver sections from experimental and control mice were stained with Masson’s trichrome (af) and Periodic Acid-Schiff (PAS) stain (gl) to evaluate fibrosis and glycogen deposition, respectively. Representative microphotographs are shown at low (scale bar, 200 μM) and high magnifications (scale bar, 50 μM). Panels a, d, g, j, control mice; panels b, e, h, k, SHS4m mice; panels c, f, i, l, SHS4m+1m recovery mice. Areas of mild liver fibrosis (blue areas) are increasingly observed in the experimental mice. The white arrow shows an area of pronounced liver steatosis. Black arrows indicated parenchymal invasion of collagen fibers. Prominent loss of glycogen was observed in the liver of SHS4m mice, while SHS4m+1m recovery mice and controls show intense and extensive PAS-positive staining.
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Figure 6. Gene validation by Reverse Transcription Quantitative PCR (RT-qPCR) and proposed model. (A) The expression status of individual gene targets identified by microarray analysis was examined by RT-qPCR. Bars represent the mean normalized gene expression (±SE) in SHS-exposed mice, before recovery (in blue) and after recovery (in red) relative to controls. All reactions (5 samples per experimental and control group) were performed in triplicate for a total of 15 reactions per biological set. Data were normalized using the endogenous housekeeping gene, glyceraldehyde-3-phosphate dehydrogenase (Gapdh), as reference. (B) Proposed model of SHS-induced hepatic fat accumulation through the involvement of wild-type p53 and/or gain-of-function p53 mutants. Vertical white arrows indicate up-regulation or down-regulation of target molecules; vertical black arrows show decrease in fatty acid (FA) oxidation or increase in fatty acid (FA) synthesis (see, text).
Figure 6. Gene validation by Reverse Transcription Quantitative PCR (RT-qPCR) and proposed model. (A) The expression status of individual gene targets identified by microarray analysis was examined by RT-qPCR. Bars represent the mean normalized gene expression (±SE) in SHS-exposed mice, before recovery (in blue) and after recovery (in red) relative to controls. All reactions (5 samples per experimental and control group) were performed in triplicate for a total of 15 reactions per biological set. Data were normalized using the endogenous housekeeping gene, glyceraldehyde-3-phosphate dehydrogenase (Gapdh), as reference. (B) Proposed model of SHS-induced hepatic fat accumulation through the involvement of wild-type p53 and/or gain-of-function p53 mutants. Vertical white arrows indicate up-regulation or down-regulation of target molecules; vertical black arrows show decrease in fatty acid (FA) oxidation or increase in fatty acid (FA) synthesis (see, text).
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Table 1. List of differentially expressed genes (n = 153) identified in the liver of SHS-exposed mice, both before and after recovery time, relative to controls.
Table 1. List of differentially expressed genes (n = 153) identified in the liver of SHS-exposed mice, both before and after recovery time, relative to controls.
Expression 1 Log RatioIDD 2Symbol 3Entrez Gene NameLocation
3.5431426037_a_atDRGS16 *regulator of G-protein signaling 16Cytoplasm
3.4661422557_s_atDMt1metallothionein 1Cytoplasm
3.261428942_at Mt2metallothionein 2Other
3.2451417168_a_atDUSP2ubiquitin specific peptidase 2Cytoplasm
2.9431422257_s_atDCYP2B6cytochrome P450 family 2 subfamily B member 6Cytoplasm
2.3871442025_a_atDZBTB16zinc finger and BTB domain containing 16Nucleus
2.2651418288_atDLPIN1 *lipin 1Nucleus
2.2211427747_a_at LCN2lipocalin 2Extracellular Space
2.1741428223_at MFSD2A *major facilitator superfamily domain containing 2APlasma Membrane
2.1681443147_atDACOT1 *acyl-CoA thioesterase 1Cytoplasm
2.0951416125_at FKBP5FK506 binding protein 5Nucleus
1.9561435188_at CIARTcircadian associated repressor of transcriptionNucleus
1.9331425837_a_at NOCT *nocturninNucleus
1.9221451190_a_atDSBK1SH3 domain binding kinase 1Other
1.871428923_at PPP1R3Gprotein phosphatase 1 regulatory subunit 3GCytoplasm
1.8641451548_atDUPP2uridine phosphorylase 2Cytoplasm
1.7741460241_a_atDST3GAL5ST3 beta-galactoside alpha-2,3-sialyltransferase 5Cytoplasm
1.7591419590_at Cyp2b13/Cyp2b9cytochrome P450, family 2, subfamily b, polypeptide 9Cytoplasm
1.7071416432_at PFKFB36-phosphofructo-2-kinase/fructose-2,6-biphosphatase 3Cytoplasm
1.611429144_atDGPCPD1glycerophosphocholine phosphodiesterase 1Cytoplasm
1.5981434437_x_atDRRM2ribonucleotide reductase regulatory subunit M2Nucleus
1.5941416933_at POR *cytochrome p450 oxidoreductaseCytoplasm
1.5421439489_at FFAR4 *free fatty acid receptor 4Plasma Membrane
1.5421448162_at VCAM1vascular cell adhesion molecule 1Plasma Membrane
1.5231429206_at RHOBTB1Rho related BTB domain containing 1Other
1.5181453023_at ANKHD1/ANKHD1-EIF4EBP3ankyrin repeat and KH domain containing 1Other
1.4931434473_at SLC16A5solute carrier family 16 member 5Plasma Membrane
1.4921417761_atDAPOA4apolipoprotein A4Extracellular Space
1.4691417602_at PER2period circadian clock 2Nucleus
1.451425824_a_at PCSK4proprotein convertase subtilisin/kexin type 4Extracellular Space
1.4371448239_at HMOX1 *heme oxygenase 1Cytoplasm
1.4331452416_at IL6Rinterleukin 6 receptorPlasma Membrane
1.4181427473_at Gstm3glutathione S-transferase, mu 3Cytoplasm
1.4031449851_at PER1period circadian clock 1Nucleus
1.381417904_at DCLRE1ADNA cross-link repair 1ANucleus
1.3361450505_a_atDFAM134Bfamily with sequence similarity 134, member BCytoplasm
1.3341440840_at SLC16A7solute carrier family 16 member 7Plasma Membrane
1.3021423233_at CEBPDCCAAT/enhancer binding protein deltaNucleus
1.2961416773_at WEE1WEE1 G2 checkpoint kinaseNucleus
1.2791435459_atDFMO2flavin containing monooxygenase 2Cytoplasm
1.2791426452_a_at RAB30RAB30, member RAS oncogene familyCytoplasm
1.2681421681_atDNRG4neuregulin 4Extracellular Space
1.2591435495_at ADORA1 *adenosine A1 receptorPlasma Membrane
1.2511426850_a_at MAP2K6mitogen-activated protein kinase kinase 6Cytoplasm
1.2471421852_at KCNK5potassium two pore domain channel subfamily K member 5Plasma Membrane
1.2461443870_at ABCC4ATP binding cassette subfamily C member 4Plasma Membrane
1.2421422230_s_at CYP2A6 (includes others)cytochrome P450 family 2 subfamily A member 6Cytoplasm
1.2391458442_at AI132709expressed sequence AI132709Other
1.2381424175_at TEFTEF, PAR bZIP transcription factorNucleus
1.2311424744_at SDSserine dehydrataseCytoplasm
1.2131434292_at Snhg11small nucleolar RNA host gene 11Other
1.2121418780_at CYP39A1cytochrome P450 family 39 subfamily A member 1Cytoplasm
1.2071453410_at ANGPTL4angiopoietin like 4Extracellular Space
1.1991456156_at LEPRleptin receptorPlasma Membrane
1.1981449565_at Cyp2g1cytochrome P450, family 2, subfamily g, polypeptide 1Cytoplasm
1.1981449498_at MARCOmacrophage receptor with collagenous structurePlasma Membrane
1.1971428352_at ARRDC2arrestin domain containing 2Other
1.1851418595_at PLIN4perilipin 4Cytoplasm
1.1781417042_at SLC37A4solute carrier family 37 member 4Cytoplasm
1.1691426980_s_at EPOPelongin BC and polycomb repressive complex 2 associated proteinOther
1.1641445574_atDPPARGC1B *PPARG coactivator 1 betaNucleus
1.1621429809_at TMTC2transmembrane and tetratricopeptide repeat containing 2Cytoplasm
1.1521455958_s_at PPTC7PTC7 protein phosphatase homologCytoplasm
1.1511431339_a_atDEFHD2EF-hand domain family member D2Other
1.1421428512_at BHLHB9basic helix-loop-helix domain containing, class B, 9Cytoplasm
1.1411455002_atDPTP4A1protein tyrosine phosphatase type IVA, member 1Cytoplasm
1.1331428926_atDFBXO31F-box protein 31Extracellular Space
1.1231416286_at RGS4regulator of G-protein signaling 4Cytoplasm
1.1151432543_a_at KLF13Kruppel like factor 13Nucleus
1.1111434456_at RUNDC3BRUN domain containing 3BOther
1.1081435860_at SLC5A6solute carrier family 5 member 6Plasma Membrane
1.1021427912_at CBR3carbonyl reductase 3Cytoplasm
1.0981456395_atDPPARGC1A *PPARG coactivator 1 alphaNucleus
1.0911454799_at GPAT3glycerol-3-phosphate acyltransferase 3Cytoplasm
1.0471419758_at ABCB1ATP binding cassette subfamily B member 1Plasma Membrane
1.041423627_at NQO1NAD(P)H quinone dehydrogenase 1Cytoplasm
1.0361438211_s_at DBPD-box binding PAR bZIP transcription factorNucleus
1.0321424815_at GYS2glycogen synthase 2Cytoplasm
1.0211448568_a_at SLC20A1solute carrier family 20 member 1Plasma Membrane
1.0071428487_s_atDCOQ10Bcoenzyme Q10BCytoplasm
1.0071420772_a_at TSC22D3 *TSC22 domain family member 3Nucleus
1.0061433816_at SLC25A51solute carrier family 25 member 51Cytoplasm
−1.0031439377_x_at CDC20cell division cycle 20Nucleus
−1.0061455293_at LEO1LEO1 homolog, Paf1/RNA polymerase II complex componentNucleus
−1.0081431056_a_at LPL *lipoprotein lipaseCytoplasm
−1.0131450010_at HSD17B12hydroxysteroid 17-beta dehydrogenase 12Cytoplasm
−1.0221417292_at Ifi47interferon gamma inducible protein 47Cytoplasm
−1.0221417792_at ZNF638zinc finger protein 638Nucleus
−1.0271452445_at SLC41A2solute carrier family 41 member 2Plasma Membrane
−1.0361448986_x_at DNASE2deoxyribonuclease 2, lysosomalCytoplasm
−1.0371436931_at RFX4regulatory factor X4Nucleus
−1.0391450035_a_atDPRPF40Apre-mRNA processing factor 40 homolog ANucleus
−1.041428022_at OBP2B *odorant binding protein 2BExtracellular Space
−1.0421427356_at FAM89Afamily with sequence similarity 89 member AOther
−1.0421424033_at SRSF7serine and arginine rich splicing factor 7Nucleus
−1.0431457758_at ENY2ENY2, transcription and export complex 2 subunitNucleus
−1.0451416403_at ABCB10ATP binding cassette subfamily B member 10Cytoplasm
−1.0471450846_at BZW1basic leucine zipper and W2 domains 1Cytoplasm
−1.0481438713_at RASSF8Ras association domain family member 8Extracellular Space
−1.0511433515_s_atDETNK1ethanolamine kinase 1Cytoplasm
−1.0571437864_at ADIPOR2 *adiponectin receptor 2Plasma Membrane
−1.0571451122_atDIDI1isopentenyl-diphosphate delta isomerase 1Cytoplasm
−1.0611425206_a_at UBE3Aubiquitin protein ligase E3ANucleus
−1.0731420379_at Slco1a1solute carrier organic anion transporter family, member 1a1Plasma Membrane
−1.0771448183_a_at HIF1Ahypoxia inducible factor 1 alpha subunitNucleus
−1.0851452030_a_at HNRNPRheterogeneous nuclear ribonucleoprotein RNucleus
−1.0851428372_at ST5suppression of tumorigenicity 5Cytoplasm
−1.0861450484_a_at CMPK2cytidine/uridine monophosphate kinase 2Cytoplasm
−1.0911431024_a_at ARID4BAT-rich interaction domain 4BNucleus
−1.1081417832_at SMC1Astructural maintenance of chromosomes 1ANucleus
−1.1091424842_a_at ARHGAP24Rho GTPase activating protein 24Cytoplasm
−1.111455324_atDPLCXD2phosphatidylinositol specific phospholipase C X domain containing 2Other
−1.121426458_at SLMAPsarcolemma associated proteinPlasma Membrane
−1.1281438269_at ZBTB38zinc finger and BTB domain containing 38Nucleus
−1.1311449931_at CPEB4cytoplasmic polyadenylation element binding protein 4Plasma Membrane
−1.1361442537_at CYP2U1cytochrome P450 family 2 subfamily U member 1Cytoplasm
−1.1581449854_at NR0B2nuclear receptor subfamily 0 group B member 2Nucleus
−1.161427574_s_at SH3D19SH3 domain containing 19Plasma Membrane
−1.1651435775_at CLOCKclock circadian regulatorNucleus
−1.1691429772_atDPLXNA2plexin A2Plasma Membrane
−1.1711437932_a_at CLDN1claudin 1Plasma Membrane
−1.1721423325_at PNNpinin, desmosome associated proteinPlasma Membrane
−1.181447927_atDGBP6guanylate binding protein family member 6Cytoplasm
−1.2051425099_a_at ARNTL *aryl hydrocarbon receptor nuclear translocator likeNucleus
−1.2081444512_at ARHGAP29Rho GTPase activating protein 29Cytoplasm
−1.2381442367_at ATP11CATPase phospholipid transporting 11CPlasma Membrane
−1.271417982_at INSIG2 *insulin induced gene 2Cytoplasm
−1.2751427513_at BC024137cDNA sequence BC024137Other
−1.2761430896_s_at NUDT7nudix hydrolase 7Cytoplasm
−1.2891450090_at Zfp101zinc finger protein 101Nucleus
−1.2951449514_at GRK5G protein-coupled receptor kinase 5Plasma Membrane
−1.3251421092_at SERPINA12serpin family A member 12Cytoplasm
−1.3431423571_at S1PR1sphingosine-1-phosphate receptor 1Plasma Membrane
−1.3461420531_at Hsd3b4 (includes others)hydroxy-delta-5-steroid dehydrogenase, 3 beta- and steroid delta-isomerase 4Cytoplasm
−1.3541422769_atDSYNCRIPsynaptotagmin binding cytoplasmic RNA interacting proteinNucleus
−1.3791437581_at ZNF800zinc finger protein 800Other
−1.3951430785_atDSDR9C7short chain dehydrogenase/reductase family 9C member 7Other
−1.4021426215_at DDC *dopa decarboxylaseCytoplasm
−1.4051426645_at HSP90AA1heat shock protein 90 alpha family class A member 1Cytoplasm
−1.4341433446_atDHMGCS13-hydroxy-3-methylglutaryl-CoA synthase 1Cytoplasm
−1.4721423397_at UGT2B28UDP glucuronosyltransferase family 2, member B28Cytoplasm
−1.4821424709_atDSC5Dsterol-C5-desaturaseCytoplasm
−1.5091450264_a_at CHKAcholine kinase alphaCytoplasm
−1.5541438751_at SLC30A10solute carrier family 30 member 10Other
−1.5731417065_at EGR1early growth response 1Nucleus
−1.581433944_at HECTD2HECT domain E3 ubiquitin protein ligase 2Cytoplasm
−1.6221431817_at Adh6-ps1alcohol dehydrogenase 6 (class V), pseudogene 1Other
−1.6631439300_atDCHIC1cysteine rich hydrophobic domain 1Plasma Membrane
−1.6661427347_s_atDTUBB2Atubulin beta 2A class IIaCytoplasm
−1.6921450018_s_atDSLC25A30solute carrier family 25 member 30Cytoplasm
−1.8961448092_x_atDSerpina4-ps1serine (or cysteine) peptidase inhibitor, clade A, member 4, pseudogene 1Other
−2.0341420722_at ELOVL3ELOVL fatty acid elongase 3Cytoplasm
−2.3821421447_atDONECUT1one cut homeobox 1Nucleus
1 A “positive” (+) fold ratio indicates up-regulation while a “negative” (−) fold ratio indicates down-regulation; 2 D, duplicate transcripts were identified for that gene; 3 genes involved in lipid metabolism (n = 63) are indicated in bold. The asterisk (*) marks genes known to play a role in liver steatosis.

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Tommasi, S.; Yoon, J.-I.; Besaratinia, A. Secondhand Smoke Induces Liver Steatosis through Deregulation of Genes Involved in Hepatic Lipid Metabolism. Int. J. Mol. Sci. 2020, 21, 1296. https://doi.org/10.3390/ijms21041296

AMA Style

Tommasi S, Yoon J-I, Besaratinia A. Secondhand Smoke Induces Liver Steatosis through Deregulation of Genes Involved in Hepatic Lipid Metabolism. International Journal of Molecular Sciences. 2020; 21(4):1296. https://doi.org/10.3390/ijms21041296

Chicago/Turabian Style

Tommasi, Stella, Jae-In Yoon, and Ahmad Besaratinia. 2020. "Secondhand Smoke Induces Liver Steatosis through Deregulation of Genes Involved in Hepatic Lipid Metabolism" International Journal of Molecular Sciences 21, no. 4: 1296. https://doi.org/10.3390/ijms21041296

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