Existing US epidemiological data demonstrate that consumption of smokeless tobacco, particularly moist snuff, is less harmful than cigarette smoking. However, the molecular and biochemical changes due to moist snuff consumption relative to smoking remain incompletely understood. We previously reported that smokers (SMK) exhibit elevated oxidative stress and inflammation relative to moist snuff consumers (MSC) and non-tobacco consumers (NTC), based on metabolomic profiling data of saliva, plasma, and urine from MSC, SMK, and NTC. In this study, we investigated the effects of tobacco consumption on additional metabolic pathways using pathway-based analysis tools. To this end, metabolic pathway enrichment analysis and topology analysis were performed through pair-wise comparisons of global metabolomic profiles of SMK, MSC, and NTC. The analyses identified >8 significantly perturbed metabolic pathways in SMK compared with NTC and MSC in all 3 matrices. Among these differentially enriched pathways, perturbations of caffeine metabolism, energy metabolism, and arginine metabolism were mostly observed. In comparison, fewer enriched metabolic pathways were identified in MSC compared with NTC (5 in plasma, none in urine and saliva). This is consistent with our transcriptomics profiling results that show no significant differences in peripheral blood mononuclear cell gene expression between MSC and NTC. These findings, taken together with our previous biochemical, metabolomic, and transcriptomic analysis results, provide a better understanding of the relative changes in healthy tobacco consumers, and demonstrate that chronic cigarette smoking, relative to the use of smokeless tobacco, results in more pronounced biological changes, which could culminate in smoking-related diseases.
Existing US epidemiological data demonstrate that consumption of smokeless tobacco, particularly moist snuff, is less harmful than cigarette smoking. However, the molecular and biochemical changes due to moist snuff consumption relative to smoking remain incompletely understood. We previously reported that smokers (SMK) exhibit elevated oxidative stress and inflammation relative to moist snuff consumers (MSC) and non-tobacco consumers (NTC), based on metabolomic profiling data of saliva, plasma, and urine from MSC, SMK, and NTC. In this study, we investigated the effects of tobacco consumption on additional metabolic pathways using pathway-based analysis tools. To this end, metabolic pathway enrichment analysis and topology analysis were performed through pair-wise comparisons of global metabolomic profiles of SMK, MSC, and NTC. The analyses identified >8 significantly perturbed metabolic pathways in SMK compared with NTC and MSC in all 3 matrices. Among these differentially enriched pathways, perturbations of caffeine metabolism, energy metabolism, and arginine metabolism were mostly observed. In comparison, fewer enriched metabolic pathways were identified in MSC compared with NTC (5 in plasma, none in urine and saliva). This is consistent with our transcriptomics profiling results that show no significant differences in peripheral blood mononuclear cell gene expression between MSC and NTC. These findings, taken together with our previous biochemical, metabolomic, and transcriptomic analysis results, provide a better understanding of the relative changes in healthy tobacco consumers, and demonstrate that chronic cigarette smoking, relative to the use of smokeless tobacco, results in more pronounced biological changes, which could culminate in smoking-related diseases.
Cigarette smoking is an important risk factor for many diseases including lung
cancer, chronic obstructive pulmonary disease (COPD), cardiovascular disease (CVD),
and oral cancer.[1] Cigarette smoke is a dynamic and complex aerosol containing non-volatile
compounds in liquid droplet form (termed the “particulate phase”) and volatile
constituents in the gas phase. More than 8000 chemical compounds have been
identified in the particulate and gas phase of cigarette smoke,[2] including many well-known toxicants. For example, 93 cigarette smoke
constituents have been classified by the Food and Drug Administration (FDA) as
harmful and potentially harmful constituents (HPHCs), which are further classified
as carcinogens, respiratory toxicants, reproductive or developmental toxicants,
cardiovascular toxicants, and/or addictive constituents.[3]While cigarette smoking is the predominant form of tobacco consumption in the United
States and other countries, consumption of smokeless tobacco products (STPs) is also common.[4] Existing US and Swedish epidemiological data indicate that consumption of
STPs is less harmful compared with cigarette smoking and the health risks associated
with STPs use are lower than those with smoking.[5-8] Although the health effects of
cigarette smoking and knowledge of smoking-related biomarkers have been extensively documented,[9] relatively less information exists on the effects of STP consumption.
Consequently, very few biomarkers inform the biological effects (BioEff) of STP
use.To gain a better understanding of the physiological effects of smoking and STP use,
R. J. Reynolds Tobacco Company (RJRT) has conducted several clinical studies to
evaluate biomarkers of tobacco exposure (BioExp) and BioEff.[10-14] Among these are 2
cross-sectional studies that include a CVD biomarker study[13,14] and a biomarker discovery study[11] consisting of 3 cohorts (non-tobacco consumers [NTC], smokers [SMK], and
moist snuff consumers [MSC]). Both studies consistently showed that biomarkers of
combustible toxicants were substantially higher in SMK compared with MSC. As
expected, NTC exhibited the lowest levels of BioExp among these cohorts. Moreover,
SMK showed higher levels of BioEff associated with oxidative stress (urinary
isoprostanes and leukotriene E4), inflammation (white blood cell count), platelet
activation (thromboxane metabolites), and lipid metabolism (apolipoprotein B100 and
oxidized low-density lipoprotein), relative to NTC and MSC.[11] Principal components analysis of serum CVD BioEff suggests that interleukin
(IL)-12, soluble intracellular adhesion molecule (sICAM)-1, and IL-8 are potential
BioEff that differentiate SMK, MSC, and NTC.[14]Untargeted metabolomics profiling technologies such as high-resolution nuclear
magnetic resonance spectroscopy and mass spectrometry (MS) have been used for
discovery of metabolic biomarkers to evaluate health effects of short-term and
long-term tobacco usage.[15-22] Untargeted metabolomics
enables high-throughput measurements of hundreds or even thousands of small
molecules without prior knowledge and thus leads to identification of novel
potential biomarkers. In the biomarker discovery study discussed above, Prasad et al[12] applied gas chromatography (GC)–MS and liquid chromatography (LC)–MS/MS-based
metabolomics to identify metabolomic biomarkers from plasma, urine, and saliva
collected from clinical trial participants. Statistical analysis of the global
metabolomics profiling suggests that the overall biochemical profile of SMK is
distinct from that of MSC and NTC. Fewer metabolic differences in both number and
magnitude of biochemical compounds were observed between MSC and NTC, compared with
differences between SMK and NTC. Several metabolites associated with oxidative
stress and inflammatory pathways were identified as potential metabolic BioEff.Metabolic pathway analysis identifies clusters of metabolites related to key cellular
signaling and metabolic networks, which provides mechanistic insight into the
underlying biology of differentially expressed metabolites.[23] In this study, we used metabolomic profiles from these 3 cohorts (NTC, SMK,
and MSC) and an integrated metabolic pathway analysis approach that included pathway
enrichment analysis and pathway topology analysis to assess the impact of smoking
and consumption of moist snuff on human physiology. Perturbations in caffeine
metabolism, energy metabolism, and arginine metabolism distinguished the 3 different
cohorts. These findings, taken together with our previous investigations,[11-13,24] provide a more comprehensive
understanding of biochemical and physiological changes induced by consumption of
various tobacco products.
Materials and Methods
Clinical study conduct
A single-blinded, cross-sectional clinical study was conducted at the High Point
Clinical Trails Center, High Point, North Carolina. The clinical conduct and
sample collection have been described elsewhere.[11] Briefly, 40 healthy, male participants (age 35-60 years) were enrolled
into 1 of 3 consumer group cohorts (SMK, MSC, or NTC) after they provided
informed consent. The participants fasted overnight and refrained from tobacco
use prior to sample collection. Plasma was collected into tubes containing
ethylenediaminetetraacetic acid (EDTA). Unstimulated saliva was collected into
tubes containing protease and phosphatase inhibitors. The 24 hour urine samples
were collected under ambulatory conditions and stored at −80°C. Aliquots of the
plasma, urine, and saliva samples were analyzed using global metabolomic
profiling at Metabolon Inc. (Durham, North Carolina). The clinical conduct of
the study was approved by the Independent Investigational Review Board, Inc
(Plantation, Florida) and registered at ClinicialTrials.gov (ClinicalTrials.gov
Identifier: NCT01923402).
Metabolomic profiling
Metabolomic profiling was performed using saliva, plasma, and urine samples
collected from the participants.[25-27] Briefly, all samples were
extracted with a methanol solution and split into equal parts for analysis by
GC-MS and LC-MS/MS.[28] Two separate ultrahigh performance LC-MS/MS injections were optimized for
basic and acidic species. After chromatographic separation using separate
acid/base 2.1 × 100 mm Waters BEH C18 1.7 µm particle LC columns (or 20 m × 0.18
mm GC column with 0.18 µm film phase), full-scan MS was conducted to record and
quantify all detectable ions formed after molecule fragmentation. Metabolites
were identified by matching the ion’s chromatographic retention index, nominal
mass, and spectral fragmentation signatures to Metabolon’s in-house reference
library, which was generated from standard metabolites under similar analytical
procedures as the experimental samples. Once identified, metabolite ions were
quantified by integration of their corresponding peak area.[29]
Statistical analysis of individual metabolites
Raw data were imputed with minimum values, mean-normalized, and then
log-transformed. A 2-sample unequal variances t test was used
to compare individual plasma, urine, and saliva metabolomic profiles obtained
from the 3 cohorts. Statistical significance was defined as P ⩽
.05 and q ⩽ .1. False discovery rates (FDRs), estimated by
q values, were used to account for multiple
comparisons.
Metabolic pathway analysis
Metabolic pathway enrichment analysis and pathway topology analysis were
conducted using MetaboAnalyst 3.0 computational platform to better understand
the functional impact of tobacco use on human metabolism.[23] Pathway enrichment analysis computes a single P value
for each metabolic pathway (a group of functional-associated metabolites), as
opposed to the t test, which calculates statistical
significance of the difference between individual metabolites. Pathway topology
analysis applies graph theory to measure a given experimentally identified
metabolite’s importance in a pre-defined metabolic pathway. Measurements were
computed using centrality, a common metric used in graph theory to estimate the
relative importance of individual nodes to the overall network. Similarly, the
importance measures for other unidentified metabolites in the pathway were
computed. A “pathway impact score” was then computed as the sum of the
importance measures of identified metabolites divided by the total sum of the
importance measures of all the identified and unidentified metabolites in the
pathway. The pathway impact score represents an objective estimate of the
importance of a given pathway relative to a global metabolic network.In step 1 of the analysis, we created a 2-column data input file comprising an
individual metabolite’s relative abundance and Human Metabolome Database entry
number. Data on nicotine and its metabolites were excluded as these analyses
were focused on identifying distinguishing BioEff as opposed to BioExp. In
addition, unnamed structures from global metabolomic profiles were excluded from
the data input file. The data input files were uploaded to the MetaboAnalyst 3.0
web server. Data pre-processing, such as normalization and scaling, and
metabolic pathway analysis were performed using the following parameters: (1)
enrichment analysis was performed using the global test method,[30] (2) centrality was measured using Relative Betweenness, and (3) 80 human
metabolic pathways in the Kyoto Encyclopedia of Genes and Genomes (KEGG)
database were used as reference metabolic pathways. Details of the algorithms
for enrichment pathway analysis and topology analysis were previously described.[31]Classical FDR approach was used to control for false positives for metabolite
enrichment analysis. A large FDR threshold, similar to gene set enrichment
analysis (GSEA),[32] was applied to identify significant “enriched” pathways (in our case,
0.22-0.52 and in GSEA, 0.25). The optimal FDR threshold identified is 0.32, as
described in the “Results” section. The cut-off value of 0.1 for pathway impact
score was used consistently across multiple comparisons to filter less important
pathways, similar to previous work.[33]
Results
Pathway enrichment analysis and topology analysis were performed to analyze
metabolomic profiles measured from plasma, urine, and saliva samples. Pair-wise
comparisons were conducted among 3 cohorts (SMK, NTC, and MSC), namely, between SMK
and NTC (SMK vs NTC), between MSC and NTC (MSC vs NTC), and between SMK and MSC (SMK
vs MSC). Enriched functional pathways were identified and their impact scores were
measured.
Optimal FDR threshold
Different FDR threshold values were explored for pathway analysis of plasma
metabolomics data (Figure
1A). When the FDR cut-off value
(fdr) was 0.22, 11 and 13 significantly
enriched metabolic pathways were observed between SMK and NTC, and between MSC
and SMK, respectively. However, no significantly enriched pathways were found
when MSC were compared with NTC. When the fdr
was 0.32, 6 metabolic pathways were identified as significantly different
between MSC and NTC, 18 pathways between SMK and NTC, and 16 between SMK and NTC
(Figure 1A).
However, there was no appreciable increase in the number of significantly
enriched pathways between MSC and SMK when the
fdr was increased to either 0.42 or 0.52.
Thus, 0.32 was used as an optimal fdr for
analyzing plasma metabolomics data. For urine, the number of significantly
enriched pathways between MSC and NTC remained zero until
fdr reached 0.52 (Figure 2A). In the case of
saliva, none of the significantly enriched pathways between MSC and NTC were
found when fdr increased from 0.22 to 0.52
(Figure 3A). For
consistency with plasma analysis, fdr 0.32
was used as the threshold for analyzing urine and saliva metabolomics data.
Figure 1.
Pathway enrichment and topology analysis of plasma metabolomics data from
3 cohorts including SMK, MSC, and NTC. The most enriched pathways were
identified when (A) SMK were compared with NTC (SMK vs NTC), (B) MSC
versus NTC, and (C) SMK versus MSC. “Pathway Impact Score” in x-axis
represents the impact of these enriched pathways computed from topology
analysis. “–log P” in y-axis refers to negative natural
logarithmic value of the original P value from
statistical analysis of pathway difference between 2 cohorts. (D) The
number of enriched pathways was computed when different
fdr values were used. When
fdr = 0.32, 18, 5, and 16
pathways were considered for the case of SMK versus NTC, MSC versus NTC,
and SMK versus MSC, respectively. MSC indicates moist snuff consumers;
NTC, non-tobacco consumers; SMK, cigarette smokers.
Figure 2.
Pathway enrichment and topology analysis of urinary metabolomics data
from 3 cohorts including SMK, MSC, and NTC. The most enriched pathways
were identified when (A) SMK were compared with NTC (SMK vs NTC); (B)
MSC versus NTC; and (C) SMK versus MSC. “Pathway Impact Score” in x-axis
represents the impact of these enriched pathways computed from topology
analysis. “–log P” in y-axis refers to negative natural
logarithmic value of the original P value from
statistical analysis of pathway difference between 2 cohorts. (D) The
number of enriched pathways was computed when different
fdr values were used. None of
the enriched pathways in the case of MSC versus NTC were identified as
significantly different, except fdr =
0.52, respectively. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, cigarette smokers.
Figure 3.
Pathway enrichment and topology analysis of saliva metabolomics data from
3 cohorts including SMK, MSC, and NTC. The most enriched pathways were
identified when (A) SMK were compared with NTC (SMK vs NTC), (B) MSC
versus NTC, and (C) SMK versus MSC. “Pathway Impact Score” in x-axis
represents the impact of these enriched pathways computed from topology
analysis. “–log P” in y-axis refers to negative natural
logarithmic value of the original P value from
statistical analysis of pathway difference between 2 cohorts. (D) The
number of enriched pathways was computed when a number of
fdr values were used. None of
enriched pathways in the case of MSC versus NTC were identified as
significantly different when fdr
varies from 0.22 to 0.52. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, cigarette smokers.
Pathway enrichment and topology analysis of plasma metabolomics data from
3 cohorts including SMK, MSC, and NTC. The most enriched pathways were
identified when (A) SMK were compared with NTC (SMK vs NTC), (B) MSC
versus NTC, and (C) SMK versus MSC. “Pathway Impact Score” in x-axis
represents the impact of these enriched pathways computed from topology
analysis. “–log P” in y-axis refers to negative natural
logarithmic value of the original P value from
statistical analysis of pathway difference between 2 cohorts. (D) The
number of enriched pathways was computed when different
fdr values were used. When
fdr = 0.32, 18, 5, and 16
pathways were considered for the case of SMK versus NTC, MSC versus NTC,
and SMK versus MSC, respectively. MSC indicates moist snuff consumers;
NTC, non-tobacco consumers; SMK, cigarette smokers.Pathway enrichment and topology analysis of urinary metabolomics data
from 3 cohorts including SMK, MSC, and NTC. The most enriched pathways
were identified when (A) SMK were compared with NTC (SMK vs NTC); (B)
MSC versus NTC; and (C) SMK versus MSC. “Pathway Impact Score” in x-axis
represents the impact of these enriched pathways computed from topology
analysis. “–log P” in y-axis refers to negative natural
logarithmic value of the original P value from
statistical analysis of pathway difference between 2 cohorts. (D) The
number of enriched pathways was computed when different
fdr values were used. None of
the enriched pathways in the case of MSC versus NTC were identified as
significantly different, except fdr =
0.52, respectively. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, cigarette smokers.Pathway enrichment and topology analysis of saliva metabolomics data from
3 cohorts including SMK, MSC, and NTC. The most enriched pathways were
identified when (A) SMK were compared with NTC (SMK vs NTC), (B) MSC
versus NTC, and (C) SMK versus MSC. “Pathway Impact Score” in x-axis
represents the impact of these enriched pathways computed from topology
analysis. “–log P” in y-axis refers to negative natural
logarithmic value of the original P value from
statistical analysis of pathway difference between 2 cohorts. (D) The
number of enriched pathways was computed when a number of
fdr values were used. None of
enriched pathways in the case of MSC versus NTC were identified as
significantly different when fdr
varies from 0.22 to 0.52. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, cigarette smokers.
Plasma metabolomic pathway analysis
The enriched pathways and their impact scores identified from plasma metabolomics
data are visualized in Figure
1. When SMK metabolomics data were compared with NTC (SMK vs NTC), 18
pathways were identified as significantly enriched, among which 6 pathways had
relatively large impact scores (>0.1) (Figure 1B). These pathways included
linoleic acid (LA) metabolism, alpha linolenic (α-LA) metabolism, caffeine
metabolism, arginine and proline metabolism, lysine biosynthesis, and
D-glutamine and D-glutamate metabolism. In the case of MSC versus NTC, only 6
enriched pathways were identified (Figure 1C); 3 of them had higher-impact
scores (>0.1) including α-LA metabolism, aminoacyl-tRNA biosynthesis, and
biotin metabolism, suggesting different biological pathways were affected by
moist snuff consumption from cigarette smoking. In the comparison between SMK
and MSC, aminoacyl-tRNA biosynthesis, arachidonic acid metabolism,
valine/leucine/isoleucine metabolism, and arginine and proline metabolism were
identified as enriched pathways with an impact score of >0.1 (Figure 1D).
Urine metabolomic pathway analysis
Comparative analysis of urine metabolomics data (Figure 2) revealed a greater number of
differentially regulated pathways in SMK than those found in plasma (Figure 1). Relative to
NTC, 38 differentially regulated pathways were detected in SMK (Figure 2B), whereas 20
pathways were enriched compared with MSC (Figure 2D). No enriched pathways were
found between MSC and NTC (Figure 2C).In SMK versus NTC, 28 enriched metabolic pathways with impact score >0.1 were
found. They belong to a wide range of metabolic pathways, including carbohydrate
metabolism (pyruvate metabolism, ascorbate and aldarate metabolism), metabolism
of cofactors and vitamins (nicotinate and nicotinamide metabolism), amino acid
(glycine, serine, and threonine; alanine, aspartate, and glutamate) metabolism,
biosynthesis of other secondary metabolites (caffeine metabolism), and lipid
(glycerophospholipid) metabolism (Figure 2B). Thus, urine appears to
provide richer metabolic information compared with plasma. In SMK versus MSC, 11
out of 20 enriched pathways were identified with impact scores >0.1. They
include caffeine metabolism, amino acid–related metabolisms (such as alanine,
aspartate, and glutamate metabolism, and cysteine and methionine metabolism),
nicotinate and nicotinamide metabolism, and others (Figure 2D).
Saliva metabolomic pathway analysis
Similar to urine, but not plasma, pathway analysis of the saliva metabolomic data
revealed no significant difference in enriched pathways between MSC and NTC
(Figure 3A and C). Six enriched pathways
were identified between SMK and NTC in saliva (Figure 3B) as compared with plasma (18
pathways) and urine (38 pathways). Among these enriched pathways, 5 have >0.1
impact scores including caffeine metabolism, taurine and hypotaurine metabolism,
histidine metabolism, and nicotinate and nicotinamide metabolism.In contrast, 26 enriched pathways were observed between SMK and MSC in saliva
(Figure 3D). Among
them, 18 pathways were scored with an impact score higher than 0.10.
Interestingly, they included not only the metabolic pathways previously
identified (e.g., caffeine metabolism, arginine and proline metabolism,
nicotinate and nicotinamide metabolism), but also the pathways of tricarboxylic
acid (TCA) cycle (impact score = 0.25) and sphingolipid metabolism (impact score
= 0.39). Thus, analyses of saliva data revealed several enriched pathways
between SMK and MSC, which were not identified in plasma or urine.
Enriched metabolic pathways
Among the enriched pathways identified, several were consistently enriched in SMK
when compared with both NTC and MSC in urine, plasma, or saliva and therefore
were selected for further evaluation, namely, caffeine metabolism, amino acid
metabolism (e.g., arginine and proline metabolism), and energy metabolism (e.g.,
pyruvate metabolism).
Caffeine metabolism
Caffeine metabolism, which involves the Phase I liver detoxification enzyme
cytochrome P-450 1A2 (CYP1A2), was identified as a significantly enriched
pathway when comparing SMK versus NTC and SMK versus MSC in plasma, urine,
and saliva (Figures
1-3). A number of the 14
possible caffeine metabolites were detected in urine (13), plasma (8), and
saliva (6) (Table
1).
Table 1.
Fold changes for the metabolites involved in caffeine metabolism
among SMK, MSC, and NTC.
Biochemical name
Fold changes
Plasma
Urine
Saliva
MSC/NTC
SMK/NTC
SMK/MSC
MSC/NTC
SMK/NTC
SMK/MSC
MSC/NTC
SMK/NTC
SMK/MSC
Caffeine
1.79
0.52
0.29
1.47
1.35
0.92
1.55
0.42
0.27
Paraxanthine
1.19
0.82
0.69
1.09
1.48
1.37
1.15
0.86
0.74
Theobromine
1.06
0.43
0.41
1.05
0.74
0.70
0.79
0.44
0.56
1-methylurate
ND
ND
ND
1.02
1.34
1.32
ND
ND
ND
1,3-dimethylurate
ND
ND
ND
0.97
1.71
1.75
ND
ND
ND
1,7-dimethylurate
1.24
0.89
0.70
1.19
1.26
1.06
1.1
1.05
0.95
3,7-dimethylurate
ND
ND
ND
0.88
0.62
0.71
ND
ND
ND
1,3,7-trimethylurate
ND
ND
ND
1.13
1.11
0.98
ND
ND
ND
1-methylxanthine
1.03
1.23
1.20
1.03
1.64
1.59
ND
ND
ND
3-methylxanthine
0.90
0.81
0.90
0.98
0.88
0.89
ND
ND
ND
7-methylxanthine
0.91
0.81
0.88
0.90
0.94
1.05
0.69
0.91
1.32
5-acetylamino-6-amino-3-methyluracil
ND
ND
ND
0.97
1.93
2.00
ND
ND
ND
5-acetylamino-6-formylamino-3-methyluracil
ND
ND
ND
0.94
2.07
2.20
ND
ND
ND
Theophylline
1.24
0.91
0.74
ND
ND
ND
1.23
0.89
0.72
The statistical significance P < .05 is
highlighted by shaded and bolded “fold change” values; bolded
fold of change values indicate .05 < P <
.1. Abbreviations: MSC, moist snuff consumers; ND, not detected;
NTC, non-tobacco consumers; SMK, cigarette smokers.
Fold changes for the metabolites involved in caffeine metabolism
among SMK, MSC, and NTC.The statistical significance P < .05 is
highlighted by shaded and bolded “fold change” values; bolded
fold of change values indicate .05 < P <
.1. Abbreviations: MSC, moist snuff consumers; ND, not detected;
NTC, non-tobacco consumers; SMK, cigarette smokers.First, the level of caffeine in urine of SMK was higher relative to NTC (fold
change [FC]: 1.35) although it did not achieve statistical significance. In
contrast, the level of caffeine was significantly lower in both plasma and
saliva of SMK relative to NTC. Relative to NTC, MSC exhibited a high level
of caffeine in plasma, urine, and saliva (FC: 1.79, 1.47, and 1.55),
respectively. Second, 1-methylurate and 1,3-dimethylurate were significantly
higher in the urine of SMK relative to NTC and MSC. However, they were not
detected in plasma or saliva of SMK, NTC, and MSC. Third, caffeine metabolic
ratios (CMR = C /
C) were computed for each
participant and compared with different cohorts in each matrix (Figure 4). In urine,
no significant differences were observed between MSC and NTC, and between
SMK and NTC, although there was a marginal significant difference between
SMK and MSC (P = .093). In both saliva and plasma,
significant differences in CMR were observed between SMK and NTC
(P < .001), and between SMK and MSC
(P < .001). The P value for the
comparison between MSC and NTC in saliva was between .1 and .05, but in
plasma was less than .05.
Figure 4.
Caffeine metabolic ratio of SMK, MSC, and NTC in urine, saliva, and
plasma. Box plots of caffeine metabolic ratios (computed using
scaled intensity of paraxanthine divided by caffeine) in (A) urine,
(B) saliva, and (C) plasma show altered caffeine metabolic ratio in
saliva and plasma. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, smokers. *indicates .05 <
P ⩽ 0.1, **indicates .001 <
P ⩽ .05, and ***indicates P ⩽
.001.
Caffeine metabolic ratio of SMK, MSC, and NTC in urine, saliva, and
plasma. Box plots of caffeine metabolic ratios (computed using
scaled intensity of paraxanthine divided by caffeine) in (A) urine,
(B) saliva, and (C) plasma show altered caffeine metabolic ratio in
saliva and plasma. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, smokers. *indicates .05 <
P ⩽ 0.1, **indicates .001 <
P ⩽ .05, and ***indicates P ⩽
.001.
Energy metabolism
Among many metabolic pathways that contribute to providing energy for
cellular and physiological functions, nicotinate and nicotinamide
metabolism, pyruvate metabolism, and the TCA cycle were identified to be
significantly enriched in urine or saliva of SMK compared with NTC and MSC.
Among the metabolites involved in these metabolic pathways, levels of
1,5-anhydroglucitol (1,5-AG), a naturally occurring monosaccharide, were
different in the study cohorts (Table 2). The levels of 1,5-AG were
significantly lower in the plasma, but higher in urine of SMK compared with
NTC (Table
2).
Table 2.
SMK had indications of disrupted energy metabolism.
Biochemical name
Fold of change
(plasma)
Fold of change
(urine)
SMK
P value
SMK
P value
MSC
P value
SMK
P value
SMK
P value
MSC
P value
NTC
MSC
NTC
NTC
MSC
NTC
Glycolysis
1,5-anhydroglucitol (1,5-AG)
0.9
.034
0.93
.184
0.97
.312
1.32
.026
1.18
.268
1.12
.199
Pyruvate
1.04
.856
1.03
.850
1.01
.991
0.77
.021
0.72
.003
1.08
.501
Lactate
1.09
.148
1.04
.409
1.04
.625
1.62
.046
1.1
.750
1.47
.006
Glucose
1.07
.503
0.97
.459
1.1
.067
1.76
.169
0.96
.720
1.84
.061
TCA cycle
Citrate
0.9
.018
0.97
.691
0.92
.077
0.9
.255
0.96
.858
0.94
.379
Succinylcarnitine
0.94
.390
1.01
.943
0.93
.329
0.82
.004
0.83
.028
0.99
.688
2-methylcitrate
0.78
.006
0.84
.078
0.93
.365
Itaconate
0.84
.044
0.82
.064
1.03
.995
Succinate
0.92
.292
0.87
.112
1.06
.570
0.71
.099
0.7
.028
1.01
.698
Malate
0.83
.094
0.94
.917
0.88
.151
1.21
.560
0.94
.257
1.29
.057
NADH/NADPH metabolism
Nicotinate
2.04
.002
2.04
.001
1
.724
Quinolinate
0.77
.012
0.77
.125
1
.503
Trigonelline (N’-methylnicotinate)
1.25
.293
1.4
.049
0.89
.319
1.74
.019
1.7
.006
1.02
.617
Nicotinamide
0.93
.690
0.92
.417
1.01
.721
0.86
.099
0.82
.014
1.05
.508
The statistical significance P < .05 is
highlighted by shaded fold of change values; bolded fold of
change values indicates .05 < P < .1.
Abbreviations: MSC, moist snuff consumers; NADH, nicotinamide
adenine dinucleotide; NADPH, nicotinamide adenine dinucleotide
phosphate; NTC, non-tobacco consumers; SMK, cigarette smokers;
TCA cycle, tricarboxylic acid cycle.
SMK had indications of disrupted energy metabolism.The statistical significance P < .05 is
highlighted by shaded fold of change values; bolded fold of
change values indicates .05 < P < .1.
Abbreviations: MSC, moist snuff consumers; NADH, nicotinamide
adenine dinucleotide; NADPH, nicotinamide adenine dinucleotide
phosphate; NTC, non-tobacco consumers; SMK, cigarette smokers;
TCA cycle, tricarboxylic acid cycle.In addition, urinary pyruvate levels were significantly lower in SMK,
compared with NTC and MSC. In contrast, compared with NTC, only lactate was
higher in the urine of MSC, while malate trended higher but was not
statistically significant.Among the TCA cycle metabolites, circulating plasma citrate levels were lower
in SMK compared with NTC. Other indications of altered energy metabolism
that were also significantly lower in SMK relative to NTC, include urinary
succinylcarnitine, 2-methylcitrate, and itaconate. While a similar trend was
evident in SMK compared with MSC, only the urinary succinylcarnitine was
significantly lower.The urine of SMK, compared with NTC, also had significantly elevated
nicotinate and trigonelline levels along with decreased levels of
quinolinate, a biosynthetic intermediate in NAD+ biosynthesis
(Table 2).
Similarly, SMK exhibited elevated levels of nicotinate and trigonelline
compared with MSC. Smokers also exhibited decreased urinary nicotinamide
relative to NTC and MSC.
Arginine and proline metabolism
Arginine and proline metabolism was identified as a commonly enriched pathway
affected by tobacco consumption (Figures 1 and 3). Arginine serves as a building
block for the synthesis of proteins and as a precursor for many other small
molecules including nitric oxide, urea, and polyamines (Figure 5A). The levels of citrulline,
which is formed by the deamination of arginine, were significantly lower in
the saliva of SMK relative to NTC and MSC (Figure 5B). The mean value of
salivary citrulline levels was higher in MSC compared with NTC but the
difference is not statistically significant. The levels of salivary urea
were elevated, but not statistically higher (.05 < P
< .1), in MSC and SMK, relative to NTC.
Figure 5.
SMK have altered arginine metabolism in saliva. The increased urea
and decreased citrulline in saliva are consistent with up-regulation
of arginase and decreased nitric oxide synthase. (A) Pathway diagram
of urea cycle and (B) boxplots showing altered urea cycle
metabolites in SMK. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, smokers. Vertical lines in the boxplots
represent the median; boxed areas represent 50% of the distribution;
whiskers represent the maximum and minimum values excluding
outliers, and the plus sign represents the mean. **indicates .001
< P ⩽ .05 and ***indicates P ⩽
.001.
SMK have altered arginine metabolism in saliva. The increased urea
and decreased citrulline in saliva are consistent with up-regulation
of arginase and decreased nitric oxide synthase. (A) Pathway diagram
of urea cycle and (B) boxplots showing altered urea cycle
metabolites in SMK. MSC indicates moist snuff consumers; NTC,
non-tobacco consumers; SMK, smokers. Vertical lines in the boxplots
represent the median; boxed areas represent 50% of the distribution;
whiskers represent the maximum and minimum values excluding
outliers, and the plus sign represents the mean. **indicates .001
< P ⩽ .05 and ***indicates P ⩽
.001.
Discussion
To better understand metabolism in tobacco product consumers, pathway enrichment and
topology analyses methods were applied to evaluate the metabolomic profiles of 3
biological matrices obtained from SMK, MSC, and NTC. The metabolomic profiles were
generated using an untargeted metabolomics platform in our previous effort to
identify metabolic biomarkers for MSC and SMK in urine, plasma, and saliva.[12] We reported previously that many differentially expressed metabolites in SMK,
relative to NTC and MSC, were indicative of higher levels of oxidative stress and inflammation.[12] In the current work, as opposed to focusing on individual metabolites, we
analyzed the metabolomic data using knowledge-based pathway analysis approaches and
identified significantly affected metabolic pathways in SMK and MSC. Key findings of
this work are (1) SMK exhibit more pronounced and extensive metabolic pathway
changes relative to MSC and NTC and (2) energy metabolism, caffeine metabolism, and
arginine and proline metabolism are prominently enriched in SMK, but not in MSC,
when compared with NTC.In this study, a relatively large fdr (0.32) was
used to identify enriched metabolic networks. Previously, a conventional
fdr of 0.05 was used to identify
differentiating metabolites in the tobacco consumers.[12] In the global network analyses, application of a conventional 0.05 cut-off
did not yield any differentially enriched pathways among cohorts (data not shown).
This could be due to the fact that these data were generated from generally healthy
tobacco consumers (SMK and MSC). Thus, we explored multiple FDR cut-off values in
0.02 increments. Using this approach, a 0.32 fdr
was found to provide a separation for plasma metabolomic profiles between MSC and
NTC (Figure 1A); however,
when a more stringent cut-off of 0.22 was applied, no differences were detected
between MSC and NTC in plasma (Figure 1A). Hence, for consistency across comparisons and other
matrices, a 0.32 FDR cut-off was used in this study (Figures 2A and 3A).Using the 0.32 fdr, our pathway analysis of
urinary, plasma, and saliva metabolomic profiles suggested that a diverse range of
metabolic pathways, including carbohydrate, amino acid, lipid, vitamin, and
nucleotide metabolism, were perturbed in SMK relative to NTC (Table S1 and Figure S1 in the Supplementary Material). First, two enriched pathways including
caffeine metabolism and ascorbate and aldarate metabolism were consistently seen in
urine, plasma, and saliva of SMK. Second, three carbohydrate metabolic pathways
(amino sugar and nucleotide sugar metabolism, starch and sucrose metabolism,
galactose metabolism), three amino acid metabolic pathways (arginine and proline
metabolism, glutathione metabolism, and D-glutamine and D-glutamate metabolism), and
one nucleotide metabolic pathway were enriched in plasma and urine of SMK. Third,
lysine biosynthesis was enriched in plasma and saliva of SMK. Fourth, one metabolic
pathway concerning cofactors and vitamins (nicotinate and nicotinamide metabolism)
and two amino acid metabolic pathways (histidine metabolism, taurine and hypotaurine
metabolism) were enriched in urine and saliva of SMK. Finally, eight metabolic
pathways were uniquely enriched in plasma of SMK including steroid hormone
biosynthesis; 30 uniquely enriched metabolic pathways were identified in urine and
zero in saliva (Table S1 in the Supplementary Material). Multiple enriched lipid metabolic pathways
including glycerolipid metabolism, sphingolipid metabolism, and glycerophospholipid
metabolism were identified in urine only.We further compared the enriched pathways in SMK and MSC with NTC, and found only two
pathways (lysine biosynthesis and α-LA metabolism) were enriched in plasma of both
SMK and MSC. Given the similarity between urinary and saliva metabolomes of MSC and
NTC, no enriched pathways were detected in MSC.The enrichment of pyruvate metabolism, the TCA cycle, glycolysis, and gluconeogenesis
pathways in urine of SMK, but not in urine of MSC, suggests a perturbed energy
metabolism in SMK, but not in MSC. Such finding is also indirectly supported by
enriched nicotinate and nicotinamide metabolism in urine and saliva of SMK, but not
MSC, as well as many enriched carbohydrate and amino acid metabolic pathways shown
above. This finding is not surprising as these pathways are closely linked to energy
metabolism. In addition, the increased urinary lactate in SMK suggests that the rate
of pyruvate production through glycolysis exceeded the rate of pyruvate consumption
through mitochondrial oxidative phosphorylation. We also observed that circulating
citrate was decreased in plasma, and multiple metabolites related to TCA cycle
intermediates were decreased in SMK urine. Although lactate was also elevated in the
urine of MSC, we did not observe other signs of energy metabolism impairment. Our
findings are consistent with the well-known smoking-related energy metabolism
perturbations. For example, cigarette smoke exposure to cultured cells causes
structural and functional abnormalities in the mitochondria[34,35]; the levels of
several TCA cycle intermediates, malate, fumarate and succinate, were decreased in
the urine of SMK.[36]Caffeine metabolism was prominently altered in tobacco consumers. Our analysis showed
that caffeine metabolism was profoundly altered in SMK, compared with NTC, and was
less pronounced in MSC. Caffeine is a naturally occurring stimulant found in coffee,
tea, chocolate, and many other beverages. CYP1A2 is the major enzyme responsible for
the metabolism of caffeine[37]; 95% of ingested caffeine is metabolized by CYP1A2 to paraxanthine as the
primary intermediate product. Our metabolomics analysis identified that SMK exhibit
marked changes in caffeine metabolism. This observation is consistent with the CMR
measured in saliva and plasma of SMK relative to NTC (Figure 4), suggesting CYP1A2 enzyme activity
is up-regulated by cigarette smoking, as reported previously.[38] In our study, several caffeine metabolites were significantly elevated in
urine of SMK, but not in MSC, compared with NTC (Table 1). However, this could be attributed
to higher coffee consumption in SMK compared with NTC and MSC cohorts (unpublished
data), which is consistent with a published report.[39]Our analysis also suggested enrichment of arginine and proline metabolism in plasma
and urine of SMK, but not MSC. The finding that urea production in the saliva of SMK
was elevated indicates the up-regulation of arginine metabolism in SMK.
Interestingly, this BioEff was not apparent in MSC’s saliva, SMK’s urine, and plasma
compared with NTC (Figure
5). Our results are consistent with a report of increased salivary urea,
which may account for dental implant failure in SMK.[40] In asthmatic patients, arginase activity in airway endothelial cells is
up-regulated with smoking[41] and may impair nitrous oxide production.[42]In addition to the aforementioned metabolic pathway perturbations, we also observed
that glutathione metabolism was significantly enriched in plasma and urine of SMK.
Glutathione metabolism plays an important role in alleviating oxidative stress,[43] and this finding is consistent with our previous observation from single
metabolite analyses[12] that SMK exhibited higher levels of oxidative stress. In addition, SMK
exhibited elevated levels of 1,5-AG in urine, relative to MSC and NTC. The
1,5-anhydroglucitol, a clinically established marker for hyperglycemia, is a
non-metabolized food component and its concentration remains relatively stable in
the blood. It is filtered and reabsorbed by the kidney and a small amount is
excreted in the urine. During hyperglycemia, glucose competes with 1,5-AG for
re-absorption. Thus, hyperglycemia leads to elevated 1,5-AG urinary levels and a
decrease in plasma levels. Elevated levels of 1,5-AG indicate a hyperglycemic state,
which is a risk factor for diabetes.[44] Thus, our finding suggests that SMK are relatively hyperglycemic, which is
consistent with the reported association between smoking and impaired glucose control.[45]Our results demonstrate that pathway-based analysis approach is a useful means of
overcoming the limitations imposed by univariate analysis of metabolomics data, and
it offers a methodology for uncovering the biologically plausible pathways affected
by tobacco product consumption. Many of these identified enriched biochemical
networks such as oxidative stress response, and arginine and proline metabolism,
have also been reported to be involved with smoking-associated diseases like COPD
and lung cancer. For example, oxidative stress response, and glycolysis and
gluconeogenesis pathways were identified as two common underlying pathogenic
pathways of lung cancer and COPD diseases from proteomics analysis of the
bronchoalveolar lavage fluid in lung cancer and COPDpatients.[46] Serum metabolomics analysis of lung cancerpatients identified sphingolipid
metabolism, glycine, serine, and threonine metabolism, arginine and proline
metabolism, and LA metabolism as commonly altered pathways.[47] Taken together, the smoking-related metabolic perturbations in biological
pathways may drive the progression to disease phenotypes such as COPD and lung
cancer.Although the current study has provided important insights into biochemical
perturbations in tobacco consumers, particularly SMK, several limitations exist.
First, although KEGG pathway databases have been widely used in enrichment analysis
as reference databases, high-quality and high-resolution annotation of condition-
and cell-specific metabolites remains challenging.[48] Second, the enrichment analysis method used in the current study assumes that
each pathway in the database is independent of other pathways; it does not account
for the interactions between different pathways.[49] Third, the current analyses do not consider all identified metabolites due to
a lack of accurate KEGG annotation of metabolites identified from Metabolon’s MS
platform. Nevertheless, our analyses provide an unbiased qualitative and
semi-quantitative approach to compare the significance and the importance of a given
biological pathway perturbed across different conditions.
Conclusions
In summary, combined with our previous findings of BioExp and BioEff,[11-13,24] pathway analysis of the
plasma, urinary, and saliva metabolomic profiles from SMK, MSC, and NTC provides
additional insights into the biochemical changes of tobacco consumers. We show that
SMK, but not MSC, exhibit prominent changes in caffeine, energy, and arginine
metabolism relative to NTC. Collectively, our findings suggest cigarette smoking,
but not moist snuff consumption, is a prominent modifier of human physiology.Click here for additional data file.Supplemental material, MPA_suppl_resub_clean_xyz259589b262172 for Pathway
Analysis of Global Metabolomic Profiles Identified Enrichment of Caffeine,
Energy, and Arginine Metabolism in Smokers but Not Moist Snuff Consumers by Gang
Liu, Douglas P Lee, Eckhardt Schmidt and GL Prasad in Bioinformatics and Biology
Insights
Authors: R M Salek; M L Maguire; E Bentley; D V Rubtsov; T Hough; M Cheeseman; D Nunez; B C Sweatman; J N Haselden; R D Cox; S C Connor; J L Griffin Journal: Physiol Genomics Date: 2006-12-26 Impact factor: 3.107
Authors: Robert C Spitale; Michelle Y Cheng; Kimberly A Chun; Emily S Gorell; Claudia A Munoz; Dale G Kern; Steve M Wood; Helen E Knaggs; Jacob Wulff; Kirk D Beebe; Anne Lynn S Chang Journal: Genome Med Date: 2012-02-23 Impact factor: 11.117
Authors: Ahmed Jamal; Israel T Agaku; Erin O'Connor; Brian A King; John B Kenemer; Linda Neff Journal: MMWR Morb Mortal Wkly Rep Date: 2014-11-28 Impact factor: 17.586
Authors: Roland F Hoffmann; Sina Zarrintan; Simone M Brandenburg; Arjan Kol; Harold G de Bruin; Shabnam Jafari; Freark Dijk; Dharamdajal Kalicharan; Marco Kelders; Harry R Gosker; Nick Ht Ten Hacken; Johannes J van der Want; Antoon Jm van Oosterhout; Irene H Heijink Journal: Respir Res Date: 2013-10-02
Authors: Johan H Bjørngaard; Ask Tybjærg Nordestgaard; Amy E Taylor; Jorien L Treur; Maiken E Gabrielsen; Marcus R Munafò; Børge Grønne Nordestgaard; Bjørn Olav Åsvold; Pål Romundstad; George Davey Smith Journal: Int J Epidemiol Date: 2017-12-01 Impact factor: 7.196
Authors: Claudia Sikorski; Sandi Azab; Russell J de Souza; Meera Shanmuganathan; Dipika Desai; Koon Teo; Stephanie A Atkinson; Katherine Morrison; Milan Gupta; Philip Britz-McKibbin; Sonia S Anand Journal: BMJ Open Diabetes Res Care Date: 2022-04
Authors: Lucas A Gillenwater; Katerina J Kechris; Katherine A Pratte; Nichole Reisdorph; Irina Petrache; Wassim W Labaki; Wanda O'Neal; Jerry A Krishnan; Victor E Ortega; Dawn L DeMeo; Russell P Bowler Journal: Metabolites Date: 2021-03-11