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Article

Simultaneous Measurement and Distribution Analysis of Urinary Nicotine, Cotinine, Trans-3′-Hydroxycotinine, Nornicotine, Anabasine, and Total Nicotine Equivalents in a Large Korean Population

1
Department of Laboratory Medicine, School of Medicine, Wonkwang University, 895 Muwang-ro, Iksan-si 54538, Jeollabuk-do, Republic of Korea
2
Department of Laboratory Medicine and Genetics, Samsung Medical Center, School of Medicine, Sungkyunkwan University, 81 Irwon-ro, Gangnam-gu, Seoul 06351, Republic of Korea
3
Department of Clinical Pharmacology and Therapeutics, Samsung Medical Center, School of Medicine, Sungkyunkwan University, 81 Irwon-ro, Gangnam-gu, Seoul 06351, Republic of Korea
*
Author to whom correspondence should be addressed.
Molecules 2023, 28(23), 7685; https://doi.org/10.3390/molecules28237685
Submission received: 26 September 2023 / Revised: 14 November 2023 / Accepted: 17 November 2023 / Published: 21 November 2023
(This article belongs to the Special Issue Applied Analytical Chemistry)

Abstract

:
Measurement of multiple nicotine metabolites and total nicotine equivalents (TNE) might be a more reliable strategy for tobacco exposure verification than measuring single urinary cotinine alone. We simultaneously measured nicotine, cotinine, 3-OH cotinine, nornicotine, and anabasine using 19,874 urine samples collected from the Korean National Health and Nutrition Examination Survey. Of all samples, 18.6% were positive for cotinine, 17.4% for nicotine, 17.3% for nornicotine, 17.6% for 3-OH cotinine, and 13.2% for anabasine. Of the cotinine negative samples, less than 0.3% were positive for all nicotine metabolites, but not for anabasine (5.7%). The agreement of the classification of smoking status by cotinine combined with nicotine metabolites was 0.982–0.994 (Cohen’s kappa). TNE3 (the molar sum of urinary nicotine, cotinine, and 3-OH cotinine) was most strongly correlated with cotinine compared to the other nicotine metabolites; however, anabasine was less strongly correlated with other biomarkers. Among anabasine-positive samples, 30% were negative for nicotine or its metabolites, and 25% were undetectable. Our study shows that the single measurement of urinary cotinine is simple and has a comparable classification of smoking status to differentiate between current smokers and non-smokers relative to the measurement of multiple nicotine metabolites. However, measurement of multiple nicotine metabolites and TNE3 could be useful for monitoring exposure to low-level or secondhand smoke exposure and for determining individual differences in nicotine metabolism. Geometric or cultural factors should be considered for the differentiation of tobacco use from patients with nicotine replacement therapy by anabasine.

Graphical Abstract

1. Introduction

The measurement of biomarkers related to tobacco exposure is the most widely used objective method for smoking status verification [1]. Cotinine, which is the major metabolite of nicotine [2,3], is the most widely used biomarker for biochemical verification of smoking status [4]. Urinary cotinine is a non-invasive biomarker with diagnostic performance similar to that of serum cotinine [2,5]. Therefore, the Korean National Health and Nutrition Examination Survey (KNHANES) has used urinary cotinine as a biomarker to verify smoking status and to monitor population exposure to tobacco over time since 2008 [6,7].
Cotinine concentration can be affected by ethnicity, genetics, medical conditions, and environmental factors [3,8,9]. The half-life of cotinine varies from 8 h to over 30 h due to these factors [4]. CYP2A6 is the major enzyme responsible for the metabolism of nicotine to cotinine, which is further metabolized to trans-3′-hydroxycotinine (3-OH cotinine) as well as 5′-diphospho-glucuronyltransferase (UGT) [9,10]. Considering the inter-individual variabilities in cotinine metabolism due to many genetic and non-genetic factors, the measurement of multiple nicotine metabolites is more reliable for the assessment of tobacco exposure compared to a single urinary cotinine measurement [11,12]. In addition, total nicotine equivalents (TNE), the sum of most or all nicotine metabolites in urine [4], is suggested to be the most accurate biomarker of nicotine intake. TNE has been demonstrated to be highly correlated with nicotine intake at known doses, while single cotinine alone showed a weaker correlation in people with reduced CYP2A6 metabolic activity [13]. TNE has been reported to be effective in assessing changes in nicotine intake over time within subjects, while cotinine is less accurate for this due to differences in metabolism [4,13]. Therefore, the measurement of multiple nicotine metabolites and TNE in urine might be a more reliable strategy for evaluating tobacco exposure [13].
Lower urinary biomarker concentrations due to decreased metabolic activity and low-level or secondhand smoke exposure cannot be detected with a single biomarker. Several studies have reported the usefulness of measuring multiple nicotine metabolites and TNE for evaluation of secondhand exposure or smoking cessation compared to single cotinine alone [14,15,16]. However, research on the East Asian population is still lacking [14], although these populations have a higher prevalence of reduced CYP2A6 metabolic activity compared to other ethnicities [13,17].
Urinary biomarkers can be analyzed by a variety of analytical methods, including immunoassay, gas chromatography (GC), GC-mass spectrometry (GC-MS), liquid chromatography (LC), and liquid chromatography with tandem mass spectrometry (LC-MS/MS) [4]. The measurement of single urinary cotinine is widely available in laboratories and has been used for population screening [4]. However, measurement of multiple nicotine metabolites and TNE is only available at a limited number of laboratories, as it is more expensive and the procedure is more complex [4]. Therefore, a comparison of the usefulness of single urinary cotinine versus multiple nicotine metabolites in a large population for evaluating tobacco exposure is important. Large-scale data on multiple marker measurements in comparison to a single cotinine assay would be helpful in developing an effective strategy for population monitoring for tobacco exposure.
Recently, our group reported a novel LC–MS/MS method for the detection of anabasine, nicotine, and three nicotine metabolites consisting of cotinine, 3-OH cotinine, and nornicotine (the molar sum of nicotine, cotinine, and 3-OH cotinine known as TNE3) in urine, with a simple sample preparation technique [18]. TNE3 is known to be highly correlated with the sum of all nicotine metabolites [4,13], and the simple and economical sample preparation procedure and short run times might be useful for analyzing a large number of samples, such as a national survey. In the current study, we evaluated six biomarkers related to smoking exposure: nicotine, cotinine, 3-OH cotinine, nornicotine, anabasine, and urinary TNE3, using approximately 20,000 urine samples obtained from KNHANES. The aim of our study was to assess the agreement between single urinary cotinine and multiple nicotine metabolites in a large number of samples from the national survey. For this, we compared biomarker-based strategies between single cotinine and multiple nicotine metabolites for monitoring population exposure to tobacco.

2. Results

2.1. Results of the LC–MS/MS Analysis

Results of the LC–MS/MS analysis are shown in Table 1. Samples categorized as “not detected” for each analyte comprised 76.4–81.7% of the 19,894 samples. The proportions of positive samples with a concentration above the cut-off [19] were 18.6% (3682/19,894), 17.4% (3460/19,894), 17.3% (3434/19,894), 16.6 (3308/19,894), and 13.2% (2624/19,894) for cotinine, nicotine, nornicotine, 3-OH cotinine, and anabasine, respectively, with concentrations ranging up to 4907.4 ng/mL, 13,806.4 ng/mL, 766.5 ng/mL, 39,604.5 ng/mL, and 161.1 ng/mL, respectively. TNE3 concentrations varied from <0.1 µmol/L to 268.5 µmol/L.

2.2. The Distribution of Six Urinary Biomarkers

The distribution of six urinary biomarkers from all samples is illustrated in Figure 1. On visual inspection of the histogram, urinary cotinine, nicotine, nornicotine, 3-OH cotinine, and TNE3 had a bimodal distribution (Figure 1A–D,F), whereas anabasine did not (Figure 1E). The cut-off values of urinary cotinine, nicotine, nornicotine, and 3-OH cotinine were located between two peaks of distribution, whereas that of anabasine was not (Figure 1E).

2.3. A Comparison of the Measurement Status between the Five Urinary Biomarkers

A comparison of the detection status of five urinary biomarkers related to smoking exposure is presented in Table 2. Of the 4679 samples with detectable urinary cotinine, other biomarkers were detected in 65.8–88.0%. Of the 15,215 samples without detectable urinary cotinine, anabasine was detected in 7.9%, whereas nicotine and its metabolites were detected in 0.1–2.4%.
A comparison of the classification of smoking status based on five biomarkers is presented in Table 3. Of the 3682 positive samples for urinary cotinine, 71.7% were positive for anabasine, whereas 93.3–96.4% were positive for nicotine and its metabolites. Of the 16,212 negative samples for urinary cotinine, less than 0.3% of the samples were negative for all biomarkers except anabasine (5.7%, 925/16,212).

2.4. Agreement of the Measurement Status between the Five Urinary Biomarkers

Nicotine and its metabolites showed a very high agreement for detection status (Cohen’s kappa; 0.838 to 0.973) (Table 2) and showed higher agreement for classification of smoking status (0.948 to 0.978) (Table 3). However, anabasine showed lower agreement for detection status (0.597 to 0.683) (Table 2) or classification of smoking status (0.657 to 0.693) (Table 3) compared to the other nicotine metabolites.

2.5. Correlations between the Six Urinary Biomarkers

Correlations between the six urinary biomarkers are presented in Supplementary Table S2. Positive correlations were observed between the biomarkers. Urinary cotinine showed a very high correlation with other nicotine metabolites (range: 0.8994 to 0.9630; Supplementary Table S1 and Supplementary Figure S1). Among them, TNE3 was most strongly correlated with cotinine compared to other nicotine metabolites (Supplementary Figures S1 and S2). However, urinary anabasine was less strongly correlated with other biomarkers. (anabasine with cotinine, r = 0.6674; anabasine with nicotine, r = 0.6835; anabasine with nornicotine, r = 0.7319; anabasine with 3-OH cotinine, r = 0.6798; anabasine with TNE3, r = 0.6514; and p < 0.0001 for all).

3. Discussion

The study by Benowitz et al. [13] showed that TNE3, the molar sum of urinary nicotine, cotinine, and 3-OH cotinine, is highly correlated with the sum of nicotine and all of its metabolites, as well as serum cotinine concentration. Therefore, TNE3 is one of the most useful biomarkers for assessing the daily intake of nicotine. However, the diagnostic performance of TNE3 to differentiate between current smokers and non-smokers is still unclear [4].
In the current study, there does not appear to be a remarkable difference in the classification of smoking status based on urinary biomarkers between urinary cotinine and TNE3, although the criterion for TNE3 has not yet been established. When positive samples of nicotine metabolites were measured, differences of 0.1–0.3% were found compared to urinary cotinine alone (Table 3). The degree of concordance in the classification of smoking status by urinary cotinine combined with nicotine metabolites compared with urinary cotinine alone was almost perfect (Cohen’s kappa 0.982–0.994; Supplementary Table S2). Therefore, our study shows that a single measurement of urinary cotinine, compared to multiple measurements of nicotine metabolites, is more cost-effective to differentiate between current smokers and non-current smokers.
On the other hand, urinary nicotine and 3-OH cotinine were detected at 2.4% and 0.7%, respectively, in samples with undetectable urinary cotinine, and the degree of concordance for the detection status among nicotine and its metabolites was lower compared to the classification of smoking status based on urinary biomarkers (Table 2 and Table 3). A single biomarker was detectable at 9.0%, and partial biomarkers (two or three) were detectable at 4.1%, whereas 5.1% was positive for a single biomarker and 1.5% was positive for two or three biomarkers for the classification of smoking status based on urinary biomarkers. (Table 4 and Supplementary Figure S3). When excluding anabasine, one to three biomarkers were detectable in 6.7% (1345 cases). One hundred cases (0.6%) were positive for a single biomarker, and 271 cases (1.4%) were positive for two or three markers for the classification of smoking status. Discrepancies in the detection status between nicotine metabolites were mostly observed around the lower limit of measuring interval (LLMI) below the cut-off values.
TNE3 showed a different value of 3.0% in those samples compared to the value for the sum of the LLMI of urinary nicotine, cotinine, and 3-OH cotinine. These results could be explained by individual differences in nicotine metabolism [4], as well as differences in the half-lives of each biomarker [20], and sampling time [21,22]. Among the positive samples for urinary cotinine, the ratio of urinary 3-OH cotinine to cotinine (NMR) [23] varied from 0.00 to 34.16 in our study (Supplementary Figure S3). A person who had reduced CYP2A6 or uridine UGT activity would slowly metabolize nicotine, resulting in more nicotine excreted as the nicotine form [13,24]. If a person had increased enzyme activity, more nicotine and cotinine would be excreted in the 3-OH cotinine form. According to a previous study for secondhand smoke exposure in the KNHANES survey [25], single urinary cotinine was a less sensitive biomarker for distinguishing secondhand smoke exposure from non-current smokers because urinary cotinine was unmeasurable in 10.2% of participants who self-reported a history of secondhand smoke exposure. Collectively, our study suggests that measurement of multiple nicotine metabolites and TNE3 might be helpful for monitoring exposure to secondhand or thirdhand smoke, compared to measurement of single urinary cotinine.
Anabasine is one of the minor tobacco alkaloids [26]. Anabasine is a useful biomarker for tobacco use in people using nicotine patches or gum because it is present in very small amounts in pharmaceutical-grade nicotine products [4,27]. In 2002, the cut-off of 2 ng/mL for urinary anabasine was defined as the criterion for distinguishing between current smokers and non-smokers [27]. However, several studies [28,29,30] have reported lower sensitivity of urinary anabasine compared to serum cotinine when using the current cut-off value. Except for samples with values below the LLMI, urinary anabasine was log-normally distributed, whereas urinary cotinine, nicotine, nornicotine, 3-OH cotinine, and TNE3 were bimodally distributed in the current study (Figure 1). This finding for the distribution of urinary anabasine is similar to those of a previous study using KNHANES study data between 2013 and 2014 [31].
Recently, Colsoul et al. suggested that 0.236 ng/mL of anabasine appears to better distinguish between current smokers and non-smokers than the cut-off value of 2 ng/mL [31]. In the current study, 19.5% of samples showed values below the LLMI for urinary anabasine, among the positive samples for urinary cotinine. This finding is in line with a recent study [32], which showed improved sensitivity for distinguishing between current smokers and non-smokers when using 0.236 ng/mL as the novel cut-off value for urinary anabasine. Although the LLMI of anabasine in the current study was higher than 0.236 ng/mL, our data support the adequacy of the revised cut-off value for urinary anabasine compared to the current cut-off value.
Urinary anabasine is helpful for differentiating tobacco use in patients with nicotine replacement therapy [27]. However, the risk of misclassification by anabasine is less known. Among the positive samples with a 2.0 ng/mL cut-off value for urinary anabasine, about 30% were negative for nicotine or its metabolites, and 25% of the samples were below the LLMI in our study (Supplementary Table S3). This finding is in contrast to a previous study [28], where among the positive samples with a 3.0 ng/mL cut-off value for urinary anabasine, 0.4% were negative for nicotine metabolites. When using the same 3.0 ng/mL cut-off value, our data showed that 3.7% of samples were below the LLMI of urinary cotinine. Of these (568/15,195) samples, urinary anabasine distribution varied from 3.0 to 111.4 ng/mL.
The source of anabasine may be related to other foods or herbal medications rather than tobacco products [28]. For example, Alangium platanifolium, a small tree, is native to east Asia and is used for food and medicine [33]. The plant contains anabasine, and an experimental study on the extraction of DL-anabasine from Alangium platanifolium root has been reported [34]. Therefore, our data suggest that geological and cultural differences in anabasine intake should be considered for medical decisions to prevent misclassification of Korean patients with nicotine replacement therapy.
Our study has several limitations. Due to the limited authorization to use KNHANES data, including the age and tobacco-related questionnaire, we cannot distinguish between pediatrics and adults, while they may have different metabolic rates for nicotine metabolism. In addition, we cannot establish reference intervals for TNE3 and cannot validate the cut-off values of each biomarker for the same reason. To overcome these limitations, further study should be performed.

4. Materials and Methods

4.1. Sample Collection

A total of 19,874 urine samples were collected from anonymous Koreans over six years of age and delivered to Samsung Medical Center as frozen samples from the Korea Disease Control and Prevention Agency from January 2019 to October 2021 as a part of the 8th KNHANES (2019–2021). Samples were thawed and stored under refrigeration until preparation.

4.2. LC-MS/MS Analysis

The detailed assay protocol, including sample preparation, was conducted as previously published [18]. Briefly, 90 µL acetonitrile, 30 µL urine sample, and 5 µL deuterated ISs (co-tinine-d3, nicotine-d4, nornicotine-d4, 3-OH cotinine-d3, and anabasine-d4) were added to an Eppendorf tube. The mixture was centrifuged at 15,000 rpm for 10 min, and 30 μL of the supernatant was carefully transferred to another tube, which was then diluted with 120 µL of distilled water. A total of 7 µL of the sample solution was injected directly into an LC–MS/MS autosampler. For chromatographic separation, we used a Kinetex EVO C18 column (2.1 mm × 150 mm, 5 µm; Phenomenex, Torrance, CA, USA). The mobile phase was a gradient of (A) 30 mM ammonium bicarbonate and (B) acetonitrile at a flow rate of 0.4 mL/min. Gradient elution started with 91% A for 1.6 min, followed by a step to 85% A within 0.1 min, held for 3 min, and reequilibrated at 91% A from 4.7 min to 6.5 min. LC–MS/MS analysis was performed using a Waters XEVO TQ-S tandem quadrupole mass spectrometer (Waters Corporation, Milford, MA, USA) equipped with an Acquity UPLC system (Waters Corporation). The multiple reaction monitoring (MRM) transitions were as follows: cotinine (m/z 177.2 → 98.1 and 177.2 → 146.1), cotinine-d3 (m/z 180.2 → 101.1), nicotine (m/z 163.2 → 84.2 and 163.2 → 132.2), nicotine-d4 (m/z 167.3 → 134.2), nornicotine (m/z 149.1 → 130.2 and 149.1 → 80.1), nornicotine-d4 (m/z 153.2 → 134.2), 3-OH cotinine (m/z 193.2 → 134.2 and 193.2 → 80.1), 3-OH cotinine-d3 (m/z 196.2 → 134.2), anabasine (m/z 163.3 → 94.2, 163.3 → 92.0, and 163.3 → 146.3), anabasine-d4 (m/z 167.3 → 150.3). All acquisition methods used the following parameters: capillary voltage at 3.0 kV, source temperature at 150 °C, desolvation temperature at 450 °C, desolvation gas flow at 700 L/h, cone gas flow at 150 L/h, nebulizer pressure at 5.0 bar, and collision gas flow at 0.15 mL/min. The analysis time was approximately 6.5 min per sample. To determine precision and accuracy, four levels of spiking pooled urine with working solutions of each biomarker (2, 20, 100, and 1000 ng/mL for nicotine, nornicotine, and anabasine; 5, 50, 250, and 2500 ng/mL for cotinine; and 10, 100, 500, and 5000 ng/mL for 3-OH cotinine) were prepared. Our method was validated according to the standard procedure and guidelines [35,36,37,38,39]. The analytical performance of our measurement system is summarized in Supplementary Table S4. The LLMI was 5 ng/mL for 3-OH cotinine and 1 ng/mL for the other four biomarkers.

4.3. Data Analysis

The measured values of the five biomarkers were log-transformed due to skewed distributions. The value below the LLMI was replaced by the value of the LLMI divided by √2, and the value was considered “not detected” in this study. TNE3 was calculated by the molar sum of nicotine and two major metabolites, cotinine and 3-OH cotinine, without creatinine correction [13]. The correlation between the various biomarkers was examined by Spearman’s rank correlation. Referring to the study by Moyer et al. [19], 20 ng/mL for nicotine and cotinine, 50 ng/mL for 3-OH cotinine, and 2 ng/mL for nornicotine and anabasine were established as the cut-off values for the five biomarkers to distinguish between current smokers and non-current smokers. The degree of agreement between various biomarkers compared to urinary cotinine was quantified by Cohen’s kappa. Statistical Package for the Social Sciences (SPSS) version 25.0 (IBM Corporation, Armonk, NY, USA) and GraphPad Prism version 9.1.2. (GraphPad Software, La Jolla, CA, USA) were used for statistical analyses and graphing, respectively. Statistical significance was set at p < 0.05.

5. Conclusions

Taken together, our study shows that the single measurement of urinary cotinine has comparable classification results to differentiate between current smokers and non-current smokers compared to the analysis of multiple nicotine metabolites, or TNE3. However, measurements of multiple nicotine metabolites and TNE3 could be useful for monitoring exposure to low-level or secondhand smoke and determining individual differences in nicotine metabolism. Furthermore, geological or cultural factors of anabasine intake should be considered for the use of urinary anabasine for differentiating tobacco use from patients with nicotine replacement therapy.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/molecules28237685/s1. Supplementary Figure S1. The scatter plots of log-transformed urinary cotinine and various biomarkers related to smoking exposure; Supplementary Figure S2. The scatter plots of log-transformed urinary TNE3 and nicotine metabolites; Supplementary Figure S3. Venn diagrams of five biomarkers for detection status (A) and classification of smoking status (B); Supplementary Figure S4. Distribution of the ratio of urinary 3-OH cotinine to cotinine (NMR) Frequency of log-transformed NMR (A) and its cumulative frequency (B); Supplementary Table S1. Comparison of the correlations between various biomarkers related to smoking exposure; Supplementary Table S2. Agreement of the classification of smoking status based on the biomarkers between single urinary cotinine and multiple nicotine metabolites; Supplementary Table S3. Discrepancies between anabasine and nicotine metabolites without detectability; Supplementary Table S4. Analytical performance validation for five urinary biomarkers related to smoking exposure.

Author Contributions

Conceptualization, H.-S.L. and S.-Y.L.; methodology, H.-S.L. and S.-Y.L.; validation, H.-S.L. and S.-Y.L.; formal analysis, H.-S.L. and S.-Y.L.; investigation, H.-S.L. and S.-Y.L.; data curation, H.-S.L. and S.-Y.L.; writing—original draft preparation, H.-S.L. and S.-Y.L.; writing—review and editing, H.-S.L., M.-R.C. and S.-Y.L.; supervision, S.-Y.L.; project administration, S.-Y.L.; funding acquisition, S.-Y.L. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Korea Centers for Disease Control and Prevention (2019E340700).

Institutional Review Board Statement

The study was approved by the Institutional Review Board of Samsung Medical Center Hospital (IRB file no. 2018–04–059).

Informed Consent Statement

A waiver of consent was obtained given the nature of the project, which aimed to analyze measurement values from anonymous Koreans.

Data Availability Statement

The data are not publicly available due to limited authorization to use KNHANES data.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Distribution and cut-off values of various biomarkers related to smoking exposure: (A) cotinine; (B) nicotinine; (C) nornicotine; (D) 3-OH cotinine; (E) anabasine; and (F) TNE3.
Figure 1. Distribution and cut-off values of various biomarkers related to smoking exposure: (A) cotinine; (B) nicotinine; (C) nornicotine; (D) 3-OH cotinine; (E) anabasine; and (F) TNE3.
Molecules 28 07685 g001
Table 1. The results of measurement for five urinary biomarkers related to smoking exposure using 19,874 urine samples.
Table 1. The results of measurement for five urinary biomarkers related to smoking exposure using 19,874 urine samples.
BiomarkersNot DetectedDetectedPositiveConcentration
n (%)n (%)n (%)(Mean ± SD; ng/mL)Range (ng/mL)
Cotinine15,195 (76.5%)4679 (23.5%)3682 (18.6%)221.2 ± 578.1<1.0–4907.4
Nicotine 15,400 (77.5%)4474 (22.5%)3460 (17.4%)214.5 ± 776.5<1.0–13,806.4
Nornicotine16,232 (81.7%)3642 (18.3%)3434 (17.3%)14.3 ± 41.3<1.0–766.5
3-OH cotinine15,649 (78.7%)4225 (21.3%)3308 (16.6%)715.3 ± 2307.5<5.0–39,604.5
Anabasine15,588 (78.4%)4286 (21.6%)2624 (13.2%)2.2 ± 5.1<1.0–161.1
TNE3 (µmol/L) 6.3 ± 18.0<0.1–268.5
3-OH cotinine, trans-3′-hydroxycotinine; TNE3, total nicotine equivalents three (the molar sum of nicotine, cotinine, and 3-OH cotinine). Furthermore, 20 ng/mL for nicotine and cotinine, 50 ng/mL for 3-OH cotinine, and 2 ng/mL for nornicotine and anabasine are the cut-off values of five biomarkers for distinguishing between current smokers and non-current smokers.
Table 2. Comparison of the detection status of five biomarkers.
Table 2. Comparison of the detection status of five biomarkers.
Urinary BiomarkersCasesCotinineNicotiineNornicotine3-OH CotinineAnabasine
DetectedNot DetectedDetectedNot DetectedDetectedNot DetectedDetectedNot DetectedDetectedNot Detected
(4679)(15,195)(4474)(15,400)(3642)(16,232)(4225)(15,649)(4286)(15,588)
CotinineDetected 411656336251054412255730811598
Not detected 35814,8371715,17810315,092120513,990
κ 0.869(0.861–0.878)0.838(0.829–0.847)0.905(0.897–0.912)0.597(0.583–0.610)
NicotineDetected4116358 3621853389258230781396
Not detected56314,837 2115,37933315,067120814,192
κ0.869(0.861–0.878) 0.973(0.968–0.977)0.865(0.857–0.874)0.619(0.605–0.632)
NornicotineDetected362517362121 3594482957685
Not detected105415,17885315,379 63115,601132914,903
κ0.838(0.829–0.847)0.865(0.856–0.874) 0.893(0.885–0.900)0.683(0.670–0.696)
3-OH cotinineDetected412210338923333594631 30131212
Not detected55715,09258215,06763115,018 127314,376
κ0.905(0.897–0.912)0.865(0.857–0.874)0.893(0.885–0.900) 0.628(0.615–0.642)
AnabasineDetected30811205307812082957132930131273
Not detected159813,990139614,19268514,903121214,376
κ0.597(0.583–0.610)0.619(0.605–0.632)0.683(0.670–0.696)0.628(0.615–0.642)
3-OH cotinine, trans-3′-hydroxycotinine; κ, Cohen’s kappa. Furthermore, 5 ng/mL for 3-OH cotinine and 1 ng/mL for cotinine, nicotine, nornicotine, and anabasine are the lower limits of the measuring interval.
Table 3. Comparison of the classification of smoking status based on five biomarkers.
Table 3. Comparison of the classification of smoking status based on five biomarkers.
Urinary BiomarkersCasesCotinineNicotineNornicotine3-OH CotinineAnabasine
PositiveNegativePositiveNegativePositiveNegativePositiveNegativePositiveNegative
(3682)(16,192)(3460)(16,414)(3567)(16,440)(3574)(16,566)(3566)(17,250)
CotininePositive 34372453550113351916326411041
Negative 2315,1721715,1785515,14092514,270
κ 0.954(0.948–0.959)0.978(0.974–0.982)0.963(0.958–0.968)0.664(0.651–0.678)
NicotinePositive343723 34342633081522624836
Negative24516,169 13316,28126616,14894215,472
κ0.954(0.948–0.959) 0.973(0.968–0.977)0.968(0.964–0.973)0.693(0.679–0.706)
NornicotinePositive3550173434133 34171502636931
Negative13216,3082616,414 15716,28393015,510
κ0.978(0.974–0.982)0.973(0.968–0.977) 0.948(0.942–0.953)0.683(0.669–0.696)
3-OH cotininePositive35195533082663417157 25621012
Negative16316,40315216,41415016,416 100415,562
κ0.963(0.958–0.968)0.968(0.964–0.973)0.948(0.942–0.953) 0.657(0.643–0.671)
AnabasinePositive26419252624942263693025621004
Negative104116,20983616,41493116,319101216,238
κ0.664(0.651–0.678)0.693(0.679–0.706)0.683(0.669–0.696)0.657(0.643–0.671)
3-OH cotinine, trans-3′-hydroxycotinine; κ, Cohen’s kappa. Furthermore, 20 ng/mL for nicotine and cotinine, 50 ng/mL for 3-OH cotinine, and 2 ng/mL for nornicotine and anabasine are the cut-off values of five biomarkers for distinguishing between current smokers and non-current smokers.
Table 4. Combinations of the five biomarkers for detection status.
Table 4. Combinations of the five biomarkers for detection status.
Detection Status
CasesNumber%
Not detected13,59868.4
Single biomarker detectable17889.0
Cotinine2751.4
Nicotine2811.4
Nornicotine140.1
3-OH cotinine760.4
Anabasine11425.7
Two biomarkers detectable5292.5
Cotinine + Nicotine1870.9
Cotinine + Nornicotine10.0
Cotinine + 3-OH cotinine2241.1
Cotinine + Anabasine350.2
Nicotine + 3-OH cotinine200.1
Nicotine + Anabasine550.3
Nornicotine + Anabasine20.0
3-OH cotinine + Anabasine50.0
Three biomarkers detectable3201.6
Cotinine + Nicotine + Nornicotine200.1
Cotinine + Nicotine + 3-OH cotinine2421.2
Cotinine + Nicotine + Anabasine280.1
Cotinine + Nornicotine + 3-OH cotinine40.0
Cotinine + 3-OH cotinine + Anabasine10.0
Nicotine + Nornicotine + 3-OH cotinine10.0
Nicotine + 3-OH cotinine + Anabasine240.1
Four biomarkers detectable6953.5
Cotinine + Nicotine + Nornicotine + 3-OH cotinine6453.2
Cotinine + Nicotine + Nornicotine + Anabasine110.1
Cotinine + Nicotine + 3-OH cotinine + Anabasine390.2
Five biomarkers detectable294414.8
Total19,874100.0
3-OH cotinine, trans-3′-hydroxycotinine. Furthermore, 5 ng/mL for 3-OH cotinine and 1 ng/mL for cotinine, nicotine, nornicotine, and anabasine are the lower limits of the measuring interval.
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Lee, H.-S.; Chun, M.-R.; Lee, S.-Y. Simultaneous Measurement and Distribution Analysis of Urinary Nicotine, Cotinine, Trans-3′-Hydroxycotinine, Nornicotine, Anabasine, and Total Nicotine Equivalents in a Large Korean Population. Molecules 2023, 28, 7685. https://doi.org/10.3390/molecules28237685

AMA Style

Lee H-S, Chun M-R, Lee S-Y. Simultaneous Measurement and Distribution Analysis of Urinary Nicotine, Cotinine, Trans-3′-Hydroxycotinine, Nornicotine, Anabasine, and Total Nicotine Equivalents in a Large Korean Population. Molecules. 2023; 28(23):7685. https://doi.org/10.3390/molecules28237685

Chicago/Turabian Style

Lee, Hyun-Seung, Mi-Ryung Chun, and Soo-Youn Lee. 2023. "Simultaneous Measurement and Distribution Analysis of Urinary Nicotine, Cotinine, Trans-3′-Hydroxycotinine, Nornicotine, Anabasine, and Total Nicotine Equivalents in a Large Korean Population" Molecules 28, no. 23: 7685. https://doi.org/10.3390/molecules28237685

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