| Literature DB >> 27713762 |
Emily Urry1, Alexander Jetter2, Hans-Peter Landolt3.
Abstract
BACKGROUND: Coffee consumption is a known inducer of cytochrome P450 1A2 (CYP1A2) enzyme activity. We recently observed that a group of type-2 diabetes patients consumed more caffeine (coffee) on a daily basis than non-type-2 diabetes controls. Here, we investigated whether type-2 diabetes cases may metabolize caffeine faster than non-type-2 diabetes controls.Entities:
Keywords: Caffeine; HPLC; Paraxanthine; Phenotyping
Year: 2016 PMID: 27713762 PMCID: PMC5052791 DOI: 10.1186/s12986-016-0126-6
Source DB: PubMed Journal: Nutr Metab (Lond) ISSN: 1743-7075 Impact factor: 4.169
Fig. 1Relationship between sampling time and salivary paraxanthine/caffeine ratio. Solid line: mean observed ratio estimates based on data of Spigset et al. [14]. Error bars show standard deviation across the mean of observed ratio data (n = 12). Dotted line: ratio based on fitted curve (dotted line) using a second-order polynomial model: Y = A + (B x X) + (C x X ). Best-fit values (95 % confidence intervals): A = 0.016 (-0.206 - 0.238); B = 0.141 (0.090 - 0.191); C = -0.004 (-0.006 - -0.002). Equation: Y = 0.016 + (0.141 x X) + (-0.004 x X ); Y = paraxanthine/caffeine ratio; X = time interval between final caffeine intake and saliva sampling
Fig. 2Paraxanthine/caffeine ratios in type-2 diabetes patient and non-type-2 diabetes control groups. Boxplots represent paraxanthine/caffeine ratios corrected to an “ideal” time interval between last caffeine intake and saliva sampling of 6 h (box: 25th percentile, median and 75th percentile; whiskers = 10th to 90th percentiles; dots: individual data points outside of the whisker range). Statistics compared type-2 diabetes patient (n = 57) and non-type-2 diabetes control (n = 146) groups by independent samples t-test on square-rooted data (2-tailed; equal variances assumed). Statistical analysis with the non-parametric Mann-Whitney U-test on non-transformed corrected paraxanthine/caffeine ratios confirmed the robustness of the result: T2D vs. non-T2D: mean rank 120.93 vs. 94.61; exact sig. 2-tailed: p = 0.004)
Characteristics of whole sample, and split by type-2 diabetes and non-type-2 diabetes group [continuous variables: mean (± standard deviation); categorical variables: frequency (% of total)]
| Variable | Whole sample ( | Type-2 diabetes cases ( | Non-type-2 diabetes controls ( |
| |
|---|---|---|---|---|---|
| Age (years) | 59.3 (±15.9) | 63.9 (±9.9) | 57.4 (±17.4) | 0.008 | |
| Male Gender (%) | 87 (42.9 %) | 38 (66.7 %) | 49 (33.6 %) | <0.001 | |
| Body Mass Index (BMI; kg/m2)a | 25.1 (±4.5) | 28.6 (±5.3) | 23.7 (±3.3) | <0.001 | |
| Overweight/Obese BMI (%)b | 84 (41.8 %) | 42 (73.7 %) | 42 (29.2 %) | <0.001 | |
| Smoking (% yes) | 21 (10.3 %) | 9 (15.8 %) | 12 (8.2 %) | 0.127 | |
| Alcohol Intake (% yes)c | 78 (38.4 %) | 16 (28.1 %) | 62 (42.5 %) | 0.077 | |
| Long-Term Medication (% yes) | 129 (63.5 %) | 55 (96.5 %) | 74 (50.7 %) | <0.001 | |
| Oral Medication for Diabetes (% yes) | 42 (20.7 %) | 42 (73.7 %) | 0 (0 %) | <0.001 | |
| Insulin Injections for Diabetes (% yes) | 19 (9.4 %) | 19 (33.3 %) | 0 (0 %) | <0.001 | |
| Contraceptive Pill (% yes) | 9 (4.4 %) | 0 (0 %) | 9 (6.2 %) | 0.064 | |
| Total Habitual Caffeine Intake (mg/day)d | 295.8 (±158.1) | 365.2 (±191.3) | 268.7 (±134.4) | <0.001 | |
| Caffeine from Coffee (mg/day)d, e | 240.3 (±162.2) | 306.9 (±195.7) | 214.3 (±139.4) | 0.001 | |
| Higher Habitual Caffeine Intake (% yes)f | 64 (31.5 %) | 28 (49.1 %) | 36 (24.7 %) | 0.001 | |
| Salivary Caffeine Concentration (μmol/l)d | 11.0 (±7.7) | 11.9 (±8.2) | 10.6 (±7.6) | 0.259 | |
| Salivary Paraxanthine Concentration (μmol/l)d | 5.2 (±3.4) | 6.0 (±3.4) | 4.9 (±3.4) | 0.024 | |
| Time between saliva sample and final caffeine portion (h) | 6.7 (±2.6) | 5.8 (±2.6) | 7.1 (±2.5) | 0.001 | |
| Gene Cytochrome P450-1A2 ( | |||||
| Allele Frequency (%) | A | 276 (69.0 %) | 83 (74.1 %) | 193 (67.0 %) | 0.186 |
| C | 124 (31.0 %) | 29 (25.9 %) | 95 (33.0 %) | ||
| Genotype Frequency (%) | 0.036 | ||||
| A/A | 97 (48.5 %) | 34 (60.7 %) | 63 (43.8 %) | 0.040 | |
| C/A | 82 (41.0 %) | 15 (26.8 %) | 67 (46.5 %) | 0.011 | |
| C/C | 21 (10.5 %) | 7 (12.5 %) | 14 (9.7 %) | 0.610 | |
| Enzyme Inducibility (%) | High | 97 (48.5 %) | 34 (60.7 %) | 63 (43.8 %) | 0.040 |
| Less | 103 (51.5 %) | 22 (39.3 %) | 81 (56.3 %) | ||
Abbreviations T2D type-2 diabetes, Non-T2D non-type-2 diabetes, Data for continuous variables are means (± standard deviation) of raw data. P-values (2-tailed) were calculated using independent samples t-tests, comparing T2D and Non-T2D groups, on raw data. If raw data was abnormally distributed, the data was transformed to achieve a normal distribution before the t-test was applied (method of transformation noted in legend). Data for categorical variables are frequencies (%). P-values (exact; 2-tailed) were calculated using Fisher’s exact test
aRaw data transformation: Log10; T2D (n = 57); Non-T2D (n = 144). bOverweight/Obese BMI >24.9 vs. Underweight/Healthy BMI ≤24.9; T2D (n = 57); Non-T2D (n = 144). cConsume 3 or more alcoholic drinks per week. dRaw data transformation: Square root. eIncludes caffeine from decaffeinated coffee (4.5 mg/cup). fHigher habitual caffeine intake (> Swiss average of 288 mg/day) vs. Lower/Normal habitual caffeine intake (≤ Swiss average). gSNP ID: rs762551. T2D (n = 56); Non-T2D (n = 144). Highly inducible = genotype A/A. Less inducible = genotypes A/C and C/C
Independent samples t-tests comparing time-corrected paraxanthine/caffeine ratios by age, body mass index, caffeine intake, contraceptive pill, CYP1A2 inducibility, gender, insulin administration, long-term medication, smoking status
| Group | N | Time-corrected paraxanthine/caffeine ratio |
| |
|---|---|---|---|---|
| Age | ≤59.3 years | 77 | 0.604 (±0.364) | 0.290 |
| >59.3 years | 126 | 0.561 (±0.438) | ||
| BMI | ≤24.9 kg/m2 | 117 | 0.560 (±0.415) | 0.580 |
| >24.9 kg/m2 | 84 | 0.603 (±0.408) | ||
| Caffeine Intake | ≤288 mg/day | 139 | 0.535 (±0.431) | 0.010 |
| >288 mg/day | 64 | 0.669 (±0.350) | ||
| Contraceptive Pill | No | 194 | 0.579 (±0.417) | 0.979 |
| Yes | 9 | 0.545 (±0.282) | ||
|
| Less (C/A and C/C genotypes) | 103 | 0.552 (±0.430) | 0.284 |
| High (A/A genotype) | 97 | 0.609 (±0.394) | ||
| Gender | Male | 87 | 0.631 (±0.467) | 0.237 |
| Female | 116 | 0.537 (±0.360) | ||
| Insulin Administration | No | 184 | 0.557 (±0.414) | 0.016 |
| Yes | 19 | 0.770 (±0.336) | ||
| Medication | No | 74 | 0.510 (±0.311) | 0.187 |
| Yes | 129 | 0.616 (±0.456) | ||
| Smoking Status | Non Smoking | 182 | 0.573 (±0.410) | 0.896 |
| Smoking | 21 | 0.617 (±0.430) |
Values are given as mean (±SD). Independent samples t-tests were applied to time-corrected paraxanthine/caffeine ratios transformed by square root to approximate a normal distribution. Statistical data reported assumed equal variances. P-values reflected a 2-tailed test. Results are reported to 3 decimal places
Multiple regression analysis to predict the paraxanthine/caffeine ratio (N = 203)
| Model summary | Covariates | Unstandardized coefficients | Standardized coefficients |
| |
|---|---|---|---|---|---|
| B | Std. error | Beta | |||
| T2D status (Ref: non-T2D) | 0.088 | 0.043 | 0.146 | 0.040 | |
| Higher caffeine intake | 0.085 | 0.041 | 0.146 | 0.041 | |
| R2 | 0.053 | ||||
| Adjusted R2 | 0.043 | ||||
| Model ANOVA |
| ||||
Abbreviations: Ref reference, T2D type-2 diabetes, Non-T2D non-type-2 diabetes
Table represents multiple regression analysis to predict the corrected paraxanthine/caffeine ratio. The 2 predictor variables were entered simultaneously. Continuous variables were raw data transformed by square root to achieve a normal distribution (corrected paraxanthine/caffeine ratio). Categorical variables were binary (T2D status, higher caffeine intake). [‘Higher’ caffeine intake > 288 mg/day (Swiss daily average caffeine intake)]