Literature DB >> 28744152

Pharmacodynamic genetic polymorphisms affect adverse drug reactions of haloperidol in patients with alcohol-use disorder.

Mikhail Sergeevich Zastrozhin1,2, Vadim Markovich Brodyansky3, Valentin Yurievich Skryabin4, Elena Anatolievna Grishina5, Dmitry Vladimirovich Ivashchenko5, Kristina Anatolievna Ryzhikova5, Ludmila Mikhaylovna Savchenko1, Alexander Olegovich Kibitov3, Evgeny Alekseevich Bryun1,4, Dmitry Alekseevich Sychev6.   

Abstract

BACKGROUND: Antipsychotic action of haloperidol is due to blockade of D2 receptors in the mesolimbic dopamine pathway, while the adverse drug reactions are associated with striatal D2 receptor blockade. Contradictory data concerning the effects of genetic polymorphisms of genes encoding these receptors and associated structures (catechol-O-methyltransferase [COMT], glycine transporter and gene encoding the density of D2 receptors on the neuronal membrane) are described.
OBJECTIVE: The objectives of this study were to evaluate the correlation between DRD2, SLC6A3 (DAT) and COMT genetic polymorphisms and to investigate their effect on the development of adverse drug reactions in patients with alcohol-use disorder who received haloperidol. PATIENTS AND METHODS: The study included 64 male patients (average age 41.38 ± 10.14 years, median age 40 years, lower quintile [LQ] 35 years, upper quintile [UQ] 49 years). Bio-Rad CFX Manager™ software and "SNP-Screen" sets of "Syntol" (Russia) were used to determine polymorphisms rs4680, rs1800497, rs1124493, rs2242592, rs2298826 and rs2863170. In every "SNP-Screen" set, two allele-specific hybridizations were used, which allowed to determine two alleles of studied polymorphism separately on two fluorescence channels.
RESULTS: Results of this study detected a statistically significant difference in the adverse drug reaction intensity in patients receiving haloperidol with genotypes 9/10 and 10/10 of polymorphic marker SLC6A3 rs28363170. In patients receiving haloperidol in tablets, the increases in the UKU Side-Effect Rating Scale (UKU) score of 9.96 ± 2.24 (10/10) versus 13 ± 2.37 (9/10; p < 0.001) and in the Simpson-Angus Scale (SAS) score of 5.04 ± 1.59 (10/10) versus 6.41 ± 1.33 (9/10; p = 0.006) were revealed.
CONCLUSION: Polymorphism of the SCL6A3 gene can affect the safety of haloperidol, and this should be taken into account during the choice of drug and its dosage regimen.

Entities:  

Keywords:  COMT; DAT; DRD2; alcohol addiction; alcohol-use disorder; haloperidol; pharmacogenetics

Year:  2017        PMID: 28744152      PMCID: PMC5511016          DOI: 10.2147/PGPM.S140700

Source DB:  PubMed          Journal:  Pharmgenomics Pers Med        ISSN: 1178-7066


Background

Haloperidol is a butyrophenone-derivative antipsychotic medication. Guidelines recommend haloperidol for treatment of alcohol-use disorders in patients with alcohol-related psychosis.1,2 According to the Russian protocols of medical care, the main indication for haloperidol treatment in patients with substance-use disorders is the exacerbation of craving to psychoactive substances with psychomotor agitation.22 The use of haloperidol can cause a variety of adverse drug reactions (dystonia, tremor, rigidity, akinesia, akathisia, etc.). Antipsychotic action of haloperidol is due to blockade of D2 receptors in the mesolimbic dopamine pathway, while the adverse drug reactions are associated with striatal D2 receptors blockade. Dopamine D2 receptors are encoded by the DRD2 gene. It is known that Taq1A polymorphism (rs1800497; g.32806C>T) of the DRD2 gene reduces density of striatal D2 receptors and probably changes their affinity.18 The results of both in vitro23 and in vivo19 studies indicate a 40% reduction in the density of striatal D2 receptors in the carriers of mutant T allele (also called A1 allele) of the Taq1A polymorphism (rs1800497). Mutant T-allele carriers have a lower risk of dyskinesia development. The results of two meta-analyses showed an increased frequency of late dyskinesia development in patients with allele C (A2) in comparison with the mutant T-allele carriers.3,27 At the same time, individuals with one C allele had a 30% increased risk of dyskinesia development, while the carriers of two C alleles conferred a 30% more risk. Therefore, homozygous CC individuals have an increased risk of late dyskinesia development compared to homozygous TT patients. The dopamine transporter (encoded by SCL6A3 or DAT1 gene) is a transmembrane transporter that clears dopamine from the synaptic cleft. DAT-gene polymorphisms change the dopamine concentration in the synaptic cleft and affect the nerve impulse transmission. It was found that individuals with clinical signs of late dyskinesia have lower levels of transport protein.26 Currently, rs28363170 polymorphism of the SCL6A3 gene is mostly explored. It has been shown by Guzey et al8 that patients with different allelic variations of this polymorphism have different rates of ADR development. However, the results of population studies in Jewish and Indian populations revealed no correlation between DAT1-gene polymorphisms and late dyskinesia development.9,20 Later, it was confirmed in other population studies.13,25 Another dopamine-related gene examined in several pharmacogenetic studies of late dyskinesia is the gene encoding catechol-O-methyltransferase (COMT). Basically, dopamine is removed from the synaptic cleft by the process of presynaptic reuptake, but it can also be degraded by COMT.15 Additionally, this secondary mechanism of dopamine degradation by COMT is dominating in the frontal cortex. One of the functional polymorphisms in the COMT gene that codes COMT is rs4680 (Val158Met) polymorphism coding an amino acid change from valine (val) to methionine (met) at codon 158. The frequency of the met allele of the COMT polymorphism in different ethnic groups is 36%–48%. It was shown that the presence of the met allele decreases the COMT activity by 25% compared to the val-containing enzyme activity.12 This results in lower synaptic dopamine concentrations in val-allele carriers due to their rapid degradation. The blockade of dopamine receptors by antipsychotics is followed by compensatory increases in receptor density and resulting hypersensitivity, which leads to dyskinesia development. As val-allele carriers have lower synaptic dopamine concentrations, the use of antipsychotics further reduces dopamine receptor binding. This results in compensatory response with subsequent dyskinesia. The results of population studies in Japanese and Chinese populations revealed no correlation between Val108Met and extrapyramidal disorders.14,24 The results of meta-analysis4 of five studies with 1,089 patients (382 suffering from late dyskinesia and 707 with no extrapyramidal disorders) showed that met-allele carriers have a lower risk of late dyskinesia development (odds ratio [OR] = 0.66). The authors concluded that patients with val/val genotype have a 51% increased risk of late dyskinesia development. This polymorphism was also explored in the context of acute extrapyramidal disorders.29 The effect of genes encoding other enzymes involved in dopamine metabolism (such as monoamine oxidase A and B) on the development of extrapyramidal disorders was also studied, but it was not confirmed in the clinical studies in Japanese and European populations.14,16 The objective of this study was to evaluate the correlation between the DRD2, SLC6A3 (DAT) and COMT genetic polymorphisms and the development of adverse drug reactions in patients with alcohol-use disorder who received haloperidol.

Patients and methods

The study included 64 male patients (average age 41.38 ± 10.14 years; median age 40 years, lower quantile [LQ] 35 years; upper quantile [UQ] 49 years) with alcohol-use disorder who were hospitalized in Moscow Research and Practical Centre on Addictions of the Moscow Department of Healthcare. During the exacerbation of compulsive alcohol use, patients received haloperidol in tablets (manufactured by LLC “OZON”, Ghigulevsk, Russia) at a dose of 5.0 [Q1 and Q3: 3.0; 6.0] mg per day (44 patients, single use) and injections (manufactured by CAC “Bryntsalov-A”, Moscow, Russia) at a dose of 5.0 [Q1 and Q3: 5.0; 5.0] mg per day (19 patients, single use). The inclusion criteria were 5-day haloperidol therapy in tablets or injections and age of 18–75 years. The exclusion criteria were presence of any other antipsychotics in the treatment regimen, creatinine clearance values <50 mL/min, creatinine concentration in plasma ≥1.5 mg/dL (133 Umol/L), body weight <60 kg or >100 kg and presence of any contraindications for haloperidol use. Venous blood samples collected in vacuum tubes VACU-ETTE® (Greiner Bio-One, Kremsmuenster, Austria) on the sixth day of the haloperidol therapy were used for genotyping. The real-time polymerase chain reaction was performed using DNA amplifiers “Dtlite” of DNA Technology (Moscow, Russia). CFX96 Touch Real Time System with CFX Manager software of Bio-Rad Laboratories Inc. (Hercules, CA, USA) and “SNP-screen” sets of “Syntol” (Moscow, Russia) were used to determine polymorphisms rs4680, rs1800497, rs1124493, rs2242592, rs2298826 and rs2863170. In every “SNP-screen” set, two allele-specific hybridizations were used, which allowed to determine two alleles of studied polymorphism separately on two fluorescence channels. The haloperidol efficacy was evaluated using the Scale of Pathological Addiction (SoPA), and the haloperidol safety was evaluated using the UKU Side-Effect Rating Scale (UKU) and Simpson-Angus Scale (SAS) for extrapyramidal symptoms. Scaling was performed the day before the haloperidol therapy and after 5-day therapy. A higher difference in scale scores indicated a decreased safety of the therapy. Statistical analysis of the results was performed with non-parametric methods using the “Statistica v.10.0” software (StatSoft; Dell Statistica, Tulsa, OK, USA). The normality of sample distribution was evaluated using the Shapiro–Wilk W-test and was taken into account when choosing a method. The differences were considered as statistically significant at p < 0.05 (statistical power in excess of 80%). To compare two independent groups of patients with different genotypes, Mann–Whitney U-test was used. All quantitative data are shown as arithmetic mean ± standard deviation (M ± SD) or median (lower quintile; upper quintile) (Me [LQ; UQ]). This research was approved by the ethics committee of Peoples’ Friendship University of Russia, and all patients provided informed consent.

Results

Genotyping results are shown in Table 1.
Table 1

Genotypes and allele frequencies of COMT, DRD2, SLC6A5 and SLC6A3 polymorphisms in patients treated with haloperidol

Polymorphismsn%n%n%n%n%H–W equilibrium
COMT (rs4680)GGGAAAGAχ2p
142231491829594767530.0090.925
DRD2 (rs1800497)CCCTTTCTχ2p
41652032231028124190.02540.815
DRD2 (rs1124493)TTTGGGTGχ2p
5830482844403286680.6150.433
DRD2 (rs2242592)GGGAAAGAχ2p
5830482844403286680.6150.433
SLC6A5 (rs2298826)AAAGGGAGχ2p
8132946264145368164<0.0010.984
SLC6A3* (DAT) (rs28363170)10/109/109/9109χ2p
3354264323927530251.3590.244

Note:

Two patients with genotypes 6/10 and 7/10 of polymorphic marker rs28363170 of gene SLC6A3 have been excluded from the analysis.

Abbreviation: H–W, Hardy–Weinberg.

The results of psychometric tests and efficacy scaling are shown in Table 2.
Table 2

Results of psychometric investigation of patients (efficacy and safety of haloperidol)

ScaleBefore the therapyAfter the therapyDynamicsp-values*
All patients
SoPA24.29 ± 3.0813.54 ± 3.19−10.78 ± 1.35<0.001
UKU8.52 ± 3.3919.9 ± 2.2811.38 ± 2.74<0.001
SAS2.6 ± 1.688.13 ± 1.115.57 ± 1.58<0.001
Group who received haloperidol in tablet form
SoPA24.11 ± 3.0613.43 ± 3.25–10.7 ± 1.44<0.001
UKU8.64 ± 3.4319.8 ± 2.4311.18 ± 2.74<0.001
SAS2.77 ± 1.748.18 ± 1.215.48 ± 1.69<0.001
Group who received haloperidol in injection form
SoPA24.68 ± 3.1613.79 ± 3.12–10.95 ± 1.13<0.001
UKU8.26 ± 3.3620.16 ± 1.9511.84 ± 2.75<0.001
SAS2.21 ± 1.518 ± 0.885.79 ± 1.32<0.001

Notes:

t-test for dependent variables. Data presented as mean ± SD.

Abbreviations: SoPA, Scale of Pathological Addiction; UKU, UKU Side-Effect Rating Scale; SAS, Simpson-Angus Scale.

Data concerning comparison of haloperidol efficacy and safety in patients with different genotypes of polymorphic markers are shown in Table 3 (for patients taking haloperidol in tablets) and Table 4 (for patients taking haloperidol in injections).
Table 3

Differences in efficacy and safety of haloperidol in patients with different genotypes who received haloperidol in the tablet form

PolymorphismsnAAnABp*nBBnABp*nAAnBBp*
COMT (rs4680)GGGAAAGAGGAA
SoPA12−10.83 ± 1.1122−10.36 ± 1.790.41610−11.3 ± 0.4822−10.36 ± 1.790.11612−10.83 ± 1.1110−11.3 ± 0.480.234
UKU1211.67 ± 3.392210.95 ± 2.460.4861011.1 ± 2.692210.95 ± 2.460.8811211.67 ± 3.391011.1 ± 2.690.673
SAS126.25 ± 1.91225.14 ± 1.640.084105.3 ± 1.34225.14 ± 1.640.785126.25 ± 1.91105.3 ± 1.340.201
DRD2 (rs1800497)CCCTTTCTCCTT
SoPA29−10.79 ± 1.6315−10.53 ± 0.990.577015−10.53 ± 0.9929−10.79 ± 1.630
UKU2911.07 ± 2.61511.4 ± 3.070.70901511.4 ± 3.072911.07 ± 2.60
SAS295.59 ± 1.78155.27 ± 1.530.5590155.27 ± 1.53295.59 ± 1.780
DRD2 (rs1124493)TTTGGGTGTTGG
SoPA3−11.33 ± 0.5824−10.88 ± 1.120.49617−10.35 ± 1.8724−10.88 ± 1.120.2703−11.33 ± 0.5817−10.35 ± 1.870.389
UKU38.67 ± 1.152411.25 ± 2.880.1421711.53 ± 2.62411.25 ± 2.880.75238.67 ± 1.151711.53 ± 2.60.082
SAS35.33 ± 1.53245.63 ± 1.880.800175.29 ± 1.49245.63 ± 1.880.55135.33 ± 1.53175.29 ± 1.490.967
DRD2 (rs2242592)GGGAAAGAGGAA
SoPA3−11.33 ± 0.5824−10.88 ± 1.120.49617−10.35 ± 1.8724−10.88 ± 1.120.2703−11.33 ± 0.5817−10.35 ± 1.870.389
UKU38.67 ± 1.152411.25 ± 2.880.1421711.53 ± 2.62411.25 ± 2.880.75238.67 ± 1.151711.53 ± 2.60.082
SAS35.33 ± 1.53245.63 ± 1.880.800175.29 ± 1.49245.63 ± 1.880.55135.33 ± 1.53175.29 ± 1.490.967
SLC6A5 (rs2298826)AAAGGGAGAAGG
SoPA4−11.25 ± 0.521−11 ± 1.050.64919−10.26 ± 1.8221−11 ± 1.050.1214−11.25 ± 0.519−10.26 ± 1.820.302
UKU411.25 ± 2.362110.52 ± 2.980.6511911.89 ± 2.472110.52 ± 2.980.123411.25 ± 2.361911.89 ± 2.470.638
SAS46 ± 1.83215.67 ± 1.620.715195.16 ± 1.77215.67 ± 1.620.34946 ± 1.83195.16 ± 1.770.399
SLC6A3 (DAT) (rs28363170)10/109/109/99/1010/109/9
SoPA25−10.44 ± 1.3617−11.18 ± 1.380.0941−8.0017−11.18 ± 1.380.04025−10.44 ± 1.361−80.090
UKU259.96 ± 2.241713 ± 2.370.000114.001713 ± 2.370.687259.96 ± 2.241140.090
SAS255.04 ± 1.59176.41 ± 1.330.00612.00176.41 ± 1.330.005255.04 ± 1.59120.074

Notes:

Benjamin-Hogberg’s test (for multiple comparison of independent variables). Bold represents statistically significant values (p-value<0.05).

Abbreviations: SoPA, Scale of Pathological Addiction; UKU, UKU Side-Effect Rating Scale; SAS, Simpson-Angus Scale.

Table 4

Differences in efficacy and safety of haloperidol in patients with different genotypes who received haloperidol in the injection form

PolymorphismsnAAnABp*nBBnABp*nAAnBBp*
COMT (rs4680)GGGAAAGAGGAA
SoPA8−10.88 ± 0.839−10.78 ± 1.390.2652−12 ± 09−10.78 ± 1.390.8668−10.88 ± 0.832−12 ± 00.106
UKU812.13 ± 3.6911.22 ± 1.990.179213.5 ± 2.12911.22 ± 1.990.525812.13 ± 3.6213.5 ± 2.120.628
SAS86.25 ± 1.4995.33 ± 1.120.47926 ± 1.4195.33 ± 1.120.16986.25 ± 1.4926 ± 1.410.836
DRD2 (rs1800497)CCCTTTCTCCTT
SoPA12−10.83 ± 1.115−11.4 ± 1.340.3812−10.5 ± 0.715−11.4 ± 1.340.42612−10.83 ± 1.112−10.5 ± 0.710.695
UKU1212.25 ± 2.45510.6 ± 2.970.252212.5 ± 4.95510.6 ± 2.970.5401212.25 ± 2.45212.5 ± 4.950.907
SAS125.83 ± 1.3455.4 ± 1.140.53726.5 ± 2.1255.4 ± 1.140.389125.83 ± 1.3426.5 ± 2.120.550
DRD2 (rs1124493)TTTGGGTGTTGG
SoPA2−10 ± 06−11.33 ± 1.630.31511−10.91 ± 0.836−11.33 ± 1.630.4832−10 ± 011−10.91 ± 0.830.389
UKU211 ± 0610.5 ± 3.390.8501112.73 ± 2.41610.5 ± 3.390.135211 ± 01112.73 ± 2.410.082
SAS26.5 ± 2.1265.33 ± 0.520.197115.91 ± 1.5165.33 ± 0.520.38626.5 ± 2.12115.91 ± 1.510.967
DRD2 (rs2242592)GGGAAAGAGGAA
SoPA2−10 ± 06−11.33 ± 1.630.31511−10.91 ± 0.836−11.33 ± 1.630.4832−10 ± 011−10.91 ± 0.830.164
UKU211 ± 0610.5 ± 3.390.8501112.73 ± 2.41610.5 ± 3.390.135211 ± 01112.73 ± 2.410.350
SAS26.5 ± 2.1265.33 ± 0.520.197115.91 ± 1.5165.33 ± 0.520.38626.5 ± 2.12115.91 ± 1.510.636
SLC6A5 (rs2298826)AAAGGGAGAAGG
SoPA4−10.5 ± 0.588−10.88 ± 1.460.6377−11.29 ± 0.958−10.88 ± 1.460.5364−10.5 ± 0.587−11.29 ± 0.950.172
UKU413 ± 2.16811.25 ± 2.60.276711.86 ± 3.34811.25 ± 2.60.699413 ± 2.16711.86 ± 3.340.558
SAS46.25 ± 1.2685.38 ± 1.060.23276 ± 1.6385.38 ± 1.060.38946.25 ± 1.2676 ± 1.630.799
SLC6A3 (DAT) (rs28363170)10/109/109/99/1010/109/9
SoPA8−11 ± 1.519−10.89 ± 0.930.8561−11.009−10.89 ± 0.930.9128−11 ± 1.511−111.000
UKU89.5 ± 2.07913.78 ± 1.860.000113.00913.78 ± 1.860.70189.5 ± 2.071130.155
SAS85.38 ± 1.1996.11 ± 1.540.29116.0096.11 ± 1.540.94785.38 ± 1.19160.635

Notes:

Benjamin-Hogberg’s test (for multiple comparison of independent variables). Bold represents statistically significant value (p-value<0.05).

Abbreviations: SoPA, Scale of Pathological Addiction; UKU, UKU Side-Effect Rating Scale; SAS, Simpson-Angus Scale.

Discussion

Numerous pharmacogenetic studies of haloperidol have been conducted. Some of them confirm that genetic polymorphisms affect pharmacodynamics and pharmacokinetics of medication influencing the personal response to haloperidol, whereas some refute that. The results of this study detected a statistically significant difference in the safety of haloperidol therapy in patients with genotypes 9/10 and 10/10 of polymorphic marker SLC6A3 rs28363170 receiving haloperidol for 5 days. This finding coincides with the results of two previously conducted studies in patients with schizophrenia.8,29 On the other hand, our results contrast with those obtained in some other studies.9,13,20,25 What are the reasons of these differences? Many relevant factors can affect gene expression, e.g., gender, race, concomitant therapy, diet, etc. For instance, the study conducted by Segman et al20 included the patients of Jewish population, whereas that conducted by Hori et al9 enrolled the Indian patients. This could affect not only the phenotype itself. It is important to note that the results of our study revealed no statistically significant difference in the efficacy of haloperidol therapy in patients with genotypes 9/10 and 10/10 (p = 0.094 and p = 0.856 for tablets and injections, respectively). This could be attributed to the changes in the density of D2 receptors in the extrapyramidal system only (but not in the mesolimbic system11,19,23) or to the low sensitivity of the scale used for efficacy assessment. For other genes, the results of our study revealed no statistically significant differences among patients. In particular, there was no statistical significance of the rs4680 polymorphism of the COMT gene encoding the COMT synthesis. The results coincide with those obtained in other studies,14,24 although they differ from the conclusion of the meta-analysis.4 One of the probable reasons of this can be different population characteristics of the patients, especially different diagnoses: patients included in our study suffered from alcohol-use disorder, whereas meta-analysis included data obtained from the patients with schizophrenia. Why is it so important? According to meta-analysis data,10 a poorer performance on the continuous performance test and more small frontal and temporal brain areas have been associated with a COMT Val158Met polymorphism in patients with schizophrenia. The authors suggest that val allele contributes to the development of the brain structural changes, which can be the substrate of underlying performance of continuous performance test. The results of our study obtained for the DRD2 gene demonstrate no statistically significant difference between rs1800497, rs1124493 and rs2242592 polymorphisms. They coincide with the results of the majority of studies exploring correlation between the polymorphism of this gene and haloperidol efficacy and safety.5,7,17,29 We also explored the rs2298826 polymorphism of the SLC6A5 gene encoding a glycine transporter synthesis in the brain. One study6 revealed a strong statistical significance of acute ADR development in patients with schizophrenia receiving haloperidol (p = 0.0002). We found no other studies exploring the correlation between the SLC6A5 polymorphism and haloperidol efficacy and safety. In our study, we revealed no statistically significant difference. This could imply that changes in the synaptic glycine transporter activity in patients with alcohol-use disorder receiving haloperidol have no effect on haloperidol efficacy and safety. It is important to note that pharmacokinetics can also affect the personal response to haloperidol. In our previous works, we showed the effect of CYP2D6 polymorphism (and its activity)21 and the activity of CYP3A428 on haloperidol efficacy and safety. Thus, the adjustment of optimal haloperidol dose is a complex task, demanding the consideration of not only clinicodemographic factors but the pharmacogenetics also (polymorphism of the SCL6A3 gene and genes encoding the isoenzymes of haloperidol biotransformation).

Conclusion

Polymorphism of the SCL6A3 gene can affect the safety of haloperidol, and this should be taken into account during the choice of drug and its dosage regimen.
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