Submitted:
01 August 2024
Posted:
02 August 2024
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Abstract
Keywords:
1. Introduction
2. Results and Discussion
2.1. Basic Demographic Information of the Study Subjects
2.2. Association between Severity of BUD and Their Follow-Up of Y-BOCS-BQ
2.3. Association between MAOA Gene Polymorphism (rs5953210) and Follow-Up of Y-BOCS-BQ Scores in Betel-Quid Use Disorder Patients
2.4. Differential Treatment Response Based on Y-BOCS-BQ Scores and Severity of BUD in Antidepressant and Placebo Groups
2.5. Differential Response of MAOA Gene Polymorphism on Antidepressant Treatment Efficacy and Craving Severity in BUD
2.6. Discussion
2.7. Study Limitations
3. Materials and Methods
3.1. Study Participants
3.2. Psychometric Measures of Addiction Severity
3.3. DNA Extraction and Genotyping
3.4. Methods of Statistical Analysis
4. Conclusions
Significance Statement
Authorship Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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| Variables | Treatment Group (N=35) | Placebo Group (N=15) | |
|---|---|---|---|
| Mean (SD) | Mean (SD) | P-Value | |
| Age | 44.34 (8.93) | 43.07 (8.40) | 0.64 |
| Days of BQ Consumption | 5.54 (2.33) | 6.13 (1.81) | 0.39 |
| BQ Amount | 50.97 (55.73) | 36.27 (39.64) | 0.36 |
| DSM-5 BQ | 6.57 (2.50) | 6.80 (2.54) | 0.77 |
| DSM-5 Tobacoo | 7.26 (2.80) | 6.00 (3.85) | 0.20 |
| DSM-5 Alcohol | 2.74 (3.62) | 2.47 (3.58) | 0.81 |
| SUSRS BQ | 13.31 (5.40) | 13.47 (4.02) | 0.92 |
| SUSRS Tobacoo | 13.60 (4.53) | 12.67 (5.65) | 0.54 |
| SUSRS Alcohol | 6.34 (6.83) | 6.00 (7.76) | 0.88 |
| Y-BOCS-BQ Week 0 | 28.37 (9.84) | 29.73 (8.48) | 0.64 |
| Y-BOCS-BQ Week 2 | 21.74 (15.61) | 22.07 (10.91) | 0.94 |
| Y-BOCS-BQ Week 4 | 18.20 (15.70) | 15.93 (9.38) | 0.61 |
| Y-BOCS-BQ Week 6 | 18.00 (16.10) | 15.87 (15.04) | 0.66 |
| Y-BOCS-BQ Week 8 | 15.97 (17.79) | 18.40 (16.60) | 0.65 |
| Varibles | Severe BUD (N=34) | Non-Severe BUD (N=16) | P-value |
|---|---|---|---|
| Y-BOCS-BQ Week 0 | 31.6 (8.5) | 22.7 (8.3) | 0.0011** |
| Y-BOCS-BQ Week 2 | 24.6 (14.7) | 16 (11.6) | 0.0457* |
| Y-BOCS-BQ Week 4 | 20.5 (16.6) | 11.2 (10.1) | 0.0272* |
| Y-BOCS-BQ Week 6 | 17.7 (16.6) | 16.6 (14) | 0.8227 |
| Y-BOCS-BQ Week 8 | 18.7 (18.4) | 12.4 (14.4) | 0.2292 |
| rs5953210 | |||
| Varibles | AA (n=22) | GG (n=28) | |
| Mean (SD) | Mean (SD) | P-value | |
| Y-BOCS-BQ Week 0 | 27.0 (9.8) | 30.2 (8.9) | 0.2266 |
| Y-BOCS-BQ Week 2 | 16.6 (13.1) | 26.0 (13.9) | 0.0194* |
| Y-BOCS-BQ Week 4 | 11.7 (12.1) | 22.1 (13.9) | 0.0078** |
| Y-BOCS-BQ Week 6 | 11.9 (13.7) | 21.6 (15.9) | 0.0277* |
| Y-BOCS-BQ Week 8 | 11.0 (15) | 21.2 (17.7) | 0.0376* |
| TreatmentGroup | Placebo Group | |||||
| Severe(n=23) | Non-Severe (n=12) | Severe (n=11) | Non-Severe (n=4) | |||
| Mean (SD) | Mean (SD) | P-value | Mean (SD) | Mean (SD) | P-value | |
| Y-BOCS-BQ Week 0 | 32.2 (9.3) | 21 (6.1) | 0.0006** | 30.5 (7.0) | 27.8 (12.9) | 0.6037 |
| Y-BOCS-BQ Week 2 | 24.7 (16.5) | 16.1 (12.5) | 0.1229 | 24.4 (10.7) | 15.8 (9.9) | 0.1857 |
| Y-BOCS-BQ Week 4 | 21.5 (16.8) | 11.8 (11.4) | 0.0829 | 18.4 (9.4) | 9.3 (5.7) | 0.0969 |
| Y-BOCS-BQ Week 6 | 20.1 (17.9) | 14.0 (11.5) | 0.2952 | 12.7 (12.9) | 24.5 (19.2) | 0.1898 |
| Y-BOCS-BQ Week 8 | 18.4 (19.4) | 11.3 (13.8) | 0.2629 | 19.4 (17.0) | 15.8 (17.6) | 0.7238 |
| TreatmentGroup | Placebo Group | |||||
| AA (n=15) | GG (n=20) | AA (n=7) | GG (n=8) | |||
| Mean (SD) | Mean (SD) | P-value | Mean (SD) | Mean (SD) | P-value | |
| Y-BOCS-BQ Week 0 | 26.2 (10.7) | 30 (9.1) | 0.2644 | 28.6 (8.0) | 30.8 (9.3) | 0.6374 |
| Y-BOCS-BQ Week 2 | 15.3 (14.7) | 26.6 (14.7) | 0.0313* | 19.4 (8.9) | 24.4 (12.5) | 0.4011 |
| Y-BOCS-BQ Week 4 | 10.8 (13.7) | 23.8 (15.0) | 0.0134* | 13.6 (8.0) | 18 (10.5) | 0.3814 |
| Y-BOCS-BQ Week 6 | 9.7 (11.4) | 24.3 (16.5) | 0.0061** | 16.7 (17.7) | 15.1 (13.5) | 0.8469 |
| Y-BOCS-BQ Week 8 | 8.3 (13.5) | 21.8 (18.7) | 0.0241* | 16.9 (18.3) | 19.8 (16.0) | 0.7498 |
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