| Literature DB >> 30348181 |
Christiana Bagusat1, Angela Kunzler2,3, Jennifer Schlecht2, Andreas G Franke4, Andrea Chmitorz2,3, Klaus Lieb2,3.
Abstract
BACKGROUND: Pharmacological neuroenhancement (PNE) refers to the use of psychoactive substances without doctor's prescription to enhance cognitive performance or to improve mood. Although some studies have reported that drugs for PNE are also being used to cope with stressful life situations, nothing is known about the relationship of PNE and resilience, i.e. the ability to recover from stress. This study aimed at investigating the relationship of PNE and resilience in the first representative population sample.Entities:
Keywords: Illicit drugs; Pharmacological neuroenhancement; Prescription drugs; Resilience; Stress coping
Mesh:
Substances:
Year: 2018 PMID: 30348181 PMCID: PMC6198480 DOI: 10.1186/s13011-018-0174-1
Source DB: PubMed Journal: Subst Abuse Treat Prev Policy ISSN: 1747-597X
Sociodemographic characteristics for users and non-users in the representative survey of the German population
| Any medication or drug ( | Non-User ( | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Weighteda | Unweighted | Weighteda | Unweighted | ||||||
| % (n) | 95% CI | % (n) | % (n) | 95% CI | % (n) | ||||
| min | max | min | max | ||||||
| Age | 47.7 (17.7) | 46.0 | 49.3 | 48.0 (17.6) | 53.4 (18.1) | 52.0 | 54.8 | 52.9 (17.9) | 0.01 |
| Gender | 0.06 | ||||||||
| Male | 51.7 (225) | 47.0 | 56.4 | 49.9 (217) | 46.0 (316) | 42.3 | 49.7 | 45.9 (315) | |
| Female | 48.3 (210) | 43.6 | 53.0 | 50.1 (218) | 54.0 (371) | 50.3 | 57.7 | 54.1 (372) | |
| Education | 0.82 | ||||||||
| No formal degree | 1.4 (6) | 0.3 | 2.5 | 1.2 (5) | 1.6 (11) | 0.7 | 2.6 | 1.3 (9) | |
| Secondary modern schoolb | 31.3 (133) | 26.9 | 35.7 | 24.4 (104) | 33.2 (227) | 29.7 | 36.8 | 26.1 (178) | |
| Middle schoolc | 30.4 (129) | 25.9 | 34.7 | 31.5 (134) | 30.9 (211) | 27.4 | 34.4 | 31.2 (213) | |
| University-entrance diplomad | 17.7 (75) | 14.0 | 21.3 | 23.7 (101) | 17.7 (121) | 14.9 | 20.6 | 22.9 (156) | |
| University degree | 19.3 (82) | 15.5 | 23.1 | 19.2 (82) | 16.5 (113) | 13.8 | 19.3 | 18.5 (126) | |
| Current or last professional position | 0.23 | ||||||||
| No employment yet | 5.3 (23) | 3.2 | 7.4 | 5.8 (25) | 4.5 (31) | 3.0 | 6.1 | 5.0 (34) | |
| Skilled worker | 14.4 (62) | 11.1 | 17.7 | 14.4 (62) | 14.2 (97) | 11.6 | 16.8 | 13.5 (92) | |
| Executive employee | 10.7 (46) | 7.7 | 13.6 | 10.9 (47) | 14.2 (97) | 11.6 | 16.8 | 14.5 (99) | |
| Non-executive employee | 43.3 (187) | 38.6 | 48.0 | 42.1 (182) | 44.0 (300) | 40.3 | 47.7 | 43.4 (296) | |
| Civil servants | 5.6 (24) | 3.4 | 7.7 | 6.7 (29) | 6.5 (44) | 4.6 | 8.3 | 7.6 (52) | |
| Self-employed | 6.0 (26) | 3.8 | 8.3 | 6.5 (28) | 3.4 (23) | 2.0 | 4.7 | 3.7 (25) | |
| Other | 14.8 (64) | 11.5 | 18.2 | 13.7 (59) | 13.2 (90) | 10.7 | 15.7 | 12.3 (84) | |
| Shift work | 0.14 | ||||||||
| Yes | 15.4 (44) | 11.2 | 19.6 | 15.5 (44) | 20.0 (75) | 15.9 | 24.0 | 19.7 (74) | |
| No | 84.6 (241) | 80.4 | 88.8 | 84.5 (240) | 80.0 (301) | 76.0 | 84.1 | 80.3 (302) | |
| Weekly working hours | 0.73 | ||||||||
| Currently not working | 34.0 (147) | 29.6 | 38.5 | 34.0 (147) | 44.8 (307) | 41.1 | 48.5 | 44.8 (307) | |
| < 20 h | 6.7 (19) | 3.8 | 9.6 | 6.3 (18) | 4.3 (16) | 2.2 | 6.4 | 4.3 (16) | |
| 20–29 | 8.8 (25) | 5.45 | 12.1 | 8.5 (24) | 9.9 (37) | 6.9 | 13.0 | 9.4 (35) | |
| 30–40 | 50.5 (144) | 44.2 | 56.3 | 50.4 (143) | 50.4 (188) | 45.3 | 55.5 | 49.9 (186) | |
| 41–50 | 24.9 (71) | 19.9 | 29.9 | 25.4 (72) | 25.7 (96) | 21.3 | 30.2 | 26.5 (99) | |
| > 50 | 9.1 (26) | 5.8 | 12.5 | 9.5 (27) | 9.7 (36) | 6.7 | 12.7 | 9.9 (37) | |
| Size place of residence (inhabitants) | 0.01 | ||||||||
| < 2.000 | 7.8 (34) | 5.3 | 10.3 | 6.9 (30) | 8.3 (57) | 6.2 | 10.4 | 6.6 (45) | |
| 2.000–20.000 | 29.7 (129) | 25.4 | 34.0 | 29.2 (127) | 37.3 (256) | 33.7 | 40.9 | 34.5 (237) | |
| 20.000–100.000 | 25.8 (112) | 21.6 | 29.9 | 26.9 (117) | 28.7 (197) | 25.3 | 32.1 | 31.7 (218) | |
| > 100.000 | 36.8 (160) | 32.3 | 41.3 | 37.0 (161) | 36.8 (176) | 32.3 | 41.3 | 27.2 (187) | |
| Soft enhancer intake | 0.01 | ||||||||
| yes | 86.3 (372) | 83.1 | 89.6 | 86.3 (372) | 49.5 (334) | 45.7 | 53.3 | 50.4 (341) | |
| no | 13.7 (59) | 6.6 | 20.8 | 13.7 (59) | 50.5 (341) | 46.7 | 54.3 | 49.6 (336) | |
N = 1128. Data are given in % with numbers of subjects in parentheses. For age, means with SD in parentheses are given. aweighted according to the distribution of the general population in Germany as reported by the German Office of National Statistics; bequivalent to German “Hauptschule” degree after 9 years of formal education; cequivalent to German “Realschule” degree after 10 years of formal education; dequivalent to German general or subject-specific. “Hochschulreife” or “Fachhochschulreife” degree (entrance qualifications for university or university of applied sciences) after 11. Twelve or 13 years of formal education; p-values: statistically significant differences between the respective group of users and non-users (α = .05); weighted n is rounded; weighted % refers to valid answers
Use of prescription and illicit drugs to enhance cognitive performance or mood without medical indication
| Substance group / Single substancesa | nb | Lifetime %c (n) | Last year %c (n) | Last month %c (n) | Last week %c (n) |
|---|---|---|---|---|---|
| Stimulating prescription drugs | 1115 |
|
|
|
|
| Prescription drug containing amphetamines | 1112 | 1.7 (19) | 0.8 (9) | 0.3 (4) | – |
| Methylphenidate | 1110 | 2.2 (25) | 1.1 (12) | 0.3 (3) | 0.1 (1) |
| Anti-dementia drug | 1110 | 1.0 (11) | 0.6 (6) | 0.2 (2) | 0.2 (2) |
| Modafinil | 1.107 | 0.4 (4) | 0.1 (1) | 0.1 (1) | 0.1 (1) |
| Stimulating illicit drugs | 1118 |
|
|
|
|
| Cocaine | 1114 | 6.1 (68) | 1.9 (21) | 0.3 (4) | 0.1 (1) |
| Amphetamines | 1115 | 6.9 (77) | 2.5 (28) | 0.8 (9) | 0.3 (4) |
| Meth-Amphetamines | 1111 | 2.0 (22) | 0.6 (6) | 0.1 (1) | 0.1 (1) |
| Mood modulating prescription drugs | 1110 |
|
|
| |
| Anti-depressant | 1096 | 8.5 (93) | 4.0 (44) | 1.6 (18) | 1.5 (16) |
| Beta blocker | 1080 | 8.5 (92) | 5.2 (56) | 4.1 (45) | 4.0 (43) |
| Benzodiazepines | 1088 | 8.9 (98) | 3.5 (38) | 0.9 (10) | 0.7 (8) |
| Cannabis | 1109 |
|
|
|
|
| Any medication or drug | 1121 | 38.8 (435) | 19.1 (214) | 10.1 (113) | 8.5 (95) |
N = 1128
aAs multiple selections were possible and some individuals used several substances, values could not be added up per substance group; bN refers to valid values, i.e. all observations without missing values in the respective question; cWeighted according to the distribution of the general population in Germany as reported by the German office of national statistics, n refers to the absolute frequency and % refers to the relative frequency of participants that have taken the respective substance ever in their life, in the last year, last month or last week
Fig. 1Coping with stressful situations as a reason for the substance intake. Mean scores in the item “What was the reason for the intake? To cope with stressful situations.” Likert scale average (1- I totally disagree to 5 – I totally agree). Stimulating prescription drugs: use of prescription drugs containing amphetamines, methylphenidate, modafinil and/or anti-dementia drugs; Stimulating illicit drugs: use of cocaine, amphetamines and/ or meth-amphetamines; Mood modulating prescription drugs: use of anti-depressants, beta blocker and/ or benzodiazepines); Cannabis: use of cannabis; Any drug: use of any of the listed substances
Adjusted multivariate model of factors associated with use of mood modulating prescription drugs
| Variables | step 1a | step 6a | ||||||
|---|---|---|---|---|---|---|---|---|
|
|
|
|
|
|
|
|
| |
| BRS | −.43 (.18) | .65 (.46–.93) | .02 | 2.02 | −.48 (.14) | .62 (.47–.81) | <.001 | .36 |
| PSS-4 | −.12 (.18) | .88 (.63–1.25) | .48 | 1.77 | – | – | – | |
| SOP-2 | −.09 (.17) | .91 (.65–1.28) | .60 | 1.70 | – | – | – | |
| ASKU | .04 (.20) | 1.04 (.71–1.52) | .84 | 1.72 | – | – | – | |
| IE-I | .09 (.18) | 1.09 (.77–1.55) | .63 | 1.63 | – | – | – | |
| IE-E | .27 (.18) | 1.31 (.92–1.86) | .14 | 1.60 | – | – | – | |
| Sex: | ||||||||
| Male | Reference | 1.15 | Reference | |||||
| Female | −.31 (.29) | .73 (.42–1.29) | .28 | – | – | – | ||
| Age | .54 (.20) | 1.72 (1.16–2.55) | .01 | 1.11 | .53 (.20) | 1.70 (1.15–2.50) | .01 | |
| Education: | ||||||||
| No formal degree | Reference | 1.11 | Reference | |||||
| Secondary modern school | −.73 (1.45) | .48 (.028–8.29) | .61 | – | – | – | ||
| Middle school | −.17 (.35) | .84 (.42–.1.69) | .63 | – | – | – | ||
| University-entrance diploma | −.16 (.42) | .85 (.38–1.93) | .70 | – | – | – | ||
| University degree | −.17 (.45) | .84 (.35–2.02) | .70 | – | – | – | ||
| Current or last professional position: | ||||||||
| Skilled worker | Reference | 1.05 | Reference | |||||
| Executive employee | .12 (.57) | 1.13 (.37–3.44) | .83 | – | – | – | ||
| Non-executive employee | .46 (.46) | 1.58 (.64–3.92) | .32 | – | – | – | ||
| Civil servants | −.33 (.77) | .72 (.16–.3.24) | .67 | – | – | – | ||
| Self-employed | .78 (.64) | 2.17 (.62–7.63) | .23 | – | – | – | ||
| Other | .13 (.57) | 1.14 (.37–3.46) | .82 | – | – | – | ||
| Place of residence: | ||||||||
| North Rhine-Westphalia | Reference | 1.07 | Reference | |||||
| Hamburg | .55 (.78) | 1.73 (.37–7.98) | .48 | – | – | – | ||
| Lower Saxony | .09 (.50) | 1.09 (.41–2.90) | .85 | – | – | – | ||
| Bremen | .47 (1.77) | 1.60 (.05–51.41) | .79 | – | – | – | ||
| Schleswig Holstein | .27 (.71) | 1.32 (.33–5.24) | .70 | – | – | – | ||
| Hesse | −.24 (.56) | .78 (.26–2.35) | .78 | – | – | – | ||
| Rhineland-Palatine | .30 (.68) | 1.35 (.36–5.07) | .66 | – | – | – | ||
| Baden-Wuerttemberg | .16 (.43) | 1.17 (.50–2.75) | .71 | – | – | – | ||
| Bavaria | −.13 (.43) | .88 (.38–2.03) | .77 | – | – | – | ||
| Saarland | −.1.73 (1.49) | .18 (.01–3.30) | .25 | – | – | – | ||
| Berlin | −.56 (.78) | .57 (.12–2.63) | .47 | – | – | – | ||
| Brandenburg | 1.18 (.76) | 3.24 (.71–14.81) | .13 | – | – | – | ||
| Mecklenburg-Western Pomerania | n. a. | n. a. | n. a. | n. a. | – | – | – | |
| Saxony | −1.07 (.77) | .35 (.08–1.56) | .17 | – | – | – | ||
| Saxony-Anhalt | −1.25 (.89) | .29 (.05–1.65) | .16 | – | – | – | ||
| Thuringia | −2.69 (1.34) | .07 (.005–.94) | .05 | – | – | – | ||
| Soft enhancer intake: | ||||||||
| No | Reference | 1.06 | Reference | |||||
| Yes | 2.29 (.35) | 9.89 (5.02–19.51) | <.001 | 2.25 (.34) | 9.49 (4.86–18.52) | .62 | ||
Logistic regression with backward elimination of factors associated with use of mood modulating prescription drugs (users n = 114; non-users = 686). First step and final step. n.a. = no data available
aStep 1 (full model) and step 6 (reduced model) in multivariate logistic regression using backward variable selection. Predictors were z-standardized before being included in regression analysis. Sociodemographic variables significant in the analyses of mean differences (sex, age, education, current or last professional position, size place of residence, soft enhancer intake) were included as a block in multivariate backward logistic regression. Results are weighted according to the distribution of the general population in Germany as reported by the German office of national statistics. bNagelkerkes R2 in step 6 of stepwise backward selection; Coeff. standardised regression coefficient, SE standard error, OR odds ratio, CI confidence interval, p p value, VIF variance inflation factor (based on multivariate linear regression), BRS Brief Resilience Scale, PSS-4 Perceived Stress Scale, SOP-2 Optimism-Pessimism-2 Scale, ASKU Short Scale for Measuring General Self-efficacy Beliefs, IE-I Short Scale for the Assessment of Locus of Control, internal control beliefs; IE-E: Short Scale for the Assessment of Locus of Control, external control beliefs
Adjusted multivariate model of factors associated with use of stimulating illicit drugs
| Variables | step 1a | step 6a | ||||||
|---|---|---|---|---|---|---|---|---|
|
|
|
|
|
|
|
|
| |
| BRS | −.14 (.24) | .87 (.55–1.40) | .57 | 1.99 | – | – | – | .45 |
| PSS-4 | −.01 (.23) | 1.00 (.64–1.55) | .99 | 1.79 | – | – | – | |
| SOP-2 | −.34 (.21) | .71 (.48–1.07) | .10 | 1.72 | −.46 (.16) | .63 (.47–.86) | <.01 | |
| ASKU | −.11 (.25) | .89 (.55–1.45) | .65 | 1.71 | – | – | – | |
| IE-I | .07 (.22) | 1.07 (.69–1.66) | .77 | 1.61 | – | – | – | |
| IE-E | .13 (.24) | 1.13 (.71–1.80) | .60 | 1.63 | – | – | – | |
| Sex: | ||||||||
| Male | Reference | 1.14 | Reference | |||||
| Female | −1.17 (.36) | .31 (.15–.63) | .001 | − 1.11 (.35) | .33 (.17–.66) | <.01 | ||
| Age | −.90 (.26) | .41 (.24–.68) | .001 | 1.19 | −.92 (.26) | .40 (.24–.66) | <.001 | |
| Education: | ||||||||
| No formal degree | Reference | 1.15 | Reference | |||||
| Secondary modern school | 2.80 (1.24) | 16.48 (1.45–187.61) | .02 | 2.65 (1.22) | 14.09 (1.30–152.86) | .3 | ||
| Middle school | −.12 (.43) | .89 (.38–2.07) | .78 | – | – | – | ||
| University-entrance diploma | −.62 (.51) | .54 (.20–1.45) | .22 | – | – | – | ||
| University degree | −.85 (.66) | .43 (.12–1.57) | .20 | – | – | – | ||
| Current or last professional position: | ||||||||
| Skilled worker | Reference | 1.06 | Reference | |||||
| Executive employee | −.07 (.71) | .93 (.23–3.70) | .92 | – | – | – | ||
| Non-executive employee | .73 (.51) | 2.07 (.76–5.63) | .15 | – | – | – | ||
| Civil servants | −.07 (1.08) | .93 (.22–7.74) | .95 | – | – | – | ||
| Self-employed | .78 (.84) | 2.17 (.42–11.2) | .35 | – | – | – | ||
| Other | .39 (.61) | 1.47 (.44–4.89) | .53 | – | – | – | ||
| Place of residence: | ||||||||
| North Rhine-Westphalia | Reference | 1.10 | Reference | |||||
| Hamburg | 2.20 (.95) | 9.00 (1.39–58.06) | .02 | 2.14 (.94) | 8.53 (1.37–53.35) | .02 | ||
| Lower Saxony | −.11 (.749 | .89 (.21–3.83) | .89 | – | – | – | ||
| Bremen | 3.35 (1.46) | 28.36 (1.64–491.68) | .02 | 3.22 (1.43) | 25.08 (1.53–411.61) | .02 | ||
| Schleswig Holstein | −.37 (1.10) | .69 (.08–5.91) | .74 | – | – | – | ||
| Hesse | 1.00 (.62) | 2.72 (.80–9.23) | .11 | – | – | – | ||
| Rhineland-Palatine | .82 (1.00) | 2.27 (.32–16.04) | .41 | – | – | – | ||
| Baden-Wuerttemberg | .66 (.56) | 1.93 (.64–5.79) | .24 | – | – | – | ||
| Bavaria | .004 (.612) | 1.00 (.30–3.33) | .99 | – | – | – | ||
| Saarland | n.a. | n.a. | n.a. | n.a. | n.a. | n.a. | n.a. | |
| Berlin | 1.66 (7.43) | 5.28 (1.23–22.66) | .03 | 1.53 (.73) | 4.62 (1.11–19.27) | .04 | ||
| Brandenburg | 2.04 (1.13) | 7.71 (.84–70.71) | .07 | – | – | – | ||
| Mecklenburg-Western Pomerania | .86 (.86) | 2.36 (.44–12.83) | .32 | – | – | – | ||
| Saxony | .62 (.77) | 1.85 (.41–8.36) | .32 | – | – | – | ||
| Saxony-Anhalt | −1.43 (1.42) | .24 (.02–3.89) | .31 | – | – | – | ||
| Thuringia | .02 (1.16) | 1.02 (.11–9.9) | .99 | – | – | – | ||
| Soft enhancer intake: | ||||||||
| No | Reference | 1.12 | Reference | |||||
| Yes | 3.02 (.60) | 20.39 (6.35–65.52) | <.001 | 3.03 (.60) | 20.73 (6.46–66.47) | <.001 | ||
Logistic regression with backward elimination of factors associated with use of stimulating illicit drugs (users n = 114; non-users = 686). First step and final step. n.a. = no data available
Further notes see Table 3
Adjusted multivariate model of factors associated with use of cannabis
| Variables | step 1a | step 6a | ||||||
|---|---|---|---|---|---|---|---|---|
|
|
|
|
|
|
|
|
| |
| BRS | −.13 (.16) | .88 (.64–1.21) | .44 | 1.96 | – | – | – | .33 |
| PSS-4 | −.06 (.15) | .94 (.70–1.27) | .68 | 1.75 | – | – | – | |
| SOP-2 | −.14 (.15) | .87 (.66–1.16) | .34 | 1.68 | −.31 (.11) | .74 (.59–.92) | .01 | |
| ASKU | −.11 (.17) | .89 (.64–1.25) | .51 | 1.73 | – | – | – | |
| IE-I | −.12 (.15) | .89 (.66–1.12) | .44 | 1.65 | – | – | – | |
| IE-E | .14 (.15) | 1.15 (.86–1.54) | .34 | 1.54 | – | – | – | |
| Sex: | ||||||||
| Male | Reference | 1.11 | Reference | |||||
| Female | −.67 (.24) | .51 (.32–.82) | .51 | −.63 (.23) | .53 (.34–.84) | .01 | ||
| Age | −.69 (.17) | .50 (.36–.70). | <.001 | 1.14 | −.68 (.17) | .50 (.36–.70) | <.001 | |
| Education: | ||||||||
| No formal degree | Reference | 1.16 | Reference | |||||
| Secondary modern school | 1.68 (.96) | 5.38 (.81–35.62) | .08 | – | – | – | ||
| Middle school | −.02 (.32) | .99 (.53–1.82) | .96 | – | – | – | ||
| University-entrance diploma | −.14 (.37) | .87 (.42–1.80) | .71 | – | – | – | ||
| University degree | .60 (.39) | 1.82 (.85–3.90) | .12 | – | – | – | ||
| Current or last professional position: | ||||||||
| Skilled worker | Reference | Reference | ||||||
| Executive employee | −.49 (.47) | .61 (.24–1.53) | .29 | 1.05 | – | – | – | |
| Non-executive employee | .05 (.36) | 1.05 (.52–2.14) | .89 | – | – | – | ||
| Civil servants | −.10 (.59) | .91 (.29–2.88) | .87 | – | – | – | ||
| Self-employed | −.29 (.60) | .75 (.23–2.43) | .63 | – | – | – | ||
| Other | .15 (.43) | 1.16 (.50–2.70) | .73 | – | – | – | ||
| Place of residence: | ||||||||
| North Rhine-Westphalia | Reference | 1.05 | Reference | |||||
| Hamburg | .94 (.69) | 2.56 (.67–9.77) | .17 | – | – | – | ||
| Lower Saxony | .01 (.45) | 1.01 (.42–2.43) | .98 | – | – | – | ||
| Bremen | .29 (1.15) | 1.34 (.14–12.60) | .80 | – | – | – | ||
| Schleswig Holstein | .01 (.71) | 1.01 (.25–4.07) | .99 | – | – | – | ||
| Hesse | .71 (.43) | 2.04 (.87–4.74) | .10 | – | – | – | ||
| Rhineland-Palatine | 1.11 (.59) | 3.04 (.95–9.74) | .06 | – | – | – | ||
| Baden-Wuerttemberg | .66 (.39) | 1.92 (.89–4.15) | .10 | – | – | – | ||
| Bavaria | .34 (.38) | 1.40 (.67–2.95) | .37 | – | – | – | ||
| Saarland | −1.62 (1.06) | .20 (.03–1.58) | .13 | – | – | – | ||
| Berlin | .62 (.55) | 1.86 (.63–5.49) | .26 | – | – | – | ||
| Brandenburg | 1.63 (.72) | 5.10 (1.24–20.92) | .03 | – | – | – | ||
| Mecklenburg-Western Pomerania | .31 (.73) | 1.36 (.32–5.72) | .68 | – | – | – | ||
| Saxony | −.03 (.55) | 1.03 (.35–3.00) | .96 | – | – | – | ||
| Saxony-Anhalt | −1.87 (1.03) | .16 (.02–1.17) | .07 | – | – | – | ||
| Thuringia | −.17 (.74) | .84 (.20–3.61) | .82 | – | – | – | ||
| Soft enhancer intake: | ||||||||
| No | Reference | 1.09 | Reference | |||||
| Yes | 1.79 (.26) | 5.96 (3.55–10.01) | <.001 | 1.80 (.26) | 6.05 (3.63–10.08) | <.001 | ||
Logistic regression with backward elimination of factors associated with use of cannabis (users n = 260; non-users = 686). First step and final step. n.a. = no data available
Further notes see Table 3
Adjusted multivariate model of factors associated with use of stimulating prescription drugs
| Variables | step 1a | step 6a | ||||||
|---|---|---|---|---|---|---|---|---|
|
|
|
|
|
|
|
|
| |
| BRS | −.72 (.42) | .49 (.21–1.12) | .09 | 2.11 | – | – | – | .45 |
| PSS-4 | .78 (.43) | 2.19 (.95–5.05) | .07 | 1.75 | 1.05 (.33) | 2.86 (1.49–5.46) | <.01 | |
| SOP-2 | .01 (.38) | 1.00 (.48–2.13) | .98 | 1.76 | – | – | – | |
| ASKU | .07 (.5) | 1.07 (.40–2.82) | .90 | 1.76 | – | – | – | |
| IE-I | .18 (.43) | 1.19 (.52–2.74) | .68 | 1.66 | – | – | – | |
| IE-E | −.16 (.38) | .86 (.40–1.81) | .68 | 1.60 | – | – | – | |
| Sex: | ||||||||
| Male | Reference | 1.15 | Reference | |||||
| Female | −.15 (.60) | .86 (.27–2.76) | .80 | – | – | – | ||
| Age | −.89 (.47) | .41 (.17–1.03) | .06 | 1.21 | .53 (.20) | 1.70 (1.15–2.50) | <.01 | |
| Education: | ||||||||
| No formal degree | Reference | 1.11 | Reference | |||||
| Secondary modern school | n.a. | n.a. | n.a. | – | – | – | ||
| Middle school | −1.21 (.83) | .30 (.06–1.53) | .15 | – | – | – | ||
| University-entrance diploma | .07 (.81) | 1.08 (.22–5.28). | .93 | – | – | – | ||
| University degree | −.61 (1.09) | .54 (.06–4.61) | .57 | – | – | – | ||
| Current or last professional position: | ||||||||
| Skilled worker | Reference | Reference | ||||||
| Executive employee | 2.16 (1.25) | 8.69 (.75–100.30) | .08 | 1.05 | – | – | – | |
| Non-executive employee | 1.00 (1.15) | 2.72 (.29–25.62) | .38 | – | – | – | ||
| Civil servants | 1.78 (1.75) | 5.92 (.19–181.33) | .31 | – | – | – | ||
| Self-employed | 2.74 (1.41) | 15.44 (.98–242.95) | .05 | – | – | – | ||
| Other | 1.76 (1.42) | 5.81 (.36–94.30) | .22 | – | – | – | ||
| Place of residence: | ||||||||
| North Rhine-Westphalia | Reference | 1.10 | Reference | |||||
| Hamburg | .07 (1.55) | 1.07 (0.05–22.47) | .96 | – | – | – | ||
| Lower Saxony | −1.67 (1.59) | .19 (.01–4.26) | .29 | – | – | – | ||
| Bremen | n.a. | n.a. | n.a. | – | – | – | ||
| Schleswig Holstein | .17 (1.53) | 1.18 (.06–23.60) | .91 | – | – | – | ||
| Hesse | .10 (1.09) | 1.10 (.13–9.27) | .93 | – | – | – | ||
| Rhineland-Palatine | .70 (1.38) | 2.01 (.13–30.15) | .61 | – | – | – | ||
| Baden-Wuerttemberg | .51 (.86) | 1.66 (.31–9.03) | .56 | – | – | – | ||
| Bavaria | −.61 (.97) | .54 (.08–3.63) | .53 | – | – | – | ||
| Saarland | n.a. | n.a. | n.a. | – | – | – | ||
| Berlin | n.a. | n.a. | n.a. | – | – | – | ||
| Brandenburg | 1.389 (2.18 | 3.98 (.06–286.58) | .53 | – | – | – | ||
| Mecklenburg-Western Pomerania | n.a. | n.a. | n.a. | – | – | – | ||
| Saxony | −.09 (1.23) | .92 (.08–10.23) | .94 | – | – | – | ||
| Saxony-Anhalt | n.a. | n.a. | n.a. | – | – | – | ||
| Thuringia | n.a. | n.a. | n.a. | −2.62 (1.32) | .07 (.01–.97) | .05 | ||
| Soft enhancer intake: | ||||||||
| No | Reference | 1.09 | Reference | |||||
| Yes | 2.63 (1.12) | 13.83 (1.55–123.54) | .02 | 2.25 (.34) | 9.49 (4.86–18.52) | <.001 | ||
Logistic regression with backward elimination) of factors associated with use of stimulating prescription drugs (users n = 48; non-users = 686). First step and final step. n.a. = no data available
Further notes see Table 3