| Literature DB >> 32082159 |
Gilles Loggia1,2, Elpidio Attoh-Mensah1, Kristell Pothier1, Rémy Morello3, Pascale Lescure1,2, Marie-Laure Bocca1, Christian Marcelli1,4, Chantal Chavoix1.
Abstract
OBJECTIVES: With their broad spectrum of action, psychotropic drugs are among the most common medications prescribed to the elderly. Consequently, the number of older adults taking multiple psychotropic drugs has more than doubled over the last decade. To improve knowledge about the deleterious effects of psychotropic polypharmacy, we investigated whether there is a threshold number of psychotropic molecules that could lead to impairment of global cognition, executive function, or mobility. Furthermore, relationships between the number of psychotropic molecules and cognitive and mobility impairment were examined.Entities:
Keywords: cognition; executive function; gait; polypharmacy; psychotropic drugs
Year: 2020 PMID: 32082159 PMCID: PMC7002919 DOI: 10.3389/fphar.2019.01659
Source DB: PubMed Journal: Front Pharmacol ISSN: 1663-9812 Impact factor: 5.810
Characteristics of the study population (n = 177).
| General population n = 177 | Women n = 144 | Men n = 33 | ||
|---|---|---|---|---|
| Age | 69.79 ± 9.32 | 69.8 ± 9.49 | 69.76 ± 8.19 | NSa |
| Education (years) | 11.61 ± 4.00 | 11.15 ± 3.55 | 13.64 ± 5.17 | .01a |
| Number of prescribed molecules | 5.09 ± 3.98 | 5.10 ± 3.99 | 5.06 ± 4.04 | NSa |
| Falls with injury, number (%) | 112 (63) | 104 (72) | 8 (24) | .012b |
| Psychotropic molecules taken | ||||
| Psychotropic molecules, number (%) | ||||
| 0 psychotropic molecule | 101 (59) | 81 (56) | 20 (61) | NSb |
| Psychotropic molecules in ATC class, number (%) | ||||
| Antidepressants | 33 (30) | 26 (28) | 7 (40) | NSb |
| MMSE score | 27.71 ± 2.45 | 27.63 ± 2.54 | 28.03 ± 2.17 | NSa |
| TUG score (sec) | 9.41 ± 3.13 | 9.52 ± 3.35 | 8.97 ± 1.95 | NSa |
| Impaired scores, number (%) | ||||
| MMSE | 14 (7.9) | 12 (8.3) | 2 (6.1) | NSa |
| MoCA | 51 (28.8) | 45 (31.3) | 6 (18.2) | NSa |
| TMT A, completion time | 31 (17.5) | 25 (17.4) | 6 (18.2) | NSa |
| TMT B, completion time | 27 (15.3) | 22 (15.3) | 5 (15.2) | NSa |
| TMT B-A, completion time | 19 (10.7) | 15 (10.4) | 4 (12.1) | NSa |
| TUG | 56 (31.6) | 44 (30.6) | 12 (36.4) | NSa |
Unless indicated, values are mean ± SD; aMann-Whitney U test, bChi square test, NS, non-significant; SD, standard deviation; #: Gender comparison
List of psychotropic drugs and their frequency in the study population, n = 109.
| Drugs and ATC code | number (%) |
|---|---|
| N06AB10 Escitalopram | 9 (8.3) |
| N02A | |
| N02AX02 Tramadol | 14 (12.9) |
| N05C | |
| N05CF02 Zolpidem | 11 (10.1) |
| N05B | |
| N05BA08 Bromazepam | 8 (7.3) |
| N03A | |
| N03AX16 Pregabalin | 5 (4.6) |
| N06D | |
| N06DX01 Memantine | 2 (1.8) |
| N05A | |
| N05AL01 Sulpiride | 1 (0.9) |
Comparisons between the characteristics of users and non-users of psychotropic molecules.
| Non-users of psychotropic molecules n = 115 | Users of psychotropic molecules n = 62 | ||
|---|---|---|---|
| Age | 67.77 ± 9.13 | 72.49 ± 8.74 | <.001b |
| Education (years) | 12.00 ± 4.07 | 11.09 ± 3.89 | NSb |
| Falls with injury, number (%) | 61 (60.40%) | 51 (67.11%) | NSc |
| Risk factors of falls | 0.80 ± 0.75 | 1.01 ± 1.11 | NSb |
| Number of prescribed molecules | 3.37 ± 3.02 | 7.39 ± 3.97 | <.001b |
| Comorbidities | 1.50 ± 1.28 | 2.09 ± 1.57 | <.009b |
| Handgrip strength (kg) | 23.13 ± 8.59 | 20.79 ± 8.13 | .023b |
| BMI | 27.20 ± 4.96 | 27.75 ± 5.09 | NSa |
| MMSE score | 28.29 ± 1.86 | 26.95 ± 2.96 | .002b |
| MoCA score | 27.48 ± 2.77 | 25 ± 5.14 | <.001b |
| TMT A, completion time (sec) | 36.24 ± 14.74 | 43.43 ± 22.87 | .006 b |
| TMT B, completion time (sec) | 84.91 ± 38.78 | 108.73 ± 57.04 | .001b |
| TMT B-A (sec) | 49.29 ± 31.82 | 69.58 ± 49.54 | .001b |
| TUG score (sec) | 8.70 ± 1.75 | 10.36 ± 4.18 | .002b |
Unless indicated, values are mean ± SD; aStudent’s t-test, bMann-Whitney U test, cChi square test, NS (non-significant), SD (standard deviation).
Figure 1Receiver-operating characteristic (ROC) curves for the number of psychotropic molecules that predict impaired MMSE, MoCA, TMT B, TMT B-A, and TUG scores. Each point on the ROC curve indicates a specific cut-off, with each cut-off having its own sensitivity and specificity. The optimal cut-off is defined as the value, here that of the number or psychotropic molecules, that provides the best combination of sensitivity and specificity. This optimal cut-off can be identified as the intersection of the ROC curve with the upper left to lower right diagonal line. The area under the curve (AUC) is equal to 1 for perfect discrimination and 0.5 for an uninformative cut-off point.
Relationships between the number of psychotropic molecules taken per day (0 vs ≥1 or ≤ 1 vs ≥2) and impairment in cognitive and mobility performance (logistic regression analysis).
| Model | Variable | Number of psychotropic molecules | |||||
|---|---|---|---|---|---|---|---|
| 0 vs ≥1 | ≤1 vs ≥2 | ||||||
| OR | 95% CI | p | OR | 95% CI | p | ||
| MMSE | 2.76 | 0.42–18.13 | .29 | 10.33 | 1.96–54.36 | ||
| MoCA | 1.89 | 0.81–4.41 | .14 | 4.42 | 1.80–10.90 | ||
| TMT A | 1.29 | 0.49–3.39 | .61 | 2.47 | 0.94–6.55 | .07 | |
| TMT B | 0.88 | 0.28–2.81 | .83 | 2.97 | 1–9.14 | ||
| TMT B-A | 0.75 | 0.18–3.19 | .70 | 5.76 | 1.67–19.80 | ||
| TUG | 1.03 | 0.43–2.44 | .96 | 3.87 | 1.52–9.88 | ||
Different models were used to analyze the links between the number of psychotropic molecules taken and impaired MMSE (Model 3.1), impaired MoCA (Model 3.2), impaired TMT B (Model 3.3), impaired TMT B-A (Model 3.3), and impaired TUG (Model 3.5). All models were adjusted for covariates: age, education level, and comorbidities for MMSE; comorbidities and age only for MoCA (standard scores already adjusted for education level); comorbidities only for TMT scores; and BMI, handgrip strength, comorbidities, and risk of falls for TUG. Impaired scores on TMT B and TMT B-A were already stratified by age and education (Nasreddine et al., 2005), and impaired TUG scores, by age (Sanchez-Cubillo et al., 2009).
Interactions between cognition and mobility deficits and the number of psychotropic molecules taken per day (0 vs ≥1 or ≤ 1 vs ≥2) (univariate multinomial logistic regression analysis).
| Model | Variable* | Number of psychotropic molecules | |||||
|---|---|---|---|---|---|---|---|
| 0 vs ≥1 | ≤ 1 vs ≥ 2 | ||||||
| OR | 95% CI | OR | 95% CI | ||||
| MMSE | 5.15 | 0.49–54.05 | .17 | 20.65 | 2.20–193.83 | ||
| TUG | 0.99 | 0.40–2.45 | .98 | 2.80 | 1.03–7.63 | ||
| MoCA | 2.16 | 0.89–5.28 | .09 | 3.42 | 1.30–9.00 | ||
| TUG | 0.94 | 0.39–2.27 | .89 | 3.53 | 1.32–9.46 | ||
| TMT B | 0.88 | 0.25–3.05 | .84 | 2.34 | 0.69–8.00 | .17 | |
| TUG | 0.73 | 0.29–1.85 | .50 | 2.56 | 0.93–7.04 | .07 | |
| TMT B-A | 0.72 | 0.15–3.42 | .68 | 4.94 | 1.21–20.16 | ||
| TUG | 0.75 | 0.29–1.9 | .54 | 2.05 | 0.72–5.87 | .18 | |
| Handgrip | 0.98 | 0.94–1.04 | .55 | 0.93 | 0.86–0.99 | ||
Different models were used to analyze the links between the number of psychotropic molecules taken and impaired MMSE and TUG scores (Model 4.1), impaired MoCA and TUG scores (Model 4.2), impaired TMT B and TUG scores (Model 4.3), and impaired TMT B-A and TUG scores (Model 4.4). All models were adjusted for covariates: age, education level and comorbidities for MMSE; comorbidities and age only for MoCA (standard scores already adjusted by education level); comorbidities only for TMT scores; and BMI, handgrip strength, comorbidities, and risk of falls for TUG. Impaired scores on TMT B and TMT B-A were already stratified by age and education level (Nasreddine et al., 2005), and impaired TUG scores, by age (Sanchez-Cubillo et al., 2009). Only covariates that reached statistical significance are listed in the table.