| Literature DB >> 29713202 |
Jenna Wong1, Michal Abrahamowicz1, David L Buckeridge1, Robyn Tamblyn1.
Abstract
OBJECTIVE: Physicians commonly prescribe antidepressants for indications other than depression that are not evidence-based and need further evaluation. However, lack of routinely documented treatment indications for medications in administrative and medical databases creates a major barrier to evaluating antidepressant use for indications besides depression. Thus, the aim of this study was to derive a model to predict when primary care physicians prescribe antidepressants for indications other than depression and to identify important determinants of this prescribing practice.Entities:
Keywords: antidepressant; indications; pharmacovigilance; predictive studies; predictors; primary care
Year: 2018 PMID: 29713202 PMCID: PMC5912382 DOI: 10.2147/CLEP.S153000
Source DB: PubMed Journal: Clin Epidemiol ISSN: 1179-1349 Impact factor: 4.790
Candidate predictors of antidepressant prescriptions for indications besides depression
| Variable | Values or FP1 function |
|---|---|
| Molecule name | 19 levels |
| Prescribed dose (mg/day) | |
| Drug prescribed on a “take-as-needed” basis | Yes vs no |
| No. other drugs concurrently prescribed with the index drug | |
|
| |
| Sex | Male vs female |
| Age (years) | |
| Household income | |
| Less than university education | |
| Unemployment rate | |
| Type of drug insurance | Public vs private plan |
| Plausible antidepressant treatment indications | |
| ±3 days around the index prescription date | 13 binary variables |
| 4 to 365 days before the index prescription date | 13 binary variables |
| Chronic conditions in the Charlson comorbidity index | 17 binary variables |
| Other morbidities | 86 binary variables |
| Number of outpatient visits | |
| Number of outpatient physicians seen | |
| Continuity of care with the prescribing physician | |
| Previous hospitalization | Yes vs no |
| Previous day surgery | Yes vs no |
| Previous ER visit | Yes vs no |
| Medical services | 52 binary variables |
| In-hospital procedures | 70 binary variables |
| 99 binary variables | |
|
| |
| Sex | Male vs female |
| Place of medical training | Canada/US vs other |
| Experience (years in practice) | 3 levels |
| Workload (average no. patients per working day) | |
| Factors affecting physician response to new information on evidence-based clinical practice | |
| Evidence score | |
| Nonconformity score | |
| Practicality score | |
Notes:
FP1 functions (X) are shown for continuous variables. For each continuous variable X, we selected the best fitting FP1 function among eight candidate FP1 functions where the powers p were represented by the set {−2, −1, −0.5, 0, 0.5, 1, 2, 3} and X0 denoted log(X). In cases where the best p ≤ 0 and the variable’s domain included 0, the original values of the variable were shifted up by 1 before applying the power.
Prescriptions were assigned to one of 19 levels: venlafaxine, duloxetine, desvenlafaxine, citalopram, paroxetine, escitalopram, sertraline, fluoxetine, fluvoxamine, amitriptyline, doxepin, nortriptyline, trimipramine, imipramine, desipramine, clomipramine, trazodone, bupropion, or mirtazapine.
Area-level measure representing the median household income (CAD) in the patient’s census tract area.
Area-level measure representing the percentage of adults in the patient’s census tract area with less than university education.
Area-level measure representing the percentage of unemployed adults in the patient’s census tract area.
For each observation window, 13 binary variables were used to represent whether diagnostic codes were recorded for each of the following treatment indication categories: depression, anxiety/stress disorders, sleeping disorders, pain, migraine, fibromyalgia, obsessive-compulsive disorder, vasomotor symptoms of menopause, nicotine dependence, attention deficit/hyperactivity disorder, sexual dysfunction, pre-menstrual dysphoric disorder, and eating disorders. ICD-9 codes for these treatment indications are listed in Table S1.
17 binary variables were used to represent whether diagnostic codes for any of the following conditions in the Charlson comorbidity index were recorded in the past year: myocardial infarction, congestive heart failure, peripheral vascular disease, cerebrovascular disease, dementia, chronic pulmonary disease, rheumatic disease, peptic ulcer disease, mild liver disease, diabetes without chronic complication, diabetes with chronic complication, hemiplegia or paraplegia, renal disease, any malignancy, moderate or severe liver disease, metastatic solid tumor, and AIDS/HIV. ICD codes for these conditions were identified using the algorithms published by Quan et al.31
86 binary variables were used to represent each four-digit ICD-9 code that was recorded for at least 1% of all antidepressant prescriptions in the past year (after excluding diagnostic codes for antidepressant treatment indications and Charlson conditions).
Expressed as the percentage of all outpatient visits in the past year that were made to the prescribing physician.
Based on billing codes recorded in medical claims data over the past year. Individual billing codes were grouped into broader “billing code categories” using mapping tables obtained from the RAMQ. Binary variables were used to represent the presence of billing codes from any category that was recorded for at least 1% of antidepressant prescriptions in the past year (a total of 52 categories).
Based on procedure codes recorded in hospital discharge abstracts over the past year. Binary variables were used to represent the presence of any three-digit CCP code that was recorded for at least 1% of antidepressant prescriptions where the patient had been hospitalized in the past year (a total of 70 procedure codes).
Binary variables were used to represent the presence of a prescription in the past year for any drug (generic name) that had been prescribed in the past year for at least 1% of all antidepressant prescriptions (a total of 99 drugs).
Prescriptions were assigned to one of three levels: 1) 24+ years, 2) 15–23 years, or 3) <15 years.
Measured using physician scores on the Evidence-Nonconformity-Practicality survey,33 which is a psychometric instrument for determining how physicians would likely respond to new information about evidence-based clinical practice. Higher evidence scores indicate a stronger belief in scientific evidence over clinical experience as the best source of clinical knowledge, higher nonconformity scores indicate more willingness to diverge from group norms in clinical practice, and higher practicality scores indicate higher sensitivity to practical concerns such as managing workload and patient flow.
Abbreviation: FP1, first-degree fractional polynomial.
Figure 1Outline of the study analysis.
Derivation of the final prediction model for antidepressant prescriptions for indications other than depression
| Order added | Variables included in the model | Scaled Brier score | ∆ |
|---|---|---|---|
| – | 26 binary variables for the presence of diagnostic codes for plausible antidepressant treatment indications (the “baseline model”) | 0.0916 | +0.0916 |
| 1 | Molecule name | 0.3193 | +0.2277 |
| 2 | Less than university education | 0.3233 | +0.0040 |
| 3 | Physician workload | 0.3274 | +0.0041 |
| 4 | Prescribed dose | 0.3310 | +0.0036 |
| 5 | Number of outpatient visits in the past year | 0.3327 | +0.0017 |
| 6 | Drug prescribed on a “take-as-needed” basis | 0.3342 | +0.0015 |
| 7 | Trazodone prescribed in the past year | 0.3357 | +0.0015 |
| 8 | Diagnostic code for diabetes without chronic complication in the past year | 0.3369 | +0.0011 |
| 9 | Diagnostic code for unspecified nonpsychotic mental disorder following organic brain damage (310.9) in the past year | 0.3380 | +0.0011 |
| 10 | Age | 0.3389 | +0.0009 |
| 11 | Any diagnostic procedure in the past year | 0.3397 | +0.0009 |
| 12 | Quetiapine prescribed in the past year | 0.3404 | +0.0007 |
| 13 | Furosemide prescribed in the past year | 0.3410 | +0.0006 |
| 14 | Diagnostic code for dementia in the past year (“main-terms” model) | 0.3415 | +0.0005 |
| 15 | Molecule name × prescribed dose (the “final model”) | 0.3452 | +0.0037 |
Notes:
Cross-validated estimate of the scaled Brier score for predicting the primary outcome. Estimates were obtained using a 3-fold cross-validation procedure with the prescriptions in the training set. Higher scores indicate better overall model performance.
Change in the scaled Brier score when the corresponding variable was added to the previous model. The performance of the baseline model was compared to the performance of a non-informative model with no covariates, which by definition had a scaled Brier score of 0.
Performance of the final and baseline models for predicting antidepressant prescriptions for indications other than depression
| Performance in the test set | ||||
|---|---|---|---|---|
| Scaled Brier score | Discrimination slope | IDI | ||
| Final model | 0.307 | 0.815 | 0.325 | 0.239 |
| Baseline model | 0.076 | 0.651 | 0.086 | |
Notes:
Based on the regression coefficients for the final and baseline models that were fit using the training set and applied to the test set.
For a binary outcome, the scaled Brier score is analogous to the Pearson’s R2 statistic for continuous outcomes.36 Higher scores indicate better performance.
Calculated as the absolute difference in the average probability of the outcome among observations with and without the outcome.36
Quantifies the incremental value of adding new markers to an existing model to predict a binary outcome. The IDI is equal to the difference in discrimination slopes between the final and baseline models, or alternatively, the difference between the change in average (ie, over all possible cut-off values between 0 and 1) sensitivity and the change in average “one minus specificity” when comparing the final model to the baseline model.38
Abbreviation: IDI, integrated discrimination improvement.
Calibration of the final and baseline models for predicting antidepressant prescriptions for indications other than depression
| Probability of treatment indication other than depression | Performance in the test set
| |||||||
|---|---|---|---|---|---|---|---|---|
| Final model (diagnostic codes + other health-related information)
| Baseline model (diagnostic codes only)
| |||||||
| N | O | E | O:E (95% CI) | N | O | E | O:E (95% CI) | |
| 0–0.2 | 5,531 | 756 | 571.15 | 1.324 (0.911 to 1.701) | 2,398 | 424 | 385.67 | 1.099 (0.825 to 1.514) |
| >0.2–0.4 | 5,646 | 1,551 | 1,703.99 | 0.910 (0.659 to 1.215) | 3,497 | 936 | 1,070.39 | 0.874 (0.733 to 1.054) |
| >0.4–0.6 | 4,427 | 2,088 | 2,171.00 | 0.962 (0.730 to 1.243) | 11,538 | 5,331 | 5,765.59 | 0.925 (0.736 to 1.158) |
| >0.6–0.8 | 2,254 | 1,521 | 1,544.70 | 0.985 (0.833 to 1.152) | 4,049 | 2,515 | 2,624.67 | 0.958 (0.792 to 1.134) |
| >0.8–1.0 | 3,699 | 3,357 | 3,417.19 | 0.982 (0.931 to 1.030) | 75 | 67 | 66.11 | 1.013 (0.768 to 1.133) |
| Overall | 21,557 | 9,273 | 9,408.03 | 0.986 (0.842 to 1.136) | 21,557 | 9,273 | 9,912.43 | 0.935 (0.773 to 1.125) |
Notes:
The probability of the outcome was calculated for prescriptions in the test set based on the regression coefficients obtained using the training set.
The expected number of prescriptions for a treatment indication besides depression was calculated by summing the probabilities across all prescriptions in the stratum.
Abbreviations: N, number of antidepressant prescriptions; O, observed number of antidepressant prescriptions for a treatment indication besides depression; E, expected number of antidepressant prescriptions for a treatment indication besides depression; O:E, ratio of observed to expected prescriptions.
Overall and per-class performance of the final and baseline models for predicting antidepressant treatment indications expressed as a five-class outcome
| Treatment indication class | Performance in the test set
| |
|---|---|---|
| Scaled Brier score | ||
| Final model (diagnostic codes + other health-related information) | Baseline model (diagnostic codes only) | |
| Depression | 0.312 (0.255 to 0.371) | 0.075 (−0.018 to 0.131) |
| Anxiety/stress disorders | 0.223 (0.122 to 0.297) | 0.084 (−0.004 to 0.146) |
| Sleeping disorders | 0.628 (0.518 to 0.736) | 0.029 (0.004 to 0.043) |
| Pain | 0.356 (0.041 to 0.556) | 0.042 (−0.024 to 0.079) |
| Miscellaneous | 0.128 (0.044 to 0.202) | 0.057 (0.011 to 0.100) |
| All indications | 0.320 (0.249 to 0.385) | 0.067 (0.002 to 0.108) |
Note:
Based on the regression coefficients for the final and baseline models that were fit using the training set and applied to the test set. The per-class estimates were calculated using a one-versus-rest approach.
Adjusted odds ratios for the independent association between variables in the final prediction model and antidepressant prescriptions for treatment indications other than depression
| N | Antidepressant prescriptions for treatment indications other than depression
| |||||
|---|---|---|---|---|---|---|
| Adjusted OR | 95% CI | |||||
| Molecule name | ||||||
| Venlafaxine | 15,398 (20.9) | 1.00 | [Reference] | |||
| Amitriptyline | 6,196 (8.4) | 20.98 | 12.27 to 48.91 | |||
| Trazodone | 6,891 (9.4) | 18.55 | 8.7 to 45.88 | |||
| Nortriptyline | 434 (0.6) | 16.32 | 5.43 to 190.13 | |||
| Doxepin | 461 (0.6) | 10.49 | 2.60 to 109.35 | |||
| Imipramine | 200 (0.3) | 8.84 | 1.39 to 301.56 | |||
| Desipramine | 138 (0.2) | 3.98 | 1.31 to 73.55 | |||
| Duloxetine | 1,596 (2.2) | 2.40 | 1.10 to 6.10 | |||
| Paroxetine | 6,751 (9.2) | 2.05 | 1.11 to 3.64 | |||
| Clomipramine | 165 (0.2) | 1.54 | 0.26 to 12.36 | |||
| Citalopram | 13,623 (18.5) | 1.07 | 0.67 to 1.69 | |||
| Escitalopram | 4,470 (6.1) | 0.82 | 0.53 to 1.51 | |||
| Sertraline | 4,457 (6.1) | 0.74 | 0.45 to 1.26 | |||
| Fluvoxamine | 669 (0.9) | 0.72 | 0.20 to 1.50 | |||
| Trimipramine | 436 (0.6) | 0.69 | 0.20 to 3.01 | |||
| Fluoxetine | 1,451 (2.0) | 0.65 | 0.27 to 1.50 | |||
| Mirtazapine | 4,132 (5.6) | 0.45 | 0.18 to 1.02 | |||
| Bupropion | 5,631 (7.7) | 0.18 | 0.06 to 0.44 | |||
| Desvenlafaxine | 477 (0.7) | 0.18 | 0.02 to 310,670.11 | |||
| Prescribed dose (mg/day), per 10 mg increase by molecule | ||||||
| Mirtazapine | 30 (15–30) | 0.68 | 0.48 to 0.89 | |||
| Nortriptyline | 25 (10–50) | 0.68 | 0.30 to 0.92 | |||
| Paroxetine | 20 (15–30) | 0.78 | 0.66 to 0.91 | |||
| Desvenlafaxine | 50 (50–100) | 0.83 | 0.05 to 1.13 | |||
| Doxepin | 40 (25–75) | 0.85 | 0.62 to 1.07 | |||
| Citalopram | 20 (20–30) | 0.86 | 0.76 to 0.96 | |||
| Imipramine | 50 (25–75) | 0.86 | 0.62 to 1.11 | |||
| Fluoxetine | 20 (20–40) | 0.87 | 0.65 to 1.11 | |||
| Desipramine | 50 (25–100) | 0.90 | 0.52 to 1.07 | |||
| Amitriptyline | 20 (10–30) | 0.92 | 0.78 to 0.99 | |||
| Escitalopram | 10 (10–20) | 0.95 | 0.64 to 1.14 | |||
| Duloxetine | 60 (30–60) | 0.96 | 0.80 to 1.11 | |||
| Venlafaxine | 75 (75–150) | 0.96 | 0.94 to 0.98 | |||
| Trimipramine | 50 (25–75) | 0.96 | 0.64 to 1.10 | |||
| Sertraline | 50 (50–100) | 0.99 | 0.94 to 1.02 | |||
| Trazodone | 50 (50–100) | 0.99 | 0.95 to 1.05 | |||
| Fluvoxamine | 100 (50–143) | 1.00 | 0.90 to 1.09 | |||
| Clomipramine | 75 (30–100) | 1.01 | 0.79 to 1.24 | |||
| Bupropion | 150 (150–300) | 1.02 | 0.99 to 1.06 | |||
| Drug prescribed on a “take-as-needed” basis | 2,117 (2.9) | 2.85 | 1.47 to 6.09 | |||
| Any diagnostic procedure in the past year | 24,542 (33.4) | 1.19 | 1.04 to 1.33 | |||
| Less than university education (%), per 1% increase | 19.2 (16.8–20.6) | 1.07 | 1.03 to 1.10 | |||
| Diagnostic codes in the past year | ||||||
| Unspecified nonpsychotic mental disorder following organic brain damage (310.9) | 980 (1.3) | 0.48 | 0.26 to 0.85 | |||
| Dementia | 1,085 (1.5) | 0.74 | 0.49 to 1.09 | |||
| Diabetes without chronic complication | 8,197 (11.1) | 0.82 | 0.67 to 1.00 | |||
| | ± 3 days | −4 to −365 days | ± 3 days | −4 to −365 days | ||
| Depression | 13,600 (18.5) | 22,028 (29.9) | 0.40 | 0.31 to 0.49 | 0.46 | 0.36 to 0.56 |
| Anxiety/stress disorders | 11,106 (15.1) | 22,192 (30.2) | 2.09 | 1.61 to 2.71 | 1.52 | 1.27 to 1.89 |
| Sleeping disorders | 681 (0.9) | 3,314 (4.5) | 1.55 | 0.97 to 2.40 | 0.99 | 0.79 to 1.26 |
| Pain | 3,881 (5.3) | 25,392 (34.5) | 1.22 | 1.02 to 1.48 | 1.01 | 0.92 to 1.12 |
| Migraine | 684 (0.9) | 3,891 (5.3) | 1.33 | 0.83 to 2.04 | 0.93 | 0.77 to 1.12 |
| Fibromyalgia | 775 (1.1) | 2,640 (3.6) | 2.21 | 1.43 to 3.47 | 1.44 | 1.04 to 2.08 |
| Obsessive-compulsive disorder | 169 (0.2) | 349 (0.5) | 14.53 | 4.68 to 134.36 | 3.59 | 1.84 to 7.10 |
| Vasomotor symptoms of menopause | 562 (0.8) | 2,787 (3.8) | 1.34 | 0.82 to 2.17 | 1.16 | 0.90 to 1.52 |
| Nicotine dependence | 106 (0.1) | 458 (0.6) | 2.26 | 0.80 to 5.20 | 1.05 | 0.58 to 1.72 |
| Attention deficit/hyperactivity disorder | 114 (0.2) | 387 (0.5) | 2.51 | 1.03 to 6.92 | 1.37 | 0.65 to 2.57 |
| Sexual dysfunction | 10 (0.0) | 95 (0.1) | 1.58 | 0.0 to 91,807.54 | 1.41 | 0.49 to 3.75 |
| Pre-menstrual dysphoric disorder | 26 (0.0) | 82 (0.1) | 1.77 | 0.22 to 80,903.71 | 0.90 | 0.29 to 3.54 |
| Eating disorders | 31 (0.0) | 145 (0.2) | 2.28 | 0.39 to 29.76 | 2.02 | 0.70 to 4.86 |
| Drugs prescribed in the past year | ||||||
| Furosemide | 1,896 (2.6) | 0.62 | 0.37 to 0.98 | |||
| Trazodone | 7,175 (9.8) | 0.71 | 0.54 to 0.92 | |||
| Quetiapine | 4,100 (5.6) | 0.77 | 0.58 to 1.04 | |||
Notes:
Total N = 73,576.
Adjusted ORs were obtained using the regression coefficients from a multivariable logistic regression model that were fit using all prescriptions (ie, training and test sets combined). Adjusted ORs for the three continuous covariates that were expressed using nonlinear FP1 functions are not shown in this table.
Selective serotonin reuptake inhibitors.
Serotonin-norepinephrine reuptake inhibitors.
Tricyclic antidepressants.
The presence of diagnostic codes for the 13 plausible antidepressant treatment indication categories was examined in two separate observation windows: ±3 days and −4 to −365 days.
Abbreviations: N, number of antidepressant prescriptions, IQR, interquartile range.
Figure 2Independent association between antidepressant prescriptions for indications other than depression and the three continuous covariates in the final model that were expressed using non-linear FP1 functions. Patient age (A) was expressed using the function X−2 while the number of outpatient visits in the past year (B) and physician workload (C) were expressed using the function X−. The adjusted ORs account for all other covariates in the final model and were calculated based on coefficients fit using all prescriptions. For each continuous covariate, adjusted ORs were calculated from the 5th to 95th percentile of the distribution of observed values using the value at the 5th percentile as the reference level. The black lines represent the point estimates of the adjusted ORs, while the dotted lines represent the 95% CIs around the point estimates.