| Literature DB >> 20067620 |
Thibaut Caruba1, Isabelle Colombet, Florence Gillaizeau, Vanida Bruni, Virginie Korb, Patrice Prognon, Dominique Bégué, Pierre Durieux, Brigitte Sabatier.
Abstract
BACKGROUND: Drug prescribing errors are frequent in the hospital setting and pharmacists play an important role in detection of these errors. The objectives of this study are (1) to describe the drug prescribing errors rate during the patient's stay, (2) to find which characteristics for a prescribing error are the most predictive of their reproduction the next day despite pharmacist's alert (i.e. override the alert).Entities:
Mesh:
Year: 2010 PMID: 20067620 PMCID: PMC2820036 DOI: 10.1186/1472-6963-10-13
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Figure 1Number of new prescribing errors per 10 order lines by . Histogram represents the observed data ie the mean number of new prescribing errors per 10 order lines. The fitted curve with 95% confidence intervals represents the estimation of of the mean number of new prescribing errors per 10 order lines at iday derived from the mixed Poisson regression model.
Estimated Odds Ratio and 95% Confidence Intervals for the GEE* regression model for new prescribing error in a prescription.
| GEE* regression model | Univariate analysis | Final multivariate model† | ||||
|---|---|---|---|---|---|---|
| 2.34 | [1.54-3.55] | <0.001 | 3.13 | [1.89-5.16] | <0.001 | |
| 0.57 | [0.47-0.70] | <0.001 | ||||
| <0.001 | <0.001 | |||||
| day2 | 0.39 | [0.29-0.52] | 0.34 | [0.25-0.47] | ||
| day3 | 0.57 | [0.49-0.67] | 0.54 | [0.45-0.64] | ||
| day4 | 0.67 | [0.60-0.76] | 0.64 | [0.56-0.73] | ||
| day5 | 0.74 | [0.67-0.81] | 0.71 | [0.64-0.79] | ||
| day6 | 0.78 | [0.72-0.84] | 0.76 | [0.69-0.82] | ||
| day7 | 0.81 | [0.76-0.86] | 0.79 | [0.73-0.85] | ||
| <0.001 | 0.002 | |||||
| No | 1.00 | 1.00 | ||||
| Yes | 2.19 | [1.41-3.39] | 2.16 | [1.35-3.43] | ||
| 0.49 | ||||||
| No | 1.00 | |||||
| Yes | 0.85 | [0.54-1.34] | ||||
| 0.061 | ||||||
| No | 1.00 | |||||
| Yes | 1.65 | [0.97-2.80] | ||||
| 0.016 | ||||||
| diabetes care | 1.00 | |||||
| geriatrics | 2.08 | [0.62-6.99] | ||||
| internal medicine (ward 1) | 2.48 | [0.72-8.42] | ||||
| internal medicine (ward 2) | 3.20 | [0.95-10.65] | ||||
| immunology | 3.33 | [0.99-11.15] | ||||
| vascular medicine | 3.41 | [1.03-11.28] | ||||
| nephrology | 6.31 | [1.94-20.46] | ||||
| 0.124 | ||||||
| No | 1.00 | |||||
| Yes | 0.49 | [0.19-1.22] | ||||
* GEE = Generalized Estimating Equations; † After backward selection with all potential confounders; ‡ The log-linearity relationship traduces that the decrease of the risk to have a new prescribing error was not constant over time but "digressive".
Figure 2Flow charts of the alerts.
Description of the 117 new prescribing errors and status of the alert the next day.
| Status of the alert the next day | Alert | Alert | Indeterminate* | Alerts posted within 1 or 2 days after prescriptions † | All | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Error | N = 50 | N = 46 | N = 7 | N = 14 | N = 117 | |||||
| Inappropriate choice of drug and/or drug dose | 27 | (55.6) | 26 | (57.4) | 2 | (28.6) | 11 | (78.6) | 66 | (56.4) |
| Drug-drug interaction | 10 | (20.0) | 3 | (6.5) | 1 | (14.3) | 2 | (14.3) | 16 | (13.7) |
| Wrong unit | 4 | (8.0) | 1 | (2.2) | 1 | (14.3) | 1 | (7.1) | 7 | (6.0) |
| Wrong route | 1 | (2.0) | 1 | (2.2) | 0 | (0.0) | 0 | (0.0) | 2 | (1.7) |
| Drug omission | 8 | (16.0) | 14 | (30.4) | 2 | (28.6) | 0 | (0.0) | 24 | (20.5) |
| Duplicate order | 0 | (0.0) | 1 | (2.2) | 1 | (14.3) | 0 | (0.0) | 2 | (1.7) |
| Life-threatening | 0 | (0.0) | 0 | (0.0) | 0 | (0.0) | 0 | (0.0) | 0 | (0.0) |
| Significant or serious | 14 | (28.0) | 7 | (15.2) | 2 | (28.6) | 8 | (57.1) | 31 | (26.5) |
| None | 36 | (72.0) | 39 | (84.8) | 5 | (71.4) | 6 | (42.9) | 86 | (73.5) |
* error occurring at the end of follow-up period (the day of discharge or 15th day of stay).
† alerts posted within 1 or 2 days after prescriptions written during the week end.
Figure 3CART tree for predicting alert's overriding among new alerts. Numbers in ellipses and rectangles report the number of observed alerts. Classifying variables are indicated in the ellipses as questions and splitting rules are printed at the branches. In the terminal nodes (rectangles), the number and the proportions of correctly predicted outcomes by the tree (respectively incorrectly predicted) are presented as "correct decision" (respectively "incorrect decision"). The ward was the first discriminating variable, i.e. most influential reasons for alert's overriding. For the vascular medicine and geriatrics wards (23 alerts), alert's overriding was dependent from the first level of the 'Anatomical Therapeutic Chemical classification '. Among the alerts due to 'Alimentary tract and metabolism, Systemic hormonal preparations, excluding sex hormones and insulins, Musculo-skeletal system, Nervous system, Respiratory system, Sensory organs and Various' errors (n = 14), it correctly classified 100% of the alerts with an overriding on the next day. Among the errors belonging to the categories 'Blood and blood forming organs, Cardiovascular system, Anti-infectives for systemic use' (n = 9), it correctly classified 5 alerts (56%) with a non-overriding on the next day and missed 4 alerts' overriding. For the other wards (internal medicine 1, clinical immunology, internal medicine 2, diabetes care, and nephrology), the next differentiating factor was type of errors. For new alerts with 'Inappropriate choice of drug and/or drug dose, Wrong unit, Wrong route, Drug omission or Duplicate order' errors, the classification and regression tree predicted a non-overriding of the alert whereas for 'Drug-drug interaction' error, it anticipated an overriding on the next day.