| Literature DB >> 27895940 |
Kathleen R Stevens1, Robert L Ferrer2.
Abstract
Addressing microsystem problems from the frontline holds promise for quality enhancement. Frontline providers are urged to apply quality improvement; yet no systematic approach to problem detection has been tested. This study investigated a self-report approach to detecting operational failures encountered during patient care. Methods. Data were collected from 5 medical-surgical units over 4 weeks. Unit staff documented operational failures on a small distinctive Pocket Card. Frequency distributions for the operational failures in each category were calculated for each hospital overall and disaggregated by shift. Rate of operational failures on each unit was also calculated. Results. A total of 160 nurses participated in this study reporting a total of 2,391 operational failures over 429 shifts. Mean number of problems per shift varied from 4.0 to 8.5 problems with equipment/supply problems being the most commonly reported category. Conclusions. Operational failures are common on medical-surgical clinical units. It is feasible for unit staff to record these failures in real time. Many types of failures were recognized by frontline staff. This study provides preliminary evidence that the Pocket Card is a feasible approach to detecting operational failures in real time. Continued research on methodologies to investigate the impact of operational failures is warranted.Entities:
Year: 2016 PMID: 27895940 PMCID: PMC5118534 DOI: 10.1155/2016/8416158
Source DB: PubMed Journal: Nurs Res Pract ISSN: 2090-1429
Figure 1STAR Pocket Card (2008 copyright Stevens & Ferrer).
Study participation.
| Unit | Unit size | Consented | Participation rate |
|---|---|---|---|
| A1 | 47 | 25 | 53.2% |
| A2 | 42 | 27 | 64.3% |
| A3 | 52 | 35 | 67.3% |
|
| |||
| B1 | 95 | 50 | 52.6% |
| B2 | 43 | 23 | 53.5% |
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| |||
| Total | 279 | 160 | 57.3% |
Staff shifts, hours worked, and problems reported.
| Unit | Shifts# | Hours# | Problems | Problems/12 hours (95% CI) | |
|---|---|---|---|---|---|
| Wave 1 | A1 | 48 | 548 | 371 | 8.0 (5.3–10.8) |
| A2 | 49 | 580 | 211 | 5.3 (2.9–5.8) | |
| A3 | 31 | 332 | 172 | 5.8 (3.7–7.9) | |
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| Wave 2 | A1 | 66 | 776 | 367 | 5.6 (4.1–7.1) |
| A2 | 57 | 680 | 313 | 5.5 (3.9–7.1) | |
| A3 | 36 | 420 | 278 | 8.5 (5.3–11.6) | |
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| |||||
| B1 | 89 | 880 | 333 | 4.7 (3.4–5.9) | |
| B2 | 53 | 584 | 194 | 4.0 (3.0–4.9) | |
Significant difference compared to the other units (p < 0.05).
#Significant difference between Wave 1 and Wave 2 for total number of shifts and hours reported.
Figure 2Distribution of operational failures by category (n = 2,391).
Figure 3Frequencies for categories of small operational failures, disaggregated by unit and time.
Most commonly reported operational failures.
| Operational failure | Category | Count |
|---|---|---|
| Not enough PCAs/staff | Staffing | 44 |
| Redundant documentation | Communication | 36 |
| Illegible written orders | Communication | 24 |
| No communication about new admissions | Communication | 19 |
| Not enough vital sign machines | Equipment/supplies | 16 |
| Not enough IV pumps | Equipment/supplies | 14 |
| Not enough linens | Equipment/supplies | 13 |
| Dirty utility room | Physical unit/layout | 13 |
| Medication dispensation machine broken | Equipment/supplies | 10 |
| Scales too heavy | Equipment/supplies | 9 |
Figure 4Rate of small operational failures by unit, disaggregated by day and night shifts, with estimate and 95% CI.