| Literature DB >> 33148237 |
Megan Howarth1, Meha Bhatt1, Eleanor Benterud1, Anna Wolska2, Evan Minty1, Kyoo-Yoon Choi3, Andrea Devrome3, Tyrone G Harrison1,4, Barry Baylis1, Elijah Dixon3, Indraneel Datta3, Neesh Pannu5, Matthew T James6,7,8,9.
Abstract
BACKGROUND: Acute kidney injury (AKI) is common in hospitalized patients and is associated with poor patient outcomes and high costs of care. The implementation of clinical decision support tools within electronic medical record (EMR) could improve AKI care and outcomes. While clinical decision support tools have the potential to enhance recognition and management of AKI, there is limited description in the literature of how these tools were developed and whether they meet end-user expectations.Entities:
Keywords: Acute kidney injury; Clinical decision support; Electronic medical record
Mesh:
Year: 2020 PMID: 33148237 PMCID: PMC7640650 DOI: 10.1186/s12911-020-01303-x
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Fig. 1Development process for acute kidney injury clinical decision support system within the province of Alberta, Canada. AKI: Acute Kidney Injury. Images used under permission: edel/Shutterstock.com
Fig. 2Acute kidney injury stage alert
Acute kidney injury alerts design and rationale
| Design features | Rationale |
|---|---|
| Criteria for alert | Change in serum creatinine based on KDIGO criteria, employing the National Health Service England algorithm. The change in creatinine between the reference value (measured in hospital) and the baseline value taken from the prior 7 days if available, and if not available, then a median of all values from one year prior to the reference value |
| Non-interruptive | Alerts are non-interruptive to avoid alert fatigue from multiple disruptive notifications to healthcare providers |
| Available to all | Alerts are available to all healthcare providers due to their diverse roles on the units and to allow for a concerted response by the care team for managing AKI |
| Alerts deployed at specific locations | The surgical units where the alerts are deployed were chosen based on their high incidence of AKI (identified through preliminary work) and the main initial management responses for AKI related to therapy with fluids and management of medications |
AKI Acute kidney injury, KDIGO Kidney Disease Improving Global Outcomes
Fig. 3Acute kidney injury adverse medication warning
Fig. 4Acute kidney injury clinical summary dashboard
Fig. 5Acute kidney injury order set. AKI: acute kidney injury, USKUB: kidney, ureter, bladder ultrasound, IV: intravenous, ARB: angiotensin II receptor blockers, ACE: angiotensin converting enzyme, NSAIDs: non-steroidal anti-inflammatory drugs
Characteristics of acute kidney injury alerts generated in the SunRise Clinical Manager electronic medication record from the silent alert phase on 14 medical and surgical hospital units in the Calgary Zone over a 30 day observation period
| Alert Frequency | Number (%) |
|---|---|
| Total AKI alerts | 81 (100.0) |
| Stage 1 AKI alerts | 54 (66.7) |
| Stage 2 AKI alerts | 14 (17.3) |
| Stage 3 AKI alerts | 13 (16.0) |
| Active medications included in AKI alerts | 36 (44.4) |
| Diuretics | 19 (23.4) |
| Antibiotics | 1 (1.2) |
| ACE-I/ARB | 10 (12.3) |
| NSAIDs | 6 (7.4) |
| Patient location where AKI alert generated | |
| Medical unit | 66 (81.5) |
| Surgical unit | 15 (18.5) |
AKI acute kidney injury, ACE-I angiotensin converting enzyme inhibitors, ARB angiotensin receptor blockers, NSAID non-steroidal anti-inflammatory drugs
Characteristics of acute kidney injury adverse medication warnings generated in the SunRise Clinical Manager electronic medication record from the silent alert phase on 14 medical and surgical hospital units in the Calgary Zone over a 30-day observation period
| Alert Frequency | Number (%) |
|---|---|
| Total AKI adverse medication warnings | 21 (100.0%) |
| AKI stage at time of adverse medication warning | |
| Stage 1 AKI alerts | 15 (71.4) |
| Stage 2 AKI alerts | 2 (9.6) |
| Stage 3 AKI alerts | 4 (19.0) |
| Medication orders prompting AKI adverse medication warning | |
| Diuretics | 11 (52.4) |
| Antibiotics | 4 (19.0) |
| ACE-I/ARB | 3 (14.23) |
| NSAID | 3 (14.3) |
| Medical unit | 10 (47.6) |
| Surgical unit | 11 (52.4) |
AKI acute kidney injury, ACE-I angiotensin converting enzyme inhibitors, ARB angiotensin receptor blockers, NSAID non-steroidal anti-inflammatory drugs
Participant characteristics for usability survey evaluating clinical decision support tools
| Age (n, %) | |
| < 30 years | 6 (26%) |
| 30–39 years | 13 (56%) |
| 40–49 years | 2 (9%) |
| 50–59 years | 2 (9%) |
| Sex (n, %) | |
| Female | 19 (83%) |
| Male | 4 (17%) |
| Clinical role (n, %) | |
| Nursing staff | 15 (65%) |
| Physician | 5 (22%) |
| Pharmacist | 3 (13%) |
| Number of years in practice (n, %) | |
| Less than 5 years | 7 (30%) |
| 5–10 years | 9 (39%) |
| More than 10 years | 7 (30%) |
Results of usability survey evaluating clinical decision support tools
| Strongly disagree | Disagree | Undecided | Agree | Strongly agree | |
|---|---|---|---|---|---|
| I think that I would like to use the AKI care pathway and decision support tools in SCM in my carea | 0 (0) | 0 (0) | 4 (18) | 11 (50) | 7 (32) |
| I found these tools in SCM unnecessarily complex | 6 (26) | 8 (35) | 7 (30) | 2 (9) | 0 (0) |
| I found the tools were easy to use | 0 (0) | 1 (4) | 4 (17) | 11 (48) | 6 (26) |
| I think that I would need assistance to be able to use the toolsa | 4 (18) | 11 (50) | 4 (18) | 4 (18) | 0 (0) |
| I found the various functions in these tools were well integrated | 0 (0) | 2 (9) | 10 (43) | 9 (39) | 2 (9) |
| I thought the display was too confusing | 3 (13) | 12 (52) | 8 (35) | 0 (0) | 0 (0) |
| I would imagine that most people would learn to use these tools very quickly | 0 (0) | 0 (0) | 6 (26) | 14 (61) | 3 (13) |
| I found these tools very cumbersome/awkward to use | 8 (35) | 8 (35) | 7 (30) | 0 (0) | 0 (0) |
| I felt very confident using these tools | 0 (0) | 1 (4) | 8 (35) | 10 (43) | 4 (17) |
| I need to learn more before I could use the tools appropriately | 5 (21) | 6 (26) | 4 (17) | 8 (35) | 0 (0) |
SCM Sunrise Clinical Manager™
aResults reported for 22 participants—1 participant did not respond to the question
Fig. 6a Order set user acceptance testing results among physicians. b Order set user acceptance testing results among nursing staff