E-Health Tools to Improve Antibiotic Use and Resistances: A Systematic Review
Abstract
:1. Introduction
2. Materials and Methods
2.1. Protocol and Registration
2.2. Search Strategy and Inclusion Criteria
(clinical-decision-support-system OR decision-support-system OR computer-assisted decision-making OR expert-system OR decision-support) AND (antimicrobial resistance OR antimicrobial OR antibiotic* OR antimicrobial management) AND (electronic health OR e-health) NOT Tele-health.
2.3. Quality Assessment of the Included Studies
- (1)
- Allocation of study groups (random: 2, quasi-random: 1, selected controls: 0);
- (2)
- Unit of allocation (cluster (such as a practice): 2, physician: 1, patient: 0);
- (3)
- Baseline differences (presence of baseline differences with statistical adjustments: 2, baseline with no adjustments: 1, no baseline differences: 0);
- (4)
- Objectivity of the outcome (blinded assessment: 2, no blinding but defined assessment criteria: 1, no blinding and poorly defined: 0);
- (5)
- Completeness of follow-up (>90%: 2, 80–90%: 1, <80% or not described: 0).
2.4. Data Extraction and Analysis
3. Results
3.1. Study Selection
3.2. Quality Assessment
3.3. Study Characteristics
3.3.1. Study Design
3.3.2. Location
3.3.3. Setting
3.3.4. Study Population
3.3.5. Diseases
3.3.6. Intervention
3.3.7. Outcomes
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Author (Year) | Title | Study Design | Location | Setting | Disease | Study Population | Intervention |
---|---|---|---|---|---|---|---|
Bourgeois FC (2010) [25] | Impact of a computerized template on antibiotic prescribing for acute respiratory infections in children and adolescents. | RCT | USA | Pediatric practice | RTI | Children and Adolescents | Template for diagnosis with clinical support |
Gifford J (2017) [26] | Decision support during electronic prescription to stem antibiotic overuse for acute respiratory infections: a long-term, quasi-experimental study. | Retrospective study | USA | Hospital care | RTI | ALL | CDSS deployed at the moment of AB prescription |
Ginzburg R (2018) [37] | Using Clinical Decision Support Within the Electronic Health Record to Reduce Incorrect Prescribing for Acute Sinusitis. | Observational cohort | USA | Primary care clinics | Sinusitis | ALL | Best practice alert |
Gonzales R (2013) [41] | A cluster randomized trial of decision support strategies for reducing antibiotic use in acute bronchitis. | CRCT | USA | Primary care clinics | Uncomplicated acute bronchitis | ALL | Best practice alert |
Grayson ML (2004) [43] | Impact of an electronic antibiotic advice and approval system on antibiotic prescribing in an Australian teaching hospital. | Prospective, Non-randomized: Pre/post-study | Australia | Hospital care | CAP | ALL | Computer-generated AB approval |
Gulliford MC (2014) [44] | Electronic health records for intervention research: a cluster randomized trial to reduce antibiotic prescribing in primary care (eCRT study). | RCT | UK | Primary care clinics | RTI | Adult | CDSS with education and decision support |
Gulliford MC (2019) [45] | Effectiveness and safety of electronically delivered prescribing feedback and decision support on antibiotic use for respiratory illness in primary care: REDUCE cluster randomized trial. | CRCT | UK | Primary care clinics | RTI | Adult | Webinar + AB reports + Decision support tools |
Hingorani R (2015) [46] | Improving antibiotic adherence in treatment of acute upper respiratory infections: a quality improvement process. | Prospective, Non-randomized: Pre/post-study | USA | Primary care clinics | Sinusitis, pharyngitis | ALL | Didactic teaching, AB guidelines, CDSS integrated on EHR |
Jones BE (2018) [47] | In Data We Trust? Comparison of Electronic Versus Manual Abstraction of Antimicrobial Prescribing Quality Metrics for Hospitalized Veterans With Pneumonia. | Retrospective study | USA | Hospital care | Uncomplicated pneumonia | ALL | Electronic vs manual Medication Use Evaluation (MUE) |
Linder J (2007) [29] | Clinical decision support to improve antibiotic prescribing for acute respiratory infections: results of a pilot study. | Prospective, Non-randomized: Pre/post-study | USA | Primary care clinics | RTI | ALL | ARI Smart Form: assistance in AB prescription for RTI visits |
Linder JA (2006) [28] | Acute infections in primary care: accuracy of electronic diagnoses and electronic antibiotic prescribing. | Retrospective study, (double) cross-sectional | USA | Primary care clinics | RTI | ALL | Use of electronic prescribing |
Linder JA (2009) [27] | Documentation-based clinical decision support to improve antibiotic prescribing for acute respiratory infections in primary care: a cluster randomized controlled trial. | CRCT | USA | Primary care clinics | RTI | n.m. | ARI Smart Form: assistance in AB prescription for RTI visits |
Litvin CB (2013) [30] | Use of an electronic health record clinical decision support tool to improve antibiotic prescribing for acute respiratory infections: the ABX-TRIP study. | Prospective, Non-randomized: Pre/post study | USA | Primary care clinics | RTI | ALL | ABX-TRIP: guidelines, diagnostic criteria, AB use recommendation |
Mainous AG (2013) [31] | Impact of a clinical decision support system on antibiotic prescribing for acute respiratory infections in primary care: quasi-experimental trial. | Prospective, Non-randomized: Pre/post-study | USA | Primary care clinics | RTI | Adult | CDSS on EHR, helps with appropriate diagnosis and AB suggestions |
Mann D (2014) [32] | Measures of user experience in a streptococcal pharyngitis and pneumonia clinical decision support tools. | RCT | USA | Academic center | streptococcal pharyngitis and pneumonia | ALL | CDSS tool (iCPR) with Smartset (medication bundled-order set) |
McCullagh LJ (2014) [33] | User centered clinical decision support tools: adoption across clinician training level. | RCT | USA | Academic medical institution | streptococcal pharyngitis and pneumonia | ALL | CDSS tool (iCPR) with Smartset (medication bundled-order set) |
McCullough JM (2014) [34] | Impact of clinical decision support on receipt of antibiotic prescriptions for acute bronchitis and upper respiratory tract infection. | Retrospective study | USA | Primary care clinics | RTI | ALL | CDSS use assessment |
McDermott L (2014) [35] | Process evaluation of a point-of-care cluster randomised trial using a computer-delivered intervention to reduce antibiotic prescribing in primary care. | Mixed methods | UK | Primary care clinics | RTI | ALL | Computer point-of-care |
McGinn TG (2013) [36] | Efficacy of an evidence-based clinical decision support in primary care practices: a randomized clinical trial. | RCT | USA | Primary care clinics | Streptococcal pharyngitis and pneumonia. | ALL | Clinical prediction tool |
Rattinger GB (2012) [38] | A sustainable strategy to prevent misuse of antibiotics for acute respiratory infections. | Retrospective study | USA | Hospital care | RTI | ALL | CDSS with treatment paths for fluoroquinolones and azithromycin |
Rubin MA (2006) [39] | Use of a personal digital assistant for managing antibiotic prescribing for outpatient respiratory tract infections in rural communities. | Observational randomized study | USA | Primary care clinics | RTI | ALL | CDSS with diagnostic and therapeutic recommendation |
Webb BJ (2019) [40] | Antibiotic Use and Outcomes After Implementation of the Drug Resistance in Pneumonia Score in ED Patients With Community-Onset Pneumonia. | Prospective, Non-randomized: Pre/post-study | USA | Hospital care | Pneumonia | Adult | DRIP score calculator |
Author (Year) | Population (n) | Results | p-Value/CI | Observations |
---|---|---|---|---|
Bourgeois FC (2010) [25] | C = 12, P = 146, V = 419 | (1) Intervention group vs control group: 39.7% vs 46% prescription rate; * (2) Intervention group: with ARI-IT users vs non-ARI-IT users: 31.7% vs 39.9% prescription rate. | (1) p = 0.844; * (2) p = 0.02 | Usability: ARI-IT likely to improve efficiency |
Ginzburg R (2018) [37] | P= 54, V = 438 | (1) Prescription reduction: 86.3% to 61.7%; (2) Incorrect prescription: 88.5% to 78.7%. | (1) p < 0.01; (2) p = 0.02 | |
Gonzales R (2013) [41] | C = 12, P = 155, V = 12826 | Prescription reduction: 74.3% to 60.7% | p = 0.014 | |
Gulliford MC (2014) [44] | C = 100, V = 603 409 | Prescription reduction by 9.69%. | p = 0.034 | |
Gulliford MC (2019) [45] | C = 79 | Prescription intervention group vs control group (RR = 0.88). | CI (0.78–0.99); p = 0.040 | No effect in children < 15 years and adults > 84 years |
Jones BE (2018) [47] | C = 30, P = 111, V = 2004 | Evaluations as excessive AB duration: mMUE = 82.3%, eMUE = 84.0% | p < 0.001 | |
Linder J (2007) [29] | P = 10, V = 26 | Prescription reduction: Intervention group = 35% vs control group = 38%, | - | |
Linder JA (2006) [28] | C = 9, P = 96 | AB prescription on 45% of ARI visits | - | Electronic prescription increased from 2000 (15%) to 2003 (25%) (p = 0.03), becoming non-significant after clustering by clinic (p = 0.18) or clinician (p = 0.23) |
Linder JA (2009) [27] | C = 27, P = 443, V = 21961 | Prescription rate: Intervention group = 39% vs control group = 43% (OR = 0.8) * | CI (0.5–1.3) * | |
Litvin CB (2013) [30] | C = 9, Ph=27, N = 6, A = 6 | (1) Inappropriate AB use: +1.57% *, (2) Broad spectrum AB use: −16.30% | (1) CI (−5.35%, 8.49%) *; (2) CI (−24.81%, −7.79%) | |
Mainous AG (2013) [31] | C = 70 | (1) Inappropriate AB use: Intervention group vs control group: −0.6%/+4.2%/; (2) Broad-spectrum AB use: Intervention group vs control group: −16.6%/+1.2% | (1) p = 0.03; (2) p < 0.0001 | |
Mann D (2014) [32] | P = 168, V = 586 | Reduced prescription using Smartset (OR = 0.5) | CI (0.3–0.9); p = 0.01 | Acceptance of iCRP components (diagnosis and antibiotic combination: 14%) |
McCullagh LJ (2014) [33] | P = 168, V = 556 | Antibiotics ordered using Smartset: PGY1 = 26.4%, PGY2 = 24.3%, PGY3 = 33.1%, Attendings = 37.1% | p = 0.52 | |
McCullough JM (2014) [34] | V = 3317 | Use of CDSS associated with a 19% lower likelihood of prescription | - | |
McDermott L (2014) [35] | C = 100, P = 103 | System could decrease AB prescription rates | - | Useful features of CDSS |
McGinn TG (2013) [36] | V = 984 | AB prescription: intervention group vs control group (RR = 0.74) | CI (0.60–0.92) | |
Webb BJ (2019) [40] | V = 2169 | Broad-spectrum antibiotic use (OR = 0.62) | CI (0.39–0.98), p = 0.039 |
Author (Year) | Population (n) | Results | p-Value/CI | Observations |
---|---|---|---|---|
Gifford J (2017) [26] | V = 1131 | Adjusted odds of guideline concordance vs “all other antibiotics”:
| CI Az (5.7–13.6); CI GT (9.0–66.3); CI Fl (CI 3.5–8.8) | |
Grayson ML (2004) [43] | V = 2000 | Exact concordance/concordance in 76% of the cases | - | |
Hingorani R (2015) [46] | Ph = 27, N = 1, V = 240 | Intervention group = 91.25% vs control group = 78.6% | p < 0.001 | Usage rate: 40.5% |
Rattinger GB (2012) [38] | V = 3831 | Congruent prescription (RR = 2.57) | CI (1.865–3.540) | |
Rubin MA (2006) [39] | V = 14393 | 82% adherence to CDSS, 2.7% change | p = 0.016 | Usability score of 4.6 (on a 1–5 scale) |
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Carvalho, É.; Estrela, M.; Zapata-Cachafeiro, M.; Figueiras, A.; Roque, F.; Herdeiro, M.T. E-Health Tools to Improve Antibiotic Use and Resistances: A Systematic Review. Antibiotics 2020, 9, 505. https://doi.org/10.3390/antibiotics9080505
Carvalho É, Estrela M, Zapata-Cachafeiro M, Figueiras A, Roque F, Herdeiro MT. E-Health Tools to Improve Antibiotic Use and Resistances: A Systematic Review. Antibiotics. 2020; 9(8):505. https://doi.org/10.3390/antibiotics9080505
Chicago/Turabian StyleCarvalho, Érico, Marta Estrela, Maruxa Zapata-Cachafeiro, Adolfo Figueiras, Fátima Roque, and Maria Teresa Herdeiro. 2020. "E-Health Tools to Improve Antibiotic Use and Resistances: A Systematic Review" Antibiotics 9, no. 8: 505. https://doi.org/10.3390/antibiotics9080505
APA StyleCarvalho, É., Estrela, M., Zapata-Cachafeiro, M., Figueiras, A., Roque, F., & Herdeiro, M. T. (2020). E-Health Tools to Improve Antibiotic Use and Resistances: A Systematic Review. Antibiotics, 9(8), 505. https://doi.org/10.3390/antibiotics9080505