Hostname: page-component-8448b6f56d-42gr6 Total loading time: 0 Render date: 2024-04-24T18:21:27.326Z Has data issue: false hasContentIssue false

Reduced Clostridium difficile Tests and Laboratory-Identified Events With a Computerized Clinical Decision Support Tool and Financial Incentive

Published online by Cambridge University Press:  12 April 2018

Gregory R. Madden
Affiliation:
Division of Infectious Diseases and International Health, Department of Medicine, University of Virginia Health System, Charlottesville, Virginia
Ian German Mesner
Affiliation:
Health Information and Technology, University of Virginia Health System, Charlottesville, Virginia
Heather L. Cox
Affiliation:
Division of Infectious Diseases and International Health, Department of Medicine, University of Virginia Health System, Charlottesville, Virginia Department of Pharmacy Services, University of Virginia Health System, Charlottesville, Virginia
Amy J. Mathers
Affiliation:
Division of Infectious Diseases and International Health, Department of Medicine, University of Virginia Health System, Charlottesville, Virginia Clinical Microbiology Laboratory, Department of Pathology, University of Virginia Health System, Charlottesville, Virginia
Jason A. Lyman
Affiliation:
Department of Public Health Sciences, University of Virginia Health System, Charlottesville, Virginia
Costi D. Sifri*
Affiliation:
Division of Infectious Diseases and International Health, Department of Medicine, University of Virginia Health System, Charlottesville, Virginia Office of Hospital Epidemiology/Infection Prevention and Control, University of Virginia Health System, Charlottesville, Virginia
Kyle B. Enfield
Affiliation:
Division of Pulmonary and Critical Care Medicine, Department of Medicine, University of Virginia Health System, Charlottesville, Virginia Office of Quality and Performance Improvement, University of Virginia Health System, Charlottesville, Virginia.
*
Address correspondence to Costi D. Sifri, MD, Division of Infectious Diseases and International Health, University of Virginia Health System, PO Box 800473, Charlottesville, VA 22908-0473 (csifri@virginia.edu).
Rights & Permissions [Opens in a new window]

Abstract

We hypothesized that a computerized clinical decision support tool for Clostridium difficile testing would reduce unnecessary inpatient tests, resulting in fewer laboratory-identified events. Census-adjusted interrupted time-series analyses demonstrated significant reductions of 41% fewer tests and 31% fewer hospital-onset C. difficile infection laboratory-identified events following this intervention.

Infect Control Hosp Epidemiol 2018;39:737–740

Type
Concise Communications
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited. All rights reserved.
Copyright
© 2018 by The Society for Healthcare Epidemiology of America

Clostridium difficile is the most common causative pathogen of healthcare-associated infection (HAI) in the United States, resulting in significant cost, morbidity, and mortality.Reference Lessa, Mu and Bamberg 1 Because many hospitals have adopted highly sensitive nucleic acid amplification testing (NAAT) for C. difficile in favor of less sensitive tests, overdiagnosis of C. difficile infection (CDI) is suspected to be common, and up to half of hospitalized patients with positive C. difficile NAAT may not need treatment.Reference Polage, Gyorke and Kennedy 2 Positive tests in patients who are not infected may lead to overtreatment and increased healthcare costs. One explanation for CDI overdiagnosis is that some patients with low pretest probability for infection may be inappropriately tested. Identifying “true” disease is essential to optimizing management and avoiding overtreatment.

Improving test utilization through diagnostic stewardship, such as through computerized clinical decision support (CCDS), is a recognized means by which hospitals may attempt to reduce cost and diagnostic error.Reference Madden, Weinstein and Sifri 3 While some CCDS interventions improve provider performance and patient outcomes, others are ineffective.Reference Hunt, Haynes and Hanna 4 , Reference Revolinski 5 Here, we report the implementation of a CCDS tool coupled with education and trainee incentives to reduce C. difficile testing.

METHODS

At a 619-bed tertiary-care hospital, we performed a quasi-experimental retrospective cohort study analyzing rates of inpatient C. difficile test ordering and National Healthcare Safety Network (NHSN)-defined hospital-onset (ie, occurring on hospital day >3) C. difficile infection (HO-CDI) laboratory-identified (LabID) events 6 before and after the introduction of a CCDS tool with nurse and provider education along with a financial incentive for graduate medical education (GME) trainees. The CCDS tool was developed after internal auditing by antimicrobial stewardship identified that 10 of 15 HO-CDI events (67%) during a 1-month period potentially lacked an indication for testing.

The 2-part CCDS tool first displayed a duplicate-order information screen listing C. difficile test results within 28 days. Second, a series of questions designed to guide appropriate testing was presented to the ordering provider. The algorithm (Figure 1) was designed to highlight duplicate C. difficile tests that may be low yieldReference Cardona and Rand 7 and practice guidelines recommending testing only of symptomatic patients, while considering risk factors including antibiotic use, intra-abdominal surgery, and advanced age.Reference Cohen, Gerding and Johnson 8 A step-wise algorithm was chosen based on limitations of screen size and ease of reading (see Supplementary Material for software demonstration). A test could be ordered regardless of provider responses. According to the existing laboratory protocol, solid stool specimens were rejected for NAAT testing.

FIGURE 1 Two-part clinical decision support algorithm. NOTE. NAAT, nucleic acid amplification test for Clostridium difficile; C. diff, C. difficile; PPV, positive predictive value; WBC, white blood cell count.

The CCDS tool was preceded by a series of educational efforts presented to all providers and nurses, including email, flyers, and a brief video (see Supplementary Material). These efforts explained the rationale for the CCDS, provided guidelines on appropriate C. difficile specimens, and demonstrated the tool. A representative body of GME trainees performed in-person training with house staff in each inpatient department. Education occurred over a 2-week period prior to activation of the CCDS tool with a reminder message on the day of implementation. In addition, GME trainees were provided a 0.8% bonus (jointly funded by the UVA Office of Graduate Medical Education and UVA Health System) at the end of the academic year (June 2017) if testing by GME providers fell by ≥25% compared to the preintervention period.

The CCDS tool was developed in response to a broad, multidisciplinary commitment to HO-CDI reduction endorsed by hospital leadership. Monitoring was conducted daily using an electronic C. difficile dashboard reflecting all daily tests, new positive tests, duplicate tests, and test attempts “prevented” by the CCDS, provided to hospital staff and administration with unit and service attributions. The antimicrobial stewardship team performed chart reviews of patients with positive tests, evaluating appropriate testing and other opportunities to reduce HO-CDI. In addition to CCDS implementation, peroxyacetic acid/hydrogen peroxide-based cleaner was adopted hospital-wide in May 2017 to replace quaternary ammonium and bleach for daily and terminal hospital room disinfection. In addition, a policy change on April 2017 restricted antibiotics for neurosurgical drain prophylaxis. No other major new C. difficile-related infection control interventions were implemented during the study period.

An 18-month preintervention control period (June 2014 to November 2016) was compared to a 10-month postintervention period (December 2016 to September 2017) following CCDS implementation on December 5, 2016. In this analysis, HO-CDI and test count data were normalized to monthly patient days. An order was considered prevented if providers initiated but did not complete a C. difficile NAAT order. Canceled test orders and samples not submitted to the laboratory were excluded from the analysis.

Testing rates and proportions of positive tests were compared between the intervention groups using independent sample t tests and the χ2 test, respectively. Due to fewer total HO-CDI events, a quasi-Poisson model was used to assess changes in HO-CDI counts between pre- and post intervention periods, using patient days as an offset. Analyses were performed using statistical R version 3.4.1 software (R Core Team, Vienna, Austria). The University of Virginia Internal Review Board approved this study (no. 20082).

RESULTS

A total of 233,577 and 132,641 patient days were observed during the pre- and postintervention periods, respectively. The CCDS tool was associated with a 41% reduction in the overall rate of C. difficile tests (208 results per 10,000 patient days preintervention compared to 122 per 10,000 patient days postintervention; P<.001). We also observed 31% fewer HO-CDI events (11.8 per 10,000 patient days preintervention versus 8.1 postintervention; P=.001) (Figure 2).

FIGURE 2 Monthly C. difficile tests and hospital-onset C. difficile infection (HO-CDI) laboratory-identified (LabID) events detected with CCDS tool pre- and postintervention. (a) Monthly rates of test results. (b) Trends of monthly HO-CDI rates over the same period. The dotted line depicts predicted values using the quasi-Poisson model.

Duplicate negative results (defined as a negative result within 3 days following a previous negative) decreased from 5.7 per 10,000 patient days (134 duplicate negatives) preintervention to 1.5 per 10,000 patient days (20 duplicate negatives) postintervention (P < .001). Duplicate positive results (within 14 days following a previous positive test) decreased from 0.9 per 10,000 patient days (22 duplicate positives) preintervention to 0.15 per 10,000 patient days (2 duplicate positives) postintervention (P=.004). A nonsignificant reduction in laboratory-rejected stool specimens occurred, from 15.9 per 10,000 patient days (371 rejected) preintervention to 10.8 per 10,000 patient days (143 rejected) postintervention (P=.064). The percentage of positive C. difficile results did not significantly change from 16.2% preintervention to 17.5% postintervention (P=.195).

DISCUSSION

In this quasi-experimental quality improvement study, CCDS targeting inappropriate C. difficile testing was associated with significantly reduced rates of overall tests performed. CCDS was also associated with reduced HO-CDI events. Duplicate results were significantly reduced postintervention, while the percentage of positive tests and the rate of specimens rejected by the laboratory were not significantly changed.

To our knowledge, this is the first report of a CCDS tool for C difficile testing for which prevented tests can be counted. Numbers of prevented tests do not appear to entirely account for reductions in total test numbers over time, implying a possible influence on ordering behavior.

Prior studies examining CCDS for addressing CDI have shown mixed results. One “best practice alert” for CDI treatment did not show improved compliance with treatment guidelines.Reference Revolinski 5 Of 2 studies of CCDS for C. difficile testing that targeted laxative use (an issue not addressed in our CCDS tool), only 1 demonstrated reduced rates of total tests and C. difficile events.Reference Drees, Dressler and Taylor 9 , Reference White, Hamilton and Pegues 10 Nicholson et alReference Nicholson, Freswick and Di Pentima 11 observed reduced C. difficile testing rates with CCDS-based guidance in pediatric patients, but CDI rates were not compared.

The strengths of this study include its size and broad deployment of CCDS across an entire hospital system, contributing to its generalizability. However, the study has several limitations. As a quasi-experimental retrospective analysis, we could not control for potential time-varying confounders, and a 10-month postintervention period did not allow us to determine the long-term durability of our findings. The potential influences of institutional changes such as the monetary benefit of reduced C. difficile testing by the GME trainees, antimicrobial stewardship activities, peroxyacetic acid-based cleaning, and increased overall awareness of C. difficile could not be fully separated from that of the CCDS tool. Analyses of additional data following the incentive payment are needed to determine the role the incentive played in the behavioral change. However, post hoc subgroup analyses excluding the 7-month financial incentive period (December 2016 to June 2017) and the peroxyacetic acid period (May to September 2017) demonstrated similar effects on testing and HO-CDI (data not shown). Further studies engaging providers across multiple settings (community and hospitals), potentially with randomization and without financial rewards or other interventions, would be helpful in establishing the generalizability of our results.

The observed reduction in LabID events theoretically reflects the prevention of potentially false-positive test results (eg, representing colonization, not infection) through reduced inappropriate tests but could also reflect improved antimicrobial stewardship, environmental factors, or a reduction of appropriately ordered tests. Although it is possible that reduced C. difficile testing may have led to missed or delayed CDI diagnoses resulting in undertreatment and patient harm, increased CDI-related complications or deaths were not noted during the study period (data not shown). Similarly, other studies using CCDS for C. difficile testing have not been associated with poor outcomes.Reference White, Hamilton and Pegues 10 , Reference Nicholson, Freswick and Di Pentima 11 Nevertheless, these studies have not systematically addressed the potential for diagnostic stewardship to cause patient harm. Future diagnostic stewardship studies for C. difficile NAAT or other testing methodologies should ideally include outcome measures targeted to patients with prevented tests to determine clinical relevance and patient safety.Reference Madden, Weinstein and Sifri 3

Optimizing test utilization remains a critical component of quality healthcare delivery. Understanding how computerized order entry can be leveraged to drive behavior is important in improving appropriate testing.

ACKNOWLEDGMENTS

Financial support: This study was supported by the National Institutes of Health (NIH) Infectious Diseases Training (grant no. 5T-32AI007046-41).

Potential conflicts of interest: All authors report no conflicts of interest relevant to this article.

SUPPLEMENTARY MATERIAL

To view supplementary material for this article, please visit https://doi.org/10.1017/ice.2018.53.

References

REFERENCES

1. Lessa, FC, Mu, Y, Bamberg, WM, et al. Burden of Clostridium difficile infection in the United States. N Engl J Med 2015;372:825834.Google Scholar
2. Polage, CR, Gyorke, CE, Kennedy, MA, et al. Overdiagnosis of Clostridium difficile infection in the molecular test era. JAMA Intern Med 2015;175:17921801.CrossRefGoogle ScholarPubMed
3. Madden, GR, Weinstein, RA, Sifri, CD. Diagnostic stewardship for healthcare-associated infections: opportunities and challenges to safely reducing test use. Infect Control Hosp Epidemiol 2018;39:214218.CrossRefGoogle ScholarPubMed
4. Hunt, DL, Haynes, RB, Hanna, SE, et al. Effects of computer-based clinical decision support systems on physician performance and patient outcomes. JAMA 1998;280:1339.Google Scholar
5. Revolinski, S. Implementation of a clinical decision support alert for the management of Clostridium difficile infection. Antibiotics (Basel) 2015;4:667674.Google Scholar
6. CDC/NHSN surveillance definitions for specific types of infections. Centers for Disease Control and Prevention website. https://www.cdc.gov/nhsn/pdfs/pscmanual/17pscnosinfdef_current.pdf. Updated January 2017. Accessed April 26, 2017.Google Scholar
7. Cardona, DM, Rand, KH. Evaluation of repeat Clostridium difficile enzyme immunoassay testing. J Clin Microbiol 2008;46:36863689.CrossRefGoogle ScholarPubMed
8. Cohen, SH, Gerding, DN, Johnson, S, et al. Clinical practice guidelines for Clostridium difficile infection in adults: 2010 update by the Society for Healthcare Epidemiology of America (SHEA) and the Infectious Diseases Society of America (IDSA). Infect Control Hosp Epidemiol 2010;31:431455.Google Scholar
9. Drees, M, Dressler, R, Taylor, K, et al. Testing stewardship: a “hard stop” to reduce inappropriate C. diff testing. Open Forum Infect Dis 2017;4(Suppl 1):S1S2.CrossRefGoogle Scholar
10. White, DR, Hamilton, KW, Pegues, DA, et al. The impact of a computerized clinical decision support tool on inappropriate Clostridium difficile testing. Infect Control Hosp Epidemiol 2017;38:12041208.CrossRefGoogle ScholarPubMed
11. Nicholson, MR, Freswick, PN, Di Pentima, MC, et al. The use of a computerized provider order entry alert to decrease rates of Clostridium difficile testing in young pediatric patients. Infect Control Hosp Epidemiol 2017;38:542546.CrossRefGoogle ScholarPubMed
Figure 0

FIGURE 1 Two-part clinical decision support algorithm. NOTE. NAAT, nucleic acid amplification test for Clostridium difficile; C. diff, C. difficile; PPV, positive predictive value; WBC, white blood cell count.

Figure 1

FIGURE 2 Monthly C. difficile tests and hospital-onset C. difficile infection (HO-CDI) laboratory-identified (LabID) events detected with CCDS tool pre- and postintervention. (a) Monthly rates of test results. (b) Trends of monthly HO-CDI rates over the same period. The dotted line depicts predicted values using the quasi-Poisson model.

Madden et al. supplementary material

Madden et al. supplementary material 1

Download Madden et al. supplementary material(Video)
Video 133 MB

Madden et al. supplementary material

Madden et al. supplementary material 2

Download Madden et al. supplementary material(Video)
Video 54.1 MB