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Sustained Infection Reduction in Outpatient Hemodialysis Centers Participating in a Collaborative Bloodstream Infection Prevention Effort

Published online by Cambridge University Press:  12 February 2016

Sarah H. Yi*
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
Alexander J. Kallen
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
Sally Hess
Affiliation:
University of Vermont Medical Center, Burlington, Vermont
Virginia R. Bren
Affiliation:
Altru Health System, Grand Forks, North Dakota
Mary E. Lincoln
Affiliation:
Mercy Dialysis Center, Clinton, Iowa
Gemma Downham
Affiliation:
AtlantiCare Regional Medical Center, Atlantic City, New Jersey
Karen Kelley
Affiliation:
Upper Peninsula Health System—Portage Dialysis, Hancock, Michigan
Stephanie L. Booth
Affiliation:
Upper Peninsula Health System—Portage Dialysis, Hancock, Michigan
Heather Weirich
Affiliation:
Independent Dialysis Foundation, Baltimore, Maryland
Alicia Shugart
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
Christi Lines
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
Anna Melville
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
John A. Jernigan
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
David G. Kleinbaum
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia Department of Epidemiology, Rollins School of Public Health, Emory University, Atlanta, Georgia.
Priti R. Patel
Affiliation:
Division of Healthcare Quality Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia
*
Address all correspondence to Sarah Yi, PhD, 1600 Clifton Road, MS A-16, Atlanta, GA 30329-4027 (sarahyi@cdc.gov).
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Abstract

Among dialysis facilities participating in a bloodstream infection (BSI) prevention collaborative, access-related BSI incidence rate improvements observed immediately following implementation of a bundle of BSI prevention interventions were sustained for up to 4 years. Overall, BSI incidence remained unchanged from baseline in the current analysis.

Infect Control Hosp Epidemiol 2016;37:863–866

Type
Concise Communications
Copyright
© 2016 by The Society for Healthcare Epidemiology of America. All rights reserved 

An analysis of a bloodstream infection (BSI) prevention effort in 17 outpatient hemodialysis centers found reductions in overall BSI and access-related BSI (ARBSI) incidence rates following the implementation of a bundle of BSI prevention interventions. Most of the decrease was identified soon after implementation of the interventions, with reductions sustained through a 15-month period.Reference Patel, Yi and Booth 1 We aimed to reevaluate the effect of the interventions using additional data and to investigate the sustainability of the initial observed reductions during an extended period.

METHODS

Evaluation Period

The overall evaluation period spanned January 2009 through December 2013. The baseline period consisted of the first year of data, and January 2010 marked the start of the intervention time frame.Reference Patel, Yi and Booth 1 In the initial analysis, data were available through March 2011 (intervention month 15). For this report, we analyzed data collected through December 2013, allowing for evaluation of a 48-month intervention period. Herein, intervention months 1–15 are referred to as the “early intervention” and months 16–48 are referred to as the “later intervention” periods.

CDC Dialysis BSI Prevention Collaborative

The baseline and early intervention periods of the Centers for Disease Control and Prevention (CDC) Dialysis BSI Prevention Collaborative (“Collaborative”) of 17 outpatient hemodialysis centers have been described previously.Reference Patel, Yi and Booth 1 Catheter hub disinfection upon connection or disconnection of central venous catheters (CVCs) 2 was added as an intervention in May 2011.Reference Patel, Yi and Booth 1 , 3 The last in-person meeting of representatives from the Collaborative occurred in November 2011, and monthly educational conference calls were reduced to quarterly starting March 2012.

Outcomes

Overall, BSI and ARBSI incidence were defined according to the CDC National Healthcare Safety Network (NHSN) Dialysis Event Protocol,Reference Patel, Yi and Booth 1 , 4 which defines BSI as a positive blood culture from a hemodialysis patient as an outpatient or within 1 day after hospital admission. An ARBSI is a BSI for which the suspected positive blood culture source is the vascular access or is otherwise uncertain.

Outcomes were stratified into 2 vascular access groupings: (1) arteriovenous fistulas and grafts and (2) tunneled and nontunneled central venous catheters (CVCs). Incidence rates were reported per 100 patient months. Data were restricted to those reported under a monthly reporting plan, which indicates a facility’s intent to follow the protocol.

Additional Data

Since our prior report,Reference Patel, Yi and Booth 1 we learned that 60 unanalyzed facility months of baseline and 3 months of intervention data had been reported to NHSN without corresponding reporting plans. 4 The data were verified to have been collected per protocol and prepared for submission under a reporting plan. The involved facilities entered the reporting plans, and the previously excluded data were incorporated into the present analysis.

Analytic and Statistical Methods

Effect of interventions

We first reevaluated the effect of the interventions with the additional baseline and intervention data. Consistent with the original model, we used segmented regressionReference Wagner, Soumerai, Zhang and Ross-Degnan 5 to estimate the baseline rate trend (β1), the level change after the intervention start (β2), and the difference between baseline and intervention trends (β3*); the intervention rate trend was quantified by combining the β1 and β3* estimates.

Sustainability of effect

To assess the sustainability of the initial rate reduction, we compared the early and later intervention periods. Two time-dependent variables were added to the original model: one was an indicator of the later intervention period and the other indicated the number of months since the start of that period. The first allowed for estimation of the rate level change immediately after the start of the later intervention period (β4); the second allowed for estimation of the difference in monthly rate trends between the early and later intervention periods (β5).

Model Specifications

We used segmented regression models with the number of BSIs or ARBSIs as the outcome offset by patient months. Because the analysis involved longitudinal data for multiple facilities, clustering was considered in 2 ways: (1) within-facility correlation of errors over time (ie, assessed specification of a non-independent residual) and (2) variation between facilities in baseline rates (ie, assessed specification of a random intercept). Because a small number of clusters were assessed (ie, 17 facilities) and to safeguard against choosing the wrong correlation structure, standard errors were calculated using the Morel, Bokossa, and Neerchal (MBN) sandwich estimator.Reference Morel, Bokossa and Neerchal 6 Data analysis was conducted using SAS Version 9.3 (SAS Institute, Cary, NC).

RESULTS

Facility Characteristics

All 17 facilities that were included initiallyReference Patel, Yi and Booth 1 continued reporting their data to the NHSN during the later intervention period. Facilities reported a median of 12 baseline months (range, 0–12) and 48 intervention months (range, 43–48). One facility had a 5-month gap in reporting due to temporary closure. Baseline data were available for 15 facilities; complete data were available for 12.

Main Results and Other Analyses

Unadjusted pooled mean BSI and ARBSI rates (both overall and stratified) decreased from the baseline to the intervention period (Table 1).

TABLE 1 Baseline Versus Intervention Period Percent Changes in Overall and Access-Related Bloodstream Infection Incidence Rates Among Facilities Participating in the CDC Dialysis Bloodstream Infection Prevention Collaborative: Effect of Interventions

NOTE. Model information: ln(λ) = β0 + β1(month) + Β2(intervention) + β3(intervention month); 60 months (12 baseline months, 48 intervention months), 17 facilities, offset: ln(No. of patient months), λ = No. of BSIs. Trend indicates month-to-month change in incidence rate ratio. Adjustments: random intercept for facility and specification of residual correlation structure: AR(1). Standard errors were calculated using the Morel, Bokossa, and Neerchal (MBN) sandwich estimator.

CVC, central venous catheter; CI, confidence interval; SE, standard error.

a Percent change = [exp(β) − 1]×100.

b Additional 33 months intervention data.

c Point estimate.

Effect of interventions

ARBSI rates dropped by 44% (P = .005) overall and 49% (P = .002) in the CVC stratum immediately following the start of the intervention period (Table 1). No changes in modeled BSI rates were detected.

Sustainability of effect

No immediate changes were seen in BSI or ARBSI rates, overall or in either stratum (Table 2). In addition, the later intervention period rate trend did not statistically differ from the early intervention period rate trend, overall or in either stratum.

TABLE 2 Early Versus Later Intervention Period Percent Changes in Incidence Rates for Overall and Access-Related Bloodstream Infections Among Facilities Participating in the CDC Dialysis Bloodstream Infection Prevention Collaborative: Sustainability of Effect

NOTE. Model information: ln(λ) = β0 + β1(month) + Β2(intervention) + β3(intervention month)+ Β4(sustain) + β5(sustain month)

60 months (12 baseline months, 48 intervention months), 17 facilities, offset: ln(No. of patient-months), λ = No. of BSIs. Trend indicates month-to-month change in incidence rate ratio. Adjustments: random intercept for facility and specification of residual correlation structure: AR(1). Standard errors were calculated using the Morel, Bokossa, and Neerchal (MBN) sandwich estimator.

CVC, central venous catheter; CI, confidence interval; SE, standard error.

a Early intervention period: intervention months 1–15.

b Later intervention period: intervention months 16–48.

c Percent change = [exp(β) − 1]×100.

d Point estimate.

DISCUSSION

Our updated analysis showed reductions in ARBSIs among dialysis facilities participating in the Collaborative immediately following intervention implementation overall and in the CVC stratum. Perhaps most importantly, this analysis further demonstrates that the early reductions in ARBSI were sustained for 4 years after the initiation of the intervention. These reductions persisted at facilities even after the formal collaboration ended. Based on the overall baseline rate (1.03 ARBSIs per 100 patient months) and intervention period denominator (46,351 patient months), an estimated 286 of 477 expected ARBSIs (60%) were prevented during the 48-month intervention period. This finding further supports the effectiveness of the interventions and the sustainability of the reductions even after intensive technical assistance from the CDC ended.

Reduction of BSIs in patients with CVCs has been demonstrated in other quality improvement projects, albeit over shorter follow-up periods.Reference Pronovost, Goeschel and Colantuoni 7 , Reference Rosenblum, Wang, Ball, Latham, Maddux and Lacson 8 A recent cluster-randomized trial conducted in outpatient hemodialysis facilities reported a 21% relative reduction in BSI rates in the quarter following implementation of CDC-recommended catheter care practices compared with control facilities; the improvement was sustained over the subsequent 9 months.Reference Rosenblum, Wang, Ball, Latham, Maddux and Lacson 8 Interventions implemented in both the trial and the Collaborative included chlorhexidine for catheter exit site care as well as adherence to catheter “scrub-the-hub” procedure. These studies lend support to the concept that reductions in CVC-related BSIs among patients undergoing hemodialysis are both achievable and sustainable.

While overall BSIs decreased significantly in the previous analysis, the reduction was no longer significant in the current analysis. Several changes since the previous analysis may have contributed to this reduction in precision: use of the MBN instead of the classical sandwich standard error estimator, additional data included for certain facilities, and additional intervention period months for all facilities.

Improvements associated with the intervention implementation were not observed in the fistula-graft stratum. This lack of improvement is not unexpected, however, because the Collaborative interventions primarily focused on CVCs.Reference Patel, Yi and Booth 1 Although we did not model stratified rates in the initial analysis, crude rates seemed to show a similar pattern of effect.Reference Patel, Yi and Booth 1

Our analysis had several limitations.Reference Patel, Yi and Booth 1 First, 5 of the 17 facilities lacked some or all data from the baseline period. Second, we lack information about the level of adherence to specific interventions within individual facilities. Third, an interrupted time series study design without a control group is still limited in the capacity to infer a causal relationship between the implementation of a bundle of BSI prevention interventions and changes in BSIs and ARBSIs.Reference Penfold and Zhang 9 The consistency in the findings of this and the initial study suggest that the reported findings are accurate.

In conclusion, bloodstream infections in hemodialysis patients are preventable through implementation of and adherence to recommended prevention practices focused on catheter care. Importantly for dialysis providers and patient safety advocates, these improvements can be maintained for multiple years after adoption.

ACKNOWLEDGMENTS

We acknowledge and thank the participating facilities for their support and assistance. The findings and conclusions in this report are those of the authors and do not necessarily represent the official position of the Centers for Disease Control and Prevention.

Financial support: This work was supported through personal time and/or salary funds from respective institutional affiliation(s) for each author.

Potential conflicts of interest: The authors have no other relevant conflicts or financial support to report.

Footnotes

PREVIOUS PRESENTATION. These findings were presented in part at the American Society of Nephrology Kidney Week 2013 Annual Meeting, November 8, 2013, in Atlanta, Georgia.

References

REFERENCES

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Figure 0

TABLE 1 Baseline Versus Intervention Period Percent Changes in Overall and Access-Related Bloodstream Infection Incidence Rates Among Facilities Participating in the CDC Dialysis Bloodstream Infection Prevention Collaborative: Effect of Interventions

Figure 1

TABLE 2 Early Versus Later Intervention Period Percent Changes in Incidence Rates for Overall and Access-Related Bloodstream Infections Among Facilities Participating in the CDC Dialysis Bloodstream Infection Prevention Collaborative: Sustainability of Effect