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What are effective strategies for the implementation of care bundles on ICUs: a systematic review

Abstract

Background

Care bundles have proven to be effective in improving clinical outcomes. It is not known which strategies are the most effective to implement care bundles. A systematic review was conducted to determine the strategies used to implement care bundles in adult intensive care units and to assess the effects of these strategies when implementing bundles.

Methods

The databases MEDLINE/PubMed, Ovid/Embase, CINAHL and CENTRAL were searched for eligible studies until January 31, 2015. Studies with (non)randomised designs on central line, ventilator or sepsis bundles were included if implementation strategies and bundle compliance were reported. Methodological quality was assessed by using the Downs and Black checklist. Data extraction and quality assessments were independently performed by two reviewers.

Results

In total, 1533 records were screened and 47 studies were finally included. In 49 %, pre/post designs were used, 38 % prospective cohorts, and the remaining studies used retrospective designs (6 %), interrupted time series (4 %) and longitudinal designs (2 %). The methodological quality was classified as ‘fair’ in 77 %, and the remaining as ‘good’ (13 %) and ‘poor’ (11 %). The most frequently used strategies were education (86 %), reminders (71 %) and audit and feedback (63 %). Our results show that compliance is influenced by multiple factors, i.e. types and numbers of elements varied and different compliance measurements were reported. Furthermore, compliance was calculated within different time frames. Also, detailed information about compliance, such as numerators and denominators, was not reported. Therefore, recalculation of consistent monthly compliance levels was not possible.

Conclusions

The three most frequently used strategies were education, reminders and audit and feedback. We conclude that the heterogeneity among the included studies was high due to the variety in study designs, number and types of elements and types of compliance measurements. Due to the heterogeneity of the data and the poor quality of the studies, conclusions about which strategy results in the highest levels of bundle compliance could not be determined. We strongly recommend that studies in quality improvement should be reported in a formalised way in order to be able to compare research findings. It is imperative that authors follow the standards for quality improvement reporting excellence (SQUIRE) guidelines whenever they report quality improvement studies.

Peer Review reports

Introduction

Because of the ageing population, the number of patients with chronic illnesses and comorbidities increases [1]. More complex medical care is needed for these patients when admitted to hospitals [1] of which the critically ill are admitted to the intensive care units (ICUs). To provide comprehensive care according to the best available evidence and to decrease the variation in daily care, clinical guidelines and protocols are developed [2]. Despite the efforts made in implementation, the adherence to guidelines and protocols is often poor [3], which negatively influences the quality of care [3, 4].

In order to encourage the adherence to clinical guidelines and to improve care processes, the Institute for Healthcare Improvement (IHI) has developed the concept of ‘care bundles’ [46]. Initially, care bundles were introduced to reorganise the structure and organisation of care processes within the ICU departments. For example, the central line bundle was developed to reduce bloodstream infections [5, 7]. Care bundles are designed around specific elements of patient care and consist of three to five key interventions, the so called elements [4]. These elements are either evidence based or are already generally accepted in ICUs and in national guidelines. The strength of a care bundle is that all elements must be performed in every eligible patient, unless medically contraindicated, using the all-or-none (AON) approach [46, 8].

The bundled approach has already proven to be effective in improving clinical outcomes [7, 9, 10]. In accordance with the model of Donabedian, high levels of bundle compliance should be achieved to improve clinical outcomes [11]. For instance, Resar et al. have shown that ICUs with the highest levels of bundle compliance had the highest rate of infection reduction [12]. Pronovost et al. demonstrated that the implementation of the central line bundle resulted in a large reduction in infection rates (up to 66 %) during the study period of 18 months [9]. Positive results can be obtained when improving the reliability of care processes to ensure patients receive all evidence-based interventions needed. This also includes the improvement of the organisational culture, i.e. the context in which care is delivered [13]. The IHI recommends achieving more than 95 % reliability [4]. Care bundles formed part of multiple patient safety initiatives in hospitals and ICUs worldwide and are nowadays widely accepted on ICUs.

Various strategies were described in the literature to encourage the implementation of care bundles on ICUs [14, 15]. Single strategies as well as multifaceted approaches, e.g. the combination of at least two strategies, were commonly used [9, 16]. It is not known which strategies were used to implement care bundles nor which ones are the most effective. Therefore, we conducted a systematic review to determine the strategies used to implement care bundles in adult ICU settings and to assess the effects of these strategies when implementing care bundles. We addressed the following questions: which strategies were used to implement the three most used care bundles, i.e. central line, ventilator and sepsis bundles, on adult ICUs and which implementation strategy or strategies lead to the highest levels of compliance?

Methods

Study design

A systematic review was conducted to determine the strategies used to implement care bundles in adult ICU settings and to assess the effects of these strategies when implementing care bundles. The protocol for the systematic review was not registered.

Selection criteria

We included studies of any design which implemented one of the three mostly used care bundles, i.e. central line, ventilator or sepsis bundles, on ICUs for adult patients. Studies were only included if a description of the implementation strategy was given and if the level of compliance of the whole bundle or either compliance for each bundle element was reported separately. Studies written in non-English language were excluded. Protocols, abstracts, letters, commentaries or editorials were also not eligible.

Search strategy

Systematic and comprehensive searches were developed with a clinical librarian and designed for optimal retrieval. The electronic databases MEDLINE/PubMed, Ovid/Embase, CINAHL and CENTRAL were searched for literature until January 31, 2015. The complete list of search terms and strategy of MEDLINE/PubMed can be found in Additional file 1. Additionally, the reference lists of included articles were checked.

Inclusion of relevant studies

Two reviewers independently selected the studies (MB/DD or MB/AG). In case of discrepancies in study selections, we reached consensus through discussion. A third reviewer (DD or AG) was involved in case of disagreement. Studies were selected if they reported about the following: (1) central line, ventilator or sepsis bundle; (2) implementation strategies used; and if (3) compliance levels for the whole care bundle was reported or for each bundle intervention separately. Two criteria for selecting studies, i.e. compliance rates and implementation strategies, were not (clearly) reported in abstracts, while these criteria could be well described in the full-text. Therefore, if there was uncertainty whether a study reported about one of these two inclusion criteria, it was selected for full-text screening. Full-text articles were thoroughly reviewed, and studies were included if all three selection criteria were clearly described.

Data extraction

Data extraction was performed by using a pre-defined data-abstraction sheet. The following data were extracted: author, publication year, research design, setting, participants, i.e. bundle users such as nurses or physicians, type of care bundle, implementation strategies, bundle elements, compliance rates and the type of compliance measurements. Two reviewers performed data extraction independently. In case of discrepancies, consensus was reached by discussion. A third reviewer was consulted in case consensus could not be reached.

Quality assessment

A great variety exists in quality assessment tools for non-randomised studies. A valid checklist to assess the quality is currently lacking [17]. However, Downs and Black designed a checklist to evaluate the methodological quality of studies with both randomised and non-randomised designs [18]. We have used this tool to assess the risk of bias among the included studies. Checklist item number 27 about sample size calculation was simplified to a score of 0 (no sample size calculation) or 1 (sample size calculation reported). Therefore, a maximum score of 28 could be achieved for randomised studies and 25 for non-randomised studies. The following cut-off points have been reported to categorise studies by quality: excellent (26–28), good (20–25), fair (15–19) and poor (≤14) [19, 20]. Two reviewers conducted the quality assessment independently. Disagreement between the reviewers was resolved through discussion. A third reviewer was involved in case of disagreement.

Implementation strategies

The different strategies that were used for implementation were categorised using the taxonomy developed by the Cochrane Effective Practice and Organisation of Care Group (EPOC) for dissemination and implementation strategies (Table 1) [21]. Where more than one method was used within one of the categories, this was measured as one strategy, i.e. if checklists and dashboards were used, this was categorised as a ‘reminder’ and was therefore measured as only one strategy.

Table 1 Explanation of the implementation strategies using the EPOC taxonomy [2123]

Types of measurements for care bundle compliance

Four different types of measurements were described in the literature to calculate the levels of bundle compliance: (1) ‘AON measurement’, which calculates the percentage of all indicated elements the patients actually have received, unless medically contraindicated [4, 24, 25]; (2) composite measurement, which can be calculated as a ratio between care that was actually given divided by the care that should have been given [24, 25]; (3) item-by-item measurement, which presents the nominator and denominator of each bundle element separately [25]; and (4) lowest level of compliance, which means that the lowest level of compliance to one of the elements is considered as the total bundle compliance [5, 7].

Data analysis/synthesis

We used the compliance levels, which were last recorded as the measure of effect of implementation. Compliance was summarised as a percentage and, if applicable, as a numerator and a denominator. When studies were described as quality improvement initiatives, we further classified the nature of the study design by two reviewers independently. In case of discrepancies, consensus was achieved through discussion. We determined if selective reporting of compliance levels occurred within the included studies. Data analysis was performed in two phases. Firstly, overviews were given of all included studies to give insight in the study characteristics, compliance levels, the implementation strategies used, the number and types of bundles and their elements and the methods used to calculate compliance. In this phase, studies were not excluded based on their methodological quality. Secondly, a subgroup analysis was performed. For the subgroup analysis, the methodological quality of studies was assessed. In case a study scored less than 14 points, i.e. poor quality, it was excluded. Furthermore, subgroup analysis was not performed if less than three data points were available per subgroup. Studies were stratified and analysed by study design, quality assessment outcome, type of compliance measurement and by type of bundle. Subsequently, data were grouped and analysed by factors that could influence compliance, i.e. number of implementation strategies, bundle elements, methods for calculating compliance. From this, we attempted to identify patterns in compliance levels. Pearson’s product-moment correlation coefficient or Spearman’s rank order were used to assess the relationship of compliance to the number of implementation strategies and the relationship between compliance and the number of elements. Kendall’s rank correlation assessed the relationship of compliance to the time frame in which compliance was calculated. R (version: 3.1.3; R Foundation for Statistical Computing, Vienna, Austria) was used to perform subgroup analysis. Although a meta-analysis was planned, this could not be conducted due to the heterogeneity of the data in study designs, interventions and outcomes. Therefore, a narrative synthesis of the data is presented. This systematic review follows the standards of the preferred reporting items for systematic reviews and meta-analysis (PRISMA) [26].

Results

In total, 1533 records were identified for possible inclusion through the initial search, of which a final set of 47 studies met the inclusion criteria (Fig. 1).

Fig. 1
figure 1

Flow chart of the study selection procedure

Quality assessment

Seventy-seven percent (36/47) of the studies scored between 15 and 19 points on the Downs and Black quality assessment scale and were classified as ‘fair’. Thirteen percent (6/47) of the studies scored 20 points or more and were classified as ‘good’. Eleven percent of the studies were classified as ‘poor’ (5/47) (Additional file 2). We assessed reporting bias of the included studies, and no studies were found reporting negative results.

Study characteristics

Overall, 72 % (34/47) of the studies were conducted in a single hospital and 28 % (13/47) in two or more hospitals. The 47 studies that were included reported about the implementation of 49 care bundles. Thirteen studies described the implementation of the central line bundle [2739], 27 studies described implementation of the ventilator bundle [10, 16, 35, 3963] and nine studies described the sepsis bundle implementation [6472] (Additional file 3). Two studies reported the implementation of two bundles, i.e. both central line and ventilator bundle [35, 39], and two studies were merged because they continued the implementation in the same hospital [60, 61]. One study [50] reported detailed information about the study participants, i.e. bundle users. They described variables as age, gender and years of work experience. The remaining studies only mentioned the type of disciplines that used the bundle without reporting additional information about the users. Studies about central line implementation used pre/post designs in 46 % (6/13), prospective cohort studies in 39 % (5/13) and retrospective designs in 15 % (2/13). Studies about the implementation of the ventilator bundle were conducted with pre/post designs in 48 % (13/27), with prospective cohorts in 33 % (9/27), as a longitudinal study in 4 % (1/27) and as both interrupted time series and retrospective designs in 7 % (2/27). For the studies about sepsis bundle implementation, pre/post designs were used in 56 % (5/9) and prospective cohort designs in 44 % (4/9). A detailed description of relevant study characteristics is shown in Additional file 3, which is organised by type of bundle and study design.

Number of care bundle elements

Both the number of elements per bundle and the types of element varied (Additional file 4). Three types of central line bundles were described: (1) central line bundle in general (n = 8), (2) insertion bundle (n = 5) and (3) maintenance bundle (n = 3). The range of elements within the central line bundle varied from three to seven elements (Additional file 4). In 8/16 central line bundles, five elements were included and most of these elements were derived from the original IHI bundle [5]. The number of elements per ventilator bundle ranged from four to seven. In 12 studies (44 %, 12/27), the bundle consisted of four elements, and in three studies [50, 58, 62] (11 %, 3/27), the bundle contained seven elements (Additional file 4). The most common element was ‘elevation of the head-of-the-bed’ in 96 % (26/27), followed by deep venous thrombosis prophylaxis and peptic ulcer prophylaxis in 78 % (21/27). The sepsis bundle was divided into the resuscitation bundle (n = 5) and management bundle (n = 6). In two studies [67, 68], the general sepsis bundle contained six and 11 elements, respectively. The resuscitation bundle has a range of five to seven elements, while the management bundle contains two to four elements (Additional file 4).

Implementation strategies

The three most frequently used strategies to implement care bundles were as follows: educational activities in 88 % (43/49) followed by reminders in 71 % (35/49) and audit and feedback (A&F) in 63 % (31/49). Family participation was only adopted as a strategy to implement the ventilator bundle (Table 2). Within each study about central line implementation, a minimum of one strategy was described, ranging from one to a maximum of seven strategies. In all studies of central line bundle implementation, checklists were used. Education was used in 85 % (11/13) and A&F in 77 % (10/13). In 54 % (7/13), the time-out procedure was reported (Additional file 3). In studies of the implementation of the ventilator bundle, there is a great variety in the number of strategies, ranging from one to nine strategies (Table 2). The three most frequently used strategies were education (85 %, 23/27), reminders (78 %, 21/27) and A&F (67 %, 18/27). In studies of the implementation of the sepsis bundle, education was most frequently used (89 %, 8/9), followed by mass media strategies, e.g. distribution of posters (44 %, 4/9). In contrast with the strategies to implement the central line and ventilator bundles, the concept of a reminder was only used in one study of the implementation of the sepsis bundle [66] (Table 2).

Table 2 Implementation strategies

Type of compliance measurements

In the majority of the studies, the AON approach was used (n = 36). The composite measurement was reported in four studies [33, 46, 53, 63]. Three studies [38, 39, 52] reported the lowest level of compliance, two studies [45, 72] used the item-by-item measurement (Additional file 3) and in two studies the type of measurement was not clearly reported. In nine studies on the central line bundle implementation, the AON approach was reported to calculate the compliance levels. In two studies, the composite measurement was used and in one study, the lowest level of compliance. In one study, the type of measurement could not be identified. Exline et al. reported a high level of compliance of 100 % with the insertion bundle, using the AON approach [36]. In the study of Render et al., the compliance with the central line bundle was 98 % at the end of the study period using the composite measurement [33]. One study [27] reported a low compliance rate of 44 %, which was measured over a period of 18 months (Additional file 3). In the calculation of the compliance of the ventilator bundle, four types of measurements were used. One study reported the compliance per single item [46], three studies used the composite measurement and two studies used the lowest level of compliance. In the remaining studies, the AON approach was used to measure the compliance of the ventilator bundle (Additional file 3).

Time frame compliance calculation

Compliance was calculated over different time frames, i.e. some studies calculated compliance for each month while others measured the overall compliance over a longer period, i.e. 1 or 2 years. In three studies about ventilator bundle implementation [57, 5961], compliance rates of 100 % were reached. In these studies, the compliance was calculated monthly by using the AON approach. Two studies reported low compliance levels of 30 and 34 %, respectively [42, 52]. In these studies, the compliance was measured using the AON approach over the whole study period (Additional file 3). In most studies about sepsis bundle implementation, the level of compliance was measured using the AON approach. Only one study [66] used the item-by-item measurement to report compliance. The compliance levels for sepsis bundles were exceptionally low compared to the central line and ventilator bundles (Additional file 3). Two studies reported compliance levels of 68 % [64] and 70 % [68], respectively. However, these studies were performed in small patient numbers.

Effects on compliance

The first subset of studies that was analysed included studies with pre/post designs, which were qualified as either good or fair and in which compliance was calculated by using the AON approach. Additional file 5: Figure S1 shows that, overall, there is no association between the number of strategies used and compliance levels (r = 0.118, 95 % CI −0.331 to 0.523, p = 0.612). The same applies when the bundles are analysed separately. As shown in Table 2, different strategies were used in combination for implementation of care bundles. For the implementation of the central line and ventilator bundle, the combination of education, reminders and A&F was used. For the implementation of the sepsis bundle, education is mainly used in combination with distribution of educational materials. Overall, there is an association neither between compliance and the number of elements (ρ = 0.140, p = 0.545) nor between compliance and the time frame used to calculate compliance (τ = −0.080, p = 0.639). The second subset of studies that was analysed included prospective cohort studies with quality assessments of either good or fair and in which compliance was calculated using the AON approach. Additional file 5: Figures S4 to S6 show that there is a variety in compliance levels. Moreover, no association can be found between the number of implementation strategies (ρ = 0.539, p = 0.057), bundle elements (ρ = −0.303, p = 0.314) and time frame used for measuring compliance (τ = −0.189, p = 0.417).

Discussion

In this systematic review, we identified the strategies that were reported to implement care bundles in ICU settings, and subsequently, we attempted to find the best strategies to achieve high levels of bundle compliance. Care bundles have already proven to be effective in reducing negative clinical outcomes [7, 9, 10]. This reduction is associated with the compliance rates to the care bundles [12]. It is important to mention that we, therefore, focused on finding the best implementation strategy to achieve high levels of bundle compliance and not on the outcome of care processes. Although care bundles are perceived as valuable and are proven to have an effect on the quality of care, it is still a challenge to achieve high levels of bundle compliance.

Our results show that the three most frequently used implementation strategies were education followed by reminders and A&F. These findings are consistent with other reviews about implementation strategies in general [73, 74], in which these three strategies were commonly used to implement best practices in hospitals [73] or critical care areas [74]. In 53 % of the studies, a combined strategy consisting of education, reminders and A&F were used. This combination was mainly used to implement the ventilator bundle (57 %), and only used in 11 % for implementing the sepsis bundle. Overall, after implementation of the bundles, compliance levels varied, ranging from 33 to 100 %. However, these findings should be interpreted with caution, because studies included in this systematic review showed a variety of designs. The majority of studies involved quality improvement initiatives with pre/post designs or prospective cohort studies without using controls. For these studies, secular trends that might have occurred at the same time were not taken into account. Furthermore, we assessed the quality of the individual studies by using the checklist of Downs and Black [18] and the majority of the studies were classified as fair. Remarkably, none of the studies provided more detailed information about the participants, i.e. bundle users, except for one [50]. Information about the setting was reported in all studies. Such details about the context of an intervention should be reported to determine the generalizability, or external validity, of the study [75, 76]. We furthermore determined great differences in the number and types of bundle elements between the studies, and in the measurements and calculations of bundle compliance rates. Due to this heterogeneity of data, even within the different subgroups (Additional file 5), we could not identify the most effective implementation strategy that resulted in the highest levels of compliance. In the next paragraphs, we will discuss how these factors could have influenced the compliance levels.

Number of elements per bundle

The total number of elements per bundle varied, with a range of three elements in the central line bundle [36] to 11 in the sepsis bundle (Additional file 4) [68]. The concept of a care bundle is to have a small number of elements to ensure that evidence-based care will be delivered reliably [4]. Adding more elements is likely to affect the reliability of the bundle, i.e. if more elements are included, it is more difficult to perform all bundle elements at once. Consequently, this results in lower compliance levels [4].

Differences in types of bundle elements

Our results show that even within one group of bundles, different types of elements were added. Hospitals design their own care bundle and when including elements, it is important that each element is generally accepted by hospital staff [4, 8]. The reliability of these new elements, as well as the acceptance of an element (intervention), may affect the likelihood and motivation to use the bundle [3, 4]. One study compared the compliance rates of three different sepsis bundles. In this comparative study, several factors were observed which were affecting the compliance rates, such as the exclusion criteria for an intervention and the definition of an intervention [77].

Time period compliance calculation

Our results show that four different types of measurements were used to calculate the compliance levels. In most studies, detailed information about compliance rates was not reported at all. In most studies, the AON approach was used [46], and therefore, it is possible that lower compliance levels were reported. Compared to the AON approach, the composite measurement has greater sensitivity for giving insight in the changes in care processes [24, 25]. Benneyan recommends both measurements because of their specific benefits [24]. In some studies, the bundle compliance was measured monthly, while other studies measured compliance over a longer period of time, i.e. over a period of several months or years. In most studies, detailed information about compliance, such as the monthly numerators and denominators, was not reported.

Among the included studies, the success of bundle implementation was highly variable, even when studies were stratified on design, methodological quality and type of measurement. This could be explained by either the number and types of bundle elements or by the ways compliance is measured and calculated as shown in this systematic review. Differences in measuring and reporting performance outcomes were observed by Dixon-Woods et al. [78]. In their analysis of a national programme to reduce the rates of central venous catheter bloodstream infections, they found that the standardised definitions and measurements of the study outcomes were interpreted differently between the participating ICUs. This resulted in differences in collecting data, and therefore, data between ICUs were not fully comparable [78].

The variety in compliance rates could be influenced by other factors. Bundle compliance is often monitored by using checklists [79] (Additional file 3). Besides auditing compliance, checklists are useful tools to standardise care processes, comparable to care bundles, and to improve the reliability of care to ensure patients receive all evidence-based interventions needed [79]. Although the use of checklists is promising, it is known that they are underused and barriers exist to use them which negatively influence the reliability of care [79, 80]. Thus, there could be a discrepancy between actual delivered care and the use of checklists, resulting in lower compliance rates, while the care was actually performed. Another example is that compliance of a new intervention could be negatively influenced when related to the habits and positive beliefs regarding the ‘old’ intervention even when the new intervention is based on robust science [27]. Furthermore, one study showed that lack of monitoring compliance was the reason for non-compliance [50]. Complementary, the frequency of monitoring compliance has resulted in positive effects on bundle compliance rates [81]. Monitoring data, e.g. on compliance and/or infection rates, results in increased awareness and encourages ICU staff to be compliant with the care bundle.

Although desirable, it can be challenging to achieve and maintain levels of bundle compliance of more than 95 % [4, 9]. In order to sustain the success of implementation, change of the organisational culture into a safety culture is required [9, 82]. Creating a culture of safety includes the change of behaviour or attitudes of hospital staff to openly discuss about patient safety-related issues and to learn from mistakes without blaming [13]. Creating a culture of safety is necessary to enhance the adoption of care bundles, which subsequently contributes to redesign care processes and improve team work and communication between professionals [4, 9].

Implementation of quality improvement projects does not have to give the same positive findings when reproduced in other hospitals. One example is the Keystone project in Michigan which showed a sharp decline in the central line infection rates in ICUs [9]. Many of the components of this project were replicated in ICUs in the UK which also showed a reduction in infection rates. However, these positive findings were not only due to the multifaceted interventions of the programme used but were part of a secular trend. Secular trends are not often measured in quality improvements [83, 84], i.e. studies about implementing quality initiatives are often part of larger hospital or nationwide improvement programmes which positively influences patient outcomes as well. The context in which a programme for quality improvement is launched contributes to different outcomes [83, 85].

Limitations

Our systematic review is hampered by several limitations. There is a chance that we missed some relevant studies, because different terms are given to care bundles. However, a broad search strategy was used and we have completed the search with a hand search. Two criteria for selecting studies, i.e. compliance rates and implementation strategies, were not (clearly) reported in abstracts, while these criteria were described in the full text. We included any article to the phase of full-text screening if there was any uncertainty about one of the inclusion criteria. Furthermore, our review was restricted to the inclusion of English language publications only and relevant studies published in other languages could have been missed. However, evidence for the effect of language restrictions on systematic bias remains inconclusive. Another important issue is that no studies with randomised designs were included. The majority of the studies included were quality improvements and before-and-after studies without controls. Thus, observed changes could be influenced by secular trends [86]. Furthermore, the overall methodology of the included studies was poor, involving an increased risk of bias [86]. Therefore, the results should be interpreted with caution. An important problem hampering a meta-analysis was due to the heterogeneity of the available data (Additional file 5). There was a high variability in study design, methodological quality, bundle characteristics, compliance measurements and the calculation of compliance within a specific time frame. Therefore, it was not possible to point out the superior implementation strategy. Moreover, complete data of compliance was lacking, e.g. most studies only reported compliance as a percentage, without explicitly reporting numerators and denominators. Although not all included studies show high compliance levels, publication bias could still have influenced our results since all included studies show positive results. Since compliance was reported as secondary outcome, the quality of reporting could have been influenced by this fact.

Future research

Further research is needed to identify the best strategy to implement care bundles to achieve high levels of compliance. To investigate the effects of implementation strategies on compliance levels, there is a need for robust study methods in implementation or quality improvement research. Studies using randomised designs should be considered to increase the internal and external validity, especially when the intervention is considered for widespread implementation [87]. However, randomization is not always possible or suitable in quality improvement studies. Alternative designs could then be considered, such as controlled before-and-after trials or interrupted time series to control for confounding variables [88]. Otherwise, a combination of quantitative and qualitative designs could be conducted to assess if the intervention worked, how it worked and in what contexts [83, 88]. Furthermore, it is imperative that studies are clearly and unambiguously reported. A clear description about the context in which the intervention was implemented should be stated, and a detailed description of the participants, i.e. the users of the intervention, should be provided [75]. These requirements are stipulated in the standards for quality improvement reporting excellence (SQUIRE) guidelines [75] which are strongly recommended when reporting quality improvement studies. To compare performance outcomes, there should be an unambiguous method for measuring compliance, i.e. the use of the AON and/or composite measurement [24]. Within current implementation research, it is not only important to identify the most effective strategy, but also to better understand why, how and when the specific strategy works best [89].

Conclusions

The three most frequently used implementation strategies were education, reminders and audit and feedback. We conclude that the heterogeneity among the included studies was high due to the variety in study design, difference in number and types of elements, types of compliance measurements calculation. Due to the heterogeneity of the data and the poor methodological quality of the studies, conclusions about which strategy results in the highest levels of care bundle compliance could not be determined and no recommendations can be made on which strategy should be selected to get the highest levels of compliance. We strongly recommend that studies in quality improvement should be reported in a formalised way in order to be able to compare research findings. It is imperative that authors follow the SQUIRE guidelines whenever they report quality improvement studies.

Abbreviations

A&F:

audit and feedback

AON:

all-or-none

EPOC:

effective practice and organisation of care group of the Cochrane centre

ICU:

intensive care units

IHI:

Institute for Healthcare Improvement

SQUIRE:

standards for quality improvement reporting excellence

References

  1. Ward SA, Parikh S, Workman B. Health perspectives: international epidemiology of aging. Best Pract Res Clin Anaesthesiol. 2011;25:305–17.

    Article  PubMed  Google Scholar 

  2. Audet AM, Greenfield S, Field M. Medical practice guidelines: current activities and future directions. Ann Intern Med. 1990;30:709–14.

    Article  Google Scholar 

  3. Cabana MD, Rand CS, Powe, Wu AW, Wilson MH, Abboud PA, et al. Why don’t physicians follow clinical practice guidelines? A framework for improvement. JAMA. 1999;282:1458–65.

    Article  CAS  PubMed  Google Scholar 

  4. Resar R, Griffin FA, Haraden C. Using care bundles to improve health care quality. IHI Innovation. Series white paper. Cambridge, Massachusetts: Institute for Healthcare Improvement; 2012 [http://www.ihi.org] Accessed 2 April 2015.

  5. Guide H-t. Prevent central line-associated bloodstream infections (CLABSI). Cambridge: Institute for Healthcare Improvement; 2012 [http://www.ihi.org] Accessed 2 April 2015.

    Google Scholar 

  6. Guide H-t. Prevent ventilator-associated pneumonia. Cambridge: Institute for Healthcare Improvement; 2012 [http://www.ihi.org] Accessed 2 April 2015

    Google Scholar 

  7. Berenholtz SM, Pronovost PJ, Lipsett PA, Hobson D, Earsing K, Farley JE, et al. Eliminating catheter-related bloodstream infections in the intensive care unit. Crit Care Med. 2004;32:2014–20.

    Article  PubMed  Google Scholar 

  8. Fulbrook P, Mooney S. Care bundles in critical care: a practical approach to evidence-based practice. Nurs Crit Care. 2003;8:249–55.

    Article  PubMed  Google Scholar 

  9. Pronovost P, Needham D, Berenholtz S, Sinopoli D, Chu H, Cosgrove S, et al. An intervention to decrease catheter-related bloodstream infections in the ICU. N Engl J Med. 2006;355:2725–32.

    Article  CAS  PubMed  Google Scholar 

  10. Youngquist P, Carroll M, Farber M, Macy D, Madrid P, Ronning J, et al. Implementing a ventilator bundle in a community hospital. Jt Comm J Qual Patient Saf. 2007;33:219–25.

    PubMed  Google Scholar 

  11. Donabedian A. Evaluating the quality of medical care. Milbank Memorial Fund Quarterly. 1966;3(suppl):166–206.

    Article  Google Scholar 

  12. Resar R, Pronovost P, Haraden C, Simmonds T, Rainly T, Nolan T. Using a bundle approach to improve ventilator care processes and reduce ventilator-associated pneumonia. Jt Comm J Qual Patient Saf. 2005;31:243–8.

    PubMed  Google Scholar 

  13. Pronovost PJ, Berenholtz SM, Goeschel CA, Needham DM, Sexton JB, Thompson DA, et al. Creating high reliability in health care organizations. Health Serv Res. 2006;41:1599–617.

    Article  PubMed  PubMed Central  Google Scholar 

  14. Lawrence P, Fulbrook P. The ventilator care bundle and its impact on ventilator-associated pneumonia: a review of the evidence. Nurs Crit Care. 2011;16:222–34.

    Article  PubMed  Google Scholar 

  15. Aboelela SW, Stone PW, Larson EL. Effectiveness of bundled behavioural interventions to control healthcare-associated infections: a systematic review of the literature. J Hosp Infec. 2007;66:101–8.

    Article  CAS  Google Scholar 

  16. Lawrence P, Fulbrook P. Effect of feedback on ventilator care bundle compliance: before and after study. Nurs Crit Care. 2012;17:293–301.

    Article  PubMed  Google Scholar 

  17. Deeks JJ, Dinnes J, D'Amico R, Sowden AJ, Sakarovitch C, Song F, et al. Evaluating non-randomised intervention studies. Health Technol Assess. 2003;7:1–173.

  18. Downs SH, Black N. The feasibility of creating a checklist for the assessment of the methodological quality both of randomised and non-randomised studies of health care interventions. J Epidemiol Community Health. 1998;52:377–84.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  19. Hooper P, Jutai JW, Strong G, Russell-Minda E. Age-related macular degeneration and low-vision rehabilitation: a systematic review. Can J Ophthalmol. 2008;43:180–7.

    Article  PubMed  Google Scholar 

  20. Chudyk AM, Jutai JW, Petrella RJ, Speechley M. Systematic review of hip fracture rehabilitation practices in the elderly. Arch Phys Med Rehabil. 2009;90:246–62.

    Article  PubMed  Google Scholar 

  21. Effective Practice and Organisation of Care (EPOC). EPOC taxonomy. Oslo: Norwegian Knowledge Centre for the Health Services; 2002. Available at: https://epoc.cochrane.org/epoc-taxonomy. Accessed 5 July 2015.

    Google Scholar 

  22. Thorsen T, Mäkelä M. Changing professional practice. Theory and practice of clinical guidelines implementation. Danish Institute for Health Services Copenhagen 1999

  23. Veer vd SN, Jager KJ, Nache AM, Richardson D, Hegarty J, Couchoud C, et al. Translating knowledge on best practice into improving quality of RRT care: a systematic review of implementation strategies. Kidney Int. 2011;80:1021–34.

  24. Benneyan J. Performance of composite versus all-or-none compliance statistics for medical evidence-based core measure sets. Computers & Industrial Engineering, 2009. International Conference on 6–9 July 2009. 1335 – 1340. DOI: 10.1109/ICCIE.2009.5223740

  25. Nolan T, Berwick DM. All-or-none measurement raises the bar on performance. JAMA. 2006;295:1168–70.

    Article  CAS  PubMed  Google Scholar 

  26. Moher D, Liberati A, Tetzlaff J, Altman DG, The PRISMA Group. Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement. PLoS Med. 2009;6:e1000097.

    Article  PubMed  PubMed Central  Google Scholar 

  27. Jeong IS, Park SM, Lee JM, Song JY, Lee SJ. Effect of central line bundle on central line-associated bloodstream infections in intensive care units. Am J Infect Control. 2013;41:710–6.

    Article  PubMed  Google Scholar 

  28. Hocking C, Pirret AM. Using a combined nursing and medical approach to reduce the incidence of central line associated bacteraemia in a New Zealand critical care unit: a clinical audit. Intensive Crit Care Nurs. 2013;29:137–46.

    Article  PubMed  Google Scholar 

  29. Sacks GD, Diggs BS, Hadjizacharia P, Green D, Salim A, Malinoski DJ. Reducing the rate of catheter-associated bloodstream infections in a surgical intensive care unit using the Institute for Healthcare Improvement central line bundle. Am J Surg. 2014;207:817–23.

    Article  PubMed  Google Scholar 

  30. Marra AR, Cal RGR, Durão MS, Correa L, Guastelli LR, Moura Jr DF, et al. Impact of a program to prevent central line-associated bloodstream infection in the zero tolerance era. Am J Infect Control. 2010;38:434–9.

    Article  PubMed  Google Scholar 

  31. Longmate AG, Ellis KS, Boyle L, Maher S, Cairns CJ, Lloyd SM, et al. Elimination of central-venous-catheter-related bloodstream infections from the intensive care unit. BMJ Qual Saf. 2011;20:174–80.

    Article  PubMed  Google Scholar 

  32. Khalid I, Salmi HA, Qushmaq I, Hroub MA, Kadri M, Qabajah MR. Itemizing the bundle: achieving and maintaining “zero” central line-associated bloodstream infection for over a year in a tertiary care hospital in Saudi Arabia. Am J Infect Control. 2013;41:1209–13.

    Article  PubMed  Google Scholar 

  33. Render ML, Hasselbeck R, Freyberg RW, Hofer TP, Sales AE, Almenoff PL, et al. Reduction of central line infections in Veterans Administration intensive care units: an observational cohort using a central infrastructure to support learning and improvement. BMJ Qual Saf. 2011;20:725–32.

  34. Richardson J, Tjoelker R. Beyond the central line-associated bloodstream infection bundle: the value of the clinical nurse specialist in continuing evidence-based practice changes. Clin Nurse Spec. 2012;26:205–11.

    Article  PubMed  Google Scholar 

  35. Bonello RS, Fletcher CE, Becker WK, Clutter KL, Arjes SL, Cook JJ, et al. An intensive care unit quality improvement collaborative in nine department of Veterans Affairs Hospitals: reducing ventilator-associated pneumonia and catheter-related bloodstream infections rates. Jt Comm J Qual Patient Saf. 2008;34:639–45.

    PubMed  Google Scholar 

  36. Exline MC, Naeem AA, Zikri N, Mangino JE, Torrence K, Vermillion B, et al. Beyond the bundle—journey of a tertiary care medical intensive care unit to zero central line-associated bloodstream infections. Crit Care. 2013;17:R14.

    Article  Google Scholar 

  37. McPeake J, Cantwell S, Booth MG, Daniel M. Central line insertion bundle: experiences and challenges in an adult ICU. Nurs Crit Care. 2012;17:123–9.

    Article  PubMed  Google Scholar 

  38. McNamara E, Adams D, Dellit TH. Improving central venous catheter insertion documentation to facilitate electronic surveillance of bundle compliance. Am J Infect Control. 2011;39:779–81.

    Article  PubMed  Google Scholar 

  39. Helmick RA, Knofsky ML, Braxton CC, Subramanian A, Byers P, Lan CKW, et al. Mandated self-reporting of ventilated-associated pneumonia bundle and catheter-related bloodstream infection bundle compliance and infection rates. JAMA Surg. 2014;149:1003–7.

    Article  PubMed  Google Scholar 

  40. Morris AC, Hay AW, Swann DG, Everingham K, McCulloch C, McNulty J, et al. Reducing ventilator-associated pneumonia in intensive care: impact of implementing a care bundle. Crit Care Med. 2011;39:2218–24.

    Article  PubMed  Google Scholar 

  41. Hawe CS, Ellis KS, Cairns CJS, Longmate A. Reduction of ventilator-associated pneumonia: active versus passive guideline implementation. Intensive Care Med. 2009;35:1180–6.

    Article  PubMed  Google Scholar 

  42. Bloos F, Müller S, Harz A, Gugel M, Geil D, Egerland K, et al. Effects of staff training on the care of mechanically ventilated patients: a prospective cohort study. Br J Anaesth. 2009;103:232–7.

    Article  CAS  PubMed  Google Scholar 

  43. Al-Tawfiq JA, Abed MS. Decreasing ventilator-associated pneumonia in adult intensive care units using the Institute for Healthcare Improvement bundle. Am J Infect Control. 2010;38:552–6.

    Article  PubMed  Google Scholar 

  44. Jiménez L, Pastrana EA, Rodriquez-Vega G, Rolston DJ. Ventilator bundle compliance: report from a neurosurgical intensive care unit. Crit Care & Shock. 2009;12:109–16.

    Google Scholar 

  45. DuBose JJ, Inaba K, Shiflett A, Trankiem C, Teixeira PG, Salim A, et al. Measurable outcomes of quality improvement in the trauma intensive care unit: the impact of a daily quality rounding checklist. J Trauma. 2008;64:22–9.

    Article  PubMed  Google Scholar 

  46. Berenholtz SM, Pham JC, Thompson DA, Needham DM, Lubomski LH, Hyzy RC, et al. Collaborative cohort study of an intervention to reduce ventilator-associated pneumonia in the intensive care unit. Infect Control Hosp Epidemiol. 2011;32:305–14.

    Article  PubMed  Google Scholar 

  47. Lim KP, Kuo SW, Ko WJ, Sheng WH, Chang YY, Hong MC, et al. Efficacy of ventilator-associated pneumonia care bundle for prevention of ventilator-associated pneumonia in the surgical intensive care units of a medical centre. J Microbiol Immunol Infect. 2013;30:S1684-1182(13)00174-6.

    Google Scholar 

  48. Mukhtar A, Zaghlol A, Mansour R, Hasanin A, El-Adawy A, Mohamed H, et al. Reduced incidence of methicillin-resistant Staphylococcus aureus ventilator-associated pneumonia in trauma patients: a new insight into the efficacy of the ventilator care bundle. Trauma. 2014;16:202–6.

    Article  Google Scholar 

  49. Eom JS, Lee MSL, Chun HK, Choi HJ, Jung SY, Kim YS, et al. The impact of a ventilator bundle on preventing ventilator-associated pneumonia: a multicentre study. Am J Infect Control. 2014;42:34–7.

    Article  PubMed  Google Scholar 

  50. Hamishehkar H, Vahidinezhad M, Mashayekhi SO, Asgharian P, Hassankhani H, Mahmoodpoor A. Education alone is not enough in ventilator associated pneumonia care bundle compliance. J Res Pharm Pract. 2014;3:51–5.

    Article  PubMed  PubMed Central  Google Scholar 

  51. Malouf-Todaro N, Barker J, Jupiter D, Tipton PH, Peace J. Impact of enhanced ventilator care bundle checklist on nursing documentation in an intensive care unit. J Nurs Care Qual. 2013;28:233–40.

    Article  PubMed  Google Scholar 

  52. Rello J, Afonso E, Lisboa T, Ricart M, Balsera B, Rovira A, et al. A care bundle approach for prevention of ventilator-associated pneumonia. Clin Microbiol Infect. 2013;19:363–9.

  53. Berenholtz SM, Milanovich S, Faircloth A, Prow DT, Earsing K, Lipsett P, et al. Improving care for the ventilated patient. Jt Comm J Qual Saf. 2004;30:195–204.

    PubMed  Google Scholar 

  54. DePalo VA, McNicoll L, Cornell M, Rocha JM, Adams L, Pronovost PJ. The Rhode Island ICU collaborative: a model for reducing central line-associated bloodstream infection and ventilator-associated pneumonia statewide. Qual Saf Health Care. 2010;19:555–61.

    PubMed  Google Scholar 

  55. Al-Thaqafy MS, El-Saed A, Arabi YM, Balkhy HH. Association of compliance of ventilator bundle with incidence of ventilator-associated pneumonia and ventilator utilization among critical patients over 4 years. Ann Thorac Med. 2014;9:221–6.

    Article  PubMed  PubMed Central  Google Scholar 

  56. Hatler CW, Mast D, Corderella J, Mitchell G, Howard K, Aragon J. Using evidence and process improvement strategies to enhance healthcare outcomes for the critically ill: a pilot project. Am J Crit Care. 2006;15:549–55.

    PubMed  Google Scholar 

  57. Esmail R, Duchscherer G, Giesbrecht J, King J, Ritchie P, Zuege D. Prevention of ventilator-associated pneumonia in the Calgary health region: a Canadian success story! Healthc Q. 2008;11:129–36.

    Article  PubMed  Google Scholar 

  58. Miller RS, Norris PR, Jenkins JM, Talbot 3rd TR, Starmer JM, Hutchison SA, et al. Systems initiatives reduce healthcare-associated infections: a study of 22,928 device days in a single trauma unit. J Trauma. 2010;68:23–31.

    Article  PubMed  Google Scholar 

  59. Bukhari SZ, Hussain WM, Banjar AA, Fatani MI, Karima TM, Ashshi AM. Application of ventilator care bundle and its impact on ventilator associated pneumonia incidence rate in the adult intensive care unit. Saudi Med J. 2012;33:278–83.

    PubMed  Google Scholar 

  60. Marra AR, Cal RGR, Silva CV, Caserta RA, Paes AT, Moura Jr DF, et al. Successful prevention of ventilator-associated pneumonia in an intensive care setting. Am J Infect Control. 2009;37:619–25.

    Article  PubMed  Google Scholar 

  61. Caserta RA, Marra AR, Durão MS, Ilva CV, Pavao Dos Santos OF, Neves HS, et al. A program for sustained improvement in preventing ventilator associated pneumonia in an intensive care setting. BMC Infect Dis. 2012;12:234.

    Article  PubMed  PubMed Central  Google Scholar 

  62. Zaydfudim V, Dossett LA, Starmer JM, Arbogast PG, Feurer ID, Ray WA, et al. Implementation of a real-time compliance dashboard to help reduce SICU ventilator-associated pneumonia with the ventilator bundle. Arch Surg. 2009;144:656–62.

  63. Crunden E, Boyce C, Woodman H, Bray B. An evaluation of the impact of the ventilator care bundle. Nurs in Crit Care. 2005;10:242–6.

    Article  Google Scholar 

  64. Guiliano KK, Lecardo M, Staul L. Impact of protocol watch on compliance with the Surviving Sepsis Campaign. Am J Crit Care. 2011;20:313–21.

    Article  Google Scholar 

  65. Ferrer R, Artigas A, Levy MM, Blanco J, González-Diaz G, Garnacho-Montero J, et al. Improvement in process of care and outcome after a multicenter severe sepsis educational program in Spain. JAMA. 2008;19:2294–303.

  66. Castellanos-Ortega A, Suberviola B, Garcia-Astudillo LA, Holanda MS, Ortiz F, Llorca J, et al. Impact of the Surviving Sepsis Campaign protocols on hospital length of stay and mortality in septic shock patients: Results of a three-year follow-up quasi-experimental study. Crit Care Med. 2010;38:1036–43.

    Article  PubMed  Google Scholar 

  67. Lefrant JY, Muller L, Raillard A, Jung B, Beaudroit L, Favier L, et al. Reduction of the severe sepsis or septic shock associated mortality by reinforcement of the recommendations bundle: a multicenter study. Ann Fr Anesth Reanim. 2010;29:621–8.

  68. Silverman LZ, Hoesel LM, Desai A, Posa P, Purtill MA, Brandt MM. It takes an intensivist. Am J Surg. 2011;201:320–3.

    Article  PubMed  Google Scholar 

  69. Memon JI, Rehmani RS, Alaithan AM, El Gammal A, Lone TM, Ghorab K, et al. Impact of 6-hour sepsis resuscitation bundle compliance on hospital mortality in a Saudi hospital. Crit Care Res Pract. 2012;2012:ID273268.

    Google Scholar 

  70. Schramm GE, Kashyap R, Mullon JJ, Gajic O, Afessa B. Septic shock: a multidisciplinary response team and weekly feedback to clinicians improve the process of care and mortality. Crit Care Med. 2011;39:252–8.

    Article  PubMed  Google Scholar 

  71. Kim JH, Hong SK, Kim KC, Lee MG, Lee KM, Jung SS, et al. Influence of full-time intensivist and the nurse-to-patient ratio on the implementation of severe sepsis bundles in Korean intensive care units. J Crit Care. 2012;27:414.e11.

    Article  Google Scholar 

  72. Laguna-Perez A, Chilet-Rosell E, Delgado Lacosta M, Alvarez-Dardet C, Uris Selles J, Muñoz-Mendoza CL. Clinical pathway intervention compliance and effectiveness when used in the treatment of patients with severe sepsis and septic shock at an intensive care unit in Spain. Rev Lat Am Enfermagem. 2012;20:635–43.

    Article  PubMed  Google Scholar 

  73. Dijkstra R, Wensing M, Thomas R, Akkermans R, Braspenning J, Grimshaw J, et al. The relationship between organizational characteristics and the effects of clinical guidelines on medical performance in hospitals, a meta-analysis. BMC Health Serv Res. 2006;28:53.

    Article  Google Scholar 

  74. Sinuff T, Muscedere J, Adhikari NKJ, Stelfox HT, Dodek P, Heyland DK, et al. Knowledge translation interventions for critically ill patients: a systematic review. Crit Care Med. 2013;41:2627–40.

  75. Davidoff F, Batalden P, Stevens D, Ogrinc G, Mooney S. Publication guidelines for quality improvement in health care: evolution of the SQUIRE project. Qual Saf Health Care. 2008;17 Suppl 1:i3–9.

    Article  PubMed  PubMed Central  Google Scholar 

  76. Fan E, Laupacis A, Pronovost PJ, Guyatt GH, Needham DM. How to use an article about quality improvement. JAMA. 2010;304:2279–87.

    Article  CAS  PubMed  Google Scholar 

  77. Fong JJ, Cecere K, Unterborn J, Garpestad E, Klee M, Devlin JW. Factors influencing variability in compliance rates and clinical outcomes among three different severe sepsis bundles. Ann Pharmacother. 2007;41:929–36.

    Article  PubMed  Google Scholar 

  78. Dixon-Woods M, Leslie M, Bion J, Tarrant C. What counts? An ethnographic study of infection data reported to a patient safety program. Milbank Q. 2012;90:548–91.

    Article  PubMed  PubMed Central  Google Scholar 

  79. Winters BD, Gurses AP, Lehmann H, Sexton JB, Rampersad CJ, Pronovost PJ. Clinical review: checklists—translating evidence into practice. Crit Care. 2009;13:210.

    Article  PubMed  PubMed Central  Google Scholar 

  80. Bosk CL, Dixon-Woods M, Goeschel CA, Pronovost PJ. Reality check for checklists. Lancet. 2009;374:444–5.

    Article  PubMed  Google Scholar 

  81. Westwell S. Implementing a ventilator care bundle in an adult intensive care unit. Nurs Crit Care. 2008;13:203–7.

    Article  PubMed  Google Scholar 

  82. Dixon-Woods M, Bosk CL, Aveling EL, Goeschel CA, Pronovost PJ. Explaining Michigan: developing an ex post theory of a quality improvement program. Milbank Q. 2011;89:167–205.

    Article  PubMed  PubMed Central  Google Scholar 

  83. Dixon-Woods M, Leslie M, Tarrant C, Bion J. Explaining Matching Michigan: an ethnographic study of a patient safety program. Implement Sci. 2013;8:70.

    Article  PubMed  PubMed Central  Google Scholar 

  84. Taljaard M, McKenzie JE, Ramsay CR, Grimshaw JM. The use of segmented regression in analysing interrupted time series studies: an example in pre-hospital ambulance care. Implement Sci. 2014;9:77.

    Article  PubMed  PubMed Central  Google Scholar 

  85. Bion J, Richardson A, Hibbert P, Beer J, Abrusci T, McCutcheon M, et al. ‘Matching Michigan’: a 22-year stepped interventional programme to minimise central venous catheter-blood stream infections in intensive care units in England. BMJ Qual Saf. 2013;2:110–23.

  86. Higgins JPT, Green S. Cochrane Handbook for systematic reviews of interventions. Version 5.1.0 [updated March 2011]. The Cochrane Collaboration, 2011. [http://www.cochrane-handbook.org] Accessed 30 April 2015.

  87. Eccles M, Grimshaw J, Campbell M, Ramsay C. Research designs for studies evaluating the effectiveness of change and improvement strategies. Qual Saf Health Care. 2003;12:47–52.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  88. Portela MC, Pronovost PJ, Woodcock T, Carter P, Dixon-Woods M. How to study improvement interventions: a brief overview of possible study types. BMJ Qual Saf. 2015;24:325–36.

    Article  PubMed  PubMed Central  Google Scholar 

  89. Ivers NM, Sales A, Colquhoun H, Michie S, Foy R, Francis JJ, et al. No more ‘business as usual’ with audit and feedback interventions: towards an agenda for a reinvigorated intervention. Implement Sci. 2014;9:14.

    Article  PubMed  PubMed Central  Google Scholar 

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Acknowledgement

We thank Jet Zegers for her invaluable help editing the manuscript.

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Correspondence to Marjon J. Borgert.

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The authors declare that they have no competing interests.

Authors’ contributions

MB, AG and DD designed the review and undertook the data extraction. All authors contributed the drafting of the manuscript and have read and approved the final manuscript.

Additional files

Additional file 1:

Search strategy. (PDF 17.5 KB)

Additional file 2:

Quality assessments. (PDF 41.3 KB)

Additional file 3:

Study characteristics in detail. (PDF 87.2 KB)

Additional file 4:

Bundle elements. (PDF 150 KB)

Additional file 5:

Effects on compliance. (PDF 115 KB)

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Borgert, M.J., Goossens, A. & Dongelmans, D.A. What are effective strategies for the implementation of care bundles on ICUs: a systematic review. Implementation Sci 10, 119 (2015). https://doi.org/10.1186/s13012-015-0306-1

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