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 Table of Contents  
ORIGINAL ARTICLE
Year : 2017  |  Volume : 5  |  Issue : 3  |  Page : 260-266

Reducing hospital-acquired infection rate using the Six Sigma DMAIC approach


Deanship of Quality and Academic Accreditation, Imam Abdulrahman Bin Faisal University, Dammam 34212, Kingdom of Saudi Arabia

Date of Web Publication21-Aug-2017

Correspondence Address:
Ahmed Al Kuwaiti
Deanship of Quality and Academic Accreditation, Imam Abdulrahman Bin Faisal University, P.O. Box 40065, Dammam 34212
Kingdom of Saudi Arabia
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DOI: 10.4103/sjmms.sjmms_98_16

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  Abstract 

Background: Hospital-acquired infection (HAI) is one of the most common complications occurring in a hospital setting. Although previous studies have demonstrated the application of data-driven Six Sigma DMAIC (Define, Measure, Analyze, Improve and Control) methodology in various health-care settings, no such studies have been conducted on HAI in the Saudi Arabian context.
Objective: The purpose of this research was to study the effect of the Six Sigma DMAIC approach in reducing the HAI rate at King Fahd Hospital of the University, Al-Khobar, Saudi Arabia.
Methods: Historical data on HAI reported at inpatient units of the hospital between January and December 2013 were collected, and the overall HAI rate for the year 2013 was determined. The Six Sigma DMAIC approach was then prospectively implemented between January and December 2014, and its effect in reducing the HAI rate was evaluated through five phases. The incidence of HAI in 2013 was used as the problem and a 30% reduction from 4.18 by the end of 2014 was set as the project goal. Potential causes contributing to HAI were identified by root cause analysis, following which appropriate improvement strategies were implemented and then the pre- and postintervention HAI rates were compared.
Results: The overall HAI rate was observed as 4.18. After implementing improvement strategies, the HAI rate significantly reduced from 3.92 during the preintervention phase ( first quarter of 2014) to 2.73 during the postintervention phase (third quarter of 2014) (P < 0.05). A control plan was also executed to sustain this improvement.
Conclusion: The results show that the Six Sigma “DMAIC” approach is effective in reducing the HAI rate.

Keywords: ”Define, Measure, Analyze, Improve and Control,” hand hygiene, hospital-acquired infection rate, Six Sigma


How to cite this article:
Kuwaiti AA, Subbarayalu AV. Reducing hospital-acquired infection rate using the Six Sigma DMAIC approach. Saudi J Med Med Sci 2017;5:260-6

How to cite this URL:
Kuwaiti AA, Subbarayalu AV. Reducing hospital-acquired infection rate using the Six Sigma DMAIC approach. Saudi J Med Med Sci [serial online] 2017 [cited 2017 Sep 22];5:260-6. Available from: http://www.sjmms.net/text.asp?2017/5/3/260/213318


  Introduction Top


Hospital-acquired infection (HAI) in a health-care setting is one of the major causes of death and increased morbidity among hospitalized patients. It prolongs the hospital stay of affected patients and increases the cost of patient care.[1] In Europe, HAI affects 1 of 10 hospitalized patients and causes nearly 5000 annual deaths. In Saudi hospitals, the overall rate of HAIs was reported to be 8% in 2003 and 4.5 per 1000 discharged patients in 2004.[2],[3],[4] Likewise, in hospitals located at Taif, Saudi Arabia, the nosocomial infection rate was found to be 1.86 and 2.09 for 2010 and 2011, respectively.[5] HAI can occur within 48 h of hospital admission, 3 days of discharge or 30 days of an operation. The most common types of HAIs are bloodstream infection, ventilator-associated pneumonia, urinary tract infection and surgical site infection. The viral, bacterial or fungal pathogens of such infections are mostly resistant to at least one commonly used antibiotic. Of these, there are several multidrug-resistant pathogens such as methicillin-resistant Staphylococcus aureus (MRSA), vancomycin-resistant S. aureus and vancomycin-resistant enterococci, which are becoming increasingly problematic, particularly in the critical care setting, and creating challenges in the management of HAIs.[6]

HAI leads to emotional stress, considerable increase in costs due to the increased length of hospital stay, functional disability and, in some cases, death.[7],[8],[9],[10],[11],[12] In addition, increased use of drugs, need for isolation as well as the additional use of laboratory and other diagnostic studies also contribute to the increase in costs. Therefore, to ensure patient safety and reduce the cost of patient care, it is imperative to take necessary preventive measures against HAI in hospital settings. Some of these preventive measures include proper handling and disposal of sharp instruments (e.g., needles) and biomedical waste, sterilization of instruments, food and water precautions, surface sanitation, periodical medical checkup and vaccination for health-care workers, training programs, hand hygiene protocol, use of personal protective equipment (PPE), reduction in the number of visitors and isolation rooms.[13],[14] Lack of hand hygiene compliance among health-care workers has been found to be the main source of HAIs.[15] Further, it is observed that a 20% increase in hand hygiene compliance reduces the rate of HAI by 40%.[16],[17]

In the United States, approximately 2 million patients annually suffer from HAIs and nearly 90,000 are estimated to die.[18] Therefore, there is an urgent need to address potential risk factors and gaps in hospital processes, which in turn would reduce the occurrence of HAIs. Traditionally, measures toward reduction of HAI focus on individual performances and their errors as well as on addressing gaps in hospital processes, especially focusing on postimplementation monitoring.

Although previous studies have demonstrated the application of Six Sigma DMAIC (Define, Measure, Analyze, Improve and Control) methodology in reducing HAIs, no such studies have been conducted on HAI in the Saudi Arabian context.[19],[20],[21] To fill this gap, the present research was conducted to study the effect of Six Sigma DMAIC approach in reducing the HAI rate at the King Fahd Hospital of the University (KFHU), Al-Khobar, Saudi Arabia.


  Methods Top


Design and setting

This prospective study was conducted at KFHU, Al-Khobar, Saudi Arabia. First, the historical data on HAI reported at the hospital's inpatient units between January and December 2013 were collected from the hospital's Infection Control Committee, and the overall HAI rate for the year 2013 was determined. The Six Sigma DMAIC approach was then implemented between January and December 2014, and its effect in reducing the HAI rate was evaluated. Ethical approval for this study was was obtained from the Institutional Review Board, Deanship of Scientific Research, Imam Abdulrahman Bin Faisal University, Dammam, on May 4, 2015 (IRB No.: IRB-2014-22-225).

Define, Measure, Analyze, Improve and Control model

The five effective phases of the Six Sigma DMAIC model are described as follows.

Define Phase

First, a project charter was prepared to define the problem, scope of the project, its goals and team members involved [Table 1]. A U-chart was used to study the data for 2013 [Figure 1]. Based on the historical data, the incidence of HAI in 2013 was defined as the problem and a 30% reduction from 4.18 by the end of 2014 was set as the project goal. Accordingly, an internal multidisciplinary team was formed, and the patient-handling process was studied using the SIPOC (suppliers, inputs, process, outputs and customers) tool [Figure 2]. Several types of infections were then identified and stratified into various categories.
Table 1: Description of project charter

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Figure 1: Control chart (U-chart) showing the incidence of hospital-acquired infection during the year 2013

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Figure 2: Suppliers, inputs, process, outputs and customers diagram of the patient-handling process adopted in King Fahd Hospital of the University

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Measure Phase

Investigators developed a data collection plan and gathered data to stratify baseline performance. A check sheet was developed to identify any potential HAIs among patients who were hospitalized during the first quarter of 2014 [Supplementary Appendix 1, online only] [Additional file 1]. The preintervention HAI rate was calculated by dividing the number of HAIs reported in the specified period with the total number of patient-days for the same period, the result of which was then multiplied by 1000. HAI rate at KFHU during the first quarter of 2014 was measured. Subsequently, a baseline sigma for the occurrence of HAI at KFHU was calculated [Table 2].
Table 2: Contributing factors of hospital-acquired infection

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Analyze Phase

A root cause analysis (RCA) was carried out for each reported HAI case, and a checklist was prepared to find their potential causes. A cause–effect diagram was made to identify the potential causes of HAI [Figure 3] and is listed in [Table 3]. Further, a Pareto analysis was performed to find the vital few causes contributing to the trivial many [Figure 4].
Figure 3: Cause–effect diagram of potential causes of hospital-acquired infection at King Fahd Hospital of the University

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Table 3: Various improvement strategies to overcome the causes for hospital-acquired infection

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Figure 4: Pareto chart

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Improve Phase

Based on the cause–effect diagram and Pareto analysis, the internal multidisciplinary team framed the appropriate improvement strategies through various brainstorming sessions with stakeholders of KFHU [Table 4]. Such strategies were implemented for a period of 3 months (third quarter of 2014) at KFHU and postintervention HAI rate was then calculated. Further, the effectiveness of these strategies was studied by comparing the pre- and postintervention HAI rates.
Table 4: Baseline sigma showing the occurrence of hospital-acquired infection during the first quarter of 2014

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Control Phase

A control plan was executed by the Directorate of Quality and Safety of KFHU to statistically monitor the process and sustain the improvement obtained. HAI rate pertaining to the fourth quarter of 2014 was monitored, and a U-chart was used to check whether the process was under control and the improvement obtained could be sustained [Figure 5]. Further, the multidisciplinary team also conducted a periodic audit during December 2014 among the hospital employees to check their hand hygiene compliance and proper utility of all PPEs, and a random adherence rate was estimated.
Figure 5: Control chart of hospital-acquired infection rate during the fourth quarter of 2014

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Tools and techniques

Following are the various Six Sigma tools and techniques that were used to implement the DMAIC model in this study: project charter; SIPOC; control chart (U-chart); RCA; cause and effect diagram and Pareto analysis.

Data analysis

Minitab (Minitab Inc, State College, PA, USA) and SPSS software version 20.0 (SPSS Inc., Chicago, IL, USA) were used for data analysis. The HAI rates between the first and third quarter of 2014 were compared using the t-test. P ≤ 0.05 was considered statistically significant.


  Results Top


To define the problem, the incidence of HAI at KFHU during the year 2013 was reported as 4.18 [Figure 1]. Further, HAI rates measured in January, February and March 2014 ( first quarter of 2014) were 4.31, 3.87 and 3.54, respectively, with a mean of 3.92. Subsequently, the baseline sigma for the occurrence of HAI was calculated as 4.16 σ [Table 4]. Pareto chart revealed that issues related to the category of health-care personnel highly influenced the occurrence of HAI at KFHU [Figure 4]. Taking into consideration findings of the cause–effect diagram and Pareto analysis, various improvement strategies were framed and implemented during the third quarter of 2014. After implementation of such strategies, it was observed that the HAI rate had significantly reduced from 3.92 during the preintervention phase ( first quarter of 2014) to 2.73 during the postintervention phase (third quarter of 2014) (P ≤ 0.05) [Table 5]. In the Control Phase, the HAI rate during the fourth quarter of 2014 was reported as 2.4, and the U-chart indicated that the process was under control and that sustained improvement had been achieved. From the random sample estimation of hand hygiene practice and adherence by employees toward proper utilization of PPEs during a periodic audit, it was found that 85% of employees adhered to such practices.
Table 5: Difference between the hospital-acquired infection rates in the pre- and postintervention phases

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  Discussion Top


The present work studied the impact of applying the Six Sigma DMAIC approach in reducing the HAI rate at KFHU.

In US hospitals, HAIs account for an estimated 1.7 million infections and 99,000 associated deaths each year,[22],[23] and the overall annual direct medical cost is approximately USD35.7–45 billion.[24] In our study, HAI reported at KFHU for 2013 was 4.18, which was higher than that reported by Pennsylvania Department of Health (2.45 rate per 1000 patient days).[25] It is anticipated that reduction in HAI rate will eventually enhance patient safety, increase patient satisfaction, decrease mortality as well as reduce the length of stay and cost of patient care.

A few studies have demonstrated the utility of the Six Sigma approach in the health-care sector with a specific focus on catheter-related bloodstream infections, nosocomial urinary tract infections, MRSA infections and operating room throughput, surgery turnaround time, clinic appointment access, hospital discharge process, hand hygiene compliance, antibiotic prophylaxis in surgery, scheduling radiology procedures and meeting standards for cardiac medication administration.[19],[20],[21],[26],[27],[28],[29],[30],[31],[32] However, to the best of our knowledge, in the Saudi Arabian context, this is the first-of-its-kind study describing the use of a Six Sigma model in reducing HAI rates.

This study was conducted through the five phases of DMAIC approach using different quality tools and techniques at each level. This approach helped the authors to define the appropriate goal, measure the data resources, analyze the possible causes, implement the improvement strategies and sustain the gains. During the Define Phase, the problem under investigation was clearly defined with respect to HAI incidence during the previous year, and a goal to reduce the HAI rate by 30% was set. During the Measure Phase, the HAI rate was measured as 3.92 and a baseline sigma calculation was made to measure the current performance level regarding the efficiency of infection control measures adopted at KFHU. This performance level was found to be lower than the performance indicated in the study by Drenckpohl et al., which attempted to reduce the incidence of breast milk administration errors in a neonatal intensive care unit.[33]

In the Analyze Phase, a RCA was carried out to determine the possible causes of each infectious case. After implementing the improvement strategies, the HAI rate reduced from 3.92 at the preintervention value to 2.73. This result is in accord with that of a previous study reporting a 30% decrease in nosocomial urinary tract infections after the application of the Six Sigma process improvement methodology.[20] Another study indicated a 76% reduction in central line-associated bloodstream infection in an 18-month period following the application of the Six Sigma DMAIC model at adult ICUs.[34]

During the Control Phase, a control plan was developed and implemented by the investigators to monitor and sustain the gains obtained during the Improve Phase. Most employees (85%) were found to have adhered to the hand hygiene practice and PPEs, the main components addressed during this phase. Similarly, a previous study has demonstrated that the compliance to such practices increased from 38% to 69% following the adoption of the hand washing routine; however, this increase in the adherence rate was not associated with detectable changes in the incidence of HAI.[35] In contrast, another study found the Six Sigma process to be effective in organizing the knowledge, opinions and actions of a group of professionals to implement the Centers for Disease Control and Prevention's evidence-based hand hygiene practices in ICUs.[29] Despite these contradictory findings from the earlier study, our finding demonstrated that Six Sigma is an effective approach in reducing the HAI rate.

Limitations and recommendations

This study only focused on inpatient units of a university hospital in Saudi Arabia, excluding the HAI rates among outpatients. Thus, it is recommended to extend this study to focus on outpatient departments. A similar application of the Six Sigma approach can be performed in other hospital-related operations such as surgery turnaround time, clinic appointment access, antibiotic prophylaxis in surgery, radiology procedures and hospital bed availability. The cost-effectiveness of improved processes can be studied in future research.


  Conclusion Top


Application of the Six Sigma DMAIC approach was found to be effective in reducing the HAI rates, thereby ensuring patient safety and satisfaction at KFHU, Dammam, Saudi Arabia. The DMAIC model described in this study may help hospital administrators and quality management personnel to identify implementation strategies and significantly reduce HAI rates in health-care settings and assist in sustaining the gains obtained.

Acknowledgment

The authors express their gratitude to Deanship of Scientific Research, Imam Abdulrahman Bin Faisal University, for funding this research project during the year 2014. The authors would like to specially thank the Infection Control Department, Nursing Department and Environment and Safety Team for their input in successful completion of First Six Sigma Project at KFHU, Saudi Arabia.

Financial support and sponsorship

This project was funded by Deanship of Scientific Research, Imam Abdulrahman Bin Faisal University, during the academic year of 2013–2014.

Conflicts of interest

There are no conflicts of interest

 
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    Figures

  [Figure 1], [Figure 2], [Figure 3], [Figure 4], [Figure 5]
 
 
    Tables

  [Table 1], [Table 2], [Table 3], [Table 4], [Table 5]



 

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