Although a tremendous amount of progress has been achieved in expanding healthcare access in low- and middle-income countries (LMICs) over the last 20 years, the capacity and preparedness of healthcare facilities to ensuring safe and effective healthcare delivery have received limited attention. Reference Leslie, Spiegelman, Zhou and Kruk1 In 2019, the World Health Organization (WHO) estimated that 134 million adverse events annually, including 2.6 million avoidable deaths, were attributable to unsafe care provided by healthcare facilities in LMICs. Reference Lancet2 Of these adverse events, healthcare-associated infections (HAIs) were the most frequent, with the average prevalence of HAIs in LMICs (ie, 15.5%) double that in high-income countries such as Europe (7.1%) and the United States (4.5%). Reference Phu, Wertheim and Larsson3,Reference Vilar-Compte, Camacho-Ortiz and Ponce-de-Leon4
Standard precautions related to infection prevention and control (IPC) are fundamental to curtailing HAIs by creating a safe care environment; they reduce the risk of cross transmission of infections and ensure personal safety in the healthcare setting. Reference Curran5 In implementing such processes, LMICs face significant challenges of overcrowding, suboptimal understanding of hygiene and sanitation, logistical bottlenecks, inadequate surveillance and laboratory capacity, and a lack of trained professionals. Reference Bong, Brasher, Chikumba, McDougall, Mellin-Olsen and Enright6,Reference Powell-Jackson, King and Makungu7 These health-system challenges severely constrained the ability to limit transmission of COVID-19 pandemic in LMICs, which primarily spread via respiratory droplets and direct contact. Reference Powell-Jackson, King and Makungu7 As noted by the WHO interim guideline of IPC in the context of health care for COVID-19, applying standard precautions for suspected and diagnosed cases of COVID-19 is a core approach to healthcare infection control. 8
We conducted a comprehensive assessment of standard precaution readiness related to infection prevention within healthcare facilities to identify gaps and opportunities to strengthen infection control preparedness in the healthcare setting. We further explored associations between standard precaution readiness and healthcare facility infrastructure and system characteristics. Our results provide important baseline information to policy makers in resource-limited countries such as Bangladesh.
Methodology
Data source and procedures
We performed and analysis of secondary data from the Bangladesh health facility survey (BHFS) 2017, which are publicly available. The survey was carried out between July and October 2017 by the National Institute of Population Research and Training (NIPORT) under the Ministry of Health and Family Welfare (MoHFW). The purpose of the survey was to obtain data on the different kinds of healthcare facilities in Bangladesh and the overall quality of health of treatments offered by them. The team adopted the survey tools from the Demographic and Health Surveys (DHS) Program of the US Agency for International Development (USAID), as used in the service provision assessment component, and standardized it after consulting with the Directorate General of Health Services, the Directorate General of Family Planning Services, and other key stakeholders. 9 The final survey report detailed the survey design and survey implementation. 9 The survey data collection tools were broadly classified into 2 core components: facility inventory and healthcare provider tools. The tools covered information related to service availability, general facility readiness, service-specific readiness, and healthcare-provider training and education. Trained data collectors observed the availability of the specific items, including the facility infrastructure, and they recorded information using a handheld tablet computer. We extracted data on standard precautions for infection prevention readiness from facility inventory data. We used the Service Availability and Readiness Assessments (SARA) tools jointly developed by the World Health Organization (WHO) and the United States Agency for International Development (USAID). The tool included the following elements of standard precautions: facility waste management, availability of disinfectant, soap, running water, guidelines for standard precaution, pedal bins/plastic bins, safety boxes, standard disposable syringes with needles, and disposable latex gloves. 10
Sample size and sampling process
We calculated the sample size using the following formula: n = (1 − p)/ϵ Reference Lancet2 p, where ϵ was the requested survey precision, which is the relative standard error for estimating a proportion (p). 9 A sample of 1,600 health facilities was calculated for the BDHS survey by controlling the relative standard error for an indicator at the 30% level (p = 0.30) within 15% (ϵ = 0.15) at the domain level and within 20% (ϵ = 0.20) at the oversampled district level, and by ensuring that the survey precision is comparable across divisions. 9 The study sites were identified using a sample framework consisting of a list of 19,811 registered healthcare facilities. The MoHFW provided the list of registered healthcare facilities. The total sample of 1,600 healthcare facilities was dispersed across sampling domains, including healthcare facilities type, management authority, division, and over sample districts. Information on 1,524 healthcare facilities was included in the final data set because the rest of the facilities were either closed or inactive when the survey was conducted. The survey contained a sample of all varieties of registered healthcare facilities in all 8 divisions. The BHFS 2017 covered all 6 categories of public healthcare facilities and community clinics (CCs, n = 331), union subcenters and rural dispensaries (USCs/RDs, n = 216), union health and family welfare centers (UHFWCs, n = 497), Upazila health complexes (UHCs, n = 141), mother-and-child welfare centers (MCWCs, n = 91), and district hospitals (DHs, n = 62), as well as nongovernmental organization clinics and hospitals (NGOs, n = 130) and private hospitals (PHs, n = 132). The survey report contains further details on each type of healthcare facility sampling technique and management structure. 9 Sample distributions by division and health facility type are depicted in Fig. 3.
Standard precaution readiness index calculation
We extracted variables relating to the DHS service provision assessment matching SARA manual recommendation. 9,10 We recorded measurement tracer items, binary components used to assess readiness, according to Table 1. We calculated the percentage score by taking the sum and means of the tracer items by facilities based on SARA guidelines in each service domain, which indicates the average required availability of tracer items for standard precaution at each service delivery domain. 10,Reference Leslie, Spiegelman, Zhou and Kruk11 In each healthcare facility, 9 service delivery domains were studied: the general outpatient care area, child and adolescent vaccination services area, child growth monitoring area, family planning area, antenatal care services (ANC) and postnatal care service area (PNC), delivery and newborn care area, tuberculosis care area, noncommunicable care area, and waste management. The arithmetic mean of the resulting scores was then calculated for a standard precaution readiness index of each service domain of all the healthcare facilities. Similarly, the overall percentage of the score was calculated considering each value of the index tracer items of all 9 service domains of all healthcare facilities. Mean scores were calculated to show the average required accessibility of tracer items in the 9 service delivery domains.
Assessment of explanatory variables
We estimated the standard precaution readiness index and investigated it according to various explanatory variables, including the type of healthcare facilities, location, division, the managing authority, and supervision from the higher authority. Explanatory variables were identified based on the existing literature. 9,Reference Acharya and Paudel12,Reference Biswas, Haider, Gupta and Uddin13 The explanatory variables are explained in Table 1.
Statistical analysis
We conducted the descriptive analysis using frequency, percentage, arithmetic mean, standard deviation (SD), horizontal bar graph, and 95% confidence interval (CI) to summarize healthcare facilities used in the survey and standard precaution readiness index score according to different healthcare-facility characteristics. We also used linear regression to compare the standard precautions readiness indices according to explanatory variables, and we reported them as the coefficient with the 95% CI. We then utilized the conceptual framework technique to delineate the causal relationship between readiness score and explanatory variables, which helped determine the potential factors associated with the readiness index. Reference Victora, Huttly, Fuchs and Olinto14,Reference Hernán, Hernández-Díaz, Werler and Mitchell15 Specialized points of interest in the conceptual framework technique have been clarified by Jewell et al. Reference Jewell16 Here, we depicted the specific application for associated factors of readiness index (Fig. 1). According to our framework, for example, for the type of healthcare facility, we identified location, division, and managing authority as causal factors, and we adjusted these causal factors in the multivariable linear regression analysis. Reference Acharya and Paudel12,Reference Biswas, Haider, Gupta and Uddin13 Similarly, we carried out multivariable linear regression for other explanatory variables. 9,Reference Joarder, Chaudhury and Mannan17–19 Outputs of multivariable linear regression were reported as adjusted coefficients with a 95% CI. All descriptive, bivariable, multivariable analyses were performed considering survey sampling design, sampling strata, and weight. We considered a P of .05 or lower to indicate statistically significant difference.
Ethics approval and consent to participate
The 2017 Bangladesh health facility survey data are publicly available. We were able to download the DHS program data from the DHS website (https://dhsprogram.com/data/available-datasets.cfm). According to the DHS, written informed consent was received from the manager or the person in charge of the responsible most senior health worker before participation in the survey. Confidentiality was maintained during data collection. Ethical approval for this study was not needed because it was based on publicly available secondary data.
Results
We included data on standard precautions of 1,524 healthcare facilities in our analysis. Among 1,524 healthcare facilities, 1,012 (66.4%) were community clinics, and 5 were large district hospitals (0.3%). The vast majority of facilities were located in rural areas (n = 1,416, 92.9%), while the Dhaka division had 304 (19.9%) facilities. Most healthcare facilities were public facilities (93.0%) under the MoHFW of Bangladesh; 53 (3.5%) were operated by a nonprofit organization; and 43 (2.8%) were private facilities (Table 2). As illustrated in Fig. 2, the availability of tracer items of standard precautions across these 1,524 facilities was limited, particularly the availability of running water and hand-washing soap or alcohol-based hand rubs (29.2%), pedal bins (38%) and guidelines for standard precautions (29.8%), and disposal of medical waste (33.7%).
Readiness index of standard precautions for infection control
Fewer than half (44%) of the tracer items required for standard precaution at 9 service delivery domains were available in the 1,524 healthcare facilities. Regarding each care service domain, the average required availability of basic amenities of standard precaution ranged from 15% in tuberculosis care areas to 63% in the waste management domain (Table 3). The average standard precaution readiness index also varied from 36% for USCs to 72% for DHs (Table 3).
Factors associated with the readiness index specific to standard precautions for infection control
Table 4 shows the bivariable and multivariable linear regression analysis of the standard precaution readiness index of all nine areas of the 1,524 healthcare facilities with facility characteristics. In the adjusted model, all other types of facilities had a significantly lower standard precaution readiness index than district hospitals. The USCs experienced the largest significant decrease (mean difference, −28.9; 95% CI, −36.2 to −21.5), and MCWCs experienced the smallest significant decrease (mean difference, −13.2; 95% CI, −19.9 to −6.4). The standard precaution index of rural healthcare facilities significantly differed from that of urban healthcare facilities, with a factor of 19.2 (95% CI, −22.3 to −16.2). Similarly, private facilities and facilities under MoHFW had a lower precaution readiness index compared to facilities under the local government division (LGD), with an estimated mean difference of a factor of 7.8 (95% CI, −11.9 to −3.6) and 10.1 (95% CI, −21.2 to −13.4), respectively.
a Multivariable model adjusted for location, division, managing authority.
b Multivariable model not adjusted with any covariate.
c Multivariable model adjusted for location, division.
Discussion
In this comprehensive national assessment of service provision of healthcare facilities, we found Bangladesh’s healthcare facilities were grossly deficient, with <50% (maximum score, 100%) of the basic infrastructure and tools needed for standard precautions for infection prevention available in all healthcare facilities. Although our overall readiness finding of 44% was similar to estimates of infection prevention scores from local studies in Bangladesh as well as analysis in Ethiopia (48%), none of these specifically analyzed standard precautions, which is of particular importance to evaluate the preparedness of healthcare facilities in the context of a pandemic. Reference Abazinab, Woldie and Alaro20–Reference Yusuf, Acharya, Ahmed and Ahmed23 Thus, our analysis provides baseline data to monitor progress over time.
Of all service areas, tuberculosis services were the least prepared, with 85% of the essential components of standard precaution unavailable in facilities, suggesting the possibility of nosocomial transmission of droplet infection. Other studies have also identified adoption and implementation of tuberculosis IPC methods in Bangladeshi healthcare settings. Reference Nazneen, Tarannum and Chowdhury24 Our findings highlight that implementing national tuberculosis (TB) infection prevention and control strategies with particular emphasis on preventing droplet transmission may help reduce nosocomial infection of not only TB but also other infectious diseases during disease outbreaks.
We have demonstrated that healthcare facilities in rural Bangladesh were significantly less prepared compared to urban facilities, with a 21.0% lower readiness score (95% CI, 24.2–7.6). Notably, >60% of Bangladesh’s total population reside in rural areas. Although our analysis was not controlled for the type of facility, this may partly be explained by Bangladesh’s tiered health system with the predominance of community clinics in rural regions, which we found had a 31% lower readiness score in standard precautions compared to tertiary-care district hospitals in urban cities. Reference Islam and Biswas25 This finding was consistent with a previous analysis in other LMICs, which also could be attributed to the differences in the distribution of healthcare facilities between urban and rural areas. Reference Acharya and Paudel12 This situation is problematic given that community clinics account for 66.4% of healthcare facilities (n = 1,012) in the country, whereas district hospitals account for merely 0.3% (n = 5). Therefore, the readiness score in community clinics is a more holistic reflection of the readiness of Bangladesh and, in particular, rural Bangladesh.
The administrative authority of the facilities in our analysis had a significant impact on the readiness score of healthcare facilities. Those managed by the ministry of local government were significantly better equipped than facilities managed by the MoHFW (−25.7%); NGOs (−7.4%); and private institutions (−10.0%). This difference may be attributed to the public–private partnership (PPP) model implemented by the local government division of Bangladesh to provide care for financially disadvantaged rural dwellers in the capital cities and 4 district cities. 9 PPP entails collaborative agreements between 2 or more agents of the public and private sectors to work together to achieve a common goal. Reference Joudyian, Doshmangir, Mahdavi, Tabrizi and Gordeev26 The PPP model to provide healthcare illustrates a positive effect on health outcome indicators in several countries driven by utilizing supply chain management and reduction in operating and construction costs. Reference Sadeghi, Barati, Bastani, Daneshjafari and Etemadian27
This study is the first to investigate the readiness of standard precaution at all levels of healthcare facilities, comprising 1,524 sampled facilities using the latest national representative service provision assessment survey data. The survey was conducted before the COVID-19 pandemic. Thus, the findings of this study could be considered a baseline assessment of standard precaution readiness in Bangladesh. However, our study includes certain notable limitations inherent to the analysis of secondary data. Data were missing for some of the standard precaution items at the service delivery area level and were not included in the analysis. We were unable to analyze healthcare-provider–related factors in this study because standard precautions data specific to healthcare providers were not available in the service provision assessment survey.
The coronavirus disease 2019 (COVID-19) pandemic has raised concerns about the preparedness of healthcare facilities in LMICs to combat not only emerging threats but also ongoing endemic diseases. Our data indicate that healthcare facilities in Bangladesh experience a shortage of essential standard-precaution resources related to IPC. These shortages are most significant in healthcare facilities located in rural areas and in the MoHFW-administered primary-care facilities. The findings of this study will aid policy makers and stakeholders in focusing on the availability of appropriate resources, designing evidence-based interventions, improving accountability and sustainability regarding standard precaution and overall IPC to help the healthcare system better prepare to respond to emerging health threats.
Acknowledgements
We acknowledge the contribution of the Bangladesh health facility survey (BHFS), National Institute of Population Research and Training (NIPORT/Bangladesh), MEASURE DHS as well as ICF International teams (of USA) for their efforts to collect and give permission to use the Bangladesh health facility survey 2017, data. We acknowledge the contribution of the International Diarrheal Diseases Research, Bangladesh (icddr,b) to permit writing this research article. We also acknowledge the donors providing unrestricted support for icddr,b research efforts. The icddr,b is grateful to the governments of Bangladesh, Canada, Sweden, and the United Kingdom for providing core and unrestricted support.
Conflicts of interest
The authors declare that they have no competing interests.
Financial support
In this study, there is no specific support from any funding agency. Nusrat Homaira is funded through a research fellowship (grant no. GNT1145817) from the National Health and Medical Research Council of the Australian government.