Literature DB >> 25617837

Intensive care unit capacity in low-income countries: a systematic review.

Srinivas Murthy1, Aleksandra Leligdowicz2, Neill K J Adhikari3.   

Abstract

PURPOSE: Access to critical care is a crucial component of healthcare systems. In low-income countries, the burden of critical illness is substantial, but the capacity to provide care for critically ill patients in intensive care units (ICUs) is unknown. Our aim was to systematically review the published literature to estimate the current ICU capacity in low-income countries.
METHODS: We searched 11 databases and included studies of any design, published 2004-August 2014, with data on ICU capacity for pediatric and adult patients in 36 low-income countries (as defined by World Bank criteria; population 850 million). Neonatal, temporary, and military ICUs were excluded. We extracted data on ICU bed numbers, capacity for mechanical ventilation, and information about the hospital, including referral population size, public accessibility, and the source of funding. Analyses were descriptive.
RESULTS: Of 1,759 citations, 43 studies from 15 low-income countries met inclusion criteria. They described 36 individual ICUs in 31 cities, of which 16 had population greater than 500,000, and 14 were capital cities. The median annual ICU admission rate was 401 (IQR 234-711; 24 ICUs with data) and median ICU size was 8 beds (IQR 5-10; 32 ICUs with data). The mean ratio of adult and pediatric ICU beds to hospital beds was 1.5% (SD 0.9%; 15 hospitals with data). Nepal and Uganda, the only countries with national ICU bed data, had 16.7 and 1.0 ICU beds per million population, respectively. National data from other countries were not available.
CONCLUSIONS: Low-income countries lack ICU beds, and more than 50% of these countries lack any published data on ICU capacity. Most ICUs in low-income countries are located in large referral hospitals in cities. A central database of ICU resources is required to evaluate health system performance, both within and between countries, and may help to develop related health policy.

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Mesh:

Year:  2015        PMID: 25617837      PMCID: PMC4305307          DOI: 10.1371/journal.pone.0116949

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Providing acute care to critically ill patients is a global enterprise, regardless of health system capacity [1,2]. However, the high cost of trained healthcare workers, infrastructure, and supplies has limited the development of intensive care units (ICUs) in low-income countries [3]. Additionally, the effectiveness of traditionally resource-intensive critical care in such settings is unknown, and ICU expansion in areas of severe resource constraint is therefore controversial [4]. The burden of critical illness in low-income countries is large and likely to increase with growing urbanization, emerging epidemics and access to hospitals [5-7]. Therefore, data on critical care capacity, considering access to both physical resources and health care professionals, are essential for health system planning but generally lacking or difficult to find [8]. Our objectives were to systematically review the published literature on critical care capacity in low-income countries and to compare population-based estimates of ICU bed capacity to high-and middle-income countries where available.

Methods

Search strategy

We used broad search terms to capture all relevant studies reporting on the existence and characteristics of ICUs, as defined by study authors, in target countries (see S1 File). Target countries were defined by the World Bank as low-income, corresponding to a 2012 gross national income per capita of less than USD1,035 [9]. With the assistance of a librarian, we searched 11 databases, including Medline, EMBASE, LILACS, African Index Medicus, African Journals Online, African Healthline, Opengrey, MedCarib, IMEMR, IMSEAR, and WPRIM. We developed a comprehensive search strategy based on commonly used critical care terms, using keyword and controlled vocabulary terminologies. We searched studies from January 1, 2004—August 6, 2014 with no language restrictions (see S1 File for search strategies). We restricted the search to the past 10 years, reasoning that older studies may underestimate current capacity and would therefore be less useful for health system planning. We included studies of any design that included information about pediatric and adult ICU capacity (number of beds) in our pre-specified list of countries. Reviews and editorials were included only if they provided new data. We excluded studies reporting only neonatal ICU data and those that focused on temporary or military hospitals.

Searching and data abstraction

Two reviewers (SM, AL) independently screened titles, citations, and abstracts for potentially relevant studies. Full-text versions of all potentially eligible studies were retrieved and reviewed by the same reviewers for inclusion in the review. Agreement between the two reviewers for inclusion of studies among full-text articles was measured using κ [10]. Disagreements were resolved by consensus and adjudication by a third reviewer (NA). Two data abstractors (SM, AL) independently extracted data from selected studies, including demographic data of treated patients, hospital and ICU bed numbers, mechanical ventilation capacity, referral population size, public accessibility, and the hospital funding. If more than one study discussed the same ICU, we abstracted data from the more recent study. Where required, we obtained translations of non-English studies. For studies reporting on national ICU capacity, we extracted total national hospital bed data from World Bank databases [9].

Statistical analysis

We summarized continuous data as mean (standard deviation, SD) if normally distributed or median (interquartile range, IQR) if not normally distributed, and categorical data as count (percentage). We constructed plots and created regression lines of ICU beds per population vs. hospital beds per population using data from included studies and reviews of ICU capacity in high-income countries [11] and plots of ICU beds per population vs. national healthcare expenditure per population using World Bank data [9]. All statistical analyses and plots were performed using R version 3.1.1(R Project for Statistical Computing, Vienna Austria).

Results

Our search identified 1759 articles, 1603 of which did not meet inclusion criteria after title and abstract review (Fig. 1). Of the 153 articles selected for full-text review, 110 were excluded (see S1 File), with 43 articles meeting selection criteria for final analysis (κ = 0.72, 95% confidence interval, 0.60–0.83). These studies described 36 individual ICUs (Table 1). Four included studies were published in abstract form only and 13 were identified only through searching journals not available on MEDLINE or EMBASE.
Figure 1

Flow diagram of study selection.

References for the citations excluded after full-text review are provided in S1 File.

Table 1

Details of ICU capacity in low-income countries from published studies.

CountryCityHospitalICU typeHospital bed numbera ICU bed numbera Annual ICU admissionsa Referral PopulationReference
Cambodia Phnom-PenhCardiological Center of Phnom-PenhCardiac, Adult328No dataNo data[28]
Cambodia Siem ReapAngkor Hospital for ChildrenPediatric504725No data[29]
Comoros Islands El MaaroufCentre Hospitalier RegionalAdultNo data10760No data[30]
Democratic Republic of Congo LubumbashiProvincial Hospital Jason SendweNo dataNo dataNo data257No data[31]
Democratic Republic of Congo GomaDOCS HospitalAdultNo data3141No data[32]
Eritrea AsmaraOrotta national Referral HospitalAdult3009390No data[33]
Ethiopia Addis AbabaYekatit 12 HospitalBurn unit Adult & PediatricNo data18No dataNo data[34]
Ethiopia Addis AbabaBlack Lion HospitalNo dataNo dataNo data276No data[35]
Ethiopia Addis AbabaTikur Anbassa HospitalAdult, Medical5006591No data[36]
Ethiopia JimmaJimma University Specialized HospitalAdult450637015 million[37,38]
Kenya KilifiKilifi District HospitalPediatric60No dataNo data200 000[39]
Kenya NairobiKenyatta National HospitalAdult, Pediatric180020120032 million[40]
Kenya NairobiMater HospitalAdult1405No dataNo data[41]
Kenya NakuruNakuru Provincial HospitalNo data7505No dataNo data[42]
Malawi BlantyreQueen Elizabeth Central HospitalAdultNo Data4–5No dataNo data[43]
Malawi LilongweKamuzu Central HospitalAdult60042349 million[15]
Mali BamakoCHU Gabriel ToureNo dataNo DataNo data555No data[44]
Nepal DharanKoirala Institute of Health SciencePediatricNo data6 (Adult)425 (Adult)No data[45,46]
Nepal DhulikhelDhulikhel HospitalAdult3405No dataNo data[47]
Nepal KathmanduTribhuban University Teaching HospitalAdult, PediatricNo data6234No data[48,49]
Nepal MixMixAdult, Pediatric (48 total)7040 (whole country)450, 60No data29 million[18]
Nepal PatanPatan HospitalPediatricNo data16, 6126 (pediatric)No data[5052]
Nepal PokharaManipal Teaching HospitalAdult, Pediatric75011992*3 million[53,54]
Nepal ThapathaliNorvic International Hospital and Medical CenterAdultNo dataNo data700No data[55]
Niger Mirriah townMirriah District HospitalPediatricNo data10No dataNo data[56]
Tanzania Dar es SalaamMuhimbili National HospitalAdult100010412No data[57,58]
Tanzania IfakaraSt. Francis HospitalNo DataNo data10715No data[32]
Tanzania MwanzaSekou Toure Regional Referral HospitalAdult3758No data3.2 million[59]
Tanzania MwanzaBudago Medical CenterAdult, Pediatric100012, 10No data13 million[16]
Togo LomeTokoin University Hospital CenterNo dataNo dataNo data1689No data[60]
Uganda GuluSt. Mary's Hospital LacorAdult, Pediatric4768218No data[61,62]
Uganda KampalaMulago HospitalAdult, Pediatric, Cardiac150012, 6, 4222 (Adult)No data[14,63]
Uganda MasakaMasaka Regional Referral HospitalAdultNo data1No dataNo data[63]
Uganda MbararaMbarara HospitalAdult, PediatricNo data2 (increasing to 8)No data3 million[23,64]
Zambia LusakaUniversity Teaching HospitalNo data13005No dataNo data[42]
Zimbabwe HarareParirenyatwa HospitalPediatricNo data5102No data[65]

aWhere more than one reference was available for the same hospital, we used the most recent reference for hospital, ICU bed numbers, and ICU admissions per year.

Flow diagram of study selection.

References for the citations excluded after full-text review are provided in S1 File. aWhere more than one reference was available for the same hospital, we used the most recent reference for hospital, ICU bed numbers, and ICU admissions per year. The articles included described ICU capacity in a pre-specified hospital (n = 40) or national (n = 3) region. Based on listed affiliations, 40% (17/43) of articles had corresponding authors based in the low-income country. Of 36 low-income countries defined by the World Bank, only 15 (42%) countries had studies meeting our inclusion criteria (Fig. 2). Therefore, most low-income countries had no literature on ICU capacity, or described ICUs that did not meet our inclusion criteria, such as relief or military hospitals [12,13].
Figure 2

Thirty-six low-income countries included in the search strategy with (n = 15, red) and without (n = 21, yellow) published data on ICU resource availability.

The definitions of critical care varied across the few studies that provided explicit definitions. One described ICU beds as requiring a 'pulse oximeter, mechanical ventilator, suction machine and an anesthesia provider'[14]. Others described the ICU as a 'specialized unit with more skilled nursing care,'[15] or a 'concentrated area where the level of care and supervision is considerably more sophisticated than in the ordinary ward'[16]. The 43 studies collectively described 36 individual ICUs. Only 3 studies explicitly quantified ICU capacity across a geographic region [17] or country [14,18]; the remaining 40 studies provided single-center descriptions (Table 1). Nine of these 40 studies provided details on referral population size without stating whether additional ICU capacity existed in other hospitals serving the same catchment area. The 36 individual ICUs were distributed among 31 cities, of which 16 had a population greater than 500,000 and 14 were national capitals. Most ICUs (94.1%, 32/34 with data on hospital type) were located in large referral hospitals in major cities. Nepal and Uganda, the only countries with national ICU bed data, had 16.7 and 1.0 ICU beds per million population, respectively [14,18]. When comparing national critical care capacity among low-income countries with data from this review and other countries from other sources [refs], the number of ICU beds per population (Fig. 3) is poorly associated with the number of hospital beds per population (R2 = 0.11, p = 0.37; R2 = 0.24, p = 0.12 if USA is excluded) and strongly associated with annual national healthcare expenditure per capita (R2 = 0.75, p = 0.002).
Figure 3

Comparison of the relationship between ICU beds and hospital beds (panel a), and between ICU beds and national healthcare expenditure per capita (panel b) in low versus selected high-income countries.

There is a non-significant trend between ICU beds and hospital beds (R2 = 0.11, p = 0.37; R2 = 0.24, p = 0.12 if USA is excluded) and a significant trend between ICU beds and national healthcare expenditure per capita (R2 = 0.76, p = 0.002). Supplementary data are from [26,27].

Comparison of the relationship between ICU beds and hospital beds (panel a), and between ICU beds and national healthcare expenditure per capita (panel b) in low versus selected high-income countries.

There is a non-significant trend between ICU beds and hospital beds (R2 = 0.11, p = 0.37; R2 = 0.24, p = 0.12 if USA is excluded) and a significant trend between ICU beds and national healthcare expenditure per capita (R2 = 0.76, p = 0.002). Supplementary data are from [26,27]. The median annual number of ICU admissions was 401 (IQR 234–711; 24 ICUs with data) the median ICU size was 8 beds (IQR 5–10; 32 ICUs with data), and the median annual admission rate per ICU bed was 58.5 (IQR 41–71, 13 ICUs with data). The mean number of adult and pediatric ICU beds, as a percentage of hospital beds, was 1.5% (SD 0.9%; 15 hospitals with data). Thirteen (36.1%) ICUs explicitly mentioned accepting pediatric patients. Twenty-two (61%) ICUs provided data on mechanical ventilation capacity, of which 17 (77%) had mechanical ventilators. No study reported whether ICU access was privately or publicly funded. There were few data on physician staffing (1 of 36 ICUs), nurse:patient ratios (2 of 36 ICUs), or the presence of an educational mandate (10 of 36 ICUs).

Discussion

Based on currently available literature, access to critical care resources in World Bank-defined low-income countries is poorly described on the level of individual ICUs and even more sparingly described on a population level. By reported measures, however, ICU resources in low-income countries appear to be sparse. Not surprisingly, the number of ICU beds nationally was related to overall hospital bed capacity and even more significantly to the national expenditure on healthcare. The inconsistency of definition of an ICU bed implies a significant challenge when comparing resources among countries; even within high-income countries, the definition of an ICU may depend on a higher nurse:patient ratio, the availability of mechanical ventilation, or the ability to support multiple organ systems simultaneously[11,19]. Future research must acknowledge these differences when performing international comparisons [20]. A consensus definition of an ICU, stratified by overall healthcare system capacity, would help with standardizing data collection and may help with planning evaluations of interventions to improve the care and outcomes of seriously ill hospitalized patients. It is important to note that the mere presence of an ICU does not imply the ability to effectively care for critically ill patients. Similarly, counting the number of critically ill patients from the number of ICU beds in countries with insufficient capacity will lead to a gross underestimate [8]. As reported in a survey of African providers, the ability to comply with sepsis guidelines is minimal in most of Sub-Saharan Africa, despite the presence of an ICU [21]. Additionally, data on many of the features unique to critical care, such as mechanical ventilation and increased nurse:patient ratios, were absent in many of the ICUs described, belying their ability to provide care to critically ill patients. Therefore, there is an urgent need for cross-institutional collaboration for the collection of standardized resource and outcome data through registries and for sharing of appropriate management strategies in resource-constrained low-income countries [2]. There is negligible published research emerging from critical care communities in low-income countries [22]. Reasons for this may include the lack of critical care providers and researchers, funding, academic mentorship, infrastructure to perform research, or barriers to developing available data into publishable research. Given the high burden of critical illness in low-income regions with a collective population of 850 million, the high mortality for patients admitted to ICUs in these countries, and the availability of strategies for their management, there is a rationale for ICUs in all regions of the world [2,23,24]. This must be balanced, however, against the opportunity costs in healthcare systems facing broad challenges of insufficient finding, too few healthcare workers, and poor infrastructure [25]. These challenges notwithstanding, knowledge of pre-existing ICU capacity is vital to plan any future development. For example, in a recent observational study that aimed to assess the worldwide burden of critical illness through convenience sampling of ICU admissions, only 2 of the 84 countries were low-income and 2 of the 730 participating centers were from low-income countries [2]. This systematic review has a number of limitations. While our search strategies were exhaustive, we were unable to capture data on all ICUs in a region due to the lack of relevant publications. Searching of published research literature is an insensitive tool for resource determination, and centralized databases are required to estimate actual acute healthcare capacity [8]. Furthermore, there was substantial variability in availability of relevant data among the included studies and we often relied on single-sentence statements of critical care capacity. Additionally, no independent validation of results was performed. Many health systems have changed drastically since the publication of the studies included in this systematic review, and given the ten-year time frame of our data collection, some features of critical care described may be outdated.

Conclusions

Reliable published data on the availability of critical care resources in low-income regions is sparse. Existing critical care resources are modest and positively associated with national hospital bed capacity and healthcare spending. A global database of ICU capacity, facilitated by networks of critical care providers in low-income countries, would help to evaluate access to and outcomes from critical care, both within and between countries.

Search Strategy, Country List, Reference list: Excluded papers.

(DOCX) Click here for additional data file.

S1 PRISMA Checklist.

(DOC) Click here for additional data file.
  52 in total

1.  Challenges in setting up pediatric and neonatal intensive care units in a resource-limited country.

Authors:  Sangita Basnet; Neelam Adhikari; Janak Koirala
Journal:  Pediatrics       Date:  2011-09-19       Impact factor: 7.124

2.  An unusual presentation of malassezia dermatosis.

Authors:  Shahnaz Abraham; Vincent Piguet
Journal:  Dermatology       Date:  2006       Impact factor: 5.366

3.  Diarrhea associated hemolytic uremic syndrome: a 3-year PICU experience from Nepal.

Authors:  Arun K Baranwal; Rnm Ravi; Rupa Singh
Journal:  Indian J Pediatr       Date:  2009-11       Impact factor: 1.967

4.  Description of patients admitted to a burn unit of Yekatit 12 Hosptial, Addis Ababa, Ethiopia.

Authors:  Tesfaye Mulat; Lars O Salemark
Journal:  Ethiop Med J       Date:  2006-10

5.  Incidence and risk factor for ventilator-associated pneumonia in Kathmandu University Hospital.

Authors:  S Ranjit; B Bhattarai
Journal:  Kathmandu Univ Med J (KUMJ)       Date:  2011 Jan-Mar

6.  Critical care in resource-poor settings: lessons learned and future directions.

Authors:  Elisabeth D Riviello; Stephen Letchford; Loice Achieng; Mark W Newton
Journal:  Crit Care Med       Date:  2011-04       Impact factor: 7.598

7.  Trauma admissions to the intensive care unit at a reference hospital in Northwestern Tanzania.

Authors:  Phillipo L Chalya; Japhet M Gilyoma; Ramesh M Dass; Mabula D Mchembe; Michael Matasha; Joseph B Mabula; Nkinda Mbelenge; William Mahalu
Journal:  Scand J Trauma Resusc Emerg Med       Date:  2011-10-24       Impact factor: 2.953

8.  Extended spectrum beta-lactamases among Gram-negative bacteria of nosocomial origin from an intensive care unit of a tertiary health facility in Tanzania.

Authors:  Faustine Ndugulile; Roland Jureen; Stig Harthug; Willy Urassa; Nina Langeland
Journal:  BMC Infect Dis       Date:  2005-10-15       Impact factor: 3.090

9.  The value of intermittent point-prevalence surveys of healthcare-associated infections for evaluating infection control interventions at Angkor Hospital for Children, Siem Reap, Cambodia.

Authors:  N Stoesser; K Emary; S Soklin; K Peng An; S Sophal; S Chhomrath; N P J Day; D Limmathurotsakul; P Nget; Y Pangnarith; S Sona; V Kumar; C E Moore; N Chanpheaktra; C M Parry
Journal:  Trans R Soc Trop Med Hyg       Date:  2013-02-14       Impact factor: 2.184

Review 10.  Critical care and the global burden of critical illness in adults.

Authors:  Neill K J Adhikari; Robert A Fowler; Satish Bhagwanjee; Gordon D Rubenfeld
Journal:  Lancet       Date:  2010-10-11       Impact factor: 79.321

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1.  Development of a Malawi Intensive care Mortality risk Evaluation (MIME) model, a prospective cohort study.

Authors:  Meghan Prin; Stephanie Pan; Clement Kadyaudzu; Guohua Li; Anthony Charles
Journal:  Int J Surg       Date:  2018-11-03       Impact factor: 6.071

Review 2.  Current challenges in the management of sepsis in ICUs in resource-poor settings and suggestions for the future.

Authors:  Marcus J Schultz; Martin W Dunser; Arjen M Dondorp; Neill K J Adhikari; Shivakumar Iyer; Arthur Kwizera; Yoel Lubell; Alfred Papali; Luigi Pisani; Beth D Riviello; Derek C Angus; Luciano C Azevedo; Tim Baker; Janet V Diaz; Emir Festic; Rashan Haniffa; Randeep Jawa; Shevin T Jacob; Niranjan Kissoon; Rakesh Lodha; Ignacio Martin-Loeches; Ganbold Lundeg; David Misango; Mervyn Mer; Sanjib Mohanty; Srinivas Murthy; Ndidiamaka Musa; Jane Nakibuuka; Ary Serpa Neto; Mai Nguyen Thi Hoang; Binh Nguyen Thien; Rajyabardhan Pattnaik; Jason Phua; Jacobus Preller; Pedro Povoa; Suchitra Ranjit; Daniel Talmor; Jonarthan Thevanayagam; C Louise Thwaites
Journal:  Intensive Care Med       Date:  2017-03-27       Impact factor: 17.440

3.  Pediatric sepsis and septic shock management in resource-limited settings.

Authors:  Ndidiamaka Musa; Srinivas Murthy; Niranjan Kissoon
Journal:  Intensive Care Med       Date:  2016-05-23       Impact factor: 17.440

4.  Mortality outcomes based on ED qSOFA score and HIV status in a developing low income country.

Authors:  Adam R Aluisio; Stephanie Garbern; Tess Wiskel; Zeta A Mutabazi; Olivier Umuhire; Chin Chin Ch'ng; Kristina E Rudd; Jeanne D'Arc Nyinawankusi; Jean Claude Byiringiro; Adam C Levine
Journal:  Am J Emerg Med       Date:  2018-03-10       Impact factor: 2.469

5.  Obstetric admissions and outcomes in an intensive care unit in Malawi.

Authors:  M Prin; C Kadyaudzu; K Aagaard; A Charles
Journal:  Int J Obstet Anesth       Date:  2019-03-28       Impact factor: 2.603

Review 6.  Response to the Novel Corona Virus (COVID-19) Pandemic Across Africa: Successes, Challenges, and Implications for the Future.

Authors:  Olayinka O Ogunleye; Debashis Basu; Debjani Mueller; Jacqueline Sneddon; R Andrew Seaton; Adesola F Yinka-Ogunleye; Joshua Wamboga; Nenad Miljković; Julius C Mwita; Godfrey Mutashambara Rwegerera; Amos Massele; Okwen Patrick; Loveline Lum Niba; Melaine Nsaikila; Wafaa M Rashed; Mohamed Ali Hussein; Rehab Hegazy; Adefolarin A Amu; Baffour Boaten Boahen-Boaten; Zinhle Matsebula; Prudence Gwebu; Bongani Chirigo; Nongabisa Mkhabela; Tenelisiwe Dlamini; Siphiwe Sithole; Sandile Malaza; Sikhumbuzo Dlamini; Daniel Afriyie; George Awuku Asare; Seth Kwabena Amponsah; Israel Sefah; Margaret Oluka; Anastasia N Guantai; Sylvia A Opanga; Tebello Violet Sarele; Refeletse Keabetsoe Mafisa; Ibrahim Chikowe; Felix Khuluza; Dan Kibuule; Francis Kalemeera; Mwangana Mubita; Joseph Fadare; Laurien Sibomana; Gwendoline Malegwale Ramokgopa; Carmen Whyte; Tshegofatso Maimela; Johannes Hugo; Johanna C Meyer; Natalie Schellack; Enos M Rampamba; Adel Visser; Abubakr Alfadl; Elfatih M Malik; Oliver Ombeva Malande; Aubrey C Kalungia; Chiluba Mwila; Trust Zaranyika; Blessmore Vimbai Chaibva; Ioana D Olaru; Nyasha Masuka; Janney Wale; Lenias Hwenda; Regina Kamoga; Ruaraidh Hill; Corrado Barbui; Tomasz Bochenek; Amanj Kurdi; Stephen Campbell; Antony P Martin; Thuy Nguyen Thi Phuong; Binh Nguyen Thanh; Brian Godman
Journal:  Front Pharmacol       Date:  2020-09-11       Impact factor: 5.810

7.  COVID-19 threatens health systems in sub-Saharan Africa: the eye of the crocodile.

Authors:  Elijah Paintsil
Journal:  J Clin Invest       Date:  2020-06-01       Impact factor: 14.808

8.  Antibiotic Prophylaxis for Melioidosis in Patients Receiving Hemodialysis in the Tropics? One Size Does Not Fit All.

Authors:  Ken W T Chau; Simon Smith; Katherine Kang; Shyam Dheda; Josh Hanson
Journal:  Am J Trop Med Hyg       Date:  2018-07-12       Impact factor: 2.345

9.  Effectiveness of a Daily Rounding Checklist on Processes of Care and Outcomes in Diverse Pediatric Intensive Care Units Across the World.

Authors:  Rahul Kashyap; Srinivas Murthy; Grace M Arteaga; Yue Dong; Lindsey Cooper; Tanja Kovacevic; Chetak Basavaraja; Hong Ren; Lina Qiao; Guoying Zhang; Kannan Sridharan; Ping Jin; Tao Wang; Ilisapeci Tuibeqa; An Kang; Mandyam Dhanti Ravi; Ebru Ongun; Ognjen Gajic; Sandeep Tripathi
Journal:  J Trop Pediatr       Date:  2021-07-02       Impact factor: 1.165

10.  Gender-based disparities in burn injuries, care and outcomes: A World Health Organization (WHO) Global Burn Registry cohort study.

Authors:  Kajal Mehta; Hana Arega; Natalie L Smith; Kathleen Li; Emma Gause; Joohee Lee; Barclay Stewart
Journal:  Am J Surg       Date:  2021-07-24       Impact factor: 2.565

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