scholarly journals Statewide costs of health care-associated infections: Estimates for acute care hospitals in North Carolina

2013 ◽  
Vol 41 (9) ◽  
pp. 764-768 ◽  
Author(s):  
Deverick J. Anderson ◽  
Deborah G. Pyatt ◽  
David J. Weber ◽  
William A. Rutala
2019 ◽  
Vol 191 (36) ◽  
pp. E981-E988 ◽  
Author(s):  
Robyn Mitchell ◽  
Geoffrey Taylor ◽  
Wallis Rudnick ◽  
Stephanie Alexandre ◽  
Kathryn Bush ◽  
...  

2009 ◽  
Vol 37 (3) ◽  
pp. 227-230 ◽  
Author(s):  
Mari Kanerva ◽  
Jukka Ollgren ◽  
Mikko J. Virtanen ◽  
Outi Lyytikäinen

Author(s):  
Margot Egger ◽  
Christian Bundschuh ◽  
Kurt Wiesinger ◽  
Elisabeth Bräutigam ◽  
Thomas Berger ◽  
...  

Medicina ◽  
2012 ◽  
Vol 48 (8) ◽  
pp. 59 ◽  
Author(s):  
Greta Gailienė ◽  
Zita Gierasimovič ◽  
Daiva Petruševičienė ◽  
Aušra Macijauskienė

The aim of the study was to evaluate the prevalence of health care-associated infections, risk factors, and antimicrobial use. Material and Methods. The study was carried out as a point-prevalence study in acute care wards, i.e., intensive care, surgical, and medical wards, at Vilnius University Hospital Santariškių Klinikos in April 2010. The study variables included the patient’s general data, indwelling devices, surgery, infection and its microbiological investigation, and antimicrobial use. All the variables that were logically related or had a P value of <0.25 in the univariate analysis were included in the stepwise logistic regression in order to study the factors potentially associated with health careassociated infections. Results. A total of 731 patients were surveyed. The overall prevalence rate of health care-associated infections was 3.8%. The prevalence of health care-associated infections differed by hospital wards (range 0.0%–19.2%). The lower respiratory tract (32.2%), urinary tract (28.5%), and surgical site infections (32.1%) were the most common health care-associated infections. Moreover, 89.3% of the cases of health care-associated infections were microbiologically investigated. Staphylococcus aureus (28.6%) and Escherichia coli (19.1%) were the most frequently isolated microorganisms. The use of one or more invasive devices was recorded in 332 patients (45.4%). Of the surveyed patients, 20.2% received antimicrobial agents. The most commonly prescribed antimicrobial agents were fluoroquinolones (21.1%), broad-spectrum penicillins (19.1%), and first- or second-generation cephalosporins (18.6%). Conclusions. The prevalence of health care-associated infections was found to be similar to the reported overall prevalence rate of health care-associated infections in acute care hospitals in Lithuania.


2011 ◽  
Vol 32 (8) ◽  
pp. 763-767 ◽  
Author(s):  
Shona Cairns ◽  
Jacqui Reilly ◽  
Sally Stewart ◽  
Debbie Tolson ◽  
Jon Godwin ◽  
...  

Objective.To determine the prevalence of health care-associated infection (HAI) in older people in acute care hospitals, detailing the specific types of HAI and specialties in which these are most prevalent.Design.Secondary analysis of the Scottish National Healthcare Associated Infection Prevalence Survey data set.Patients and Setting.All inpatients in acute care (n = 11,090) in all acute care hospitals in Scotland (n = 45).Results.The study found a linear relationship between prevalence of HAI and increasing age (P<.0001) in hospital inpatients in Scotland. Urinary tract infections and gastrointestinal infections represented the largest burden of HAI in the 75–84- and over-85-year age groups, and surgical-site infections represented the largest burden in inpatients under 75 years of age. The prevalence of urinary catheterization was higher in each of the over-65 age groups (P<.0001). Importantly, this study reveals that a high prevalence of HAI in inpatients over the age of 65 years is found across a range of specialties within acute hospital care. An increased prevalence of HAI was observed in medical, orthopedic, and surgical specialties.Conclusions.HAI is an important outcome indicator of acute inpatient hospital care, and our analysis demonstrates that HAI prevalence increases linearly with increasing age (P<.0001). Focusing interventions on preventing urinary tract infection and gastrointestinal infections would have the biggest public health benefit. To ensure patient safety, the importance of age as a risk factor for HAI cannot be overemphasized to those working in all areas of acute care.


2014 ◽  
Vol 35 (3) ◽  
pp. 259-264 ◽  
Author(s):  
JaHyun Kang ◽  
David J. Weber ◽  
Barbara A. Mark ◽  
William A. Rutala

Objective.To explore the range of hospital policies for visitor use of personal protective equipment (PPE) when entering the room of patients under isolation precautions.Design.Survey using an online questionnaire.Setting.Acute care hospitals registered in the North Carolina Statewide Program for Infection Control and Epidemiology (SPICE).Methods.A total of 136 North Carolina hospitals were invited to participate in an online survey. The survey questionnaire was developed, reviewed, and pilot tested, and then it was distributed through SPICE listserv registered e-mail addresses. The survey was conducted from February 6 to March 30, 2012.Results.Among 93 respondent hospitals (response rate, 68.4%), 82 acute care hospitals (60.3%) were included in the analyses. Substantial variation was observed with regard to hospital policies for visitor PPE use when visiting patients under isolation precautions. A total of 71% of hospitals had a hospital visitor policy, and 96% of respondents agreed that hospitals should have a visitor policy. Only 14% of hospitals monitored visitor compliance with PPE. Reported compliance rates varied from “very low” to 97%. Many hospitals (28%) reported difficulties related to visitor compliance with isolation precautions, including hostility and refusal to comply.Conclusions.Our study results illuminated hospital policy variations for visitor isolation precautions. Reported problems with hospital visitor policies (eg, different policies across departments or facilities) suggest the need for standard guidelines and for enhanced public awareness about the importance of visitor compliance with isolation precautions.


2012 ◽  
Vol 92 (2) ◽  
pp. 251-265 ◽  
Author(s):  
Janet K. Freburger ◽  
Kendra Heatwole Shank ◽  
Stefanie R. Knauer ◽  
Richard M. Montmeny

BackgroundPopulation-based studies on physical therapy use in acute care are lacking.ObjectivesThe purpose of this study was to examine population-based, hospital discharge data from North Carolina to describe the demographic and diagnostic characteristics of individuals who receive physical therapy and, for common diagnostic subgroups, to identify factors associated with the receipt of and intensity of physical therapy use.DesignThis was a cross-sectional, descriptive study.MethodsHospital discharge data for 2006–2007 from the 128 acute care hospitals in the state were examined to identify the most common diagnoses that receive physical therapy and to describe the characteristics of physical therapy users. For 2 of the most common diagnoses, logistic and linear regression analyses were conducted to identify factors associated with the receipt and intensity of physical therapy.ResultsOf the more than 2 million people treated in acute care hospitals, 22.5% received physical therapy (mean age=66 years; 58% female). Individuals with osteoarthritis (admitted for joint replacement) and stroke were 2 of the most common patient types to receive physical therapy. Almost all individuals admitted for a joint replacement received physical therapy, with little between-hospital variation. Between-hospital variation in physical therapy use for stroke was greater. Demographic and hospital-related factors were associated with physical therapy use and physical therapy intensity for both diagnoses, after controlling for illness severity and comorbidities.LimitationsData from only one state were examined, and the studied variables were limited.ConclusionsThe use and intensity of physical therapy for stroke and joint replacement in acute care hospitals in North Carolina vary by clinical and nonclinical factors. Reasons behind the association of hospital characteristics and physical therapy use need further investigation.


2021 ◽  
Vol 1 (S1) ◽  
pp. s9-s9
Author(s):  
Sarah Rhea ◽  
Emily Hadley ◽  
Kasey Jones ◽  
Alexander Preiss ◽  
Marie Stoner ◽  
...  

Background: During the COVID-19 pandemic, public-health decision makers have increasingly relied on hospitalization forecasts that are routinely provided, accurate, and based on timely input data to inform pandemic planning. In North Carolina, we adapted an existing agent-based model (ABM) to produce 30-day hospitalization forecasts of COVID-19 and non–COVID-19 hospitalizations for use by public-health decision makers. We sought to continually improve model speed and accuracy during forecasting. Methods: The geospatially explicit ABM included movement of agents (ie, patients) among 104 short-term acute-care hospitals, 10 long-term acute-care hospitals, 421 licensed nursing homes, and the community in North Carolina. Agents were based on a synthetic population of North Carolina residents (ie, >10.4 million agents). We assigned SARS-CoV-2 infections to agents according to county-level susceptible, exposed, infectious, recovered (SEIR) models informed by reported COVID-19 cases by county. Agents’ COVID-19 severity and probability of hospitalization were determined using agent-specific characteristics (eg, age, comorbidities). During May 2020–December 2020, we produced weekly 30-day forecasts of intensive care unit (ICU) and non-ICU bed occupancy for COVID-19 agents and non–COVID-19 agents statewide and by region under a range of SARS-CoV-2 effective reproduction numbers. During the reporting period, we identified optimizations for faster results turnaround. We evaluated the incorporation of real-time hospital-level occupancy data at model initialization on forecast accuracy using mean absolute percent error (MAPE). Results: During May 2020–December 2020, we provided 31 weekly reports of 30-day hospitalization forecasts with a 1-day turnaround time. Reports included (1) raw and smoothed 7-day average values for 42 model output variables; (2) static visuals of ICU and non-ICU bed demand and capacity; and (3) an interactive Tableau workbook of hospital demand variables. Identifying code efficiencies reduced a single model runtime from ~100 seconds to 28 seconds. The use of cloud computing reduced simulation runtime from ~20 hours to 15 minutes. Across forecasts, the average MAPEs were 21.6% and 7.1% for ICU and non-ICU bed demand, respectively. By incorporating hospital-level occupancy data, we reduced the average MAPE to 6.5% for ICU bed demand and 3.9% for non-ICU bed demand, indicating improved accuracy. Conclusions: We adapted an ABM and continually improved it during COVID-19 forecasting by optimizing code and computing resources and including real-time hospital-level occupancy data. Planned SEIR model updates for enhanced forecasts include the addition of compartments for undocumented infections and recoveries as well as permission of reinfection from recovered compartments.Funding: NoDisclosures: None


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