hospital occupancy
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Author(s):  
Juliana Nga Man Lui ◽  
Ellie Bostwick Andres ◽  
Janice Mary Johnston

Background—The workload of public hospital staff is heightened during seasonal influenza surges in hospitals serving densely populated cities. Such work environments may subject staff to increased risk of sickness presenteeism. Presenteeism is detrimental to nurses’ health and may lead to downstream productivity loss, resulting in financial costs for hospital organizations. Aims—This study aims to quantify how seasonal influenza hospital occupancy surge impacts nurses’ sickness presenteeism and related productivity costs in high-intensity inpatient metropolitan hospitals. Methods—Full-time nurses in three Hong Kong acute-care hospitals were surveyed. Generalized estimating equations (GEE) was applied to account for clustering in small number of hospitals. Results—A total of 71.3% of nurses reported two or more presenteeism events last year. A 6.8% increase in hospital inpatient occupancy rate was associated with an increase of 19% (1.19, 95% CI: 1.06–1.34) in nurse presenteeism. Presenteeism productivity loss costs between nurses working healthy (USD1983) and worked sick (USD 2008) were not significantly different, while sick leave costs were highest (USD 2703). Conclusion—Presenteeism prevalence is high amongst acute-care hospital nurses and workload increase during influenza flu surge significantly heightened nurse sickness presenteeism. Annual presenteeism productivity loss costs in this study of USD 24,096 were one of the highest reported worldwide. Productivity loss was also considerably high regardless of nurses’ health states, pointing towards other potential risk factors at play. When scheduling nurses to tackle flu surge, managers may want to consider impaired productivity due to staff presenteeism. Further longitudinal research is essential in identifying management modifiable risk factors that impact nurse presenteeism and impairing downstream productivity loss.


Author(s):  
Hrushikesh Das ◽  
Sasmita Panigrahi ◽  
Dharitri Swain

Tele-information and communication have led a global revolution in solving the scarcity of health care workers. In the vision of health for all, different global leaders have initiated many public health reforms to address the health care needs of citizens, like e-Sanjeevani in India. COVID-19 created an acute shortage of nurses, as well as the rising cost of care and hospital occupancy which are major hurdles to address basic health needs. Telenursing is a novel field that utilizes innovative technologies to offer safe, effective, and ethical care promptly by providing. Telenursing may provide a means to overcome some of the challenges faced by patients by providing easier access to cost-effective care and equitable distribution of health care providers. Globally, telenursing is an emerging and rapidly expanding area for professionals and offers unlimited opportunities for its members.


Econometrics ◽  
2021 ◽  
Vol 9 (4) ◽  
pp. 38
Author(s):  
J. M. Calabuig ◽  
E. Jiménez-Fernández ◽  
E. A. Sánchez-Pérez ◽  
S. Manzanares

One of the main challenges posed by the healthcare crisis generated by COVID-19 is to avoid hospital collapse. The occupation of hospital beds by patients diagnosed by COVID-19 implies the diversion or suspension of their use for other specialities. Therefore, it is useful to have information that allows efficient management of future hospital occupancy. This article presents a robust and simple model to show certain characteristics of the evolution of the dynamic process of bed occupancy by patients with COVID-19 in a hospital by means of an adaptation of Kaplan-Meier survival curves. To check this model, the evolution of the COVID-19 hospitalization process of two hospitals between 11 March and 15 June 2020 is analyzed. The information provided by the Kaplan-Meier curves allows forecasts of hospital occupancy in subsequent periods. The results shows an average deviation of 2.45 patients between predictions and actual occupancy in the period analyzed.


Author(s):  
Shih-Chuan Chou ◽  
Yeu-Shin C. Chang ◽  
Paul C. Chen ◽  
Jeremiah D. Schuur ◽  
Scott G. Weiner

2021 ◽  
Author(s):  
Klaske Van Heusden ◽  
Greg Stewart ◽  
Sarah Otto ◽  
Guy Dumont

The COVID-19 pandemic has had an enormous toll on human health and well-being and led to major social and economic disruptions. Public health interventions in response to burgeoning case numbers and hospitalizations have repeatedly bent down the epidemic curve in many jurisdictions, effectively creating a closed-loop dynamic system. We aim to formalize and illustrate how to incorporate principles of feedback control into pandemic projections and decision making. Starting with a SEEIQR epidemiological model, we illustrate how feedback control can be incorporated into pandemic management using a simple design (proportional-integral or PI control), which couples recent changes in case numbers or hospital occupancy with explicit policy restrictions. We then analyse a closed-loop system between the SEEIQR model and the designed feedback controller to illustrate the potential benefits of pandemic policy design that incorporates feedback. We first explored a feedback design that responded to hospital measured infections, demonstrating robust ability to control a pandemic despite simulating large uncertainty in reproduction number R0 (range: 1.04-5.18) and average time to hospital admission (range: 4-28 days). The second design compared responding to hospital occupancy to responding to case counts, showing that shorter delays reduced both the cumulative case count and the average level of interventions. Finally, we show that feedback is robust to changing public compliance to public health directives, and to systemic changes associated with new variants of concern and with the introduction of a vaccination program. The negative impact of a pandemic on human health and societal disruption can be reduced by coupling models of disease propagation with models of the decision-making process. This creates a closed-loop system that better represents the coupled dynamics of a disease and public health responses. Importantly, we show that feedback control is robust to delays in both measurements and responses, and to uncertainty in model parameters and the efficacy of control measures.


2020 ◽  
Vol Publish Ahead of Print ◽  
Author(s):  
J. Madison Hyer ◽  
Anghela Z. Paredes ◽  
Diamantis Tsilimigras ◽  
Timothy M. Pawlik

2020 ◽  
Vol 46 (9) ◽  
pp. 506-515
Author(s):  
Mahshid Abir ◽  
Jason Goldstick ◽  
Rosalie Malsberger ◽  
Sebastian Bauhoff ◽  
Claude M. Setodji ◽  
...  

2020 ◽  
Vol 58 ◽  
pp. 48-55 ◽  
Author(s):  
Uchenna R. Ofoma ◽  
Juan Montoya ◽  
Debdoot Saha ◽  
Andrea Berger ◽  
H. Lester Kirchner ◽  
...  

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