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Bettenkapazitätssteuerung in Zeiten der COVID-19-Pandemie: Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universitätsklinikums Augsburg

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Bettenkapazitätssteuerung in Zeiten der COVID-19-Pandemie: Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universitätsklinikums Augsburg. / Römmele, C.; Neidel, T.; Heins, Jakob et al.
In: Der Anaesthesist, Vol. 69, No. 10, 01.10.2020, p. 717-725.

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Harvard

Römmele, C, Neidel, T, Heins, J, Heider, S, Otten, V, Ebigbo, A, Weber, T, Müller, M, Spring, O, Braun, G, Wittmann, M, Schoenfelder, J, Heller, AR, Messmann, H & Brunner, JO 2020, 'Bettenkapazitätssteuerung in Zeiten der COVID-19-Pandemie: Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universitätsklinikums Augsburg', Der Anaesthesist, vol. 69, no. 10, pp. 717-725. https://doi.org/10.1007/s00101-020-00830-6

APA

Römmele, C., Neidel, T., Heins, J., Heider, S., Otten, V., Ebigbo, A., Weber, T., Müller, M., Spring, O., Braun, G., Wittmann, M., Schoenfelder, J., Heller, A. R., Messmann, H., & Brunner, J. O. (2020). Bettenkapazitätssteuerung in Zeiten der COVID-19-Pandemie: Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universitätsklinikums Augsburg. Der Anaesthesist, 69(10), 717-725. https://doi.org/10.1007/s00101-020-00830-6

Vancouver

Römmele C, Neidel T, Heins J, Heider S, Otten V, Ebigbo A et al. Bettenkapazitätssteuerung in Zeiten der COVID-19-Pandemie: Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universitätsklinikums Augsburg. Der Anaesthesist. 2020 Oct 1;69(10):717-725. doi: 10.1007/s00101-020-00830-6

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Bibtex

@article{0a9222e1621347fba0f55fe1c499e9a1,
title = "Bettenkapazit{\"a}tssteuerung in Zeiten der COVID-19-Pandemie: Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universit{\"a}tsklinikums Augsburg",
abstract = "BACKGROUND: Following the regional outbreak in China, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has spread all over the world, presenting the healthcare systems with huge challenges worldwide. In Germany the coronavirus diseases 2019 (COVID-19) pandemic has resulted in a slowly growing demand for health care with a sudden occurrence of regional hotspots. This leads to an unpredictable situation for many hospitals, leaving the question of how many bed resources are needed to cope with the surge of COVID-19 patients.OBJECTIVE: In this study we created a simulation-based prognostic tool that provides the management of the University Hospital of Augsburg and the civil protection services with the necessary information to plan and guide the disaster response to the ongoing pandemic. Especially the number of beds needed on isolation wards and intensive care units (ICU) are the biggest concerns. The focus should lie not only on the confirmed cases as the patients with suspected COVID-19 are in need of the same resources.MATERIAL AND METHODS: For the input we used the latest information provided by governmental institutions about the spreading of the disease, with a special focus on the growth rate of the cumulative number of cases. Due to the dynamics of the current situation, these data can be highly variable. To minimize the influence of this variance, we designed distribution functions for the parameters growth rate, length of stay in hospital and the proportion of infected people who need to be hospitalized in our area of responsibility. Using this input, we started a Monte Carlo simulation with 10,000 runs to predict the range of the number of hospital beds needed within the coming days and compared it with the available resources.RESULTS: Since 2 February 2020 a total of 306 patients were treated with suspected or confirmed COVID-19 at this university hospital. Of these 84 needed treatment on the ICU. With the help of several simulation-based forecasts, the required ICU and normal bed capacity at Augsburg University Hospital and the Augsburg ambulance service in the period from 28 March 2020 to 8 June 2020 could be predicted with a high degree of reliability. Simulations that were run before the impact of the restrictions in daily life showed that we would have run out of ICU bed capacity within approximately 1 month.CONCLUSION: Our simulation-based prognosis of the health care capacities needed helps the management of the hospital and the civil protection service to make reasonable decisions and adapt the disaster response to the realistic needs. At the same time the forecasts create the possibility to plan the strategic response days and weeks in advance. The tool presented in this study is, as far as we know, the only one accounting not only for confirmed COVID-19 cases but also for suspected COVID-19 patients. Additionally, the few input parameters used are easy to access and can be easily adapted to other healthcare systems.",
keywords = "Betacoronavirus/isolation & purification, COVID-19, Coronavirus Infections/epidemiology, Critical Care/organization & administration, Germany, Hospital Bed Capacity, Hospitals, University/organization & administration, Humans, Intensive Care Units/organization & administration, Pandemics, Pneumonia, Viral/epidemiology, Prognosis, SARS-CoV-2",
author = "C. R{\"o}mmele and T. Neidel and Jakob Heins and Steffen Heider and V. Otten and A. Ebigbo and T. Weber and M. M{\"u}ller and O. Spring and G. Braun and M. Wittmann and Jan Schoenfelder and A.R. Heller and H. Messmann and Brunner, {Jens O.}",
year = "2020",
month = oct,
day = "1",
doi = "10.1007/s00101-020-00830-6",
language = "German",
volume = "69",
pages = "717--725",
journal = "Der Anaesthesist",
issn = "0003-2417",
publisher = "Springer Verlag",
number = "10",

}

RIS

TY - JOUR

T1 - Bettenkapazitätssteuerung in Zeiten der COVID-19-Pandemie

T2 - Eine simulationsbasierte Prognose der Normal- und Intensivstationsbetten anhand der deskriptiven Daten des Universitätsklinikums Augsburg

AU - Römmele, C.

AU - Neidel, T.

AU - Heins, Jakob

AU - Heider, Steffen

AU - Otten, V.

AU - Ebigbo, A.

AU - Weber, T.

AU - Müller, M.

AU - Spring, O.

AU - Braun, G.

AU - Wittmann, M.

AU - Schoenfelder, Jan

AU - Heller, A.R.

AU - Messmann, H.

AU - Brunner, Jens O.

PY - 2020/10/1

Y1 - 2020/10/1

N2 - BACKGROUND: Following the regional outbreak in China, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has spread all over the world, presenting the healthcare systems with huge challenges worldwide. In Germany the coronavirus diseases 2019 (COVID-19) pandemic has resulted in a slowly growing demand for health care with a sudden occurrence of regional hotspots. This leads to an unpredictable situation for many hospitals, leaving the question of how many bed resources are needed to cope with the surge of COVID-19 patients.OBJECTIVE: In this study we created a simulation-based prognostic tool that provides the management of the University Hospital of Augsburg and the civil protection services with the necessary information to plan and guide the disaster response to the ongoing pandemic. Especially the number of beds needed on isolation wards and intensive care units (ICU) are the biggest concerns. The focus should lie not only on the confirmed cases as the patients with suspected COVID-19 are in need of the same resources.MATERIAL AND METHODS: For the input we used the latest information provided by governmental institutions about the spreading of the disease, with a special focus on the growth rate of the cumulative number of cases. Due to the dynamics of the current situation, these data can be highly variable. To minimize the influence of this variance, we designed distribution functions for the parameters growth rate, length of stay in hospital and the proportion of infected people who need to be hospitalized in our area of responsibility. Using this input, we started a Monte Carlo simulation with 10,000 runs to predict the range of the number of hospital beds needed within the coming days and compared it with the available resources.RESULTS: Since 2 February 2020 a total of 306 patients were treated with suspected or confirmed COVID-19 at this university hospital. Of these 84 needed treatment on the ICU. With the help of several simulation-based forecasts, the required ICU and normal bed capacity at Augsburg University Hospital and the Augsburg ambulance service in the period from 28 March 2020 to 8 June 2020 could be predicted with a high degree of reliability. Simulations that were run before the impact of the restrictions in daily life showed that we would have run out of ICU bed capacity within approximately 1 month.CONCLUSION: Our simulation-based prognosis of the health care capacities needed helps the management of the hospital and the civil protection service to make reasonable decisions and adapt the disaster response to the realistic needs. At the same time the forecasts create the possibility to plan the strategic response days and weeks in advance. The tool presented in this study is, as far as we know, the only one accounting not only for confirmed COVID-19 cases but also for suspected COVID-19 patients. Additionally, the few input parameters used are easy to access and can be easily adapted to other healthcare systems.

AB - BACKGROUND: Following the regional outbreak in China, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has spread all over the world, presenting the healthcare systems with huge challenges worldwide. In Germany the coronavirus diseases 2019 (COVID-19) pandemic has resulted in a slowly growing demand for health care with a sudden occurrence of regional hotspots. This leads to an unpredictable situation for many hospitals, leaving the question of how many bed resources are needed to cope with the surge of COVID-19 patients.OBJECTIVE: In this study we created a simulation-based prognostic tool that provides the management of the University Hospital of Augsburg and the civil protection services with the necessary information to plan and guide the disaster response to the ongoing pandemic. Especially the number of beds needed on isolation wards and intensive care units (ICU) are the biggest concerns. The focus should lie not only on the confirmed cases as the patients with suspected COVID-19 are in need of the same resources.MATERIAL AND METHODS: For the input we used the latest information provided by governmental institutions about the spreading of the disease, with a special focus on the growth rate of the cumulative number of cases. Due to the dynamics of the current situation, these data can be highly variable. To minimize the influence of this variance, we designed distribution functions for the parameters growth rate, length of stay in hospital and the proportion of infected people who need to be hospitalized in our area of responsibility. Using this input, we started a Monte Carlo simulation with 10,000 runs to predict the range of the number of hospital beds needed within the coming days and compared it with the available resources.RESULTS: Since 2 February 2020 a total of 306 patients were treated with suspected or confirmed COVID-19 at this university hospital. Of these 84 needed treatment on the ICU. With the help of several simulation-based forecasts, the required ICU and normal bed capacity at Augsburg University Hospital and the Augsburg ambulance service in the period from 28 March 2020 to 8 June 2020 could be predicted with a high degree of reliability. Simulations that were run before the impact of the restrictions in daily life showed that we would have run out of ICU bed capacity within approximately 1 month.CONCLUSION: Our simulation-based prognosis of the health care capacities needed helps the management of the hospital and the civil protection service to make reasonable decisions and adapt the disaster response to the realistic needs. At the same time the forecasts create the possibility to plan the strategic response days and weeks in advance. The tool presented in this study is, as far as we know, the only one accounting not only for confirmed COVID-19 cases but also for suspected COVID-19 patients. Additionally, the few input parameters used are easy to access and can be easily adapted to other healthcare systems.

KW - Betacoronavirus/isolation & purification

KW - COVID-19

KW - Coronavirus Infections/epidemiology

KW - Critical Care/organization & administration

KW - Germany

KW - Hospital Bed Capacity

KW - Hospitals, University/organization & administration

KW - Humans

KW - Intensive Care Units/organization & administration

KW - Pandemics

KW - Pneumonia, Viral/epidemiology

KW - Prognosis

KW - SARS-CoV-2

U2 - 10.1007/s00101-020-00830-6

DO - 10.1007/s00101-020-00830-6

M3 - Journal article

C2 - 32821955

VL - 69

SP - 717

EP - 725

JO - Der Anaesthesist

JF - Der Anaesthesist

SN - 0003-2417

IS - 10

ER -