140 results on '"Elbers, Paul W.G."'
Search Results
2. The Prognostic Value of Troponin-T in Out-of-Hospital Cardiac Arrest Without ST-Segment Elevation: A COACT Substudy
- Author
-
Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Remon, Vlachojannis, Georgios J., Eikemans, Bob J.W., van der Harst, Pim, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., van der Pas, Stéphanie, and van Royen, Niels
- Published
- 2024
- Full Text
- View/download PDF
3. Augmented intelligence facilitates concept mapping across different electronic health records
- Author
-
Dam, Tariq A., Fleuren, Lucas M., Roggeveen, Luca F., Otten, Martijn, Biesheuvel, Laurens, Jagesar, Ameet R., Lalisang, Robbert C.A., Kullberg, Robert F.J., Hendriks, Tom, Girbes, Armand R.J., Hoogendoorn, Mark, Thoral, Patrick J., and Elbers, Paul W.G.
- Published
- 2023
- Full Text
- View/download PDF
4. Does Reinforcement Learning Improve Outcomes for Critically Ill Patients? A Systematic Review and Level-of-Readiness Assessment
- Author
-
Otten, Martijn, Jagesar, Ameet R., Dam, Tariq A., Biesheuvel, Laurens A., den Hengst, Floris, Ziesemer, Kirsten A., Thoral, Patrick J., de Grooth, Harm-Jan, Girbes, Armand R.J., François-Lavet, Vincent, Hoogendoorn, Mark, and Elbers, Paul W.G.
- Published
- 2023
- Full Text
- View/download PDF
5. Determining and assessing characteristics of data element names impacting the performance of annotation using Usagi
- Author
-
de Groot, Rowdy, Püttmann, Daniel P., Fleuren, Lucas M., Thoral, Patrick J., Elbers, Paul W.G., de Keizer, Nicolette F., and Cornet, Ronald
- Published
- 2023
- Full Text
- View/download PDF
6. Procalcitonin-Guided Antibiotic Prescription in Patients With COVID-19: A Multicenter Observational Cohort Study
- Author
-
Appelman, Brent, Schinkel, Michiel, Buis, David, Sigalof, Kim C.E., Elbers, Paul W.G., Rusch, Daisy, Reidinga, Auke, Moeniralam, Hazra, Wyers, Caroline, van den Bergh, Joop, Simsek, Suat, van Dam, Bastiaan, van den Gritters, Niels C., Bokhizzou, Nejma, Brinkman, Kees, de Kruif, Martijn, Dormans, Tom, Douma, Renée, de Haan, Lianne R., Fung, Tsz Yeung, Beudel, Martijn, Hessels, Lisa M., Speksnijder, Esther, Paternotte, Nienke, van Huisstede, Astrid, Thijs, Willemien, Scheer, Margot, van der Steen-Dieperink, Mariëlle, Knarren, Lieve, van Den Bergh, Joop P., Winckers, Kristien, Henry, Ronald, and Boersma, Wim G.
- Published
- 2023
- Full Text
- View/download PDF
7. Assessing the FAIRness of databases on the EHDEN portal: A case study on two Dutch ICU databases
- Author
-
Puttmann, Daniel, de Groot, Rowdy, de Keizer, Nicolette, Cornet, Ronald, Elbers, Paul W.G., Dongelmans, Dave, and Bakhshi-Raiez, Ferishta
- Published
- 2023
- Full Text
- View/download PDF
8. Assess and validate predictive performance of models for in-hospital mortality in COVID-19 patients: A retrospective cohort study in the Netherlands comparing the value of registry data with high-granular electronic health records
- Author
-
Vagliano, Iacopo, Schut, Martijn C., Abu-Hanna, Ameen, Dongelmans, Dave A., de Lange, Dylan W., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Rigter, Sander, Wils, Evert-Jan, Frenzel, Tim, de Jong, Remko, Peters, Marco A.A., Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, de Jager, Cornelis P.C., Hendriks, Stefaan H.A., Achterberg, Sefanja, Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert B., Cornet, Alexander D., van den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Faber, Harald J., Karakus, A., Entjes, Robert, de Jong, Paul, Rettig, Thijs C.D., Reuland, M.C., Arbous, Sesmu, Fleuren, Lucas M., Dam, Tariq A., Thoral, Patrick J., Lalisang, Robbert C.A., Tonutti, Michele, de Bruin, Daan P., Elbers, Paul W.G., and de Keizer, Nicolette F.
- Published
- 2022
- Full Text
- View/download PDF
9. Intravenous fluid therapy in perioperative and critical care setting–Knowledge test and practice: An international cross-sectional survey
- Author
-
Nasa, Prashant, Wise, Robert, Elbers, Paul W.G., Wong, Adrian, Dabrowski, Wojciech, Regenmortel, Niels V., Monnet, Xavier, Myatra, Sheila N., and Malbrain, Manu L.N.G.
- Published
- 2022
- Full Text
- View/download PDF
10. The Potential Cost-Effectiveness of a Machine Learning Tool That Can Prevent Untimely Intensive Care Unit Discharge
- Author
-
de Vos, Juliette, Visser, Laurenske A., de Beer, Aletta A., Fornasa, Mattia, Thoral, Patrick J., Elbers, Paul W.G., and Cinà, Giovanni
- Published
- 2022
- Full Text
- View/download PDF
11. Pooled Population Pharmacokinetic Analysis and Dose Recommendations for Ciprofloxacin in Intensive Care Unit Patients with Obesity
- Author
-
van Rhee, Koen P., primary, Brüggemann, Roger J.M., additional, Roberts, Jason A., additional, Sjövall, Fredrik, additional, van Hest, Reinier M., additional, Elbers, Paul W.G., additional, Abdulla, Alan, additional, van der Linden, Paul D., additional, and Knibbe, Catherijne A.J., additional
- Published
- 2024
- Full Text
- View/download PDF
12. The effect of immediate coronary angiography after cardiac arrest without ST-segment elevation on left ventricular function. A sub-study of the COACT randomised trial
- Author
-
Lemkes, Jorrit S., Spoormans, Eva M., Demirkiran, Ahmet, Leutscher, Sophie, Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Rémon, Vlachojannis, Georgios J., Eikemans, Bob J.W., van der Harst, Pim, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Jessurun, Gillian A.J., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., van de Ven, Peter M., van Loon, Ramon B., and van Royen, Niels
- Published
- 2021
- Full Text
- View/download PDF
13. Sex differences in patients with out-of-hospital cardiac arrest without ST-segment elevation: A COACT trial substudy
- Author
-
Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., van de Ven, Peter M., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Remon, Vlachojannis, Georgios J., Eikemans, Bob J.W., der Harst, Pim van, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Jessurun, Gillian A.J., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., Appelman, Yolande, and van Royen, Niels
- Published
- 2021
- Full Text
- View/download PDF
14. The effect of small versus large clog size on emergency response time: A randomized controlled trial
- Author
-
Elbers, Paul W.G., de Grooth, Harm-Jan, and Girbes, Armand R.J.
- Published
- 2020
- Full Text
- View/download PDF
15. Pooled Population Pharmacokinetic Analysis and Dose Recommendations for Ciprofloxacin in Intensive Care Unit Patients with Obesity
- Author
-
van Rhee, Koen P., Brüggemann, Roger J.M., Roberts, Jason A., Sjövall, Fredrik, van Hest, Reinier M., Elbers, Paul W.G., Abdulla, Alan, van der Linden, Paul D., Knibbe, Catherijne A.J., van Rhee, Koen P., Brüggemann, Roger J.M., Roberts, Jason A., Sjövall, Fredrik, van Hest, Reinier M., Elbers, Paul W.G., Abdulla, Alan, van der Linden, Paul D., and Knibbe, Catherijne A.J.
- Abstract
Recent studies have explored the influence of obesity and critical illness on ciprofloxacin pharmacokinetics. However, variation across the subpopulation of individuals with obesity admitted to the intensive care unit (ICU) with varying renal function remains unexamined. This study aims to characterize ciprofloxacin pharmacokinetics in ICU patients with obesity and provide dose recommendations for this special population. Individual patient data of 34 ICU patients with obesity (BMI >30 kg/m2) from four studies evaluating ciprofloxacin pharmacokinetics in ICU patients were pooled and combined with data from a study involving 10 individuals with obesity undergoing bariatric surgery. All samples were collected after intravenous administration. Non-linear mixed effects modeling and simulation were used to develop a population pharmacokinetic model and describe ciprofloxacin exposure in plasma. Model-based dose evaluations were performed using a pharmacokinetic/pharmacodynamic target of AUC/MIC >125. The data from patients with BMI ranging from 30.2 to 58.1 were best described by a two-compartment model with first-order elimination and a proportional error model. The inclusion of Chronic Kidney Disease Epidemiology Collaboration (CKD-EPI) as a covariate on clearance reduced inter-individual variability from 57.3% to 38.5% (P <.001). Neither body weight nor ICU admission significantly influenced clearance or volume of distribution. Renal function is a viable predictor for ciprofloxacin clearance in ICU patients with obesity, while critical illness and body weight do not significantly alter clearance. As such, body weight and critical illness do not need to be accounted for when dosing ciprofloxacin in ICU patients with obesity. Individuals with CKD-EPI >60 mL/min/1.73 m2 may require higher dosages for the treatment of pathogens with minimal inhibitory concentration ≥0.25 mg/L.
- Published
- 2024
16. The Prognostic Value of Troponin-T in Out-of-Hospital Cardiac Arrest Without ST-Segment Elevation:A COACT Substudy
- Author
-
Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Remon, Vlachojannis, Georgios J., Eikemans, Bob J.W., van der Harst, Pim, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., van der Pas, Stéphanie, van Royen, Niels, Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Remon, Vlachojannis, Georgios J., Eikemans, Bob J.W., van der Harst, Pim, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., van der Pas, Stéphanie, and van Royen, Niels
- Abstract
Background: In out-of-hospital cardiac arrest (OHCA) without ST-elevation, predictive markers that can identify those with a high risk of acute coronary syndrome are lacking. Methods: In this post hoc analysis of the Coronary Angiography after Cardiac Arrest (COACT) trial, the baseline, median, peak, and time-concentration curves of troponin-T (cTnT) (T-AUC) in OHCA patients without ST-elevation were studied. cTnT values were obtained at predefined time points at 0, 3, 6, 12, 24, 36, 28, and 72 hours after admission. All patients who died within the measurement period were not included. The primary outcome was the association between cTnT and 90-day survival. Secondary outcomes included the association of cTnT and acute thrombotic occlusions, acute unstable lesions, and left ventricular function. Results: In total, 352 patients were included in the analysis. The mean age was 64 ± 13 years (80.4% men). All cTnT measures were independent prognostic factors for mortality after adjustment for potential confounders age, sex, history of coronary artery disease, witnessed arrest, time to BLS, and time to return of spontaneous circulation (eg, for T-AUC: hazard ratio, 1.44; 95% CI, 1.06-1.94; P = .02; P value for all variables ≤ .02). Median cTnT (odds ratio [OR], 1.58; 95% CI, 1.18-2.12; P = .002) and T-AUC (OR, 2.03; 95% CI, 1.25-3.29; P = .004) were independent predictors for acute unstable lesions. Median cTnT (OR, 1.62; 95% CI, 1.17-2.23; P = .003) and T-AUC (OR, 2.16; 95% CI, 1.27-3.68; P = .004) were independent predictors for acute thrombotic occlusions. CTnT values were not associated with the left ventricular function (eg, for T-AUC: OR, 2.01; 95% CI, 0.65-6.19; P = .22; P value for all variables ≥ .14)Conclusion:In OHCA patients without ST-segment elevation, cTnT release during the first 72 hours after return of spontaneous circulation was associated with clinical outcomes.
- Published
- 2024
17. The Prognostic Value of Troponin-T in Out-of-Hospital Cardiac Arrest Without ST-Segment Elevation: A COACT Substudy
- Author
-
Cardiologie, Team Medisch, Gezonde Vaten, Circulatory Health, Medische Staf Intensive Care, Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Remon, Vlachojannis, Georgios J., Eikemans, Bob J.W., van der Harst, Pim, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., van der Pas, Stéphanie, van Royen, Niels, Cardiologie, Team Medisch, Gezonde Vaten, Circulatory Health, Medische Staf Intensive Care, Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., van der Hoeven, Nina W., Jewbali, Lucia S.D., Dubois, Eric A., Meuwissen, Martijn, Rijpstra, Tom A., Bosker, Hans A., Blans, Michiel J., Bleeker, Gabe B., Baak, Remon, Vlachojannis, Georgios J., Eikemans, Bob J.W., van der Harst, Pim, van der Horst, Iwan C.C., Voskuil, Michiel, van der Heijden, Joris J., Beishuizen, Albertus, Stoel, Martin, Camaro, Cyril, van der Hoeven, Hans, Henriques, José P., Vlaar, Alexander P.J., Vink, Maarten A., van den Bogaard, Bas, Heestermans, Ton A.C.M., de Ruijter, Wouter, Delnoij, Thijs S.R., Crijns, Harry J.G.M., Oemrawsingh, Pranobe V., Gosselink, Marcel T.M., Plomp, Koos, Magro, Michael, Elbers, Paul W.G., van der Pas, Stéphanie, and van Royen, Niels
- Published
- 2024
18. The Prognostic Value of Troponin-T in OHCA Without ST-Segment Elevation: A COACT Trial’s Secondary Analysis
- Author
-
Spoormans, Eva M., primary, Lemkes, Jorrit S., additional, Janssens, Gladys N., additional, van der Hoeven, Nina W., additional, Jewbali, Lucia S.D., additional, Dubois, Eric A., additional, Meuwissen, Martijn, additional, Rijpstra, Tom A., additional, Bosker, Hans A., additional, Blans, Michiel J., additional, Bleeker, Gabe B., additional, Baak, Remon, additional, Vlachojannis, Georgios J., additional, Eikemans, Bob J.W., additional, van der Harst, Pim, additional, van der Horst, Iwan C.C., additional, Voskuil, Michiel, additional, van der Heijden, Joris J., additional, Beishuizen, Albertus, additional, Stoel, Martin, additional, Camaro, Cyril, additional, van der Hoeven, Hans, additional, Henriques, José P., additional, Vlaar, Alexander P.J., additional, Vink, Maarten A., additional, van den Bogaard, Bas, additional, Heestermans, Ton A.C.M., additional, de Ruijter, Wouter, additional, Delnoij, Thijs S.R., additional, Crijns, Harry J.G.M., additional, Oemrawsingh, Pranobe V., additional, Gosselink, Marcel T.M., additional, Plomp, Koos, additional, Magro, Michael, additional, Elbers, Paul W.G., additional, van der Pas, Stéphanie, additional, and van Royen, Niels, additional
- Published
- 2023
- Full Text
- View/download PDF
19. Incidence, Risk Factors and Outcome of Suspected Central Venous Catheter-related Infections in Critically Ill COVID-19 Patients
- Author
-
Smit, Jasper M., Exterkate, Lotte, Van Tienhoven, Arne J., Haaksma, Mark E., Heldeweg, Micah L.A., Fleuren, Lucas, Thoral, Patrick, Dam, Tariq A., Heunks, Leo M.A., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, Vlaar, Alexander P., Dongelmans, Dave A., De Jong, Remko, Peters, Marco, Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., De Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, De Jager, Cornelis P.C., Hendriks, Stefaan H.A., Achterberg, Sefanja, Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert B., Cornet, Alexander D., Van Den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Faber, Harald J., Karakus, A., Entjes, Robert, De Jong, Paul, Rettig, Thijs C.D., Arbous, Sesmu, Vonk, Bas, Machado, Tomas, Girbes, Armand R.J., Sieswerda, Elske, Elbers, Paul W.G., Tuinman, Pieter R., Intensive care medicine, Radiology and nuclear medicine, Anesthesiology, Internal medicine, ACS - Diabetes & metabolism, ACS - Microcirculation, Amsterdam Cardiovascular Sciences, Cardio-thoracic surgery, General practice, AII - Infectious diseases, Medical Microbiology and Infection Prevention, ACS - Pulmonary hypertension & thrombosis, Intensive Care Medicine, APH - Quality of Care, Graduate School, AII - Cancer immunology, CCA - Cancer biology and immunology, and Intensive Care
- Subjects
catheter-related infections ,Catheterization, Central Venous ,Critical Illness ,Incidence ,Other Research Radboud Institute for Health Sciences [Radboudumc 0] ,COVID-19 ,Critical Care and Intensive Care Medicine ,Central venous catheters ,All institutes and research themes of the Radboud University Medical Center ,Risk Factors ,Emergency Medicine ,Humans ,Retrospective Studies ,intensive care - Abstract
Background: Aims of this study were to investigate the prevalence and incidence of catheter-related infection, identify risk factors, and determine the relation of catheter-related infection with mortality in critically ill COVID-19 patients. Methods: This was a retrospective cohort study of central venous catheters (CVCs) in critically ill COVID-19 patients. Eligible CVC insertions required an indwelling time of at least 48 hours and were identified using a full-admission electronic health record database. Risk factors were identified using logistic regression. Differences in survival rates at day 28 of follow-up were assessed using a log-rank test and proportional hazard model. Results: In 538 patients, a total of 914 CVCs were included. Prevalence and incidence of suspected catheter-related infection were 7.9% and 9.4 infections per 1,000 catheter indwelling days, respectively. Prone ventilation for more than 5 days was associated with increased risk of suspected catheter-related infection; odds ratio, 5.05 (95% confidence interval 2.12-11.0). Risk of death was significantly higher in patients with suspected catheter-related infection (hazard ratio, 1.78; 95% confidence interval, 1.25-2.53). Conclusions: This study shows that in critically ill patients with COVID-19, prevalence and incidence of suspected catheter-related infection are high, prone ventilation is a risk factor, and mortality is higher in case of catheter-related infection.
- Published
- 2022
- Full Text
- View/download PDF
20. Contributors
- Author
-
Albright, Robert C., primary, Amerling, Richard, additional, Angeli, Paolo, additional, Angelotti, Maria Lucia, additional, Antonelli, Massimo, additional, Antoniotti, Riccardo, additional, Arulkumaran, Nishkantha, additional, Asfar, Pierre, additional, Ash, Stephen R., additional, Aucella, Filippo, additional, Aucella, Francesco, additional, Ave, Samuele, additional, Bagshaw, Sean M., additional, Balaraman, Vasanthi, additional, Baldwin, Ian, additional, Bargman, Joanne M., additional, Barletta, Gina-Marie, additional, Barletta, Jeffrey F., additional, Barnela, Shriganesh R., additional, Bayır, Hülya, additional, Beaulieu, Monica, additional, Bellasi, Antonio, additional, Bellomo, Rinaldo, additional, Beloncle, François, additional, Bhansali, Arjun, additional, Bihorac, Azra, additional, Billings, Frederic T., additional, Birk, Horst-Walter, additional, Bonilla-Reséndiz, Luis Ignacio, additional, Bouchard, Josée, additional, Bourke, Edmund, additional, Braitberg, George, additional, Brendolan, Alessandra, additional, Brocca, Alessandra, additional, Brophy, Patrick D., additional, Bucala, Richard, additional, Bunchman, Timothy E., additional, Burdmann, Emmanuel A., additional, Busse, Laurence W., additional, Caires, Renato Antunes, additional, Caironi, Pietro, additional, Camilla, Roberta, additional, Campos, Israel, additional, Canaud, Bernard, additional, Cantaluppi, Vincenzo, additional, Martinez, Maria P., additional, Capasso, Giovambattista, additional, Carcillo, Joseph A., additional, Carlesso, Eleonora, additional, Casino, Francesco G., additional, Castellano, Giuseppe, additional, Catania, Matteo, additional, Cawcutt, Kelly A., additional, Cerda, Jorge, additional, Charen, Elliot, additional, Chawla, Lakhmir S., additional, Chiaramonte, Stefano, additional, Chua, Horng-Ruey, additional, Cianciaruso, Bruno, additional, Ciceri, Paola, additional, Cieslak, Jacek, additional, Clark, William R., additional, Claure-Del Granado, Rolando, additional, Clementi, Anna, additional, Co, Ivan N., additional, Coelho, Fernanda Oliveira, additional, Conte, Ferruccio, additional, Corey, Howard E., additional, Cosmai, Laura, additional, Costalonga, Elerson Carlos, additional, Costamagna, Andrea, additional, Costanzo, Maria Rosa, additional, Cozzolino, Mario, additional, Cramer, Carl H., additional, Cravedi, Paolo, additional, Crepaldi, Carlo, additional, Creteur, Jacques, additional, Crew, R. John, additional, da Costa e Silva, Verônica Torres, additional, Davenport, Andrew, additional, Davies, Andrew R., additional, D'Costa, Rohit, additional, Dean, Dawson F., additional, Debiais, Charlotte, additional, de Cal, Massimo, additional, Dedhia, Paras, additional, de Grooth, Harm-Jan, additional, Dell'Aquila, Roberto, additional, Dellepiane, Sergio, additional, Dellinger, Richard Phillip, additional, Del Vecchio, Lucia, additional, Depner, Thomas A., additional, De Rosa, Silvia, additional, Deutschman, Clifford S., additional, Devarajan, Prasad, additional, Dewitte, A., additional, Di Iorio, Biagio R., additional, Di Lullo, Luca, additional, Di Micco, Lucia, additional, Di Nardo, Matteo, additional, Ding, Xiaoqiang, additional, D'Ippoliti, Fiorella, additional, Di Somma, Salvatore, additional, Doi, Kent, additional, Dries, David J., additional, Druml, Wilfred, additional, Duke, Graeme, additional, Durand, Francois, additional, Eadon, Michael T., additional, Eckstein, Devin, additional, Egi, Moritoki, additional, Eiam-Ong, Somchai, additional, Elbers, Paul W.G., additional, Elli, Francesca, additional, Elliott, Steve, additional, Emlet, David R., additional, Endre, Zoltan, additional, Evans, Roger G., additional, Fanelli, Vito, additional, Fattahi, Fatemeh, additional, Federspiel, Christine Kinggaard, additional, Ferrada, Marcela A., additional, Ferrari, Fiorenza, additional, Fiaccadori, Enrico, additional, Fiorentino, Marco, additional, Fisher, Caleb, additional, Flessner, Michael F., additional, Formica, Marco, additional, Forni, Lui G., additional, Francoz, Claire, additional, French, Craig, additional, Fuhrman, Dana Y., additional, Fumagalli, Giordano, additional, Galbusera, Miriam, additional, Gallieni, Maurizio, additional, Gammill, Hilary S., additional, Gao, Dayong, additional, Garzotto, Francesco, additional, Gatta, Giuseppe, additional, Genga, Kelly R., additional, Genovesi, Simonetta, additional, Genyk, Yuri S., additional, Geradin, Christel, additional, Gesualdo, Loreto, additional, Giavarina, Davide, additional, Giuliani, Anna, additional, Glezerman, Ilya G., additional, Goldstein, Stuart L., additional, Golper, Thomas A., additional, Gómez, Hernando, additional, Granata, Antonio, additional, Grandaliano, Giuseppe, additional, Grasselli, Giacomo, additional, Groeneveld, A.B. Johan, additional, Guerci, Philippe, additional, Gunnerson, Kyle J., additional, Harbord, Nikolas, additional, Harshman, Lyndsay A., additional, Hennessy, Anthony J., additional, Hill, Graham L., additional, Hobson, Charles, additional, Hohenstein, Bernd, additional, Honoré, Patrick M., additional, Horwitz, Edward, additional, Hosseinian, Leila, additional, Hoste, Eric A.J., additional, House, Andrew A., additional, Humes, H. David, additional, Husain-Syed, Faeq, additional, Ince, Can, additional, Ing, Todd S., additional, Jacobs, Rita, additional, Jaswal, Dharmvir, additional, Jeyabalan, Arun, additional, Joannes-Boyau, Olivier, additional, Joannidis, Michael, additional, Joyce, Emily, additional, Kane-Gill, Sandra L., additional, Kaplan, Lewis J., additional, Kashani, Kianoush, additional, Katz, Nevin, additional, Kellum, John A., additional, Khanna, Ramesh, additional, Kim-Campbell, Nahmah, additional, King, Joshua D., additional, Kirwan, Christopher J., additional, Kiss, Joseph E., additional, Klein, David, additional, Kotanko, Peter, additional, Krediet, Raymond T., additional, Kuhlmann, Martin K., additional, Kuiper, Jan Willem, additional, Lachance, Philippe, additional, Lameire, Norbert, additional, Langer, Thomas, additional, Lankadeva, Yugeesh R., additional, Laurin, Louis-Philippe, additional, Lazzeri, Elena, additional, Leblanc, Martine, additional, Lefebvre, Joannie, additional, Lentini, Paolo, additional, Leray-Moragués, Hélène, additional, Levin, Adeera, additional, Lew, Susie Q., additional, Liapis, Helen, additional, Liu, Kathleen D., additional, Livigni, Sergio, additional, Locatelli, Francesco, additional, Lorenzin, Anna, additional, Lu, Jian-Da, additional, Lu, Renhua, additional, Lysak, Nicholas, additional, Macedo, Etienne, additional, Madan, Niti, additional, Madore, François, additional, Maerz, Linda L., additional, Maiden, Matthew J., additional, Malhotra, Rakesh, additional, Marengo, Marita, additional, Mariano, Filippo, additional, Marik, Paul E., additional, Marini, John J., additional, Marino, Rossella, additional, Marshall, Mark R., additional, Mårtensson, Johan, additional, Matsuura, Ryo, additional, May, Clive N., additional, Mazzone, Patrizio, additional, McCauley, Jerry, additional, McCullough, Peter A., additional, McMahon, Blaithin A., additional, Mehta, Ravindra L., additional, Mele, Caterina, additional, Menon, Madhav, additional, Meola, Mario, additional, Mérouani, Aicha, additional, Meuwly, Jean-Yves, additional, Milla, Paola, additional, Misra, Madhukar, additional, Misra, Paraish S., additional, Mizock, Barry A., additional, Modi, Jwalant R., additional, Moeckel, Gilbert, additional, Molitoris, Bruce A., additional, Morabito, Santo, additional, Mucelli, Roberto Pozzi, additional, Murray, Patrick T., additional, Murugan, Raghavan, additional, Nadim, Mitra K., additional, Nair, Devika, additional, Nalesso, Federico, additional, Neri, Mauro, additional, Nguyen, Trung C., additional, Ni, Zhaohui, additional, Noris, Marina, additional, Novick, Tessa, additional, O'Horo, John C., additional, Okusa, Mark Douglas, additional, Opal, Steven M., additional, Opdam, Helen Ingrid, additional, Ostermann, Marlies, additional, Ottaviano, Emerenziana, additional, Oudemans-van Straaten, Heleen M., additional, Overgaard-Steensen, Christian, additional, Padalino, Massimo A., additional, Panichi, Vincenzo, additional, Parameswaran, Priyanka, additional, Patel, Samir S., additional, Payen, Didier, additional, Pea, Federico, additional, Peacock, W. Frank, additional, Peart, Sandrica Young, additional, Peerapornratana, Sadudee, additional, Pelosi, Paolo, additional, Peng, Zhi-Yong, additional, Perico, Norberto, additional, Peruzzi, Licia, additional, Pesce, Francesco, additional, Pesenti, Antonio, additional, Petrucci, Ilaria, additional, Pham, Phuong-Chi, additional, Pham, Phuong-Thu, additional, Phoon, Richard K.S., additional, Piano, Salvatore, additional, Pinsky, Michael R., additional, Piquilloud, Lise, additional, Pistolesi, Valentina, additional, Plank, Lindsay D., additional, Plötz, Frans B., additional, Podestá, Manuel Alfredo, additional, Porta, Camillo, additional, Pozzato, Marco, additional, Prencipe, Michele, additional, Prowle, John R., additional, Puthucheary, Zudin A., additional, Qu, Lirong, additional, Rachoin, Jean-Sebastien, additional, Radhakrishnan, Jai, additional, Ranieri, V. Marco, additional, Ratanarat, Ranistha, additional, Remuzzi, Giuseppe, additional, Resnick, Shelby, additional, Rewa, Oleksa G., additional, Ricci, Zaccaria, additional, Ridel, Christophe, additional, Rifai, Kinan, additional, Ring, Troels, additional, Rizo-Topete, Lilia M., additional, Roessler, Eric, additional, Romagnani, Paola, additional, Romagnoli, Stefano, additional, Ronco, Claudio, additional, Ronco, Federico, additional, Rosner, Mitchell H., additional, Rossetti, Emanuele, additional, Russell, James A., additional, Saab, Georges, additional, Sabatino, Alice, additional, Saboo, Sonali S., additional, Samoni, Sara, additional, Sappington, Penny Lynn, additional, Sartori, Marco, additional, Savige, Judy, additional, Schena, Francesco Paolo, additional, Schneider, Antoine Guillaume, additional, Schraverus, Pieter, additional, Schulte, Wibke, additional, Segoloni, Giuseppe, additional, Semler, Matthew W., additional, Sharma, Aashish, additional, Shaw, Andrew, additional, Sheth, Naitik, additional, Shukla, Ashutosh, additional, Siddall, Eric C., additional, Sievers, Theodore M., additional, Siew, Edward D., additional, Singbartl, Kai, additional, Singer, Mervyn, additional, Singh, Pooja, additional, Smith, Loren E., additional, Soni, Sachin S., additional, Soto, Mara Serrano, additional, Spapen, Herbert D., additional, Srisawat, Nattachai, additional, Srivastava, Ajay, additional, Stellin, Giovanni, additional, Symons, Jordan M., additional, Szamosfalvi, Balazs, additional, Tai, Kian Bun, additional, Takalkar, Unmesh V., additional, Teitelbaum, Isaac, additional, Tetta, Ciro, additional, Thakar, Charuhas V., additional, Tonon, Marta, additional, Trepiccione, Francesco, additional, Triulzi, Darrell, additional, Tushar, Chopra, additional, Uchino, Shigehiko, additional, Valika, Ali, additional, Van Biesen, Wim, additional, Vandenberghe, Wim, additional, Vanholder, Raymond, additional, Vanmassenhove, Jill, additional, Verbine, Anton, additional, Vergano, Marco, additional, Villa, Gianluca, additional, Villeneuve, Pierre-Marc, additional, Vincent, Jean-Louis, additional, Vinsonneau, Christophe, additional, Virzì, Grazia Maria, additional, Visconti, Federico, additional, Visvanathan, Ravindran, additional, Van Vong, Li, additional, Walmrath, Hans-Dieter, additional, Ward, Peter A., additional, Weir, Matthew A., additional, Wen, Xiaoyan, additional, Wendon, Julia, additional, Winchester, James Frank, additional, Wong, Adrian, additional, Woodhouse, Elke L., additional, Xue, Jun, additional, Yadav, Anju, additional, Yerram, Preethi, additional, Yessayan, Lenar, additional, Yeun, Jane Y., additional, Yu, Alex W., additional, Zaccaria, Marta, additional, Zacchia, Miriam, additional, Zachariah, Teena P., additional, Zamperetti, Nereo, additional, Zampieri, Fernando G., additional, Zanco, Pierluigi, additional, Zanella, Alberto, additional, Zanoli, Luca, additional, Zappitelli, Michael, additional, Zaragoza, Jose J., additional, Zarbock, Alexander, additional, Zaroccolo, Marta, additional, Zhang, Han, additional, and Zimmer, Andrea, additional
- Published
- 2019
- Full Text
- View/download PDF
21. Laboratory Tests
- Author
-
de Grooth, Harm-Jan, primary, Schraverus, Pieter, additional, and Elbers, Paul W.G., additional
- Published
- 2019
- Full Text
- View/download PDF
22. Renal Resistive Index: Response to Shock and its Determinants in Critically Ill Patients
- Author
-
Rozemeijer, Sander, Haitsma Mulier, Jelle L.G., Röttgering, Jantine G., Elbers, Paul W.G., Spoelstra-de Man, Angélique M.E., Tuinman, Pieter Roel, de Waard, Monique C., and Oudemans-van Straaten, Heleen M.
- Published
- 2019
- Full Text
- View/download PDF
23. A guide to sharing open healthcare data under the General Data Protection Regulation
- Author
-
de Kok, Jip W.T.M., de la Hoz, Miguel Á.Armengol, de Jong, Ymke, Brokke, Véronique, Elbers, Paul W.G., Thoral, Patrick, Castillejo, Alejandro, Trenor, Tomás, Castellano, Jose M., Bronchalo, Alberto E., Merz, Tobias M., van der Horst, Iwan C.C., Xu, Minnan, Celi, Leo Anthony, van Bussel, Bas C.T., Borrat, Xavier, de Kok, Jip W.T.M., de la Hoz, Miguel Á.Armengol, de Jong, Ymke, Brokke, Véronique, Elbers, Paul W.G., Thoral, Patrick, Castillejo, Alejandro, Trenor, Tomás, Castellano, Jose M., Bronchalo, Alberto E., Merz, Tobias M., van der Horst, Iwan C.C., Xu, Minnan, Celi, Leo Anthony, van Bussel, Bas C.T., and Borrat, Xavier
- Abstract
Sharing healthcare data is increasingly essential for developing data-driven improvements in patient care at the Intensive Care Unit (ICU). However, it is also very challenging under the strict privacy legislation of the European Union (EU). Therefore, we explored four successful open ICU healthcare databases to determine how open healthcare data can be shared appropriately in the EU. A questionnaire was constructed based on the Delphi method. Then, follow-up questions were discussed with experts from the four databases. These experts encountered similar challenges and regarded ethical and legal aspects to be the most challenging. Based on the approaches of the databases, expert opinion, and literature research, we outline four distinct approaches to openly sharing healthcare data, each with varying implications regarding data security, ease of use, sustainability, and implementability. Ultimately, we formulate seven recommendations for sharing open healthcare data to guide future initiatives in sharing open healthcare data to improve patient care and advance healthcare.
- Published
- 2023
24. Procalcitonin-guided antibiotic prescription in patients with COVID-19: a multicentre observational cohort study
- Author
-
Hessels, Lisa, primary, Speksnijder, Esther, additional, Paternotte, Nienke, additional, van Huisstede, Astrid, additional, Thijs, Willemien, additional, Scheer, Margot, additional, van der Steen-Dieperink, Mariëlle, additional, Knarren, Lieve, additional, van Den Bergh, Joop P., additional, Winckers, Kristien, additional, Henry, Ronald, additional, Simsek, Suat, additional, Boersma, Wim G., additional, Appelman, Brent, additional, Schinkel, Michiel, additional, Buis, David, additional, Sigalof, Kim C.E., additional, Elbers, Paul W.G., additional, Rusch, Daisy, additional, Reidinga, Auke, additional, Moeniralam, Hazra, additional, Wyers, Caroline, additional, van den Bergh, Joop, additional, van Dam, Bastiaan, additional, van den Gritters, Niels C., additional, Bokhizzou, Nejma, additional, Brinkman, Kees, additional, de Kruif, Martijn, additional, Dormans, Tom, additional, Douma, Renée, additional, de Haan, Lianne R., additional, Fung, Tsz Yeung, additional, and Beudel, Martijn, additional
- Published
- 2023
- Full Text
- View/download PDF
25. The Pulsatile Perfusion Debate in Cardiac Surgery: Answers From the Microcirculation?
- Author
-
Hoefeijzers, Marjolein P., ter Horst, Leontien H., Koning, Nick, Vonk, Alexander B., Boer, Christa, and Elbers, Paul W.G.
- Published
- 2015
- Full Text
- View/download PDF
26. Co-infection and ICU-acquired infection in COIVD-19 ICU patients
- Author
-
Conway Morris, Andrew, Kohler, Katharina, De Corte, Thomas, Ercole, Ari, De Grooth, Harm Jan, Elbers, Paul W.G., Povoa, Pedro, Morais, Rui, Koulenti, Despoina, Jog, Sameer, Nielsen, Nathan, Jubb, Alasdair, Cecconi, Maurizio, De Waele, Jan, and NOVA Medical School|Faculdade de Ciências Médicas (NMS|FCM)
- Subjects
Critical Care and Intensive Care Medicine - Abstract
Funding European Society of Intensive Care Medicine. ACM is supported by a Clinician Scientist Fellowship from the Medical Research Council (MR/V006118/1). BACKGROUND: The COVID-19 pandemic presented major challenges for critical care facilities worldwide. Infections which develop alongside or subsequent to viral pneumonitis are a challenge under sporadic and pandemic conditions; however, data have suggested that patterns of these differ between COVID-19 and other viral pneumonitides. This secondary analysis aimed to explore patterns of co-infection and intensive care unit-acquired infections (ICU-AI) and the relationship to use of corticosteroids in a large, international cohort of critically ill COVID-19 patients. METHODS: This is a multicenter, international, observational study, including adult patients with PCR-confirmed COVID-19 diagnosis admitted to ICUs at the peak of wave one of COVID-19 (February 15th to May 15th, 2020). Data collected included investigator-assessed co-infection at ICU admission, infection acquired in ICU, infection with multi-drug resistant organisms (MDRO) and antibiotic use. Frequencies were compared by Pearson's Chi-squared and continuous variables by Mann-Whitney U test. Propensity score matching for variables associated with ICU-acquired infection was undertaken using R library MatchIT using the "full" matching method. RESULTS: Data were available from 4994 patients. Bacterial co-infection at admission was detected in 716 patients (14%), whilst 85% of patients received antibiotics at that stage. ICU-AI developed in 2715 (54%). The most common ICU-AI was bacterial pneumonia (44% of infections), whilst 9% of patients developed fungal pneumonia; 25% of infections involved MDRO. Patients developing infections in ICU had greater antimicrobial exposure than those without such infections. Incident density (ICU-AI per 1000 ICU days) was in considerable excess of reports from pre-pandemic surveillance. Corticosteroid use was heterogenous between ICUs. In univariate analysis, 58% of patients receiving corticosteroids and 43% of those not receiving steroids developed ICU-AI. Adjusting for potential confounders in the propensity-matched cohort, 71% of patients receiving corticosteroids developed ICU-AI vs 52% of those not receiving corticosteroids. Duration of corticosteroid therapy was also associated with development of ICU-AI and infection with an MDRO. CONCLUSIONS: In patients with severe COVID-19 in the first wave, co-infection at admission to ICU was relatively rare but antibiotic use was in substantial excess to that indication. ICU-AI were common and were significantly associated with use of corticosteroids. Trial registration ClinicalTrials.gov: NCT04836065 (retrospectively registered April 8th 2021). publishersversion published
- Published
- 2022
27. Large-scale ICU data sharing for global collaboration: the first 1633 critically ill COVID-19 patients in the Dutch Data Warehouse
- Author
-
Fleuren, Lucas M., de Bruin, Daan P., Tonutti, Michele, Lalisang, Robbert C.A., Elbers, Paul W.G., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Vonk, Sebastiaan J.J., Fornasa, Mattia, Machado, Tomas, Dam, Tariq, de Keizer, Nicolet F., Raeissi, Masoume, van der Meer, Nardo J.M., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, Dongelmans, Dave A., de Jong, Remko, Peters, Marco, Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, Jannet, Dormans, Tom, Houwert, Taco, Hovenkamp, Hidde, Londono, Roberto Noorduijn, Quintarelli, Davide, Scholtemeijer, Martijn G., de Beer, Aletta A., Ercole, Ari, van der Schaar, Mihaela, Beudel, Martijn, Hoogendoorn, Mark, Girbes, Armand R.J., Herter, Willem E., Thoral, Patrick J., Roggeveen, Luca, van Diggelen, Fuda, el Hassouni, Ali, Guzman, David Romero, Bhulai, Sandjai, Ouweneel, Dagmar, Driessen, Ronald, Peppink, Jan, de Grooth, H. J., Zijlstra, G. J., van Tienhoven, A. J., van der Heiden, Evelien, Spijkstra, Jan Jaap, van der Spoel, Hans, de Man, Angelique, Klausch, Thomas, de Vries, Heder, Neree tot Babberich, Michael de, Thijssens, Olivier, Wagemakers, Lot, Berend, Julie, Silva, Virginia Ceni, Kullberg, Bob, Heunks, Leo, Juffermans, Nicole, Slooter, Arjan, Rettig, Thijs C.D., Reuland, M. C., van Manen, Laura, Montenij, Leon, van Bommel, Jasper, van den Berg, Roy, van Geest, Ellen, Hana, Anisa, Simsek, Suat, van den Bogaard, B., Pickkers, Peter, van der Heiden, Pim, van Gemeren, Claudia, Meinders, Arend Jan, de Bruin, Martha, Rademaker, Emma, van Osch, Frits, de Kruif, Martijn, Hendriks, Stefaan H.A., Schroten, Nicolas, Boelens, Age D., Arnold, Klaas Sierk, Karakus, A., Fijen, J. W., Festen-Spanjer, Barbara, Achterberg, Sefanja, Lens, Judith, van Koesveld, Jacomar, van den Tempel, Walter, Simons, Koen S., de Jager, Cornelis P.C., Oostdijk, Evelien, Labout, Joost, van der Gaauw, Bart, Reidinga, Auke C., Koetsier, Peter, Kuiper, Michael, Cornet, Alexander D., Beishuizen, Albertus, de Jong, Paul, Geutjes, Dennis, Faber, Harald J., Lutisan, Johan, Brunnekreef, Gert, Gemert, Ankie W.M.M.Koopman van, Entjes, Robert, van den Akker, Remko, Simons, Bram, Rijkeboer, A. A., Arbous, Sesmu, Aries, Marcel, van den Oever, Niels C.Gritters, van Tellingen, Martijn, Intensive Care, Medical Informatics, APH - Methodology, APH - Quality of Care, Intensive Care Medicine, Neurology, ANS - Neurodegeneration, AII - Inflammatory diseases, APH - Digital Health, Artificial intelligence, Network Institute, Computational Intelligence, Artificial Intelligence (section level), Mathematics, Intensive care medicine, VU University medical center, ACS - Microcirculation, ACS - Diabetes & metabolism, Epidemiologie, RS: NUTRIM - R3 - Respiratory & Age-related Health, RS: MHeNs - R1 - Cognitive Neuropsychiatry and Clinical Neuroscience, and MUMC+: MA Medische Staf IC (9)
- Subjects
2019-20 coronavirus outbreak ,Letter ,Coronavirus disease 2019 (COVID-19) ,Critically ill ,business.industry ,Information Dissemination ,Critical Illness ,MEDLINE ,lnfectious Diseases and Global Health Radboud Institute for Molecular Life Sciences [Radboudumc 4] ,COVID-19 ,Critical Care and Intensive Care Medicine ,Data warehouse ,Data sharing ,Intensive Care Units ,SDG 3 - Good Health and Well-being ,Data Warehousing ,Scale (social sciences) ,Medicine ,Humans ,Operations management ,business ,Netherlands - Abstract
Contains fulltext : 238662.pdf (Publisher’s version ) (Closed access)
- Published
- 2021
- Full Text
- View/download PDF
28. Thiamine: Why No Chance in Severe Sepsis?
- Author
-
Oudemans-van Straaten, Heleen M., Elbers, Paul W.G., and Spoelstra-de Man, Angélique M.E.
- Published
- 2017
- Full Text
- View/download PDF
29. Evolution of Clinical Phenotypes of COVID-19 Patients During Intensive Care Treatment: An Unsupervised Machine Learning Analysis.
- Author
-
Siepel, Sander, Dam, Tariq A., Fleuren, Lucas M., Girbes, Armand R.J., Hoogendoorn, Mark, Thoral, Patrick J., Elbers, Paul W.G., and Bennis, Frank C.
- Subjects
COVID-19 pandemic ,INTENSIVE care units ,PHENOTYPES ,MACHINE learning ,CRITICALLY ill patient care - Abstract
Background: Identification of clinical phenotypes in critically ill COVID-19 patients could improve understanding of the disease heterogeneity and enable prognostic and predictive enrichment. However, previous attempts did not take into account temporal dynamics with high granularity. By including the dimension of time, we aim to gain further insights into the heterogeneity of COVID-19. Methods: We used granular data from 3202 adult COVID patients in the Dutch Data Warehouse that were admitted to one of 25 Dutch ICUs between February 2020 and March 2021. Parameters including demographics, clinical observations, medications, laboratory values, vital signs, and data from life support devices were selected. Twenty-one datasets were created that each covered 24 h of ICU data for each day of ICU treatment. Clinical phenotypes in each dataset were identified by performing cluster analyses. Both evolution of the clinical phenotypes over time and patient allocation to these clusters over time were tracked. Results: The final patient cohort consisted of 2438 COVID-19 patients with a ICU mortality outcome. Forty-one parameters were chosen for cluster analysis. On admission, both a mild and a severe clinical phenotype were found. After day 4, the severe phenotype split into an intermediate and a severe phenotype for 11 consecutive days. Heterogeneity between phenotypes appears to be driven by inflammation and dead space ventilation. During the 21-day period, only 8.2% and 4.6% of patients in the initial mild and severe clusters remained assigned to the same phenotype respectively. The clinical phenotype half-life was between 5 and 6 days for the mild and severe phenotypes, and about 3 days for the medium severe phenotype. Conclusions: Patients typically do not remain in the same cluster throughout intensive care treatment. This may have important implications for prognostic or predictive enrichment. Prominent dissimilarities between clinical phenotypes are predominantly driven by inflammation and dead space ventilation. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
30. Electrical Cardioversion for Atrial Fibrillation Improves Microvascular Flow Independent of Blood Pressure Changes
- Author
-
Elbers, Paul W.G., Prins, Wilhelmina B., Plokker, Herbert W.M., van Dongen, Eric P.A., van Iterson, Mat, and Ince, Can
- Published
- 2012
- Full Text
- View/download PDF
31. The influence of timing of coronary angiography on acute kidney injury in out-of-hospital cardiac arrest patients: a retrospective cohort study
- Author
-
Janssens, Gladys N., Daemen, Joost, Lemkes, Jorrit S., Spoormans, Eva M., Janssen, Dieuwertje, Uil, Corstiaan A. den, Nas, J., Bonnes, Judith, Elbers, Paul W.G., Royen, N. van, Janssens, Gladys N., Daemen, Joost, Lemkes, Jorrit S., Spoormans, Eva M., Janssen, Dieuwertje, Uil, Corstiaan A. den, Nas, J., Bonnes, Judith, Elbers, Paul W.G., and Royen, N. van
- Abstract
Item does not contain fulltext
- Published
- 2022
32. Targeted Temperature Management in Out-of-Hospital Cardiac Arrest With Shockable Rhythm: A Post Hoc Analysis of the Coronary Angiography After Cardiac Arrest Trial
- Author
-
Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., Hoeven, Nina W. van der, Jewbali, Lucia S.D., Dubois, Eric A., Blans, Michiel J., Stoel, Martin, Camaro, C., Hoeven, H. van der, Royen, N. van, Elbers, Paul W.G., Spoormans, Eva M., Lemkes, Jorrit S., Janssens, Gladys N., Hoeven, Nina W. van der, Jewbali, Lucia S.D., Dubois, Eric A., Blans, Michiel J., Stoel, Martin, Camaro, C., Hoeven, H. van der, Royen, N. van, and Elbers, Paul W.G.
- Abstract
Item does not contain fulltext
- Published
- 2022
33. Predicting responders to prone positioning in mechanically ventilated patients with COVID-19 using machine learning
- Author
-
Dam, T.A., Roggeveen, Luca F., Diggelen, Fuda van, Fleuren, L.M., Jagesar, Ameet R., Otten, Martijn, Frenzel, T., Smit, E.G.M., Hoogendoorn, Mark, Elbers, Paul W.G., Dam, T.A., Roggeveen, Luca F., Diggelen, Fuda van, Fleuren, L.M., Jagesar, Ameet R., Otten, Martijn, Frenzel, T., Smit, E.G.M., Hoogendoorn, Mark, and Elbers, Paul W.G.
- Abstract
Contains fulltext : 283879.pdf (Publisher’s version ) (Open Access)
- Published
- 2022
34. INCIDENCE, RISK FACTORS, AND OUTCOME OF SUSPECTED CENTRAL VENOUS CATHETER-RELATED INFECTIONS IN CRITICALLY ILL COVID-19 PATIENTS: A MULTICENTER RETROSPECTIVE COHORT STUDY
- Author
-
Smit, Jasper M., Exterkate, L., Tienhoven, Arne J. van, Haaksma, Mark E., Heldeweg, Micah L.A., Fleuren, L., Frenzel, T., Elbers, Paul W.G., Tuinman, P.R., Smit, Jasper M., Exterkate, L., Tienhoven, Arne J. van, Haaksma, Mark E., Heldeweg, Micah L.A., Fleuren, L., Frenzel, T., Elbers, Paul W.G., and Tuinman, P.R.
- Abstract
Item does not contain fulltext
- Published
- 2022
35. Assess and validate predictive performance of models for in-hospital mortality in COVID-19 patients:A retrospective cohort study in the Netherlands comparing the value of registry data with high-granular electronic health records
- Author
-
Vagliano, Iacopo, Schut, Martijn C., Abu-Hanna, Ameen, Dongelmans, Dave A., de Lange, Dylan W., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, de Jong, Remko, Peters, Marco A.A., Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, de Jager, Cornelis P.C., Hendriks, Stefaan H.A., Achterberg, Sefanja, Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert B., Cornet, Alexander D., van den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Faber, Harald J., Karakus, A., Entjes, Robert, de Jong, Paul, Rettig, Thijs C.D., Reuland, M. C., Arbous, Sesmu, Fleuren, Lucas M., Dam, Tariq A., Thoral, Patrick J., Lalisang, Robbert C.A., Tonutti, Michele, de Bruin, Daan P., Elbers, Paul W.G., de Keizer, Nicolette F., Vagliano, Iacopo, Schut, Martijn C., Abu-Hanna, Ameen, Dongelmans, Dave A., de Lange, Dylan W., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, de Jong, Remko, Peters, Marco A.A., Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, de Jager, Cornelis P.C., Hendriks, Stefaan H.A., Achterberg, Sefanja, Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert B., Cornet, Alexander D., van den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Faber, Harald J., Karakus, A., Entjes, Robert, de Jong, Paul, Rettig, Thijs C.D., Reuland, M. C., Arbous, Sesmu, Fleuren, Lucas M., Dam, Tariq A., Thoral, Patrick J., Lalisang, Robbert C.A., Tonutti, Michele, de Bruin, Daan P., Elbers, Paul W.G., and de Keizer, Nicolette F.
- Abstract
Purpose: To assess, validate and compare the predictive performance of models for in-hospital mortality of COVID-19 patients admitted to the intensive care unit (ICU) over two different waves of infections. Our models were built with high-granular Electronic Health Records (EHR) data versus less-granular registry data. Methods: Observational study of all COVID-19 patients admitted to 19 Dutch ICUs participating in both the national quality registry National Intensive Care Evaluation (NICE) and the EHR-based Dutch Data Warehouse (hereafter EHR). Multiple models were developed on data from the first 24 h of ICU admissions from February to June 2020 (first COVID-19 wave) and validated on prospective patients admitted to the same ICUs between July and December 2020 (second COVID-19 wave). We assessed model discrimination, calibration, and the degree of relatedness between development and validation population. Coefficients were used to identify relevant risk factors. Results: A total of 1533 patients from the EHR and 1563 from the registry were included. With high granular EHR data, the average AUROC was 0.69 (standard deviation of 0.05) for the internal validation, and the AUROC was 0.75 for the temporal validation. The registry model achieved an average AUROC of 0.76 (standard deviation of 0.05) in the internal validation and 0.77 in the temporal validation. In the EHR data, age, and respiratory-system related variables were the most important risk factors identified. In the NICE registry data, age and chronic respiratory insufficiency were the most important risk factors. Conclusion: In our study, prognostic models built on less-granular but readily-available registry data had similar performance to models built on high-granular EHR data and showed similar transportability to a prospective COVID-19 population. Future research is needed to verify whether this finding can be confirmed for upcoming waves.
- Published
- 2022
36. The influence of timing of coronary angiography on acute kidney injury in out-of-hospital cardiac arrest patients:a retrospective cohort study
- Author
-
Janssens, Gladys N., Daemen, Joost, Lemkes, Jorrit S., Spoormans, Eva M., Janssen, Dieuwertje, den Uil, Corstiaan A., Jewbali, Lucia S.D., Heestermans, Ton A.C.M., Umans, Victor A.W.M., Halfwerk, Frank R., Beishuizen, Albertus, Nas, Joris, Bonnes, Judith, van de Ven, Peter M., van Rossum, Albert C., Elbers, Paul W.G., van Royen, Niels, Janssens, Gladys N., Daemen, Joost, Lemkes, Jorrit S., Spoormans, Eva M., Janssen, Dieuwertje, den Uil, Corstiaan A., Jewbali, Lucia S.D., Heestermans, Ton A.C.M., Umans, Victor A.W.M., Halfwerk, Frank R., Beishuizen, Albertus, Nas, Joris, Bonnes, Judith, van de Ven, Peter M., van Rossum, Albert C., Elbers, Paul W.G., and van Royen, Niels
- Abstract
Background: Acute kidney injury (AKI) is a frequent complication in cardiac arrest survivors and associated with adverse outcome. It remains unclear whether the incidence of AKI increases after the post-cardiac arrest contrast administration for coronary angiography and whether this depends on timing of angiography. Aim of this study was to investigate whether early angiography is associated with increased development of AKI compared to deferred angiography in out-of-hospital cardiac arrest (OHCA) survivors. Methods: In this retrospective multicenter cohort study, we investigated whether early angiography (within 2 h) after OHCA was non-inferior to deferred angiography regarding the development of AKI. We used an absolute difference of 5% as the non-inferiority margin. Primary non-inferiority analysis was done by calculating the risk difference with its 90% confidence interval (CI) using a generalized linear model for a binary outcome. As a sensitivity analysis, we repeated the primary analysis using propensity score matching. A multivariable model was built to identify predictors of acute kidney injury. Results: A total of 2375 patients were included from 2009 until 2018, of which 1148 patients were treated with early coronary angiography and 1227 patients with delayed or no angiography. In the early angiography group 18.5% of patients developed AKI after OHCA and 24.1% in the deferred angiography group. Risk difference was − 3.7% with 90% CI ranging from − 6.7 to − 0.7%, indicating non-inferiority of early angiography. The sensitivity analysis using propensity score matching showed accordant results, but no longer non-inferiority of early angiography. The factors time to return of spontaneous circulation (odds ratio [OR] 1.12, 95% CI 1.06–1.19, p < 0.001), the (not) use of angiotensin-converting enzyme inhibitor or angiotensin II receptor blocker (OR 0.20, 95% CI 0.04–0.91, p = 0.04) and baseline creatinine (OR 1.05, 95% CI 1.03–1.07, p < 0.001) were foun
- Published
- 2022
37. Rapid Evaluation of Coronavirus Illness Severity (RECOILS) in intensive care:Development and validation of a prognostic tool for in-hospital mortality
- Author
-
Plečko, Drago, Bennett, Nicolas, Mårtensson, Johan, Dam, Tariq A., Entjes, Robert, Rettig, Thijs C.D., Dongelmans, Dave A., Boelens, Age D., Rigter, Sander, Hendriks, Stefaan H.A., de Jong, Remko, Kamps, Marlijn J.A., Peters, Marco, Karakus, Attila, Gommers, Diederik, Ramnarain, Dharmanand, Wils, Evert Jan, Achterberg, Sefanja, Nowitzky, Ralph, van den Tempel, Walter, de Jager, Cornelis P.C., Nooteboom, Fleur G.C.A., Oostdijk, Evelien, Koetsier, Peter, Cornet, Alexander D., Reidinga, Auke C., de Ruijter, Wouter, Bosman, Rob J., Frenzel, Tim, Urlings-Strop, Louise C., de Jong, Paul, Smit, Ellen G.M., Cremer, Olaf L., Mehagnoul-Schipper, D. Jannet, Faber, Harald J., Lens, Judith, Brunnekreef, Gert B., Festen-Spanjer, Barbara, Dormans, Tom, de Bruin, Daan P., Lalisang, Robbert C.A., Vonk, Sebastiaan J.J., Haan, Martin E., Fleuren, Lucas M., Thoral, Patrick J., Elbers, Paul W.G., Bellomo, Rinaldo, Plečko, Drago, Bennett, Nicolas, Mårtensson, Johan, Dam, Tariq A., Entjes, Robert, Rettig, Thijs C.D., Dongelmans, Dave A., Boelens, Age D., Rigter, Sander, Hendriks, Stefaan H.A., de Jong, Remko, Kamps, Marlijn J.A., Peters, Marco, Karakus, Attila, Gommers, Diederik, Ramnarain, Dharmanand, Wils, Evert Jan, Achterberg, Sefanja, Nowitzky, Ralph, van den Tempel, Walter, de Jager, Cornelis P.C., Nooteboom, Fleur G.C.A., Oostdijk, Evelien, Koetsier, Peter, Cornet, Alexander D., Reidinga, Auke C., de Ruijter, Wouter, Bosman, Rob J., Frenzel, Tim, Urlings-Strop, Louise C., de Jong, Paul, Smit, Ellen G.M., Cremer, Olaf L., Mehagnoul-Schipper, D. Jannet, Faber, Harald J., Lens, Judith, Brunnekreef, Gert B., Festen-Spanjer, Barbara, Dormans, Tom, de Bruin, Daan P., Lalisang, Robbert C.A., Vonk, Sebastiaan J.J., Haan, Martin E., Fleuren, Lucas M., Thoral, Patrick J., Elbers, Paul W.G., and Bellomo, Rinaldo
- Abstract
Background: The prediction of in-hospital mortality for ICU patients with COVID-19 is fundamental to treatment and resource allocation. The main purpose was to develop an easily implemented score for such prediction. Methods: This was an observational, multicenter, development, and validation study on a national critical care dataset of COVID-19 patients. A systematic literature review was performed to determine variables possibly important for COVID-19 mortality prediction. Using a logistic multivariable model with a LASSO penalty, we developed the Rapid Evaluation of Coronavirus Illness Severity (RECOILS) score and compared its performance against published scores. Results: Our development (validation) cohort consisted of 1480 (937) adult patients from 14 (11) Dutch ICUs admitted between March 2020 and April 2021. Median age was 65 (65) years, 31% (26%) died in hospital, 74% (72%) were males, average length of ICU stay was 7.83 (10.25) days and average length of hospital stay was 15.90 (19.92) days. Age, platelets, PaO2/FiO2 ratio, pH, blood urea nitrogen, temperature, PaCO2, Glasgow Coma Scale (GCS) score measured within +/−24 h of ICU admission were used to develop the score. The AUROC of RECOILS score was 0.75 (CI 0.71–0.78) which was higher than that of any previously reported predictive scores (0.68 [CI 0.64–0.71], 0.61 [CI 0.58–0.66], 0.67 [CI 0.63–0.70], 0.70 [CI 0.67–0.74] for ISARIC 4C Mortality Score, SOFA, SAPS-III, and age, respectively). Conclusions: Using a large dataset from multiple Dutch ICUs, we developed a predictive score for mortality of COVID-19 patients admitted to ICU, which outperformed other predictive scores reported so far.
- Published
- 2022
38. Direct Observation of the Human Microcirculation During Cardiopulmonary Bypass: Effects of Pulsatile Perfusion
- Author
-
Elbers, Paul W.G., Wijbenga, Jeroen, Solinger, Frank, Yilmaz, Aladdin, van Iterson, Mat, van Dongen, Eric P.A., and Ince, Can
- Published
- 2011
- Full Text
- View/download PDF
39. Evolution of Clinical Phenotypes of COVID-19 Patients During Intensive Care Treatment: An Unsupervised Machine Learning Analysis
- Author
-
Siepel, Sander, primary, Dam, Tariq A., additional, Fleuren, Lucas M., additional, Gommers, Diederik, additional, Cremer, Olaf L., additional, Bosman, Rob J., additional, Rigter, Sander, additional, Wils, Evert-Jan, additional, Frenzel, Tim, additional, Dongelmans, Dave A., additional, de Jong, Remko, additional, Peters, Marco, additional, Kamps, Marlijn J.A, additional, Ramnarain, Dharmanand, additional, Nowitzky, Ralph, additional, Nooteboom, Fleur G.C.A., additional, de Ruijter, Wouter, additional, Urlings-Strop, Louise C., additional, Smit, Ellen G.M., additional, Mehagnoul-Schipper, D. Jannet, additional, Dormans, Tom, additional, de Jager, Cornelis P.C., additional, Hendriks, Stefaan H.A., additional, Achterberg, Sefanja, additional, Oostdijk, Evelien, additional, Reidinga, Auke C., additional, Festen-Spanjer, Barbara, additional, Brunnekreef, Gert B., additional, Cornet, Alexander D., additional, Tempel, Walter van den, additional, Boelens, Age D., additional, Koetsier, Peter, additional, Lens, Judith, additional, Faber, Harald J., additional, Karakus, A., additional, Entjes, Robert, additional, de Jong, Paul, additional, Rettig, Thijs C.D., additional, Arbous, Sesmu, additional, Vonk, Sebastiaan J.J., additional, Machado, Tomas, additional, Herter, Willem E., additional, Girbes, Armand R.J., additional, Hoogendoorn, Mark, additional, Thoral, Patrick J., additional, Elbers, Paul W.G., additional, and Bennis, Frank C., additional
- Published
- 2022
- Full Text
- View/download PDF
40. Risk factors for adverse outcomes during mechanical ventilation of 1152 COVID-19 patients: a multicenter machine learning study with highly granular data from the Dutch Data Warehouse
- Author
-
Fleuren, Lucas M., Tonutti, Michele, de Bruin, Daan P., Lalisang, Robbert C.A., Dam, Tariq A., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Vonk, Sebastiaan J.J., Fornasa, Mattia, Machado, Tomas, van der Meer, Nardo J.M., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, Dongelmans, Dave A., de Jong, Remko, Peters, Marco, Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, de Jager, Cornelis P.C., Hendriks, Stefaan H.A., Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert, Cornet, Alexander D., van den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Achterberg, Sefanja, Faber, Harald J., Karakus, A., Beukema, Menno, Entjes, Robert, de Jong, Paul, Houwert, Taco, Hovenkamp, Hidde, Noorduijn Londono, Roberto, Quintarelli, Davide, Scholtemeijer, Martijn G., de Beer, Aletta A., Cinà, Giovanni, Beudel, Martijn, de Keizer, Nicolet F., Hoogendoorn, Mark, Girbes, Armand R.J., Herter, Willem E., Elbers, Paul W.G., Thoral, Patrick J., Rettig, Thijs C.D., Reuland, M. C., van Manen, Laura, Montenij, Leon, van Bommel, Jasper, van den Berg, Roy, van Geest, Ellen, Hana, Anisa, Boersma, W. G., van den Bogaard, B., Pickkers, Peter, van der Heiden, Pim, van Gemeren, Claudia C.W., Meinders, Arend Jan, de Bruin, Martha, Rademaker, Emma, van Osch, Frits H.M., de Kruif, Martijn, Schroten, Nicolas, Arnold, Klaas Sierk, Fijen, J. W., van Koesveld, Jacomar J.M., Simons, Koen S., Labout, Joost, van de Gaauw, Bart, Kuiper, Michael, Beishuizen, Albertus, Geutjes, Dennis, Lutisan, Johan, Grady, Bart P.X., van den Akker, Remko, Simons, Bram, Rijkeboer, A. A., Arbous, Sesmu, Aries, Marcel, van den Oever, Niels C.Gritters, van Tellingen, Martijn, Dijkstra, Annemieke, van Raalte, Rutger, Roggeveen, Luca, van Diggelen, Fuda, Hassouni, Ali el, Guzman, David Romero, Bhulai, Sandjai, Ouweneel, Dagmar, Driessen, Ronald, Peppink, Jan, de Grooth, H. J., Zijlstra, G. J., van Tienhoven, A. J., van der Heiden, Evelien, Spijkstra, Jan Jaap, van der Spoel, Hans, de Man, Angelique, Klausch, Thomas, de Vries, Heder, de Neree tot Babberich, Michael, Thijssens, Olivier, Wagemakers, Lot, van der Pol, Hilde G.A., Hendriks, Tom, Berend, Julie, Silva, Virginia Ceni, Kullberg, Bob, Heunks, Leo, Juffermans, Nicole, Slooter, Arjan, Intensive care medicine, ACS - Diabetes & metabolism, ACS - Microcirculation, Amsterdam Cardiovascular Sciences, Neurology, AII - Infectious diseases, AII - Cancer immunology, CCA - Cancer biology and immunology, AII - Inflammatory diseases, Epidemiology and Data Science, APH - Methodology, ACS - Pulmonary hypertension & thrombosis, Intensive Care Medicine, APH - Quality of Care, Medical Informatics, Graduate School, Nephrology, Cardiology, Gastroenterology and Hepatology, Amsterdam Gastroenterology Endocrinology Metabolism, APH - Digital Health, Artificial intelligence, Network Institute, Computational Intelligence, Artificial Intelligence (section level), Mathematics, Intensive Care, Epidemiologie, RS: NUTRIM - R3 - Respiratory & Age-related Health, RS: MHeNs - R1 - Cognitive Neuropsychiatry and Clinical Neuroscience, MUMC+: MA Medische Staf IC (9), and Internal medicine
- Subjects
Icu patients ,Coronavirus disease 2019 (COVID-19) ,Adverse outcomes ,medicine.medical_treatment ,Critical Care and Intensive Care Medicine ,Machine learning ,computer.software_genre ,law.invention ,03 medical and health sciences ,0302 clinical medicine ,SDG 3 - Good Health and Well-being ,law ,SCORE ,medicine ,030212 general & internal medicine ,Risk factor ,Research Articles ,Mechanical ventilation ,business.industry ,RC86-88.9 ,Other Research Radboud Institute for Health Sciences [Radboudumc 0] ,COVID-19 ,030208 emergency & critical care medicine ,Medical emergencies. Critical care. Intensive care. First aid ,Intensive care unit ,Data warehouse ,Data extraction ,Mortality prediction ,Risk factors ,Artificial intelligence ,business ,computer - Abstract
Background The identification of risk factors for adverse outcomes and prolonged intensive care unit (ICU) stay in COVID-19 patients is essential for prognostication, determining treatment intensity, and resource allocation. Previous studies have determined risk factors on admission only, and included a limited number of predictors. Therefore, using data from the highly granular and multicenter Dutch Data Warehouse, we developed machine learning models to identify risk factors for ICU mortality, ventilator-free days and ICU-free days during the course of invasive mechanical ventilation (IMV) in COVID-19 patients. Methods The DDW is a growing electronic health record database of critically ill COVID-19 patients in the Netherlands. All adult ICU patients on IMV were eligible for inclusion. Transfers, patients admitted for less than 24 h, and patients still admitted at time of data extraction were excluded. Predictors were selected based on the literature, and included medication dosage and fluid balance. Multiple algorithms were trained and validated on up to three sets of observations per patient on day 1, 7, and 14 using fivefold nested cross-validation, keeping observations from an individual patient in the same split. Results A total of 1152 patients were included in the model. XGBoost models performed best for all outcomes and were used to calculate predictor importance. Using Shapley additive explanations (SHAP), age was the most important demographic risk factor for the outcomes upon start of IMV and throughout its course. The relative probability of death across age values is visualized in Partial Dependence Plots (PDPs), with an increase starting at 54 years. Besides age, acidaemia, low P/F-ratios and high driving pressures demonstrated a higher probability of death. The PDP for driving pressure showed a relative probability increase starting at 12 cmH2O. Conclusion Age is the most important demographic risk factor of ICU mortality, ICU-free days and ventilator-free days throughout the course of invasive mechanical ventilation in critically ill COVID-19 patients. pH, P/F ratio, and driving pressure should be monitored closely over the course of mechanical ventilation as risk factors predictive of these outcomes.
- Published
- 2021
- Full Text
- View/download PDF
41. Microcirculatory Imaging in Cardiac Anesthesia: Ketanserin Reduces Blood Pressure But Not Perfused Capillary Density
- Author
-
Elbers, Paul W.G., Ozdemir, Alaattin, van Iterson, Mat, van Dongen, Eric P.A., and Ince, Can
- Published
- 2009
- Full Text
- View/download PDF
42. The Influence of Timing of Coronary Angiography on Acute Kidney Injury in Out-of-Hospital Cardiac Arrest Patients: A Retrospective Cohort Study.
- Author
-
Janssens, Gladys Nathalia, primary, Daemen, Joost, additional, Lemkes, Jorrit S., additional, Spoormans, Eva M., additional, Janssen, Dieuwertje, additional, Uil, Corstiaan A. den, additional, Jewbali, Lucia S.D., additional, Heestermans, Ton A.C.M., additional, Umans, Victor A.W.M., additional, Halfwerk, Frank R., additional, Beishuizen, Albertus, additional, Nas, Joris, additional, Bonnes, Judith, additional, de Ven, Peter M. van, additional, Rossum, Albert C. van, additional, Elbers, Paul W.G., additional, and Royen, Niels van, additional
- Published
- 2021
- Full Text
- View/download PDF
43. Speech in an Orally Intubated Patient
- Author
-
Girbes, Armand R.J. and Elbers, Paul W.G.
- Published
- 2014
- Full Text
- View/download PDF
44. Behavioural artificial intelligence technology for COVID-19 intensivist triage decisions: making the implicit explicit
- Author
-
de Metz, Jesse (author), Thoral, Patrick J. (author), Chorus, C.G. (author), Elbers, Paul W.G. (author), van den Bogaard, Bas (author), de Metz, Jesse (author), Thoral, Patrick J. (author), Chorus, C.G. (author), Elbers, Paul W.G. (author), and van den Bogaard, Bas (author)
- Abstract
Transport and Logistics
- Published
- 2021
- Full Text
- View/download PDF
45. Sharing ICU Patient Data Responsibly Under the Society of Critical Care Medicine/European Society of Intensive Care Medicine Joint Data Science Collaboration:The Amsterdam University Medical Centers Database (AmsterdamUMCdb) Example∗
- Author
-
Thoral, Patrick J., Peppink, Jan M., Driessen, Ronald H., Sijbrands, Eric J.G., Kompanje, Erwin J.O., Kaplan, Lewis, Bailey, Heatherlee, Kesecioglu, Jozef, Cecconi, Maurizio, Churpek, Matthew, Clermont, Gilles, Van Der Schaar, Mihaela, Ercole, Ari, Girbes, Armand R.J., Elbers, Paul W.G., Thoral, Patrick J., Peppink, Jan M., Driessen, Ronald H., Sijbrands, Eric J.G., Kompanje, Erwin J.O., Kaplan, Lewis, Bailey, Heatherlee, Kesecioglu, Jozef, Cecconi, Maurizio, Churpek, Matthew, Clermont, Gilles, Van Der Schaar, Mihaela, Ercole, Ari, Girbes, Armand R.J., and Elbers, Paul W.G.
- Abstract
OBJECTIVES: Critical care medicine is a natural environment for machine learning approaches to improve outcomes for critically ill patients as admissions to ICUs generate vast amounts of data. However, technical, legal, ethical, and privacy concerns have so far limited the critical care medicine community from making these data readily available. The Society of Critical Care Medicine and the European Society of Intensive Care Medicine have identified ICU patient data sharing as one of the priorities under their Joint Data Science Collaboration. To encourage ICUs worldwide to share their patient data responsibly, we now describe the development and release of Amsterdam University Medical Centers Database (AmsterdamUMCdb), the first freely available critical care database in full compliance with privacy laws from both the United States and Europe, as an example of the feasibility of sharing complex critical care data. SETTING: University hospital ICU. SUBJECTS: Data from ICU patients admitted between 2003 and 2016. INTERVENTIONS: We used a risk-based deidentification strategy to maintain data utility while preserving privacy. In addition, we implemented contractual and governance processes, and a communication strategy. Patient organizations, supporting hospitals, and experts on ethics and privacy audited these processes and the database. MEASUREMENTS AND MAIN RESULTS: AmsterdamUMCdb contains approximately 1 billion clinical data points from 23,106 admissions of 20,109 patients. The privacy audit concluded that reidentification is not reasonably likely, and AmsterdamUMCdb can therefore be considered as anonymous information, both in the context of the U.S. Health Insurance Portability and Accountability Act and the European General Data Protection Regulation. The ethics audit concluded that responsible data sharing imposes minimal burden, whereas the potential benefit is tremendous. CONCLUSIONS: Technical, legal, ethical, and privacy challenges related to responsib
- Published
- 2021
46. The Dutch Data Warehouse, a multicenter and full-admission electronic health records database for critically ill COVID-19 patients
- Author
-
Fleuren, Lucas M., Dam, Tariq A., Tonutti, Michele, de Bruin, Daan P., Lalisang, Robbert C.A., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, Dongelmans, Dave A., de Jong, Remko, Peters, Marco, Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, de Jager, Cornelis P.C., Hendriks, Stefaan H.A., Achterberg, Sefanja, Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert B., Cornet, Alexander D., van den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Faber, Harald J., Karakus, A., Entjes, Robert, de Jong, Paul, Rettig, Thijs C.D., Arbous, Sesmu, Vonk, Sebastiaan J.J., Fornasa, Mattia, Machado, Tomas, Houwert, Taco, Hovenkamp, Hidde, Noorduijn-Londono, Roberto, Quintarelli, Davide, Scholtemeijer, Martijn G., de Beer, Aletta A., Cina, Giovanni, Beudel, Martijn, Herter, Willem E., Girbes, Armand R.J., Hoogendoorn, Mark, Thoral, Patrick J., Elbers, Paul W.G., Fleuren, Lucas M., Dam, Tariq A., Tonutti, Michele, de Bruin, Daan P., Lalisang, Robbert C.A., Gommers, Diederik, Cremer, Olaf L., Bosman, Rob J., Rigter, Sander, Wils, Evert Jan, Frenzel, Tim, Dongelmans, Dave A., de Jong, Remko, Peters, Marco, Kamps, Marlijn J.A., Ramnarain, Dharmanand, Nowitzky, Ralph, Nooteboom, Fleur G.C.A., de Ruijter, Wouter, Urlings-Strop, Louise C., Smit, Ellen G.M., Mehagnoul-Schipper, D. Jannet, Dormans, Tom, de Jager, Cornelis P.C., Hendriks, Stefaan H.A., Achterberg, Sefanja, Oostdijk, Evelien, Reidinga, Auke C., Festen-Spanjer, Barbara, Brunnekreef, Gert B., Cornet, Alexander D., van den Tempel, Walter, Boelens, Age D., Koetsier, Peter, Lens, Judith, Faber, Harald J., Karakus, A., Entjes, Robert, de Jong, Paul, Rettig, Thijs C.D., Arbous, Sesmu, Vonk, Sebastiaan J.J., Fornasa, Mattia, Machado, Tomas, Houwert, Taco, Hovenkamp, Hidde, Noorduijn-Londono, Roberto, Quintarelli, Davide, Scholtemeijer, Martijn G., de Beer, Aletta A., Cina, Giovanni, Beudel, Martijn, Herter, Willem E., Girbes, Armand R.J., Hoogendoorn, Mark, Thoral, Patrick J., and Elbers, Paul W.G.
- Abstract
Background: The Coronavirus disease 2019 (COVID-19) pandemic has underlined the urgent need for reliable, multicenter, and full-admission intensive care data to advance our understanding of the course of the disease and investigate potential treatment strategies. In this study, we present the Dutch Data Warehouse (DDW), the first multicenter electronic health record (EHR) database with full-admission data from critically ill COVID-19 patients. Methods: A nation-wide data sharing collaboration was launched at the beginning of the pandemic in March 2020. All hospitals in the Netherlands were asked to participate and share pseudonymized EHR data from adult critically ill COVID-19 patients. Data included patient demographics, clinical observations, administered medication, laboratory determinations, and data from vital sign monitors and life support devices. Data sharing agreements were signed with participating hospitals before any data transfers took place. Data were extracted from the local EHRs with prespecified queries and combined into a staging dataset through an extract–transform–load (ETL) pipeline. In the consecutive processing pipeline, data were mapped to a common concept vocabulary and enriched with derived concepts. Data validation was a continuous process throughout the project. All participating hospitals have access to the DDW. Within legal and ethical boundaries, data are available to clinicians and researchers. Results: Out of the 81 intensive care units in the Netherlands, 66 participated in the collaboration, 47 have signed the data sharing agreement, and 35 have shared their data. Data from 25 hospitals have passed through the ETL and processing pipeline. Currently, 3464 patients are included in the DDW, both from wave 1 and wave 2 in the Netherlands. More than 200 million clinical data points are available. Overall ICU mortality was 24.4%. Respiratory and hemodynamic parameters were most frequently measured throughout a patient's stay. For each
- Published
- 2021
47. Early high-dose vitamin C in post-cardiac arrest syndrome (VITaCCA):Study protocol for a randomized, double-blind, multi-center, placebo-controlled trial
- Author
-
Rozemeijer, Sander, de Grooth, Harm Jan, Elbers, Paul W.G., Girbes, Armand R.J., den Uil, Corstiaan A., Dubois, Eric A., Wils, Evert Jan, Rettig, Thijs C.D., van Zanten, Arthur R.H., Vink, Roel, van den Bogaard, Bas, Bosman, Rob J., Oudemans-van Straaten, Heleen M., de Man, Angélique M.E., Rozemeijer, Sander, de Grooth, Harm Jan, Elbers, Paul W.G., Girbes, Armand R.J., den Uil, Corstiaan A., Dubois, Eric A., Wils, Evert Jan, Rettig, Thijs C.D., van Zanten, Arthur R.H., Vink, Roel, van den Bogaard, Bas, Bosman, Rob J., Oudemans-van Straaten, Heleen M., and de Man, Angélique M.E.
- Abstract
Background: High-dose intravenous vitamin C directly scavenges and decreases the production of harmful reactive oxygen species (ROS) generated during ischemia/reperfusion after a cardiac arrest. The aim of this study is to investigate whether short-term treatment with a supplementary or very high-dose intravenous vitamin C reduces organ failure in post-cardiac arrest patients. Methods: This is a double-blind, multi-center, randomized placebo-controlled trial conducted in 7 intensive care units (ICUs) in The Netherlands. A total of 270 patients with cardiac arrest and return of spontaneous circulation will be randomly assigned to three groups of 90 patients (1:1:1 ratio, stratified by site and age). Patients will intravenously receive a placebo, a supplementation dose of 3 g of vitamin C or a pharmacological dose of 10 g of vitamin C per day for 96 h. The primary endpoint is organ failure at 96 h as measured by the Resuscitation-Sequential Organ Failure Assessment (R-SOFA) score at 96 h minus the baseline score (delta R-SOFA). Secondary endpoints are a neurological outcome, mortality, length of ICU and hospital stay, myocardial injury, vasopressor support, lung injury score, ventilator-free days, renal function, ICU-acquired weakness, delirium, oxidative stress parameters, and plasma vitamin C concentrations. Discussion: Vitamin C supplementation is safe and preclinical studies have shown beneficial effects of high-dose IV vitamin C in cardiac arrest models. This is the first RCT to assess the clinical effect of intravenous vitamin C on organ dysfunction in critically ill patients after cardiac arrest. Trial registration: ClinicalTrials.gov NCT03509662. Registered on April 26, 2018. https://clinicaltrials.gov/ct2/show/NCT03509662European Clinical Trials Database (EudraCT): 2017-004318-25. Registered on June 8, 2018. https://www.clinicaltrialsregister.eu/ctr-search/trial/2017-004318-25/NL
- Published
- 2021
48. Early high-dose vitamin C in post-cardiac arrest syndrome (VITaCCA) : study protocol for a randomized, double-blind, multi-center, placebo-controlled trial
- Author
-
Rozemeijer, Sander, de Grooth, Harm Jan, Elbers, Paul W.G., Girbes, Armand R.J., den Uil, Corstiaan A., Dubois, Eric A., Wils, Evert Jan, Rettig, Thijs C.D., van Zanten, Arthur R.H., Vink, Roel, van den Bogaard, Bas, Bosman, Rob J., Oudemans-van Straaten, Heleen M., de Man, Angélique M.E., Rozemeijer, Sander, de Grooth, Harm Jan, Elbers, Paul W.G., Girbes, Armand R.J., den Uil, Corstiaan A., Dubois, Eric A., Wils, Evert Jan, Rettig, Thijs C.D., van Zanten, Arthur R.H., Vink, Roel, van den Bogaard, Bas, Bosman, Rob J., Oudemans-van Straaten, Heleen M., and de Man, Angélique M.E.
- Abstract
Background: High-dose intravenous vitamin C directly scavenges and decreases the production of harmful reactive oxygen species (ROS) generated during ischemia/reperfusion after a cardiac arrest. The aim of this study is to investigate whether short-term treatment with a supplementary or very high-dose intravenous vitamin C reduces organ failure in post-cardiac arrest patients. Methods: This is a double-blind, multi-center, randomized placebo-controlled trial conducted in 7 intensive care units (ICUs) in The Netherlands. A total of 270 patients with cardiac arrest and return of spontaneous circulation will be randomly assigned to three groups of 90 patients (1:1:1 ratio, stratified by site and age). Patients will intravenously receive a placebo, a supplementation dose of 3 g of vitamin C or a pharmacological dose of 10 g of vitamin C per day for 96 h. The primary endpoint is organ failure at 96 h as measured by the Resuscitation-Sequential Organ Failure Assessment (R-SOFA) score at 96 h minus the baseline score (delta R-SOFA). Secondary endpoints are a neurological outcome, mortality, length of ICU and hospital stay, myocardial injury, vasopressor support, lung injury score, ventilator-free days, renal function, ICU-acquired weakness, delirium, oxidative stress parameters, and plasma vitamin C concentrations. Discussion: Vitamin C supplementation is safe and preclinical studies have shown beneficial effects of high-dose IV vitamin C in cardiac arrest models. This is the first RCT to assess the clinical effect of intravenous vitamin C on organ dysfunction in critically ill patients after cardiac arrest. Trial registration: ClinicalTrials.gov NCT03509662. Registered on April 26, 2018. https://clinicaltrials.gov/ct2/show/NCT03509662European Clinical Trials Database (EudraCT): 2017-004318-25. Registered on June 8, 2018. https://www.clinicaltrialsregister.eu/ctr-search/trial/2017-004318-25/NL
- Published
- 2021
49. Effect of Temporary Visceral Ischemia on Spinal Cord Ischemic Damage in the Rabbit
- Author
-
Elbers, Paul W.G., de Haan, Peter, Vanicky, Ivo, Legemate, Dink, and Dzoljic, Misa
- Published
- 2006
- Full Text
- View/download PDF
50. Data on sex differences in one-year outcomes of out-of-hospital cardiac arrest patients without ST-segment elevation
- Author
-
Spoormans, Eva M., primary, Lemkes, Jorrit S., additional, Janssens, Gladys N., additional, van der Hoeven, Nina W., additional, Jewbali, Lucia S.D., additional, Dubois, Eric A., additional, van de Ven, Peter M., additional, Meuwissen, Martijn, additional, Rijpstra, Tom A., additional, Bosker, Hans A., additional, Blans, Michiel J., additional, Bleeker, Gabe B., additional, Baak, Remon, additional, Vlachojannis, Georgios J., additional, Eikemans, Bob J.W., additional, van der Harst, Pim, additional, van der Horst, Iwan C.C., additional, Voskuil, Michiel, additional, van der Heijden, Joris J., additional, Beishuizen, Albertus, additional, Stoel, Martin, additional, Camaro, Cyril, additional, van der Hoeven, Hans, additional, Henriques, José P., additional, Vlaar, Alexander P.J., additional, Vink, Maarten A., additional, van den Bogaard, Bas, additional, Heestermans, Ton A.C.M., additional, de Ruijter, Wouter, additional, Delnoij, Thijs S.R., additional, Crijns, Harry J.G.M., additional, Jessurun, Gillian A.J., additional, Oemrawsingh, Pranobe V., additional, Gosselink, Marcel T.M., additional, Plomp, Koos, additional, Magro, Michael, additional, Elbers, Paul W.G., additional, Appelman, Yolande, additional, and van Royen, Niels, additional
- Published
- 2020
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.