205 results on '"Girbes, Armand R.J."'
Search Results
2. Biomarker Analysis Provides Evidence for Host Response Homogeneity in Patients With COVID-19
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van Agtmael, Michiel A., Algera, Anne G., Appelman, Brent, van Baarle, Floor E.H.P., van de Beek, Diederik, Beudel, Martijn, Bogaard, Harm J., Bos, Lieuwe D.J., Botta, Michela, de Brabander, Justin, de Bree, Godelieve J., Brouwer, Matthijs C., de Bruin, Sanne, Bugiani, Marianna, Bulle, Esther B., Chouchane, Osoul, Cloherty, Alex P.M., Buis, David, de Rotte, Maurtis C.F.J., Dijkstra, Mirjam, Dongelmans, Dave A., Dujardin, Romein W.G., Elbers, Paul E., Fleuren, Lucas M., Geerlings, Suzanne E., Geijtenbeek, Theo B.H., Girbes, Armand R.J., Goorhuis, Bram, Grobusch, Martin P., Hagens, Laura A., Hamann, Jorg, Harris, Vanessa C., Hemke, Robert, Hermans, Sabine M., Heunks, Leo M.A., Hollmann, Markus W., Horn, Janneke, Hovius, Joppe W., de Jong, Menno D., Koning, Rutger, Lim, Endry H.T., van Mourik, Niels, Nellen, Jeannine F., Nossent, Esther J., Paulus, Frederique, Peters, Edgar, Piña-Fuentes, Dan, van der Poll, Tom, Preckel, Bennedikt, Raasveld, Jorinde, Reijnders, Tom D.Y., Schinkel, Michiel, Schrauwen, Femke A.P., Schultz, Marcus J., Schuurman, Alex R., Schuurmans, Jaap, Sigaloff, Kim, Slim, Marleen A., Smeele, Patrick, Smit, Marry R., Stijnis, Cornelis, Stilma, Willemke, Teunissen, Charlotte E., Thoral, Patrick, Tsonas, Anissa M., Tuinman, Pieter R., van der Valk, Marc, Veelo, Denise P., Vlaar, Alexander P.J., Volleman, Carolien, de Vries, Heder, van Vught, Lonneke A., van Vugt, Michèle, Wiersinga, Joost, Wouters, Dorien, Zwinderman, Koos, van Amstel, Rombout B.E., Michels, Erik H.A., and Smeele, Patrick J.
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- 2024
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3. Augmented intelligence facilitates concept mapping across different electronic health records
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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.
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- 2023
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4. Does Reinforcement Learning Improve Outcomes for Critically Ill Patients? A Systematic Review and Level-of-Readiness Assessment
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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.
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- 2023
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5. Anatomical Variation in Diaphragm Thickness Assessed with Ultrasound in Healthy Volunteers
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Haaksma, Mark E., van Tienhoven, Arne J., Smit, Jasper M., Heldeweg, Micah L.A., Lissenberg-Witte, Birgit I., Wennen, Myrte, Jonkman, Annemijn, Girbes, Armand R.J., Heunks, Leo, and Tuinman, Pieter R.
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- 2022
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6. Performance of noninvasive airway occlusion maneuvers to assess lung stress and diaphragm effort in mechanically ventilated critically ill patients
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de Vries, Heder J., Tuinman, Pieter R., Jonkman, Annemijn H., Liu, Ling, Qiu, Haibo, Girbes, Armand R.J., Zhang, YingRui, de Man, Angelique M.E., de Grooth, Harm-Jan, and Heunks, Leo
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- 2022
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7. Endothelium-associated biomarkers mid-regional proadrenomedullin and C-terminal proendothelin-1 have good ability to predict 28-day mortality in critically ill patients with SARS-CoV-2 pneumonia: A prospective cohort study
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van Oers, Jos A.H., Kluiters, Yvette, Bons, Judith A.P., de Jongh, Mariska, Pouwels, Sjaak, Ramnarain, Dharmanand, de Lange, Dylan W., de Grooth, Harm-Jan, and Girbes, Armand R.J.
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- 2021
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8. The effect of small versus large clog size on emergency response time: A randomized controlled trial
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Elbers, Paul W.G., de Grooth, Harm-Jan, and Girbes, Armand R.J.
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- 2020
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9. Early high protein intake and mortality in critically ill ICU patients with low skeletal muscle area and -density
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Looijaard, Wilhelmus G.P.M., Dekker, Ingeborg M., Beishuizen, Albertus, Girbes, Armand R.J., Oudemans-van Straaten, Heleen M., and Weijs, Peter J.M.
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- 2020
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10. Identifying critically ill patients with low muscle mass: Agreement between bioelectrical impedance analysis and computed tomography
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Looijaard, Willem G.P.M., Stapel, Sandra N., Dekker, Ingeborg M., Rusticus, Hanna, Remmelzwaal, Sharon, Girbes, Armand R.J., Weijs, Peter J.M., and Oudemans-van Straaten, Heleen M.
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- 2020
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11. Invalid methods lead to inappropriate conclusions
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GIRBES, ARMAND R.J., DE GROOTH, HARM-JAN, ZIJLSTRA, JAN G., and HEIN, LARS
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- 2019
12. Micronutrient Status of Critically Ill Patients with COVID-19 Pneumonia
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Rozemeijer, Sander, Hamer, Henrike M., Heijboer, Annemieke C., de Jonge, Robert, Jimenez, Connie R., Juffermans, Nicole P., Dujardin, Romein W.G., Girbes, Armand R.J., de Man, Angélique M.E., Rozemeijer, Sander, Hamer, Henrike M., Heijboer, Annemieke C., de Jonge, Robert, Jimenez, Connie R., Juffermans, Nicole P., Dujardin, Romein W.G., Girbes, Armand R.J., and de Man, Angélique M.E.
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Micronutrient deficiencies can develop in critically ill patients, arising from factors such as decreased intake, increased losses, drug interactions, and hypermetabolism. These deficiencies may compromise important immune functions, with potential implications for patient outcomes. Alternatively, micronutrient blood levels may become low due to inflammation-driven redistribution rather than consumption. This explorative pilot study investigates blood micronutrient concentrations during the first three weeks of ICU stay in critically ill COVID-19 patients and evaluates the impact of additional micronutrient administration. Moreover, associations between inflammation, disease severity, and micronutrient status were explored. We measured weekly concentrations of vitamins A, B6, D, and E; iron; zinc; copper; selenium; and CRP as a marker of inflammation state and the SOFA score indicating disease severity in 20 critically ill COVID-19 patients during three weeks of ICU stay. Half of the patients received additional (intravenous) micronutrient administration. Data were analyzed with linear mixed models and Pearson’s correlation coefficient. High deficiency rates of vitamins A, B6, and D; zinc; and selenium (50–100%) were found at ICU admission, along with low iron status. After three weeks, vitamins B6 and D deficiencies persisted, and iron status remained low. Plasma levels of vitamins A and E, zinc, and selenium improved. No significant differences in micronutrient levels were found between patient groups. Negative correlations were identified between the CRP level and levels of vitamins A and E, iron, transferrin, zinc, and selenium. SOFA scores negatively correlated with vitamin D and selenium levels. Our findings reveal high micronutrient deficiency rates at ICU admission. Additional micronutrient administration did not enhance levels or expedite their increase. Spontaneous increases in vitamins A and E, zinc, and selenium levels were associated with inflammatio
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- 2024
13. Indirect calorimetry in critically ill mechanically ventilated patients: Comparison of E-sCOVX with the deltatrac
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Stapel, Sandra N., Weijs, Peter J.M., Girbes, Armand R.J., and Oudemans-van Straaten, Heleen M.
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- 2019
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14. Incidence, Risk Factors and Outcome of Suspected Central Venous Catheter-related Infections in Critically Ill COVID-19 Patients
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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
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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.
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- 2022
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15. Large-scale ICU data sharing for global collaboration: the first 1633 critically ill COVID-19 patients in the Dutch Data Warehouse
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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)
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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)
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- 2021
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16. Clinical and organizational factors associated with mortality during the peak of first COVID-19 wave
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Greco, Massimiliano, De Corte, Thomas, Ercole, Ari, Antonelli, Massimo, Azoulay, Elie, Citerio, Giuseppe, Morris, Andy Conway, De Pascale, Gennaro, Duska, Frantisek, Elbers, Paul, Einav, Sharon, Forni, Lui, Galarza, Laura, Girbes, Armand R.J., Grasselli, Giacomo, Gusarov, Vitaly, Jubb, Alasdair, Kesecioglu, Jozef, Lavinio, Andrea, Delgado, Maria Cruz Martin, Mellinghoff, Johannes, Myatra, Sheila Nainan, Ostermann, Marlies, Pellegrini, Mariangela, Póvoa, Pedro, Schaller, Stefan J., Teboul, Jean Louis, Wong, Adrian, De Waele, Jan, Cecconi, Maurizio, Bezzi, Marco, Gira, Alicia, Eller, Philipp, Hamid, Tarikul, Haque, Injamam Ull, De Buyser, Wim, Cudia, Antonella, De Backer, Daniel, Foulon, Pierre, Collin, Vincent, Van Hecke, Jolien, De Waele, Elisabeth, Van Malderen, Claire, Mesland, Jean Baptiste, Biston, Patrick, Piagnerelli, Michael, Haentjens, Lionel, De Schryver, Nicolas, NOVA Medical School|Faculdade de Ciências Médicas (NMS|FCM), Centro de Estudos de Doenças Crónicas (CEDOC), and Comprehensive Health Research Centre (CHRC) - pólo NMS
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Critical care ,SARS-CoV-2 ,COVID-19 ,Pneumonia ,Critical Care and Intensive Care Medicine ,Surge capacity - Abstract
Funding Information: AE, FD, GDP, LG, VG, AJ, JK, AL, JM, SNM, MO, MP, MC declare no conflicts of interest. MG reports speaking fees from Baxter and Philips. TDC is supported by Research Foundation Flanders (Grant nr G085920N). MA reports Research Grant from GE, Honoraria from Fisher and Paykel, Pfizer, Orion and Gilead. GC reports grants, personal fees as Speakers’ Bureau Member and Advisory Board Member from Integra and Neuroptics, all outside the submitted work. ACM is supported by a Clinician Scientist Fellowship from the Medical Research Council (MR/V006118/1). SE declares no financial COIs and the following non-financial disclosures: Cochrane editor, American Society of Anesthesiologist data review board member. LF reports research funding from NIHR, Baxter, Ortho-Clinical Diagnostics, Exthera Medical and lecture fees from Baxter, Fresenius, Paion, all outside the submitted work. GG received payment for lectures from Getinge, Draeger Medical, Fisher&Paykel, Biotest, MSD, Gilead and unrestricted research grants from Fisher&Paykel and MSD (all unrelated to the present work). MCMD declares potential conflict of interest with BD. PP declares potential conflicts of interest with Pfizer, MSD and Gilead. SJS reports personal fees from Springer-Verlag, GmbH (Vienna, Austria) for educational commitments grants and non-financial support from ESICM (Bruxelles, Belgium), Fresenius (Germany), Liberate Medical LLC (Crestwood, USA), STIMIT AG (Nidau, Switzerland) Reactive Robotics GmbH (Munich, Germany) as well as from Technical University of Munich, Germany, from national (e.g. DGAI) and international (e.g. ESICM) medical societies (or their congress organizers) in the field of anesthesiology and intensive care, all outside the submitted work; SJS holds stocks in small amounts from Alphabeth Inc., Bayer AG, Rhön-Klinikum AG, and Siemens AG. These did not have any influence on this study. AW reports Honorarium for delivery of educational material for Vygon, GE. JLT declares potential conflict of interest with Getinge. JDW has consulted for Pfizer, MSD (honoraria paid to institution), and is a senior clinical investigator funded by the Research Foundation Flanders (FWO, Ref. 1881020N). Purpose: To accommodate the unprecedented number of critically ill patients with pneumonia caused by coronavirus disease 2019 (COVID-19) expansion of the capacity of intensive care unit (ICU) to clinical areas not previously used for critical care was necessary. We describe the global burden of COVID-19 admissions and the clinical and organizational characteristics associated with outcomes in critically ill COVID-19 patients. Methods: Multicenter, international, point prevalence study, including adult patients with SARS-CoV-2 infection confirmed by polymerase chain reaction (PCR) and a diagnosis of COVID-19 admitted to ICU between February 15th and May 15th, 2020. Results: 4994 patients from 280 ICUs in 46 countries were included. Included ICUs increased their total capacity from 4931 to 7630 beds, deploying personnel from other areas. Overall, 1986 (39.8%) patients were admitted to surge capacity beds. Invasive ventilation at admission was present in 2325 (46.5%) patients and was required during ICU stay in 85.8% of patients. 60-day mortality was 33.9% (IQR across units: 20%–50%) and ICU mortality 32.7%. Older age, invasive mechanical ventilation, and acute kidney injury (AKI) were associated with increased mortality. These associations were also confirmed specifically in mechanically ventilated patients. Admission to surge capacity beds was not associated with mortality, even after controlling for other factors. Conclusions: ICUs responded to the increase in COVID-19 patients by increasing bed availability and staff, admitting up to 40% of patients in surge capacity beds. Although mortality in this population was high, admission to a surge capacity bed was not associated with increased mortality. Older age, invasive mechanical ventilation, and AKI were identified as the strongest predictors of mortality. publishersversion published
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- 2022
17. Evolution of Clinical Phenotypes of COVID-19 Patients During Intensive Care Treatment: An Unsupervised Machine Learning Analysis.
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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.
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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]
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- 2023
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18. Effect of anticoagulation regimens on handling of interleukin-6 and -8 during continuous venovenous hemofiltration in critically ill patients with acute kidney injury
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Schilder, Louise, Azam Nurmohamed, S., ter Wee, Pieter M., Girbes, Armand R.J., Beishuizen, Albertus, Paauw, Nanne J., Beelen, Robert H.J., and Johan Groeneveld, A.B.
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- 2012
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19. Evolution of Respiratory Muscles Thickness in Mechanically Ventilated Patients With COVID-19
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Haaksma, Mark E, primary, Smit, Jasper M, additional, Kramer, Ruben, additional, Heldeweg, Micah L A, additional, Veldhuis, Lars I, additional, Lieveld, Arthur, additional, Pikerie, Dagnery, additional, Mousa, Amne, additional, Girbes, Armand R.J, additional, Heunks, Leo, additional, and Tuinman, Pieter R, additional
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- 2022
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20. Clinical and organizational factors associated with mortality during the peak of first COVID-19 wave: the global UNITE-COVID study
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Greco, M., Corte, T. de, Ercole, A., Antonelli, M., Azoulay, E., Citerio, G., Morris, A.C., Pascale, G. De, Duska, F., Elbers, P., Einav, S., Forni, L., Galarza, L., Girbes, Armand R.J., Grasselli, G., Gusarov, V., Jubb, A., Kesecioglu, J., Lavinio, A., Delgado, M.C.M., Mellinghoff, J., Myatra, S.N., Ostermann, M., Pellegrini, M., Povoa, P., Schaller, S.J., Teboul, J.L., Wong, A., Frenzel, T., Waele, J.J. De, Cecconi, M., Greco, M., Corte, T. de, Ercole, A., Antonelli, M., Azoulay, E., Citerio, G., Morris, A.C., Pascale, G. De, Duska, F., Elbers, P., Einav, S., Forni, L., Galarza, L., Girbes, Armand R.J., Grasselli, G., Gusarov, V., Jubb, A., Kesecioglu, J., Lavinio, A., Delgado, M.C.M., Mellinghoff, J., Myatra, S.N., Ostermann, M., Pellegrini, M., Povoa, P., Schaller, S.J., Teboul, J.L., Wong, A., Frenzel, T., Waele, J.J. De, and Cecconi, M.
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Contains fulltext : 283003.pdf (Publisher’s version ) (Open Access)
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- 2022
21. Evolution of Clinical Phenotypes of COVID-19 Patients During Intensive Care Treatment: An Unsupervised Machine Learning Analysis
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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
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- 2022
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22. 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
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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
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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.
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- 2021
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23. Lung Ultrasound Signs to Diagnose and Discriminate Interstitial Syndromes in ICU Patients: A Diagnostic Accuracy Study in Two Cohorts
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Heldeweg, Micah L.A., primary, Smit, Marry R., additional, Kramer-Elliott, Shelley R., additional, Haaksma, Mark E., additional, Smit, Jasper M., additional, Hagens, Laura A., additional, Heijnen, Nanon F.L., additional, Jonkman, Annemijn H., additional, Paulus, Frederique, additional, Schultz, Marcus J., additional, Girbes, Armand R.J., additional, Heunks, Leo M.A., additional, Bos, Lieuwe D.J., additional, and Tuinman, Pieter R., additional
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- 2022
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24. Coronavirus disease 2019 is associated with catheter-related thrombosis in critically ill patients: A multicenter case-control study
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Smit, Jasper M., Lopez Matta, Jorge E., Vink, Roel, Müller, Marcella C.A., Choi, Kee F., van Baarle, Frank E.H.P., Vlaar, Alexander P.J., Klok, Frederikus A., Huisman, Menno V., Elzo Kraemer, Carlos V., Girbes, Armand R.J., Van Westerloo, David J., and Tuinman, Pieter R.
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- 2021
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25. Response to: MR-proADM has a good ability to predict mortality in critically ill patients with SARS-CoV-2 pneumonia: Beware of some potential confounders!
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van Oers, Jos A.H., primary, de Grooth, Harm-Jan, additional, de Lange, Dylan W., additional, and Girbes, Armand R.J., additional
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- 2021
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26. Ciprofloxacin pharmacokinetics in critically ill patients: A prospective cohort study
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van Zanten, Arthur R.H., Polderman, Kees H., van Geijlswijk, Ingeborg M., van der Meer, Gert Y.G., Schouten, Marinus A., and Girbes, Armand R.J.
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- 2008
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27. The pituitary–adrenal axis is activated more in non-survivors than in survivors of cardiac arrest, irrespective of therapeutic hypothermia
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de Jong, Margriet F.C., Beishuizen, Albertus, de Jong, Martin J., Girbes, Armand R.J., and Groeneveld, A.B. Johan
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- 2008
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28. Speech in an Orally Intubated Patient
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Girbes, Armand R.J. and Elbers, Paul W.G.
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- 2014
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29. Some Patients Are More Equal Than Others: Variation in Ventilator Settings for Coronavirus Disease 2019 Acute Respiratory Distress Syndrome
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Dam, T.A., Grooth, H.J. de, Klausch, T., Fleuren, L.M., Bruin, D.P. de, Entjes, R., Rettig, T.C., Dongelmans, Dave A., Boelens, A.D., Rigter, S., Hendriks, S.H., Jong, R. de, Kamps, M.J., Peters, M., Karakus, A., Gommers, D., Ramnarain, D., Wils, E.J., Achterberg, S., Nowitzky, R., Tempel, W., Jager, C.P.C. de, Nooteboom, F., Oostdijk, E., Koetsier, P., Cornet, A.D., Reidinga, A.C., Ruijter, W. de, Bosman, R.J., Frenzel, T., Urlings-Strop, L.C., Jong, p de, Smit, Egbert F., Cremer, O.L., Mehagnoul-Schipper, D.J., Faber, H.J., Lens, J., Brunnekreef, G.B., Festen-Spanjer, B., Dormans, T., Dijkstra, A., Simons, B., Rijkeboer, A.A., Arbous, S., Aries, M., Beukema, M., Pretorius, D., Raalte, R. van, Tellingen, M. van, Oever, N.C. Gritters van de, Lalisang, R.C.A., Tonutti, M., Girbes, Armand R.J., Hoogendoorn, M., Thoral, P.J., Elbers, P.W.G., Dam, T.A., Grooth, H.J. de, Klausch, T., Fleuren, L.M., Bruin, D.P. de, Entjes, R., Rettig, T.C., Dongelmans, Dave A., Boelens, A.D., Rigter, S., Hendriks, S.H., Jong, R. de, Kamps, M.J., Peters, M., Karakus, A., Gommers, D., Ramnarain, D., Wils, E.J., Achterberg, S., Nowitzky, R., Tempel, W., Jager, C.P.C. de, Nooteboom, F., Oostdijk, E., Koetsier, P., Cornet, A.D., Reidinga, A.C., Ruijter, W. de, Bosman, R.J., Frenzel, T., Urlings-Strop, L.C., Jong, p de, Smit, Egbert F., Cremer, O.L., Mehagnoul-Schipper, D.J., Faber, H.J., Lens, J., Brunnekreef, G.B., Festen-Spanjer, B., Dormans, T., Dijkstra, A., Simons, B., Rijkeboer, A.A., Arbous, S., Aries, M., Beukema, M., Pretorius, D., Raalte, R. van, Tellingen, M. van, Oever, N.C. Gritters van de, Lalisang, R.C.A., Tonutti, M., Girbes, Armand R.J., Hoogendoorn, M., Thoral, P.J., and Elbers, P.W.G.
- Abstract
Contains fulltext : 244701.pdf (Publisher’s version ) (Open Access), OBJECTIVES: As coronavirus disease 2019 is a novel disease, treatment strategies continue to be debated. This provides the intensive care community with a unique opportunity as the population of coronavirus disease 2019 patients requiring invasive mechanical ventilation is relatively homogeneous compared with other ICU populations. We hypothesize that the novelty of coronavirus disease 2019 and the uncertainty over its similarity with noncoronavirus disease 2019 acute respiratory distress syndrome resulted in substantial practice variation between hospitals during the first and second waves of coronavirus disease 2019 patients. DESIGN: Multicenter retrospective cohort study. SETTING: Twenty-five hospitals in the Netherlands from February 2020 to July 2020, and 14 hospitals from August 2020 to December 2020. PATIENTS: One thousand two hundred ninety-four critically ill intubated adult ICU patients with coronavirus disease 2019 were selected from the Dutch Data Warehouse. Patients intubated for less than 24 hours, transferred patients, and patients still admitted at the time of data extraction were excluded. MEASUREMENTS AND MAIN RESULTS: We aimed to estimate between-ICU practice variation in selected ventilation parameters (positive end-expiratory pressure, Fio(2), set respiratory rate, tidal volume, minute volume, and percentage of time spent in a prone position) on days 1, 2, 3, and 7 of intubation, adjusted for patient characteristics as well as severity of illness based on Pao(2)/Fio(2) ratio, pH, ventilatory ratio, and dynamic respiratory system compliance during controlled ventilation. Using multilevel linear mixed-effects modeling, we found significant (p ≤ 0.001) variation between ICUs in all ventilation parameters on days 1, 2, 3, and 7 of intubation for both waves. CONCLUSIONS: This is the first study to clearly demonstrate significant practice variation between ICUs related to mechanical ventilation parameters that are under direct control by intensivists.
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- 2021
30. The Dutch Data Warehouse, a multicenter and full-admission electronic health records database for critically ill COVID-19 patients
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Fleuren, L.M., Dam, T.A., Tonutti, M., Bruin, D.P. de, Lalisang, R.C.A., Gommers, D., Cremer, O.L., Bosman, R.J., Rigter, S., Wils, E.J., Frenzel, T., Dongelmans, Dave A., Jong, R. de, Peters, M., Kamps, M.J., Ramnarain, D., Nowitzky, R., Nooteboom, F., Ruijter, W. de, Urlings-Strop, L.C., Smit, Egbert F., Mehagnoul-Schipper, D.J., Dormans, T., Jager, C.P.C. de, Hendriks, S.H., Achterberg, S., Oostdijk, E., Reidinga, A.C., Festen-Spanjer, B., Brunnekreef, G.B., Cornet, A.D., Tempel, W., Boelens, A.D., Koetsier, P., Lens, J., Faber, H.J., Karakus, A., Entjes, R., Jong, p de, Rettig, T.C., Arbous, S., Vonk, S.J.J., Fornasa, M., Machado, T., Houwert, T., Hovenkamp, H., Noorduijn-Londono, R., Quintarelli, D., Scholtemeijer, M.G., Beer, A.A. de, Cina, G., Beudel, M., Herter, W.E., Girbes, Armand R.J., Hoogendoorn, M., Thoral, P.J., Elbers, P.W.G., Fleuren, L.M., Dam, T.A., Tonutti, M., Bruin, D.P. de, Lalisang, R.C.A., Gommers, D., Cremer, O.L., Bosman, R.J., Rigter, S., Wils, E.J., Frenzel, T., Dongelmans, Dave A., Jong, R. de, Peters, M., Kamps, M.J., Ramnarain, D., Nowitzky, R., Nooteboom, F., Ruijter, W. de, Urlings-Strop, L.C., Smit, Egbert F., Mehagnoul-Schipper, D.J., Dormans, T., Jager, C.P.C. de, Hendriks, S.H., Achterberg, S., Oostdijk, E., Reidinga, A.C., Festen-Spanjer, B., Brunnekreef, G.B., Cornet, A.D., Tempel, W., Boelens, A.D., Koetsier, P., Lens, J., Faber, H.J., Karakus, A., Entjes, R., Jong, p de, Rettig, T.C., Arbous, S., Vonk, S.J.J., Fornasa, M., Machado, T., Houwert, T., Hovenkamp, H., Noorduijn-Londono, R., Quintarelli, D., Scholtemeijer, M.G., Beer, A.A. de, Cina, G., Beudel, M., Herter, W.E., Girbes, Armand R.J., Hoogendoorn, M., Thoral, P.J., and Elbers, P.W.G.
- Abstract
Contains fulltext : 238831.pdf (Publisher’s version ) (Open Access), 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 pa
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- 2021
31. Predictors for extubation failure in COVID-19 patients using a machine learning approach
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Fleuren, L.M., Dam, T.A., Tonutti, M., Bruin, D.P. de, Lalisang, R.C.A., Gommers, D., Cremer, O.L., Bosman, R.J., Rigter, S., Wils, E.J., Frenzel, T., Dongelmans, Dave A., Jong, R. de, Peters, M., Kamps, M.J., Ramnarain, D., Nowitzky, R., Nooteboom, F., Ruijter, W. de, Urlings-Strop, L.C., Smit, Egbert F., Mehagnoul-Schipper, D.J., Dormans, T., Jager, C.P.C. de, Hendriks, S.H., Achterberg, S., Oostdijk, E., Reidinga, A.C., Festen-Spanjer, B., Brunnekreef, G.B., Cornet, A.D., Tempel, W., Boelens, A.D., Koetsier, P., Lens, J., Faber, H.J., Karakus, A., Entjes, R., Jong, p de, Rettig, T.C., Arbous, S., Vonk, S.J.J., Fornasa, M., Machado, T., Houwert, T., Hovenkamp, H., Londono, R. Noorduijn, Quintarelli, D., Scholtemeijer, M.G., Beer, A.A. de, Cinà, G., Kantorik, A., Ruijter, T., Herter, W.E., Beudel, M., Girbes, Armand R.J., Hoogendoorn, M., Thoral, P.J., Elbers, P.W.G., Fleuren, L.M., Dam, T.A., Tonutti, M., Bruin, D.P. de, Lalisang, R.C.A., Gommers, D., Cremer, O.L., Bosman, R.J., Rigter, S., Wils, E.J., Frenzel, T., Dongelmans, Dave A., Jong, R. de, Peters, M., Kamps, M.J., Ramnarain, D., Nowitzky, R., Nooteboom, F., Ruijter, W. de, Urlings-Strop, L.C., Smit, Egbert F., Mehagnoul-Schipper, D.J., Dormans, T., Jager, C.P.C. de, Hendriks, S.H., Achterberg, S., Oostdijk, E., Reidinga, A.C., Festen-Spanjer, B., Brunnekreef, G.B., Cornet, A.D., Tempel, W., Boelens, A.D., Koetsier, P., Lens, J., Faber, H.J., Karakus, A., Entjes, R., Jong, p de, Rettig, T.C., Arbous, S., Vonk, S.J.J., Fornasa, M., Machado, T., Houwert, T., Hovenkamp, H., Londono, R. Noorduijn, Quintarelli, D., Scholtemeijer, M.G., Beer, A.A. de, Cinà, G., Kantorik, A., Ruijter, T., Herter, W.E., Beudel, M., Girbes, Armand R.J., Hoogendoorn, M., Thoral, P.J., and Elbers, P.W.G.
- Abstract
Contains fulltext : 244677.pdf (Publisher’s version ) (Open Access), INTRODUCTION: Determining the optimal timing for extubation can be challenging in the intensive care. In this study, we aim to identify predictors for extubation failure in critically ill patients with COVID-19. METHODS: We used highly granular data from 3464 adult critically ill COVID patients in the multicenter Dutch Data Warehouse, including demographics, clinical observations, medications, fluid balance, laboratory values, vital signs, and data from life support devices. All intubated patients with at least one extubation attempt were eligible for analysis. Transferred patients, patients admitted for less than 24 h, and patients still admitted at the time of data extraction were excluded. Potential predictors were selected by a team of intensive care physicians. The primary and secondary outcomes were extubation without reintubation or death within the next 7 days and within 48 h, respectively. We trained and validated multiple machine learning algorithms using fivefold nested cross-validation. Predictor importance was estimated using Shapley additive explanations, while cutoff values for the relative probability of failed extubation were estimated through partial dependence plots. RESULTS: A total of 883 patients were included in the model derivation. The reintubation rate was 13.4% within 48 h and 18.9% at day 7, with a mortality rate of 0.6% and 1.0% respectively. The grandient-boost model performed best (area under the curve of 0.70) and was used to calculate predictor importance. Ventilatory characteristics and settings were the most important predictors. More specifically, a controlled mode duration longer than 4 days, a last fraction of inspired oxygen higher than 35%, a mean tidal volume per kg ideal body weight above 8 ml/kg in the day before extubation, and a shorter duration in assisted mode (< 2 days) compared to their median values. Additionally, a higher C-reactive protein and leukocyte count, a lower thrombocyte count, a lower Glasgow coma scale a
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- 2021
32. 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
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Fleuren, L.M., Tonutti, M., Bruin, D.P. de, Lalisang, R.C.A., Dam, T.A., Gommers, D., Cremer, O.L., Bosman, R.J., Vonk, S.J.J., Fornasa, M., Machado, T., Meer, N.J. van der, Rigter, S., Wils, E.J., Frenzel, T., Dongelmans, Dave A., Jong, R. de, Peters, M., Kamps, M.J., Ramnarain, D., Nowitzky, R., Nooteboom, F., Ruijter, W. de, Urlings-Strop, L.C., Smit, Egbert F., Mehagnoul-Schipper, D.J., Dormans, T., Jager, C.P.C. de, Hendriks, S.H., Oostdijk, E., Reidinga, A.C., Festen-Spanjer, B., Brunnekreef, G., Cornet, A.D., Tempel, W., Boelens, A.D., Koetsier, P., Lens, J., Achterberg, S., Faber, H.J., Karakus, A., Beukema, M., Entjes, R., Jong, p de, Houwert, T., Hovenkamp, H., Londono, R. Noorduijn, Quintarelli, D., Scholtemeijer, M.G., Beer, A.A. de, Cinà, G., Beudel, M., Keizer, N.F. de, Hoogendoorn, M., Girbes, Armand R.J., Herter, W.E., Elbers, P.W.G., Thoral, P.J., Fleuren, L.M., Tonutti, M., Bruin, D.P. de, Lalisang, R.C.A., Dam, T.A., Gommers, D., Cremer, O.L., Bosman, R.J., Vonk, S.J.J., Fornasa, M., Machado, T., Meer, N.J. van der, Rigter, S., Wils, E.J., Frenzel, T., Dongelmans, Dave A., Jong, R. de, Peters, M., Kamps, M.J., Ramnarain, D., Nowitzky, R., Nooteboom, F., Ruijter, W. de, Urlings-Strop, L.C., Smit, Egbert F., Mehagnoul-Schipper, D.J., Dormans, T., Jager, C.P.C. de, Hendriks, S.H., Oostdijk, E., Reidinga, A.C., Festen-Spanjer, B., Brunnekreef, G., Cornet, A.D., Tempel, W., Boelens, A.D., Koetsier, P., Lens, J., Achterberg, S., Faber, H.J., Karakus, A., Beukema, M., Entjes, R., Jong, p de, Houwert, T., Hovenkamp, H., Londono, R. Noorduijn, Quintarelli, D., Scholtemeijer, M.G., Beer, A.A. de, Cinà, G., Beudel, M., Keizer, N.F. de, Hoogendoorn, M., Girbes, Armand R.J., Herter, W.E., Elbers, P.W.G., and Thoral, P.J.
- Abstract
Contains fulltext : 238677.pdf (Publisher’s version ) (Open Access), 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 cmH(2)O. CONCLUSION: Age is the most important demographic risk factor of ICU mortality, ICU-free days and ve
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- 2021
33. 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∗
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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
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- 2021
34. The Dutch Data Warehouse, a multicenter and full-admission electronic health records database for critically ill COVID-19 patients
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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
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- 2021
35. Early high-dose vitamin C in post-cardiac arrest syndrome (VITaCCA):Study protocol for a randomized, double-blind, multi-center, placebo-controlled trial
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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
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- 2021
36. Early high-dose vitamin C in post-cardiac arrest syndrome (VITaCCA) : study protocol for a randomized, double-blind, multi-center, placebo-controlled trial
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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
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- 2021
37. An algorithm for balanced protein/energy provision in critically ill mechanically ventilated patients
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Strack van Schijndel, Rob J.M., Weijs, Peter J.M., Sauerwein, Hans P., de Groot, Sabine D.W., Beishuizen, Albertus, and Girbes, Armand R.J.
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- 2007
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38. Epidemiology of acute lung injury and acute respiratory distress syndrome in The Netherlands: A survey
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Wind, Jan, Versteegt, Jens, Twisk, Jos, van der Werf, Tjip S., Bindels, Alexander J.G.H., Spijkstra, Jan-Jaap, Girbes, Armand R.J., and Groeneveld, A.B. Johan
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- 2007
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39. Cardiac response is greater for colloid than saline fluid loading after cardiac or vascular surgery
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Verheij, Joanne, van Lingen, Arthur, Beishuizen, Albertus, Christiaans, Herman M.T., de Jong, Jan R., Girbes, Armand R.J., Wisselink, Willem, Rauwerda, Jan A., Huybregts, Marinus A.J.M., and Groeneveld, A.B. Johan
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Colloids in medicine -- Health aspects -- Comparative analysis ,Cardiovascular system -- Surgery ,Physiologic salines -- Health aspects -- Comparative analysis ,Health care industry - Abstract
Abstract Objective: To study the effects on volume expansion and myocardial function of colloids or crystalloids in the treatment of hypovolaemic hypotension after cardiac and major vascular surgery. Design and [...]
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- 2006
40. Red blood cell transfusion compared with gelatin solution and no infusion after cardiac surgery: effect on microvascular perfusion, vascular density, hemoglobin, and oxygen saturation
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Atasever, Bektaş, van der Kuil, Marjolein, Boer, Christa, Vonk, Alexander, Schwarte, Lothar, Girbes, Armand R.J., Ince, Can, Beishuizen, Albertus, and Groeneveld, Johan A.B.
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- 2012
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41. Lung ultrasound findings in patients with novel SARS-CoV-2
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Haaksma, Mark E., primary, Heldeweg, Micah L.A., additional, Lopez Matta, Jorge E., additional, Smit, Jasper M., additional, van Trigt, Jessica D., additional, Nooitgedacht, Jip S., additional, Elzo Kraemer, Carlos V., additional, van de Wiel, Mark, additional, Girbes, Armand R.J., additional, Heunks, Leo, additional, van Westerloo, David J., additional, and Tuinman, Pieter R., additional
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- 2020
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42. Association of kidney function with effectiveness of procalcitonin-guided antibiotic treatment: a patient-level meta-analysis from randomized controlled trials
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Heilmann, Eva, primary, Gregoriano, Claudia, additional, Wirz, Yannick, additional, Luyt, Charles-Edouard, additional, Wolff, Michel, additional, Chastre, Jean, additional, Tubach, Florence, additional, Christ-Crain, Mirjam, additional, Bouadma, Lila, additional, Annane, Djillali, additional, Damas, Pierre, additional, Kristoffersen, Kristina B., additional, Oliveira, Carolina F., additional, Stolz, Daiana, additional, Tamm, Michael, additional, de Jong, Evelien, additional, Reinhart, Konrad, additional, Shehabi, Yahya, additional, Verduri, Alessia, additional, Nobre, Vandack, additional, Nijsten, Maarten, additional, deLange, Dylan W., additional, van Oers, Jos A.H., additional, Beishuizen, Albertus, additional, Girbes, Armand R.J., additional, Mueller, Beat, additional, and Schuetz, Philipp, additional
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- 2020
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43. Why we should sample sparsely and aim for a higher target: Lessons from model‐based therapeutic drug monitoring of vancomycin in intensive care patients
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Guo, Tingjie, primary, Hest, Reinier M., additional, Fleuren, Lucas M., additional, Roggeveen, Luca F., additional, Bosman, Rob J., additional, Voort, Peter H.J., additional, Girbes, Armand R.J., additional, Mathot, Ron A.A., additional, Hasselt, Johan G.C., additional, and Elbers, Paul W.G., additional
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- 2020
- Full Text
- View/download PDF
44. Lung ultrasound findings in patients with novel SARS-CoV2
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Haaksma, Mark Evert, primary, Heldeweg, Micah L.A., additional, Lopez Matta, Jorge E., additional, Smit, Jasper Martijn, additional, van Trigt, Jessica D., additional, Nooitgedacht, Jip Suzanne, additional, Elzo Kraemer, Carlos V., additional, Girbes, Armand R.J., additional, Heunks, Leo M.A., additional, van Westerloo, David J., additional, and Tuinman, Pieter R., additional
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- 2020
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45. Pharmacological treatment of sepsis
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Girbes, Armand R.J., Beishuizen, Albert, and van Schijndel, Rob J.M. Strack
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- 2008
46. Hypothermia for Neonates with Hypoxic-Ischemic Encephalopathy
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Polderman, Kees H. and Girbes, Armand R.J.
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- 2006
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47. Inadequate Assessment of Patient-Ventilator Interaction Due to Suboptimal Diaphragm Electrical Activity Signal Filtering
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Jonkman, A.H., Roesthuis, L.H., Boer, E.C. de, Vries, H.J.C. de, Girbes, Armand R.J., Hoeven, J.G. van der, Tuinman, P.R., Heunks, L.M.A., Jonkman, A.H., Roesthuis, L.H., Boer, E.C. de, Vries, H.J.C. de, Girbes, Armand R.J., Hoeven, J.G. van der, Tuinman, P.R., and Heunks, L.M.A.
- Abstract
Contains fulltext : 220795.pdf (publisher's version ) (Closed access)
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- 2020
48. Inadequate assessment of patient-ventilator interaction due to suboptimal diaphragm electrical activity signal filtering
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Jonkman, Annemijn H., Roesthuis, Lisanne H., de Boer, Esmee C., de Vries, Heder J., Girbes, Armand R.J., van der Hoeven, Johannes G., Tuinman, Pieter R., Heunks, Leo M.A., Jonkman, Annemijn H., Roesthuis, Lisanne H., de Boer, Esmee C., de Vries, Heder J., Girbes, Armand R.J., van der Hoeven, Johannes G., Tuinman, Pieter R., and Heunks, Leo M.A.
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- 2020
49. Respiratory herpes simplex virus type 1 infection/colonisation in the critically ill: marker or mediator?
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van den Brink, Jan-Willem, Simoons-Smit, Alberdina M., Beishuizen, Albertus, Girbes, Armand R.J., Strack van Schijndel, Rob J.M., and Groeneveld, A.B.Johan
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- 2004
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50. Free Cortisol and Critically Ill Patients
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Polderman, Kees H., van Zanten, Arthur, and Girbes, Armand R.J.
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- 2004
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