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Operationalisation of the Randomized Embedded Multifactorial Adaptive Platform for COVID-19 trials in a low and lower-middle income critical care learning health system.
36
Zitationen
27
Autoren
2021
Jahr
Abstract
The Randomized Embedded Multifactorial Adaptive Platform (REMAP-CAP) adapted for COVID-19) trial is a global adaptive platform trial of hospitalised patients with COVID-19. We describe implementation in three countries under the umbrella of the Wellcome supported Low and Middle Income Country (LMIC) critical care network: Collaboration for Research, Implementation and Training in Asia (CCA). The collaboration sought to overcome known barriers to multi centre-clinical trials in resource-limited settings. Methods described focused on six aspects of implementation: i, Strengthening an existing community of practice; ii, Remote study site recruitment, training and support; iii, Harmonising the REMAP CAP- COVID trial with existing care processes; iv, Embedding REMAP CAP- COVID case report form into the existing CCA registry platform, v, Context specific adaptation and data management; vi, Alignment with existing pandemic and critical care research in the CCA. Methods described here may enable other LMIC sites to participate as equal partners in international critical care trials of urgent public health importance, both during this pandemic and beyond.
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Autoren
- Diptesh Aryal
- Abi Beane
- Arjen M. Dondorp
- Cameron Green
- Rashan Haniffa
- Madiha Hashmi
- Devachandran Jayakumar
- John C. Marshall
- Colin McArthur
- Srinivas Murthy
- Steven Webb
- Subhash Prasad Acharya
- Pramodya Ishani
- Issrah Jawad
- Sushil Khanal
- Kanchan Koirala
- Subekshya Luitel
- Upulee Pabasara
- Hem Raj Paneru
- Ashok Kumar
- Shoaib Siddiq Patel
- Nagarajan Ramakrishnan
- Nawal Salahuddin
- Mohiuddin Shaikh
- Timo Tolppa
- Ishara Udayanga
- Zulfiqar Umrani
Institutionen
- University of Oxford(GB)
- Mahidol Oxford Tropical Medicine Research Unit(TH)
- Monash University(AU)
- Ziauddin University(PK)
- Apollo Hospitals(IN)
- St. Michael's Hospital(CA)
- Medical Research Institute of New Zealand(NZ)
- Auckland City Hospital(NZ)
- University of British Columbia(CA)
- St John of God Hospital(AU)
- St John of God Subiaco Hospital(AU)
- The University of Western Australia(AU)
- Tribhuvan University Teaching Hospital(NP)
- National Hospital of Sri Lanka(LK)
- Grande International Hospital(NP)
- Civil Service Hospital(NP)
- Remedial Centre Hospital(PK)
- National Institute of Cardiovascular Diseases(PK)