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Fundação Oswaldo Cruz; Universidad de Costa Rica; National and Kapodistrian University of Athens; Birjand University of Medical Sciences; Qazvin University of Medical Sciences; Guilan University of Medical Sciences; Universitair Medisch Centrum Groningen; Griffith University; Ahvaz Jundishapur University of Medical Sciences; University of Ottawa; Sichuan University; Chinese University of Hong Kong; University of California, San Diego; Vital Strategies; Hamadan University of Medical Sciences; Universiti Sains Malaysia; Mekelle University; Universiteit Stellenbosch; Chinese Center for Disease Control and Prevention; Tabriz University of Medical Sciences; Universidad Autónoma Metropolitana; Seoul National University Hospital; Shiraz University of Medical Sciences; Università degli Studi di Firenze; Karolinska Institutet; King Khalid University; Universiti Malaya; Isfahan University of Medical Sciences; Ministry of Health and Medical Education; Karl-Franzens-Universität Graz; Universitat de València; Hebrew University of Jerusalem; Georg-August-Universität Göttingen; Case Western Reserve University; Fudan University; Kyung Hee University; Tarbiat Modares University; Hacettepe Üniversitesi; U.S. Department of Veterans Affairs; Kosin University; Sun Yat-sen University; North-West University; Simmons College; Jordan University of Science and Technology; Chest Research Foundation; King Saud University; International Centre for Diarrhoeal Disease Research, Bangladesh; Washington University in St. Louis; Monash University; University of Washington; Rijksuniversiteit Groningen; Shahid Beheshti University of Medical Sciences; Golestan University of Medical Sciences; Univerzita Komenského v Bratislave; Cardiff University; Indian Council of Medical Research; University College London; University of Southampton; Lomonosov Moscow State University; University of Queensland; National Institute for Health and Care Research; Wellcome Trust; Korea University; Cochrane South Africa; Public Health England; Imperial College London; University of Toronto; University of Louisville; National Natural Science Foundation of China; Sanjay Gandhi Postgraduate Institute of Medical Sciences; University of Canberra; University of Namibia; Maragheh University of Medical Sciences; Brien Holden Vision Institute; Krishna Institute Of Medical Sciences Deemed To Be University; Directorate for Biological Sciences; Debre Markos University; Politechnika Czestochowska; Bundesministerium für Gesundheit; South African Medical Research Council; University of Pittsburgh; Tribhuvan University; NIHR Oxford Biomedical Research Centre; Universität Ulm; Chalmers Tekniska Högskola; Bournemouth University; Loma Linda University; University of Embu; Taipei Medical University; University College Cork; University of Rwanda; Trường Đại học Nguyễn Tất Thành; Central University of Tamil Nadu; Queensland Brain Institute; Newcastle University; Universitas Negeri Semarang; University of Tabriz; Ahmadu Bello University; Yonsei University; 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