Control of Confounding and Reporting of Results in Causal Inference Studies. Guidance for Authors from Editors of Respiratory, Sleep, and Critical Care Journals
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J. Crapo | A. Sheikh | R. Bellomo | J. Bakker | S. Chokroverty | J. Vincent | R. Szczesniak | C. Akdis | T. Iwashyna | V. Brusasco | N. Collop | F. Herth | P. Mazzone | D. Ost | N. Punjabi | S. Suissa | J. Bernstein | D. Maslove | G. Marks | D. Riemann | R. Branson | T. Noah | A. Adjei | G. Jenkins | M. Kolb | É. Azoulay | P. Bardin | T. Buchman | E. Barreiro | E. Swenson | S. Bell | M. Schatz | L. Hale | A. Smyth | J. Teboul | G. Sotgiu | P. Stewart | R. Szymusiak | N. Hart | D. Fitzgerald | D. Lederer | J. Chalmers | R. Marshall | Z. Ballas | J. Moorman | T. Murphy | Paul R Reynolds | R. Russell | R. Moorman | A. Sheikh | S. Bell
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