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Validation and utility of ARDS subphenotypes identified by machine-learning models using clinical data : an observational, multicohort, retrospective analysis

Maddali, Manoj V. (författare)
Stanford University School of Medicine,University of California, San Francisco
Churpek, Matthew (författare)
University of Wisconsin-Madison
Pham, Tai (författare)
University of Paris-Saclay,Assistance Publique des Hôpitaux de Paris
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Rezoagli, Emanuele (författare)
University of Milano-Bicocca
Zhuo, Hanjing (författare)
University of California, San Francisco
Zhao, Wendi (författare)
University of California, San Francisco
He, June (författare)
Washington University in St. Louis
Delucchi, Kevin L. (författare)
University of California, San Francisco
Wang, Chunxue (författare)
Vanderbilt University Medical Center
Wickersham, Nancy (författare)
Vanderbilt University Medical Center
McNeil, J. Brennan (författare)
Vanderbilt University Medical Center
Jauregui, Alejandra (författare)
University of California, San Francisco
Ke, Serena (författare)
University of California, San Francisco
Vessel, Kathryn (författare)
University of California, San Francisco
Gomez, Antonio (författare)
San Francisco General Hospital,University of California, San Francisco
Hendrickson, Carolyn M. (författare)
San Francisco General Hospital,University of California, San Francisco
Kangelaris, Kirsten N. (författare)
University of California, San Francisco
Sarma, Aartik (författare)
University of California, San Francisco
Leligdowicz, Aleksandra (författare)
University of California, San Francisco,University of Toronto
Liu, Kathleen D. (författare)
University of California, San Francisco
Matthay, Michael A. (författare)
University of California, San Francisco
Ware, Lorraine B. (författare)
Vanderbilt University Medical Center
Laffey, John G. (författare)
Galway University Hospital,National University of Ireland Galway
Bellani, Giacomo (författare)
San Gerardo Hospital,University of Milano-Bicocca
Calfee, Carolyn S. (författare)
University of California, San Francisco
Sinha, Pratik (författare)
Washington University in St. Louis
Rios, Fernando (författare)
Van Haren, Frank (författare)
Sottiaux, T. (författare)
Lora, Fredy S. (författare)
Azevedo, Luciano C. (författare)
Depuydt, P. (författare)
Fan, Eddy (författare)
Bugedo, Guillermo (författare)
Qiu, Haibo (författare)
Gonzalez, Marcos (författare)
Silesky, Juan (författare)
Cerny, Vladimir (författare)
Nielsen, Jonas (författare)
Jibaja, Manuel (författare)
Liu, Haitao (författare)
Wang, Wei (författare)
Zhang, Fan (författare)
Liu, Jian (författare)
Li, Bin (författare)
Liu, Jing L. (författare)
Li, Yuan Y. (författare)
Oliveira, Bruno S. (författare)
Larsson, Niklas (författare)
Kander, Thomas (creator_code:cre_t)
Lund University,Lunds universitet,Klinisk forskning inom anestesi och intensivvårdsmedicin,Forskargrupper vid Lunds universitet,Clinical Research in Anaesthesia and Intensive Care Medicine,Lund University Research Groups
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 (creator_code:org_t)
 
2022
2022
Engelska.
Ingår i: The Lancet Respiratory Medicine. - 2213-2600. ; 10:4, s. 367-377
  • Tidskriftsartikel (refereegranskat)
Abstract Ämnesord
Stäng  
  • Background: Two acute respiratory distress syndrome (ARDS) subphenotypes (hyperinflammatory and hypoinflammatory) with distinct clinical and biological features and differential treatment responses have been identified using latent class analysis (LCA) in seven individual cohorts. To facilitate bedside identification of subphenotypes, clinical classifier models using readily available clinical variables have been described in four randomised controlled trials. We aimed to assess the performance of these models in observational cohorts of ARDS. Methods: In this observational, multicohort, retrospective study, we validated two machine-learning clinical classifier models for assigning ARDS subphenotypes in two observational cohorts of patients with ARDS: Early Assessment of Renal and Lung Injury (EARLI; n=335) and Validating Acute Lung Injury Markers for Diagnosis (VALID; n=452), with LCA-derived subphenotypes as the gold standard. The primary model comprised only vital signs and laboratory variables, and the secondary model comprised all predictors in the primary model, with the addition of ventilatory variables and demographics. Model performance was assessed by calculating the area under the receiver operating characteristic curve (AUC) and calibration plots, and assigning subphenotypes using a probability cutoff value of 0·5 to determine sensitivity, specificity, and accuracy of the assignments. We also assessed the performance of the primary model in EARLI using data automatically extracted from an electronic health record (EHR; EHR-derived EARLI cohort). In Large Observational Study to Understand the Global Impact of Severe Acute Respiratory Failure (LUNG SAFE; n=2813), a multinational, observational ARDS cohort, we applied a custom classifier model (with fewer variables than the primary model) to determine the prognostic value of the subphenotypes and tested their interaction with the positive end-expiratory pressure (PEEP) strategy, with 90-day mortality as the dependent variable. Findings: The primary clinical classifier model had an area under receiver operating characteristic curve (AUC) of 0·92 (95% CI 0·90–0·95) in EARLI and 0·88 (0·84–0·91) in VALID. Performance of the primary model was similar when using exclusively EHR-derived predictors compared with manually curated predictors (AUC=0·88 [95% CI 0·81–0·94] vs 0·92 [0·88–0·97]). In LUNG SAFE, 90-day mortality was higher in patients assigned the hyperinflammatory subphenotype than in those with the hypoinflammatory phenotype (414 [57%] of 725 vs 694 [33%] of 2088; p<0·0001). There was a significant treatment interaction with PEEP strategy and ARDS subphenotype (p=0·041), with lower 90-day mortality in the high PEEP group of patients with the hyperinflammatory subphenotype (hyperinflammatory subphenotype: 169 [54%] of 313 patients in the high PEEP group vs 127 [62%] of 205 patients in the low PEEP group; hypoinflammatory subphenotype: 231 [34%] of 675 patients in the high PEEP group vs 233 [32%] of 734 patients in the low PEEP group). Interpretation: Classifier models using clinical variables alone can accurately assign ARDS subphenotypes in observational cohorts. Application of these models can provide valuable prognostic information and could inform management strategies for personalised treatment, including application of PEEP, once prospectively validated. Funding: US National Institutes of Health and European Society of Intensive Care Medicine.

Ämnesord

MEDICIN OCH HÄLSOVETENSKAP  -- Klinisk medicin -- Anestesi och intensivvård (hsv//swe)
MEDICAL AND HEALTH SCIENCES  -- Clinical Medicine -- Anesthesiology and Intensive Care (hsv//eng)

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