Investigating phenotypes of pulmonary COVID-19 recovery: A longitudinal observational prospective multicenter trial

Author:

Sonnweber Thomas1ORCID,Tymoszuk Piotr1ORCID,Sahanic Sabina1,Boehm Anna1,Pizzini Alex1,Luger Anna2ORCID,Schwabl Christoph2,Nairz Manfred1,Grubwieser Philipp1,Kurz Katharina1,Koppelstätter Sabine1,Aichner Magdalena1,Puchner Bernhard3,Egger Alexander4,Hoermann Gregor45,Wöll Ewald6,Weiss Günter1,Widmann Gerlig2,Tancevski Ivan1ORCID,Löffler-Ragg Judith1ORCID

Affiliation:

1. Department of Internal Medicine II, Medical University of Innsbruck

2. Department of Radiology, Medical University of Innsbruck

3. The Karl Landsteiner Institute

4. Central Institute of Medical and Chemical Laboratory Diagnostics, University Hospital Innsbruck

5. Munich Leukemia Laboratory

6. Department of Internal Medicine, St. Vinzenz Hospital

Abstract

Background:The optimal procedures to prevent, identify, monitor, and treat long-term pulmonary sequelae of COVID-19 are elusive. Here, we characterized the kinetics of respiratory and symptom recovery following COVID-19.Methods:We conducted a longitudinal, multicenter observational study in ambulatory and hospitalized COVID-19 patients recruited in early 2020 (n = 145). Pulmonary computed tomography (CT) and lung function (LF) readouts, symptom prevalence, and clinical and laboratory parameters were collected during acute COVID-19 and at 60, 100, and 180 days follow-up visits. Recovery kinetics and risk factors were investigated by logistic regression. Classification of clinical features and participants was accomplished by unsupervised and semi-supervised multiparameter clustering and machine learning.Results:At the 6-month follow-up, 49% of participants reported persistent symptoms. The frequency of structural lung CT abnormalities ranged from 18% in the mild outpatient cases to 76% in the intensive care unit (ICU) convalescents. Prevalence of impaired LF ranged from 14% in the mild outpatient cases to 50% in the ICU survivors. Incomplete radiological lung recovery was associated with increased anti-S1/S2 antibody titer, IL-6, and CRP levels at the early follow-up. We demonstrated that the risk of perturbed pulmonary recovery could be robustly estimated at early follow-up by clustering and machine learning classifiers employing solely non-CT and non-LF parameters.Conclusions:The severity of acute COVID-19 and protracted systemic inflammation is strongly linked to persistent structural and functional lung abnormality. Automated screening of multiparameter health record data may assist in the prediction of incomplete pulmonary recovery and optimize COVID-19 follow-up management.Funding:The State of Tyrol (GZ 71934), Boehringer Ingelheim/Investigator initiated study (IIS 1199-0424).Clinical trial number:ClinicalTrials.gov: NCT04416100

Funder

Land Tirol

Boehringer Ingelheim

Publisher

eLife Sciences Publications, Ltd

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

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