Cargando…

Predictive models of long COVID

BACKGROUND: The cause and symptoms of long COVID are poorly understood. It is challenging to predict whether a given COVID-19 patient will develop long COVID in the future. METHODS: We used electronic health record (EHR) data from the National COVID Cohort Collaborative to predict the incidence of l...

Descripción completa

Detalles Bibliográficos
Autores principales: Antony, Blessy, Blau, Hannah, Casiraghi, Elena, Loomba, Johanna J., Callahan, Tiffany J., Laraway, Bryan J., Wilkins, Kenneth J., Antonescu, Corneliu C., Valentini, Giorgio, Williams, Andrew E., Robinson, Peter N., Reese, Justin T., Murali, T.M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10494314/
https://www.ncbi.nlm.nih.gov/pubmed/37672869
http://dx.doi.org/10.1016/j.ebiom.2023.104777
Descripción
Sumario:BACKGROUND: The cause and symptoms of long COVID are poorly understood. It is challenging to predict whether a given COVID-19 patient will develop long COVID in the future. METHODS: We used electronic health record (EHR) data from the National COVID Cohort Collaborative to predict the incidence of long COVID. We trained two machine learning (ML) models — logistic regression (LR) and random forest (RF). Features used to train predictors included symptoms and drugs ordered during acute infection, measures of COVID-19 treatment, pre-COVID comorbidities, and demographic information. We assigned the ‘long COVID’ label to patients diagnosed with the U09.9 ICD10-CM code. The cohorts included patients with (a) EHRs reported from data partners using U09.9 ICD10-CM code and (b) at least one EHR in each feature category. We analysed three cohorts: all patients (n = 2,190,579; diagnosed with long COVID = 17,036), inpatients (149,319; 3,295), and outpatients (2,041,260; 13,741). FINDINGS: LR and RF models yielded median AUROC of 0.76 and 0.75, respectively. Ablation study revealed that drugs had the highest influence on the prediction task. The SHAP method identified age, gender, cough, fatigue, albuterol, obesity, diabetes, and chronic lung disease as explanatory features. Models trained on data from one N3C partner and tested on data from the other partners had average AUROC of 0.75. INTERPRETATION: ML-based classification using EHR information from the acute infection period is effective in predicting long COVID. SHAP methods identified important features for prediction. Cross-site analysis demonstrated the generalizability of the proposed methodology. FUNDING: 10.13039/100006108NCATS U24 TR002306, 10.13039/100006108NCATS UL1 TR003015, Axle Informatics Subcontract: NCATS-P00438-B, 10.13039/100000002NIH/10.13039/100000062NIDDK/OD, PSR2015-1720GVALE_01, G43C22001320007, and Director, Office of Science, Office of Basic Energy Sciences of the 10.13039/100006120U.S. Department of Energy Contract No. DE-AC02-05CH11231.