Please use this identifier to cite or link to this item: http://repo.knmu.edu.ua/handle/123456789/33208
Title: A Prognostic Model and Pre-Discharge Predictors of Post-COVID-19 Syndrome After Hospitalization for SARS-CoV-2 Infection
Authors: Honchar, Oleksii
Ashcheulova, Tetiana
Гончарь, Олексій Володимирович
Ащеулова, Тетяна Вадимівна
Chumachenko, Tetyana
Чумаченко, Тетяна Олександрівна
Chumachenko, Dmytro
Чумаченко, Дмитро Ігоревич
Bobeiko, Alla
Бобейко, Алла Євгенівна
Khodosh, Eduard
Ходош, Едуард Михайлович
Blazhko, Viktor
Блажко, Віктор Іванович
Matiash, Nataliia
Матяш, Наталія Михайлівна
Ambrosova, Tetiana
Амбросова, Тетяна Миколаївна
Herasymchuk, Nina
Герасимчук, Ніна Миколаївна
Kochubiei, Oksana
Кочубєй, Оксана Анатоліївна
Smyrnova, Viktoriia
Смирнова, Вікторія Іванівна
Keywords: COVID-19
hospitalization
convalescence
echocardiography
post-acute COVID-19 syndrome
walk test
clinical decision rules
machine learning
2023а
Issue Date: Nov-2023
Publisher: Frontiers Media S.A.
Citation: Prognostic Model and Pre-Discharge Predictors of Post-COVID-19 Syndrome After Hospitalization for SARS-CoV-2 Infection / O. Honchar, T. Ashcheulova, T. Chumachenko, D. Chumachenko [et al.] // Frontiers in Public Health. ─ 2023. ─ Volume 11. ─ 1276211. ─ doi: 10.3389/fpubh.2023.1276211.
Abstract: Background. Post-COVID-19 syndrome (PCS) has been increasingly recognized as an emerging problem: 50% of patients report ongoing symptoms 1 year after acute infection, with most typical manifestations (fatigue, dyspnea, psychiatric and neurological symptoms) having potentially debilitating effect. Early identification of high-risk candidates for PCS development would facilitate the optimal use of resources directed to rehabilitation of COVID-19 convalescents. Objective. To study the in-hospital clinical characteristics of COVID-19 survivors presenting with self-reported PCS at 3 months and to identify the early predictors of its development. Methods. 221 hospitalized COVID-19 patients underwent symptoms assessment, 6-minute walk test, and echocardiography pre-discharge and at 1 month; presence of PCS was assessed 3 months after discharge. Unsupervised machine learning was used to build a SANN-based binary classification model of PCS development. Results. PCS at 3 months has been detected in 75% patients. Higher symptoms level in the PCS group was not associated with worse physical functional recovery or significant echocardiographic changes. Despite identification of a set of pre-discharge predictors, inclusion of parameters obtained at 1 month proved necessary to obtain a high accuracy model of PCS development, with inputs list including age, sex, inhospital levels of CRP, eGFR and need for oxygen supplementation, and level of post-exertional symptoms at 1 month after discharge (fatigue and dyspnea in 6MWT and MRC Dyspnea score). Conclusions. Hospitalized COVID-19 survivors at 3 months were characterized by 75% prevalence of PCS, the development of which could be predicted with an 89% accuracy using the derived neural network-based classification model.
Description: Honchar O, Ashcheulova T, Chumachenko T, Chumachenko D, Bobeiko A, Blazhko V, et al. A prognostic model and pre-discharge predictors of post-COVID-19 syndrome after hospitalization for SARS-CoV-2 infection. Front Public Health. (2023) 11:1276211. doi: 10.3389/fpubh.2023.1276211
URI: http://repo.knmu.edu.ua/handle/123456789/33208
Appears in Collections:Наукові праці. Кафедра епідеміології
Наукові праці. Кафедра пропедевтики внутрішньої медицини № 1, основ біоетики та біобезпеки

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