Cargando…

A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients

INTRODUCTION: Early determination of COVID-19 severity and health outcomes could facilitate better treatment of patients. Different methods and tools have been developed for predicting outcomes of COVID-19, but they are difficult to use in routine clinical practice. METHODS: We conducted a prospecti...

Descripción completa

Detalles Bibliográficos
Autores principales: Merkin, Alexander, Akinfieva, Sofya, Medvedev, Oleg N., Krishnamurthi, Rita, Gutsaluk, Alexey, Reips, Ulf-Dietrich, Kuliev, Rufat, Dinov, Evgeny, Nikiforov, Igor, Shamalov, Nikolay, Shafran, Polina, Popova, Lyudmila, Burenchev, Dmitry, Feigin, Valery
Formato: Online Artículo Texto
Lenguaje:English
Publicado: S. Karger AG 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10007710/
https://www.ncbi.nlm.nih.gov/pubmed/36702110
http://dx.doi.org/10.1159/000529277
_version_ 1784905589343649792
author Merkin, Alexander
Akinfieva, Sofya
Medvedev, Oleg N.
Krishnamurthi, Rita
Gutsaluk, Alexey
Reips, Ulf-Dietrich
Kuliev, Rufat
Dinov, Evgeny
Nikiforov, Igor
Shamalov, Nikolay
Shafran, Polina
Popova, Lyudmila
Burenchev, Dmitry
Feigin, Valery
author_facet Merkin, Alexander
Akinfieva, Sofya
Medvedev, Oleg N.
Krishnamurthi, Rita
Gutsaluk, Alexey
Reips, Ulf-Dietrich
Kuliev, Rufat
Dinov, Evgeny
Nikiforov, Igor
Shamalov, Nikolay
Shafran, Polina
Popova, Lyudmila
Burenchev, Dmitry
Feigin, Valery
author_sort Merkin, Alexander
collection PubMed
description INTRODUCTION: Early determination of COVID-19 severity and health outcomes could facilitate better treatment of patients. Different methods and tools have been developed for predicting outcomes of COVID-19, but they are difficult to use in routine clinical practice. METHODS: We conducted a prospective cohort study of inpatients aged 20–92 years, diagnosed with COVID-19 to determine whether their individual 5-year absolute risk of stroke at the time of hospital admission predicts the course of COVID-19 severity and mortality. The risk of stroke was determined by the Stroke Riskometer mobile application. RESULTS: We examined 385 patients hospitalized with COVID-19 (median age 61 years). The participants were categorized based on COVID-19 severity: 271 (70.4%) to the “not severe” and 114 (29.6%) to the “severe” groups. The median risk of stroke the next day after hospitalization was significantly higher among patients in the severe group (2.83, 95% CI: 2.35–4.68) versus the not severe group (1.11, 95% CI: 1.00–1.29). The median risk of stroke and median systolic blood pressure (SBP) were significantly higher among non-survivors (12.04, 95% CI: 2.73–21.19) and (150, 95% CI: 140–170) versus survivors (1.31, 95% CI: 1.14–1.52) and (134, 95% CI: 130–135), respectively. Those who spent more than 2.5 h a week on physical activity were 3.1 times more likely to survive from COVID-19. Those who consumed more than one standard alcohol drink a day, or suffered with atrial fibrillation, or had poor memory were 2.5, 2.3, and 2.6 times more likely not to survive from COVID-19, respectively. CONCLUSIONS: High risk of stroke, physical inactivity, alcohol intake, high SBP, and atrial fibrillation are associated with severity and mortality of COVID-19. Our findings suggest that the Stroke Riskometer app could be used as a simple predictive tool of COVID-19 severity and mortality.
format Online
Article
Text
id pubmed-10007710
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher S. Karger AG
record_format MEDLINE/PubMed
spelling pubmed-100077102023-03-12 A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients Merkin, Alexander Akinfieva, Sofya Medvedev, Oleg N. Krishnamurthi, Rita Gutsaluk, Alexey Reips, Ulf-Dietrich Kuliev, Rufat Dinov, Evgeny Nikiforov, Igor Shamalov, Nikolay Shafran, Polina Popova, Lyudmila Burenchev, Dmitry Feigin, Valery Cerebrovasc Dis Extra Original Paper INTRODUCTION: Early determination of COVID-19 severity and health outcomes could facilitate better treatment of patients. Different methods and tools have been developed for predicting outcomes of COVID-19, but they are difficult to use in routine clinical practice. METHODS: We conducted a prospective cohort study of inpatients aged 20–92 years, diagnosed with COVID-19 to determine whether their individual 5-year absolute risk of stroke at the time of hospital admission predicts the course of COVID-19 severity and mortality. The risk of stroke was determined by the Stroke Riskometer mobile application. RESULTS: We examined 385 patients hospitalized with COVID-19 (median age 61 years). The participants were categorized based on COVID-19 severity: 271 (70.4%) to the “not severe” and 114 (29.6%) to the “severe” groups. The median risk of stroke the next day after hospitalization was significantly higher among patients in the severe group (2.83, 95% CI: 2.35–4.68) versus the not severe group (1.11, 95% CI: 1.00–1.29). The median risk of stroke and median systolic blood pressure (SBP) were significantly higher among non-survivors (12.04, 95% CI: 2.73–21.19) and (150, 95% CI: 140–170) versus survivors (1.31, 95% CI: 1.14–1.52) and (134, 95% CI: 130–135), respectively. Those who spent more than 2.5 h a week on physical activity were 3.1 times more likely to survive from COVID-19. Those who consumed more than one standard alcohol drink a day, or suffered with atrial fibrillation, or had poor memory were 2.5, 2.3, and 2.6 times more likely not to survive from COVID-19, respectively. CONCLUSIONS: High risk of stroke, physical inactivity, alcohol intake, high SBP, and atrial fibrillation are associated with severity and mortality of COVID-19. Our findings suggest that the Stroke Riskometer app could be used as a simple predictive tool of COVID-19 severity and mortality. S. Karger AG 2023-01-26 /pmc/articles/PMC10007710/ /pubmed/36702110 http://dx.doi.org/10.1159/000529277 Text en © 2023 The Author(s). Published by S. Karger AG, Basel https://creativecommons.org/licenses/by-nc/4.0/This article is licensed under the Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC) (http://www.karger.com/Services/OpenAccessLicense). Usage and distribution for commercial purposes requires written permission.
spellingShingle Original Paper
Merkin, Alexander
Akinfieva, Sofya
Medvedev, Oleg N.
Krishnamurthi, Rita
Gutsaluk, Alexey
Reips, Ulf-Dietrich
Kuliev, Rufat
Dinov, Evgeny
Nikiforov, Igor
Shamalov, Nikolay
Shafran, Polina
Popova, Lyudmila
Burenchev, Dmitry
Feigin, Valery
A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients
title A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients
title_full A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients
title_fullStr A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients
title_full_unstemmed A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients
title_short A Pilot Study of Application of the Stroke Riskometer Mobile App for Assessment of the Course and Clinical Outcomes of COVID-19 among Hospitalized Patients
title_sort pilot study of application of the stroke riskometer mobile app for assessment of the course and clinical outcomes of covid-19 among hospitalized patients
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10007710/
https://www.ncbi.nlm.nih.gov/pubmed/36702110
http://dx.doi.org/10.1159/000529277
work_keys_str_mv AT merkinalexander apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT akinfievasofya apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT medvedevolegn apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT krishnamurthirita apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT gutsalukalexey apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT reipsulfdietrich apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT kulievrufat apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT dinovevgeny apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT nikiforovigor apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT shamalovnikolay apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT shafranpolina apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT popovalyudmila apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT burenchevdmitry apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT feiginvalery apilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT merkinalexander pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT akinfievasofya pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT medvedevolegn pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT krishnamurthirita pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT gutsalukalexey pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT reipsulfdietrich pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT kulievrufat pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT dinovevgeny pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT nikiforovigor pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT shamalovnikolay pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT shafranpolina pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT popovalyudmila pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT burenchevdmitry pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients
AT feiginvalery pilotstudyofapplicationofthestrokeriskometermobileappforassessmentofthecourseandclinicaloutcomesofcovid19amonghospitalizedpatients