Literature DB >> 33539312

Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study.

Sung-Yeon Cho1,2, Sung-Soo Park1,3, Dong-Gun Lee1,2, Dong-Wook Kim1,3, Min-Kyu Song4,5, Young Yi Bae1.   

Abstract

BACKGROUND: As the COVID-19 pandemic continues, an initial risk-adapted allocation is crucial for managing medical resources and providing intensive care.
OBJECTIVE: In this study, we aimed to identify factors that predict the overall survival rate for COVID-19 cases and develop a COVID-19 prognosis score (COPS) system based on these factors. In addition, disease severity and the length of hospital stay for patients with COVID-19 were analyzed.
METHODS: We retrospectively analyzed a nationwide cohort of laboratory-confirmed COVID-19 cases between January and April 2020 in Korea. The cohort was split randomly into a development cohort and a validation cohort with a 2:1 ratio. In the development cohort (n=3729), we tried to identify factors associated with overall survival and develop a scoring system to predict the overall survival rate by using parameters identified by the Cox proportional hazard regression model with bootstrapping methods. In the validation cohort (n=1865), we evaluated the prediction accuracy using the area under the receiver operating characteristic curve. The score of each variable in the COPS system was rounded off following the log-scaled conversion of the adjusted hazard ratio.
RESULTS: Among the 5594 patients included in this analysis, 234 (4.2%) died after receiving a COVID-19 diagnosis. In the development cohort, six parameters were significantly related to poor overall survival: older age, dementia, chronic renal failure, dyspnea, mental disturbance, and absolute lymphocyte count <1000/mm3. The following risk groups were formed: low-risk (score 0-2), intermediate-risk (score 3), high-risk (score 4), and very high-risk (score 5-7) groups. The COPS system yielded an area under the curve value of 0.918 for predicting the 14-day survival rate and 0.896 for predicting the 28-day survival rate in the validation cohort. Using the COPS system, 28-day survival rates were discriminatively estimated at 99.8%, 95.4%, 82.3%, and 55.1% in the low-risk, intermediate-risk, high-risk, and very high-risk groups, respectively, of the total cohort (P<.001). The length of hospital stay and disease severity were directly associated with overall survival (P<.001), and the hospital stay duration was significantly longer among survivors (mean 26.1, SD 10.7 days) than among nonsurvivors (mean 15.6, SD 13.3 days).
CONCLUSIONS: The newly developed predictive COPS system may assist in making risk-adapted decisions for the allocation of medical resources, including intensive care, during the COVID-19 pandemic. ©Sung-Yeon Cho, Sung-Soo Park, Min-Kyu Song, Young Yi Bae, Dong-Gun Lee, Dong-Wook Kim. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 22.02.2021.

Entities:  

Keywords:  COVID-19; allocation; cohort; decision making; digital health; disease management; intensive care; length of stay; mortality; prediction; prognosis; risk; triage

Year:  2021        PMID: 33539312     DOI: 10.2196/26257

Source DB:  PubMed          Journal:  J Med Internet Res        ISSN: 1438-8871            Impact factor:   5.428


  5 in total

1.  External validation of the 4C Mortality Score for hospitalised patients with COVID-19 in the RECOVER network.

Authors:  Alexandra June Gordon; Prasanthi Govindarajan; Christopher L Bennett; Loretta Matheson; Michael A Kohn; Carlos Camargo; Jeffrey Kline
Journal:  BMJ Open       Date:  2022-04-21       Impact factor: 3.006

2.  A Scalable Risk-Scoring System Based on Consumer-Grade Wearables for Inpatients With COVID-19: Statistical Analysis and Model Development.

Authors:  Simon Föll; Adrian Lison; Martin Maritsch; Karsten Klingberg; Vera Lehmann; Thomas Züger; David Srivastava; Sabrina Jegerlehner; Stefan Feuerriegel; Elgar Fleisch; Aristomenis Exadaktylos; Felix Wortmann
Journal:  JMIR Form Res       Date:  2022-06-21

3.  Development and Validation of Clinical Prediction Models to Estimate the Probability of Death in Hospitalized Patients with COVID-19: Insights from a Nationwide Database.

Authors:  Banu Cakir
Journal:  J Med Virol       Date:  2021-04-23       Impact factor: 20.693

4.  The CCEDRRN COVID-19 Mortality Score to predict death among nonpalliative patients with COVID-19 presenting to emergency departments: a derivation and validation study.

Authors:  Corinne M Hohl; Rhonda J Rosychuk; Patrick M Archambault; Fiona O'Sullivan; Murdoch Leeies; Éric Mercier; Gregory Clark; Grant D Innes; Steven C Brooks; Jake Hayward; Vi Ho; Tomislav Jelic; Michelle Welsford; Marco L A Sivilotti; Laurie J Morrison; Jeffrey J Perry
Journal:  CMAJ Open       Date:  2022-02-08

5.  Clinical features and predictors of mortality among hospitalized patients with COVID-19 in Niger.

Authors:  Patrick D M C Katoto; Issoufou Aboubacar; Batouré Oumarou; Eric Adehossi; Blanche-Philomene Melanga Anya; Aida Mounkaila; Adamou Moustapha; El Khalef Ishagh; Gbaguidi Aichatou Diawara; Biey Joseph Nsiari-Muzeyi; Tambwe Didier; Charles Shey Wiysonge
Journal:  Confl Health       Date:  2021-12-14       Impact factor: 2.723

  5 in total

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