Literature DB >> 33476281

A Machine Learning Prediction Model of Respiratory Failure Within 48 Hours of Patient Admission for COVID-19: Model Development and Validation.

Douglas Barnaby1, Theodoros P Zanos1, Siavash Bolourani1, Max Brenner1, Ping Wang1, Thomas McGinn1, Jamie S Hirsch1.   

Abstract

BACKGROUND: Predicting early respiratory failure due to COVID-19 can help triage patients to higher levels of care, allocate scarce resources, and reduce morbidity and mortality by appropriately monitoring and treating the patients at greatest risk for deterioration. Given the complexity of COVID-19, machine learning approaches may support clinical decision making for patients with this disease.
OBJECTIVE: Our objective is to derive a machine learning model that predicts respiratory failure within 48 hours of admission based on data from the emergency department.
METHODS: Data were collected from patients with COVID-19 who were admitted to Northwell Health acute care hospitals and were discharged, died, or spent a minimum of 48 hours in the hospital between March 1 and May 11, 2020. Of 11,525 patients, 933 (8.1%) were placed on invasive mechanical ventilation within 48 hours of admission. Variables used by the models included clinical and laboratory data commonly collected in the emergency department. We trained and validated three predictive models (two based on XGBoost and one that used logistic regression) using cross-hospital validation. We compared model performance among all three models as well as an established early warning score (Modified Early Warning Score) using receiver operating characteristic curves, precision-recall curves, and other metrics.
RESULTS: The XGBoost model had the highest mean accuracy (0.919; area under the curve=0.77), outperforming the other two models as well as the Modified Early Warning Score. Important predictor variables included the type of oxygen delivery used in the emergency department, patient age, Emergency Severity Index level, respiratory rate, serum lactate, and demographic characteristics.
CONCLUSIONS: The XGBoost model had high predictive accuracy, outperforming other early warning scores. The clinical plausibility and predictive ability of XGBoost suggest that the model could be used to predict 48-hour respiratory failure in admitted patients with COVID-19. ©Siavash Bolourani, Max Brenner, Ping Wang, Thomas McGinn, Jamie S Hirsch, Douglas Barnaby, Theodoros P Zanos, Northwell COVID-19 Research Consortium. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 10.02.2021.

Entities:  

Keywords:  COVID-19; artificial intelligence; development; machine learning; model; modeling; pandemic; prognostic; severe acute respiratory syndrome coronavirus 2; validation

Mesh:

Year:  2021        PMID: 33476281      PMCID: PMC7879728          DOI: 10.2196/24246

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


  31 in total

1.  Validation of a modified Early Warning Score in medical admissions.

Authors:  C P Subbe; M Kruger; P Rutherford; L Gemmel
Journal:  QJM       Date:  2001-10

2.  Delayed admission to ICU in acute respiratory failure: Critical time for critical conditions.

Authors:  Sibel Ocak Serin; Gulsah Karaoren; Antonio M Esquinas
Journal:  Am J Emerg Med       Date:  2017-04-14       Impact factor: 2.469

Review 3.  Writing Arden Syntax Medical Logic Modules.

Authors:  G Hripcsak
Journal:  Comput Biol Med       Date:  1994-09       Impact factor: 4.589

4.  Machine Learning for Predicting Outcomes in Trauma.

Authors:  Nehemiah T Liu; Jose Salinas
Journal:  Shock       Date:  2017-11       Impact factor: 3.454

5.  Multicenter Comparison of Machine Learning Methods and Conventional Regression for Predicting Clinical Deterioration on the Wards.

Authors:  Matthew M Churpek; Trevor C Yuen; Christopher Winslow; David O Meltzer; Michael W Kattan; Dana P Edelson
Journal:  Crit Care Med       Date:  2016-02       Impact factor: 7.598

6.  Beware of the second wave of COVID-19.

Authors:  Shunqing Xu; Yuanyuan Li
Journal:  Lancet       Date:  2020-04-08       Impact factor: 79.321

7.  Machine learning to assist clinical decision-making during the COVID-19 pandemic.

Authors:  Shubham Debnath; Douglas P Barnaby; Kevin Coppa; Alexander Makhnevich; Eun Ji Kim; Saurav Chatterjee; Viktor Tóth; Todd J Levy; Marc D Paradis; Stuart L Cohen; Jamie S Hirsch; Theodoros P Zanos
Journal:  Bioelectron Med       Date:  2020-07-10

8.  Machine learning in predicting respiratory failure in patients with COVID-19 pneumonia-Challenges, strengths, and opportunities in a global health emergency.

Authors:  Davide Ferrari; Jovana Milic; Roberto Tonelli; Francesco Ghinelli; Marianna Meschiari; Sara Volpi; Matteo Faltoni; Giacomo Franceschi; Vittorio Iadisernia; Dina Yaacoub; Giacomo Ciusa; Erica Bacca; Carlotta Rogati; Marco Tutone; Giulia Burastero; Alessandro Raimondi; Marianna Menozzi; Erica Franceschini; Gianluca Cuomo; Luca Corradi; Gabriella Orlando; Antonella Santoro; Margherita Digaetano; Cinzia Puzzolante; Federica Carli; Vanni Borghi; Andrea Bedini; Riccardo Fantini; Luca Tabbì; Ivana Castaniere; Stefano Busani; Enrico Clini; Massimo Girardis; Mario Sarti; Andrea Cossarizza; Cristina Mussini; Federica Mandreoli; Paolo Missier; Giovanni Guaraldi
Journal:  PLoS One       Date:  2020-11-12       Impact factor: 3.240

9.  Comparison of risk prediction scoring systems for ward patients: a retrospective nested case-control study.

Authors:  Shun Yu; Sharon Leung; Moonseong Heo; Graciela J Soto; Ronak T Shah; Sampath Gunda; Michelle Ng Gong
Journal:  Crit Care       Date:  2014-06-26       Impact factor: 9.097

10.  Multicenter derivation and validation of an early warning score for acute respiratory failure or death in the hospital.

Authors:  Mikhail A Dziadzko; Paul J Novotny; Jeff Sloan; Ognjen Gajic; Vitaly Herasevich; Parsa Mirhaji; Yiyuan Wu; Michelle Ng Gong
Journal:  Crit Care       Date:  2018-10-30       Impact factor: 9.097

View more
  20 in total

1.  Predictive modeling for COVID-19 readmission risk using machine learning algorithms.

Authors:  Mostafa Shanbehzadeh; Azita Yazdani; Mohsen Shafiee; Hadi Kazemi-Arpanahi
Journal:  BMC Med Inform Decis Mak       Date:  2022-05-20       Impact factor: 3.298

2.  Comparing machine learning algorithms for predicting ICU admission and mortality in COVID-19.

Authors:  Ashish Verma; Ankit B Patel; Sonu Subudhi; C Corey Hardin; Melin J Khandekar; Hang Lee; Dustin McEvoy; Triantafyllos Stylianopoulos; Lance L Munn; Sayon Dutta; Rakesh K Jain
Journal:  NPJ Digit Med       Date:  2021-05-21

3.  Machine Learning Models for Predicting the Occurrence of Respiratory Diseases Using Climatic and Air-Pollution Factors.

Authors:  Yunseo Ku; Soon Bin Kwon; Jeong-Hwa Yoon; Seog-Kyun Mun; Munyoung Chang
Journal:  Clin Exp Otorhinolaryngol       Date:  2022-01-07       Impact factor: 3.340

4.  Machine Learning Based Clinical Decision Support System for Early COVID-19 Mortality Prediction.

Authors:  Akshaya Karthikeyan; Akshit Garg; P K Vinod; U Deva Priyakumar
Journal:  Front Public Health       Date:  2021-05-12

5.  Expert-augmented automated machine learning optimizes hemodynamic predictors of spinal cord injury outcome.

Authors:  Austin Chou; Abel Torres-Espin; Nikos Kyritsis; J Russell Huie; Sarah Khatry; Jeremy Funk; Jennifer Hay; Andrew Lofgreen; Rajiv Shah; Chandler McCann; Lisa U Pascual; Edilberto Amorim; Philip R Weinstein; Geoffrey T Manley; Sanjay S Dhall; Jonathan Z Pan; Jacqueline C Bresnahan; Michael S Beattie; William D Whetstone; Adam R Ferguson
Journal:  PLoS One       Date:  2022-04-07       Impact factor: 3.240

6.  Disease-Course Adapting Machine Learning Prognostication Models in Elderly Patients Critically Ill With COVID-19: Multicenter Cohort Study With External Validation.

Authors:  Christian Jung; Behrooz Mamandipoor; Jesper Fjølner; Raphael Romano Bruno; Bernhard Wernly; Antonio Artigas; Bernardo Bollen Pinto; Joerg C Schefold; Georg Wolff; Malte Kelm; Michael Beil; Sigal Sviri; Peter V van Heerden; Wojciech Szczeklik; Miroslaw Czuczwar; Muhammed Elhadi; Michael Joannidis; Sandra Oeyen; Tilemachos Zafeiridis; Brian Marsh; Finn H Andersen; Rui Moreno; Maurizio Cecconi; Susannah Leaver; Dylan W De Lange; Bertrand Guidet; Hans Flaatten; Venet Osmani
Journal:  JMIR Med Inform       Date:  2022-03-31

7.  Early Prediction of COVID-19 Ventilation Requirement and Mortality from Routinely Collected Baseline Chest Radiographs, Laboratory, and Clinical Data with Machine Learning.

Authors:  Abdulrhman Fahad Aljouie; Ahmed Almazroa; Yahya Bokhari; Mohammed Alawad; Ebrahim Mahmoud; Eman Alawad; Ali Alsehawi; Mamoon Rashid; Lamya Alomair; Shahad Almozaai; Bedoor Albesher; Hassan Alomaish; Rayyan Daghistani; Naif Khalaf Alharbi; Manal Alaamery; Mohammad Bosaeed; Hesham Alshaalan
Journal:  J Multidiscip Healthc       Date:  2021-07-30

8.  The Development and Validation of Simplified Machine Learning Algorithms to Predict Prognosis of Hospitalized Patients With COVID-19: Multicenter, Retrospective Study.

Authors:  Fang He; John H Page; Kerry R Weinberg; Anirban Mishra
Journal:  J Med Internet Res       Date:  2022-01-21       Impact factor: 5.428

9.  Predicting prognosis in COVID-19 patients using machine learning and readily available clinical data.

Authors:  Thomas W Campbell; Melissa P Wilson; Heinrich Roder; Samantha MaWhinney; Robert W Georgantas; Laura K Maguire; Joanna Roder; Kristine M Erlandson
Journal:  Int J Med Inform       Date:  2021-09-23       Impact factor: 4.046

10.  Does COVID-19 Clinical Status Associate with Outcome Severity? An Unsupervised Machine Learning Approach for Knowledge Extraction.

Authors:  Eleni Karlafti; Athanasios Anagnostis; Evangelia Kotzakioulafi; Michaela Chrysanthi Vittoraki; Ariadni Eufraimidou; Kristine Kasarjyan; Katerina Eufraimidou; Georgia Dimitriadou; Chrisovalantis Kakanis; Michail Anthopoulos; Georgia Kaiafa; Christos Savopoulos; Triantafyllos Didangelos
Journal:  J Pers Med       Date:  2021-12-17
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.