Literature DB >> 33534724

Learning From Past Respiratory Infections to Predict COVID-19 Outcomes: Retrospective Study.

Shengtian Sang1, Ran Sun1, Jean Coquet1, Harris Carmichael2, Tina Seto3, Tina Hernandez-Boussard1.   

Abstract

BACKGROUND: For the clinical care of patients with well-established diseases, randomized trials, literature, and research are supplemented with clinical judgment to understand disease prognosis and inform treatment choices. In the void created by a lack of clinical experience with COVID-19, artificial intelligence (AI) may be an important tool to bolster clinical judgment and decision making. However, a lack of clinical data restricts the design and development of such AI tools, particularly in preparation for an impending crisis or pandemic.
OBJECTIVE: This study aimed to develop and test the feasibility of a "patients-like-me" framework to predict the deterioration of patients with COVID-19 using a retrospective cohort of patients with similar respiratory diseases.
METHODS: Our framework used COVID-19-like cohorts to design and train AI models that were then validated on the COVID-19 population. The COVID-19-like cohorts included patients diagnosed with bacterial pneumonia, viral pneumonia, unspecified pneumonia, influenza, and acute respiratory distress syndrome (ARDS) at an academic medical center from 2008 to 2019. In total, 15 training cohorts were created using different combinations of the COVID-19-like cohorts with the ARDS cohort for exploratory purposes. In this study, two machine learning models were developed: one to predict invasive mechanical ventilation (IMV) within 48 hours for each hospitalized day, and one to predict all-cause mortality at the time of admission. Model performance was assessed using the area under the receiver operating characteristic curve (AUROC), sensitivity, specificity, positive predictive value, and negative predictive value. We established model interpretability by calculating SHapley Additive exPlanations (SHAP) scores to identify important features.
RESULTS: Compared to the COVID-19-like cohorts (n=16,509), the patients hospitalized with COVID-19 (n=159) were significantly younger, with a higher proportion of patients of Hispanic ethnicity, a lower proportion of patients with smoking history, and fewer patients with comorbidities (P<.001). Patients with COVID-19 had a lower IMV rate (15.1 versus 23.2, P=.02) and shorter time to IMV (2.9 versus 4.1 days, P<.001) compared to the COVID-19-like patients. In the COVID-19-like training data, the top models achieved excellent performance (AUROC>0.90). Validating in the COVID-19 cohort, the top-performing model for predicting IMV was the XGBoost model (AUROC=0.826) trained on the viral pneumonia cohort. Similarly, the XGBoost model trained on all 4 COVID-19-like cohorts without ARDS achieved the best performance (AUROC=0.928) in predicting mortality. Important predictors included demographic information (age), vital signs (oxygen saturation), and laboratory values (white blood cell count, cardiac troponin, albumin, etc). Our models had class imbalance, which resulted in high negative predictive values and low positive predictive values.
CONCLUSIONS: We provided a feasible framework for modeling patient deterioration using existing data and AI technology to address data limitations during the onset of a novel, rapidly changing pandemic. ©Shengtian Sang, Ran Sun, Jean Coquet, Harris Carmichael, Tina Seto, Tina Hernandez-Boussard. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 22.02.2021.

Entities:  

Keywords:  COVID-19; all-cause mortality; artificial intelligence; data; feasibility; framework; infection; invasive mechanical ventilation; machine learning; outcome; respiratory

Year:  2021        PMID: 33534724     DOI: 10.2196/23026

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


  3 in total

1.  Clinicodemographic profile, intensive care unit utilization and mortality rate among COVID-19 patients admitted during the second wave in Bangladesh.

Authors:  Sultana Parvin; Md Samiul Islam; Touhidul Karim Majumdar; Faruque Ahmed
Journal:  IJID Reg       Date:  2021-12-03

2.  Learning from past respiratory failure patients to triage COVID-19 patient ventilator needs: A multi-institutional study.

Authors:  Harris Carmichael; Jean Coquet; Ran Sun; Shengtian Sang; Danielle Groat; Steven M Asch; Joseph Bledsoe; Ithan D Peltan; Jason R Jacobs; Tina Hernandez-Boussard
Journal:  J Biomed Inform       Date:  2021-05-27       Impact factor: 8.000

3.  Predicting the Next-Day Perceived and Physiological Stress of Pregnant Women by Using Machine Learning and Explainability: Algorithm Development and Validation.

Authors:  Ada Ng; Boyang Wei; Jayalakshmi Jain; Erin A Ward; S Darius Tandon; Judith T Moskowitz; Sheila Krogh-Jespersen; Lauren S Wakschlag; Nabil Alshurafa
Journal:  JMIR Mhealth Uhealth       Date:  2022-08-02       Impact factor: 4.947

  3 in total

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