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proposing an intelligent monitoring system for early prediction of need for intubation among covid-19 hospitalized patients
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نویسنده
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afrash mohammad reza ,kazemi-arpanahi hadi ,nopour raoof ,tabatabaei elmira sadat ,shanbehzadeh mostafa
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منبع
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journal of environmental health and sustainable development - 2022 - دوره : 7 - شماره : 3 - صفحه:1698 -1707
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چکیده
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Introduction: predicting acute respiratory insufficiency due to coronavirus disease 2019 (covid-19) can diminish the severe complications and mortality associated with the disease. this study aimed to develop an intelligent system based on machine learning (ml) models for frontline clinicians to effectively triage high-risk patients and prioritize who needs mechanical intubation (mi). materials and methods: in this retrospective-design study, the data regarding 482 covid-19 hospitalized patients from february 9, 2020, to july 20, 2021, was analyzed by six ml classifiers. the most critical clinical variables were identified by a minimal-redundancy-maximal-relevance (mrmr) feature selection technique. in the next step, the models' performance was assessed using confusion matrix criteria and, finally, the best model was adopted. results: proposed models were implemented using 23 confirmed variables. results of comparing six selected ml algorithms indicated the extreme gradient boosting (xgboost) classifier with 84.7% accuracy, 76.5 % specificity, 90.7% sensitivity, 85.1% f-measure, 87.4% kappa statistic, and 85.3% for receiver operating characteristic (roc) had the best performance in the intubation prediction. conclusion: it is found that ml enables a satisfactory accuracy level in calculating intubation risk in covid-19 patients. therefore, using the ml-based intelligent models, notably the xgboost algorithm, actually enables recognizing high-risk cases and advising correct therapeutic and supportive care by the clinicians.
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کلیدواژه
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covid-19 ,coronavirus ,artificial intelligence ,machine learning ,intubation ,prognosis
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آدرس
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shahid beheshti university of medical sciences, student research committee, school of allied medical sciences, department of medical informatics, iran, abadan university of medical sciences, student research committee, department of health information technology, iran, iran university of medical sciences, student research committee, school of health management and information sciences branch, department of health information management, iran, islamic azad university, tehran medical branch, department of genetics, iran, ilam university of medical sciences, school of paramedical, department of health information technology, iran
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پست الکترونیکی
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mostafa.shanbehzadeh@gmail.com
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Authors
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