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machine learning-based clinical decision support system for automatic diagnosis of covid-19 based on the routine blood test
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نویسنده
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afrash mohammad reza ,erfanniya leila ,amraei morteza ,mehrabi nahid ,jelvay saeed ,nopour raoof ,shanbehzadeh mostafa
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منبع
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journal of biostatistics and epidemiology - 2022 - دوره : 8 - شماره : 1 - صفحه:77 -89
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چکیده
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Introduction: needless to say that correct and real-time detection and effective prognosis of the covid-19 are necessary to deliver the best possible care for patients and, accordingly, diminish the pressure on the healthcare industries. hence our paper aims to present an intelligent algorithm for selecting the best features from the dataset and developing machine learning(ml) based models to predict the covid-19 and finally opted for the best-performing algorithm. methods: in this developmental study, the clinical data of 1703 covid-19 and non-covid-19 patients using a single-center registry from february 9, 2020, to december 20, 2020, were used. the minimum redundancy maximum relevance (mrmr) feature selection algorithm identified the most relevant variables. then, chosen features feed into the several data mining methods, including k-nearest neighbors, adaboost classifier, decision tree, histgradient boosting classifier, and support vector machine. a 10-fold cross-validation method and six performance evaluation metrics were used to evaluate and compare these implemented algorithms, and finally, the best model was implemented. results: out of the 34 included features, 11 variables were selected as the essential features. the results of using ml algorithms indicated that the best performance belongs to the adaboost classifier with mean accuracy = 92.9%, mean specificity = 89.3%, mean sensitivity = 94.2%, mean f-measure = 91.6 %, mean kapa = 94.3% and mean roc = 92.1 %. conclusion: the empirical results reveal that the adaboost model yielded higher performance than other classification models and developed our clinical decision support systems (cdss) interface to discriminate positive covid-19 from negative cases.
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کلیدواژه
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covid-19 ,coronavirus ,machine learning ,artificial intelligence ,decision support systems
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آدرس
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shahid beheshti university of medical sciences, school of allied medical sciences, iran, zahedan university of medical sciences, faculty of paramedical, department of health information technology, iran. shiraz university of medical sciences, clinical education research center, iran, lorestan university of medical sciences, school of allied medical sciences, department of health information technology, iran, aja university of medica, department of health information technology, iran, islamic republic of, abadan university of medical sciences, instructor of health information technology, iran, tehran university of medical sciences, school of allied medical sciences, department of health information technology and management, 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.shanbezadeh@gmail.com
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Authors
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