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   Identifying Techniques and Models for COVID-19 Prediction  
   
نویسنده shamsabadi ahmadreza ,mirzapour pegah ,heydari mohammad ,mojdeganlou hengameh ,karimi amirali ,pashaei zahra ,qaderi kowsar ,mirghaderi peyman ,azadi cheshmekabodi hadiseh ,mehraeen esmaeil ,seyedalinaghi ahmad
منبع journal of iranian medical council - 2023 - دوره : 6 - شماره : 2 - صفحه:207 -228
چکیده    Background: technologies can predict various aspects of covid-19, such as early prediction of cases and those at higher risks of severe disease. predictions will yield numerous benefits and can result in a lower number of cases and deaths. herein, we aimed to review the published models and techniques that predict various covid-19 outcomes and identify their role in the management of the covid-19. methods: this study was a review identifying the prediction models and techniques for management of the covid-19. web of science, scopus, and pubmed were searched from december 2019 until september 4th, 2021. in addition, google scholar was also searched. results: we have reviewed 59 studies. the authors reviewed prediction techniques in covid-19 disease management. studies in these articles have shown that in the section medical setting, most of the subjects were inpatients. in the purpose of the prediction section, mortality was also the most item. in the type of data/predict section, basic patient information, demographic, and laboratory values were the most cases. also, in the type of technique section, logistic regression was the most item used. training, internal and external validation, and cross-validation were among the issues raised in the type of validation section. conclusion: artificial intelligence and machine learning methods were found to be useful in disease control and prevention. they accelerate the process of diagnosis and move toward great progress in emergency circumstances like the covid-19 pandemic.
کلیدواژه COVID-19 ,Diagnosis ,Prediction ,SARS-CoV-2
آدرس esfarayen faculty of medical sciences, department of health information technology, Iran, tehran university of medical sciences, iranian research center for hiv/aids, iranian institute for reduction of high risk behaviors, Iran, khalkhal university of medical sciences, department of health information technology, Iran, university at buffalo, jacobs school of medicine and biomedical sciences, department of pathology and anatomical sciences, tehran university of medical sciences, school of medicine, Iran, tehran university of medical sciences, iranian research center for hiv/aids, iranian institute for reduction of high risk behaviors, Iran. university of british columbia, school of nursing, Canada, kermanshah university of medical sciences, school of nursing and midwifery, department of midwifery, Iran, tehran university of medical sciences, school of medicine, Iran, iran university of medical sciences, school of health information management and information sciences, Iran, tehran university of medical sciences, iranian research center for hiv/aids, iranian institute for reduction of high risk behaviors, Iran. khalkhal university of medical sciences, department of health information technology, Iran, tehran university of medical sciences, iranian research center for hiv/aids, iranian institute for reduction of high risk behaviors, Iran
 
     
   
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