Author/Authors :
montazeri, mahdieh kerman university of medical sciences - medical informatics research center, institute for futures studies in health, kerman, iran, islamic republic of , afraz, ali kerman university of medical sciences - medical informatics research center, institute for futures studies in health, kerman, iran, islamic republic of , montazeri, mitra kerman university of medical sciences - medical informatics research center, institute for futures studies in health, kerman, iran, islamic republic of , nejatzadeh, sadegh yasuj university of medical science, yasuj, iran, islamic republic of , rahimi, fatemeh shahid beheshti university of medical science - department of health information technology and management, tehran, iran, islamic republic of , taherian, mohsen islamic azad university, yasuj branch - young researchers and elite club, yasuj, iran, islamic republic of , montazeri, mohadeseh technical and vocational university, kerman branch - faculty of fatimah - department of computer, kerman, iran, islamic republic of , ahmadian, leila kerman university of medical sciences - medical informatics research center, institute for futures studies in health, kerman, iran, islamic republic of
Abstract :
introduction: our aim in this study was to summarize information on the use of intelligent models for predicting and diagnosing the coronavirus disease 2019 (covid19) to help early and timely diagnosis of the disease. material and methods: a systematic literature search included articles published until 20 april 2020 in pubmed, web of science, ieee, proquest, scopus, biorxiv, and medrxiv databases. the search strategy consisted of two groups of keywords: a) novel coronavirus, b) machine learning. two reviewers independently assessed original papers to determine eligibility for inclusion in this review. studies were critically reviewed for risk of bias using prediction model risk of bias assessment tool. results: we gathered 1650 articles through database searches. after the fulltext assessment 31 articles were included. neural networks and deep neural network variants were the most popular machine learning type. of the five models that authors claimed were externally validated, we considered external validation only for four of them. area under the curve (auc) in internal validation of prognostic models varied from .94 to .97. auc in diagnostic models varied from 0.84 to 0.99, and auc in external validation of diagnostic models varied from 0.73 to 0.94. our analysis finds all but two studies have a high risk of bias due to various reasons like a low number of participants and lack of external validation. conclusion: diagnostic and prognostic models for covid19 show good to excellent discriminative performance. however, these models are at high risk of bias because of various reasons like a low number of participants and lack of external validation. future studies should address these concerns. sharing data and experiences for the development, validation, and updating of covid19 related prediction models is needed.
Keywords :
artificial intelligence , machine learning , diagnosis , prognosis , covid , 19 , coronavirus disease 2019 ,