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dc.contributor.authorRufino, Jesús
dc.contributor.authorRamirez, Juan Marcos 
dc.contributor.authorAguilar, Jose 
dc.contributor.authorBaquero, Carlos
dc.contributor.authorChampati, Jaya Prakash 
dc.contributor.authorLillo, Rosa Elvira
dc.contributor.authorFernández Anta, Antonio 
dc.date.accessioned2023-07-05T11:39:27Z
dc.date.available2023-07-05T11:39:27Z
dc.date.issued2023-09-01
dc.identifier.urihttps://hdl.handle.net/20.500.12761/1712
dc.description.abstractBackground: During the global pandemic crisis, various detection methods of COVID-19-positive cases based on self-reported information were introduced to provide quick diagnosis tools for effectively planning and managing healthcare resources. These methods typically identify positive cases based on a particular combination of symptoms, and they have been evaluated using different datasets. Purpose: This paper presents a comprehensive comparison of various COVID-19 detection methods based on self-reported information using the University of Maryland Global COVID-19 Trends and Impact Survey (UMD-CTIS), a large health surveillance platform, which was launched in partnership with Facebook. Methods: Detection methods were implemented to identify COVID-19-positive cases among UMD-CTIS participants reporting at least one symptom and a recent antigen test result (positive or negative) for six countries and two periods. Multiple detection methods were implemented for three different categories: rule-based approaches, logistic regression techniques, and tree-based machine-learning models. These methods were evaluated using different metrics including F1-score, sensitivity, specificity, and precision. An explainability analysis has also been conducted to compare methods. Results: Fifteen methods were evaluated for six countries and two periods. We identify the best method for each category: rule-based methods (F1-score: 51.48\% - 71.11\%), logistic regression techniques (F1-score: 39.91\% - 71.13\%), and tree-based machine learning models (F1-score: 45.07\% - 73.72\%). According to the explainability analysis, the relevance of the reported symptoms in COVID-19 detection varies between countries and years. However, there are two variables consistently relevant across approaches: stuffy or runny nose, and aches or muscle pain. Conclusions: Regarding the categories of detection methods, evaluating detection methods using homogeneous data across countries and years provides a solid and consistent comparison. An explainability analysis of a tree-based machine-learning model can assist in identifying infected individuals specifically based on their relevant symptoms. This study is limited by the self-report nature of data, which cannot replace clinical diagnosis.es
dc.description.sponsorshipCommunity of Madrides
dc.description.sponsorshipSpanish Ministry of Science and Innovationes
dc.language.isoenges
dc.publisherElsevieres
dc.titleConsistent Comparison of Symptom-based Methods for COVID-19 Infection Detectiones
dc.typejournal articlees
dc.journal.titleInternational Journal of Medical Informaticses
dc.rights.accessRightsembargoed accesses
dc.volume.number177es
dc.identifier.doi10.1016/j.ijmedinf.2023.105133es
dc.relation.projectNameSocialProbinges
dc.relation.projectNameCOMODIN-CMes
dc.relation.projectNameCoronaSurveys-CMes
dc.subject.keywordCOVID-19 Detection Methodses
dc.subject.keywordExplainability Analysises
dc.subject.keywordF1-scorees
dc.subject.keywordLogistic Regression Methodses
dc.subject.keywordRule-based Methodses
dc.subject.keywordTree-based Modelses
dc.description.refereedTRUEes
dc.description.statuspubes


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