Rodyti trumpą aprašą

dc.contributor.authorPauk, Jolanta
dc.contributor.authorTrinkūnas, Justas
dc.contributor.authorPuronaitė, Roma
dc.contributor.authorIhnatouski, Mikhail
dc.contributor.authorWasilewska, Agnieszka
dc.date.accessioned2023-09-18T16:10:26Z
dc.date.available2023-09-18T16:10:26Z
dc.date.issued2022
dc.identifier.issn0928-7329
dc.identifier.other(crossref_id)132129310
dc.identifier.urihttps://etalpykla.vilniustech.lt/handle/123456789/112084
dc.description.abstractBACKGROUND: The traditional rheumatoid arthritis (RA) diagnosis is very complicated because it uses many clinical and image data. Therefore, there is a need to develop a new method for diagnosing RA using a consolidated set of blood analysis and thermography data. OBJECTIVE: The following issues related to RA are discussed: 1) Which clinical data are significant in the primary diagnosis of RA? 2) What parameters from thermograms should be used to differentiate patients with RA from the healthy? 3) Can artificial neural networks (ANN) differentiate patients with RA from the healthy? METHODS: The dataset was composed of clinical and thermal data from 65 randomly selected patients with RA and 104 healthy subjects. Firstly, the univariate logistic regression model was proposed in order to find significant predictors. Next, the feedforward neural network model was used. The dataset was divided into the training set (75% of data) and the test set (25% of data). The Broyden-Fletcher-Goldfarb-Shanno (BFGS) and non-linear logistic function to transformation nodes in the output layer were used for training. Finally, the 10 fold Cross-Validation was used to assess the predictive performance of the ANN model and to judge how it performs. RESULT: The training set consisted of the temperature of all fingers, patient age, BMI, erythrocyte sedimentation rate, C-reactive protein and White Blood Cells (10 parameters in total). High level of sensitivity and specificity was obtained at 81.25% and 100%, respectively. The accuracy was 92.86%. CONCLUSIONS: This methodology suggests that the thermography data can be considered in addition to the currently available tools for screening, diagnosis, monitoring of disease progression.eng
dc.formatPDF
dc.format.extentp. 209-216
dc.format.mediumtekstas / txt
dc.language.isoeng
dc.relation.isreferencedbySocial Sciences Citation Index (Web of Science)
dc.relation.isreferencedbyScopus
dc.titleA computational method to differentiate rheumatoid arthritis patients using thermography data
dc.typeStraipsnis Web of Science DB / Article in Web of Science DB
dcterms.references30
dc.type.pubtypeS1 - Straipsnis Web of Science DB / Web of Science DB article
dc.contributor.institutionFaculty of Mechanical Engineering, Bialystok University of Technology, Bialystok, Poland
dc.contributor.institutionVilniaus Gedimino technikos universitetas
dc.contributor.institutionVilniaus universitetas
dc.contributor.institutionScientific and Research Department, Yanka Kupala State University of Grodno, Grodno, Belarus
dc.contributor.facultyFundamentinių mokslų fakultetas / Faculty of Fundamental Sciences
dc.subject.researchfieldN 009 - Informatika / Computer science
dc.subject.researchfieldM 001 - Medicina / Medicine
dc.subject.enrheumatoid arthritis
dc.subject.eninflammation
dc.subject.enneural networks thermography
dcterms.sourcetitleTechnology and health care
dc.description.issueno. 1
dc.description.volumevol. 30
dc.publisher.nameIOS Press
dc.publisher.cityAmsterdam
dc.identifier.doi132129310
dc.identifier.doi000741463800019
dc.identifier.doi10.3233/THC-219004
dc.identifier.elaba113840279


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