Modelling Differential Diagnosis of Febrile Diseases with Fuzzy Cognitive Map.

Autor: Obot O; Department of Computer Science, University of Uyo, Uyo 520103, Nigeria., John A; Department of Mathematics and Computer Science, Ritman University, Ikot Ekpene 530101, Nigeria., Udo I; Department of Computer Science, University of Uyo, Uyo 520103, Nigeria., Attai K; Department of Mathematics and Computer Science, Ritman University, Ikot Ekpene 530101, Nigeria., Johnson E; Department of Mathematics and Computer Science, Ritman University, Ikot Ekpene 530101, Nigeria., Udoh S; Department of Computer Science, University of Uyo, Uyo 520103, Nigeria., Nwokoro C; Department of Computer Science, University of Uyo, Uyo 520103, Nigeria., Akwaowo C; Health Systems Research Hub, University of Uyo Teaching Hospital, Uyo 520103, Nigeria., Dan E; Health Systems Research Hub, University of Uyo Teaching Hospital, Uyo 520103, Nigeria., Umoh U; Department of Computer Science, University of Uyo, Uyo 520103, Nigeria., Uzoka FM; Department of Mathematics and Computing, Mount Royal University, Calgary, AB T3E 6K6, Canada.
Jazyk: angličtina
Zdroj: Tropical medicine and infectious disease [Trop Med Infect Dis] 2023 Jul 03; Vol. 8 (7). Date of Electronic Publication: 2023 Jul 03.
DOI: 10.3390/tropicalmed8070352
Abstrakt: The report of the World Health Organization (WHO) about the poor accessibility of people living in low-to-middle-income countries to medical facilities and personnel has been a concern to both professionals and nonprofessionals in healthcare. This poor accessibility has led to high morbidity and mortality rates in tropical regions, especially when such a disease presents itself with confusable symptoms that are not easily differentiable by inexperienced doctors, such as those found in febrile diseases. This prompted the development of the fuzzy cognitive map (FCM) model to serve as a decision-support tool for medical health workers in the diagnosis of febrile diseases. With 2465 datasets gathered from four states in the febrile diseases-prone regions in Nigeria with the aid of 60 medical doctors, 10 of those doctors helped in weighting and fuzzifying the symptoms, which were used to generate the FCM model. Results obtained from computations to predict diagnosis results for the 2465 patients, and those diagnosed by the physicians on the field, showed an average of 87% accuracy for the 11 febrile diseases used in the study. The number of comorbidities of diseases with varying degrees of severity for most patients in the study also covary strongly with those found by the physicians in the field.
Databáze: MEDLINE