Por favor use este identificador para citas ou ligazóns a este item: http://elartu.tntu.edu.ua/handle/lib/46257
Título: Application of ROC-analysis to assess the quality of predicting the risk of chronic rhinosinusitis recurrence
Authors: Herasymiuk, M
Sverstiuk, A
Palaniza, Yuri
Malovana, I
Affiliation: ТНТУ
Bibliographic description (Ukraine): Herasymiuk, M., Sverstiuk, A., Palaniza, Y., & Malovana, I. (2024). Application of ROC-analysis to assess the quality of predicting the risk of chronic rhinosinusitis recurrence. Wiadomosci Lekarskie, 77(2), pp. 254-261. ISSN: 0043-5147. (Scopus, Poland)
Bibliographic description (International): Herasymiuk, M., Sverstiuk, A., Palaniza, Y., & Malovana, I. (2024). Application of ROC-analysis to assess the quality of predicting the risk of chronic rhinosinusitis recurrence. Wiadomosci Lekarskie, 77(2), pp. 254-261. ISSN: 0043-5147. (Scopus, Poland)
Data de edición: 2024
Date of entry: 5-Sep-2024
Country (code): PL
Resumo: ABSTRACT Aim: To propose a new, original approach to assessing the quality of a multivariate regression model for predicting the risk of recurrence in patients with chronic rhinosinusitis based on ROC analysis with the construction of appropriate curves, estimating the area under them, as well as calculating the sensitivity, accuracy, specificity, and predictive value of a positive and negative classification results, the likelihood ratio of positive and negative patient detection results. Materials and Methods: 204 patients aged with a diagnosis of chronic rhinosinusitis were examined. Results: To build a multivariate regression model 14 probable factors of chronic rhinosinusitis occurrence were selected to determine the diagnostic value of the proposed model we calculate the sensitivity (Se), specificity (Sp), positive predictive value (PPV), negative predictive value (NPV), the likelihood ratio of a positive test (LR+), the likelihood ratio of a negative test (LR-) and prediction accuracy % of the proposed mathematical model. In order to determine the prognostic value of the risk ratio of CRS recurrence model, ROC- analysis was performed, ROC curves were obtained Conclusions: The multivariate regression model makes it possible to predict potential complications and the possibility of disease recurrence. The construction of ROC-curves allows us to assert the excellent classification quality of chronic rhinosinusitis recurrence.
URI: http://elartu.tntu.edu.ua/handle/lib/46257
ISSN: 0043-5147
URL for reference material: https://wiadlek.pl/wp-content/uploads/archive/2024/WLek2024i2.pdf#page=76
Content type: Article
Aparece nas ColecciónsЗібрання статей

Arquivos neste item
Arquivo Descrición TamañoFormato 
_WLek2024i2.pdf276,44 kBAdobe PDFVer/abrir


Todos os documentos en Dspace estan protexidos por copyright, con todos os dereitos reservados