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Title:Identification of women with high grade histopathology results after conisation by artificial neural networks
Authors:ID Mlinarič, Marko (Author)
ID Križmarić, Miljenko (Author)
ID Takač, Iztok (Author)
ID Repše-Fokter, Alenka (Author)
Files:URL URL - Source URL, visit https://sciendo.com/article/10.2478/raon-2022-0023
 
.pdf PDF - Presentation file, download (663,31 KB)
MD5: 9E50E559F3FCAA0025A371436A677E1F
 
Language:English
Typology:1.01 - Original Scientific Article
Organization:Logo OI - Institute of Oncology
Abstract:Background: The aim of the study was to evaluate if artificial neural networks can predict high-grade histopathology results after conisation from risk factors and their combinations in patients undergoing conisation because of pathological changes on uterine cervix. Patients and methods: We analysed 1475 patients who had conisation surgery at the University Clinic for Gynaecology and Obstetrics of University Clinical Centre Maribor from 1993-2005. The database in different datasets was arranged to deal with unbalance data and enhance classification performance. Weka open-source software was used for analysis with artificial neural networks. Last Papanicolaou smear (PAP) and risk factors for development of cervical dysplasia and carcinoma were used as input and high-grade dysplasia Yes/No as output result. 10-fold cross validation was used for defining training and holdout set for analysis. Results: Baseline classification and multiple runs of artificial neural network on various risk factors settings were performed. We achieved 84.19% correct classifications, area under the curve 0.87, kappa 0.64, F-measure 0.884 and Matthews correlation coefficient (MCC) 0.640 in model, where baseline prediction was 69.79%. Conclusions: With artificial neural networks we were able to identify more patients who developed high-grade squamous intraepithelial lesion on final histopathology result of conisation as with baseline prediction. But, characteristics of 1475 patients who had conisation in years 1993-2005 at the University Clinical Centre Maribor did not allow reliable prediction with artificial neural networks for every-day clinical practice.
Keywords:artificial neural networks, conisation, uterine cervical cancer, uterine cervical dysplasia, displazija materničnega vratu, rak materničnega vratu, konizacija, umetne nevronske mreže
Publication status:Published
Publication version:Version of Record
Publication date:01.01.2022
Publisher:Association of Radiology and Oncology
Year of publishing:2022
Number of pages:str. 355-364
Numbering:Vol. 56, iss. 3
Source:Ljubljana
PID:20.500.12556/DiRROS-19765 New window
UDC:618.146-006-07
ISSN on article:1318-2099
DOI:10.2478/raon-2022-0023 New window
COBISS.SI-ID:115112451 New window
Copyright:by Authors
Note:Soavtorji: Miljenko Krizmaric, Iztok Takac, Alenka Repse Fokter;
Publication date in DiRROS:24.07.2024
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Downloads:5
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Record is a part of a journal

Title:Radiology and oncology
Shortened title:Radiol. oncol.
Publisher:Slovenian Medical Society - Section of Radiology, Croatian Medical Association - Croatian Society of Radiology
ISSN:1318-2099
COBISS.SI-ID:32649472 New window

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