Identification of women with high grade histopathology results after conisation by artificial neural networks

Author:

Mlinaric Marko1,Krizmaric Miljenko2,Takac Iztok34,Repse Fokter Alenka5

Affiliation:

1. Outpatient Clinic for Gynaecology and Obstetrics Marko Mlinarič, Dr. Med. , Zagorje ob Savi , Slovenia

2. Faculty of Medicine, University of Maribor , Maribor , Slovenia

3. University Clinic of Gynaecology and Perinatology, University Medical Centre Maribor , Maribor , Slovenia

4. Department of Gynaecology and Perinatology, Faculty of Medicine, University of Maribor , Maribor , Slovenia

5. Department of Pathology and Cytology, General Hospital Celje , Celje , Slovenia

Abstract

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 Bas eline 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.

Publisher

Walter de Gruyter GmbH

Subject

Radiology, Nuclear Medicine and imaging,Oncology

Reference50 articles.

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2. I nstitute of Oncology Ljubljana. [ZORA National programme for early detection of precancerous lesions]. [Slovenian]. [cited 2022 Jan 10]. Available at: https://zora.onko-i.si/za-zenske/rak-maternicnega-vratu

3. Momenimovahed Z, Salehiniya H. Incidence, mortality and risk factors of cervical cancer in the world. Biomed Res Ther 2017; 4: 1795-811. doi. org/10.15419/bmrat.v4i12.386

4. Reich O. [Is early first intercourse a risk factor for cervical cancer?]. [German]. Gynakol Geburtshilfliche Rundsch 2005; 45: 251-6. doi. org/10.1159/000087143

5. Lehtinen M, Ault KA, Lyytikainen E, Dillner J, Garland SM, Ferris DG et all. FUTURE I and II Study Group. Chlamydia trachomatis infection and risk of cervical intraepithelial neoplasia. Sex Transm Infect 2011; 87: 372-6. doi. org/10.1136/sti.2010.044354

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