Literature DB >> 29360648

Artificial intelligence estimates the impact of human papillomavirus types in influencing the risk of cervical dysplasia recurrence: progress toward a more personalized approach.

Giorgio Bogani1, Antonino Ditto1, Fabio Martinelli1, Mauro Signorelli1, Valentina Chiappa1, Umberto Leone Roberti Maggiore2,3, Francesca Taverna4, Claudia Lombardo4, Chiara Borghi5, Cono Scaffa1, Domenica Lorusso1, Francesco Raspagliesi1.   

Abstract

The objective of this study was to determine whether the pretreatment human papillomavirus (HPV) genotype might predict the risk of cervical dysplasia persistence/recurrence. Retrospective analysis of prospectively collected data of consecutive 5104 women who underwent the HPV-DNA test were matched with retrospective data of women undergoing either follow-up or medical/surgical treatment(s) for genital HPV-related infection(s). Artificial neuronal network (ANN) analysis was used in order to weight the importance of different HPV genotypes in predicting cervical dysplasia persistence/recurrence. ANN simulates a biological neuronal system from both the structural and functional points of view: like neurons, ANN acquires knowledge through a learning-phase process and allows weighting the importance of covariates, thus establishing how much a variable influences a multifactor phenomenon. Overall, 5104 women were tested for HPV. Among them, 1273 (25%) patients underwent treatment for HPV-related disorders. LASER conization and cervical vaporization were performed in 807 (59%) and 386 (30%) patients, respectively, and secondary cervical conization in 45 (5.5%). ANN technology showed that the most important genotypes predicting cervical dysplasia persistence/recurrence were HPV-16 (normalized importance: 100%), HPV-59 (normalized importance: 51.2%), HPV-52 (normalized importance: 47.7%), HPV-18 (normalized importance: 32.8%) and HPV-45 (normalized importance: 30.2%). The pretreatment diagnosis of all of those genotypes, except HPV-45, correlated with an increased risk of cervical dysplasia persistence/recurrence; the pretreatment diagnosis was also arrived at using standard univariate and multivariable models (P<0.01). Pretreatment positivity for HPV-16, HPV-18, HPV-52 and HPV-59 might correlate with an increased risk of cervical dysplasia persistence/recurrence after treatment. These data might be helpful during patients' counseling and to implement new vaccination programs.

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Year:  2019        PMID: 29360648     DOI: 10.1097/CEJ.0000000000000432

Source DB:  PubMed          Journal:  Eur J Cancer Prev        ISSN: 0959-8278            Impact factor:   2.497


  5 in total

Review 1.  Screening of Cervical Cancer with Self-Collected Cervical Samples and Next-Generation Sequencing.

Authors:  Yubo Fan; Yifan Meng; Shuo Yang; Ling Wang; Wenhua Zhi; Cordelle Lazare; Canhui Cao; Peng Wu
Journal:  Dis Markers       Date:  2018-11-14       Impact factor: 3.434

2.  Artificial intelligence weights the importance of factors predicting complete cytoreduction at secondary cytoreductive surgery for recurrent ovarian cancer.

Authors:  Giorgio Bogani; Diego Rossetti; Antonino Ditto; Fabio Martinelli; Valentina Chiappa; Lavinia Mosca; Umberto Leone Roberti Maggiore; Stefano Ferla; Domenica Lorusso; Francesco Raspagliesi
Journal:  J Gynecol Oncol       Date:  2018-04-23       Impact factor: 4.401

3.  Treatment modalities for recurrent high-grade vaginal intraepithelial neoplasia.

Authors:  Giorgio Bogani; Antonino Ditto; Stefano Ferla; Biagio Paolini; Claudia Lombardo; Domenica Lorusso; Francesco Raspagliesi
Journal:  J Gynecol Oncol       Date:  2018-11-08       Impact factor: 4.401

4.  Assessing the Long-Term Role of Vaccination against HPV after Loop Electrosurgical Excision Procedure (LEEP): A Propensity-Score Matched Comparison.

Authors:  Giorgio Bogani; Francesco Raspagliesi; Francesco Sopracordevole; Andrea Ciavattini; Alessandro Ghelardi; Tommaso Simoncini; Marco Petrillo; Francesco Plotti; Salvatore Lopez; Jvan Casarin; Maurizio Serati; Ciro Pinelli; Gaetano Valenti; Alice Bergamini; Barbara Gardella; Andrea Dell'Acqua; Ermelinda Monti; Paolo Vercellini; Giovanni D'ippolito; Lorenzo Aguzzoli; Vincenzo D Mandato; Paola Carunchio; Gabriele Carlifante; Luca Gianella; Cono Scaffa; Francesca Falcone; Stefano Ferla; Chiara Borghi; Antonino Ditto; Mario Malzoni; Andrea Giannini; Maria Giovanna Salerno; Viola Liberale; Biagio Contino; Cristina Donfrancesco; Michele Desiato; Anna Myriam Perrone; Giulia Dondi; Pierandrea De Iaco; Umberto Leone Roberti Maggiore; Mauro Signorelli; Valentina Chiappa; Simone Ferrero; Giuseppe Sarpietro; Maria G Matarazzo; Antonio Cianci; Sara Bocio; Simona Ruisi; Rocco Guerrisi; Claudia Brusadelli; Lavinia Mosca; Raffaele Tinelli; Rosa De Vincenzo; Gian Franco Zannoni; Gabriella Ferrandina; Salvatore Dessole; Roberto Angioli; Stefano Greggi; Arsenio Spinillo; Fabio Ghezzi; Nicola Colacurci; Margherita Fischetti; Annunziata Carlea; Fulvio Zullo; Ludovico Muzii; Giovanni Scambia; Pierluigi Benedetti Panici; Violante Di Donato
Journal:  Vaccines (Basel)       Date:  2020-12-01

5.  Age-specific predictors of cervical dysplasia recurrence after primary conization: analysis of 3,212 women.

Authors:  Giorgio Bogani; Ciro Pinelli; Valentina Chiappa; Fabio Martinelli; Salvatore Lopez; Antonino Ditto; Francesco Raspagliesi
Journal:  J Gynecol Oncol       Date:  2020-09       Impact factor: 4.401

  5 in total

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