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Role of Machine Learning (ML)-Based Classification Using Conventional 18F-FDG PET Parameters in Predicting Postsurgical Features of Endometrial Cancer Aggressiveness

Articolo
Data di Pubblicazione:
2023
Citazione:
Role of Machine Learning (ML)-Based Classification Using Conventional 18F-FDG PET Parameters in Predicting Postsurgical Features of Endometrial Cancer Aggressiveness / Bezzi, Carolina; Bergamini, Alice; Mathoux, Gregory; Ghezzo, Samuele; Monaco, Lavinia; Candotti, Giorgio; Fallanca, Federico; Gajate, Ana Maria Samanes; Rabaiotti, Emanuela; Cioffi, Raffaella; Bocciolone, Luca; Gianolli, Luigi; Taccagni, Gianluca; Candiani, Massimo; Mangili, Giorgia; Mapelli, Paola; Picchio, Maria. - In: CANCERS. - ISSN 2072-6694. - 15:1(2023). [10.3390/cancers15010325]
Abstract:
Purpose: to investigate the preoperative role of ML-based classification using conventional 18F-FDG PET parameters and clinical data in predicting features of EC aggressiveness. Methods: retrospective study, including 123 EC patients who underwent 18F-FDG PET (2009-2021) for preoperative staging. Maximum standardized uptake value (SUVmax), SUVmean, metabolic tumour volume (MTV), and total lesion glycolysis (TLG) were computed on the primary tumour. Age and BMI were collected. Histotype, myometrial invasion (MI), risk group, lymph-nodal involvement (LN), and p53 expression were retrieved from histology. The population was split into a train and a validation set (80-20%). The train set was used to select relevant parameters (Mann-Whitney U test; ROC analysis) and implement ML models, while the validation set was used to test prediction abilities. Results: on the validation set, the best accuracies obtained with individual parameters and ML were: 61% (TLG) and 87% (ML) for MI; 71% (SUVmax) and 79% (ML) for risk groups; 72% (TLG) and 83% (ML) for LN; 45% (SUVmax; SUVmean) and 73% (ML) for p53 expression. Conclusions: ML-based classification using conventional 18F-FDG PET parameters and clinical data demonstrated ability to characterize the investigated features of EC aggressiveness, providing a non-invasive way to support preoperative stratification of EC patients.
Tipologia CRIS:
1.1 Articolo in rivista
Elenco autori:
Bezzi, Carolina; Bergamini, Alice; Mathoux, Gregory; Ghezzo, Samuele; Monaco, Lavinia; Candotti, Giorgio; Fallanca, Federico; Gajate, Ana Maria Samanes; Rabaiotti, Emanuela; Cioffi, Raffaella; Bocciolone, Luca; Gianolli, Luigi; Taccagni, Gianluca; Candiani, Massimo; Mangili, Giorgia; Mapelli, Paola; Picchio, Maria
Autori di Ateneo:
BERGAMINI ALICE
CANDIANI MASSIMO
MAPELLI PAOLA
PICCHIO MARIA
Link alla scheda completa:
https://iris.unisr.it/handle/20.500.11768/135440
Link al Full Text:
https://iris.unisr.it//retrieve/handle/20.500.11768/135440/111755/machine%20learning%20pet.pdf
Pubblicato in:
CANCERS
Journal
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URL

https://www.mdpi.com/2072-6694/15/1/325
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