6533b7ddfe1ef96bd12752cf
RESEARCH PRODUCT
Choline PET/CT Features to Predict Survival Outcome in High Risk Prostate Cancer Restaging: A Preliminary Machine-Learning Radiomics Study
Massimo MidiriFrancesco CeciAlessandro StefanoGiorgio Ivan RussoSergio BaldariPierpaolo AlongiAlbert ComelliAlbert ComelliRoberto LagallaMaria PicchioMaria PicchioAntonio VentoPaola MapelliPaola MapelliPatrizia ToiaGloria GanduscioFederico CaobelliDavide Stefano SardinaRiccardo Laudicellasubject
Malemedicine.medical_specialtyn artificial intelligence model demonstrated to be feasible and able to select a panel of 18F-Cho PET/CT features with valuable association with PCa patients' outcome.business.industryProstatic NeoplasmsFeature selectionPet imagingCholine pet ctmedicine.diseaseTumor heterogeneitySurvival outcomeCholineMachine LearningProstate cancerRadiomicsFeature (computer vision)Artificial IntelligencePositron Emission Tomography Computed TomographyMedicineHumansRadiology Nuclear Medicine and imagingRadiologybusinessRetrospective Studiesdescription
Background Radiomic features are increasingly utilized to evaluate tumor heterogeneity in PET imaging but to date its role has not been investigated for Cho-PET in prostate cancer. The potential application of radiomics features analysis using a machine-learning radiomics algorithm was evaluated to select 18F-Cho PET/CT imaging features to predict disease progression in PCa. Methods We retrospectively analyzed high-risk PCa patients who underwent restaging 18F-Cho PET/CT from November 2013 to May 2018. 18F-Cho PET/CT studies and related structures containing volumetric segmentations were imported in the "CGITA" toolbox to extract imaging features from each lesion. A Machine-learning model has been adapted using NCA for feature selection, while DA was used as a method for feature classification and performance analysis. Results 106 imaging features were extracted for 46 lesions for a total of 4876 features analyzed. No significant differences between the training and validating sets in terms of age, sex, PSA values, lesion location and size (p > 0.05) were demonstrated by the machine-learning model. Thirteen features were able to discriminate FU disease status after NCA selection. Best performance in DA classification was obtained using the combination of the 13 selected features (sensitivity 74%, specificity 58% and accuracy 66%) compared to the use of all features (sensitivity 40%, specificity 52%, and accuracy 51%). Per-site performance of the 13 selected features in DA classification were as follow: T= sensitivity 63%, specificity 83%, accuracy 71%; N= sensitivity 87%, specificity 91% of and accuracy 90%; bone-M= sensitivity 33%, specificity 77% and accuracy 66%. Conclusions An artificial intelligence model demonstrated to be feasible and able to select a panel of 18F-Cho PET/CT features with valuable association with PCa patients' outcome.
year | journal | country | edition | language |
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2020-01-01 |