TY - JOUR
T1 - Radiomics and artificial intelligence analysis by T2-weighted imaging and dynamic contrast-enhanced magnetic resonance imaging to predict Breast Cancer Histological Outcome
AU - Petrillo, Antonella
AU - Fusco, Roberta
AU - Barretta, Maria Luisa
AU - Granata, Vincenza
AU - Mattace Raso, Mauro
AU - Porto, Annamaria
AU - Sorgente, Eugenio
AU - Fanizzi, Annarita
AU - Massafra, Raffaella
AU - Lafranceschina, Miria
AU - La Forgia, Daniele
AU - Trombadori, Charlotte Marguerite Lucille
AU - Belli, Paolo
AU - Trecate, Giovanna
AU - Tenconi, Chiara
AU - De Santis, Maria Carmen
AU - Greco, Laura
AU - Ferranti, Francesca Romana
AU - De Soccio, Valeria
AU - Vidiri, Antonello
AU - Botta, Francesca
AU - Dominelli, Valeria
AU - Cassano, Enrico
AU - Boldrini, Luca
PY - 2023
Y1 - 2023
N2 - ObjectiveThe objective of the study was to evaluate the accuracy of radiomics features obtained by MR images to predict Breast Cancer Histological Outcome.MethodsA total of 217 patients with malignant lesions were analysed underwent MRI examinations. Considering histological findings as the ground truth, four different types of findings were used in both univariate and multivariate analyses: (1) G1 + G2 vs G3 classification; (2) presence of human epidermal growth factor receptor 2 (HER2 + vs HER2 -); (3) presence of the hormone receptor (HR + vs HR -); and (4) presence of luminal subtypes of breast cancer.ResultsThe best accuracy for discriminating HER2 + versus HER2 - breast cancers was obtained considering nine predictors by early phase T1-weighted subtraction images and a decision tree (accuracy of 88% on validation set). The best accuracy for discriminating HR + versus HR - breast cancers was obtained considering nine predictors by T2-weighted subtraction images and a decision tree (accuracy of 90% on validation set). The best accuracy for discriminating G1 + G2 versus G3 breast cancers was obtained considering 16 predictors by early phase T1-weighted subtraction images in a linear regression model with an accuracy of 75%. The best accuracy for discriminating luminal versus non-luminal breast cancers was obtained considering 27 predictors by early phase T1-weighted subtraction images and a decision tree (accuracy of 94% on validation set).ConclusionsThe combination of radiomics analysis and artificial intelligence techniques could be used to support physician decision-making in prediction of Breast Cancer Histological Outcome.
AB - ObjectiveThe objective of the study was to evaluate the accuracy of radiomics features obtained by MR images to predict Breast Cancer Histological Outcome.MethodsA total of 217 patients with malignant lesions were analysed underwent MRI examinations. Considering histological findings as the ground truth, four different types of findings were used in both univariate and multivariate analyses: (1) G1 + G2 vs G3 classification; (2) presence of human epidermal growth factor receptor 2 (HER2 + vs HER2 -); (3) presence of the hormone receptor (HR + vs HR -); and (4) presence of luminal subtypes of breast cancer.ResultsThe best accuracy for discriminating HER2 + versus HER2 - breast cancers was obtained considering nine predictors by early phase T1-weighted subtraction images and a decision tree (accuracy of 88% on validation set). The best accuracy for discriminating HR + versus HR - breast cancers was obtained considering nine predictors by T2-weighted subtraction images and a decision tree (accuracy of 90% on validation set). The best accuracy for discriminating G1 + G2 versus G3 breast cancers was obtained considering 16 predictors by early phase T1-weighted subtraction images in a linear regression model with an accuracy of 75%. The best accuracy for discriminating luminal versus non-luminal breast cancers was obtained considering 27 predictors by early phase T1-weighted subtraction images and a decision tree (accuracy of 94% on validation set).ConclusionsThe combination of radiomics analysis and artificial intelligence techniques could be used to support physician decision-making in prediction of Breast Cancer Histological Outcome.
KW - Artificial intelligence
KW - Radiomics
KW - Magnetic resonance imaging
KW - Breast cancer
KW - Artificial intelligence
KW - Radiomics
KW - Magnetic resonance imaging
KW - Breast cancer
UR - http://hdl.handle.net/10807/298432
U2 - 10.1007/s11547-023-01718-2
DO - 10.1007/s11547-023-01718-2
M3 - Article
SN - 0033-8362
VL - 128
SP - 1347
EP - 1371
JO - LA RADIOLOGIA MEDICA
JF - LA RADIOLOGIA MEDICA
ER -