In this study, we developed and validated a fully automatic system based on pretreatment MRI to predict resistance to therapy in rectal cancer patients using a multi-center and multi-vendor database. Tumors were automatically segmented using in-house automatic U-Net segmentations and subsequently classified as responder and non-responder through a Random Forest algorithm that was fed with a subset of features selected by a customized features selection approach. Despite the strong imbalance between the two classes, the performances yielded are promising, with an area under the curve of 0.72 and a balanced accuracy of 66% on the external validation set. Even if further analyses are still required to improve the performance, our results represent a further step towards a more personalized medicine for patients with rectal cancer.

A Fully Automatic Multi-Vendor AI-System To Segment And Predict Resistance To Treatment Of Rectal Cancer On MRI / Panic, J.; Defeudis, A.; Vassallo, L.; Cirillo, S.; Gatti, M.; Esposito, A.; Dell'Aversana, S.; Siena, S.; Vanzulli, A.; Regge, D.; Rosati, S.; Balestra, G.; Giannini, V.. - (2024). ( 10th World Congress on New Technologies, NewTech 2024 esp 2024) [10.11159/icbb24.120].

A Fully Automatic Multi-Vendor AI-System To Segment And Predict Resistance To Treatment Of Rectal Cancer On MRI

Cirillo S.;Gatti M.;Esposito A.;
2024-01-01

Abstract

In this study, we developed and validated a fully automatic system based on pretreatment MRI to predict resistance to therapy in rectal cancer patients using a multi-center and multi-vendor database. Tumors were automatically segmented using in-house automatic U-Net segmentations and subsequently classified as responder and non-responder through a Random Forest algorithm that was fed with a subset of features selected by a customized features selection approach. Despite the strong imbalance between the two classes, the performances yielded are promising, with an area under the curve of 0.72 and a balanced accuracy of 66% on the external validation set. Even if further analyses are still required to improve the performance, our results represent a further step towards a more personalized medicine for patients with rectal cancer.
2024
Inglese
Proceedings of the World Congress on New Technologies
Avestia Publishing
10th World Congress on New Technologies, NewTech 2024
2024
esp
Esperti anonimi
Goal 3: Good health and well-being
automatic segmentation
multi-center database
radiomics
rectal cancer
therapy resistance
No
A Fully Automatic Multi-Vendor AI-System To Segment And Predict Resistance To Treatment Of Rectal Cancer On MRI / Panic, J.; Defeudis, A.; Vassallo, L.; Cirillo, S.; Gatti, M.; Esposito, A.; Dell'Aversana, S.; Siena, S.; Vanzulli, A.; Regge, D.; Rosati, S.; Balestra, G.; Giannini, V.. - (2024). ( 10th World Congress on New Technologies, NewTech 2024 esp 2024) [10.11159/icbb24.120].
reserved
Panic, J.; Defeudis, A.; Vassallo, L.; Cirillo, S.; Gatti, M.; Esposito, A.; Dell'Aversana, S.; Siena, S.; Vanzulli, A.; Regge, D.; Rosati, S.; Balest...espandi
273
info:eu-repo/semantics/conferenceObject
13
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11768/186508
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