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.;Gatti M.;Regge D.;Giannini V.
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
10th World Congress on New Technologies, NewTech 2024
esp
2024
Proceedings of the World Congress on New Technologies
Avestia Publishing
1
7
automatic segmentation; multi-center database; radiomics; rectal cancer; therapy resistance
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.; Gian...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2028908
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