0000000000538950

AUTHOR

Mario Pace

showing 1 related works from this author

Deep Learning Networks for Automatic Retroperitoneal Sarcoma Segmentation in Computerized Tomography

2022

The volume estimation of retroperitoneal sarcoma (RPS) is often difficult due to its huge dimensions and irregular shape; thus, it often requires manual segmentation, which is time-consuming and operator-dependent. This study aimed to evaluate two fully automated deep learning networks (ENet and ERFNet) for RPS segmentation. This retrospective study included 20 patients with RPS who received an abdominal computed tomography (CT) examination. Forty-nine CT examinations, with a total of 72 lesions, were included. Manual segmentation was performed by two radiologists in consensus, and automatic segmentation was performed using ENet and ERFNet. Significant differences between manual and automat…

Fluid Flow and Transfer ProcessesTechnologyArtificial intelligenceSoft tissue sarcomaQH301-705.5Process Chemistry and TechnologyTPhysicsQC1-999General EngineeringDeep learningEngineering (General). Civil engineering (General)Computer Science ApplicationsChemistrySegmentationVolume estimationGeneral Materials ScienceDeep learning; soft tissue sarcoma; volume estimation; segmentation; artificial intelligenceTA1-2040Biology (General)InstrumentationQD1-999
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