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Multi-organ segmentation of CT via convolutional neural network: impact of training setting and scanner manufacturer
5
Zitationen
5
Autoren
2023
Jahr
Abstract
. A CNN trained on contours of multiple organs and CT data from multiple manufacturers yielded high-quality segmentations. Such a model is an essential enabler of image processing in a software device that quantifies and analyzes such data to determine a patient's treatment response. To date, this activity of whole organ segmentation has not been adopted due to the intense manual workload and time required.
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