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Assessing the performance of AI-assisted technicians in liver segmentation, Couinaud division, and lesion detection: a pilot study
3
Zitationen
8
Autoren
2024
Jahr
Abstract
With AI assistance, non-radiologist experienced operators showed good agreement with radiologists for quantifying whole liver volume, Couinaud segment volume, and the detection and measurement of lesions in patients with known liver cancer. This AI-assisted non-radiologist approach has potential to reduce the stress on radiologists without compromising accuracy.
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