2022
DOI: 10.21203/rs.3.rs-1860113/v1
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Automated Meniscus Segmentation and Tear Detection of Knee MRI with a 3D Mask-RCNN

Abstract: Background The diagnostic results of MRI are important references for arthroscopy as an invasive procedure. A deviation between medical imaging diagnosis and arthroscopy results may cause irreversible damage to patients and lead to excessive medical treatment. To improve the accurate diagnosis of meniscus injury, it is urgent to develop auxiliary diagnosis algorithms to improve the accuracy of radiological diagnosis. Purpose: The purpose of the study is to present a fully automatic 3D deep convolutional neural… Show more

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