2023
DOI: 10.21203/rs.3.rs-3505894/v1
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Optimizing Hip MRI: Enhancing Image Quality and Elevating Inter- observer Consistency using Deep Learning-Powered Reconstruction

Yimeng Kang,
Wenjing Li,
Qingqing Lv
et al.

Abstract: Background Conventional hip joint MRI scans necessitate lengthy scan durations, posing challenges for patient comfort and clinical efficiency. Previously, accelerated imaging techniques were constrained by a trade-off between noise and resolution. Leveraging deep learning-based reconstruction (DLR) holds the potential to mitigate scan time without compromising image quality. Methods We enrolled a cohort of sixty patients who underwent DL-MRI, conventional MRI, and No-DL MRI examinations to evaluate image qua… Show more

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