A study on the quality of T2-weighted FatSat images of prostate and its diagnostic value based on deep learning reconstruction technology
|更新时间:2025-12-15
|
A study on the quality of T2-weighted FatSat images of prostate and its diagnostic value based on deep learning reconstruction technology
“Deep learning technology improves the quality of prostate magnetic resonance imaging, has high diagnostic value, shortens scanning time, and has broad clinical application prospects.”
Shijie DONG, Xiaoxin HU, Xiaohang LIU, et al. A study on the quality of T2-weighted FatSat images of prostate and its diagnostic value based on deep learning reconstruction technology[J]. Oncoradiology, 2025, 34(4): 379-386.
DOI:
Shijie DONG, Xiaoxin HU, Xiaohang LIU, et al. A study on the quality of T2-weighted FatSat images of prostate and its diagnostic value based on deep learning reconstruction technology[J]. Oncoradiology, 2025, 34(4): 379-386. DOI: 10.19732/j.cnki.2096-6210.2025.04.009.
A study on the quality of T2-weighted FatSat images of prostate and its diagnostic value based on deep learning reconstruction technology
The value of transrectal ultrasound fusion with mpMRI navigation combined with elastography-guided targeted prostate biopsy
Diagnostic efficiency and inter-observer agreement among readers with variable experience of PI-RR system: using whole-mount histology after androgen deprivation therapy as reference
The value of quantitative parameters of amide proton transfer imaging in predicting bone metastasis of prostate
Diagnostic value of PSAD, TRTE combined with mpMRI for prostate cancer in grey area of PSA
The value of textural-analysis of PET/CT and multiparametric magnetic resonance imaging in the diagnosis of transition zone prostatic tumour
Related Author
Anyu LI
Zheng ZHU
Qi MA
CHEN Zhangzhe
ZHOU Bingni
LIU Wei
GAN Hualei
YANG Lirui
Related Institution
Department of Ultrasound, Soochow University Affiliated Taicang First People's Hospital
Department of Ultrasound, The Second Affiliated Hospital of Soochow University
Department of Radiology, Shanghai Geriatric Medical Center
Department of Radiology, Fudan University Shanghai Cancer Center, Department of Oncology, Shanghai Medical College, Fudan University
Department of Pathology, Fudan University Shanghai Cancer Center, Department of Oncology, Shanghai Medical College, Fudan University