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Zhangzhe Chen

Showing results (1-10 of 3) with videos related to

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Quantitative Imaging in Medicine and Surgery|April 15, 2024
Diagnostic efficacy and interobserver agreement among readers with variable experience of the Prostate Imaging for Recurrence Reporting system with whole-mount histology after androgen deprivation therapy as a referenceZhangzhe Chen, Bingni Zhou, Wei Liu, et al.
Quantitative Imaging in Medicine and Surgery|October 13, 2025
Biparametric magnetic resonance imaging-based radiomics model can improve the detection of dense and sparse prostate cancersBingni Zhou, Ting Wang, Zhangzhe Chen, et al.
Radiology Research and Practice|June 12, 2026
Multicenter Study Suggests Unsupervised Learning Derived From MRI Identifies Prognostic Subgroups in Prostate Cancer Patients After ProstatectomyGuoqing Hu, Xiaofeng Liu, Zhangzhe Chen, et al.
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Showing results (1-10 of 3) with videos related to

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Pageof 1
Quantitative Imaging in Medicine and Surgery|April 15, 2024
Diagnostic efficacy and interobserver agreement among readers with variable experience of the Prostate Imaging for Recurrence Reporting system with whole-mount histology after androgen deprivation therapy as a referenceZhangzhe Chen, Bingni Zhou, Wei Liu, et al.
Quantitative Imaging in Medicine and Surgery|October 13, 2025
Biparametric magnetic resonance imaging-based radiomics model can improve the detection of dense and sparse prostate cancersBingni Zhou, Ting Wang, Zhangzhe Chen, et al.
Radiology Research and Practice|June 12, 2026
Multicenter Study Suggests Unsupervised Learning Derived From MRI Identifies Prognostic Subgroups in Prostate Cancer Patients After ProstatectomyGuoqing Hu, Xiaofeng Liu, Zhangzhe Chen, et al.
Pageof 1