医学
系列(地层学)
前列腺
医学物理学
核医学
放射科
内科学
生物
癌症
古生物学
作者
Daniel Margolis,Aritrick Chatterjee,Nandita M. deSouza,Andriy Fedorov,Fiona M. Fennessy,Stephan E. Maier,Nancy A. Obuchowski,Shonit Punwani,Andrei S. Purysko,Rebecca Rakow‐Penner,Amita Shukla‐Dave,Clare M. Tempany,Michael A. Boss,Dariya Malyarenko
出处
期刊:American Journal of Roentgenology
[American Roentgen Ray Society]
日期:2024-10-02
摘要
Prostate MRI has traditionally relied on qualitative interpretation. However, quantitative components hold the potential to markedly improve performance. The ADC from DWI is probably the most widely recognized quantitative MRI biomarker and has shown strong discriminatory value for clinically significant prostate cancer (csPCa) as well as for recurrent cancer after treatment. Advanced diffusion techniques, including intravoxel incoherent motion, diffusion kurtosis, diffusion tensor imaging, and specific implementations such as restriction spectrum imaging, purport even better discrimination, but are more technically challenging. The inherent T1 and T2 of tissue also provide diagnostic value, with more advanced techniques deriving luminal water imaging and hybrid-multidimensional MRI. Dynamic contrast-enhanced imaging, primarily using a modified Tofts model, also shows independent discriminatory value. Finally, quantitative size and shape features can be combined with the aforementioned techniques and be further refined using radiomics, texture analysis, and artificial intelligence. Which technique will ultimately find widespread clinical use will depend on validation across a myriad of platforms use-cases.
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