Michaely Henrik J, Aringhieri Giacomo, Cioni Dania, Neri Emanuele
Medical Faculty Mannheim, University of Heidelberg, 69120 Heidelberg, Germany.
Academic Radiology, Department of Translational Research, University of Pisa, 56126 Pisa, Italy.
Diagnostics (Basel). 2022 Mar 24;12(4):799. doi: 10.3390/diagnostics12040799.
Prostate cancer detection with magnetic resonance imaging is based on a standardized MRI-protocol according to the PI-RADS guidelines including morphologic imaging, diffusion weighted imaging, and perfusion. To facilitate data acquisition and analysis the contrast-enhanced perfusion is often omitted resulting in a biparametric prostate MRI protocol. The intention of this review is to analyze the current value of biparametric prostate MRI in combination with methods of machine-learning and deep learning in the detection, grading, and characterization of prostate cancer; if available a direct comparison with human radiologist performance was performed. PubMed was systematically queried and 29 appropriate studies were identified and retrieved. The data show that detection of clinically significant prostate cancer and differentiation of prostate cancer from non-cancerous tissue using machine-learning and deep learning is feasible with promising results. Some techniques of machine-learning and deep-learning currently seem to be equally good as human radiologists in terms of classification of single lesion according to the PIRADS score.
基于磁共振成像的前列腺癌检测是根据PI-RADS指南的标准化MRI方案进行的,包括形态学成像、扩散加权成像和灌注成像。为便于数据采集和分析,通常会省略对比增强灌注,从而形成双参数前列腺MRI方案。本综述的目的是分析双参数前列腺MRI结合机器学习和深度学习方法在前列腺癌检测、分级和特征描述中的当前价值;如有可能,还与人类放射科医生的表现进行了直接比较。我们系统地检索了PubMed,并识别和检索了29项相关研究。数据表明,使用机器学习和深度学习检测临床显著前列腺癌以及区分前列腺癌与非癌组织是可行的,结果令人鼓舞。就根据PIRADS评分对单个病变进行分类而言,目前一些机器学习和深度学习技术似乎与人类放射科医生表现相当。