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基于深度学习重建的前列腺MRI在应对癌症筛查需求中的应用——一项系统评价与Meta分析

Prostate MRI Using Deep Learning Reconstruction in Response to Cancer Screening Demands-A Systematic Review and Meta-Analysis.

作者信息

Ursprung Stephan, Agrotis Georgios, van Houdt Petra J, Ter Beek Leon C, Boellaard Thierry N, Beets-Tan Regina G H, Yakar Derya, Padhani Anwar R, Schoots Ivo G

机构信息

Department of Radiology, The Netherlands Cancer Institute, 1066 CX Amsterdam, The Netherlands.

Department of Diagnostic and Interventional Radiology, Tübingen University Hospital, Karls-Eberhardt University, 72076 Tübingen, Germany.

出版信息

J Pers Med. 2025 Jul 2;15(7):284. doi: 10.3390/jpm15070284.

Abstract

: There is a growing need for efficient prostate MRI protocols due to their increasing use in managing prostate cancer (PCa) and potential inclusion in screening. Deep learning reconstruction (DLR) may enhance MR acquisitions and improve image quality compared to conventional acceleration techniques. This systematic review examines DLR approaches to prostate MRI. : A search of PubMed, Web of Science, and Google Scholar identified eligible studies comparing DLR to conventional reconstruction for prostate imaging. A narrative synthesis was performed to summarize the impact of DLR on acquisition time, image quality, and diagnostic performance. : Thirty-three studies showed that DLR can reduce acquisition times for Tw and DWI imaging while maintaining or improving image quality. It did not significantly affect clinical tasks, such as biopsy decisions, and performed comparably to human readers in PI-RADS scoring and the detection of extraprostatic extension. However, AI models trained on conventional data might be less accurate with DLR images. The heterogeneity in image quality metrics among the studies prevented quantitative synthesis. : DLR has the potential to achieve substantial time savings in prostate MRI while maintaining image quality, which is especially relevant because of increased MRI demands. Future research should address the effect of DLR on clinically relevant downstream tasks, including AI algorithms' performances and biopsy decisions, and explore task-specific accelerated protocols for screening, image-guided biopsy, and treatment.

摘要

由于前列腺磁共振成像(MRI)在前列腺癌(PCa)管理中的应用日益增加以及可能纳入筛查,对高效的前列腺MRI方案的需求也在不断增长。与传统的加速技术相比,深度学习重建(DLR)可能会增强磁共振成像采集并提高图像质量。本系统综述研究了前列腺MRI的DLR方法。:通过检索PubMed、科学网和谷歌学术,确定了将DLR与传统重建用于前列腺成像进行比较的合格研究。进行了叙述性综合分析,以总结DLR对采集时间、图像质量和诊断性能的影响。:33项研究表明,DLR可以减少T2加权成像(T2w)和扩散加权成像(DWI)的采集时间,同时保持或提高图像质量。它对活检决策等临床任务没有显著影响,并且在前列腺影像报告和数据系统(PI-RADS)评分以及前列腺外侵犯检测方面与人类阅片者表现相当。然而,在传统数据上训练的人工智能模型对DLR图像的准确性可能较低。研究之间图像质量指标的异质性妨碍了定量综合分析。:DLR有可能在保持图像质量的同时,大幅节省前列腺MRI的时间,鉴于对MRI需求的增加,这一点尤为重要。未来的研究应解决DLR对临床相关下游任务的影响,包括人工智能算法的性能和活检决策,并探索针对筛查、图像引导活检和治疗的特定任务加速方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9975/12298121/735e69245f37/jpm-15-00284-g0A1a.jpg

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