Recent trends in AI applications for pelvic MRI: a comprehensive review

Takahiro Tsuboyama, Masahiro Yanagawa, Tomoyuki Fujioka, Shohei Fujita, Daiju Ueda, Rintaro Ito, Akira Yamada, Yasutaka Fushimi, Fuminari Tatsugami, Takeshi Nakaura, Taiki Nozaki, Koji Kamagata, Yusuke Matsui, Kenji Hirata, Noriyuki Fujima, Mariko Kawamura, Shinji Naganawa
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Abstract

Magnetic resonance imaging (MRI) is an essential tool for evaluating pelvic disorders affecting the prostate, bladder, uterus, ovaries, and/or rectum. Since the diagnostic pathway of pelvic MRI can involve various complex procedures depending on the affected organ, the Reporting and Data System (RADS) is used to standardize image acquisition and interpretation. Artificial intelligence (AI), which encompasses machine learning and deep learning algorithms, has been integrated into both pelvic MRI and the RADS, particularly for prostate MRI. This review outlines recent developments in the use of AI in various stages of the pelvic MRI diagnostic pathway, including image acquisition, image reconstruction, organ and lesion segmentation, lesion detection and classification, and risk stratification, with special emphasis on recent trends in multi-center studies, which can help to improve the generalizability of AI.

Abstract Image

人工智能在盆腔磁共振成像中应用的最新趋势:全面回顾
磁共振成像(MRI)是评估影响前列腺、膀胱、子宫、卵巢和/或直肠的盆腔疾病的重要工具。由于盆腔磁共振成像的诊断路径可能涉及各种复杂的程序,具体取决于受影响的器官,因此报告和数据系统(RADS)被用来规范图像采集和解读。人工智能(AI)包括机器学习和深度学习算法,已被整合到盆腔磁共振成像和 RADS 中,尤其是前列腺磁共振成像。这篇综述概述了人工智能在盆腔 MRI 诊断路径各阶段应用的最新进展,包括图像采集、图像重建、器官和病灶分割、病灶检测和分类以及风险分层,并特别强调了多中心研究的最新趋势,这有助于提高人工智能的普适性。
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