Radiomics for diagnosing clinically significant prostate cancer PI-RADS 3: what is already known and what to do next?

Alexandra S. Tyan, Grigoriy G. Karmazanovskij, N. A. Karelskaya, Evgeniy V. Kondratyev, Alexander D. Kovalev
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Abstract

BACKGROUND: Prostate cancer is currently the second most commonly diagnosed cancer in men. The second edition of the Prostate Imaging Magnetic Resonance Imaging Data Assessment and Reporting System (PI-RADS) was released in 2019 to standardize the diagnostic process. Within this classification, the PI-RADS 3 category indicates an intermediate risk of clinically significant prostate cancer. There is currently no consensus in the literature regarding the optimal treatment for patients in this category. Some researchers advocate for biopsy as a means of further evaluation, while others propose a strategy of active surveillance for these patients. AIM: The aim of this study is to analyze and compare existing diagnostic models based on radiomics to differentiate and detect clinically significant prostate cancer in patients with a PI-RADS 3 category. MATERIALS AND METHODS: A comprehensive search of the PubMed, Scopus, and Web of Science databases was conducted using the following keywords: PI-RADS 3, radiomics, texture analysis, clinically significant prostate cancer, with additional emphasis on studies evaluated by Radiology Quality Score. The selected studies were required to meet the following criteria: (1) identification of PI-RADS 3 according to version 2.1 guidelines, (2) use of systemic biopsy as a control, (3) use of tools compatible with the IBSI standard for analyzing radiologic features, and (4) detailed description of methodology. Consequently, four meta-analyses and 12 original articles were selected. RESULTS: Radiomics-based diagnostic models have demonstrated considerable potential for enhancing the accuracy of detecting clinically significant prostate cancer in the PI-RADS 3 category using the PI-RADS V2.1 system. However, studies by A. Stanzione A. et al. and J. Bleker et al. have identified quality issues with such models, which constrains their clinical application based on low Radiology Quality Score values. In contrast, the works of T. Li et al. and Y. Hou et al. proposed innovative methods, including nomogram development and the application of machine learning, which demonstrated the potential of radiomics in improving diagnosis for this category. This indicates the potential for further development and application of radiomics in clinical practice. CONCLUSIONS: Although the models developed today cannot completely replace PI-RADS, the inclusion of radiomics can greatly enhance the efficiency of the diagnostic process by providing radiologists with quantitative and qualitative criteria that will enable the diagnosis of prostate cancer with greater confidence.
用于诊断具有临床意义的前列腺癌 PI-RADS 3 的放射组学:已知情况和下一步行动?
背景:前列腺癌是目前第二大最常诊断出的男性癌症。2019 年发布了第二版前列腺成像磁共振成像数据评估和报告系统(PI-RADS),以规范诊断过程。在这一分类中,PI-RADS 3 类表示临床意义重大的前列腺癌的中等风险。目前,文献中尚未就该类患者的最佳治疗方法达成共识。一些研究人员主张将活检作为进一步评估的一种手段,而另一些研究人员则建议对这些患者采取积极监测的策略。目的:本研究旨在分析和比较现有的基于放射组学的诊断模型,以区分和检测 PI-RADS 3 类患者中具有临床意义的前列腺癌。材料与方法:使用以下关键词对 PubMed、Scopus 和 Web of Science 数据库进行了全面搜索:PI-RADS 3、放射组学、纹理分析、有临床意义的前列腺癌,重点是通过放射学质量评分进行评估的研究。所选研究必须符合以下标准:(1) 根据 2.1 版指南确定 PI-RADS 3;(2) 使用全身活检作为对照;(3) 使用符合 IBSI 标准的工具分析放射学特征;(4) 详细描述研究方法。因此,共筛选出 4 篇荟萃分析和 12 篇原创文章。结果:基于放射组学的诊断模型已显示出相当大的潜力,可提高使用 PI-RADS V2.1 系统检测 PI-RADS 3 类别中具有临床意义的前列腺癌的准确性。然而,A. Stanzione A.等人和 J. Bleker 等人的研究发现了这些模型的质量问题,这限制了它们的临床应用,因为它们的放射质量评分值很低。相比之下,T. Li 等人和 Y. Hou 等人的研究提出了创新方法,包括提名图的开发和机器学习的应用,证明了放射组学在改善这类疾病诊断方面的潜力。这表明放射组学在临床实践中具有进一步发展和应用的潜力。结论:虽然目前开发的模型还不能完全取代 PI-RADS,但放射组学的加入可以为放射科医生提供定量和定性的标准,使他们在诊断前列腺癌时更有信心,从而大大提高诊断过程的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
44
审稿时长
5 weeks
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