Arita Yuki, Kwee Thomas C, Akin Oguz, Shigeta Keisuke, Paudyal Ramesh, Roest Christian, Ueda Ryo, Lema-Dopico Alfonso, Nalavenkata Sunny, Ruby Lisa, Nissan Noam, Edo Hiromi, Yoshida Soichiro, Shukla-Dave Amita, Schwartz Lawrence H
Department of Radiology, Memorial Sloan Kettering Cancer Center, New York, NY, USA.
Department of Radiology, Nuclear Medicine and Molecular Imaging, University Medical Center Groningen, Groningen, The Netherlands.
Insights Imaging. 2025 Jan 2;16(1):7. doi: 10.1186/s13244-024-01884-5.
Bladder cancer is the 10th most common and 13th most deadly cancer worldwide, with urothelial carcinomas being the most common type. Distinguishing between non-muscle-invasive bladder cancer (NMIBC) and muscle-invasive bladder cancer (MIBC) is essential due to significant differences in management and prognosis. MRI may play an important diagnostic role in this setting. The Vesical Imaging Reporting and Data System (VI-RADS), a multiparametric MRI (mpMRI)-based consensus reporting platform, allows for standardized preoperative muscle invasion assessment in BCa with proven diagnostic accuracy. However, post-treatment assessment using VI-RADS is challenging because of anatomical changes, especially in the interpretation of the muscle layer. MRI techniques that provide tumor tissue physiological information, including diffusion-weighted (DW)- and dynamic contrast-enhanced (DCE)-MRI, combined with derived quantitative imaging biomarkers (QIBs), may potentially overcome the limitations of BCa evaluation when predominantly focusing on anatomic changes at MRI, particularly in the therapy response setting. Delta-radiomics, which encompasses the assessment of changes (Δ) in image features extracted from mpMRI data, has the potential to monitor treatment response. In comparison to the current Response Evaluation Criteria in Solid Tumors (RECIST), QIBs and mpMRI-based radiomics, in combination with artificial intelligence (AI)-based image analysis, may potentially allow for earlier identification of therapy-induced tumor changes. This review provides an update on the potential of QIBs and mpMRI-based radiomics and discusses the future applications of AI in BCa management, particularly in assessing treatment response. CRITICAL RELEVANCE STATEMENT: Incorporating mpMRI-based quantitative imaging biomarkers, radiomics, and artificial intelligence into bladder cancer management has the potential to enhance treatment response assessment and prognosis prediction. KEY POINTS: Quantitative imaging biomarkers (QIBs) from mpMRI and radiomics can outperform RECIST for bladder cancer treatments. AI improves mpMRI segmentation and enhances radiomics feature extraction effectively. Predictive models integrate imaging biomarkers and clinical data using AI tools. Multicenter studies with strict criteria validate radiomics and QIBs clinically. Consistent mpMRI and AI applications need reliable validation in clinical practice.
膀胱癌是全球第10大常见癌症和第13大致命癌症,其中尿路上皮癌是最常见的类型。区分非肌层浸润性膀胱癌(NMIBC)和肌层浸润性膀胱癌(MIBC)至关重要,因为两者在治疗和预后方面存在显著差异。MRI在这种情况下可能发挥重要的诊断作用。基于多参数MRI(mpMRI)的共识报告平台——膀胱影像报告和数据系统(VI-RADS),能够对膀胱癌进行标准化的术前肌层浸润评估,且诊断准确性已得到验证。然而,由于解剖结构的改变,尤其是在肌层的解读方面,使用VI-RADS进行治疗后评估具有挑战性。能够提供肿瘤组织生理信息的MRI技术,包括扩散加权(DW)和动态对比增强(DCE)MRI,并结合衍生的定量成像生物标志物(QIBs),在主要关注MRI解剖学变化时,特别是在治疗反应情况下,可能会克服膀胱癌评估的局限性。Delta-放射组学,包括对从mpMRI数据中提取的图像特征变化(Δ)的评估,有监测治疗反应的潜力。与目前的实体瘤疗效评价标准(RECIST)相比,QIBs和基于mpMRI的放射组学,结合基于人工智能(AI)的图像分析,可能会更早地识别治疗引起的肿瘤变化。本综述介绍了QIBs和基于mpMRI的放射组学的潜力,并讨论了AI在膀胱癌管理中的未来应用,特别是在评估治疗反应方面。关键相关性声明:将基于mpMRI的定量成像生物标志物、放射组学和人工智能纳入膀胱癌管理,有可能增强治疗反应评估和预后预测。要点:来自mpMRI的定量成像生物标志物(QIBs)和放射组学在膀胱癌治疗方面可能优于RECIST。AI可改善mpMRI分割并有效增强放射组学特征提取。预测模型使用AI工具整合成像生物标志物和临床数据。具有严格标准的多中心研究在临床上验证放射组学和QIBs。在临床实践中,一致的mpMRI和AI应用需要可靠的验证。