Shaping the Future of Personalized Therapy in Bladder Cancer Using Artificial Intelligence.

IF 5.6 2区 医学 Q1 UROLOGY & NEPHROLOGY
Martina Maggi, Francesco Chierigo, Giuseppe Fallara, Letizia Maria Ippolita Jannello, Marco Tozzi, Francesco Pellegrino, Felice Crocetto, Daniela Terracciano, Roberto Bianchi, Matteo Ferro
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引用次数: 0

Abstract

Bladder cancer (BC) ranks among the tenth most common cancers globally, and its management remains a significant challenge for both patients and clinicians in terms of care delivery and decision-making process. The integration of artificial intelligence (AI) tools-primarily machine learning and deep learning methods-into the current BC workflow offers an opportunity for a more personalized approach to treatment. This article provides a brief overview of AI applications across different steps of BC management (ie, detection, grading, staging, risk stratification, treatment, and outcome prediction), highlighting its potential to contribute to individualized management strategies. Despite significant advances, major barriers still impede broad applications of AI in BC clinical workflows. Overcoming these obstacles is critical to realize the full potential of AI-driven personalization of BC care in the coming decade. PATIENT SUMMARY: Our mini review summarizes how artificial intelligence (ie, a machine's ability to mimic human intelligence to perform tasks involving decision-making and problem-solving) has been applied to the management of bladder cancer, and whether it could lead to more precise treatment for patients diagnosed with this disease. Although several promising applications have been developed, more studies are necessary before these can be used in routine clinical practice.

利用人工智能塑造膀胱癌个性化治疗的未来。
膀胱癌(BC)是全球第十大最常见的癌症之一,其管理仍然是患者和临床医生在护理提供和决策过程方面的重大挑战。将人工智能(AI)工具(主要是机器学习和深度学习方法)集成到当前的BC工作流程中,为更个性化的治疗方法提供了机会。本文简要概述了人工智能在BC管理的不同步骤(即检测、分级、分期、风险分层、治疗和结果预测)中的应用,并强调了其有助于个性化管理策略的潜力。尽管取得了重大进展,但主要障碍仍然阻碍人工智能在BC临床工作流程中的广泛应用。克服这些障碍对于在未来十年实现人工智能驱动的BC护理个性化的全部潜力至关重要。患者总结:我们的迷你综述总结了人工智能(即机器模仿人类智能来执行涉及决策和解决问题的任务的能力)如何应用于膀胱癌的治疗,以及它是否可以为诊断患有这种疾病的患者带来更精确的治疗。虽然已经开发了一些有前景的应用,但在将其用于常规临床实践之前,还需要进行更多的研究。
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
European urology focus
European urology focus Medicine-Urology
CiteScore
10.40
自引率
3.70%
发文量
274
审稿时长
23 days
期刊介绍: European Urology Focus is a new sister journal to European Urology and an official publication of the European Association of Urology (EAU). EU Focus will publish original articles, opinion piece editorials and topical reviews on a wide range of urological issues such as oncology, functional urology, reconstructive urology, laparoscopy, robotic surgery, endourology, female urology, andrology, paediatric urology and sexual medicine. The editorial team welcome basic and translational research articles in the field of urological diseases. Authors may be solicited by the Editor directly. All submitted manuscripts will be peer-reviewed by a panel of experts before being considered for publication.
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