John Annette, Alhajj Reda, Rokne Jon
University of Calgary, Canada.
University of Calgary, Canada; Istanbul Medipol University, Turkey; University of Southern Denmark, Denmark.
Comput Methods Programs Biomed. 2025 May 6;268:108804. doi: 10.1016/j.cmpb.2025.108804.
Artificial Intelligence (AI) and Digital Twin (DT) technologies are rapidly transforming healthcare, offering the potential for personalized, accurate, and efficient medical care. This systematic review focuses on the intersection of AI-based digital twins and their applications in prostate cancer pathology. A digital twin, when applied to healthcare, creates a dynamic, data-driven virtual model that simulates a patient's biological systems in real-time. By incorporating AI techniques such as Machine Learning (ML) and Deep Learning (DL), these systems enhance predictive accuracy, enable early diagnosis, and facilitate individualized treatment strategies for prostate cancer. This review systematically examines recent advances (2020-2025) in AI-driven digital twins for prostate cancer, highlighting key methodologies, algorithms, and data integration strategies. The literature analysis also reveals substantial progress in image processing, predictive modeling, and clinical decision support systems, which are the basic tools used when implementing digital twins for prostate cancer care. Our survey also critically evaluates the strengths and limitations of current approaches, identifying gaps such as the need for real-time data integration, improved explainability in AI models, and more robust clinical validation. It concludes with a discussion of future research directions, emphasizing the importance of integrating multi-modal data with Large Language Models (LLMs) and Vision-Language Models (VLMs), scalability, and ethical considerations in advancing AI-driven digital twins for prostate cancer diagnosis and treatment. This paper provides a comprehensive resource for researchers and clinicians, offering insights into how AI-based digital twins can enhance precision medicine and improve patient outcomes in prostate cancer care.
人工智能(AI)和数字孪生(DT)技术正在迅速改变医疗保健领域,为个性化、准确和高效的医疗护理提供了潜力。本系统综述聚焦于基于人工智能的数字孪生及其在前列腺癌病理学中的应用。数字孪生应用于医疗保健领域时,会创建一个动态的、数据驱动的虚拟模型,实时模拟患者的生物系统。通过整合机器学习(ML)和深度学习(DL)等人工智能技术,这些系统提高了预测准确性,实现了早期诊断,并促进了前列腺癌的个性化治疗策略。本综述系统地研究了2020年至2025年期间人工智能驱动的前列腺癌数字孪生的最新进展,突出了关键方法、算法和数据集成策略。文献分析还揭示了图像处理、预测建模和临床决策支持系统方面的重大进展,这些是在实施前列腺癌护理数字孪生时使用的基本工具。我们的调查还批判性地评估了当前方法的优势和局限性,识别了一些差距,如实时数据集成的需求、人工智能模型中可解释性的改进以及更强大的临床验证。文章最后讨论了未来的研究方向,强调了在推进用于前列腺癌诊断和治疗的人工智能驱动数字孪生时,整合多模态数据与大语言模型(LLMs)和视觉语言模型(VLMs)、可扩展性以及伦理考量的重要性。本文为研究人员和临床医生提供了全面的资源,深入探讨了基于人工智能的数字孪生如何提高前列腺癌护理中的精准医学水平并改善患者预后。