Artificial intelligence-powered innovations in radiotherapy: boosting efficiency and efficacy.

Medical review (Berlin, Germany) Pub Date : 2025-02-28 eCollection Date: 2025-08-01 DOI:10.1515/mr-2025-0007
Junyi Chen, Xinlin Zhu, Jian-Yue Jin, Feng-Ming Spring Kong, Gen Yang
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引用次数: 0

Abstract

Cancer remains a substantial global health challenge, with steadily increasing incidence rates. Radiotherapy (RT) is a crucial component in cancer treatment. Nevertheless, due to limited resources, there is an urgent need to enhance both its efficiency and therapeutic efficacy. The integration of Artificial Intelligence (AI) into RT has proven to significantly improve treatment efficiency, especially in time-consuming tasks. This perspective demonstrates how AI enhances the efficiency of target delineation and treatment planning, and introduces the concept of All-in-One RT, which may greatly improve RT efficiency. Furthermore, the concept of Radiotherapy Digital Twins (RDTs) is introduced. By integrating patient-specific data with AI, RDTs enable personalized and precise treatment, as well as the evaluation of therapeutic efficacy. This perspective highlights the transformative impact of AI and digital twin technologies in revolutionizing cancer RT, with the aim of making RT more accessible and effective on a global scale.

Abstract Image

Abstract Image

人工智能驱动的放射治疗创新:提高效率和疗效。
癌症仍然是一项重大的全球健康挑战,发病率稳步上升。放射治疗(RT)是癌症治疗的重要组成部分。然而,由于资源有限,迫切需要提高其效率和治疗效果。人工智能(AI)与RT的集成已被证明可以显着提高治疗效率,特别是在耗时的任务中。该视角展示了人工智能如何提高靶区描绘和治疗计划的效率,并引入了All-in-One RT的概念,这可能会大大提高RT效率。此外,还介绍了放射治疗数字双胞胎(RDTs)的概念。通过将患者特定数据与人工智能相结合,RDTs可以实现个性化和精确治疗,并评估治疗效果。这一观点强调了人工智能和数字孪生技术在彻底改变癌症放疗方面的变革性影响,目的是使放疗在全球范围内更容易获得和更有效。
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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CiteScore
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