人工智能在放射肿瘤学中应用的挑战与机遇:综述。

IF 0.2 Q3 MEDICINE, GENERAL & INTERNAL
Ewha Medical Journal Pub Date : 2024-10-01 Epub Date: 2024-10-31 DOI:10.12771/emj.2024.e49
Chiyoung Jeong, YoungMoon Goh, Jungwon Kwak
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引用次数: 0

摘要

人工智能(AI)正在迅速改变包括放射肿瘤学在内的各个医疗领域。这篇综述探讨了人工智能与放射肿瘤学的整合,强调了挑战和机遇。人工智能可以通过优化治疗计划、增强图像分析、促进适应性放射治疗和实现预测分析来提高放射治疗的精度、效率和结果。通过对大型数据集的分析,确定最优的治疗参数,人工智能可以自动化复杂的任务,减少规划时间,提高准确性。在图像分析方面,人工智能驱动的技术通过处理来自CT、MRI和PET扫描的数据来增强肿瘤检测和分割,从而实现精确的肿瘤描绘。在适应性放射治疗中,人工智能是有益的,因为它可以根据患者解剖结构和肿瘤大小的变化实时调整治疗计划,从而提高治疗的准确性和有效性。使用历史患者数据的预测分析可以预测治疗结果和潜在并发症,指导临床决策并实现更个性化的治疗策略。在放射肿瘤学中采用人工智能面临的挑战包括确保数据的质量和数量,实现互操作性和标准化,解决监管和伦理问题,以及克服临床实施的阻力。研究人员、临床医生、数据科学家和行业利益相关者之间的合作对于克服这些障碍至关重要。通过应对这些挑战,人工智能可以推动放射治疗的进步,改善患者护理和运营效率。本文综述了人工智能在放射肿瘤学中的应用现状,并对未来的研究和临床实践方向进行了展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Challenges and opportunities to integrate artificial intelligence in radiation oncology: a narrative review.

Challenges and opportunities to integrate artificial intelligence in radiation oncology: a narrative review.

Challenges and opportunities to integrate artificial intelligence in radiation oncology: a narrative review.

Challenges and opportunities to integrate artificial intelligence in radiation oncology: a narrative review.

Artificial intelligence (AI) is rapidly transforming various medical fields, including radiation oncology. This review explores the integration of AI into radiation oncology, highlighting both challenges and opportunities. AI can improve the precision, efficiency, and outcomes of radiation therapy by optimizing treatment planning, enhancing image analysis, facilitating adaptive radiation therapy, and enabling predictive analytics. Through the analysis of large datasets to identify optimal treatment parameters, AI can automate complex tasks, reduce planning time, and improve accuracy. In image analysis, AI-driven techniques enhance tumor detection and segmentation by processing data from CT, MRI, and PET scans to enable precise tumor delineation. In adaptive radiation therapy, AI is beneficial because it allows real-time adjustments to treatment plans based on changes in patient anatomy and tumor size, thereby improving treatment accuracy and effectiveness. Predictive analytics using historical patient data can predict treatment outcomes and potential complications, guiding clinical decision-making and enabling more personalized treatment strategies. Challenges to AI adoption in radiation oncology include ensuring data quality and quantity, achieving interoperability and standardization, addressing regulatory and ethical considerations, and overcoming resistance to clinical implementation. Collaboration among researchers, clinicians, data scientists, and industry stakeholders is crucial to overcoming these obstacles. By addressing these challenges, AI can drive advancements in radiation therapy, improving patient care and operational efficiencies. This review presents an overview of the current state of AI integration in radiation oncology and insights into future directions for research and clinical practice.

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来源期刊
Ewha Medical Journal
Ewha Medical Journal MEDICINE, GENERAL & INTERNAL-
自引率
33.30%
发文量
28
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