Lopes Leonor, Lopez-Montes Alejandro, Chen Yizhou, Koller Pia, Rathod Narendra, Blomgren August, Caobelli Federico, Rominger Axel, Shi Kuangyu, Seifert Robert
Department of Nuclear Medicine, Inselspital, Bern University Hospital, University of Bern, Bern, Switzerland; Graduate School for Cellular and Biomedical Sciences, University of Bern, Bern, Switzerland.
Department of Nuclear Medicine, Inselspital, Bern University Hospital, University of Bern, Bern, Switzerland.
Semin Nucl Med. 2025 May;55(3):313-327. doi: 10.1053/j.semnuclmed.2025.01.006. Epub 2025 Feb 10.
Nuclear medicine has continuously evolved since its beginnings, constantly improving the diagnosis and treatment of various diseases. The integration of artificial intelligence (AI) is one of the latest revolutionizing chapters, promising significant advancements in diagnosis, prognosis, segmentation, image quality enhancement, and theranostics. Early AI applications in nuclear medicine focused on improving diagnostic accuracy, leveraging machine learning algorithms for disease classification and outcome prediction. Advances in deep learning, including convolutional and more recently transformer-based neural networks, have further enabled more precise diagnosis and image segmentation as well as low-dose imaging, and patient-specific dosimetry for personalized treatment. Generative AI, driven by large language models and diffusion techniques, is now allowing the process, interpretation, and generation of complex medical language and images. Despite these achievements, challenges such as data scarcity, heterogeneity, and ethical concerns remain barriers to clinical translation. Addressing these issues through interdisciplinary collaboration will pave the way for a broader adoption of AI in nuclear medicine, potentially enhancing patient care and optimizing diagnosis and therapeutic outcomes.
自诞生以来,核医学不断发展,持续改进各种疾病的诊断和治疗方法。人工智能(AI)的融入是最新的变革篇章之一,有望在诊断、预后、分割、图像质量提升以及诊疗一体化方面取得重大进展。核医学早期的人工智能应用专注于提高诊断准确性,利用机器学习算法进行疾病分类和结果预测。深度学习的进展,包括卷积神经网络以及最近基于Transformer的神经网络,进一步实现了更精确的诊断和图像分割、低剂量成像以及个性化治疗的患者特异性剂量测定。由大语言模型和扩散技术驱动的生成式人工智能,现在能够处理、解释和生成复杂的医学语言和图像。尽管取得了这些成就,但数据稀缺、异质性和伦理问题等挑战仍然是临床转化的障碍。通过跨学科合作解决这些问题,将为人工智能在核医学中的更广泛应用铺平道路,有可能改善患者护理并优化诊断和治疗结果。