Clinical Computational Medical Imaging Research, Department of Diagnostic and Interventional Radiology and Neuroradiology, University Hospital Augsburg, Germany.
Institute of Digital Medicine, Universitätsklinikum Augsburg, Germany.
Nuklearmedizin. 2023 Dec;62(6):343-353. doi: 10.1055/a-2200-2145. Epub 2023 Nov 23.
Volumetry is crucial in oncology and endocrinology, for diagnosis, treatment planning, and evaluating response to therapy for several diseases. The integration of Artificial Intelligence (AI) and Deep Learning (DL) has significantly accelerated the automatization of volumetric calculations, enhancing accuracy and reducing variability and labor. In this review, we show that a high correlation has been observed between Machine Learning (ML) methods and expert assessments in tumor volumetry; Yet, it is recognized as more challenging than organ volumetry. Liver volumetry has shown progression in accuracy with a decrease in error. If a relative error below 10 % is acceptable, ML-based liver volumetry can be considered reliable for standardized imaging protocols if used in patients without major anomalies. Similarly, ML-supported automatic kidney volumetry has also shown consistency and reliability in volumetric calculations. In contrast, AI-supported thyroid volumetry has not been extensively developed, despite initial works in 3D ultrasound showing promising results in terms of accuracy and reproducibility. Despite the advancements presented in the reviewed literature, the lack of standardization limits the generalizability of ML methods across diverse scenarios. The domain gap, i. e., the difference in probability distribution of training and inference data, is of paramount importance before clinical deployment of AI, to maintain accuracy and reliability in patient care. The increasing availability of improved segmentation tools is expected to further incorporate AI methods into routine workflows where volumetry will play a more prominent role in radionuclide therapy planning and quantitative follow-up of disease evolution.
容积测量在肿瘤学和内分泌学中至关重要,可用于诊断、治疗计划以及评估多种疾病的治疗反应。人工智能 (AI) 和深度学习 (DL) 的结合极大地加速了容积计算的自动化,提高了准确性,降低了变异性和劳动力。在这篇综述中,我们表明,机器学习 (ML) 方法与肿瘤容积学中的专家评估之间存在高度相关性;然而,它被认为比器官容积学更具挑战性。肝容积测量的准确性随着误差的降低而提高。如果可以接受相对误差低于 10%,则如果在没有重大异常的患者中使用标准化成像协议,则基于 ML 的肝容积测量可以被认为是可靠的。同样,支持 ML 的自动肾脏容积测量在容积计算方面也表现出了一致性和可靠性。相比之下,尽管在 3D 超声中进行了初步工作,显示出在准确性和可重复性方面具有有希望的结果,但基于 AI 的甲状腺容积测量尚未得到广泛开发。尽管文献综述中介绍了这些进展,但缺乏标准化限制了 ML 方法在各种场景中的通用性。在将 AI 临床部署之前,域差距(即训练和推理数据的概率分布差异)至关重要,以在患者护理中保持准确性和可靠性。预计改进的分割工具的可用性增加将进一步将 AI 方法纳入常规工作流程,其中容积测量将在放射性核素治疗计划和疾病演变的定量随访中发挥更重要的作用。