Enhancing Interoperability and Harmonisation of Nuclear Medicine Image Data and Associated Clinical Data.

IF 1.2
Nuklearmedizin. Nuclear medicine Pub Date : 2023-12-01 Epub Date: 2023-10-31 DOI:10.1055/a-2187-5701
Timo Fuchs, Lena Kaiser, Dominik Müller, Laszlo Papp, Regina Fischer, Johannes Tran-Gia
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Abstract

Nuclear imaging techniques such as positron emission tomography (PET) and single photon emission computed tomography (SPECT) in combination with computed tomography (CT) are established imaging modalities in clinical practice, particularly for oncological problems. Due to a multitude of manufacturers, different measurement protocols, local demographic or clinical workflow variations as well as various available reconstruction and analysis software, very heterogeneous datasets are generated. This review article examines the current state of interoperability and harmonisation of image data and related clinical data in the field of nuclear medicine. Various approaches and standards to improve data compatibility and integration are discussed. These include, for example, structured clinical history, standardisation of image acquisition and reconstruction as well as standardised preparation of image data for evaluation. Approaches to improve data acquisition, storage and analysis will be presented. Furthermore, approaches are presented to prepare the datasets in such a way that they become usable for projects applying artificial intelligence (AI) (machine learning, deep learning, etc.). This review article concludes with an outlook on future developments and trends related to AI in nuclear medicine, including a brief research of commercial solutions.

Abstract Image

增强核医学图像数据和相关临床数据的互操作性和协调性。
核成像技术,如正电子发射断层扫描(PET)和单光子发射计算机断层扫描(SPECT)与计算机断层扫描相结合,是临床实践中建立的成像模式,特别是对于肿瘤学问题。由于制造商众多,测量协议不同,当地人口统计或临床工作流程变化,以及各种可用的重建和分析软件,产生了非常异构的数据集。这篇综述文章探讨了核医学领域图像数据和相关临床数据的互操作性和协调性的现状。讨论了改进数据兼容性和集成的各种方法和标准。例如,这些包括结构化的临床病史、图像采集和重建的标准化以及用于评估的图像数据的标准化准备。将介绍改进数据采集、存储和分析的方法。此外,还提出了准备数据集的方法,使其可用于应用人工智能(AI)的项目(机器学习、深度学习等)。这篇综述文章最后展望了核医学中人工智能的未来发展和趋势,包括商业解决方案的简要研究。
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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