School of Biomedical Engineering and Imaging Sciences, King's College London, London, UK.
Br J Radiol. 2023 Oct;96(1150):20230292. doi: 10.1259/bjr.20230292. Epub 2023 Sep 4.
Image reconstruction for positron emission tomography (PET) has been developed over many decades, with advances coming from improved modelling of the data statistics and improved modelling of the imaging physics. However, high noise and limited spatial resolution have remained issues in PET imaging, and state-of-the-art PET reconstruction has started to exploit other medical imaging modalities (such as MRI) to assist in noise reduction and enhancement of PET's spatial resolution. Nonetheless, there is an ongoing drive towards not only improving image quality, but also reducing the injected radiation dose and reducing scanning times. While the arrival of new PET scanners (such as total body PET) is helping, there is always a need to improve reconstructed image quality due to the time and count limited imaging conditions. Artificial intelligence (AI) methods are now at the frontier of research for PET image reconstruction. While AI can learn the imaging physics as well as the noise in the data (when given sufficient examples), one of the most common uses of AI arises from exploiting databases of high-quality reference examples, to provide advanced noise compensation and resolution recovery. There are three main AI reconstruction approaches: (i) direct data-driven AI methods which rely on supervised learning from reference data, (ii) iterative (unrolled) methods which combine our physics and statistical models with AI learning from data, and (iii) methods which exploit AI with our known models, but crucially can offer benefits even in the absence of any example training data whatsoever. This article reviews these methods, considering opportunities and challenges of AI for PET reconstruction.
正电子发射断层成像(PET)的图像重建技术已经发展了几十年,其进展来自于对数据统计的改进建模和成像物理的改进建模。然而,高噪声和有限的空间分辨率仍然是 PET 成像中的问题,最先进的 PET 重建技术已经开始利用其他医学成像模式(如 MRI)来协助降低噪声和提高 PET 的空间分辨率。尽管如此,人们不仅在努力提高图像质量,还在努力降低注射辐射剂量和减少扫描时间。虽然新型 PET 扫描仪(如全身 PET)的出现有所帮助,但由于成像条件受到时间和计数的限制,始终需要提高重建图像的质量。人工智能(AI)方法现在是 PET 图像重建研究的前沿。虽然 AI 可以学习成像物理以及数据中的噪声(在提供足够的示例的情况下),但 AI 的最常见用途之一是利用高质量参考示例数据库,提供先进的噪声补偿和分辨率恢复。有三种主要的 AI 重建方法:(i)直接数据驱动的 AI 方法,依赖于从参考数据进行监督学习,(ii)迭代(展开)方法,将我们的物理和统计模型与 AI 从数据中学习相结合,以及(iii)利用 AI 与我们已知模型的方法,但关键是即使没有任何示例训练数据,也可以提供好处。本文综述了这些方法,考虑了 AI 在 PET 重建中的机遇和挑战。