Artificial Intelligence and Deep Learning for Advancing PET Image Reconstruction: State-of-the-Art and Future Directions.

Nuklearmedizin. Nuclear medicine Pub Date : 2023-12-01 Epub Date: 2023-11-23 DOI:10.1055/a-2198-0358
Dirk Hellwig, Nils Constantin Hellwig, Steven Boehner, Timo Fuchs, Regina Fischer, Daniel Schmidt
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Abstract

Positron emission tomography (PET) is vital for diagnosing diseases and monitoring treatments. Conventional image reconstruction (IR) techniques like filtered backprojection and iterative algorithms are powerful but face limitations. PET IR can be seen as an image-to-image translation. Artificial intelligence (AI) and deep learning (DL) using multilayer neural networks enable a new approach to this computer vision task. This review aims to provide mutual understanding for nuclear medicine professionals and AI researchers. We outline fundamentals of PET imaging as well as state-of-the-art in AI-based PET IR with its typical algorithms and DL architectures. Advances improve resolution and contrast recovery, reduce noise, and remove artifacts via inferred attenuation and scatter correction, sinogram inpainting, denoising, and super-resolution refinement. Kernel-priors support list-mode reconstruction, motion correction, and parametric imaging. Hybrid approaches combine AI with conventional IR. Challenges of AI-assisted PET IR include availability of training data, cross-scanner compatibility, and the risk of hallucinated lesions. The need for rigorous evaluations, including quantitative phantom validation and visual comparison of diagnostic accuracy against conventional IR, is highlighted along with regulatory issues. First approved AI-based applications are clinically available, and its impact is foreseeable. Emerging trends, such as the integration of multimodal imaging and the use of data from previous imaging visits, highlight future potentials. Continued collaborative research promises significant improvements in image quality, quantitative accuracy, and diagnostic performance, ultimately leading to the integration of AI-based IR into routine PET imaging protocols.

推进PET图像重建的人工智能和深度学习:最新技术和未来方向。
正电子发射断层扫描(PET)是诊断疾病和监测治疗的重要手段。传统的图像重建技术,如滤波反向投影和迭代算法,功能强大,但面临局限性。PET IR可以看作是一种图像到图像的转换。人工智能(AI)和使用多层神经网络的深度学习(DL)为这一计算机视觉任务提供了一种新的方法。这篇综述旨在为核医学专业人员和人工智能研究人员提供相互理解。我们概述了PET成像的基本原理以及基于人工智能的PET IR及其典型算法和DL架构的最新技术。进步提高了分辨率和对比度恢复,降低了噪声,并通过推断衰减和散射校正、sinogram inpainting、去噪和超分辨率细化来去除伪影。核先验支持列表模式重建、运动校正和参数化成像。混合方法将人工智能与传统IR结合起来。人工智能辅助PET IR的挑战包括训练数据的可用性、交叉扫描仪的兼容性以及幻觉病变的风险。严格评估的需要,包括定量幻象验证和与传统红外诊断准确性的视觉比较,与监管问题一起被强调。第一个批准的基于人工智能的应用是临床可用的,其影响是可以预见的。新出现的趋势,如整合多模式成像和使用以前的成像访问数据,突出了未来的潜力。持续的合作研究有望显著改善图像质量、定量准确性和诊断性能,最终将基于人工智能的红外技术整合到常规PET成像方案中。
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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