Fenwick David, NaderiAlizadeh Navid, Tarokh Vahid, Clark Darin, Rajagopal Jayasai, Kapadia Anuj, Felice Nicholas, Samei Ehsan, Abadi Ehsan
Department of Radiology, Duke University.
Department of Biostatistics and Bioinformatics, Duke University.
Proc SPIE Int Soc Opt Eng. 2025 Feb;13405. doi: 10.1117/12.3046807. Epub 2025 Apr 8.
Protocol optimization is critical in Computed Tomography (CT) for achieving desired diagnostic image quality while minimizing radiation dose. Due to the inter-effect of influencing CT parameters, traditional optimization methods rely on the testing of exhaustive combinations of these parameters. This poses a notable limitation due to the impracticality of exhaustive parameter testing. This study introduces a novel methodology leveraging Virtual Imaging Trials (VITs) and reinforcement learning to more efficiently optimize CT protocols. Computational phantoms with liver lesions were imaged using a validated CT simulator and reconstructed with a novel CT reconstruction Toolkit. The optimization parameter space included tube voltage, tube current, reconstruction kernel, slice thickness, and pixel size. The optimization process was done using a Proximal Policy Optimization (PPO) agent which was trained to maximize the Detectability Index (d') of the liver lesion for each reconstructed image. Results showed that our reinforcement learning approach found the absolute maximum d' across the test cases while requiring 79.7% fewer steps compared to an exhaustive search, demonstrating both accuracy and computational efficiency, offering a efficient and robust framework for CT protocol optimization. The flexibility of the proposed technique allows for use of varying image quality metrics as the objective metric to maximize for. Our findings highlight the advantages of combining VIT and reinforcement learning for CT protocol management.
在计算机断层扫描(CT)中,协议优化对于在将辐射剂量降至最低的同时实现所需的诊断图像质量至关重要。由于影响CT参数的相互作用,传统的优化方法依赖于对这些参数的详尽组合进行测试。由于详尽的参数测试不切实际,这带来了显著的局限性。本研究引入了一种利用虚拟成像试验(VIT)和强化学习来更有效地优化CT协议的新方法。使用经过验证的CT模拟器对带有肝脏病变的计算体模进行成像,并使用新型CT重建工具包进行重建。优化参数空间包括管电压、管电流、重建内核、切片厚度和像素大小。优化过程使用近端策略优化(PPO)智能体完成,该智能体经过训练,以最大化每个重建图像中肝脏病变的可检测性指数(d')。结果表明,我们的强化学习方法在测试案例中找到了绝对最大的d',与穷举搜索相比,所需步骤减少了79.7%,既展示了准确性又体现了计算效率,为CT协议优化提供了一个高效且强大的框架。所提出技术的灵活性允许使用不同的图像质量指标作为要最大化的目标指标。我们的研究结果突出了将VIT和强化学习相结合用于CT协议管理的优势。