Real-time spatiotemporal optimization during imaging.

Owen Dillon, Benjamin Lau, Shalini K Vinod, Paul J Keall, Tess Reynolds, Jan-Jakob Sonke, Ricky T O'Brien
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Abstract

High quality imaging is required for high quality medical care, especially in precision applications such as radiation therapy. Patient motion during image acquisition reduces image quality and is either accepted or dealt with retrospectively during image reconstruction. Here we formalize a general approach in which data acquisition is treated as a spatiotemporal optimization problem to solve in real time so that the acquired data has a specific structure that can be exploited during reconstruction. We provide results of the first-in-world clinical trial implementation of our spatiotemporal optimization approach, applied to respiratory correlated 4D cone beam computed tomography for lung cancer radiation therapy (NCT04070586, ethics approval 2019/ETH09968). Performing spatiotemporal optimization allowed us to maintain or improve image quality relative to the current clinical standard while reducing scan time by 63% and reducing scan radiation by 85%, improving clinical throughput and reducing the risk of secondary tumors. This result motivates application of the general spatiotemporal optimization approach to other types of patient motion such as cardiac signals and other modalities such as CT and MRI.

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成像过程中的实时时空优化。
高质量的医疗保健需要高质量的成像,特别是在精密应用中,如放射治疗。患者在图像采集过程中的运动降低了图像质量,在图像重建过程中要么被接受,要么被回顾性地处理。在这里,我们形式化了一种通用方法,其中数据采集被视为实时解决的时空优化问题,以便采集的数据具有可在重建期间利用的特定结构。我们提供了我们的时空优化方法在世界上首次应用于肺癌放射治疗呼吸相关四维锥束计算机断层扫描的临床试验结果(NCT04070586,伦理批准2019/ETH09968)。进行时空优化使我们能够保持或提高相对于当前临床标准的图像质量,同时将扫描时间减少63%,将扫描辐射减少85%,提高临床吞吐量并降低继发性肿瘤的风险。这一结果激发了将一般时空优化方法应用于其他类型的患者运动,如心脏信号和其他模式,如CT和MRI。
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