基于深度学习的单视图时间分辨率锥束CT运动补偿。

IF 3.2 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Medical physics Pub Date : 2025-06-04 DOI:10.1002/mp.17911
Joscha Maier, Stefan Sawall, Marcel Arheit, Pascal Paysan, Marc Kachelrieß
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引用次数: 0

摘要

背景:受运动影响的锥束CT (CBCT)扫描通常需要运动补偿来减少伪影或重建患者的4D (3D+时间)表征。为了做到这一点,大多数现有的策略依赖于某种门控策略,将获得的投影分类到运动箱中。随后,在进一步的后处理应用于提高图像质量之前,这些箱可以单独重建。虽然这个概念对周期性运动模式是有用的,但它在观察到的非周期性运动的情况下就失效了,例如,在呼吸不规律的患者中。为了解决这一问题并提高时间分辨率,我们提出了基于深度单角度的运动补偿(SAMoCo)方法。方法:为了避免门控及其缺点,深度SAMoCo训练了一个类似u -net的网络来预测代表扫描任意两个给定时间点之间发生的运动的位移向量场(dvf)。为此,使用四维临床CT扫描来模拟四维CBCT扫描,以及在扫描的不同运动状态之间映射的相应的基底真值dvf。然后对网络进行训练,以预测这些dvf作为各自投影视图和初始3D重建的函数。一旦对网络进行训练,通过估计任何其他状态或视图的dvf,并在重建过程中考虑它们,可以恢复与扫描的某个投影视图对应的任意运动状态。结果:深SAMoCo应用于呼吸患者的4D CBCT模拟,提供了高质量的周期和非周期运动重建。在这里,相对于地面真实值的偏差平均小于27 HU,而呼吸运动或隔膜位置可以以约0.75 mm的精度解决。在与外部运动监测信号高度相关的实际测量中也获得了类似的结果,即使在呼吸高度不规则的患者中也是如此。结论:作为两个任意投影视图和初始3D重建的函数估计dvf的能力使得深度SAMoCo适用于具有单视图时间分辨率的任意运动模式。因此,深度SAMoCo特别适用于呼吸不稳定的情况,补偿屏气扫描期间的残余运动,或快速龙门旋转时间的扫描,其中数据采集仅覆盖非常有限的呼吸周期。此外,不需要门控信号可以简化临床工作流程并减少患者准备所需的时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning-based cone-beam CT motion compensation with single-view temporal resolution

Deep learning-based cone-beam CT motion compensation with single-view temporal resolution

Background

Cone-beam CT (CBCT) scans that are affected by motion often require motion compensation to reduce artifacts or to reconstruct 4D (3D+time) representations of the patient. To do so, most existing strategies rely on some sort of gating strategy that sorts the acquired projections into motion bins. Subsequently, these bins can be reconstructed individually before further post-processing may be applied to improve image quality. While this concept is useful for periodic motion patterns, it fails in case of non-periodic motion as observed, for example, in irregularly breathing patients.

Purpose

To address this issue and to increase temporal resolution, we propose the deep single angle-based motion compensation (SAMoCo).

Methods

To avoid gating, and therefore its downsides, the deep SAMoCo trains a U-net-like network to predict displacement vector fields (DVFs) representing the motion that occurred between any two given time points of the scan. To do so, 4D clinical CT scans are used to simulate 4D CBCT scans as well as the corresponding ground truth DVFs that map between the different motion states of the scan. The network is then trained to predict these DVFs as a function of the respective projection views and an initial 3D reconstruction. Once the network is trained, an arbitrary motion state corresponding to a certain projection view of the scan can be recovered by estimating DVFs from any other state or view and by considering them during reconstruction.

Results

Applied to 4D CBCT simulations of breathing patients, the deep SAMoCo provides high-quality reconstructions for periodic and non-periodic motion. Here, the deviations with respect to the ground truth are less than 27 HU on average, while respiratory motion, or the diaphragm position, can be resolved with an accuracy of about 0.75 mm. Similar results were obtained for real measurements where a high correlation with external motion monitoring signals could be observed, even in patients with highly irregular respiration.

Conclusions

The ability to estimate DVFs as a function of two arbitrary projection views and an initial 3D reconstruction makes deep SAMoCo applicable to arbitrary motion patterns with single-view temporal resolution. Therefore, the deep SAMoCo is particularly useful for cases with unsteady breathing, compensation of residual motion during a breath-hold scan, or scans with fast gantry rotation times in which the data acquisition only covers a very limited number of breathing cycles. Furthermore, not requiring gating signals may simplify the clinical workflow and reduces the time needed for patient preparation.

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来源期刊
Medical physics
Medical physics 医学-核医学
CiteScore
6.80
自引率
15.80%
发文量
660
审稿时长
1.7 months
期刊介绍: Medical Physics publishes original, high impact physics, imaging science, and engineering research that advances patient diagnosis and therapy through contributions in 1) Basic science developments with high potential for clinical translation 2) Clinical applications of cutting edge engineering and physics innovations 3) Broadly applicable and innovative clinical physics developments Medical Physics is a journal of global scope and reach. By publishing in Medical Physics your research will reach an international, multidisciplinary audience including practicing medical physicists as well as physics- and engineering based translational scientists. We work closely with authors of promising articles to improve their quality.
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