Suppr超能文献

不同剂量和重建方法的胸部 CT 扫描的协调。

Harmonization of chest CT scans for different doses and reconstruction methods.

机构信息

Applied Chest Imaging Laboratory (ACIL), Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.

Biomedical Image Technologies Laboratory (BIT) ETSI Telecomunicacion, UPM, and CIBER-BBN, Universidad Politécnica de Madrid, Madrid, Spain.

出版信息

Med Phys. 2019 Jul;46(7):3117-3132. doi: 10.1002/mp.13578. Epub 2019 Jun 7.

Abstract

PURPOSE

To develop and validate a computed tomography (CT) harmonization technique by combining noise-stabilization and autocalibration methodologies to provide reliable densitometry measurements in heterogeneous acquisition protocols.

METHODS

We propose to reduce the effects of spatially variant noise such as nonuniform patterns of noise and biases. The method combines the statistical characterization of the signal-to-noise relationship in the CT image intensities, which allows us to estimate both the signal and spatially variant variance of noise, with an autocalibration technique that reduces the nonuniform biases caused by noise and reconstruction techniques. The method is firstly validated with anthropomorphic synthetic images that simulate CT acquisitions with variable scanning parameters: different dosage, nonhomogeneous variance of noise, and various reconstruction methods. We finally evaluate these effects and the ability of our method to provide consistent densitometric measurements in a cohort of clinical chest CT scans from two vendors (Siemens, n = 54 subjects; and GE, n = 50 subjects) acquired with several reconstruction algorithms (filtered back-projection and iterative reconstructions) with high-dose and low-dose protocols.

RESULTS

The harmonization reduces the effect of nonhomogeneous noise without compromising the resolution of the images (25% RMSE reduction in both clinical datasets). An analysis through hierarchical linear models showed that the average biases induced by differences in dosage and reconstruction methods are also reduced up to 74.20%, enabling comparable results between high-dose and low-dose reconstructions. We also assessed the statistical similarity between acquisitions obtaining increases of up to 30% points and showing that the low-dose vs high-dose comparisons of harmonized data obtain similar and even higher similarity than the observed for high-dose vs high-dose comparisons of nonharmonized data.

CONCLUSION

The proposed harmonization technique allows to compare measures of low-dose with high-dose acquisitions without using a specific reconstruction as a reference. Since the harmonization does not require a precalibration with a phantom, it can be applied to retrospective studies. This approach might be suitable for multicenter trials for which a reference reconstruction is not feasible or hard to define due to differences in vendors, models, and reconstruction techniques.

摘要

目的

开发和验证一种 CT (计算机断层扫描)匀场技术,该技术通过结合噪声稳定和自校准方法,为不均匀采集方案提供可靠的密度测量。

方法

我们建议减少空间变化噪声的影响,如噪声的非均匀模式和偏差。该方法结合了 CT 图像强度中信号噪声关系的统计特征,可以估计信号和空间变化噪声的方差,同时采用自校准技术来减少噪声和重建技术引起的非均匀偏差。该方法首先在模拟 CT 采集的具有可变扫描参数的拟人化合成图像上进行验证:不同剂量、噪声的非均匀方差和各种重建方法。最后,我们在来自两家供应商(西门子,n=54 例;GE,n=50 例)的临床胸部 CT 扫描队列中评估了这些效果和我们的方法提供一致密度测量的能力,这些扫描使用了几种重建算法(滤波反投影和迭代重建)和高低剂量方案。

结果

匀场降低了非均匀噪声的影响,同时又不影响图像的分辨率(两个临床数据集的 RMSE 降低了 25%)。通过分层线性模型分析表明,剂量和重建方法差异引起的平均偏差也降低了 74.20%,从而使高低剂量重建之间的结果具有可比性。我们还评估了采集之间的统计相似性,最高可达 30%点的增加,表明匀场数据的低剂量与高剂量比较与非匀场数据的高剂量与高剂量比较获得的相似性甚至更高。

结论

所提出的匀场技术允许在不使用特定重建作为参考的情况下比较低剂量和高剂量采集的测量值。由于匀场不需要使用体模进行预校准,因此它可以应用于回顾性研究。这种方法可能适用于多中心试验,对于这些试验,由于供应商、型号和重建技术的差异,无法或难以定义参考重建。

相似文献

2
Autocalibration method for non-stationary CT bias correction.用于非平稳 CT 偏差校正的自校准方法。
Med Image Anal. 2018 Feb;44:115-125. doi: 10.1016/j.media.2017.12.004. Epub 2017 Dec 8.

引用本文的文献

2
A Physics-Informed Deep Neural Network for Harmonization of CT Images.一种用于CT图像配准的基于物理信息的深度神经网络。
IEEE Trans Biomed Eng. 2024 Dec;71(12):3494-3504. doi: 10.1109/TBME.2024.3428399. Epub 2024 Nov 21.
5
Harmonizing CT Images via Physics-based Deep Neural Networks.通过基于物理的深度神经网络实现CT图像的协调
Proc SPIE Int Soc Opt Eng. 2023 Feb;12463. doi: 10.1117/12.2654215. Epub 2023 Apr 7.

本文引用的文献

2
Repeatability and Reproducibility of Radiomic Features: A Systematic Review.重复性和可再现性的放射组学特征:系统评价。
Int J Radiat Oncol Biol Phys. 2018 Nov 15;102(4):1143-1158. doi: 10.1016/j.ijrobp.2018.05.053. Epub 2018 Jun 5.
3
Autocalibration method for non-stationary CT bias correction.用于非平稳 CT 偏差校正的自校准方法。
Med Image Anal. 2018 Feb;44:115-125. doi: 10.1016/j.media.2017.12.004. Epub 2017 Dec 8.

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验