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一种基于概率的4D-MRI多周期排序方法:一项模拟研究。

A probability-based multi-cycle sorting method for 4D-MRI: A simulation study.

作者信息

Liang Xiao, Yin Fang-Fang, Liu Yilin, Cai Jing

机构信息

Medical Physics Graduate Program, Duke University, Durham, North Carolina 27705 and Department of Radiation Oncology, Duke University Medical Center, Durham, North Carolina 27710.

出版信息

Med Phys. 2016 Dec;43(12):6375. doi: 10.1118/1.4966705.

Abstract

PURPOSE

To develop a novel probability-based sorting method capable of generating multiple breathing cycles of 4D-MRI images and to evaluate performance of this new method by comparing with conventional phase-based methods in terms of image quality and tumor motion measurement.

METHODS

Based on previous findings that breathing motion probability density function (PDF) of a single breathing cycle is dramatically different from true stabilized PDF that resulted from many breathing cycles, it is expected that a probability-based sorting method capable of generating multiple breathing cycles of 4D images may capture breathing variation information missing from conventional single-cycle sorting methods. The overall idea is to identify a few main breathing cycles (and their corresponding weightings) that can best represent the main breathing patterns of the patient and then reconstruct a set of 4D images for each of the identified main breathing cycles. This method is implemented in three steps: (1) The breathing signal is decomposed into individual breathing cycles, characterized by amplitude, and period; (2) individual breathing cycles are grouped based on amplitude and period to determine the main breathing cycles. If a group contains more than 10% of all breathing cycles in a breathing signal, it is determined as a main breathing pattern group and is represented by the average of individual breathing cycles in the group; (3) for each main breathing cycle, a set of 4D images is reconstructed using a result-driven sorting method adapted from our previous study. The probability-based sorting method was first tested on 26 patients' breathing signals to evaluate its feasibility of improving target motion PDF. The new method was subsequently tested for a sequential image acquisition scheme on the 4D digital extended cardiac torso (XCAT) phantom. Performance of the probability-based and conventional sorting methods was evaluated in terms of target volume precision and accuracy as measured by the 4D images, and also the accuracy of average intensity projection (AIP) of 4D images.

RESULTS

Probability-based sorting showed improved similarity of breathing motion PDF from 4D images to reference PDF compared to single cycle sorting, indicated by the significant increase in Dice similarity coefficient (DSC) (probability-based sorting, DSC = 0.89 ± 0.03, and single cycle sorting, DSC = 0.83 ± 0.05, p-value <0.001). Based on the simulation study on XCAT, the probability-based method outperforms the conventional phase-based methods in qualitative evaluation on motion artifacts and quantitative evaluation on tumor volume precision and accuracy and accuracy of AIP of the 4D images.

CONCLUSIONS

In this paper the authors demonstrated the feasibility of a novel probability-based multicycle 4D image sorting method. The authors' preliminary results showed that the new method can improve the accuracy of tumor motion PDF and the AIP of 4D images, presenting potential advantages over the conventional phase-based sorting method for radiation therapy motion management.

摘要

目的

开发一种基于概率的新型排序方法,该方法能够生成多个4D-MRI图像呼吸周期,并通过在图像质量和肿瘤运动测量方面与传统的基于相位的方法进行比较,来评估这种新方法的性能。

方法

基于先前的研究发现,即单个呼吸周期的呼吸运动概率密度函数(PDF)与由多个呼吸周期产生的真实稳定PDF有显著差异,预计一种能够生成多个4D图像呼吸周期的基于概率的排序方法可能会捕捉到传统单周期排序方法中缺失的呼吸变化信息。总体思路是识别几个能够最好地代表患者主要呼吸模式的主要呼吸周期(及其相应权重),然后为每个识别出的主要呼吸周期重建一组4D图像。该方法分三步实施:(1)将呼吸信号分解为以幅度和周期为特征的各个呼吸周期;(2)根据幅度和周期对各个呼吸周期进行分组,以确定主要呼吸周期。如果一组包含呼吸信号中所有呼吸周期的10%以上,则将其确定为主要呼吸模式组,并由该组中各个呼吸周期的平均值表示;(3)对于每个主要呼吸周期,使用从我们先前的研究改编而来的结果驱动排序方法重建一组4D图像。首先在26名患者的呼吸信号上测试基于概率的排序方法,以评估其改善目标运动PDF的可行性。随后在4D数字扩展心脏躯干(XCAT)体模上针对连续图像采集方案测试该新方法。根据4D图像测量的目标体积精度和准确性以及4D图像的平均强度投影(AIP)的准确性,评估基于概率的排序方法和传统排序方法的性能。

结果

与单周期排序相比,基于概率的排序显示4D图像的呼吸运动PDF与参考PDF的相似性有所提高,这由骰子相似系数(DSC)的显著增加表明(基于概率的排序,DSC = 0.89±0.03,单周期排序,DSC = 0.83±0.05,p值<0.001)。基于对XCAT的模拟研究,在对运动伪影的定性评估以及对4D图像的肿瘤体积精度、准确性和AIP的准确性的定量评估方面,基于概率的方法优于传统的基于相位的方法。

结论

在本文中,作者证明了一种新型基于概率的多周期4D图像排序方法的可行性。作者的初步结果表明,新方法可以提高肿瘤运动PDF和4D图像AIP的准确性,相对于传统的基于相位的排序方法在放射治疗运动管理方面具有潜在优势。

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