Suppr超能文献

用于改进放射性核素治疗剂量测定估计的PET引导SPECT重建的研究与优化。

Investigation and optimization of PET-guided SPECT reconstructions for improved radionuclide therapy dosimetry estimates.

作者信息

Marquis Harry, Willowson Kathy P, Schmidtlein C Ross, Bailey Dale L

机构信息

Department of Medical Physics, Memorial Sloan Kettering Cancer Center, New York, NY, United States.

Institute of Medical Physics, University of Sydney, Sydney, NSW, Australia.

出版信息

Front Nucl Med. 2023 Jun 21;3:1124283. doi: 10.3389/fnume.2023.1124283. eCollection 2023.

Abstract

INTRODUCTION

To investigate and optimize the SPECTRE (Single Photon Emission Computed Theranostic REconstruction) reconstruction approach, using the hybrid kernelised expectation maximization (HKEM) algorithm implemented in the software for tomographic image reconstruction (STIR) software library, and to demonstrate the feasibility of performing algorithm exploration and optimization in 2D. Optimal SPECTRE parameters were investigated for the purpose of improving SPECT-based radionuclide therapy (RNT) dosimetry estimates.

MATERIALS AND METHODS

Using the NEMA IEC body phantom as the test object, SPECT data were simulated to model an early and late imaging time point following a typical therapeutic dose of 8 GBq of Lu. A theranostic Ga PET-prior was simulated for the SPECTRE reconstructions. The HKEM algorithm parameter space was investigated for SPECT-unique and PET-SPECT mutual features to characterize optimal SPECTRE parameters for the simulated data. Mean and maximum bias, coefficient of variation (COV %), recovery, SNR and root-mean-square error (RMSE) were used to facilitate comparisons between SPECTRE reconstructions and OSEM reconstructions with resolution modelling (OSEM_RM). 2D reconstructions were compared to those performed in 3D in order to evaluate the utility of accelerated algorithm optimization in 2D. Segmentation accuracy was evaluated using a 42% fixed threshold (FT) on the 3D reconstructed data.

RESULTS

SPECTRE parameters that demonstrated improved image quality and quantitative accuracy were determined through investigation of the HKEM algorithm parameter space. OSEM_RM and SPECTRE reconstructions performed in 2D and 3D were qualitatively and quantitatively similar, with SPECTRE showing an average reduction in background COV % by a factor of 2.7 and 3.3 for the 2D case and 3D case respectively. The 42% FT analysis produced an average % volume difference from ground truth of 158% and 26%, for the OSEM_RM and SPECTRE reconstructions, respectively.

CONCLUSIONS

The SPECTRE reconstruction approach demonstrates significant potential for improved SPECT image quality, leading to more accurate RNT dosimetry estimates when conventional segmentation methods are used. Exploration and optimization of SPECTRE benefited from both fast reconstruction times afforded by first considering the 2D case. This is the first in-depth exploration of the SPECTRE reconstruction approach, and as such, it reveals several insights for reconstructing SPECT data using PET side information.

摘要

引言

使用断层图像重建(STIR)软件库中实现的混合核期望最大化(HKEM)算法,研究并优化SPECTRE(单光子发射计算机治疗诊断重建)重建方法,并证明在二维中进行算法探索和优化的可行性。为了改进基于SPECT的放射性核素治疗(RNT)剂量估计,研究了最佳SPECTRE参数。

材料与方法

以NEMA IEC体模为测试对象,模拟SPECT数据以模拟在典型治疗剂量8GBq的镥之后的早期和晚期成像时间点。为SPECTRE重建模拟了一种治疗诊断用镓PET先验图像。研究了HKEM算法参数空间的SPECT独特特征和PET-SPECT共同特征,以表征模拟数据的最佳SPECTRE参数。使用均值和最大偏差、变异系数(COV%)、回收率、信噪比和均方根误差(RMSE)来促进SPECTRE重建与具有分辨率建模的有序子集期望最大化(OSEM_RM)重建之间的比较。将二维重建与三维重建进行比较,以评估二维加速算法优化的效用。使用3D重建数据上42%的固定阈值(FT)评估分割准确性。

结果

通过研究HKEM算法参数空间,确定了显示出改善图像质量和定量准确性的SPECTRE参数。在二维和三维中执行的OSEM_RM和SPECTRE重建在定性和定量上相似,对于二维情况和三维情况,SPECTRE分别显示背景COV%平均降低了2.7倍和3.3倍。对于OSEM_RM和SPECTRE重建,42%FT分析产生的与真实值的平均体积差异百分比分别为158%和26%。

结论

SPECTRE重建方法在改善SPECT图像质量方面显示出巨大潜力,当使用传统分割方法时,可导致更准确的RNT剂量估计。SPECTRE的探索和优化受益于首先考虑二维情况所带来的快速重建时间。这是对SPECTRE重建方法的首次深入探索,因此,它揭示了使用PET辅助信息重建SPECT数据的一些见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9f78/11460090/62e38aaca9ec/fnume-03-1124283-g001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验