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临床前胚胎期正电子发射断层扫描/磁共振成像(PET/MRI)的定量准确性:衰减和定量方法的影响

Quantitative accuracy of preclinical in ovo PET/MRI: influence of attenuation and quantification methods.

作者信息

Balber Theresa, Benčurová Katarína, Mayrhofer Manuela, Friske Joachim, Haas Martin, Kuntner Claudia, Helbich Thomas H, Hacker Marcus, Mitterhauser Markus, Rausch Ivo

机构信息

Joint Applied Medicinal Radiochemistry Facility, University of Vienna, Medical University of Vienna, Vienna, Austria.

Division of Nuclear Medicine, Department of Biomedical Imaging and Image-Guided Therapy, Medical University of Vienna, Vienna, Austria.

出版信息

EJNMMI Phys. 2025 Jan 21;12(1):5. doi: 10.1186/s40658-024-00714-3.

Abstract

AIM

The combination of positron emission tomography (PET) and magnetic resonance imaging (MRI) provides an innovation leap in the use of fertilized chicken eggs (in ovo model) in preclinical imaging as PET/MRI enables the investigation of the chick embryonal organ-specific distribution of PET-tracers. However, hybrid PET/MRI inheres technical challenges in quantitative in ovo PET such as attenuation correction (AC) for the object as well as for additional hardware parts present in the PET field-of-view, which potentially contribute to quantification biases in the PET images if not accounted for. This study aimed to investigate the influence of the different sources of attenuation on in ovo PET/MRI and assess the accuracy of MR-based AC for in ovo experiments.

METHOD

An in-house made chicken egg phantom was used to investigate the magnitude of self-attenuation and the influence of the MRI hardware on the PET signal. The phantom was placed in a preclinical PET/MRI system and PET acquisitions were performed without, and after subsequently adding the different hardware parts to the setup. Reconstructions were performed without any AC for the different setups and with subsequently incorporating the hardware parts into the AC. In addition, in ovo imaging was performed using [F]FDG and [Ga]Ga-Pentixafor, and PET data was reconstructed with the different AC combinations. Quantitative accuracy was assessed for the phantom and the in ovo measurements.

RESULTS

In general, not accounting for the self-attenuation of the egg and the hardware parts caused an underestimation of the PET signal of around 49% within the egg. Accounting for all sources of attenuation allowed a proper quantification with global offsets of 2% from the true activity. Quantification based on % injected dose per cc (%ID/cc) was similar for the in ovo measurements, regardless of whether hardware parts were included in AC or not, when the injected activity was extracted from the PET images. However, substantial quantification biases were found when the self-attenuation of the egg was not taken into account.

CONCLUSION

Self-attenuation of the egg and PET signal attenuation within the hardware parts of the MRI substantially influence quantitative accuracy in in ovo measurements. However, when compensating for the self-attenuation of the egg by a respective AC, a reliable quantification using %ID/cc can be performed even if not accounting for the attenuation of the hardware parts.

摘要

目的

正电子发射断层扫描(PET)与磁共振成像(MRI)相结合,为临床前成像中受精鸡蛋(卵内模型)的应用带来了创新性飞跃,因为PET/MRI能够研究PET示踪剂在鸡胚器官中的特异性分布。然而,混合型PET/MRI在卵内PET定量方面存在技术挑战,例如对目标以及PET视野内存在的其他硬件部件进行衰减校正(AC),如果不加以考虑,这些因素可能会导致PET图像出现定量偏差。本研究旨在探究不同衰减源对卵内PET/MRI的影响,并评估基于MR的AC在卵内实验中的准确性。

方法

使用自制的鸡蛋模型来研究自衰减的程度以及MRI硬件对PET信号的影响。将模型放置在临床前PET/MRI系统中,在不添加以及随后向设置中添加不同硬件部件后进行PET采集。对不同设置在不进行任何AC的情况下进行重建,并随后将硬件部件纳入AC进行重建。此外,使用[F]FDG和[Ga]Ga - Pentixafor进行卵内成像,并使用不同的AC组合重建PET数据。对模型和卵内测量的定量准确性进行评估。

结果

总体而言,不考虑鸡蛋和硬件部件的自衰减会导致鸡蛋内PET信号低估约49%。考虑所有衰减源可实现适当的定量,与真实活度的全局偏移为2%。当从PET图像中提取注入活度时,无论硬件部件是否包含在AC中,基于每立方厘米注入剂量百分比(%ID/cc)的卵内测量定量相似。然而,当不考虑鸡蛋的自衰减时,会发现明显的定量偏差。

结论

鸡蛋的自衰减以及MRI硬件部件内的PET信号衰减对卵内测量的定量准确性有重大影响。然而,当通过相应的AC补偿鸡蛋的自衰减时,即使不考虑硬件部件的衰减,也可以使用%ID/cc进行可靠的定量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b9ff/11753441/35b5570030d6/40658_2024_714_Fig1_HTML.jpg

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