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Published in: Annals of Nuclear Medicine 11/2022

28-09-2022 | Positron Emission Tomography | Short Communication

Attenuation correction for phantom tests: an alternative to maximum-likelihood attenuation correction factor-based correction for clinical studies in time-of-flight PET

Authors: Tetsuro Mizuta, Yoshiyuki Yamakawa, Suzuka Minagawa, Tetsuya Kobayashi, Atsushi Ohtani, Shiho Takenouchi, Kohei Hanaoka, Shota Watanabe, Daisuke Morimoto-Ishikawa, Takahiro Yamada, Hayato Kaida, Kazunari Ishii

Published in: Annals of Nuclear Medicine | Issue 11/2022

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Abstract

Objectives

This study evaluates the phantom attenuation correction (PAC) method as an alternative to maximum-likelihood attenuation correction factor (ML-ACF) correction in time-of-flight (TOF) brain positron emission tomography (PET) studies.

Methods

In the PAC algorithm, a template emission image \({\lambda }_{Ref}\) and a template attenuation coefficient image \({\mu }_{Ref}\) are prepared as a data set based on phantom geometry. Position-aligned attenuation coefficient image \({\mu }_{Acq}\) is derived by aligning \({\mu }_{Ref}\) using parameters that match the template emission image \({\lambda }_{Ref}\) to measured emission image \({\lambda }_{Acq}\). Then, attenuation coefficient image \({\mu }_{Acq}\) combined with a headrest image is used for scatter and attenuation correction in the image reconstruction. To evaluate the PAC algorithm as an alternative to ML-ACF, Hoffman 3D brain and cylindrical phantoms were measured to obtain the image quality indexes of contrast and uniformity. These phantoms were also wrapped with a radioactive sheet to obtain attenuation coefficient images using ML-ACF. Emission images were reconstructed with attenuation correction by PAC and ML-ACF, and the results were compared using contrast and uniformity as well as visual assessment. CT attenuation correction (CT-AC) was also applied as a reference.

Results

The contrast obtained by ML-ACF was slightly overestimated due to its unique experimental condition for applying ML-ACF in Hoffman 3D brain phantom but the uniformity was almost equivalent among ML-ACF, CT-AC, and PAC. PAC showed reasonable result without overestimation compared to ML-ACF and CT-AC.

Conclusions

PAC is an attenuation correction method that can ensure the performance in phantom test, and is considered to be a reasonable alternative to clinically used ML-ACF-based attenuation correction.
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Metadata
Title
Attenuation correction for phantom tests: an alternative to maximum-likelihood attenuation correction factor-based correction for clinical studies in time-of-flight PET
Authors
Tetsuro Mizuta
Yoshiyuki Yamakawa
Suzuka Minagawa
Tetsuya Kobayashi
Atsushi Ohtani
Shiho Takenouchi
Kohei Hanaoka
Shota Watanabe
Daisuke Morimoto-Ishikawa
Takahiro Yamada
Hayato Kaida
Kazunari Ishii
Publication date
28-09-2022
Publisher
Springer Nature Singapore
Published in
Annals of Nuclear Medicine / Issue 11/2022
Print ISSN: 0914-7187
Electronic ISSN: 1864-6433
DOI
https://doi.org/10.1007/s12149-022-01788-8

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