chi-sepnet: Deep neural network for magnetic susceptibility source separation
Magnetic susceptibility source separation ($\chi$-separation), an advanced quantitative susceptibility mapping (QSM) method, enables the separate estimation of para- and diamagnetic susceptibility source distributions in the brain. The method utilizes reversible transverse relaxation (R2'=R2*-R...
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Main Authors | , , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
21.09.2024
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Online Access | Get full text |
DOI | 10.48550/arxiv.2409.14030 |
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Abstract | Magnetic susceptibility source separation ($\chi$-separation), an advanced
quantitative susceptibility mapping (QSM) method, enables the separate
estimation of para- and diamagnetic susceptibility source distributions in the
brain. The method utilizes reversible transverse relaxation (R2'=R2*-R2) to
complement frequency shift information for estimating susceptibility source
concentrations, requiring time-consuming data acquisition for R2 in addition
R2*. To address this challenge, we develop a new deep learning network,
$\chi$-sepnet, and propose two deep learning-based susceptibility source
separation pipelines, $\chi$-sepnet-R2' for inputs with multi-echo GRE and
multi-echo spin-echo, and $\chi$-sepnet-R2* for input with multi-echo GRE only.
$\chi$-sepnet is trained using multiple head orientation data that provide
streaking artifact-free labels, generating high-quality $\chi$-separation maps.
The evaluation of the pipelines encompasses both qualitative and quantitative
assessments in healthy subjects, and visual inspection of lesion
characteristics in multiple sclerosis patients. The susceptibility
source-separated maps of the proposed pipelines delineate detailed brain
structures with substantially reduced artifacts compared to those from
conventional regularization-based reconstruction methods. In quantitative
analysis, $\chi$-sepnet-R2' achieves the best outcomes followed by
$\chi$-sepnet-R2*, outperforming the conventional methods. When the lesions of
multiple sclerosis patients are assessed, both pipelines report identical
lesion characteristics in most lesions ($\chi$para: 99.6% and $\chi$dia: 98.4%
out of 250 lesions). The $\chi$-sepnet-R2* pipeline, which only requires
multi-echo GRE data, has demonstrated its potential to offer broad clinical and
scientific applications, although further evaluations for various diseases and
pathological conditions are necessary. |
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AbstractList | Magnetic susceptibility source separation ($\chi$-separation), an advanced
quantitative susceptibility mapping (QSM) method, enables the separate
estimation of para- and diamagnetic susceptibility source distributions in the
brain. The method utilizes reversible transverse relaxation (R2'=R2*-R2) to
complement frequency shift information for estimating susceptibility source
concentrations, requiring time-consuming data acquisition for R2 in addition
R2*. To address this challenge, we develop a new deep learning network,
$\chi$-sepnet, and propose two deep learning-based susceptibility source
separation pipelines, $\chi$-sepnet-R2' for inputs with multi-echo GRE and
multi-echo spin-echo, and $\chi$-sepnet-R2* for input with multi-echo GRE only.
$\chi$-sepnet is trained using multiple head orientation data that provide
streaking artifact-free labels, generating high-quality $\chi$-separation maps.
The evaluation of the pipelines encompasses both qualitative and quantitative
assessments in healthy subjects, and visual inspection of lesion
characteristics in multiple sclerosis patients. The susceptibility
source-separated maps of the proposed pipelines delineate detailed brain
structures with substantially reduced artifacts compared to those from
conventional regularization-based reconstruction methods. In quantitative
analysis, $\chi$-sepnet-R2' achieves the best outcomes followed by
$\chi$-sepnet-R2*, outperforming the conventional methods. When the lesions of
multiple sclerosis patients are assessed, both pipelines report identical
lesion characteristics in most lesions ($\chi$para: 99.6% and $\chi$dia: 98.4%
out of 250 lesions). The $\chi$-sepnet-R2* pipeline, which only requires
multi-echo GRE data, has demonstrated its potential to offer broad clinical and
scientific applications, although further evaluations for various diseases and
pathological conditions are necessary. |
Author | Kim, Jiye Jeong, Hwihun Bilgic, Berkin Min, Kyeongseon Shin, Hyeong-Geol Jang, Jinhee Kim, Taechang Kim, Minjun Lee, Jongho Youn, Jonghyo Ji, Sooyeon |
Author_xml | – sequence: 1 givenname: Minjun surname: Kim fullname: Kim, Minjun – sequence: 2 givenname: Sooyeon surname: Ji fullname: Ji, Sooyeon – sequence: 3 givenname: Jiye surname: Kim fullname: Kim, Jiye – sequence: 4 givenname: Kyeongseon surname: Min fullname: Min, Kyeongseon – sequence: 5 givenname: Hwihun surname: Jeong fullname: Jeong, Hwihun – sequence: 6 givenname: Jonghyo surname: Youn fullname: Youn, Jonghyo – sequence: 7 givenname: Taechang surname: Kim fullname: Kim, Taechang – sequence: 8 givenname: Jinhee surname: Jang fullname: Jang, Jinhee – sequence: 9 givenname: Berkin surname: Bilgic fullname: Bilgic, Berkin – sequence: 10 givenname: Hyeong-Geol surname: Shin fullname: Shin, Hyeong-Geol – sequence: 11 givenname: Jongho surname: Lee fullname: Lee, Jongho |
BackLink | https://doi.org/10.48550/arXiv.2409.14030$$DView paper in arXiv |
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Snippet | Magnetic susceptibility source separation ($\chi$-separation), an advanced
quantitative susceptibility mapping (QSM) method, enables the separate
estimation of... |
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Title | chi-sepnet: Deep neural network for magnetic susceptibility source separation |
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