Saved in:
Bibliographic Details
Main Authors: Chen, Wentao, Li, Jiwei, Xu, Xichen, Huang, Hui, Yuan, Siyu, Zhang, Miao, Xu, Tianming, Luo, Jie, Zhou, Weimin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.01191
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914664297791488
author Chen, Wentao
Li, Jiwei
Xu, Xichen
Huang, Hui
Yuan, Siyu
Zhang, Miao
Xu, Tianming
Luo, Jie
Zhou, Weimin
author_facet Chen, Wentao
Li, Jiwei
Xu, Xichen
Huang, Hui
Yuan, Siyu
Zhang, Miao
Xu, Tianming
Luo, Jie
Zhou, Weimin
contents [$^{18}$F]fluorodeoxyglucose (FDG) positron emission tomography (PET) has emerged as a crucial tool in identifying the epileptic focus, especially in cases where magnetic resonance imaging (MRI) diagnosis yields indeterminate results. FDG PET can provide the metabolic information of glucose and help identify abnormal areas that are not easily found through MRI. However, the effectiveness of FDG PET-based assessment and diagnosis depends on the selection of a healthy control group. The healthy control group typically consists of healthy individuals similar to epilepsy patients in terms of age, gender, and other aspects for providing normal FDG PET data, which will be used as a reference for enhancing the accuracy and reliability of the epilepsy diagnosis. However, significant challenges arise when a healthy PET control group is unattainable. Yaakub \emph{et al.} have previously introduced a Pix2PixGAN-based method for MRI to PET translation. This method used paired MRI and FDG PET scans from healthy individuals for training, and produced pseudo normal FDG PET images from patient MRIs that are subsequently used for lesion detection. However, this approach requires a large amount of high-quality, paired MRI and PET images from healthy control subjects, which may not always be available. In this study, we investigated unsupervised learning methods for unpaired MRI to PET translation for generating pseudo normal FDG PET for epileptic focus localization. Two deep learning methods, CycleGAN and SynDiff, were employed, and we found that diffusion-based method achieved improved performance in accurately localizing the epileptic focus.
format Preprint
id arxiv_https___arxiv_org_abs_2402_01191
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unsupervised Generation of Pseudo Normal PET from MRI with Diffusion Model for Epileptic Focus Localization
Chen, Wentao
Li, Jiwei
Xu, Xichen
Huang, Hui
Yuan, Siyu
Zhang, Miao
Xu, Tianming
Luo, Jie
Zhou, Weimin
Computer Vision and Pattern Recognition
[$^{18}$F]fluorodeoxyglucose (FDG) positron emission tomography (PET) has emerged as a crucial tool in identifying the epileptic focus, especially in cases where magnetic resonance imaging (MRI) diagnosis yields indeterminate results. FDG PET can provide the metabolic information of glucose and help identify abnormal areas that are not easily found through MRI. However, the effectiveness of FDG PET-based assessment and diagnosis depends on the selection of a healthy control group. The healthy control group typically consists of healthy individuals similar to epilepsy patients in terms of age, gender, and other aspects for providing normal FDG PET data, which will be used as a reference for enhancing the accuracy and reliability of the epilepsy diagnosis. However, significant challenges arise when a healthy PET control group is unattainable. Yaakub \emph{et al.} have previously introduced a Pix2PixGAN-based method for MRI to PET translation. This method used paired MRI and FDG PET scans from healthy individuals for training, and produced pseudo normal FDG PET images from patient MRIs that are subsequently used for lesion detection. However, this approach requires a large amount of high-quality, paired MRI and PET images from healthy control subjects, which may not always be available. In this study, we investigated unsupervised learning methods for unpaired MRI to PET translation for generating pseudo normal FDG PET for epileptic focus localization. Two deep learning methods, CycleGAN and SynDiff, were employed, and we found that diffusion-based method achieved improved performance in accurately localizing the epileptic focus.
title Unsupervised Generation of Pseudo Normal PET from MRI with Diffusion Model for Epileptic Focus Localization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.01191