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Open AccessJournal ArticleDOI

MRI-Based Attenuation Correction for Hybrid PET/MRI Systems: A 4-Class Tissue Segmentation Technique Using a Combined Ultrashort-Echo-Time/Dixon MRI Sequence

TLDR
The UTE triple-echo (UTILE) MRI sequence enables the generation of MRI-based 4-class μ-maps without anatomic priors, yielding results more similar to CT-based results than can be obtained with 3-class segmentation only.
Abstract
Accurate γ-photon attenuation correction (AC) is essential for quantitative PET/MRI as there is no simple relation between MR image intensity and attenuation coefficients. Attenuation maps (μ-maps) can be derived by segmenting MR images and assigning attenuation coefficients to the compartments. Ultrashort-echo-time (UTE) sequences have been used to separate cortical bone and air, and the Dixon technique has enabled differentiation between soft and adipose tissues. Unfortunately, sequential application of these sequences is time-consuming and complicates image registration. Methods: A UTE triple-echo (UTILE) MRI sequence is proposed, combining UTE sampling for bone detection and gradient echoes for Dixon water–fat separation in a radial 3-dimensional acquisition (repetition time, 4.1 ms; echo times, 0.09/1.09/2.09 ms; field strength, 3 T). Air masks are derived mainly from the phase information of the first echo; cortical bone is segmented using a dual-echo technique. Soft-tissue and adipose-tissue decomposition is achieved using a 3-point Dixon-like decomposition. Predefined linear attenuation coefficients are assigned to classified voxels to generate MRI-based μ-maps. The results of 6 patients are obtained by comparing μ-maps, reciprocal sensitivity maps, reconstructed PET images, and brain region PET activities based on either CT AC, two 3-class MRI AC techniques, or the proposed 4-class UTILE AC. Results: Using the UTILE MRI sequence, an acquisition time of 214 s was achieved for the head-and-neck region with 1.75-mm isotropic resolution, compared with 164 s for a single-echo UTE scan. MRI-based reciprocal sensitivity maps show a high correlation with those derived from CT scans (R2 = 0.9920). The same is true for PET activities (R2 = 0.9958). An overall voxel classification accuracy (compared with CT) of 81.1% was reached. Bone segmentation is inaccurate in complex regions such as the paranasal sinuses, but brain region activities in 48 regions across 6 patients show a high correlation after MRI-based and CT-based correction (R2 = 0.9956), with a regression line slope of 0.960. All overall correlations are higher and brain region PET activities more accurate in terms of mean and maximum deviations for the 4-class technique than for 3-class techniques. Conclusion: The UTILE MRI sequence enables the generation of MRI-based 4-class μ-maps without anatomic priors, yielding results more similar to CT-based results than can be obtained with 3-class segmentation only.

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Citations
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Journal ArticleDOI

MR-based synthetic CT generation using a deep convolutional neural network method

Xiao Han
- 01 Apr 2017 - 
TL;DR: A novel deep convolutional neural network (DCNN) method was developed and shown to be able to produce highly accurate sCT estimations from conventional, single‐sequence MR images in near real time.
Book ChapterDOI

Medical Image Synthesis with Context-Aware Generative Adversarial Networks

TL;DR: Wang et al. as mentioned in this paper trained a fully convolutional network (FCN) to generate CT given the MR image, and applied Auto-Context Model (ACM) to implement a context-aware generative adversarial network.
Journal ArticleDOI

Medical Image Synthesis with Deep Convolutional Adversarial Networks

TL;DR: This paper trains a fully convolutional network to generate a target image given a source image and proposes to use the adversarial learning strategy to better model the FCN, designed to incorporate an image-gradient-difference-based loss function to avoid generating blurry target images.
Journal ArticleDOI

Automatic Liver Lesion Segmentation Using A Deep Convolutional Neural Network Method

TL;DR: Li et al. as mentioned in this paper proposed a 2.5D convolutional neural network (DCNN) for liver lesion segmentation, which takes a stack of adjacent slices as input and produces the segmentation map corresponding to the center slice.
Journal ArticleDOI

Attenuation correction synthesis for hybrid PET-MR scanners: application to brain studies.

TL;DR: The aim of the proposed work is to improve attenuation correction for PET/MR scanners by generating synthetic CTs and attenuation maps through a multi-atlas information propagation scheme, locally matching the MRI-derived patient's morphology to a database of MRI/CT pairs, using a local image similarity measure.
References
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W T Dixon
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Journal ArticleDOI

Simultaneous PET-MRI: a new approach for functional and morphological imaging

TL;DR: This paper introduces a new technology synergizing two leading imaging methodologies: positron emission tomography (PET) and magnetic resonance imaging (MRI), and develops a three-dimensional animal PET scanner that is built into a 7-T MRI.
Journal ArticleDOI

Three-point dixon technique for true water/fat decomposition with b0 inhomogeneity correction

TL;DR: An enhancement to Dixon's technique is described which can provide error‐free decomposition of water and fat proton images even in the presence of off‐resonance conditions which result from susceptibility differences, demagnetization, or shim errors.
Journal ArticleDOI

Tissue Classification as a Potential Approach for Attenuation Correction in Whole-Body PET/MRI: Evaluation with PET/CT Data

TL;DR: A segmented attenuation map with 4 classes derived from CT data had only a small effect on the SUVs of 18F-FDG–avid lesions and did not change the interpretation for any patient, and appears to be practical and valid for MRI-based AC.
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