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Feasibility of through‐time spiral generalized autocalibrating partial parallel acquisition for low latency accelerated real‐time MRI of speech
Author(s) -
Lingala Sajan Goud,
Zhu Yinghua,
Lim Yongwan,
Toutios Asterios,
Ji Yunhua,
Lo WeiChing,
Seiberlich Nicole,
Narayanan Shrikanth,
Nayak Krishna S.
Publication year - 2017
Publication title -
magnetic resonance in medicine
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.696
H-Index - 225
eISSN - 1522-2594
pISSN - 0740-3194
DOI - 10.1002/mrm.26611
Subject(s) - computer science , undersampling , spiral (railway) , frame rate , latency (audio) , real time mri , artificial intelligence , magnetic resonance imaging , mathematics , medicine , radiology , mathematical analysis , telecommunications
Purpose To evaluate the feasibility of through‐time spiral generalized autocalibrating partial parallel acquisition (GRAPPA) for low‐latency accelerated real‐time MRI of speech. Methods Through‐time spiral GRAPPA (spiral GRAPPA), a fast linear reconstruction method, is applied to spiral (k‐t) data acquired from an eight‐channel custom upper‐airway coil. Fully sampled data were retrospectively down‐sampled to evaluate spiral GRAPPA at undersampling factors R = 2 to 6. Pseudo‐golden‐angle spiral acquisitions were used for prospective studies. Three subjects were imaged while performing a range of speech tasks that involved rapid articulator movements, including fluent speech and beat‐boxing. Spiral GRAPPA was compared with view sharing, and a parallel imaging and compressed sensing (PI‐CS) method. Results Spiral GRAPPA captured spatiotemporal dynamics of vocal tract articulators at undersampling factors ≤4. Spiral GRAPPA at 18 ms/frame and 2.4 mm 2 /pixel outperformed view sharing in depicting rapidly moving articulators. Spiral GRAPPA and PI‐CS provided equivalent temporal fidelity. Reconstruction latency per frame was 14 ms for view sharing and 116 ms for spiral GRAPPA, using a single processor. Spiral GRAPPA kept up with the MRI data rate of 18ms/frame with eight processors. PI‐CS required 17 minutes to reconstruct 5 seconds of dynamic data. Conclusion Spiral GRAPPA enabled 4‐fold accelerated real‐time MRI of speech with a low reconstruction latency. This approach is applicable to wide range of speech RT‐MRI experiments that benefit from real‐time feedback while visualizing rapid articulator movement. Magn Reson Med 78:2275–2282, 2017. © 2017 International Society for Magnetic Resonance in Medicine.

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