Real‐time shimming with FID navigators

Magnetic Resonance in Medicine(2022)

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摘要
Purpose: To implement a method for real-time field control using rapid FID navigator (FIDnav) measurements and evaluate the efficacy of the proposed approach for mitigating dynamic field perturbations and improving T-2*-weighted image quality. Methods: FIDnavs were embedded in a gradient echo sequence and a subject-specific linear calibration model was generated on the scanner to facilitate rapid shim updates in response to measured FIDnav signals. To confirm the accuracy of FID-navigated field updates, phantom and volunteer scans were performed with online updates of the scanner B-0 shim settings. To evaluate improvement inT(2)*-weighted image quality with real-time shimming, 10 volunteers were scanned at 3T while performing deep-breathing and nose-touching tasks designed to modulate the B-0 field. Quantitative image quality metrics were compared with and without FID-navigated field control. An additional volunteer was scanned at 7T to evaluate performance at ultra-high field. Results: Applying measured FIDnav shim updates successfully compensated for applied global and linear field offsets in phantoms and across all volunteers. FID-navigated real-time shimming led to a substantial reduction in field fluctuations and a consequent improvement in T-2*-weighted image quality in volunteers performing deep-breathing and nose-touching tasks, with 7.57% +/- 6.01% and 8.21% +/- 10.90% improvement in peak SNR and structural similarity, respectively. Conclusion: FIDnavs facilitate rapid measurement and application of field coefficients for slice-wise B-0 shimming. The proposed approach can successfully counteract spatiotemporal field perturbations and substantially improves T-2*-weighted image quality, which is important for a variety of clinical and research applications, particularly at ultra-high field.
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关键词
artifact correction,B-0 inhomogeneity,FID navigators,real-time shimming,T-2* -weighted imaging
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