On the reconstruction accuracy of multi-coil MRI with orthogonal projections
Anna Breger, Gabriel Ramos Llorden, Gonzalo Vegas Sanchez - Ferrero,, W. Scott Hoge, Martin Ehler, Carl-Fredrik Westin

TL;DR
This paper analyzes the impact of linear compression, including PCA, on the accuracy of multi-coil MRI reconstruction, showing PCA's superiority over traditional methods like root sum of squares in preserving image quality.
Contribution
It introduces a framework for evaluating linear compression effects on MRI coil combination, highlighting PCA's advantages through comprehensive quantitative and visual assessments.
Findings
PCA outperforms rSOS in image quality and SNR.
L2 error correlates with variance but not with visual quality.
Linear compression impacts reconstruction accuracy significantly.
Abstract
MRI signal acquisition with multiple coils in a phased array is nowadays commonplace. The use of multiple receiver coils increases the signal-to-noise ratio (SNR) and enables accelerated parallel imaging methods. Some of these methods, like GRAPPA or SPIRiT, yield individual coil images in the k-space domain which need to be combined to form a final image. Coil combination is often the last step of the image reconstruction, where the root sum of squares (rSOS) is frequently used. This straightforward method works well for coil images with high SNR, but can yield problems in images with artifacts or low SNR in all individual coils. We aim to analyze the final coil combination step in the framework of linear compression, including principal component analysis (PCA). With two data sets, a simulated and an in-vivo, we use random projections as a representation of the whole space of…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Imaging Techniques and Applications · Sparse and Compressive Sensing Techniques
