Interpretable Dimension Reduction for MRI Channel Suppression

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Abstract

Channel suppression can reduce the redundant information in multiple channel receiver coils and accelerate reconstruction speed to meet real-time imaging requirements. The principal component analysis has been used for channel suppression, but it is difficult to be interpreted because all channels contribute to principal components. Furthermore, the importance of interpretability in machine learning has recently attracted increasing attention in radiology. To improve the interpretability of PCA-based channel suppression, a sparse PCA method is proposed to reduce the most coils' loadings to be zero. Channel suppression is formulated as solving a nonlinear eigenvalue problem using the inverse power method instead of the direct matrix decomposition. Experimental results of in vivo data show that the sparse PCA-based channel suppression not only improves the interpretability with sparse channels, but also improves reconstruction quality compared to the standard PCA-based reconstruction with the similar reconstruction time.

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Chang, Y., Zhang, J., Pham, H. A., Lyu, J., & Li, Z. (2022). Interpretable Dimension Reduction for MRI Channel Suppression. In Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBS (Vol. 2022-July, pp. 1456–1459). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1109/EMBC48229.2022.9871474

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