Matched Filter Vs. Least-Squares For Multiple-Coil Mri

2004 2ND IEEE INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING: MACRO TO NANO, VOLS 1 AND 2(2004)

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摘要
To achieve the best possible performance in parallel MRI, two reconstruction methods have been widely used in practice: (1): least squares error minimization, e.g. the SENSE method, and (2) max-imization of the output signal-to-noise ratio (SNR), known as the matched filter or the MR phased array. We discuss precise assumptions under which methods (1) and (2) become equivalent and also Give examples to show that, in general, the two performance criteria can not both be optimized at the same time. We also show that the g-function, which is widely used to assess performance with SENSE, is actually a case of the Cramer-Rao bound (CRB). For unbiased linear reconstructions (not necessarily the particular SENSE reconstruction), the Cramer-Rao bound can be used either to give a general floor on reconstruction error or a ceiling on attainable reconstruction SNR. These results are helpful for performing tradeoffs among algorithms, for optimizing coil array design, and for assessing the ultimate achievable algorithm performance.
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关键词
signal to noise ratio,phased array,minimisation,cramer rao bound,magnetic resonance imaging,least square,design optimization,matched filter,image reconstruction,matched filters
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