2023
DOI: 10.1101/2023.01.11.23284194
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Improved Quantitative Parameter Estimation for Prostate T2 Relaxometry using Convolutional Neural Networks

Abstract: Purpose This work seeks to evaluate multiple methods for quantitative parameter estimation from standard T2 mapping acquisitions in the prostate. The T2 estimation performance of methods based on neural networks (NN) was quantitatively compared to that of conventional curve fitting techniques. Methods Large physics-based synthetic datasets simulating T2 mapping acquisitions were generated for training NNs and for quantitative performance comparisons. Ten combinations of different NN architectures, training str… Show more

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References 58 publications
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