Noise Reduction to Compute Tissue Mineral Density and Trabecular Bone Volume Fraction from Low Resolution QCT
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Claudio Delrieux | Rodrigo de Luis García | Felix Sebastian Leo Thomsen | José Manuel Fuertes-García | Manuel Lucena | Juan Pisula | Jan Broggrefe | C. Delrieux | F. Thomsen | Juan Pisula | M. Lucena | J. Fuertes-García | Jan Broggrefe
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