Advances in quantitative muscle ultrasonography using texture analysis of ultrasound images.
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Filippo Molinari | Muthu Rama Krishnan Mookiah | Marco Alessandro Minetto | Cristina Caresio | U. Acharya | F. Molinari | M. Minetto | M. Mookiah | U Rajendra Acharya | C. Caresio
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