journal article Dec 06, 2018

Machine-learning-based patient-specific prediction models for knee osteoarthritis

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Published
Dec 06, 2018
Vol/Issue
15(1)
Pages
49-60
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Cite This Article
Afshin Jamshidi, Jean-Pierre Pelletier, Johanne Martel-Pelletier (2018). Machine-learning-based patient-specific prediction models for knee osteoarthritis. Nature Reviews Rheumatology, 15(1), 49-60. https://doi.org/10.1038/s41584-018-0130-5
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