Bone Texture Analysis for Prediction of Incident Radio-graphic Hip Osteoarthritis Using Machine Learning: Data from the Cohort Hip and Cohort Knee (CHECK) study

@article{Hirvasniemi2019BoneTA,
  title={Bone Texture Analysis for Prediction of Incident Radio-graphic Hip Osteoarthritis Using Machine Learning: Data from the Cohort Hip and Cohort Knee (CHECK) study},
  author={Jukka Hirvasniemi and Willem Paul Gielis and Saeed Arbabi and Rintje Agricola and Willem Evert van Spil and Vahid Arbabi and Harrie H. Weinans},
  journal={Osteoarthritis and cartilage},
  year={2019},
  volume={27 6},
  pages={
          906-914
        }
}

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