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Assessment of knee pain from MR imaging using a convolutional Siamese network.

Gary H ChangDavid T FelsonShangran QiuAli GuermaziTerence D CapelliniVijaya B Kolachalama
Published in: European radiology (2020)
• Our article is the first to leverage a deep learning framework to associate MR images of the knee with knee pain. • We developed a convolutional Siamese network that had the ability to fuse information from multiple two-dimensional (2D) MRI slices from the knee with pain and the contralateral knee of the same individual without pain to predict unilateral knee pain. • Our model achieved an area under curve (AUC) value of 0.808. When individuals who had WOMAC pain scores that were not discordant for knees (pain discordance < 3) were excluded, model performance increased to 0.853.
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