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Convolutional Neural Network-Based Automated Segmentation of the Spinal Cord and Contusion Injury: Deep Learning Biomarker Correlates of Motor Impairment in Acute Spinal Cord Injury.

D B McCoySara M DupontCharley GrosJulien Cohen-AdadJ Russell HuieAdam R FergusonXuan Duong FernandezL H ThomasV SinghJ NarvidL PascualNikos KyritsisMichael S BeattieJ C BresnahanS S DhallW D WhetstoneJason F Talbottnull null
Published in: AJNR. American journal of neuroradiology (2019)
Brain and Spinal Cord Injury Center segmentation of the spinal cord compares favorably with available segmentation tools in a population with acute spinal cord injury. Volumes of injury derived from automated lesion segmentation with Brain and Spinal Cord Injury Center segmentation correlate with measures of motor impairment in the acute phase. Targeted convolutional neural network training in acute spinal cord injury enhances algorithm performance for this patient population and provides clinically relevant metrics of cord injury.
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