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    Glioblastoma brain tumor segmentation and survival prediction using 3D U Net

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    BTCS4128_RP (3).pdf (974.9Kb)
    Date
    2023-05
    Author
    Srivastava, Prabhav
    Misra, Vanshika
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    Abstract
    Convolutional networks are the most widely used method for egmenting three dimensional (3D) medical images. Deep learning algorithms have recently attained human-level performance in a number of significant application tasks, including lung cancer volumetry and delineation ,preparing for radiation therapy However, cutting-edge topologies like UNet and Deep Medic are computationally intensive and necessitate workstations with graphics processing units for quick inference.
    URI
    http://10.10.11.6/handle/1/18207
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