2022
DOI: 10.1093/neuonc/noac209.626
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Nimg-07. Applying a Glioma-Trained Deep Learning Auto-Segmentation Tool on Bm Pre- And Post-Radiosurgery

Abstract: PURPOSE Stereotactic radiosurgery (SRS) has become the mainstay to treat BM. Follow-up MRI provides important information on lesion treatment response and guides future therapy planning. Volumetric measurements of BM have shown promise over traditional uni- and two-dimensional measurements in more accurate and repeatable assessment. However, routine clinical use has yet to be achieved because the workflow is laborious. In previous work, we developed a PACS-integrated deep learning algorithm f… Show more

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