A data-centric AI framework cleans FLIm labels via confident learning and achieves 96% accuracy classifying glioma infiltration into low, moderate, and high cellularity.
Real‐time augmented reality for delineation of surgical margins during neurosurgery using autofluorescence lifetime contrast
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A Data-Centric Framework for Intraoperative Fluorescence Lifetime Imaging for Glioma Surgical Guidance
A data-centric AI framework cleans FLIm labels via confident learning and achieves 96% accuracy classifying glioma infiltration into low, moderate, and high cellularity.