A Data-Centric Framework for Intraoperative Fluorescence Lifetime Imaging for Glioma Surgical Guidance
arXiv cs.AI / 4/30/2026
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Key Points
- The study proposes a data-centric AI framework (DC-AI) to improve intraoperative fluorescence lifetime imaging (FLIm) classification of glioblastoma resection margins, aiming to better distinguish tumor infiltration while preserving functional brain tissue.
- Using 192 tissue margins from 31 IDH-wildtype GBM patients initially labeled into seven classes, the approach applies confident learning to measure point-level label confidence, detect inconsistencies, and iteratively merge classes into a three-class scheme (low/moderate/high).
- The resulting higher-fidelity dataset enables a multi-class FLIm model that reportedly achieves 96% accuracy on the three-class margin task.
- Explainability with SHAP identifies class-specific FLIm features (distinct optical signatures across the infiltration spectrum), and targeted analysis attributes low-confidence predictions to biological factors (e.g., gray matter composition) and acquisition artifacts (e.g., blood contamination).
- Blinded re-evaluation shows that selective relabeling guided by the confidence method can capture intra-pathologist variability more effectively than exhaustive review, supporting more reliable training data for clinically actionable imaging tools.
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