A Data-Centric Framework for Intraoperative Fluorescence Lifetime Imaging for Glioma Surgical Guidance
Silvia Noble Anbunesan, Mohamed Abul Hassan, Jinyi Qi, Lisanne Kraft, Han Sung Lee, Orin Bloch, and Laura Marcu

TL;DR
This paper introduces a data-centric AI framework that improves the robustness and interpretability of fluorescence lifetime imaging for glioma surgical guidance, enabling more accurate intraoperative tumor margin assessment.
Contribution
The study develops a novel AI approach combining confident learning and targeted label evaluation to enhance FLIm data quality and classifier performance in glioma resection.
Findings
Achieved 96% accuracy in three-class glioma margin classification.
Identified optical signatures specific to infiltration levels.
Demonstrated improved data reliability and model robustness through the framework.
Abstract
Accurate intraoperative assessment of glioma infiltration is essential for maximizing tumor resection while preserving functional brain tissue. Fluorescence lifetime imaging (FLIm) offers real-time, label-free biochemical contrast, but its clinical utility is challenged by biological heterogeneity, class imbalance, and variability in histopathological labeling. We present a data-centric AI (DC-AI) framework that integrates confident learning (CL), class refinement, and targeted label evaluation to develop a robust multi-class FLIm classifier for glioblastoma (GBM) resection margins. FLIm data were collected from 192 tissue margins across 31 newly diagnosed IDH-wildtype GBM patients and initially labeled into seven tumor cellularity classes by an expert neuropathologist. CL was applied to quantify FLIm point-level confidence, identify label inconsistencies, and guide iterative class…
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