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Intraoperative Margin Assessment in Head and Neck Cancer using Label-free Fluorescence Lifetime Imaging, Machine Learning and Visualization

机译:使用无标签荧光寿命成像,机器学习和可视化的头部和颈部癌症术中的术中边缘评估

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Accurate cancer margin assessment prior to surgical resection is a key factor influencing the long-term survival of oral and oropharyngeal cancer patients. This leads to the need for additional guidance tools for real-time delineation of cancer margins. In this work, fiber-based fluorescence lifetime Imaging (FLIm) was combined with machine learning to perform intraoperative tumor identification. The developed classifier achieved a measurement-level ROC-AUC of 0.89±0.03 on an N=62 patient dataset. A transparent overlay of classifier output was augmented onto the surgical field and updated through tissue motion correction, ensuring co-registration between tissue and spectroscopic data/classifier output was maintained during imaging.
机译:手术切除前准确的癌症保证金评估是影响口腔和口咽癌症患者长期存活的关键因素。 这导致需要额外的指导工具,用于实时描绘癌症利润。 在这项工作中,基于纤维的荧光寿命成像(Flim)与机器学习结合,以进行术中肿瘤鉴定。 发达的分类器在n = 62患者数据集上实现了0.89±0.03的测量级Roc-Auc。 分类器输出的透明叠加增强到外科手术场上,并通过组织运动校正更新,确保在成像期间保持组织和光谱数据/分级器输出之间的共同登记。

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