Enhancing Label-Free Fluorescence Lifetime Imaging for Intraoperative Tumor Margin Delineation in Head and Neck Cancer using Data-Centric AI.

Mohamed Abul Hassan, Lisanne Kraft, Muhammad Adeel Azam, Julien Bec, Kelsey T Hadfield, Jinyi Qi, Dorina Gui, Arnaud Bewley, Marianne Abouyared, Jonathan Sorger, Gregory Farwell, Andrew C Birkeland, Laura Marcu
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Abstract

Precise intraoperative delineation of tumor margin is critical for maximizing resection completeness and minimizing recurrence in head and neck cancers (HNC). Label-free Fluorescence Lifetime Imaging (FLIm), which captures the fluorescence decay characteristics of endogenous molecules, offers a real-time method for differentiating malignant from healthy tissue during surgery without the need of contrast agents. Here, we present a data-centric artificial intelligence (AI) framework to enhance the robustness and accuracy of FLIm-based classification models for HNC. FLIm data were collected in vivo from 92 patients undergoing both transoral robotic surgery (TORS) and non-TORS procedures for HNC using a multispectral FLIm device with 355 nm excitation. To improve model performance, a data-centric approach leveraging confident learning was implemented to identify and exclude instances with low quality. An interpretability framework was further integrated to quantify feature contributions and elucidate FLIm-derived sources of contrast. Under a leave-one-patient-out cross-validation scheme, the model demonstrated a strong discriminative ability with an area under the receiver operating characteristic curve of 0.94 in differentiating healthy versus cancerous tissue. In tumor boundary regions, borderline predictions revealed transitional tissue properties, with strong correlations observed between model predictions and FLIm parameters in spectral channels corresponding to NADH and FAD-key metabolic cofactors indicative of cellular metabolic shifts at tumor margins. The impact of tumor anatomical site (base of tongue, palatine tonsil, oral tongue) and p16+ (HPV) status on classification performance was also assessed. These findings underscore the potential of label-free FLIm to provide accurate, real-time guidance for intraoperative margin assessment and dysplasia grading, advancing surgical precision in head and neck surgical oncology.

应用以数据为中心的人工智能增强头颈癌术中肿瘤边缘描绘的无标记荧光寿命成像。
在头颈部肿瘤(HNC)中,精确的术中肿瘤边缘的划定对于最大限度地切除完整性和减少复发至关重要。无标记荧光寿命成像(FLIm),捕捉内源性分子的荧光衰减特征,提供了一种在手术中不需要造影剂的情况下区分恶性组织和健康组织的实时方法。在这里,我们提出了一个以数据为中心的人工智能(AI)框架,以提高基于flm的HNC分类模型的鲁棒性和准确性。使用355 nm激励的多光谱FLIm装置,从92名接受经口机器人手术(TORS)和非TORS手术的HNC患者体内收集FLIm数据。为了提高模型性能,实现了一种以数据为中心的方法,利用自信学习来识别和排除低质量的实例。进一步集成了可解释性框架,以量化特征贡献并阐明flm衍生的对比来源。在留一个病人的交叉验证方案下,该模型在区分健康组织和癌组织方面表现出很强的区分能力,接受者工作特征曲线下的面积为0.94。在肿瘤边界区域,边界预测揭示了过渡性组织特性,在NADH和fad关键代谢辅助因子对应的光谱通道中,模型预测与FLIm参数之间存在很强的相关性,表明肿瘤边缘的细胞代谢变化。评估肿瘤解剖部位(舌底、腭扁桃体、口腔舌)和p16+ (HPV)水平对分类效果的影响。这些发现强调了无标签FLIm为术中边缘评估和不典型增生分级提供准确、实时指导的潜力,提高了头颈部外科肿瘤学的手术精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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