基于flm的经口机器人手术腔内残留肿瘤的体内分类。

Mohamed A Hassan, Brent Weyers, Julien Bec, Jinyi Qi, Dorina Gui, Arnaud Bewley, Marianne Abouyared, Gregory Farwell, Andrew Birkeland, Laura Marcu
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引用次数: 0

摘要

经口机器人手术(TORS)的一个潜在的后遗症是手术切除不完全并在手术腔内留下残留的肿瘤。为了尽量减少这种风险,外科医生依靠术中冷冻切片分析(IFSA)来定位和切除剩余的肿瘤。这个过程可能会导致假阴性,而且很耗时。组织荧光团(即胶原蛋白和代谢辅助因子NADH和FAD)发射的介观荧光寿命成像(FLIm)已经证明了在接受口腔和口咽外科手术的患者中划定头颈癌范围的潜力。在这里,我们展示了第一个无标签的基于flm的分类,使用新颖的检测模型来识别口咽手术腔中的残留癌症。由于手术腔内的标签表示高度不平衡,该模型仅使用来自健康手术腔组织的FLIm数据进行训练,并将残留肿瘤分类为异常。使用N = 22例接受上气消化肿瘤手术患者的胶片数据,采用留一例患者的交叉验证来训练和验证分类模型。我们的方法确定了所有经病理证实的手术切缘阳性患者(N = 3)。此外,所提出的方法在所有N = 22例患者的光学询问组织表面上的点水平灵敏度为0.75,特异性为0.78。结果表明,基于flm的分类模型可以通过直接对手术腔成像来识别残留癌,可能为TORS的术中手术指导提供支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FLIm-Based in Vivo Classification of Residual Cancer in the Surgical Cavity During Transoral Robotic Surgery.

Incomplete surgical resection with residual cancer left in the surgical cavity is a potential sequelae of Transoral Robotic Surgery (TORS). To minimize such risk, surgeons rely on intraoperative frozen sections analysis (IFSA) to locate and remove the remaining tumor. This process, may lead to false negatives and is time-consuming. Mesoscopic fluorescence lifetime imaging (FLIm) of tissue fluorophores (i.e., collagen and metabolic co-factors NADH and FAD) emission has demonstrated the potential to demarcate the extent of head and neck cancer in patients undergoing surgical procedures of the oral cavity and the oropharynx. Here, we demonstrate the first label-free FLIm-based classification using a novelty detection model to identify residual cancer in the surgical cavity of the oropharynx. Due to highly imbalanced label representation in the surgical cavity, the model employed solely FLIm data from healthy surgical cavity tissue for training and classified the residual tumors as an anomaly. FLIm data from N = 22 patients undergoing upper aerodigestive oncologic surgery were used to train and validate the classification model using leave-one-patient-out cross-validation. Our approach identified all patients with positive surgical margins (N = 3) confirmed by pathology. Furthermore, the proposed method reported a point-level sensitivity of 0.75 and a specificity of 0.78 across optically interrogated tissue surface for all N = 22 patients. The results indicate that the FLIm-based classification model can identify residual cancer by directly imaging the surgical cavity, potentially enabling intraoperative surgical guidance for TORS.

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