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Hyperspectral Imaging of Head and Neck Squamous Cell Carcinoma for Cancer Margin Detection in Surgical Specimens from 102 Patients Using Deep Learning

机译:头颈部鳞状细胞癌的高光谱成像技术可用于102位使用深度学习的患者的手术标本中的癌旁检测

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摘要

Surgical resection of head and neck (H and N) squamous cell carcinoma (SCC) may yield inadequate surgical cancer margins in 10 to 20% of cases. This study investigates the performance of label-free, reflectance-based hyperspectral imaging (HSI) and autofluorescence imaging for SCC detection at the cancer margin in excised tissue specimens from 102 patients and uses fluorescent dyes for comparison. Fresh surgical specimens (n = 293) were collected during H and N SCC resections (n = 102). The tissue specimens were imaged with reflectance-based HSI and autofluorescence imaging and afterwards with two fluorescent dyes for comparison. A histopathological ground truth was made. Deep learning tools were developed to detect SCC with new patient samples (inter-patient) and machine learning for intra-patient tissue samples. Area under the curve (AUC) of the receiver-operator characteristic was used as the main evaluation metric. Additionally, the performance was estimated in mm increments circumferentially from the tumor-normal margin. In intra-patient experiments, HSI classified conventional SCC with an AUC of 0.82 up to 3 mm from the cancer margin, which was more accurate than proflavin dye and autofluorescence (both p < 0.05). Intra-patient autofluorescence imaging detected human papilloma virus positive (HPV+) SCC with an AUC of 0.99 at 3 mm and greater accuracy than proflavin dye (p < 0.05). The inter-patient results showed that reflectance-based HSI and autofluorescence imaging outperformed proflavin dye and standard red, green, and blue (RGB) images (p < 0.05). In new patients, HSI detected conventional SCC in the larynx, oropharynx, and nasal cavity with 0.85–0.95 AUC score, and autofluorescence imaging detected HPV+ SCC in tonsillar tissue with 0.91 AUC score. This study demonstrates that label-free, reflectance-based HSI and autofluorescence imaging methods can accurately detect the cancer margin in ex-vivo specimens within minutes. This non-ionizing optical imaging modality could aid surgeons and reduce inadequate surgical margins during SCC resections.
机译:头颈部(H和N)鳞状细胞癌(SCC)的手术切除可能会在10%至20%的病例中产生不足的手术癌边缘。这项研究调查了无标记,基于反射的高光谱成像(HSI)和自体荧光成像在102名患者切除的组织标本中癌旁进行SCC检测的性能,并使用荧光染料进行比较。 H和N SCC切除术(n = 102)期间收集了新鲜的手术标本(n = 293)。用基于反射的HSI和自发荧光成像对组织标本成像,然后使用两种荧光染料进行比较。提出了组织病理学事实。开发了深度学习工具来检测新患者样本(患者间)的SCC以及患者内部组织样本的机器学习。接收器-操作员特性曲线下的面积(AUC)被用作主要评估指标。另外,以从肿瘤正常边缘沿周向mm增量来估计性能。在患者实验中,HSI将常规SCC分类为距癌症边缘3 mm处AUC为0.82的传统SCC,这比黄酮素染料和自发荧光的准确性更高(均p <0.05)。病人体内的自体荧光成像检测到人乳头瘤病毒阳性(HPV +)SCC,在3 mm处的AUC为0.99,其准确度高于原黄素染料(p <0.05)。病人之间的结果表明,基于反射的HSI和自发荧光成像的性能优于原黄素染料和标准的红色,绿色和蓝色(RGB)图像(p <0.05)。在新患者中,HSI在喉,口咽和鼻腔中检测到常规SCC的AUC评分为0.85-0.95,而自体荧光成像在扁桃体组织中检测到HPV + SCC的AUC评分为0.91。这项研究表明,无标记,基于反射的HSI和自发荧光成像方法可以在几分钟内准确检测出离体标本中的癌旁。这种非电离的光学成像方式可以帮助外科医生并减少SCC切除期间的手术切缘不足。

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