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Tumor detection of the thyroid and salivary glands using hyperspectral imaging and deep learning

机译:利用高光谱成像和深度学习对甲状腺和唾液腺进行肿瘤检测

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摘要

The performance of hyperspectral imaging (HSI) for tumor detection is investigated in specimens from the thyroid (  = 200) and salivary glands (  = 16) from 82 patients. Tissues were imaged with HSI in broadband reflectance and autofluorescence modes. For comparison, the tissues were imaged with two fluorescent dyes. Additionally, HSI was used to synthesize three-band RGB multiplex images to represent the human-eye response and Gaussian RGBs, which are referred to as HSI-synthesized RGB images. Using histological ground truths, deep learning algorithms were developed for tumor detection. For the classification of thyroid tumors, HSI-synthesized RGB images achieved the best performance with an AUC score of 0.90. In salivary glands, HSI had the best performance with 0.92 AUC score. This study demonstrates that HSI could aid surgeons and pathologists in detecting tumors of the thyroid and salivary glands.
机译:在来自82位患者的甲状腺((= 200)和唾液腺(= 16)的标本中研究了高光谱成像(HSI)用于肿瘤检测的性能。用HSI在宽带反射率和自发荧光模式下对组织成像。为了比较,用两种荧光染料对组织成像。此外,HSI用于合成三波段RGB多路复用图像,以代表人眼响应和高斯RGB,它们被称为HSI合成的RGB图像。利用组织学基础知识,开发了用于肿瘤检测的深度学习算法。对于甲状腺肿瘤的分类,HSI合成的RGB图像以0.90的AUC评分获得了最佳性能。在唾液腺中,HSI表现最佳,AUC值为0.92。这项研究表明,HSI可以帮助外科医生和病理学家检测甲状腺和唾液腺的肿瘤。

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