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基于近红外自发荧光成像的卷积神经网络在甲状旁腺识别中的应用

[Application of near-infrared autofluorescence imaging-based convolution neural network in recognition of parathyroid gland].

作者信息

He Y R, Li Z F, Zhong Q, Wang Y, Wang X Y, Huang J W, Huang Z G, Fang J G

机构信息

Department of Otolaryngology-Head and Neck Surgery, Beijing Tongren Hospital, Capital Medical University, Key Laboratory of Otolaryngology-Head and Neck Surgery (Capital Medical University), Ministry of Education, Beijing 100730, China.

Department of Otolaryngology-Head and Neck Surgery, Beijing Chaoyang Hospital, Capital Medical University, Beijing 100020, China.

出版信息

Zhonghua Yi Xue Za Zhi. 2023 Oct 31;103(40):3193-3198. doi: 10.3760/cma.j.cn112137-20230726-01230.

Abstract

To investigate the application value of near-infrared autofluorescence imaging-based convolution neural network (CNN) for automatic recognition of parathyroid gland. The data of 83 patients who underwent thyroid papillary cancer surgery in the Department of Head and Neck Surgery, Beijing Tongren Hospital, Capital Medical University from August 2020 to March 2022 were retrospectively analyzed, and a total of 725 autofluorescence images of parathyroid gland were collected during the surgery. Meanwhile, non-parathyroid fluorescence imaging videos in the operation area of 10 patients were also collected, and 928 non-parathyroid fluorescence images were captured from those videos. The fluorescence images of parathyroid and non-parathyroid glands were directly used as input features for deep learning to construct ResNet 34, VGGNet 16 and GoogleNet models for automatic parathyroid identification. The ability of different models to identify parathyroid glands was tested by indicators such as accuracy, specificity, sensitivity, precision, receiver operating characteristic curve and area under the curve (AUC). In addition, 30 fluorescence images of parathyroid and 35 fluorescence images of non-parathyroid glands in 13 patients with papillary thyroid cancer from March to May 2022 were collected to prospectively test the best performing CNN model. Among the 83 patients, there were 25 males and 58 females, with the mean age of (46.7±12.4) years. In the binary classification (parathyroid gland and non-parathyroid gland), the ResNet 34 model performed the best in different CNN models, the accuracy, specificity, sensitivity and precision of the identification test set were 97.6%, 96.3%, 99.3% and 95.5%, and the AUC reached 0.978 (95%: 0.956-0.991). In the prospective test, the prediction accuracy of the ResNet 34 model reached 93.8%, and the AUC was 0.938 (95%: 0.853-0.984). The near-infrared autofluorescence imaging-based deep CNN has good application value in the automatic recognition of parathyroid gland, and can be used to assist the recognition and protection of parathyroid gland in thyroid cancer surgery.

摘要

探讨基于近红外自发荧光成像的卷积神经网络(CNN)在甲状旁腺自动识别中的应用价值。回顾性分析2020年8月至2022年3月在首都医科大学附属北京同仁医院头颈外科接受甲状腺乳头状癌手术的83例患者的数据,术中共采集725张甲状旁腺自发荧光图像。同时,收集10例患者手术区域的非甲状旁腺荧光成像视频,并从这些视频中采集928张非甲状旁腺荧光图像。将甲状旁腺和非甲状旁腺的荧光图像直接作为深度学习的输入特征,构建ResNet 34、VGGNet 16和GoogleNet模型用于甲状旁腺的自动识别。通过准确率、特异性、敏感性、精确率、受试者工作特征曲线及曲线下面积(AUC)等指标测试不同模型识别甲状旁腺的能力。此外,收集2022年3月至5月13例甲状腺乳头状癌患者的30张甲状旁腺荧光图像和35张非甲状旁腺荧光图像,对性能最佳的CNN模型进行前瞻性测试。83例患者中,男性25例,女性58例,平均年龄(46.7±12.4)岁。在二分类(甲状旁腺与非甲状旁腺)中,ResNet 34模型在不同的CNN模型中表现最佳,识别测试集的准确率、特异性、敏感性和精确率分别为97.6%、96.3%、99.3%和95.5%,AUC达到0.978(95%:0.956 - 0.991)。在前瞻性测试中,ResNet 34模型的预测准确率达到93.8%,AUC为0.938(95%:0.853 - 0.984)。基于近红外自发荧光成像的深度卷积神经网络在甲状旁腺自动识别中具有良好的应用价值,可用于辅助甲状腺癌手术中甲状旁腺的识别与保护。

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