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Deep convolutional neural network VGG-16 model for differential diagnosing of papillary thyroid carcinomas in cytological images: a pilot study

机译:深度卷积神经网络VGG-16差异诊断乳头状甲状腺癌中的细胞学图像中的模型:试验研究

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Objective : In this study, we exploited a VGG-16 deep convolutional neural network (DCNN) model to differentiate papillary thyroid carcinoma (PTC) from benign thyroid nodules using cytological images. Methods : A pathology-proven dataset was built from 279 cytological images of thyroid nodules. The images were cropped into fragmented images and divided into a training dataset and a test dataset. VGG-16 and Inception-v3 DCNNs were trained and tested to make differential diagnoses. The characteristics of tumor cell nucleus were quantified as contours, perimeter, area and mean of pixel intensity and compared using independent Student's t-tests. Results : In the test group, the accuracy rates of the VGG-16 model and Inception-v3 on fragmented images were 97.66% and 92.75%, respectively, and the accuracy rates of VGG-16 and Inception-v3 in patients were 95% and 87.5%, respectively. The contours, perimeter, area and mean of pixel intensity of PTC in fragmented images were more than the benign nodules, which were 61.01±17.10 vs 47.00±24.08, p=0.000, 134.99±21.42 vs 62.40±29.15, p=0.000, 1770.89±627.22 vs 1157.27±722.23, p=0.013, 165.84±26.33 vs 132.94±28.73, p=0.000), respectively. Conclusion : In summary, after training with a large dataset, the DCNN VGG-16 model showed great potential in facilitating PTC diagnosis from cytological images. The contours, perimeter, area and mean of pixel intensity of PTC in fragmented images were more than the benign nodules.
机译:目的:在这项研究中,我们利用了一种VGG-16深卷积神经网络(DCNN)模型来使用细胞学图像来区分乳头状甲状腺癌(PTC)从良性甲状腺结节中进行鉴别。方法:从279个细胞学图像的甲状腺结节细胞学图像构建了病理化的数据集。将图像缩小到碎片图像中并分成训练数据集和测试数据集。培训并测试VGG-16和Inception-V3 DCNN以进行差异诊断。肿瘤细胞核的特征量化为像素强度的轮廓,周长,面积和平均值,并使用独立的学生的T检验比较。结果:在试验组中,碎片图像上的VGG-16模型和Incepion-V3的精度分别为97.66%和92.75%,患者VGG-16和Incepion-V3的精度率分别为95%分别为87.5%。 PTC在碎片图像中PTC的像素强度的轮廓,周长,区域和平均值大于良性结节,其为61.01±17.10 Vs 47.00±24.08,P = 0.000,134.99±21.42 Vs 62.40±29.15,P = 0.000,1770.89 ±627.22 Vs 1157.27±722.23,p = 0.013,165.84±26.33 Vs 132.94±28.73,p = 0.000)。结论:总之,在用大型数据集进行训练之后,DCNN VGG-16模型显示出促进促进PTC诊断的细胞学图像的潜力。 PTC在碎片图像中PTC像素强度的轮廓,周长,区域和平均值大于良性结节。

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