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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Transfer Learning with Convolutional Neural Networks for Classification of Abdominal Ultrasound Images
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Transfer Learning with Convolutional Neural Networks for Classification of Abdominal Ultrasound Images

机译:用卷积神经网络转移学习,用于腹部超声图像分类

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The purpose of this study is to evaluate transfer learning with deep convolutional neural networks for the classification of abdominal ultrasound images. Grayscale images from 185 consecutive clinical abdominal ultrasound studies were categorized into 11 categories based on the text annotation specified by the technologist for the image. Cropped images were rescaled to 256 x 256 resolution and randomized, with 4094 images from 136 studies constituting the training set, and 1423 images from 49 studies constituting the test set. The fully connected layers of two convolutional neural networks based on CaffeNet and VGGNet, previously trained on the 2012 Large Scale Visual Recognition Challenge data set, were retrained on the training set. Weights in the convolutional layers of each network were frozen to serve as fixed feature extractors. Accuracy on the test set was evaluated for each network. A radiologist experienced in abdominal ultrasound also independently classified the images in the test set into the same 11 categories. The CaffeNet network classified 77.3% of the test set images accurately (1100/1423 images), with a top-2 accuracy of 90.4% (1287/1423 images). The larger VGGNet network classified 77.9% of the test set accurately (1109/1423 images), with a top-2 accuracy of VGGNet was 89.7% (1276/1423 images). The radiologist classified 71.7% of the test set images correctly (1020/1423 images). The differences in classification accuracies between both neural networks and the radiologist were statistically significant (p < 0.001). The results demonstrate that transfer learning with convolutional neural networks may be used to construct effective classifiers for abdominal ultrasound images.
机译:本研究的目的是评估与深卷积神经网络的转移学习,用于腹部超声图像的分类。从185名连续临床腹部超声研究的灰度图像基于技术专家为图像指定的文本注释分类为11个类别。裁剪图像被重新分配到256 x 256分辨率和随机化,从构成训练集的136项研究中,40个图像中的图像和1423个图像从构成测试集的49项研究。在训练集上再次再次培训基于Caffenet和VGGNet的两个卷积神经网络的完全连接层,以前接受过2012年大规模的可视识别挑战数据集。每个网络的卷积层中的重量被冻结为固定特征提取器。对每个网络评估测试集的准确性。在腹部超声中经历的放射科医生也独立地将测试中的图像分类为相同的11个类别。 Caffenet网络准确地分类了77.3%的测试装置(1100/1423图像),前2个精度为90.4%(287/1423图像)。较大的VGGNet网络准确分类了77.9%的测试设置(1109/1423图像),Vggnet的前2个精度为89.7%(1276/1423图像)。放射科医生正确分类了71.7%的测试集图像(1020/1423图像)。神经网络和放射科学家之间分类精度的差异有统计学意义(P <0.001)。结果表明,使用卷积神经网络的转移学习可用于构建腹部超声图像的有效分类器。

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