论文标题
GSDA:超声图像分类的基于生成对抗网络的半监督数据增强
GSDA: Generative Adversarial Network-based Semi-Supervised Data Augmentation for Ultrasound Image Classification
论文作者
论文摘要
医疗超声(US)是临床实践中使用最广泛的成像方式之一,但其用法提出了独特的挑战,例如可变成像质量。深度学习(DL)模型可以用作美国先进的美国图像分析工具,但是它们的性能受到大型数据集缺乏的极大限制。为了解决常见数据短缺,我们开发了GSDA,这是一种基于生成的对抗网络(GAN)的半监督数据增强方法。 GSDA由GAN和卷积神经网络(CNN)组成。然后将GAN合成和伪标签高分辨率,高质量的美国图像以及真实和合成的图像都被利用以训练CNN。为了通过有限的数据来应对GAN和CNN的培训挑战,我们在培训过程中采用了转移学习技术。我们还引入了一种新颖的评估标准,该标准将分类精度与计算时间之间的平衡。我们在BUSI数据集上评估了我们的方法,而GSDA优于现有的最新方法。随着高分辨率和高质量图像的合成,GSDA仅使用780张图像就达到了97.9%的精度。鉴于这些有希望的结果,我们认为GSDA具有作为美国医学分析的辅助工具的潜力。
Medical Ultrasound (US) is one of the most widely used imaging modalities in clinical practice, but its usage presents unique challenges such as variable imaging quality. Deep Learning (DL) models can serve as advanced medical US image analysis tools, but their performance is greatly limited by the scarcity of large datasets. To solve the common data shortage, we develop GSDA, a Generative Adversarial Network (GAN)-based semi-supervised data augmentation method. GSDA consists of the GAN and Convolutional Neural Network (CNN). The GAN synthesizes and pseudo-labels high-resolution, high-quality US images, and both real and synthesized images are then leveraged to train the CNN. To address the training challenges of both GAN and CNN with limited data, we employ transfer learning techniques during their training. We also introduce a novel evaluation standard that balances classification accuracy with computational time. We evaluate our method on the BUSI dataset and GSDA outperforms existing state-of-the-art methods. With the high-resolution and high-quality images synthesized, GSDA achieves a 97.9% accuracy using merely 780 images. Given these promising results, we believe that GSDA holds potential as an auxiliary tool for medical US analysis.