论文标题
通过卷积神经网络启用了稀疏数据的光声显微镜,用于快速成像
Photoacoustic Microscopy with Sparse Data Enabled by Convolutional Neural Networks for Fast Imaging
论文作者
论文摘要
近年来,光声显微镜(PAM)一直是一种有前途的生物医学成像技术。但是,逐点扫描机制导致低速成像,从而限制了PAM的应用。减少采样密度可以自然缩短图像采集时间,这是以图像质量为代价的。在这项工作中,我们提出了一种使用卷积神经网络(CNN)提高稀疏PAM图像质量的方法,从而加快了图像获取的速度,同时保持良好的图像质量。 CNN模型利用挤压和示波器块和残留块来实现增强功能,这是从1/4或1/16低 - 采样稀疏的PAM图像到潜在的完全采样的图像的映射。感知损失函数用于保持图像的保真度。该模型主要在叶静脉的PAM图像上训练和验证。实验显示了我们提出的方法的有效性,该方法在定量和质量上大大优于现有方法。我们的模型还使用小鼠耳朵和眼睛血管的体内PAM图像进行了测试。结果表明,该模型可以从几个方面提高血管稀疏PAM图像的图像质量,这可能有助于快速PAM并促进其临床应用。
Photoacoustic microscopy (PAM) has been a promising biomedical imaging technology in recent years. However, the point-by-point scanning mechanism results in low-speed imaging, which limits the application of PAM. Reducing sampling density can naturally shorten image acquisition time, which is at the cost of image quality. In this work, we propose a method using convolutional neural networks (CNNs) to improve the quality of sparse PAM images, thereby speeding up image acquisition while keeping good image quality. The CNN model utilizes both squeeze-and-excitation blocks and residual blocks to achieve the enhancement, which is a mapping from a 1/4 or 1/16 low-sampling sparse PAM image to a latent fully-sampled image. The perceptual loss function is applied to keep the fidelity of images. The model is mainly trained and validated on PAM images of leaf veins. The experiments show the effectiveness of our proposed method, which significantly outperforms existing methods quantitatively and qualitatively. Our model is also tested using in vivo PAM images of blood vessels of mouse ears and eyes. The results show that the model can enhance the image quality of the sparse PAM image of blood vessels from several aspects, which may help fast PAM and facilitate its clinical applications.