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首页> 外文期刊>Journal of healthcare engineering. >Automatic Tissue Image Segmentation Based on Image Processing and Deep Learning
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Automatic Tissue Image Segmentation Based on Image Processing and Deep Learning

机译:基于图像处理和深度学习的自动组织图像分割

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摘要

Image segmentation plays an important role in multimodality imaging, especially in fusion structural images offered by CT, MRI with functional images collected by optical technologies, or other novel imaging technologies. In addition, image segmentation also provides detailed structural description for quantitative visualization of treating light distribution in the human body when incorporated with 3D light transport simulation methods. Here, we first use some preprocessing methods such as wavelet denoising to extract the accurate contours of different tissues such as skull, cerebrospinal fluid (CSF), grey matter (GM), and white matter (WM) on 5 MRI head image datasets. We then realize automatic image segmentation with deep learning by using convolutional neural network. We also introduce parallel computing. Such approaches greatly reduced the processing time compared to manual and semiautomatic segmentation and are of great importance in improving the speed and accuracy as more and more samples are being learned. The segmented data of grey and white matter are counted by computer in volume, which indicates the potential of this segmentation technology in diagnosing cerebral atrophy quantitatively. We demonstrate the great potential of such image processing and deep learning-combined automatic tissue image segmentation in neurology medicine.
机译:图像分割在多层状成像中起重要作用,特别是在CT,MRI提供的融合结构图像中,具有由光学技术收集的功能图像,或其他新颖的成像技术。另外,当结合3D光传输模拟方法时,图像分割还提供了用于在人体中处理光分布的定量可视化的详细结构描述。在这里,我们首先使用一些预处理方法,例如小波去噪,以提取不同组织的准确轮廓,例如颅骨,脑脊液(CSF),灰质(GM)和白色物质(WM)在5个MRI头图像数据集上。然后,我们通过使用卷积神经网络实现深度学习的自动图像分割。我们还引入了平行计算。与手动和半自动分割相比,这种方法大大降低了处理时间,并且在提高越来越多的样本时,提高速度和准确性具有重要意义。灰白和白质的分段数据由计算机数量计数,这表明该分段技术在定量诊断脑萎缩方面的潜力。我们展示了这种图像处理的巨大潜力和神经病学中的这种图像处理和深度学习的自动组织图像分割。

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