首页> 外国专利> Automatic segmentation process of a 3D medical image by one or several neural networks through structured convolution according to the anatomic geometry of the 3D medical image

Automatic segmentation process of a 3D medical image by one or several neural networks through structured convolution according to the anatomic geometry of the 3D medical image

机译:根据3D医学图像的解剖结构,通过结构化卷积通过一个或多个神经网络对3D医学图像进行自动分割

摘要

This invention concerns an automatic segmentation method of a medical image making use of a knowledge database containing information about the anatomical and pathological structures or instruments, that can be seen in a 3D medical image of a×b×n dimension, i.e. composed of n different 2D images each of a×b dimension.;Said method being characterised in that it mainly comprises three process steps, namely:;a first step consisting in extracting from said medical image nine sub-images (1 to 9) of a/2×b/2×n dimensions, i.e. nine partially overlapping a/2×b/2 sub-images from each 2D image;;a second step consisting in nine convolutional neural networks (CNNs) analysing and segmenting each one of these nine sub-images (1 to 9) of each 2D image;;a third step consisting in combining the results of the nine analyses and segmentations of the n different 2D images, and therefore of the nine segmented sub-images with a/2×b/2×n dimensions, into a single image with a×b×n dimension, corresponding to a single segmentation of the initial medical image.
机译:本发明涉及一种利用医学数据库的医学图像的自动分割方法,该知识数据库包含关于解剖学和病理学结构或仪器的信息,该信息可以在a×b×n维的3D医学图像中看到,即由n个不同该方法的特征在于,其主要包括三个处理步骤,即:第一步,包括从所述医学图像中提取九个子图像( 1 9 )个a / 2×b / 2×n维,即每个2D图像中的九个部分重叠的a / 2×b / 2子图像;第二步,由九个卷积神经网络组成(CNN)分析和分割每个2D图像的这9个子图像( 1 9 )中的每一个;第三步,将九个结果组合将n个不同的2D图像(因此将a / 2×b / 2×n尺寸的9个分段子图像)分析和分割为a×b×nd的单个图像对应于初始医学图像的单个分割。

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