基于三维卷积神经网络的三维医学图像语义分割改进

Alejandra Márquez Herrera, A. Cuadros-Vargas, H. Pedrini
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引用次数: 1

摘要

神经网络是一种数学模型,它能够在学习我们提供的人类知识后自动或半自动地执行任务。此外,卷积神经网络(CNN)是一种神经网络,可以有效地学习与图像分析领域相关的任务,例如图像分割,其主要目的是在图像中找到区域或可分离的对象。一种更具体的分割类型称为语义分割,它通过给每个区域一个标签或类来保证每个区域具有语义意义。由于cnn可以自动完成图像语义分割任务,因此它们在医学领域非常有用,可以将其应用于器官或异常(肿瘤)的分割。本研究旨在利用已有的三维卷积神经网络(3D CNN)架构改进磁共振成像(MRI)获得的体积医学图像的二值语义分割任务。我们提出了一个损失函数的公式来训练这个3D CNN,以改善逐像素分割的结果。该损失函数基于自适应相似系数的思想,用于测量预测和真实之间的空间重叠,然后使用它来训练网络。作为贡献,所开发的方法在像素类不平衡的情况下取得了良好的性能。我们展示了训练损失函数的选择如何影响分割的最终质量。我们在两个医学图像语义分割数据集上验证了我们的建议,并展示了所提出的损失函数与用于二值语义分割的其他已有损失函数之间的性能比较。
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Improving Semantic Segmentation of 3D Medical Images on 3D Convolutional Neural Networks
A neural network is a mathematical model that is able to perform a task automatically or semi-automatically after learning the human knowledge that we provided. Moreover, a Convolutional Neural Network (CNN) is a type of neural network that has shown to efficiently learn tasks related to the area of image analysis, such as image segmentation, whose main purpose is to find regions or separable objects within an image. A more specific type of segmentation, called semantic segmentation, guarantees that each region has a semantic meaning by giving it a label or class. Since CNNs can automate the task of image semantic segmentation, they have been very useful for the medical area, applying them to the segmentation of organs or abnormalities (tumors). This work aims to improve the task of binary semantic segmentation of volumetric medical images acquired by Magnetic Resonance Imaging (MRI) using a preexisting Three-Dimensional Convolutional Neural Network (3D CNN) architecture. We propose a formulation of a loss function for training this 3D CNN, for improving pixel-wise segmentation results. This loss function is formulated based on the idea of adapting a similarity coefficient, used for measuring the spatial overlap between the prediction and ground truth, and then using it to train the network. As contribution, the developed approach achieved good performance in a context where the pixel classes are imbalanced. We show how the choice of the loss function for training can affect the final quality of the segmentation. We validate our proposal over two medical image semantic segmentation datasets and show comparisons in performance between the proposed loss function and other pre-existing loss functions used for binary semantic segmentation.
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