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基于双树复小波变换和深度强化学习的多模态脑肿瘤图像分割。

Segmentation for Multimodal Brain Tumor Images Using Dual-Tree Complex Wavelet Transform and Deep Reinforcement Learning.

机构信息

College of Computer Science and Technology, Harbin Engineering University, Harbin 150001, China.

State Key Lab for Novel Software Technology, Nanjing University, Nanjing 210008, China.

出版信息

Comput Intell Neurosci. 2022 May 23;2022:5369516. doi: 10.1155/2022/5369516. eCollection 2022.

Abstract

Image segmentation is an effective tool for computer-aided medical treatment, to retain the detailed features and edges of the segmented image and improve the segmentation accuracy. Therefore, a segmentation algorithm using deep reinforcement learning (DRL) and dual-tree complex wavelet transform (DTCWT) for multimodal brain tumor images is proposed. First, the bivariate concept in DTCWT is used to determine whether the image noise points belong to the real or imaginary region, and the noise probability is checked after calculation; second, the wavelet coefficients corresponding to the region where the noise is located are selected to transform the noise into normal pixel points by bivariate; then, the conditional probability of occurrence of marker points in the edge and center regions of the image is calculated with the target points, and the initial segmentation of the image is achieved by the known wavelet coefficients; finally, the segmentation framework is constructed using DRL, and the network is trained by loss function to optimize the segmentation results and achieve accurate image segmentation. The experiment was evaluated on BraTS2018 dataset, CQ500 dataset, and a hospital brain tumor dataset. The results show that the algorithm in this paper can effectively remove multimodal brain tumor image noise, and the segmented image has good retention of detail features and edges, and the segmented image has high similarity with the original image. The highest information loss index of the segmentation results is only 0.18, the image boundary error is only about 0.3, and -value is high, which indicates that the proposed algorithm is accurate and can operate efficiently, and has practical applicability.

摘要

图像分割是计算机辅助医疗的有效工具,可保留分割图像的详细特征和边缘,提高分割准确性。因此,提出了一种使用深度强化学习(DRL)和双树复小波变换(DTCWT)的多模态脑肿瘤图像分割算法。首先,利用 DTCWT 中的二元概念来确定图像噪声点属于实部还是虚部,并在计算后检查噪声概率;其次,选择位于噪声区域的小波系数,通过二元将噪声转换为正常像素点;然后,计算图像边缘和中心区域标记点的条件概率,并用已知的小波系数实现图像的初始分割;最后,使用 DRL 构建分割框架,通过损失函数训练网络,优化分割结果,实现准确的图像分割。在 BraTS2018 数据集、CQ500 数据集和医院脑肿瘤数据集上进行了实验评估。结果表明,本文算法能有效去除多模态脑肿瘤图像噪声,分割图像能很好地保留细节特征和边缘,分割图像与原始图像高度相似。分割结果的最高信息损失指数仅为 0.18,图像边界误差仅约为 0.3,且 - 值较高,表明提出的算法准确高效,具有实际适用性。

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