Department of Electrical and Computer Engineering, Old Dominion University, Norfolk, VA, USA.
Applied Research, Ebay Inc, San Jose, CA, USA.
Adv Neurobiol. 2024;36:469-486. doi: 10.1007/978-3-031-47606-8_24.
This chapter discusses multifractal texture estimation and characterization of brain lesions (necrosis, edema, enhanced tumor, nonenhanced tumor, etc.) in magnetic resonance (MR) images. This work formulates the complex texture of tumor in MR images using a stochastic model known as multifractional Brownian motion (mBm). Mathematical derivations of the mBm model and corresponding algorithm to extract the spatially varying multifractal texture feature are discussed. Extracted multifractal texture feature is fused with other effective features to enhance the tissue characteristics. Segmentation of the tissues is performed using a feature-based classification method. The efficacy of the mBm texture feature in segmenting different abnormal tissues is demonstrated using a large-scale publicly available clinical dataset. Experimental results and performance of the methods confirm the efficacy of the proposed technique in an automatic segmentation of abnormal tissues in multimodal (T, T, Flair, and T) brain MRIs.
本章讨论磁共振(MR)图像中脑病变(坏死、水肿、增强肿瘤、非增强肿瘤等)的多重分形纹理估计和特征描述。这项工作使用一种称为多重分形布朗运动(mBm)的随机模型来描述肿瘤在 MR 图像中的复杂纹理。讨论了 mBm 模型的数学推导和提取空间变化多重分形纹理特征的相应算法。提取的多重分形纹理特征与其他有效特征融合,以增强组织特征。使用基于特征的分类方法对组织进行分割。使用大规模公开可用的临床数据集证明了 mBm 纹理特征在分割不同异常组织中的功效。实验结果和方法的性能证实了该技术在自动分割多模态(T、T、Flair 和 T)脑 MRI 中异常组织的有效性。