Artificial Intelligence Department, King Abdullah II School for Information Technology, University of Jordan, Amman, Jordan.
Computational NeuroSurgery (CNS) Lab & Macquarie Neurosurgery, Macquarie Medical School, Faculty of Medicine, Human and Health Sciences, Macquarie University, Sydney, NSW, Australia.
Adv Neurobiol. 2024;36:501-524. doi: 10.1007/978-3-031-47606-8_26.
The structural complexity of brain tumor tissue represents a major challenge for effective histopathological diagnosis. Tumor vasculature is known to be heterogeneous, and mixtures of patterns are usually present. Therefore, extracting key descriptive features for accurate quantification is not a straightforward task. Several steps are involved in the texture analysis process where tissue heterogeneity contributes to the variability of the results. One of the interesting aspects of the brain lies in its fractal nature. Many regions within the brain tissue yield similar statistical properties at different scales of magnification. Fractal-based analysis of the histological features of brain tumors can reveal the underlying complexity of tissue structure and angiostructure, also providing an indication of tissue abnormality development. It can further be used to quantify the chaotic signature of disease to distinguish between different temporal tumor stages and histopathological grades.Brain meningioma subtype classifications' improvement from histopathological images is the main focus of this chapter. Meningioma tissue texture exhibits a wide range of histological patterns whereby a single slide may show a combination of multiple patterns. Distinctive fractal patterns quantified in a multiresolution manner would be for better spatial relationship representation. Fractal features extracted from textural tissue patterns can be useful in characterizing meningioma tumors in terms of subtype classification, a challenging problem compared to histological grading, and furthermore can provide an objective measure for quantifying subtle features within subtypes that are hard to discriminate.
脑肿瘤组织的结构复杂性是有效进行组织病理学诊断的主要挑战。肿瘤血管系统是异质的,通常存在多种模式的混合。因此,提取用于准确量化的关键描述性特征并非易事。纹理分析过程涉及多个步骤,组织异质性导致结果的可变性。大脑的一个有趣方面在于其分形性质。大脑组织的许多区域在不同的放大倍数下呈现出相似的统计特性。基于分形的脑肿瘤组织学特征分析可以揭示组织结构和血管结构的潜在复杂性,并提供组织异常发展的指示。它还可以用于量化疾病的混沌特征,以区分不同的肿瘤阶段和组织病理学分级。从组织病理学图像中提高脑脑膜瘤亚型分类是本章的主要重点。脑膜瘤组织纹理表现出广泛的组织学模式,即一张幻灯片可能显示多种模式的组合。以多分辨率方式量化的独特分形模式将有助于更好地表示空间关系。从组织纹理模式中提取的分形特征可用于脑膜瘤肿瘤的亚型分类,这是一个具有挑战性的问题,与组织学分级相比,它可以提供一种客观的方法来量化亚型内难以区分的细微特征。