Computational NeuroSurgery (CNS) Lab & Macquarie Neurosurgery, Macquarie Medical School, Faculty of Medicine, Human and Health Sciences, Macquarie University, Sydney, NSW, Australia.
Artificial Intelligence Department, King Abdullah II School for Information Technology, University of Jordan, Amman, Jordan.
Adv Neurobiol. 2024;36:525-544. doi: 10.1007/978-3-031-47606-8_27.
Brain parenchyma microvasculature is set in disarray in the presence of tumors, and malignant brain tumors are among the most vascularized neoplasms in humans. As microvessels can be easily identified in histologic specimens, quantification of microvascularity can be used alone or in combination with other histological features to increase the understanding of the dynamic behavior, diagnosis, and prognosis of brain tumors. Different brain tumors, and even subtypes of the same tumor, show specific microvascular patterns, as a kind of "microvascular fingerprint," which is particular to each histotype. Reliable morphometric parameters are required for the qualitative and quantitative characterization of the neoplastic angioarchitecture, although the lack of standardization of a technique able to quantify the microvascular patterns in an objective way has limited the "morphometric approach" in neuro-oncology.In this chapter, we focus on the importance of computational-based morphometrics, for the objective description of tumoral microvascular fingerprinting. By also introducing the concept of "angio-space," which is the tumoral space occupied by the microvessels, we here present fractal analysis as the most reliable computational tool able to offer objective parameters for the description of the microvascular networks.The spectrum of different angioarchitectural configurations can be quantified by means of Euclidean and fractal-based parameters in a multiparametric analysis, aimed to offer surrogate biomarkers of cancer. Such parameters are here described from the methodological point of view (i.e., feature extraction) as well as from the clinical perspective (i.e., relation to underlying physiology), in order to offer new computational parameters to the clinicians with the final goal of improving diagnostic and prognostic power of patients affected by brain tumors.
脑实质微血管在肿瘤存在的情况下处于紊乱状态,而恶性脑肿瘤是人类中血管化程度最高的肿瘤之一。由于微血管在组织学标本中很容易被识别,因此微血管密度的定量分析可以单独或与其他组织学特征结合使用,以增加对脑肿瘤的动态行为、诊断和预后的理解。不同的脑肿瘤,甚至是同一肿瘤的亚型,都显示出特定的微血管模式,作为一种“微血管指纹”,这是每种组织类型所特有的。需要可靠的形态计量学参数来定性和定量描述肿瘤的血管生成结构,尽管缺乏一种能够以客观方式量化微血管模式的技术标准化,限制了神经肿瘤学中的“形态计量学方法”。在这一章中,我们专注于基于计算的形态计量学在客观描述肿瘤微血管指纹方面的重要性。通过引入“血管空间”的概念,即微血管占据的肿瘤空间,我们提出分形分析作为最可靠的计算工具,能够提供客观参数来描述微血管网络。通过欧式和基于分形的参数,在多参数分析中可以量化不同的血管生成结构配置的范围,旨在提供癌症的替代生物标志物。从方法学角度(即特征提取)和临床角度(即与潜在生理学的关系)描述了这些参数,以便为临床医生提供新的计算参数,最终目的是提高受脑肿瘤影响的患者的诊断和预后能力。