Lennon Frances E, Cianci Gianguido C, Cipriani Nicole A, Hensing Thomas A, Zhang Hannah J, Chen Chin-Tu, Murgu Septimiu D, Vokes Everett E, Vannier Michael W, Salgia Ravi
Section of Hematology/Oncology, University of Chicago, 5841 South Maryland Avenue, MC 2115 Chicago, IL 60637, USA.
Department of Cell and Molecular Biology, Feinberg School of Medicine, Northwestern University, 303 East Chicago Avenue, Chicago, IL 60611, USA.
Nat Rev Clin Oncol. 2015 Nov;12(11):664-75. doi: 10.1038/nrclinonc.2015.108. Epub 2015 Jul 14.
Fractals are mathematical constructs that show self-similarity over a range of scales and non-integer (fractal) dimensions. Owing to these properties, fractal geometry can be used to efficiently estimate the geometrical complexity, and the irregularity of shapes and patterns observed in lung tumour growth (over space or time), whereas the use of traditional Euclidean geometry in such calculations is more challenging. The application of fractal analysis in biomedical imaging and time series has shown considerable promise for measuring processes as varied as heart and respiratory rates, neuronal cell characterization, and vascular development. Despite the advantages of fractal mathematics and numerous studies demonstrating its applicability to lung cancer research, many researchers and clinicians remain unaware of its potential. Therefore, this Review aims to introduce the fundamental basis of fractals and to illustrate how analysis of fractal dimension (FD) and associated measurements, such as lacunarity (texture) can be performed. We describe the fractal nature of the lung and explain why this organ is particularly suited to fractal analysis. Studies that have used fractal analyses to quantify changes in nuclear and chromatin FD in primary and metastatic tumour cells, and clinical imaging studies that correlated changes in the FD of tumours on CT and/or PET images with tumour growth and treatment responses are reviewed. Moreover, the potential use of these techniques in the diagnosis and therapeutic management of lung cancer are discussed.
分形是一种数学结构,在一系列尺度和非整数(分形)维度上呈现自相似性。由于这些特性,分形几何可用于有效估计肺肿瘤生长(在空间或时间上)中观察到的形状和模式的几何复杂性及不规则性,而在这类计算中使用传统欧几里得几何则更具挑战性。分形分析在生物医学成像和时间序列中的应用已显示出在测量诸如心率和呼吸频率、神经元细胞特征以及血管发育等各种过程方面具有相当大的前景。尽管分形数学具有优势,且众多研究表明其适用于肺癌研究,但许多研究人员和临床医生仍未意识到其潜力。因此,本综述旨在介绍分形的基本原理,并说明如何进行分形维数(FD)分析及相关测量,如孔隙率(纹理)测量。我们描述肺的分形性质,并解释为何该器官特别适合进行分形分析。本文回顾了利用分形分析量化原发性和转移性肿瘤细胞核及染色质FD变化的研究,以及将CT和/或PET图像上肿瘤FD变化与肿瘤生长和治疗反应相关联的临床成像研究。此外,还讨论了这些技术在肺癌诊断和治疗管理中的潜在应用。