Pincus Z, Theriot J A
Program in Biomedical Informatics, and Department of Biochemistry, Stanford University School of Medicine, Stanford, CA 94305, USA.
J Microsc. 2007 Aug;227(Pt 2):140-56. doi: 10.1111/j.1365-2818.2007.01799.x.
Morphology is an important large-scale manifestation of the global organizational and physiological state of cells, and is commonly used as a qualitative or quantitative measure of the outcome of various assays. Here we evaluate several different basic representations of cell shape - binary masks, distance maps and polygonal outlines - and different subsequent encodings of those representations - Fourier and Zernike decompositions, and the principal and independent components analyses - to determine which are best at capturing biologically important shape variation. We find that principal components analysis of two-dimensional shapes represented as outlines provide measures of morphology which are quantitative, biologically meaningful, human interpretable and work well across a range of cell types and parameter settings.
形态学是细胞整体组织和生理状态的一种重要的大规模表现形式,通常用作各种分析结果的定性或定量指标。在这里,我们评估了细胞形状的几种不同基本表示形式——二值掩码、距离图和多边形轮廓——以及这些表示形式的不同后续编码——傅里叶分解和泽尼克分解,以及主成分分析和独立成分分析——以确定哪些最能捕捉具有生物学重要性的形状变化。我们发现,将二维形状表示为轮廓的主成分分析提供了形态学测量指标,这些指标是定量的、具有生物学意义的、可被人类解读的,并且在一系列细胞类型和参数设置下都能很好地发挥作用。