Drexel University, Mechanical Engineering and Mechanics, Bossone Research Center, Philadelphia, PA 19104, USA.
Microsc Microanal. 2011 Apr;17(2):156-66. doi: 10.1017/S143192761100002X. Epub 2011 Mar 9.
Fiber alignment plays a critical role in the structure and function of cells and tissues. While fiber alignment quantification is important to experimental analysis and several different methods for quantifying fiber alignment exist, many studies focus on qualitative rather than quantitative analysis perhaps due to the complexity of current fiber alignment methods. Speed and sensitivity were compared in edge detection and fast Fourier transform (FFT) for measuring actin fiber alignment in cells exposed to shear stress. While edge detection using matrix multiplication was consistently more sensitive than FFT, image processing time was significantly longer. However, when MATLAB functions were used to implement edge detection, MATLAB's efficient element-by-element calculations and fast filtering techniques reduced computation cost 100 times compared to the matrix multiplication edge detection method. The new computation time was comparable to the FFT method, and MATLAB edge detection produced well-distributed fiber angle distributions that statistically distinguished aligned and unaligned fibers in half as many sample images. When the FFT sensitivity was improved by dividing images into smaller subsections, processing time grew larger than the time required for MATLAB edge detection. Implementation of edge detection in MATLAB is simpler, faster, and more sensitive than FFT for fiber alignment quantification.
纤维排列在细胞和组织的结构和功能中起着至关重要的作用。虽然纤维排列的定量分析对于实验分析很重要,并且存在几种不同的纤维排列定量方法,但许多研究侧重于定性而不是定量分析,这可能是由于当前纤维排列方法的复杂性。在对暴露于切应力的细胞中的肌动蛋白纤维排列进行测量时,比较了边缘检测和快速傅里叶变换(FFT)的速度和灵敏度。虽然使用矩阵乘法的边缘检测始终比 FFT 更敏感,但图像处理时间明显更长。然而,当使用 MATLAB 函数实现边缘检测时,MATLAB 高效的逐元素计算和快速滤波技术将计算成本降低了 100 倍,与矩阵乘法边缘检测方法相比。新的计算时间与 FFT 方法相当,并且 MATLAB 边缘检测产生的纤维角度分布均匀,在一半的样本图像中统计上区分了对齐和未对齐的纤维。当通过将图像分成更小的子部分来提高 FFT 的灵敏度时,处理时间比 MATLAB 边缘检测所需的时间还要长。MATLAB 中的边缘检测在纤维排列定量方面比 FFT 更简单、更快、更敏感。