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基于 MATLAB 的波浪型胶原纤维分析算法及软件。

MATLAB-Based Algorithm and Software for Analysis of Wavy Collagen Fibers.

机构信息

Department of Applied Mechanics, VSB-Technical University of Ostrava, 17.listopadu 2172/15, 708 00 Ostrava, Czech Republic.

Department of Mechanical Engineering, University of California at Riverside, 3401 Watkins Drive, Riverside CA 92521, USA.

出版信息

Microsc Microanal. 2023 Dec 21;29(6):2108-2126. doi: 10.1093/micmic/ozad117.

Abstract

Knowledge of soft tissue fiber structure is necessary for accurate characterization and modeling of their mechanical response. Fiber configuration and structure informs both our understanding of healthy tissue physiology and of pathological processes resulting from diseased states. This study develops an automatic algorithm to simultaneously estimate fiber global orientation, abundance, and waviness in an investigated image. To our best knowledge, this is the first validated algorithm which can reliably separate fiber waviness from its global orientation for considerably wavy fibers. This is much needed feature for biological tissue characterization. The algorithm is based on incremental movement of local regions of interest (ROI) and analyzes two-dimensional images. Pixels belonging to the fiber are identified in the ROI, and ROI movement is determined according to local orientation of fiber within the ROI. The algorithm is validated with artificial images and ten images of porcine trachea containing wavy fibers. In each image, 80-120 fibers were tracked manually to serve as verification. The coefficient of determination R2 between curve lengths and histograms documenting the fiber waviness and global orientation were used as metrics for analysis. Verification-confirmed results were independent of image rotation and degree of fiber waviness, with curve length accuracy demonstrated to be below 1% of fiber curved length. Validation-confirmed median and interquartile range of R2, respectively, were 0.90 and 0.05 for curved length, 0.92 and 0.07 for waviness, and 0.96 and 0.04 for global orientation histograms. Software constructed from the proposed algorithm was able to track one fiber in about 1.1 s using a typical office computer. The proposed algorithm can reliably and accurately estimate fiber waviness, curve length, and global orientation simultaneously, moving beyond the limitations of prior methods.

摘要

了解软组织纤维结构对于准确描述和模拟其力学响应是必要的。纤维的构型和结构不仅使我们了解健康组织的生理学,也使我们了解患病状态下病理过程的发生机制。本研究开发了一种自动算法,可以同时估计研究图像中纤维的全局方向、丰度和波浪度。据我们所知,这是第一个能够可靠地区分纤维波浪度与其全局方向的验证算法,对于生物组织特征化非常重要。该算法基于局部感兴趣区域(ROI)的增量运动,并分析二维图像。在 ROI 中识别属于纤维的像素,并根据 ROI 内纤维的局部方向确定 ROI 的移动。该算法已在人工图像和包含波浪纤维的十张猪气管图像上进行了验证。在每张图像中,手动跟踪 80-120 根纤维作为验证。用于分析的度量标准是记录纤维波浪度和全局方向的曲线长度和直方图的确定系数 R2。经过验证确认的结果与图像旋转和纤维波浪度无关,曲线长度的准确性证明低于纤维弯曲长度的 1%。验证确认的 R2 的中位数和四分位距分别为曲线长度 0.90 和 0.05,波浪度 0.92 和 0.07,全局方向直方图 0.96 和 0.04。使用典型的办公计算机,从提出的算法构建的软件能够在大约 1.1s 内跟踪一根纤维。所提出的算法能够可靠且准确地同时估计纤维波浪度、曲线长度和全局方向,超越了先前方法的局限性。

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