Application to Quantify Fetal Lung Branching on Rat Explants

P. Rodrigues, S. Granja, António H. J. Moreira, N. Rodrigues, J. Vilaça
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Abstract

Recently, regulating mechanisms of branching morphogenesis of fetal lung rat explants have been an essential tool for molecular research. The development of accurate and reliable segmentation techniques may be essential to improve research outcomes. This work presents an image processing method to measure the perimeter and area of lung branches on fetal rat explants. The algorithm starts by reducing the noise corrupting the image with a pre-processing stage. The outcome is input to a watershed operation that automatically segments the image into primitive regions. Then, an image pixel is selected within the lung explant epithelial, allowing a region growing between neighbouring watershed regions. This growing process is controlled by a statistical distribution of each region. When compared with manual segmentation, the results show the same tendency for lung development. High similarities were harder to obtain in the last two days of culture, due to the increased number of peripheral airway buds and complexity of lung architecture. However, using semiautomatic measurements, the standard deviation was lower and the results between independent researchers were more coherent.
定量大鼠外植体上胎儿肺分支的应用
近年来,大鼠胎肺外植体分支形态发生的调控机制已成为分子生物学研究的重要工具。发展准确可靠的分割技术对于提高研究成果至关重要。本文提出了一种图像处理方法来测量胎鼠外植体肺分支的周长和面积。该算法首先通过预处理阶段减少噪声对图像的破坏。结果被输入分水岭操作,该操作自动将图像分割成原始区域。然后,在肺外植体上皮内选择图像像素,允许相邻分水岭区域之间的区域生长。这种生长过程是由每个地区的统计分布控制的。与人工分割相比,结果显示肺发育趋势相同。在培养的最后两天,由于周围气道芽数量的增加和肺结构的复杂性,很难获得高度的相似性。然而,使用半自动测量,标准偏差更低,独立研究人员之间的结果更连贯。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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