Brunel Guilhem, Borianne Philippe, Subsol Gérard, Jaeger Marc, Caraglio Yves
Ann Bot. 2014 Sep;114(4):829-40. doi: 10.1093/aob/mcu119.
Analysis of anatomical sections of wood provides important information for understanding the secondary growth and development of plants. This study reports on a new method for the automatic detection and characterization of cell files in wood images obtained by light microscopy. To facilitate interpretation of the results, reliability coefficients have been determined, which characterize the files, their cells and their respective measurements.
Histological sections and blocks of the gymnosperms Pinus canariensis, P. nigra and Abies alba were used, together with histological sections of the angiosperm mahogany (Swietenia spp.). Samples were scanned microscopically and mosaic images were built up. After initial processing to reduce noise and enhance contrast, cells were identified using a 'watershed' algorithm and then cell files were built up by the successive aggregation of cells taken from progressively enlarged neighbouring regions. Cell characteristics such as thickness and size were calculated, and a method was developed to determine the reliability of the measurements relative to manual methods.
Image analysis using this method can be performed in less than 20 s, which compares with a time of approx. 40 min to produce the same results manually. The results are accompanied by a reliability indicator that can highlight specific configurations of cells and also potentially erroneous data.
The method provides a fast, economical and reliable tool for the identification of cell files. The reliability indicator characterizing the files permits quick filtering of data for statistical analysis while also highlighting particular biological configurations present in the wood sections.
对木材解剖切片进行分析可为理解植物的次生生长和发育提供重要信息。本研究报告了一种用于自动检测和表征通过光学显微镜获得的木材图像中细胞列的新方法。为便于对结果进行解释,已确定了可靠性系数,这些系数可表征细胞列、其细胞以及各自的测量值。
使用了裸子植物加那利松、黑松和欧洲冷杉的组织切片及组织块,以及被子植物桃花心木(Swietenia spp.)的组织切片。对样本进行显微镜扫描并构建拼接图像。在进行初步处理以减少噪声和增强对比度后,使用“分水岭”算法识别细胞,然后通过从逐渐扩大的相邻区域获取的细胞的连续聚集来构建细胞列。计算细胞的厚度和大小等特征,并开发了一种方法来确定测量值相对于手动方法的可靠性。
使用该方法进行图像分析可在不到20秒内完成,而手动得出相同结果大约需要40分钟。结果伴有一个可靠性指标,该指标可突出显示细胞的特定结构以及潜在的错误数据。
该方法为细胞列的识别提供了一种快速、经济且可靠的工具。表征细胞列的可靠性指标允许对数据进行快速筛选以进行统计分析,同时还能突出木材切片中存在的特定生物学结构。