Kim Abraham, Kilimnik German, Guo Charles, Sung Joshua, Jo Junghyo, Periwal Vipul, Witkowski Piotr, Dilorio Philip, Hara Manami
Department of Medicine, University of Chicago, USA.
J Vis Exp. 2011 Mar 4(49):2471. doi: 10.3791/2471.
The pancreatic islet is a unique micro-organ composed of several hormone secreting endocrine cells such as beta-cells (insulin), alpha-cells (glucagon), and delta-cells (somatostatin) that are embedded in the exocrine tissues and comprise 1-2% of the entire pancreas. There is a close correlation between body and pancreas weight. Total beta-cell mass also increases proportionately to compensate for the demand for insulin in the body. What escapes this proportionate expansion is the size distribution of islets. Large animals such as humans share similar islet size distributions with mice, suggesting that this micro-organ has a certain size limit to be functional. The inability of large animal pancreata to generate proportionately larger islets is compensated for by an increase in the number of islets and by an increase in the proportion of larger islets in their overall islet size distribution. Furthermore, islets exhibit a striking plasticity in cellular composition and architecture among different species and also within the same species under various pathophysiological conditions. In the present study, we describe novel approaches for the analysis of biological image data in order to facilitate the automation of analytic processes, which allow for the analysis of large and heterogeneous data collections in the study of such dynamic biological processes and complex structures. Such studies have been hampered due to technical difficulties of unbiased sampling and generating large-scale data sets to precisely capture the complexity of biological processes of islet biology. Here we show methods to collect unbiased "representative" data within the limited availability of samples (or to minimize the sample collection) and the standard experimental settings, and to precisely analyze the complex three-dimensional structure of the islet. Computer-assisted automation allows for the collection and analysis of large-scale data sets and also assures unbiased interpretation of the data. Furthermore, the precise quantification of islet size distribution and spatial coordinates (i.e. X, Y, Z-positions) not only leads to an accurate visualization of pancreatic islet structure and composition, but also allows us to identify patterns during development and adaptation to altering conditions through mathematical modeling. The methods developed in this study are applicable to studies of many other systems and organisms as well.
胰岛是一种独特的微器官,由几种分泌激素的内分泌细胞组成,如β细胞(胰岛素)、α细胞(胰高血糖素)和δ细胞(生长抑素),这些细胞嵌入外分泌组织中,占整个胰腺的1-2%。身体重量与胰腺重量之间存在密切关联。总的β细胞质量也会相应增加,以满足身体对胰岛素的需求。胰岛大小分布并未遵循这种成比例的扩张规律。像人类这样的大型动物与小鼠的胰岛大小分布相似,这表明这种微器官要发挥功能存在一定的大小限制。大型动物胰腺无法生成比例更大的胰岛,这通过胰岛数量的增加以及总体胰岛大小分布中较大胰岛比例的增加来弥补。此外,胰岛在不同物种之间以及同一物种在各种病理生理条件下,其细胞组成和结构都表现出显著的可塑性。在本研究中,我们描述了用于分析生物图像数据的新方法,以促进分析过程的自动化,这使得在研究此类动态生物过程和复杂结构时能够分析大量且异质的数据集合。由于无偏采样和生成大规模数据集以精确捕捉胰岛生物学复杂生物过程存在技术困难,此类研究受到了阻碍。在这里,我们展示了在样本有限的情况下(或尽量减少样本采集)以及标准实验设置下收集无偏“代表性”数据的方法,并精确分析胰岛的复杂三维结构。计算机辅助自动化能够收集和分析大规模数据集,还能确保对数据进行无偏解释。此外,对胰岛大小分布和空间坐标(即X、Y、Z位置)的精确量化不仅能准确呈现胰岛的结构和组成,还能让我们通过数学建模识别发育过程中的模式以及对变化条件的适应情况。本研究中开发的方法也适用于许多其他系统和生物体的研究。