Department of Emergency Medicine, University of Michigan Medical School, Ann Arbor, MI, 48109, USA.
Neuroscience Graduate Program, University of Michigan Medical School, Ann Arbor, MI, 48109, USA.
Sci Rep. 2021 Mar 4;11(1):5133. doi: 10.1038/s41598-021-84528-8.
The mitochondrial network continually undergoes events of fission and fusion. Under physiologic conditions, the network is in equilibrium and is characterized by the presence of both elongated and punctate mitochondria. However, this balanced, homeostatic mitochondrial profile can change morphologic distribution in response to various stressors. Therefore, it is imperative to develop a method that robustly measures mitochondrial morphology with high accuracy. Here, we developed a semi-automated image analysis pipeline for the quantitation of mitochondrial morphology for both in vitro and in vivo applications. The image analysis pipeline was generated and validated utilizing images of primary cortical neurons from transgenic mice, allowing genetic ablation of key components of mitochondrial dynamics. This analysis pipeline was further extended to evaluate mitochondrial morphology in vivo through immunolabeling of brain sections as well as serial block-face scanning electron microscopy. These data demonstrate a highly specific and sensitive method that accurately classifies distinct physiological and pathological mitochondrial morphologies. Furthermore, this workflow employs the use of readily available, free open-source software designed for high throughput image processing, segmentation, and analysis that is customizable to various biological models.
线粒体网络不断经历分裂和融合事件。在生理条件下,网络处于平衡状态,其特征是既有伸长的线粒体又有点状的线粒体。然而,这种平衡的、动态平衡的线粒体特征可以根据各种应激源改变形态分布。因此,开发一种能够准确测量线粒体形态的强大方法至关重要。在这里,我们开发了一种半自动化的图像分析管道,用于体外和体内应用的线粒体形态定量。该图像分析管道是利用转基因小鼠原代皮质神经元的图像生成和验证的,允许遗传消融线粒体动力学的关键成分。该分析管道进一步扩展到通过免疫标记脑切片以及连续块面扫描电子显微镜来评估体内的线粒体形态。这些数据证明了一种高度特异和敏感的方法,能够准确地对不同的生理和病理线粒体形态进行分类。此外,该工作流程采用了现成的、免费的开源软件,用于高通量图像处理、分割和分析,可定制各种生物模型。