Bae Eunchan, Perrin Gregory E, Gonzenbach Virgilio, Orthmann-Murphy Jennifer L, Shinohara Russell T
Penn Statistics in Imaging and Visualization Center (PennSIVE), Department of Biostatistics, Epidemiology, and Informatics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania 19104.
Department of Neurology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania 19104.
eNeuro. 2025 Feb 12;12(2). doi: 10.1523/ENEURO.0025-24.2024. Print 2025 Feb.
To develop reparative therapies for neurological disorders like multiple sclerosis (MS), we need to better understand the physiology of loss and replacement of oligodendrocytes, the cells that make myelin and are the target of damage in MS. two-photon fluorescence microscopy allows direct visualization of oligodendrocytes in the intact brain of transgenic mouse models, promising a deeper understanding of the longitudinal dynamics of replacing oligodendrocytes after damage. However, the task of tracking the fate of individual oligodendrocytes requires extensive effort for manual annotation and is especially challenging in three-dimensional images. While several models exist for annotating cells in two-dimensional images, few models exist to annotate cells in three-dimensional images and even fewer are designed for tracking cells in longitudinal imaging. Notably, existing options often come with a substantial financial investment, being predominantly commercial or confined to proprietary software. Furthermore, the complexity of processes and myelin formed by individual oligodendrocytes can result in the failure of algorithms that are specifically designed for tracking cell bodies alone. Here, we propose a fast, free, consistent, and unsupervised beta-mixture oligodendrocyte segmentation system (FAST) that is written in open-source software, and can segment and track oligodendrocytes in three-dimensional images over time with minimal human input. We showed that the FAST model can segment and track oligodendrocytes similarly to a blinded human observer. Although FAST was developed to apply to our studies on oligodendrocytes, we anticipate that it can be modified to study four-dimensional data of any brain cell with associated complex processes.
为了开发针对多发性硬化症(MS)等神经疾病的修复疗法,我们需要更好地了解少突胶质细胞的损失和替代生理过程,少突胶质细胞是产生髓磷脂的细胞,也是MS中受损的靶点。双光子荧光显微镜可以直接观察转基因小鼠模型完整大脑中的少突胶质细胞,有望更深入地了解损伤后少突胶质细胞替代的纵向动态。然而,追踪单个少突胶质细胞的命运需要大量的人工注释工作,在三维图像中尤其具有挑战性。虽然存在几种用于注释二维图像中细胞的模型,但用于注释三维图像中细胞的模型很少,而专门设计用于在纵向成像中追踪细胞的模型更少。值得注意的是,现有的选择通常需要大量资金投入,主要是商业软件或仅限于专有软件。此外,单个少突胶质细胞形成的过程和髓磷脂的复杂性可能导致专门设计用于仅追踪细胞体的算法失败。在这里,我们提出了一种快速、免费、一致且无监督的β-混合少突胶质细胞分割系统(FAST),该系统用开源软件编写,可以在三维图像中随时间分割和追踪少突胶质细胞,只需最少的人工输入。我们表明,FAST模型在分割和追踪少突胶质细胞方面与不知情的人类观察者相似。尽管FAST是为应用于我们对少突胶质细胞的研究而开发的,但我们预计它可以被修改以研究任何具有相关复杂过程的脑细胞的四维数据。