Scientific-Educational Centre "Soft matter and physics of fluids", Bauman Moscow State Technical University, 2nd Baumanskaya Street 5, Moscow, 105005, Russia.
Research Center of Neurology, 80 Volokolamskoye Shosse, Moscow, 125367, Russia.
Sci Rep. 2024 Apr 29;14(1):9846. doi: 10.1038/s41598-024-59773-2.
Astrocytes are glycolytically active cells in the central nervous system playing a crucial role in various brain processes from homeostasis to neurotransmission. Astrocytes possess a complex branched morphology, frequently examined by fluorescent microscopy. However, staining and fixation may impact the properties of astrocytes, thereby affecting the accuracy of the experimental data of astrocytes dynamics and morphology. On the other hand, phase contrast microscopy can be used to study astrocytes morphology without affecting them, but the post-processing of the resulting low-contrast images is challenging. The main result of this work is a novel approach for recognition and morphological analysis of unstained astrocytes based on machine-learning recognition of microscopic images. We conducted a series of experiments involving the cultivation of isolated astrocytes from the rat brain cortex followed by microscopy. Using the proposed approach, we tracked the temporal evolution of the average total length of branches, branching, and area per astrocyte in our experiments. We believe that the proposed approach and the obtained experimental data will be of interest and benefit to the scientific communities in cell biology, biophysics, and machine learning.
星形胶质细胞是中枢神经系统中糖酵解活跃的细胞,在从稳态到神经传递的各种大脑过程中发挥着关键作用。星形胶质细胞具有复杂的分支形态,经常通过荧光显微镜进行检查。然而,染色和固定可能会影响星形胶质细胞的特性,从而影响星形胶质细胞动力学和形态学的实验数据的准确性。另一方面,相差显微镜可以用于研究星形胶质细胞的形态而不影响它们,但是对低对比度图像的后处理具有挑战性。这项工作的主要结果是一种基于显微镜图像的机器学习识别的未染色星形胶质细胞识别和形态分析的新方法。我们进行了一系列涉及从大鼠大脑皮层分离的星形胶质细胞培养的实验,然后进行显微镜观察。使用所提出的方法,我们跟踪了实验中分支平均总长度、分支和每个星形胶质细胞面积的时间演化。我们相信,所提出的方法和获得的实验数据将引起细胞生物学、生物物理学和机器学习科学界的兴趣和受益。