Freiburg Institute for Advanced Studies, Albert-Ludwigs-University Freiburg, Freiburg, Germany.
PLoS One. 2013;8(2):e56690. doi: 10.1371/journal.pone.0056690. Epub 2013 Feb 22.
Detection of neuronal cell differentiation is essential to study cell fate decisions under various stimuli and/or environmental conditions. Many tools exist that quantify differentiation by neurite length measurements of single cells. However, quantification of differentiation in whole cell populations remains elusive so far. Because such populations can consist of both proliferating and differentiating cells, the task to assess the overall differentiation status is not trivial and requires a high-throughput, fully automated approach to analyze sufficient data for a statistically significant discrimination to determine cell differentiation. We address the problem of detecting differentiation in a mixed population of proliferating and differentiating cells over time by supervised classification. Using nerve growth factor induced differentiation of PC12 cells, we monitor the changes in cell morphology over 6 days by phase-contrast live-cell imaging. For general applicability, the classification procedure starts out with many features to identify those that maximize discrimination of differentiated and undifferentiated cells and to eliminate features sensitive to systematic measurement artifacts. The resulting image analysis determines the optimal post treatment day for training and achieves a near perfect classification of differentiation, which we confirmed in technically and biologically independent as well as differently designed experiments. Our approach allows to monitor neuronal cell populations repeatedly over days without any interference. It requires only an initial calibration and training step and is thereafter capable to discriminate further experiments. In conclusion, this enables long-term, large-scale studies of cell populations with minimized costs and efforts for detecting effects of external manipulation of neuronal cell differentiation.
检测神经元细胞分化对于研究各种刺激和/或环境条件下的细胞命运决定至关重要。有许多工具可以通过测量单个细胞的神经突长度来量化分化。然而,到目前为止,整个细胞群体的分化量化仍然难以实现。由于这样的群体可以包含增殖和分化的细胞,因此评估总体分化状态的任务并不简单,需要一种高通量、全自动的方法来分析足够的数据,以进行具有统计学意义的区分,从而确定细胞分化。我们通过监督分类来解决在增殖和分化细胞的混合群体中随时间检测分化的问题。使用神经生长因子诱导 PC12 细胞分化,我们通过相差活细胞成像监测细胞形态在 6 天内的变化。为了具有普遍适用性,分类过程从许多特征开始,以识别那些能够最大程度地区分分化和未分化细胞的特征,并消除对系统测量伪影敏感的特征。由此产生的图像分析确定了用于训练的最佳后期处理天数,并实现了近乎完美的分化分类,我们在技术上和生物学上独立以及设计不同的实验中都证实了这一点。我们的方法允许在没有任何干扰的情况下在数天内重复监测神经元细胞群体。它只需要初始校准和训练步骤,然后就能够区分进一步的实验。总之,这使得对细胞群体进行长期、大规模的研究成为可能,同时最大限度地减少了检测神经元细胞分化的外部操作效果的成本和工作量。