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A Framework for Image-Based Classification of Mitotic Cells in Asynchronous Populations

机译:基于图像的异步群体中有丝分裂细胞分类的框架。

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摘要

High content screening (HCS) has emerged an important tool for drug discovery because it combines rich readouts of cellular responses in a single experiment. Inclusion of cell cycle analysis into HCS is essential to identify clinically suitable anticancer drugs that disrupt the aberrant mitotic activity of cells. One challenge for integration of cell cycle analysis into HCS is that cells must be chemically synchronized to specific phases, adding experimental complexity to high content screens. To address this issue, we have developed a rules-based method that utilizes mitotic phosphoprotein monoclonal 2 (MPM-2) marker and works consistently in different experimental conditions and in asynchronous populations. Further, the performance of the rules-based method is comparable to established machine learning approaches for classifying cell cycle data, indicating the robustness of the features we use in the framework. As such, we suggest the use of MPM-2 analysis and its associated expressive features for integration into HCS approaches.
机译:高含量筛选(HCS)已成为药物发现的重要工具,因为它在单个实验中结合了丰富的细胞反应读数。将细胞周期分析纳入HCS对于鉴定可破坏细胞异常有丝分裂活性的临床上合适的抗癌药物至关重要。将细胞周期分析整合到HCS中的一项挑战是,必须将细胞化学同步至特定相,这会增加高内涵筛选的实验复杂性。为解决此问题,我们开发了一种基于规则的方法,该方法利用了有丝分裂的磷蛋白单克隆2(MPM-2)标记,并且在不同的实验条件下以及在异步群体中均能始终如一地工作。此外,基于规则的方法的性能可与已建立的用于对细胞周期数据进行分类的机器学习方法相媲美,从而表明了我们在框架中使用的功能的鲁棒性。因此,我们建议使用MPM-2分析及其相关的表达功能,以整合到HCS方法中。

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