基于图像识别和分离微核细胞,剖析细胞后果。

Lucian DiPeso, Sriram Pendyala, Heather Z Huang, Douglas M Fowler, Emily M Hatch
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引用次数: 0

摘要

根据视觉表型分离细胞的最新进展改变了我们识别复杂性状的机制和后果的能力。微核(MN)的形成是基因组不稳定性的一种常见结果,与 MN 破裂同时引发基因组结构和信号转导的广泛疾病相关变化,并且几乎完全由视觉分析来定义。在显微镜图像中自动检测 MN 已被证明极具挑战性,这限制了对 MN 形成和破裂的机制和后果的无偏见发现。在这项研究中,我们介绍了两个新的 MN 分割模块:一个是用于微核细胞及其破裂状态分类的快速精确模型(VCS MN),另一个是从各种显微镜图像中准确分割 MN 的强大模型(MNFinder)。作为概念验证,我们通过将 VCS MN 与基于光激活的细胞分离和 RNASeq 结合,定义了诱导染色体错分离后具有完整或破裂 MN 的非转化人体细胞的转录组。令人惊讶的是,我们发现 MN 的形成或破裂都不会引发独特的转录反应。相反,转录变化与这些细胞类的非整倍体增加相关。我们的 MN 切分模块克服了 MN 定量的可重复性这一重大挑战,并与可视细胞分选相结合,使强大的功能基因组学测定(包括集合 CRISPR 筛选和细胞与遗传后果的时间分辨分析)得以应用于 MN 生物学中的各种问题。
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Image-based identification and isolation of micronucleated cells to dissect cellular consequences.

Recent advances in isolating cells based on visual phenotypes have transformed our ability to identify the mechanisms and consequences of complex traits. Micronucleus (MN) formation is a frequent outcome of genome instability, triggers extensive disease-associated changes in genome structure and signaling coincident with MN rupture, and is almost exclusively defined by visual analysis. Automated MN detection in microscopy images has proved extremely challenging, limiting unbiased discovery of the mechanisms and consequences of MN formation and rupture. In this study we describe two new MN segmentation modules: a rapid model for classifying micronucleated cells and their rupture status (VCS MN), and a robust model for accurate MN segmentation (MNFinder) from a broad range of fluorescence microscopy images. As a proof-of-concept, we define the transcriptome of non-transformed human cells with intact or ruptured MN after inducing chromosome missegregation by combining VCS MN with photoactivation-based cell isolation and RNASeq. Surprisingly, we find that neither MN formation nor rupture triggers a strong unique transcriptional response. Instead, transcriptional changes appear correlated with small increases in aneuploidy in these cell classes. Our MN segmentation modules overcome a significant challenge with reproducible MN quantification, and, joined with visual cell sorting, enable the application of powerful functional genomics assays, including pooled CRISPR screens and time-resolved analyses of cellular and genetic consequences, to a wide-range of questions in MN biology.

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