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基于无标记 4D 显微镜的自动化细胞谱系重建。

Automated cell lineage reconstruction using label-free 4D microscopy.

机构信息

Department of Electrical and Computer Engineering, University of California, Los Angeles, Los Angeles, CA 90095, USA.

Department of Molecular, Cell and Developmental Biology, University of California, Los Angeles, Los Angeles, CA 90095, USA.

出版信息

Genetics. 2024 Oct 7;228(2). doi: 10.1093/genetics/iyae135.

Abstract

Patterns of lineal descent play a critical role in the development of metazoan embryos. In eutelic organisms that generate a fixed number of somatic cells, invariance in the topology of their cell lineage provides a powerful opportunity to interrogate developmental events with empirical repeatability across individuals. Studies of embryonic development using the nematode Caenorhabditis elegans have been drivers of discovery. These studies have depended heavily on high-throughput lineage tracing enabled by 4D fluorescence microscopy and robust computer vision pipelines. For a range of applications, computer-aided yet manual lineage tracing using 4D label-free microscopy remains an essential tool. Deep learning approaches to cell detection and tracking in fluorescence microscopy have advanced significantly in recent years, yet solutions for automating cell detection and tracking in 3D label-free imaging of dense tissues and embryos remain inaccessible. Here, we describe embGAN, a deep learning pipeline that addresses the challenge of automated cell detection and tracking in label-free 3D time-lapse imaging. embGAN requires no manual data annotation for training, learns robust detections that exhibits a high degree of scale invariance, and generalizes well to images acquired in multiple labs on multiple instruments. We characterize embGAN's performance using lineage tracing in the C. elegans embryo as a benchmark. embGAN achieves near-state-of-the-art performance in cell detection and tracking, enabling high-throughput studies of cell lineage without the need for fluorescent reporters or transgenics.

摘要

线性遗传模式在后生动物胚胎发育中起着关键作用。在具有固定体细胞数量的真后生动物中,细胞谱系拓扑结构的不变性为通过个体间的经验可重复性来研究发育事件提供了强大的机会。使用秀丽隐杆线虫进行的胚胎发育研究是发现的驱动力。这些研究严重依赖于 4D 荧光显微镜和强大的计算机视觉管道实现的高通量谱系追踪。对于一系列应用,使用 4D 无标记显微镜进行计算机辅助但手动的谱系追踪仍然是一种重要的工具。近年来,荧光显微镜中用于细胞检测和跟踪的深度学习方法取得了显著进展,但在密集组织和胚胎的 3D 无标记成像中实现细胞自动检测和跟踪的解决方案仍然难以企及。在这里,我们描述了 embGAN,这是一种深度学习管道,用于解决无标记 3D 时程成像中自动细胞检测和跟踪的挑战。embGAN 不需要手动数据注释进行训练,学习到具有高度尺度不变性的鲁棒检测,并能很好地推广到在多个实验室和多个仪器上采集的图像。我们使用秀丽隐杆线虫胚胎中的谱系追踪作为基准来描述 embGAN 的性能。embGAN 在细胞检测和跟踪方面达到了近乎最先进的性能,能够实现高通量的细胞谱系研究,而无需荧光报告基因或转基因。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ee4/11457935/5106e94d3893/iyae135f1.jpg

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