在没有结构性荧光标记的图像中进行细胞分割。

Biological imaging Pub Date : 2023-07-17 eCollection Date: 2023-01-01 DOI:10.1017/S2633903X23000168
Daniel Zyss, Susana A Ribeiro, Mary J C Ludlam, Thomas Walter, Amin Fehri
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引用次数: 0

摘要

高含量筛选(HCS)是了解药物在疾病相关模型系统中作用机制的绝佳工具。谨慎选择荧光标签(FLs)是成功开发 HCS 检测方法的关键。HCS 检测通常包括:(a) 含有相关生物信息的荧光标记;(b) 附加结构荧光标记,以便为下游分析进行实例分割。然而,可用的荧光显微成像通道数量有限,限制了这些 FL 的实验复用程度。在本文中,我们介绍了一种分割工作流程,它克服了图像分割对结构荧光线的依赖,通常可腾出两个荧光显微镜通道用于生物相关的荧光线。它包括针对单个 FL 的不同组合微调预先训练好的最先进的通用细胞分割模型,并将各自的分割结果汇总在一起,从而提取主要由生物信息编码的读数中的结构信息。利用我们提供的带注释的数据集,我们证实了我们的方法在不同细胞系和不同 FL 的情况下,通过几种分割聚合策略和图像采集方法,在性能和鲁棒性方面都有所改进。因此,它能在不影响计算单细胞图谱的稳健性和准确性的前提下,最大限度地提高 HCS 检测的生物信息含量。
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Cell segmentation in images without structural fluorescent labels.

High-content screening (HCS) provides an excellent tool to understand the mechanism of action of drugs on disease-relevant model systems. Careful selection of fluorescent labels (FLs) is crucial for successful HCS assay development. HCS assays typically comprise (a) FLs containing biological information of interest, and (b) additional structural FLs enabling instance segmentation for downstream analysis. However, the limited number of available fluorescence microscopy imaging channels restricts the degree to which these FLs can be experimentally multiplexed. In this article, we present a segmentation workflow that overcomes the dependency on structural FLs for image segmentation, typically freeing two fluorescence microscopy channels for biologically relevant FLs. It consists in extracting structural information encoded within readouts that are primarily biological, by fine-tuning pre-trained state-of-the-art generalist cell segmentation models for different combinations of individual FLs, and aggregating the respective segmentation results together. Using annotated datasets that we provide, we confirm our methodology offers improvements in performance and robustness across several segmentation aggregation strategies and image acquisition methods, over different cell lines and various FLs. It thus enables the biological information content of HCS assays to be maximized without compromising the robustness and accuracy of computational single-cell profiling.

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