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一种基于机器学习图像分析的球体整装药物测试流程可在单细胞水平上识别药物疗效的细胞类型特异性差异。

A spheroid whole mount drug testing pipeline with machine-learning based image analysis identifies cell-type specific differences in drug efficacy on a single-cell level.

作者信息

Vitacolonna Mario, Bruch Roman, Schneider Richard, Jabs Julia, Hafner Mathias, Reischl Markus, Rudolf Rüdiger

机构信息

CeMOS, Mannheim University of Applied Sciences, 68163, Mannheim, Germany.

Institute of Molecular and Cell Biology, Mannheim University of Applied Sciences, 68163, Mannheim, Germany.

出版信息

BMC Cancer. 2024 Dec 18;24(1):1542. doi: 10.1186/s12885-024-13329-9.

Abstract

BACKGROUND

The growth and drug response of tumors are influenced by their stromal composition, both in vivo and 3D-cell culture models. Cell-type inherent features as well as mutual relationships between the different cell types in a tumor might affect drug susceptibility of the tumor as a whole and/or of its cell populations. However, a lack of single-cell procedures with sufficient detail has hampered the automated observation of cell-type-specific effects in three-dimensional stroma-tumor cell co-cultures.

METHODS

Here, we developed a high-content pipeline ranging from the setup of novel tumor-fibroblast spheroid co-cultures over optical tissue clearing, whole mount staining, and 3D confocal microscopy to optimized 3D-image segmentation and a 3D-deep-learning model to automate the analysis of a range of cell-type-specific processes, such as cell proliferation, apoptosis, necrosis, drug susceptibility, nuclear morphology, and cell density.

RESULTS

This demonstrated that co-cultures of KP-4 tumor cells with CCD-1137Sk fibroblasts exhibited a growth advantage compared to tumor cell mono-cultures, resulting in higher cell counts following cytostatic treatments with paclitaxel and doxorubicin. However, cell-type-specific single-cell analysis revealed that this apparent benefit of co-cultures was due to a higher resilience of fibroblasts against the drugs and did not indicate a higher drug resistance of the KP-4 cancer cells during co-culture. Conversely, cancer cells were partially even more susceptible in the presence of fibroblasts than in mono-cultures.

CONCLUSION

In summary, this underlines that a novel cell-type-specific single-cell analysis method can reveal critical insights regarding the mechanism of action of drug substances in three-dimensional cell culture models.

摘要

背景

肿瘤的生长和药物反应受其基质组成的影响,无论是在体内还是三维细胞培养模型中。肿瘤中不同细胞类型之间的细胞类型固有特征以及相互关系可能会影响整个肿瘤及其细胞群体的药物敏感性。然而,缺乏足够详细的单细胞程序阻碍了对三维基质-肿瘤细胞共培养中细胞类型特异性效应的自动观察。

方法

在此,我们开发了一种高内涵流程,从新型肿瘤-成纤维细胞球体共培养的设置,到光学组织清除、整装染色、三维共聚焦显微镜检查,再到优化的三维图像分割和三维深度学习模型,以自动分析一系列细胞类型特异性过程,如细胞增殖、凋亡、坏死、药物敏感性、核形态和细胞密度。

结果

这表明,与肿瘤细胞单培养相比,KP-4肿瘤细胞与CCD-1137Sk成纤维细胞的共培养具有生长优势,在用紫杉醇和阿霉素进行细胞抑制治疗后细胞数量更高。然而,细胞类型特异性单细胞分析表明,这种共培养的明显益处是由于成纤维细胞对药物具有更高的耐受性,而不是表明共培养期间KP-4癌细胞具有更高的耐药性。相反,在有成纤维细胞存在的情况下,癌细胞甚至比单培养时部分更敏感。

结论

总之,这强调了一种新型的细胞类型特异性单细胞分析方法可以揭示三维细胞培养模型中药物作用机制的关键见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/30b8/11658419/365ba369ed47/12885_2024_13329_Fig1_HTML.jpg

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