Department of Chemical Engineering, School of Engineering, University of Liège, Liège, Belgium.
Laboratory of Tumor and Development Biology, GIGA-Cancer, University of Liège, Liège, Belgium.
Front Immunol. 2023 Feb 3;13:988502. doi: 10.3389/fimmu.2022.988502. eCollection 2022.
Solid tumors consist of tumor cells associated with stromal and immune cells, secreted factors and extracellular matrix (ECM), which together constitute the tumor microenvironment. Among stromal cells, activated fibroblasts, known as cancer-associated fibroblasts (CAFs) are of particular interest. CAFs secrete a plethora of ECM components including collagen and modulate the architecture of the ECM, thereby influencing cancer cell migration. The characterization of the collagen fibre network and its space and time-dependent microstructural modifications is key to investigating the interactions between cells and the ECM. Developing image analysis tools for that purpose is still a challenge because the structural complexity of the collagen network calls for specific statistical descriptors. Moreover, the low signal-to-noise ratio of imaging techniques available for time-resolved studies rules out standard methods based on image segmentation.
In this work, we develop a novel approach based on the stochastic modelling of the gel structure and on grey-tone image analysis. The method is then used to study the remodelling of a collagen matrix by migrating breast cancer-derived CAFs in a three-dimensional spheroid model of cellular invasion imaged by time-lapse confocal microscopy.
The structure of the collagen at the scale of a few microns consists in regions with high fibre density separated by depleted regions, which can be thought of as aggregates and pores. The approach developped captures this two-scale structure with a clipped Gaussian field model to describe the aggregates-and-pores large-scale structure, and a homogeneous Boolean model to describe the small-scale fibre network within the aggregates. The model parameters are identified by fitting the grey-tone histograms and correlation functions of the images. The method applies to unprocessed grey-tone images, and it can therefore be used with low magnification, noisy time-lapse reflectance images. When applied to the CAF spheroid time-resolved images, the method reveals different matrix densification mechanisms for the matrix in direct contact or far from the cells.
We developed a novel and multidisciplinary image analysis approach to investigate the remodelling of fibrillar collagen in a 3D spheroid model of cellular invasion. The specificity of the method is that it applies to the unprocessed grey-tone images, and it can therefore be used with noisy time-lapse reflectance images of non-fluorescent collagen. When applied to the CAF spheroid time-resolved images, the method reveals different matrix densification mechanisms for the matrix in direct contact or far from the cells.
实体瘤由与基质和免疫细胞、分泌因子和细胞外基质(ECM)相关的肿瘤细胞组成,这些成分共同构成了肿瘤微环境。在基质细胞中,活化的成纤维细胞,即癌相关成纤维细胞(CAF),尤其受到关注。CAF 分泌大量 ECM 成分,包括胶原蛋白,并调节 ECM 的结构,从而影响癌细胞的迁移。胶原纤维网络的特征及其空间和时间依赖性微观结构的改变是研究细胞与 ECM 相互作用的关键。为此开发图像分析工具仍然是一个挑战,因为胶原网络的结构复杂性需要特定的统计描述符。此外,用于时间分辨研究的成像技术的低信噪比排除了基于图像分割的标准方法。
在这项工作中,我们开发了一种基于凝胶结构的随机建模和灰度图像分析的新方法。然后,该方法用于研究在细胞侵袭的三维球体模型中,由迁移的乳腺癌衍生 CAF 重塑胶原基质,该模型通过时间分辨共聚焦显微镜进行成像。
几微米尺度上的胶原结构由高纤维密度区域和纤维密度降低的区域组成,这些区域可以被视为聚集物和孔隙。所开发的方法使用截断高斯场模型来描述聚集物和孔隙的大尺度结构,以及均匀布尔模型来描述聚集物内的小尺度纤维网络,来捕捉这种两尺度结构。通过拟合图像的灰度直方图和相关函数来确定模型参数。该方法适用于未经处理的灰度图像,因此可以用于低放大倍数、噪声时间分辨反射图像。当应用于 CAF 球体时,该方法揭示了细胞直接接触或远离细胞的基质的不同致密化机制。
我们开发了一种新的多学科图像分析方法来研究细胞侵袭的 3D 球体模型中纤维状胶原的重塑。该方法的特异性在于它适用于未经处理的灰度图像,因此可以与非荧光胶原的噪声时间分辨反射图像一起使用。当应用于 CAF 球体时,该方法揭示了细胞直接接触或远离细胞的基质的不同致密化机制。