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通过机器学习辅助的 FRET 技术揭示的三维环境中单乳腺癌细胞 RhoA 活性的时空动力学。

Spatial and temporal dynamics of RhoA activities of single breast tumor cells in a 3D environment revealed by a machine learning-assisted FRET technique.

机构信息

Department of Biological and Environmental Engineering, Cornell University, Ithaca, NY, USA.

Department of Anatomy and Structural Biology, Albert Einstein College of Medicine, Bronx, NY, USA; Gruss-Lipper Biophotonics Center, Albert Einstein College of Medicine, Bronx, NY, USA.

出版信息

Exp Cell Res. 2022 Jan 15;410(2):112939. doi: 10.1016/j.yexcr.2021.112939. Epub 2021 Nov 20.

Abstract

One of the hallmarks of cancer cells is their exceptional ability to migrate within the extracellular matrix (ECM) for gaining access to the circulatory system, a critical step of cancer metastasis. RhoA, a small GTPase, is known to be a key molecular switch that toggles between actomyosin contractility and lamellipodial protrusion during cell migration. Current understanding of RhoA activity in cell migration has been largely derived from studies of cells plated on a two-dimensional (2D) substrate using a FRET biosensor. There has been increasing evidence that cells behave differently in a more physiologically relevant three-dimensional (3D) environment. However, studies of RhoA activities in 3D have been hindered by low signal-to-noise ratio in fluorescence imaging. In this paper, we present a a machine learning-assisted FRET technique to follow the spatiotemporal dynamics of RhoA activities of single breast tumor cells (MDA-MB-231) migrating in a 3D as well as a 2D environment. We found that RhoA activity is more polarized along the long axis of the cell for single cells migrating on 2D fibronectin-coated glass versus those embedded in 3D collagen matrices. In particular, RhoA activities of cells in 2D exhibit a distinct front-to-back and back-to-front movement during migration in contrast to those in 3D. Finally, regardless of dimensionality, RhoA polarization is found to be moderately correlated with cell shape.

摘要

癌细胞的一个显著特征是它们在细胞外基质(ECM)中迁移的非凡能力,这是癌症转移的关键步骤。RhoA 是一种小分子 GTP 酶,已知是一种关键的分子开关,可在细胞迁移过程中在肌动球蛋白收缩性和片状伪足伸出之间切换。目前对 RhoA 在细胞迁移中的活性的理解主要来自于使用 FRET 生物传感器在二维(2D)基质上培养的细胞的研究。越来越多的证据表明,细胞在更生理相关的三维(3D)环境中的行为不同。然而,由于荧光成像中的信噪比低,3D 中 RhoA 活性的研究受到了阻碍。在本文中,我们提出了一种机器学习辅助的 FRET 技术,用于跟踪单个乳腺肿瘤细胞(MDA-MB-231)在 3D 和 2D 环境中迁移时 RhoA 活性的时空动力学。我们发现,与嵌入 3D 胶原基质中的细胞相比,在 2D 纤维连接蛋白涂覆的玻璃上迁移的单个细胞中,RhoA 活性沿细胞的长轴更具极化性。特别是,与 3D 中的细胞相比,2D 中细胞的 RhoA 活性在迁移过程中表现出明显的前后运动和前后运动。最后,无论在哪个维度,RhoA 的极化都与细胞形状呈中度相关。

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