Deep learning detection of dynamic exocytosis events in fluorescence TIRF microscopy

Hugo Lachuer, Emmanuel Moebel, Anne-Sophie Mace, Arthur Masson, Kristine Schauer, Charles Kervrann
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Abstract

Segmentation and detection of biological objects in fluorescence microscopy is of paramount importance in cell imaging. Deep learning approaches have recently shown promise to advance, automatize and accelerate analysis. However, most of the interest has been given to the segmentation of static objects of 2D/3D images whereas the segmentation of dynamic processes obtained from time-lapse acquisitions has been less explored. Here we adapted DeepFinder, a U-net originally designed for 3D noisy cryo-electron tomography (cryo-ET) data, for the detection of rare dynamic exocytosis events (termed ExoDeepFinder) observed in temporal series of 2D Total Internal Reflection Fluorescent Microscopy (TIRFM) images. ExoDeepFinder achieved good absolute performances with a relatively small training dataset of 60 cells/~12000 events. We rigorously compared deep learning performances with unsupervised conventional methods from the literature. ExoDeepFinder outcompeted the tested methods, but also exhibited a greater plasticity to the experimental conditions when tested under drug treatments and after changes in cell line or imaged reporter. This robustness to unseen experimental conditions did not require re-training demonstrating generalization capability of ExoDeepFinder. ExoDeepFinder, as well as the annotated training datasets, were made transparent and available through an open-source software as well as a Napari plugin and can directly be applied to custom user data. The apparent plasticity and performances of ExoDeepFinder to detect dynamic events open new opportunities for future deep-learning guided analysis of dynamic processes in live-cell imaging.
荧光 TIRF 显微镜动态外泌事件的深度学习检测
荧光显微镜中生物物体的分割和检测对细胞成像至关重要。最近,深度学习方法在推进、自动化和加速分析方面大有可为。然而,大多数人对二维/三维图像静态对象的分割感兴趣,而对延时采集的动态过程的分割探索较少。在这里,我们将最初为三维噪声低温电子断层扫描(cryo-ET)数据设计的 U 网 DeepFinder 用于检测二维全内反射荧光显微镜(TIRFM)图像时间序列中观察到的罕见动态外渗事件(称为 ExoDeepFinder)。ExoDeepFinder 在一个相对较小的训练数据集(60 个细胞/约 12000 个事件)中取得了良好的绝对性能。我们将深度学习的性能与文献中的无监督传统方法进行了严格比较。ExoDeepFinder 的表现优于其他测试方法,而且在药物治疗和细胞系或成像报告物发生变化后的实验条件下表现出更强的可塑性。这种对未知实验条件的稳健性无需重新训练,证明了 ExoDeepFinder 的通用能力。ExoDeepFinder 以及注释训练数据集通过开源软件和 Napari 插件实现了透明化和可用性,可直接应用于自定义用户数据。ExoDeepFinder在检测动态事件方面的明显可塑性和性能为未来深度学习引导的活细胞成像动态过程分析开辟了新的机遇。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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