基于深度学习的全帧共焦成像中局部 Ca²⁺ 释放事件的高效检测和分类方法

IF 4.3 2区 生物学 Q2 CELL BIOLOGY Cell calcium Pub Date : 2024-04-24 DOI:10.1016/j.ceca.2024.102893
Prisca Dotti , Miguel Fernandez-Tenorio , Radoslav Janicek , Pablo Márquez-Neila , Marcel Wullschleger , Raphael Sznitman , Marcel Egger
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引用次数: 0

摘要

细胞内储存的 Ca2+ 离子的释放在许多细胞过程中起着至关重要的作用,在心肌细胞、平滑肌细胞、肝细胞等各种细胞类型中充当次级信使。检测相关的局部 Ca2+ 释放事件并对其进行分类尤为重要,因为这些事件有助于深入了解作为全局细胞内 Ca2+ 信号转导基础的局部 Ca2+ 释放事件的机制、相互作用和相互依存关系。然而,耗时耗力的程序往往会使分析复杂化,尤其是低信噪比成像数据。在这里,我们提出了一种基于深度学习的创新方法,用于自动检测和分类局部 Ca2+ 释放事件。为了证明我们的方法的鲁棒性和准确性,我们首先使用传统的评估方法,比较人工注释和深度学习方法提供的 Ca2+ 释放事件分割之间的交叉点,以及单个事件的注释和识别实例。除了这些方法,我们还将所提模型的性能与该领域六位专家的注释进行了比较。我们的模型能识别 75% 以上的注释 Ca2+ 释放事件,并能正确分类 75% 以上的事件。我们的结论是,所提出的方法是对局部细胞内 Ca2+ 事件进行传统全帧共聚焦成像分析的一种稳健而省时的替代方法。
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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A deep learning-based approach for efficient detection and classification of local Ca²⁺ release events in Full-Frame confocal imaging

The release of Ca2+ ions from intracellular stores plays a crucial role in many cellular processes, acting as a secondary messenger in various cell types, including cardiomyocytes, smooth muscle cells, hepatocytes, and many others. Detecting and classifying associated local Ca2+ release events is particularly important, as these events provide insight into the mechanisms, interplay, and interdependencies of local Ca2+release events underlying global intracellular Ca2+signaling. However, time-consuming and labor-intensive procedures often complicate analysis, especially with low signal-to-noise ratio imaging data.

Here, we present an innovative deep learning-based approach for automatically detecting and classifying local Ca2+ release events. This approach is exemplified with rapid full-frame confocal imaging data recorded in isolated cardiomyocytes.

To demonstrate the robustness and accuracy of our method, we first use conventional evaluation methods by comparing the intersection between manual annotations and the segmentation of Ca2+ release events provided by the deep learning method, as well as the annotated and recognized instances of individual events. In addition to these methods, we compare the performance of the proposed model with the annotation of six experts in the field. Our model can recognize more than 75 % of the annotated Ca2+ release events and correctly classify more than 75 %. A key result was that there were no significant differences between the annotations produced by human experts and the result of the proposed deep learning model.

We conclude that the proposed approach is a robust and time-saving alternative to conventional full-frame confocal imaging analysis of local intracellular Ca2+ events.

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来源期刊
Cell calcium
Cell calcium 生物-细胞生物学
CiteScore
8.70
自引率
5.00%
发文量
115
审稿时长
35 days
期刊介绍: Cell Calcium covers the field of calcium metabolism and signalling in living systems, from aspects including inorganic chemistry, physiology, molecular biology and pathology. Topic themes include: Roles of calcium in regulating cellular events such as apoptosis, necrosis and organelle remodelling Influence of calcium regulation in affecting health and disease outcomes
期刊最新文献
NAADP signaling: Master manipulation. Electrogenic and non-electrogenic ion antiporters participate in controling membrane potential. Commentary on: Li et al.; Ca2+ transients on the T cell surface trigger rapid integrin activation in a timescale of seconds. Nature Communications (2024) Distribution and calcium signaling function of somatostatin receptor subtypes in rat pituitary Calcium signals as regulators of ferroptosis in cancer
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